## What type of PR is this? (check all applicable)
Release v3.6.0
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Invoke v3.6.0
## QA Instructions, Screenshots, Recordings
[InvokeAI-installer-v3.6.0.zip](https://github.com/invoke-ai/InvokeAI/files/13923761/InvokeAI-installer-v3.6.0.zip)
## [optional] Are there any post deployment tasks we need to perform?
1. Release on PyPi
2. Release on GitHub
3. Announce in #releases
* feat: allow bfloat16 to be configurable in invoke.yaml
* fix: `torch_dtype()` util
- Use `choose_precision` to get the precision string
- Do not reference deprecated `config.full_precision` flat (why does this still exist?), if a user had this enabled it would override their actual precision setting and potentially cause a lot of confusion.
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
- Add various brand images, organise images
- Create favicon for docs pages (light blue version of key logo)
- Rename app title to `Invoke - Community Edition`
Add `FetchOnReconnect` tag, tagging relevant queries with it. This tag is invalidated in the socketConnected listener, when it is determined that the queue changed.
- Add checks to the "recovery" logic for socket connect events to reduce the number of network requests.
- Remove the `isInitialized` state from `systemSlice` and make it a nanostore local to the socketConnected listener. It didn't need to be global state. It's also now more clearly named `isFirstConnection`.
- Export the queue status selector (minor improvement, memoizes it correctly).
## What type of PR is this? (check all applicable)
Release v3.6.0rc6
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Release candidate $6
## QA Instructions, Screenshots, Recordings
[InvokeAI-installer-v3.6.0rc6.zip](https://github.com/invoke-ai/InvokeAI/files/13890206/InvokeAI-installer-v3.6.0rc6.zip)
## Merge Plan
Merge when approved
## [optional] Are there any post deployment tasks we need to perform?
Release on PyPi & Github
- Fixed a bug where after you load more, changing boards doesn't work. The offset and limit for the list image query had some wonky logic, now resolved.
- Addressed major lag in gallery when selecting an image.
Both issues were related to the useMultiselect and useGalleryImages hooks, which caused every image in the gallery to re-render on whenever the selection changed. There's no way to memoize away this - we need to know when the selection changes. This is a longstanding issue.
The selection is only used in a callback, though - the onClick handler for an image to select it (or add it to the existing selection). We don't really need the reactivity for a callback, so we don't need to listen for changes to the selection.
The logic to handle multiple selection is moved to a new `galleryImageClicked` listener, which does all the selection right when it is needed.
The result is that gallery images no long need to do heavy re-renders on any selection change.
Besides the multiselect click handler, there was also inefficient use of DND payloads. Previously, the `IMAGE_DTOS` type had a payload of image DTO objects. This was only used to drag gallery selection into a board. There is no need to hold onto image DTOs when we have the selection state already in redux. We were recalculating this payload for every image, on every tick.
This payload is now just the board id (the only piece of information we need for this particular DND event).
- I also removed some unused DND types while making this change.
There was a lot of convoluted, janky logic related to trying to not mount the context menu's portal until its needed. This was in the library where the component was originally copied from.
I've removed that and resolved the jank, at the cost of there being an extra portal for each instance of the context menu. Don't think this is going to be an issue. If it is, the whole context menu could be refactored to be a singleton.
* ci: add docker build timout; log free space on runner before and after build
* docker: bump frontend builder to node=20.x; skip linting on build
* chore: gitignore .pnpm-store
* update code owners for docker and CI
---------
Co-authored-by: Millun Atluri <Millu@users.noreply.github.com>
I was troubleshooting a hotkeys issue on canvas and thought I had broken the tool logic in a past change so I redid it moving it to nanostores. In the end, the issue was an upstream but with the hotkeys library, but I like having tool in nanostores so I'm leaving it.
It's ephemeral interaction state anyways, doesn't need to be in redux.
There's a challenge to accomplish this due to our slice structure - the model is stored in `generationSlice`, but `canvasSlice` also needs to have awareness of it. For example, when the model changes, the canvas slice doesn't know what the previous model was, so it doesn't know whether or not to optimize the size.
This means we need to lift the "should we optimize size" information up. To do this, the `modelChanged` action creator accepts the previous model as an optional second arg.
Now the canvas has access to both the previous model and new model selection, and can decide whether or not it should optimize its size setting in the same way that the generation slice does.
Closes #5452
For some reason `ReturnType<typeof useListImagesQuery>` isn't working correctly, and destructuring `queryResult` it results in `any`, when the hook is used.
I've removed the explicit return typing so that consumers of the hook get correct types.
Organise deps into ~3 categories:
- Core generation dependencies, pinned for reproducible builds.
- Core application dependencies, pinned for reproducible builds.
- Auxiliary dependencies, pinned only if necessary.
I pinned / bumped these to latest:
- `controlnet_aux`
- `fastapi`
- `fastapi-events`
- `huggingface-hub`
- `numpy`
- `python-socketio`
- `torchmetrics`
- `transformers`
- `uvicorn`
I checked the release notes for these and didn't see any breaking changes that would affect us. There is a `fastapi` breaking change in v108 related to background tasks but it doesn't affect us.
I tested on a fresh venv. The app still works and I can generate on macOS.
Hopefully, enforcing explicit pinned versions will reduce the issues where people get CPU torch.
It also means we should periodically bump versions up to ensure we don't get too far behind on our dependencies and have to do painful upgrades.
Workflow building would fail when a current image node was in the workflow due to the strict validation.
So we need to use the other workflow builder util first, which strips out extraneous data.
This bug was introduced during an attempt to optimize the workflow building logic, which was causing slowdowns on the workflow editor.
* do not show toast if 403 is triggered by lack of image access
* remove log
* lint
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
## What type of PR is this? (check all applicable)
Release - InvokeAI v3.5.0rc5
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Release - InvokeAI v3.5.0rc5
## QA Instructions, Screenshots, Recordings
[InvokeAI-installer-v3.6.0rc5.zip](https://github.com/invoke-ai/InvokeAI/files/13863661/InvokeAI-installer-v3.6.0rc5.zip)
## [optional] Are there any post deployment tasks we need to perform?
Releasee on PyPi & GitHub
* feat(ui): get rid of convoluted socket vs appSocket redux actions
There's no need to have `socket...` and `appSocket...` actions.
I did this initially due to a misunderstanding about the sequence of handling from middleware to reducers.
* feat(ui): bump deps
Mainly bumping to get latest `redux-remember`.
A change to socket.io required a change to the types in `useSocketIO`.
* chore(ui): format
* feat(ui): add error handling to redux persistence layer
- Add an error handler to `redux-remember` config using our logger
- Add custom errors representing storage set and get failures
- Update storage driver to raise these accordingly
- wrap method to clear idbkeyval storage and tidy its logic up
* feat(ui): add debuggingLoggerMiddleware
This simply logs every action and a diff of the state change.
Due to the noise this creates, it's not added by default at all. Add it to the middlewares if you want to use it.
* feat(ui): add $socket to window if in dev mode
* fix(ui): do not enable cancel hotkeys on inputs
* fix(ui): use JSON.stringify for ROARR logger serializer
A recent change to ROARR introduced limits to the size of data that will logged. This ends up making our logs far less useful. Change the serializer back to what it was previously.
* feat(ui): change diff util, update debuggerLoggerMiddleware
The previous diff library would present deleted things as `undefined`. Unfortunately, a JSON.stringify cycle will strip those values out. The ROARR logger does this and so the diffs end up being a lot less useful, not showing removed keys.
The new diff library uses a different format for the delta that serializes nicely.
* feat(ui): add migrations to redux persistence layer
- All persisted slices must now have a slice config, consisting of their initial state and a migrate callback. The migrate callback is very simple for now, with no type safety. It adds missing properties to the state. A future enhancement might be to model the each slice's state with e.g. zod and have proper validation and types.
- Persisted slices now have a `_version` property
- The migrate callback is called inside `redux-remember`'s `unserialize` handler. I couldn't figure out a good way to put this into the reducer and do logging (reducers should have no side effects). Also I ran into a weird race condition that I couldn't figure out. And finally, the typings are tricky. This works for now.
- `generationSlice` and `canvasSlice` both need migrations for the new aspect ratio setup, this has been added
- Stuff related to persistence has been moved in to `store.ts` for simplicity
* feat(ui): clean up StorageError class
* fix(ui): scale method default is now 'auto'
* feat(ui): when changing controlnet model, enable autoconfig
* fix(ui): make embedding popover immediately accessible
Prevents hotkeys from being captured when embeddings are still loading.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
The new select component appears to close itself before calling the
onchange handler. This short-circuits the autoconnect logic. Tweaked so
the ordering is correct.
## Related Tickets & Documents
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- Closes#5425
## QA Instructions, Screenshots, Recordings
bug should be fixed
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## Merge Plan
This PR can be merged when approved
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The new select component appears to close itself before calling the onchange handler. This short-circuits the autoconnect logic. Tweaked so the ordering is correct.
Centralize the initial/min/max/etc values for all numerical params. We used this for some but at some point stopped updating it.
All numerical params now use their respective configs. Far fewer hardcoded values throughout the app now.
Also updated the config types a bit to better accommodate slider vs number input constraints.
- Use the virtuoso grid item container and list containers to calculate imagesPerRow, skipping manual compensation for padding of images
- Round the imagesPerRow instead of flooring - we often will end up with values like 4.99999 due to floating point precision
- Update `getDownImage` comments & logic to be clearer
- Use variables for the ids in query selectors, preventing future typos
- Only scroll if the new selected image is different from the prev one
- Fix preexisting bug where gallery network requests were duplicated when triggering infinite scroll
- Refactor `useNextPrevImage` to not use `state => state` as an input selector - logic split up into different hooks
- Remove use instant scroll for arrow key navigation - smooth scroll is janky when you hold the arrow down and it fires rapidly
- Move gallery nav hotkeys to GalleryImageGrid component, so they work whenever the gallery is open (previously didn't work on canvas or workflow editor tabs)
- Use nanostores for gallery grid refs instead of passing context with virtuoso's context feature, making it much simpler to do the imperative gallery nav
- General gallery hook/component cleanup
## What type of PR is this? (check all applicable)
Release v3.6.0rc4
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Release for v3.6.0rc4
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
[Uploading InvokeAI-installer-v3.6.0rc4.zip…](Installer Zip)
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## Merge Plan
- This PR can be merged when approved
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
Release on PyPi & GitHub
Pending resolution of https://github.com/reduxjs/reselect/issues/635, we can patch `reselect` to use `lruMemoize` exclusively.
Pin RTK and react-redux versions too just to be safe.
This reduces the major GC events that were causing lag/stutters in the app, particularly in canvas and workflow editor.
## What type of PR is this? (check all applicable)
Release v3.6.0rc3
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [] Yes
- [X] No
## Description
Next release candidate
## Related Tickets & Documents
N/A
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## QA Instructions, Screenshots, Recordings
[Uploading InvokeAI-installer-v3.6.0rc3.zip…](Installer zip)
<!--
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
Release on PyPI & Github
A bug that caused panels to be collapsed on a fresh indexedDb in was fixed in dd32c632cd, but this re-introduced a different bug that caused the panels to expand on window resize, if they were already collapsed.
Revert the previous change and instead add one imperative resize outside the observer, so that on startup, we set both panels to their minimum sizes.
* replace custom header with custom nav component to go below settings
* add option for custom gallery header
* add option for custom app info text on logo hover
* add data-testid for tabs
* remove descriptions
* lint
* lint
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
We are now using the lefthand vertical strip for the settings menu button. This is a good place for the status indicator.
Really, we only need to display something *if there is a problem*. If the app is processing, the progress bar indicates that.
For the case where the panels are collapsed, I'll add the floating buttons back in some form, and we'll indicate via those if the app is processing something.
just make it like a normal button - normal and hover state, no difference when its expanded. the icon clearly indicates this, and you see the extra components
On one hand I like the color but on the other it makes this divider a focus point, which doesn't really makes sense to me. I tried several shades but think it adds a bit too much distraction for your eyes.
There was an extra div, needed for the fullscreen file upload dropzone, that made styling the main app containers a bit awkward.
Refactor the uploader a bit to simplify this - no longer need so many app-level wrappers. Much cleaner.
Removed logic related to aspect ratio from the components.
When the main bbox changes, if the scale method is auto, the reducers will handle the scaled bbox size appropriately.
Somehow linking up the manual mode to the aspect ratio is tricky, and instead of adding complexity for a rarely-used mode, I'm leaving manual mode as fully manual.
Cannot figure out how to allow the bbox to be transformed when aspect ratio is locked from all handles. Only the bottom right handle works as expected.
As a workaround, when the aspect ratio is locked, you can only resize the bbox from the bottom right handle.
## What type of PR is this? (check all applicable)
Release
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
v3.6.0rc2 release
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
Test latest main & [Uploading
InvokeAI-installer-v3.6.0rc2.zip…](Installer zip)
## Merge Plan
PR can be merged immediately
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## Added/updated tests?
- [ ] Yes
- [X] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
Publish release on PyPI and GitHub
- Do not _merge_ prompt and style prompt when concat is enabled - either use the prompt as style, or use the style directly.
- Set style prompt metadata correctly.
- Add metadata recall for style prompt.
`react-select` has some weird behaviour where if the value is `undefined`, it shows the last-selected value instead of nothing. Must fall back to `null`
Ensure workflow editor model selector component gets a value
This introduced some funky type issues related to ONNX models. ONNX doesn't work anyways (unmaintained). Instead of fixing the types to work with a non-working feature, ONNX is now removed entirely from the UI.
- Remove all refs to ONNX (and Olives)
- Fix some type issues
- Add ONNX nodes to the nodes denylist (so they are not visible in UI)
- Update VAE graph helper, which still had some ONNX logic. It's a very simple change and doesn't change any logic. Just removes some conditions that were for ONNX. I tested it and nothing broke.
- Regenerate types
- Fix prettier and eslint ignores for generated types
- Lint
* Udpater suggest db backup when installing RC
* Update invokeai_update.py to be more specific
* Update invokeai_update.py
* Update invokeai_update.py
* Update invokeai_update.py
* Update invokeai_update.py
* Update docker-compose.yml to bind local data path
* Update LOCAL_DATA_PATH in .env.sample
* Add fallback to INVOKEAI_ROOT envar if LOCAL_DATA_PATH not present.
* rename LOCAL_DATA_PATH to INVOKAI_LOCAL_ROOT
* Whoops, didnt mean to include this
* Update docker/docker-compose.yml
Co-authored-by: Eugene Brodsky <ebr@users.noreply.github.com>
* [chore] rename envar
* Apply suggestions from code review
---------
Co-authored-by: Eugene Brodsky <ebr@users.noreply.github.com>
- Prompt must have an open curly brace followed by a close curly brace to enable dynamic prompts processing
- If a the given prompt already had a dynamic prompt cached, do not re-process
- If processing is not needed, user may invoke immediately
- Invoke button shows loading state when dynamic prompts are processing, tooltip says generating
- Dynamic prompts preview icon in prompt box shows loading state when processing, tooltip says generating
- Support grid size of 8 on canvas
- Internal canvas math works on 8
- Update gridlines rendering to show 64 spaced lines and 32/16/8 when zoomed in
- Bbox manipulation defaults to grid of 64 - hold shift to get grid of 8
Besides being something we support internally, supporting 8 on canvas avoids a lot of hacky logic needed to work well with aspect ratios.
Canvas and non-canvas have separate width and height and need their own separate aspect ratios. In order to not duplicate a lot of aspect ratio logic, the components relating to image size have been modularized.
- Fix `weight` and `begin_step_percent`, the constraints were mixed up
- Add model validatort to ensure `begin_step_percent < end_step_percent`
- Bump version
## What type of PR is this? (check all applicable)
InvokeAI 3.6.0rc1 Release
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Update version & frontend build for Invoke v3.6.0rc1
## Related Tickets & Documents
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- Related Issue #
- Closes #
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
Upload release to PyPI & create release on GitHub
- Store workflow in nanostore as singleton instead of building for each consumer
- Debounce the build (already was indirectly debounced)
- When the workflow is needed, imperatively grab it from the nanostores, instead of letting react handle it via reactivity
This drastically reduces the computation needed when moving the cursor. It also correctly separates ephemeral interaction state from redux, where it is not needed.
Also removed some unused canvas state.
This uses the previous implementation of the memoization function in reselect. It's possible for the new weakmap-based memoization to cause memory leaks in certain scenarios, so we will avoid it for now.
## What type of PR is this? (check all applicable)
Release v3.5.1
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
InvokeAI v3.5.1 release
## [optional] Are there any post deployment tasks we need to perform?
1. Release on PyPi
2. Create GH release
3. Annonce on Discord
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
## Description
Add Tiled Upscaling to default workflows
## Related Tickets & Documents
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- Related Issue #
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
If the user specifies `torch-sdp` as the attention type in `config.yaml`, we can go ahead and use it (if available) rather than always throwing an exception.
## What type of PR is this? (check all applicable)
- [X] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
To release 3.5.0 successfully, a front end build needed to be in the
repo so that it would be included in the invokeai package distributed on
PyPi.
This PR remove the frontend build and updates the frontend gitignore to
not include the build.
## QA Instructions, Screenshots, Recordings
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## Added/updated tests?
- [ ] Yes
- [X] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
N/A
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because: it's a simple fix
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
if there are two multi vector TI in a prompt eg `<ti-1> <ti-2>` with
ti-1 has vector size 16 and ti-2 has vector size 8 then the second one
uses the first ti_embedding.shape[0] and you get errors like eg
"<ti-2-!pad-8> is not found" because ti-2 only has vector size 8 but the
code is taking the wrong ti_embedding.shape[0]
## Related Tickets & Documents
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- Related Issue #
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## QA Instructions, Screenshots, Recordings
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
InvokeAI v3.5.0
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
3.5.0 release
## QA Instructions, Screenshots, Recordings
Test Installer:
[InvokeAI-installer-v3.5.0.zip](https://github.com/invoke-ai/InvokeAI/files/13776161/InvokeAI-installer-v3.5.0.zip)
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
* Update front end .gitignore & remove the fe build
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
For example, if PIL tries to open a *really* big image, it will raise an
exception to prevent reading a huge object into memory.
## Related Tickets & Documents
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-
https://discord.com/channels/1020123559063990373/1149513695567810630/1186200089149046804
## QA Instructions, Screenshots, Recordings
This should fix the error in the discord thread
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## Merge Plan
Can be merged when @Millu confirms it fixes the issue he ran into
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* add base definition of download manager
* basic functionality working
* add unit tests for download queue
* add documentation and FastAPI route
* fix docs
* add missing test dependency; fix import ordering
* fix file path length checking on windows
* fix ruff check error
* move release() into the __del__ method
* disable testing of stderr messages due to issues with pytest capsys fixture
* fix unsorted imports
* harmonized implementation of start() and stop() calls in download and & install modules
* Update invokeai/app/services/download/download_base.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
* replace test datadir fixture with tmp_path
* replace DownloadJobBase->DownloadJob in download manager documentation
* make source and dest arguments to download_queue.download() an AnyHttpURL and Path respectively
* fix pydantic typecheck errors in the download unit test
* ruff formatting
* add "job cancelled" as an event rather than an exception
* fix ruff errors
* Update invokeai/app/services/download/download_default.py
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
* use threading.Event to stop service worker threads; handle unfinished job edge cases
* remove dangling STOP job definition
* fix ruff complaint
* fix ruff check again
* avoid race condition when start() and stop() are called simultaneously from different threads
* avoid race condition in stop() when a job becomes active while shutting down
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Co-authored-by: Kent Keirsey <31807370+hipsterusername@users.noreply.github.com>
The graph library occasionally causes issues when the default graph changes substantially between versions and pydantic validation fails. See #5289 for an example.
We are not currently using the graph library, so we can disable it until we are ready to use it. It's possible that the workflow library will supersede it anyways.
* remove MacOS Sonoma check in devices.py
As of pytorch 2.1.0, float16 works with our MPS fixes on Sonoma, so the check is no longer needed.
* remove unused platform import
The project is no longer using yarn as a package manager and have moved
to pnpm, So I wanted to update the documentation on the contribution
page.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [x] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [] No, because:
I spoke with user: imic in the #dev-chat on discord.
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Merge Plan
- "This PR can be merged when approved"
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Added more default workflows to the workflow library
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
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## Merge Plan
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
* add code to repopulate model config records after schema update
* reformat for ruff
* migrate model records using db cursor rather than the ModelRecordConfigService
* ruff fixes
* tweak exception reporting
* fix: build frontend in pypi-release workflow
This was missing, resulting in the 3.5.0rc1 having no frontend.
* fix: use node 18, set working directory
- Node 20 has a problem with `pnpm`; set it to Node 18
- Set the working directory for the frontend commands
* Don't copy extraneous paths into installer .zip
* feat(installer): delete frontend build after creating installer
This prevents an empty `dist/` from breaking the app on startup.
* feat: add python dist as release artifact, as input to enable publish to pypi
- The release workflow never runs automatically. It must be manually kicked off.
- The release workflow has an input. When running it from the GH actions UI, you will see a "Publish build on PyPi" prompt. If this value is "true", the workflow will upload the build to PyPi, releasing it. If this is anything else (e.g. "false", the default), the workflow will build but not upload to PyPi.
- The `dist/` folder (where the python package is built) is uploaded as a workflow artifact as a zip file. This can be downloaded and inspected. This allows "dry" runs of the workflow.
- The workflow job and some steps have been renamed to clarify what they do
* translationBot(ui): update translation files
Updated by "Cleanup translation files" hook in Weblate.
Co-authored-by: Hosted Weblate <hosted@weblate.org>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/
Translation: InvokeAI/Web UI
* freeze yaml migration logic at upgrade to 3.5
* moved migration code to migration_3
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Co-authored-by: Hosted Weblate <hosted@weblate.org>
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [X] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
## Description
Updater script pulls from PyPI instead of GitHub releases (this is why
the RC packages are having issues when updating through the launcher
script)
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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## Merge Plan
<!--
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## Added/updated tests?
- [ ] Yes
- [X] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you updated all relevant documentation?
- [x] Yes (N/A)
- [ ] No
## Description
This change enables the model probe to work with TI embeddings that have
the follow state_dict structure:
```python
{
"<any_key>": torch.Tensor(...), # where the tensor has shape (N, embedding_dim)
}
```
## QA Instructions, Screenshots, Recordings
I can't imagine an embedding format that would previously have passed
the model probe, and would now fail after this change. That being said,
I'll exercise a bunch of existing TIs before merging.
- [x] Exercise existing TI formats
## Added/updated tests?
- [ ] Yes
- [x] No : _We could really benefit from tests for all of the supported
TI formats... but I'm not taking on that project right now._
## What type of PR is this? (check all applicable)
- [X] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
As discussed with @psychedelicious , this PR changes the swagger label
on the model manager V2 routes to `model_manager_v2_unstable` in order
to warn community members that the API is liable to change.
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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## Merge Plan
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No
## Description
Change CalculateImageTilesEvenSplitInvocation to have an overlap in
pixels rather than as a percentage of the tile. This makes it easier to
have predictable blending of the seams as you have a known overlap size.
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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## Merge Plan
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## Added/updated tests?
- [x] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [x] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes -
https://github.com/invoke-ai/InvokeAI/pull/5007#discussion_r1378792615
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
Simplify Docker image creation and execution to a single script that
spins up the right service in the docker compose file.
## Related Tickets & Documents
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- Depends on #5007
## QA Instructions, Screenshots, Recordings
N/A
<!--
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## Added/updated tests?
- [ ] Yes
- [x] No : same tests should work.
## [optional] Are there any post deployment tasks we need to perform?
Not to my knowledge.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
This was missing, resulting in the 3.5.0rc1 having no frontend.
## Related Tickets & Documents
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- Discord installer thread:
https://discord.com/channels/1020123559063990373/1149513695567810630/1185200427717898260
- Comments from here in the release chat:
https://discord.com/channels/1020123559063990373/1020123559831539744/1185004017521279007
## QA Instructions, Screenshots, Recordings
I've run this locally and it works (I commented out the final steps of
the workflow that do PyPi stuff to ensure I didn't accidentally deploy
something).
You can run the workflow locally with https://github.com/nektos/act.
Suggest using the `gh` CLI version, its very easy to set up if you have
the github CLI installed. Then you can run `gh act -W
.github/workflows/pypi-release.yml` to run the workflow locally in a
docker image.
I don't know this local action runner would actually release to PyPi -
as mentioned, I commented those steps out when testing - but it does
successfully do both frontend and backend builds.
<!--
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software specifications as well as any other pertinent information.
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## Merge Plan
This needs @lstein 's approval.
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## [optional] Are there any post deployment tasks we need to perform?
Cut an RC2
- The release workflow never runs automatically. It must be manually kicked off.
- The release workflow has an input. When running it from the GH actions UI, you will see a "Publish build on PyPi" prompt. If this value is "true", the workflow will upload the build to PyPi, releasing it. If this is anything else (e.g. "false", the default), the workflow will build but not upload to PyPi.
- The `dist/` folder (where the python package is built) is uploaded as a workflow artifact as a zip file. This can be downloaded and inspected. This allows "dry" runs of the workflow.
- The workflow job and some steps have been renamed to clarify what they do
The VAE decode on linear graphs was getting cached. This caused some unexpected behaviour around image outputs.
For example, say you ran the exact same graph twice. The first time, you get an image written to disk and added to gallery. The second time, the VAE decode is cached and no image file is created. But, the UI still gets the graph complete event and selects the first image in the gallery. The second run does not add an image to the gallery.
There are probbably edge cases related to this - the UI does not expect this to happen. I'm not sure how to handle it any better in the UI.
The solution is to not cache VAE decode on the linear graphs, ever. If you run a graph twice in linear, you expect two images.
This simple change disables the node cache for terminal VAE decode nodes in all linear graphs, ensuring you always get images. If they graph was fully cached, all images after the first will be created very quickly of course.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This adds a probe for the SDXL LoRA format found in the wild at
https://civitai.com/models/224641.
## Related Tickets & Documents
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See discord message at:
https://discord.com/channels/1020123559063990373/1149510134058471514/1184982133912113182
## QA Instructions, Screenshots, Recordings
Try installing the SDXL LoRA at the URL given above.
## Merge Plan
This can be merged when approved.
## Added/updated tests?
- [ ] Yes
- [X] No : we do not yet have a comprehensive suite of models to test
probing on.
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This minor change adds the ability to filter the model lists returned by
V2 of the model manager using the model file format (e.g. "checkpoint").
Just thought this would be a useful feature.
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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## Merge Plan
This can be merged when approved without any adverse effects.
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## Added/updated tests?
- [ ] Yes
- [X] No : minor feature - tested informally using the router API
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ x ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ x ] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ x ] Yes
- [ ] No
## Description
This adds the Kapa assistant to our docs.
- "Reset Workflow Editor" -> "New Workflow"
- "New Workflow" gets nodes icon & is no longer danger coloured
- When creating a new workflow, if the current workflow has unsaved changes, you get a dialog asking for confirmation. If the current workflow is saved, it immediately creates a new workflow.
- "Download Workflow" -> "Save to File"
- "Upload Workflow" -> "Load from File"
- Moved "Load from File" up 1 in the menu
This model was a bit too strict, and raised validation errors when workflows we expect to *not* have an ID (eg, an embedded workflow) have one.
Now it strips unknown attributes, allowing those workflows to load.
- Handle an image file not existing despite being in the database.
- Add a simple pydantic model that tests only for the existence of a workflow's version.
- Check against this new model when migrating workflows, skipping if the workflow fails validation. If it succeeds, the frontend should be able to handle the workflow.
Currently translated at 98.1% (1340 of 1365 strings)
translationBot(ui): update translation (Russian)
Currently translated at 84.2% (1150 of 1365 strings)
translationBot(ui): update translation (Russian)
Currently translated at 83.1% (1135 of 1365 strings)
Co-authored-by: Васянатор <ilabulanov339@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ X ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ X ] No, because: dependency bump
## Have you updated all relevant documentation?
- [ ] Yes
- [ x ] No
## Description
Updating diffusers to .24 - fixes a few issues. Needs to be tested to
ensure things like our IP Adapter implementation don't break
## What type of PR is this? (check all applicable)
- [x] Refactor
- [x] Feature
- [ ] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
This PR enhances our SQLite database with migration logic.
### `SQLiteMigrator` class
The new `SQLiteMigrator` class handles safely running database
migrations. It is initialized in the `SqliteDatabase` class's init, and
immediately runs all database migrations.
### `Migration` class
Migrations are reprsented by a `Migration` class, which has 3
attributes:
- `db_version: int`: The database version this migration results in.
- `app_version: str`: The semver app version this migration is run for.
- `migrate: Callable[[sqlite3.Cursor], None]`: A function that performs
the migration. It receives a cursor _only_, but can do anything it wants
to do. A convention is established for these functions.
All schema-creating SQL now lives in a `migrate` function. We haven't
needed to make any data migrations yet, but when we do, this will also
be handled within one of these callbacks.
### Migration Flow
First, migrations are registered with `SQLiteMigrator` with it's
`register_migration` method. This performs some basic checks of the
migration version.
After registering all migrations, they are run with the `run_migrations`
method. This does a few things:
- Creates a `version` table in the DB, if it doesn't already exist. This
table has `db_version INTEGER`, `app_version TEXT` and `migrated_at
DATETIME` columns.
- Sort the migrations by their `db_version`.
- Do some checks to see if we need a migration.
- Backs up the database (if it's a file database). The migration bails
out if this fails.
- Runs each migration. If there is a problem, restore from backup.
### Included Migrations
Migrations are in `invokeai/app/services/shared/sqlite/migrations`.
#### `migrate_1.py`
All\* schema SQL up to 3.4.0post2 is in `migration_1.py`. Running only
this migration should result in a database that is identical to the one
you get from starting up 3.4.0post2.
SQL in this migration is **idempotent** (same as it was when the SQL was
spread across the various services).
#### `migrate_2.py`
Schema changes through 3.5.0 (the upcoming release) are in
`migration_2.py`.
SQL in this migration is **not idempotent**. Future migrations need not
be idempotent, as the migration logic ensures each will only be run
once.
### \*Caveat - ItemStorage
This class provides a generic document-db-like interface for storing
objects. Our `graph_executions` and `graphs` tables are created and
managed by this service. This PR does not touch this class and therefore
does not touch either of those two tables.
We can decide how to handle those tables in the future as the need
arises.
### Change to Model Manager Metadata table
I noticed that there is a `model_manager_metadata` table which included
the app version, and whose `version` property wasn't accessed outside
the service.
I believe the new `version` table fulfills the purpose of this table,
and have removed it.
@lstein Please let me know if this is not right.
## QA Instructions, Screenshots, Recordings
1. Case 1 - Upgrade
- Back up your 3.4.0post2 database
- Run this PR
- It should upgrade your database and everything should work exactly
like it did before
2. Case 2 - New Install
- Move your database out of the invoke root so that when the app starts,
it creates a new one
- Run this PR
- It should work just like a new install
3. Case 3 - With an In-Memory Database
- Enable the in-memory memory database (set `use_memory_db` under
`Paths` in `invokeai.yaml` to `true`)
- Run this PR
- It should work just like a new install
## Added/updated tests?
- [x] Yes: Fairly comprehensive tests are added for the
`SQLiteMigrator`.
- [ ] No : _please replace this line with details on why tests
have not been included_
- use simpler pattern for migration dependencies
- move SqliteDatabase & migration to utility method `init_db`, use this in both the app and tests, ensuring the same db schema is used in both
This fixes a problem with `Annotated` which prevented us from using pydantic's `Field` to specify a discriminator for a union. We had to use FastAPI's `Body` as a workaround.
* selector added
* ref and useeffect added
* scrolling done using useeffect
* fixed scroll and changed the ref name
* fixed scroll again
* created hook for scroll logic
* feat(ui): debounce metadata fetch by 300ms
This vastly reduces the network requests when using the arrow keys to quickly skim through images.
* feat(ui): extract logic to determine virtuoso scrollToIndex align
This needs to be used in `useNextPrevImage()` to ensure the scrolling puts the image at the top or bottom appropriately
* feat(ui): add debounce to image workflow hook
This was spamming network requests like the metadata query
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Invocations now have a classification:
- Stable: LTS
- Beta: LTS planned, API may change
- Prototype: No LTS planned, API may change, may be removed entirely
The `@invocation` decorator has a new arg `classification`, and an enum `Classification` is added to `baseinvocation.py`.
The default is Stable; this is a non-breaking change.
The classification is presented in the node header as a hammer icon (Beta) or flask icon (prototype).
The icon has a tooltip briefly describing the classification.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
## Description
1. The new model manager sqlite3-based configuration record storage
system is automatically populated with probed values from existing
models found in the models path when `invokeai-web` starts up for the
first time. However, the user's customization of these models in
`invokeai.yaml`, including such things as the prediction type and model
description, are not automatically copied over. This PR enhances the
`invokeai-migrate-models-to-db` script so that any customized
configuration data from `invokeai.yaml` replaces the original probed
values. This script only needs to be run once, but it does not hurt to
run it additional times. In the near future, I'm going to register this
module with psychedelicious's sqlite migration system so that the update
happens automatically during database migration.
2. The SQL-based model config record system stores a JSON version of the
config, as well as several fields that are broken out into individual
columns for search/indexing purposes. This PR keeps the JSON and the
broken-out fields in sync using the `json_extract()` sqlite3 function to
populate the broken out `base`, `type`, `name`, `path` and `format`
fields in the `model_config` table.
3. Finally, this PR fixes the annoying `invokeai-web` shutdown message:
`TypeError: ModelInstallService.stop() takes 1 positional argument but 2
were given`
## Related Tickets & Documents
- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
If you've run `invokeai-web` at any time since PR #5039, your
`invokeai.db` will have a `model_config` table containing probe
information from all models in the invokeai models directory as well as
those in `autoimport` (if applicable). However, any models present in
`models.yaml` whose paths are outside these directories will not be
present. To add them, and to update the description and other values
from `models.yaml`, run the command `invokeai-migrate-models-to-db`. You
should see the missing models added to the database table with the
correct information.
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [X] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This PR does three things:
1) It separates out the script that creates the installer zipfile
(`create_installer.sh`) from the script that tags the repository with
the current release version (now called `tag_release.sh`)
2) It adds new targets to Makefile for running the installer script and
tagging.
3) It adds a `help` target that lists the Makefile targets:
```
$ make help
Developer commands:
ruff Run ruff, fixing any safely-fixable errors and formatting
ruff-unsafe Run ruff, fixing all fixable errors and formatting
mypy Run mypy using the config in pyproject.toml to identify type mismatches and other coding errors
mypy-all Run mypy ignoring the config in pyproject.tom but still ignoring missing imports
frontend-build Build the frontend in order to run on localhost:9090
frontend-dev Run the frontend in developer mode on localhost:5173
installer-zip Build the installer .zip file for the current version
tag-release Tag the GitHub repository with the current version (use at release time only!)
```
`help` is also the default target so that the help message will print
out when only `make` is issued.
## Related Tickets & Documents
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [X] No: not needed
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No
## Description
Additional tile generation nodes of
CalculateImageTilesEvenSplitInvocation &
CalculateImageTilesMinimumOverlapInvocation
Additional blending method of merge_tiles_with_seam_blending
Updated Node MergeTilesToImageInvocation with seam blending
## Related Tickets & Documents
<!--
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
Simplifies a couple things:
- Init is more straightforward
- It's clear in the migrator that the connection we are working with is related to the SqliteDatabase
- Simplify init args to path (None means use memory), logger, and verbose
- Add docstrings to SqliteDatabase (it had almost none)
- Update all usages of the class
CONTAINER_UID is used for the user ID within the container, however I noticed the UID was hard coded to 1000 in the Dockerfile chown -R command.
This leaves the default as 1000, but allows it to be overrriden by setting CONTAINER_UID.
- min_overlap removed * restrictions and round_to_8
- min_overlap handles tile size > image size by clipping the num tiles to 1.
- Updated assert test on min_overlap.
On Windows, we must ensure the connection to the database is closed before exiting the tempfile context.
Also, rejiggered the thing to use the file directly.
## What type of PR is this? (check all applicable)
- [X] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [X] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This is the next phase of the model manager refactor, as discussed with
@psychedelicious and @RyanJDick. This implements the model installer,
which is responsible for managing model weights on disk and installing
new models.
Currently only installation of local files and directories is supported.
Remote installation will be implemented after the queued download
manager is reviewed and approved.
Please see the documentation located at
[docs/contributing/MODEL_MANAGER.md](8695ad6f59/docs/contributing/MODEL_MANAGER.md (model-installation))
for an explanation of how this module works.
Things that have changed relative to the current implementation.
1. Model importation runs in a background thread. Access to the
installation status is through a ModelInstallJob object returned by the
`import_model()` call. In addition, the installation process generates a
series of `model_install` events on the event bus.
2. `model_install_progress` events are documented, but not currently
issued. These will be issued when background downloading is implemented.
3. The model installer currently runs in parallel to the current model
manager. The frontend continues to use `configs/models.yaml` and ignores
what is in the `model_config` table of `invokeai.db`.
4. When the installer is initialized at app startup time, it
synchronizes its database to the contents of the InvokeAI `models`
directory. The current model manager does this as well, so you will see
two log messages indicating that this directory is being scanned.
## Related Tickets & Documents
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
You can test using the FastAPI swagger pages at
http://localhost:9090/docs. Use the calls listed under
`model_manager_v2`. Be aware that only installation of local models
(indicated by their file or directory path) are currently supported.
## Added/updated tests?
- [X] Yes -- see
`tests/app/services/model_install/test_model_install.py`
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
In other words, build frontend when creating installer.
Changes to `create_installer.sh`
- If `python` is not in `PATH` but `python3` is, alias them (well, via function). This is needed on some machines to run the installer without symlinking to `python3`.
- Make the messages about pushing tags clearer. The script force-pushes, so it's possible to accidentally take destructive action. I'm not sure how to otherwise prevent damage, so I just added a warning.
- Print out `pwd` when prompting about being in the `installer` dir.
- Rebuild the frontend - if there is already a frontend build, first checks if the user wants to rebuild it.
- Checks for existence of `../build` dir before deleting - if the dir doesn't exist, the script errors and exits at this point.
- Format and spell check.
Other changes:
- Ignore `dist/` folder.
- Delete `dist/`.
**Note: you may need to use `git rm --cached invokeai/app/frontend/web/dist/` if git still wants to track `dist/`.**
Calling `inspect.getmembers()` on a pydantic field results in `getattr` being called on all members of the field. Pydantic has some attrs that are marked deprecated.
In our test suite, we do not filter deprecation warnings, so this is surfaced.
Use a context manager to ignore deprecation warnings when calling the function.
In the latest redux, unknown actions are typed as `unknown`. This forces type-safety upon us, requiring us to be more careful about the shape of actions.
In this case, we don't know if the rejection has a payload or what shape it may be in, so we need to do runtime checks. This is implemented with a simple zod schema, but probably the right way to handle this is to have consistent types in our RTK-Query error logic.
There are a few breaking changes, which I've addressed.
The vast majority of changes are related to new handling of `reselect`'s `createSelector` options.
For better or worse, we memoize just about all our selectors using lodash `isEqual` for `resultEqualityCheck`. The upgrade requires we explicitly set the `memoize` option to `lruMemoize` to continue using lodash here.
Doing that required changing our `defaultSelectorOptions`.
Instead of changing that and finding dozens of instances where we weren't using that and instead were defining selector options manually, I've created a pre-configured selector: `createMemoizedSelector`.
This is now used everywhere instead of `createSelector`.
- update all scripts
- update the frontend GH action
- remove yarn-related files
- update ignores
Yarn classic + storybook has some weird module resolution issue due to how it hoists dependencies.
See https://github.com/storybookjs/storybook/issues/22431#issuecomment-1630086092
When I did the `package.json` solution in this thread, it broke vite. Next option is to upgrade to yarn 3 or pnpm. I chose pnpm.
Using default_factory to autogenerate UUIDs doesn't make sense here, and results awkward typescript types.
Remove the default factory and instead manually create a UUID for workflow id. There are only two places where this needs to happen so it's not a big change.
This addresses an edge case where:
1. the workflow references fields that are present on the workflow's nodes, but not on the invocation templates for those nodes and
2. The invocation template for that type does exist
This should be a fairly obscure edge case, but could happen if a user fiddled around with the workflow manually.
I ran into it as a result of two nodes having accidentally mixed up their invocation types, a problem introduced with a wonky merge commit.
This logic is moved into a hook.
This is needed for our context menus to close when the user clicks something in reactflow. It needed to be extended to support menus also.
Disabling these introduces an issue where, if you were on an image with a workflow/metadata, then switch to one without, you can end up on a disabled tab. This could potentially cause a runtime error.
* chore: bump pydantic to 2.5.2
This release fixespydantic/pydantic#8175 and allows us to use `JsonValue`
* fix(ui): exclude public/en.json from prettier config
* fix(workflow_records): fix SQLite workflow insertion to ignore duplicates
* feat(backend): update workflows handling
Update workflows handling for Workflow Library.
**Updated Workflow Storage**
"Embedded Workflows" are workflows associated with images, and are now only stored in the image files. "Library Workflows" are not associated with images, and are stored only in DB.
This works out nicely. We have always saved workflows to files, but recently began saving them to the DB in addition to in image files. When that happened, we stopped reading workflows from files, so all the workflows that only existed in images were inaccessible. With this change, access to those workflows is restored, and no workflows are lost.
**Updated Workflow Handling in Nodes**
Prior to this change, workflows were embedded in images by passing the whole workflow JSON to a special workflow field on a node. In the node's `invoke()` function, the node was able to access this workflow and save it with the image. This (inaccurately) models workflows as a property of an image and is rather awkward technically.
A workflow is now a property of a batch/session queue item. It is available in the InvocationContext and therefore available to all nodes during `invoke()`.
**Database Migrations**
Added a `SQLiteMigrator` class to handle database migrations. Migrations were needed to accomodate the DB-related changes in this PR. See the code for details.
The `images`, `workflows` and `session_queue` tables required migrations for this PR, and are using the new migrator. Other tables/services are still creating tables themselves. A followup PR will adapt them to use the migrator.
**Other/Support Changes**
- Add a `has_workflow` column to `images` table to indicate that the image has an embedded workflow.
- Add handling for retrieving the workflow from an image in python. The image file must be fetched, the workflow extracted, and then sent to client, avoiding needing the browser to parse the image file. With the `has_workflow` column, the UI knows if there is a workflow to be fetched, and only fetches when the user requests to load the workflow.
- Add route to get the workflow from an image
- Add CRUD service/routes for the library workflows
- `workflow_images` table and services removed (no longer needed now that embedded workflows are not in the DB)
* feat(ui): updated workflow handling (WIP)
Clientside updates for the backend workflow changes.
Includes roughed-out workflow library UI.
* feat: revert SQLiteMigrator class
Will pursue this in a separate PR.
* feat(nodes): do not overwrite custom node module names
Use a different, simpler method to detect if a node is custom.
* feat(nodes): restore WithWorkflow as no-op class
This class is deprecated and no longer needed. Set its workflow attr value to None (meaning it is now a no-op), and issue a warning when an invocation subclasses it.
* fix(nodes): fix get_workflow from queue item dict func
* feat(backend): add WorkflowRecordListItemDTO
This is the id, name, description, created at and updated at workflow columns/attrs. Used to display lists of workflowsl
* chore(ui): typegen
* feat(ui): add workflow loading, deleting to workflow library UI
* feat(ui): workflow library pagination button styles
* wip
* feat: workflow library WIP
- Save to library
- Duplicate
- Filter/sort
- UI/queries
* feat: workflow library - system graphs - wip
* feat(backend): sync system workflows to db
* fix: merge conflicts
* feat: simplify default workflows
- Rename "system" -> "default"
- Simplify syncing logic
- Update UI to match
* feat(workflows): update default workflows
- Update TextToImage_SD15
- Add TextToImage_SDXL
- Add README
* feat(ui): refine workflow list UI
* fix(workflow_records): typo
* fix(tests): fix tests
* feat(ui): clean up workflow library hooks
* fix(db): fix mis-ordered db cleanup step
It was happening before pruning queue items - should happen afterwards, else you have to restart the app again to free disk space made available by the pruning.
* feat(ui): tweak reset workflow editor translations
* feat(ui): split out workflow redux state
The `nodes` slice is a rather complicated slice. Removing `workflow` makes it a bit more reasonable.
Also helps to flatten state out a bit.
* docs: update default workflows README
* fix: tidy up unused files, unrelated changes
* fix(backend): revert unrelated service organisational changes
* feat(backend): workflow_records.get_many arg "filter_text" -> "query"
* feat(ui): use custom hook in current image buttons
Already in use elsewhere, forgot to use it here.
* fix(ui): remove commented out property
* fix(ui): fix workflow loading
- Different handling for loading from library vs external
- Fix bug where only nodes and edges loaded
* fix(ui): fix save/save-as workflow naming
* fix(ui): fix circular dependency
* fix(db): fix bug with releasing without lock in db.clean()
* fix(db): remove extraneous lock
* chore: bump ruff
* fix(workflow_records): default `category` to `WorkflowCategory.User`
This allows old workflows to validate when reading them from the db or image files.
* hide workflow library buttons if feature is disabled
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
* add middleware to handle 403 errors
* remove log
* add logic to warn the user if not all requested images could be deleted
* lint
* fix copy
* feat(ui): simplify batchEnqueuedListener error toast logic
* feat(ui): use translations for error messages
* chore(ui): lint
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
You can only have one pre-commit setup on a repo. Removing husky so it
doesn't interfere with the python pre-commit.
## Related Tickets & Documents
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below.
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- Related Issue
https://discord.com/channels/1020123559063990373/1149513625321603162/1181752622684831884
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because: minor bug
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
While writing regression tests for the queued downloader I discovered
that when using `InvokeAILogger.get_logger()` to fetch a
previously-created logger it resets that logger's log level to the
default specified in the global config. In other words, this didn't work
as expected:
```
import logging
from invokeai.backend.util.logging import InvokeAILogger
logger1 = InvokeAILogger.get_logger('TestLogger')
logger1.setLevel(logging.DEBUG)
logger2 = InvokeAILogger.get_logger('TestLogger')
assert logger1.level == logging.DEBUG
assert logger2.level == logging.DEBUG
```
This PR fixes the problem and adds a corresponding pytest.
## Related Tickets & Documents
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [X] Yes
- [ ] No
## [optional] Are there any post deployment tasks we need to perform?
Adds logic to `DiskLatentsStorage.start()` to empty the latents folder on startup.
Adds start and stop methods to `ForwardCacheLatentsStorage`. This is required for `DiskLatentsStorage.start()` to be called, due to how this particular service breaks the direct DI pattern, wrapping the underlying storage with a cache.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This adds support for at least some of the SDXL embeddings currently
available on Civitai. The embeddings I have tested include:
- https://civitai.com/models/154898/marblingtixl?modelVersionId=173668
- https://civitai.com/models/148131?modelVersionId=167640
-
https://civitai.com/models/123485/hannah-ferguson-or-sdxl-or-comfyui-only-or-embedding?modelVersionId=134674
(said to be "comfyui only")
-
https://civitai.com/models/185938/kendall-jenner-sdxl-embedding?modelVersionId=208785
I am _not entirely sure_ that I have implemented support in the most
elegant way. The issue is that these embeddings have two weight tensors,
`clip_g` and `clip_l`, which correspond to `text_encoder` and
`text_encoder_2` in the main model. When the patcher calls the
ModelPatcher's `apply_ti()` method, I simply check the dimensions of the
incoming text encoder and choose the weights that match the dimensions
of the encoder.
While writing this, I also ran into a possible issue with the Compel
library's `get_pooled_embeddings()` call. It pads the input token list
to the model's max token length and then calls the TI manager to add the
additional tokens from the embedding. However, this ends up making the
input token list longer than the max length, and CLIPTextEncoder crashes
with a tensor size mismatch. I worked around this behavior by making the
TI manager's `expand_textual_inversion_token_ids_if_necessary()` method
remove the excess pads at the end of the token list.
Also note that I have made similar changes to `apply_ti()` in the
ONNXModelPatcher, but haven't tested them yet.
## Related Tickets & Documents
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- Related Issue #
- Closes#4401
## QA Instructions, Screenshots, Recordings
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [X] No : We need to create tests for model patching...
## [optional] Are there any post deployment tasks we need to perform?
IndexedDB has a much larger storage limit than LocalStorage, and is widely supported.
Implemented as a custom storage driver for `redux-remember` via `idb-keyval`. `idb-keyval` is a simple wrapper for IndexedDB that allows it to be used easily as a key-value store.
The logic to clear persisted storage has been updated throughout the app.
- Reset init image, control adapter images, and node image fields when their selected image fails to load
- Only do this if the app is connected via socket (this indicates that the image is "really" gone, and there isn't just a transient network issue)
It's possible for image parameters/nodes/states to have reference a deleted image. For example, a resize image node might have an image set on it, and the workflow saved. The workflow contains a hard reference to that image.
The image is deleted and the workflow loaded again later. The deleted image is still in that workflow, but the app doesn't detect that. The result is that the workflow/graph appears to be valid, but will fail on invoke.
This creates a really confusing user experience, where when somebody shares a workflow with an image baked into it, and another person opens it, everything *looks* ok, but the workflow fails with a mysterious error about a missing image.
The problem affects node images, control adapter images and the img2img init image. Resetting the image when it fails to load *and* socket is connected resolves this in a simple way.
The problem also affects canvas images, but we have handle that by displaying an error fallback image, so no change is made there.
Closes#5121
- Parse `anyOf` for enums (present when they are optional)
- Consolidate `FieldTypeParseError` and `UnsupportedFieldTypeError` into `FieldParseError` (there was no difference in handling and it simplifies things a bit)
* add centerpadcrop node
- Allows users to add padding to or crop images from the center
- Also outputs a white mask with the dimensions of the output image for use with outpainting
* add CenterPadCrop to NODES.md
Updates NODES.md with CenterPadCrop entry.
* remove mask & output class
- Remove "ImageMaskOutput" where both image and mask are output
- Remove ability to output mask from node
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Use UTF-8 encoding on reading prompts from files to allow Unicode characters to load correctly.
The following examples currently will not load correctly from a file:
Hello, 世界!
😭🤮💔
Added New Match Histogram node
Updated XYGrid nodes and Prompt Tools nodes
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [x] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
This new name more accurately represents that these are fields with a type of `T | T[]`, where the "base" type must be the same on both sides of the union.
Custom nodes have a new attribute `node_pack` indicating the node pack they came from.
- This is displayed in the UI in the icon icon tooltip.
- If a workflow is loaded and a node is unavailable, its node pack will be displayed (if it is known).
- If a workflow is migrated from v1 to v2, and the node is unknown, it falls back to "Unknown". If the missing node pack is installed and the node is updated, the node pack will be updated as expected.
Node authors may now create their own arbitrary/custom field types. Any pydantic model is supported.
Two notes:
1. Your field type's class name must be unique.
Suggest prefixing fields with something related to the node pack as a kind of namespace.
2. Custom field types function as connection-only fields.
For example, if your custom field has string attributes, you will not get a text input for that attribute when you give a node a field with your custom type.
This is the same behaviour as other complex fields that don't have custom UIs in the workflow editor - like, say, a string collection.
feat(ui): fix tooltips for custom types
We need to hold onto the original type of the field so they don't all just show up as "Unknown".
fix(ui): fix ts error with custom fields
feat(ui): custom field types connection validation
In the initial commit, a custom field's original type was added to the *field templates* only as `originalType`. Custom fields' `type` property was `"Custom"`*. This allowed for type safety throughout the UI logic.
*Actually, it was `"Unknown"`, but I changed it to custom for clarity.
Connection validation logic, however, uses the *field instance* of the node/field. Like the templates, *field instances* with custom types have their `type` set to `"Custom"`, but they didn't have an `originalType` property. As a result, all custom fields could be connected to all other custom fields.
To resolve this, we need to add `originalType` to the *field instances*, then switch the validation logic to use this instead of `type`.
This ended up needing a bit of fanagling:
- If we make `originalType` a required property on field instances, existing workflows will break during connection validation, because they won't have this property. We'd need a new layer of logic to migrate the workflows, adding the new `originalType` property.
While this layer is probably needed anyways, typing `originalType` as optional is much simpler. Workflow migration logic can come layer.
(Technically, we could remove all references to field types from the workflow files, and let the templates hold all this information. This feels like a significant change and I'm reluctant to do it now.)
- Because `originalType` is optional, anywhere we care about the type of a field, we need to use it over `type`. So there are a number of `field.originalType ?? field.type` expressions. This is a bit of a gotcha, we'll need to remember this in the future.
- We use `Array.prototype.includes()` often in the workflow editor, e.g. `COLLECTION_TYPES.includes(type)`. In these cases, the const array is of type `FieldType[]`, and `type` is is `FieldType`.
Because we now support custom types, the arg `type` is now widened from `FieldType` to `string`.
This causes a TS error. This behaviour is somewhat controversial (see https://github.com/microsoft/TypeScript/issues/14520). These expressions are now rewritten as `COLLECTION_TYPES.some((t) => t === type)` to satisfy TS. It's logically equivalent.
fix(ui): typo
feat(ui): add CustomCollection and CustomPolymorphic field types
feat(ui): add validation for CustomCollection & CustomPolymorphic types
- Update connection validation for custom types
- Use simple string parsing to determine if a field is a collection or polymorphic type.
- No longer need to keep a list of collection and polymorphic types.
- Added runtime checks in `baseinvocation.py` to ensure no fields are named in such a way that it could mess up the new parsing
chore(ui): remove errant console.log
fix(ui): rename 'nodes.currentConnectionFieldType' -> 'nodes.connectionStartFieldType'
This was confusingly named and kept tripping me up. Renamed to be consistent with the `reactflow` `ConnectionStartParams` type.
fix(ui): fix ts error
feat(nodes): add runtime check for custom field names
"Custom", "CustomCollection" and "CustomPolymorphic" are reserved field names.
chore(ui): add TODO for revising field type names
wip refactor fieldtype structured
wip refactor field types
wip refactor types
wip refactor types
fix node layout
refactor field types
chore: mypy
organisation
organisation
organisation
fix(nodes): fix field orig_required, field_kind and input statuses
feat(nodes): remove broken implementation of default_factory on InputField
Use of this could break connection validation due to the difference in node schemas required fields and invoke() required args.
Removed entirely for now. It wasn't ever actually used by the system, because all graphs always had values provided for fields where default_factory was used.
Also, pydantic is smart enough to not reuse the same object when specifying a default value - it clones the object first. So, the common pattern of `default_factory=list` is extraneous. It can just be `default=[]`.
fix(nodes): fix InputField name validation
workflow validation
validation
chore: ruff
feat(nodes): fix up baseinvocation comments
fix(ui): improve typing & logic of buildFieldInputTemplate
improved error handling in parseFieldType
fix: back compat for deprecated default_factory and UIType
feat(nodes): do not show node packs loaded log if none loaded
chore(ui): typegen
We used the `RealESRGANer` utility class from the repo. It handled model loading and tiled upscaling logic.
Unfortunately, it hasn't been updated in over a year, had no types, and annoyingly printed to console.
I've adapted the class, cleaning it up a bit and removing the bits that are not relevant for us.
Upscaling functionality is identical.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [x] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No
## Description
Fixes wrong Q&A Troubleshooting link (original leads to 404)
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
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## Added/updated tests?
- [ ] Yes
- [x] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
* working on recall height/width
* working on adding resize
* working on feature
* fix(ui): move added translation from dist/ to public/
* fix(ui): use `metadata` as hotkey cb dependency
Using `imageDTO` may result in stale data being used
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
* eslint added and new string added
* strings and translation hook added
* more changes made
* missing translation added
* final errors resolve in progress
* all errors resolved
* fix(ui): fix missing import of `t()`
* fix(ui): use plurals for moving images to board translation
* fix(ui): fix typo in translation key
* fix(ui): do not use translation for "invoke ai"
* chore(ui): lint
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because: Small obvious fix
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This one-line patch adds support for LCM models such as
`SimianLuo/LCM_Dreamshaper_v7`
## Related Tickets & Documents
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below.
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- Closes#4951
## QA Instructions, Screenshots, Recordings
Try installing `SimianLuo/LCM_Dreamshaper_v7` and using with CFG 2.5 and
the LCM scheduler.
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [X] Not needed
This PR adds a link and description to the Remote Image node.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [x] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
Adds a description and link to a new community node
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
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## Added/updated tests?
- [ ] Yes
- [x] No : This is only a documentation change
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [x] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x] No, because: community nodes already use these import paths
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
The example custom node code in the docs uses old (?) import paths for
invokeai modules. These paths cause the module to fail to load. This PR
updates them.
## QA Instructions, Screenshots, Recordings
- [x] verified that example code is loaded successfully when copied to
custom nodes directory
- [x] verified that custom node works as expected in workflows
## Added/updated tests?
- [ ] Yes
- [x] No : documentation update
## What type of PR is this? (check all applicable)
3.4.0post3
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
N/A
## Description
3.4.0post2 release - mainly fixes duplicate LoRA patching
* first string only to test
* more strings changed
* almost half strings added in json file
* more strings added
* more changes
* few strings and t function changed
* resolved
* errors resolved
* chore(ui): fmt en.json
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
## What type of PR is this? (check all applicable)
3.4 Release Updates
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
## Related Tickets & Documents
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
Resolves two bugs introduced in #5106:
1. Linear UI images sometimes didn't make it to the gallery.
This was a race condition. The VAE decode nodes were handled by the
socketInvocationComplete listener. At that moment, the image was marked
as intermediate. Immediately after this node was handled, a
LinearUIOutputInvocation, introduced in #5106, was handled by
socketInvocationComplete. This node internally sets changed the image to
not intermediate.
During the handling of that socketInvocationComplete, RTK Query would
sometimes use its cache instead of retrieving the image DTO again. The
result is that the UI never got the message that the image was not
intermediate, so it wasn't added to the gallery.
This is resolved by refactoring the socketInvocationComplete listener.
We now skip the gallery processing for linear UI events, except for the
LinearUIOutputInvocation. Images now always make it to the gallery, and
network requests to get image DTOs are substantially reduced.
2. Canvas temp images always went into the gallery
The LinearUIOutputInvocation was always setting its image's
is_intermediate to false. This included all canvas images and resulted
in all canvas temp images going to gallery.
This is resolved by making LinearUIOutputInvocation set is_intermediate
based on `self.is_intermediate`. The behaviour now more or less
mirroring the behaviour of is_intermediate on other image-outputting
nodes, except it doesn't save the image again - only changes it.
One extra minor change - LinearUIOutputInvocation only changes
is_intermediate if it differs from the image's current setting. Very
minor optimisation.
## Related Tickets & Documents
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- Related Issue
https://discord.com/channels/1020123559063990373/1149513625321603162/1174721072826945638
## QA Instructions, Screenshots, Recordings
Try to reproduce the issues described int he discord thread:
- Images should always go to the gallery from txt2img and img2img
- Canvas temp images should not go to the gallery unless auto-save is
enabled
<!--
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software specifications as well as any other pertinent information.
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## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [X] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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## Added/updated tests?
- [ ] Yes
- [X] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
Resolves two bugs introduced in #5106:
1. Linear UI images sometimes didn't make it to the gallery.
This was a race condition. The VAE decode nodes were handled by the socketInvocationComplete listener. At that moment, the image was marked as intermediate. Immediately after this node was handled, a LinearUIOutputInvocation, introduced in #5106, was handled by socketInvocationComplete. This node internally sets changed the image to not intermediate.
During the handling of that socketInvocationComplete, RTK Query would sometimes use its cache instead of retrieving the image DTO again. The result is that the UI never got the message that the image was not intermediate, so it wasn't added to the gallery.
This is resolved by refactoring the socketInvocationComplete listener. We now skip the gallery processing for linear UI events, except for the LinearUIOutputInvocation. Images now always make it to the gallery, and network requests to get image DTOs are substantially reduced.
2. Canvas temp images always went into the gallery
The LinearUIOutputInvocation was always setting its image's is_intermediate to false. This included all canvas images and resulted in all canvas temp images going to gallery.
This is resolved by making LinearUIOutputInvocation set is_intermediate based on `self.is_intermediate`. The behaviour now more or less mirroring the behaviour of is_intermediate on other image-outputting nodes, except it doesn't save the image again - only changes it.
One extra minor change - LinearUIOutputInvocation only changes is_intermediate if it differs from the image's current setting. Very minor optimisation.
## What type of PR is this? (check all applicable)
- [x] Refactor
- [ ] Feature
- [ ] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
[feat: add private node for linear UI image
outputting](4599517c6c)
Add a LinearUIOutputInvocation node to be the new terminal node for
Linear UI graphs. This node is private and hidden from the Workflow
Editor, as it is an implementation detail.
The Linear UI was using the Save Image node for this purpose. It allowed
every linear graph to end a single node type, which handled saving
metadata and board. This substantially reduced the complexity of the
linear graphs.
This caused two related issues:
- Images were saved to disk twice
- Noticeable delay between when an image was decoded and showed up in
the UI
To resolve this, the new LinearUIOutputInvocation node will handle
adding an image to a board if one is provided.
Metadata is no longer provided in this unified node. Instead, the
metadata graph helpers now need to know the node to add metadata to and
provide it to the last node that actually outputs an image. This is a
`l2i` node for txt2img & img2img graphs, and a different
image-outputting node for canvas graphs.
HRF poses another complication, in that it changes the terminal node. To
handle this, a new metadata util is added called
`setMetadataReceivingNode()`. HRF calls this to change the node that
should receive the graph's metadata.
This resolves the duplicate images issue and improves perf without
otherwise changing the user experience.
---
Also fixed an issue with HRF metadata.
## Related Tickets & Documents
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- Closes#4688
- Closes#4645
## QA Instructions, Screenshots, Recordings
Generate some images with and without a board selected. Images should
end up in the right board per usual, but a bit quicker. Metadata should
still work.
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
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Add a LinearUIOutputInvocation node to be the new terminal node for Linear UI graphs. This node is private and hidden from the Workflow Editor, as it is an implementation detail.
The Linear UI was using the Save Image node for this purpose. It allowed every linear graph to end a single node type, which handled saving metadata and board. This substantially reduced the complexity of the linear graphs.
This caused two related issues:
- Images were saved to disk twice
- Noticeable delay between when an image was decoded and showed up in the UI
To resolve this, the new LinearUIOutputInvocation node will handle adding an image to a board if one is provided.
Metadata is no longer provided in this unified node. Instead, the metadata graph helpers now need to know the node to add metadata to and provide it to the last node that actually outputs an image. This is a `l2i` node for txt2img & img2img graphs, and a different image-outputting node for canvas graphs.
HRF poses another complication, in that it changes the terminal node. To handle this, a new metadata util is added called `setMetadataReceivingNode()`. HRF calls this to change the node that should receive the graph's metadata.
This resolves the duplicate images issue and improves perf without otherwise changing the user experience.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [X] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
## Related Tickets & Documents
<!--
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No
## Description
[fix(nodes): bump version of nodes post-pydantic
v2](5cb3fdb64c)
This was not done, despite new metadata fields being added to many
nodes.
[feat(ui): add update node
functionality](3f6e8e9d6b)
A workflow's nodes may update itself, if its major version matches the
template's major version.
If the major versions do not match, the user will need to delete and
re-add the node (current behaviour).
The update functionality is not automatic (for now). The logic to update
the node is pretty simple, but I want to ensure it works well first
before doing it automatically when a workflow is loaded.
- New `Details` tab on Workflow Inspector, displays node title, type,
version, and notes
- Button to update the node is displayed on the `Details` tab
- Add hook to determine if a node needs an update, may be updated (i.e.
major versions match), and the callback to update the node in state
- Remove the notes modal from the little info icon
- Modularize the node building logic
## Related Tickets & Documents
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Probably exist but not sure where.
## QA Instructions, Screenshots, Recordings
Load an old workflow with nodes that need to be updated. Click on each
node that needs updating and click the update button. Workflow should
work.
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
A workflow's nodes may update itself, if its major version matches the template's major version.
If the major versions do not match, the user will need to delete and re-add the node (current behaviour).
The update functionality is not automatic (for now). The logic to update the node is pretty simple, but I want to ensure it works well first before doing it automatically when a workflow is loaded.
- New `Details` tab on Workflow Inspector, displays node title, type, version, and notes
- Button to update the node is displayed on the `Details` tab
- Add hook to determine if a node needs an update, may be updated (i.e. major versions match), and the callback to update the node in state
- Remove the notes modal from the little info icon
- Modularize the node building logic
## Description
pin torch==2.1.0, torchvision=0.16.0
Prevents accidental upgrade to unreleased torch 2.1.1, which breaks
stuff
## Related Tickets & Documents
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- Related Issue #5065
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because: it is trivial
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
## Description
After the switch to the "ruff" linter, I noticed that the stylecheck
workflow is still described as "black" in the action logs. This small PR
should fix the issue.
No breaking changes for us.
Pydantic is working on its own faster JSON parser, `jiter`, and 2.5.0 starts bringing this in. See https://github.com/pydantic/jiter
There are a number of other bugfixes and minor changes in this version of pydantic.
The FastAPI update is mostly internal but let's stay up to date.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [X] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
## Related Tickets & Documents
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [x] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
## Related Tickets & Documents
<!--
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [x] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [X] Refactor
## Have you discussed this change with the InvokeAI team?
- [X] Extensively
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
As discussed with @psychedelicious and @RyanJDick, this is the first
phase of the model manager refactor. In this phase, I've added support
for storing model configuration information the `invokeai.db` SQL3
database. All the code is separate from the original model manager, so
for the time being the frontend is still using the original YAML-based
configuration, so the web app still works.
To keep things clean, I've added a new FastAPI route called
`model_records` which can add, update, retrieve and delete model
records.
The architecture is described in the first section of
`docs/contributing/MODEL_MANAGER.md`.
## QA Instructions, Screenshots, Recordings
There is a pytest for the model sql storage backend in
`tests/backend/model_manager_2/test_model_storage_sql.py`.
To populate `invokeai.db` with models from your current `models.yaml`,
do the following:
1. Stop the running server
2. Back up `invokeai.db`
3. Run `pip install -e .` to install the command used in the next step.
4. Run `invokeai-migrate-models-to-db`
This will iterate through `models.yaml` and create equivalent database
entries in the `model_config` table of `invokeai.db`. Only the models
named in the yaml file will be migrated, so anything that is autoloaded
will be ignored.
Note that in order to get the `model_records` router to be recognized by
the swagger API, I had to rebuild the frontend. Not sure why this was
necessary and would appreciate a pointer on a less radical way to do
this.
## Added/updated tests?
- [X] Yes
- [ ] No
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [X] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because it's required
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No, not necessary
## Description
We use Pytorch ~2.1.0 as a dependency for InvokeAI, but the installer
still installs 2.0.1 first until Invoke AIs dependencies kick in which
causes it to get deleted anyway and replaced with 2.1.0. This is
unnecessary and probably not wanted.
Fixed the dependencies for the installation script to install Pytorch
~2.1.0 to begin with.
P.s. Is there any reason why "torchmetrics==0.11.4" is pinned? What is
the reason for that? Does that change with Pytorch 2.1? It seems to work
since we use it already. It would be nice to know the reason.
Greetings
## Related Tickets & Documents
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
Bit of a cleanup.
[chore(ui): delete unused
files](5eaea9dd64)
[feat(ui): add eslint rule
react/jsx-no-bind](3a0ec635c9)
This rule enforces no arrow functions in component props. In practice,
it means all functions passed as component props must be wrapped in
`useCallback()`.
This is a performance optimization to prevent unnecessary rerenders.
The rule is added and all violations have been fixed, whew!
[chore(ui): move useCopyImageToClipboard to
common/hooks/](f2d26a3a3c)
[chore(ui): move MM components & store to
features/](bb52861896)
Somehow they had ended up in `features/ui/tabs` which isn't right
## QA Instructions, Screenshots, Recordings
UI should still work.
It builds successfully, and I tested things out - looks good to me.
Do not use `strict=True` when scaling controlnet conditioning.
When using `guess_mode` (e.g. `more_control` or `more_prompt`), `down_block_res_samples` and `scales` are zipped.
These two objects are of different lengths, so using zip's strict mode raises an error.
In testing, `len(scales) === len(down_block_res_samples) + 1`.
It appears this behaviour is intentional, as the final "extra" item in `scales` is used immediately afterwards.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [X] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because: This is just housekeeping
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No, not needed
## Description
Update Accelerate to the most recent version. No breaking changes.
Tested for 1 week in productive use now.
## Related Tickets & Documents
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [x] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
This PR introduces [`ruff`](https://github.com/astral-sh/ruff) as the
only linter and formatter needed for the project. It is really fast.
Like, alarmingly fast.
It is a drop-in replacement for flake8, isort, black, and much more.
I've configured it similarly to our existing config.
Note: we had enabled a number of flake8 plugins but didn't have the
packages themselves installed, so they did nothing. Ruff used the
existing config, and found a good number of changes needed to adhere to
those flake8 plugins. I've resolved all violations.
### Code changes
- many
[flake8-comprehensions](https://docs.astral.sh/ruff/rules/#flake8-comprehensions-c4)
violations, almost all auto-fixed
- a good handful of
[flake8-bugbear](https://docs.astral.sh/ruff/rules/#flake8-bugbear-b)
violations
- handful of
[pycodestyle](https://docs.astral.sh/ruff/rules/#pycodestyle-e-w)
violations
- some formatting
### Developer Experience
[Ruff integrates with most
editors](https://docs.astral.sh/ruff/integrations/):
- Official VSCode extension
- `ruff-lsp` python package allows it to integrate with any LSP-capable
editor (vim, emacs, etc)
- Can be configured as an external tool in PyCharm
### Github Actions
I've updated the `style-checks` action to use ruff, and deleted the
`pyflakes` action.
## Related Tickets & Documents
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below.
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- Closes#5066
## QA Instructions, Screenshots, Recordings
Have a poke around, and run the app. There were some logic changes but
it was all pretty straightforward.
~~Not sure how to best test the changed github action.~~ Looks like it
just used the action from this PR, that's kinda unexpected but OK.
<!--
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
This rule enforces no arrow functions in component props. In practice, it means all functions passed as component props must be wrapped in `useCallback()`.
This is a performance optimization to prevent unnecessary rerenders.
The rule is added and all violations have been fixed, whew!
* adding VAE recall when using all parameters
* adding VAE to the RecallParameters tab in ImageMetadataActions
* checking for nil vae and casting to null if undefined
* adding default VAE to recall actions list if VAE is nullish
* fix(ui): use `lodash-es` for tree-shakeable imports
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
* working
* added selector for method
* refactoring graph
* added ersgan method
* fixing yarn build
* add tooltips
* a conjuction
* rephrase
* removed manual sliders, set HRF to calculate dimensions automatically to match 512^2 pixels
* working
* working
* working
* fixed tooltip
* add hrf to use all parameters
* adding hrf method to parameters
* working on parameter recall
* working on parameter recall
* cleaning
* fix(ui): fix unnecessary casts in addHrfToGraph
* chore(ui): use camelCase in addHrfToGraph
* fix(ui): do not add HRF metadata unless HRF is added to graph
* fix(ui): remove unused imports in addHrfToGraph
* feat(ui): do not hide HRF params when disabled, only disable them
* fix(ui): remove unused vars in addHrfToGraph
* feat(ui): default HRF str to 0.35, method ESRGAN
* fix(ui): use isValidBoolean to check hrfEnabled param
* fix(nodes): update CoreMetadataInvocation fields for HRF
* feat(ui): set hrf strength default to 0.45
* fix(ui): set default hrf strength in configSlice
* feat(ui): use translations for HRF features
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
## Related Tickets & Documents
<!--
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below.
For example having the text: "closes #1234" would connect the current
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [X] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes, with @blessedcoolant
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
This PR updates Transformers to the most recent version and fixes the
value `pad_to_multiple_of` for `text_encoder.resize_token_embeddings`
which was introduced with
https://github.com/huggingface/transformers/pull/25088 in Transformers
4.32.0.
According to the [Nvidia
Documentation](https://docs.nvidia.com/deeplearning/performance/dl-performance-matrix-multiplication/index.html#requirements-tc),
`Performance is better when equivalent matrix dimensions M, N, and K are
aligned to multiples of 8 bytes (or 64 bytes on A100) for FP16`
This fixes the following error that was popping up before every
invocation starting with Transformers 4.32.0
`You are resizing the embedding layer without providing a
pad_to_multiple_of parameter. This means that the new embedding
dimension will be None. This might induce some performance reduction as
Tensor Cores will not be available. For more details about this, or help
on choosing the correct value for resizing, refer to this guide:
https://docs.nvidia.com/deeplearning/performance/dl-performance-matrix-multiplication/index.html#requirements-tc`
This is my first "real" fix PR, so I hope this is fine. Please inform me
if there is anything wrong with this. I am glad to help.
Have a nice day and thank you!
## Related Tickets & Documents
<!--
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below.
For example having the text: "closes #1234" would connect the current
pull
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- Related Issue:
https://github.com/huggingface/transformers/issues/26303
- Related Discord discussion:
https://discord.com/channels/1020123559063990373/1154152783579197571
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
## Related Tickets & Documents
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- Closes #
## QA Instructions, Screenshots, Recordings
<!--
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No
## Description
## Related Tickets & Documents
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below.
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## QA Instructions, Screenshots, Recordings
<!--
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software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
We have a number of shared classes, objects, and functions that are used in multiple places. This causes circular import issues.
This commit creates a new `app/shared/` module to hold these shared classes, objects, and functions.
Initially, only `FreeUConfig` and `FieldDescriptions` are moved here. This resolves a circular import issue with custom nodes.
Other shared classes, objects, and functions will be moved here in future commits.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes: @psychedelicious told me to do this :)
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
## Related Tickets & Documents
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## QA Instructions, Screenshots, Recordings
<!--
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
I'm not sure if it's correct way of handling things, but correcting this
string to '==0.0.20' fixes xformers install for me - and maybe for
others it will too. Sorry for absolutely incorrect PR.
Please see [this
thread](https://github.com/facebookresearch/xformers/issues/740), this
is the issue I had (trying to install InvokeAI with
Automatic/Manual/StableMatrix way).
With ~=0.0.19 (0.0.22):
```
(InvokeAI) pip install torch torchvision xformers~=0.0.19
Collecting torch
Obtaining dependency information for torch from edce54779f/torch-2.1.0-cp311-cp311-win_amd64.whl.metadata
Using cached torch-2.1.0-cp311-cp311-win_amd64.whl.metadata (25 kB)
Collecting torchvision
Obtaining dependency information for torchvision from ab6f42af83/torchvision-0.16.0-cp311-cp311-win_amd64.whl.metadata
Using cached torchvision-0.16.0-cp311-cp311-win_amd64.whl.metadata (6.6 kB)
Collecting xformers
Using cached xformers-0.0.22.post3.tar.gz (3.9 MB)
Installing build dependencies ... done
Getting requirements to build wheel ... error
error: subprocess-exited-with-error
× Getting requirements to build wheel did not run successfully.
│ exit code: 1
╰─> [20 lines of output]
Traceback (most recent call last):
File "C:\Users\Drun\invokeai\.venv\Lib\site-packages\pip\_vendor\pyproject_hooks\_in_process\_in_process.py", line 353, in <module>
main()
File "C:\Users\Drun\invokeai\.venv\Lib\site-packages\pip\_vendor\pyproject_hooks\_in_process\_in_process.py", line 335, in main
json_out['return_val'] = hook(**hook_input['kwargs'])
^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "C:\Users\Drun\invokeai\.venv\Lib\site-packages\pip\_vendor\pyproject_hooks\_in_process\_in_process.py", line 118, in get_requires_for_build_wheel
return hook(config_settings)
^^^^^^^^^^^^^^^^^^^^^
File "C:\Users\Drun\AppData\Local\Temp\pip-build-env-rmhvraqj\overlay\Lib\site-packages\setuptools\build_meta.py", line 355, in get_requires_for_build_wheel
return self._get_build_requires(config_settings, requirements=['wheel'])
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "C:\Users\Drun\AppData\Local\Temp\pip-build-env-rmhvraqj\overlay\Lib\site-packages\setuptools\build_meta.py", line 325, in _get_build_requires
self.run_setup()
File "C:\Users\Drun\AppData\Local\Temp\pip-build-env-rmhvraqj\overlay\Lib\site-packages\setuptools\build_meta.py", line 507, in run_setup
super(_BuildMetaLegacyBackend, self).run_setup(setup_script=setup_script)
File "C:\Users\Drun\AppData\Local\Temp\pip-build-env-rmhvraqj\overlay\Lib\site-packages\setuptools\build_meta.py", line 341, in run_setup
exec(code, locals())
File "<string>", line 23, in <module>
ModuleNotFoundError: No module named 'torch'
```
With 0.0.20:
```
(InvokeAI) pip install torch torchvision xformers==0.0.20
Collecting torch
Obtaining dependency information for torch from edce54779f/torch-2.1.0-cp311-cp311-win_amd64.whl.metadata
Using cached torch-2.1.0-cp311-cp311-win_amd64.whl.metadata (25 kB)
Collecting torchvision
Obtaining dependency information for torchvision from ab6f42af83/torchvision-0.16.0-cp311-cp311-win_amd64.whl.metadata
Using cached torchvision-0.16.0-cp311-cp311-win_amd64.whl.metadata (6.6 kB)
Collecting xformers==0.0.20
Obtaining dependency information for xformers==0.0.20 from d4a42f582a/xformers-0.0.20-cp311-cp311-win_amd64.whl.metadata
Using cached xformers-0.0.20-cp311-cp311-win_amd64.whl.metadata (1.1 kB)
Collecting numpy (from xformers==0.0.20)
Obtaining dependency information for numpy from 3f826c6d15/numpy-1.26.0-cp311-cp311-win_amd64.whl.metadata
Using cached numpy-1.26.0-cp311-cp311-win_amd64.whl.metadata (61 kB)
Collecting pyre-extensions==0.0.29 (from xformers==0.0.20)
Using cached pyre_extensions-0.0.29-py3-none-any.whl (12 kB)
Collecting torch
Using cached torch-2.0.1-cp311-cp311-win_amd64.whl (172.3 MB)
Collecting filelock (from torch)
Obtaining dependency information for filelock from 97afbafd9d/filelock-3.12.4-py3-none-any.whl.metadata
Using cached filelock-3.12.4-py3-none-any.whl.metadata (2.8 kB)
Requirement already satisfied: typing-extensions in c:\users\drun\invokeai\.venv\lib\site-packages (from torch) (4.8.0)
Requirement already satisfied: sympy in c:\users\drun\invokeai\.venv\lib\site-packages (from torch) (1.12)
Collecting networkx (from torch)
Using cached networkx-3.1-py3-none-any.whl (2.1 MB)
Collecting jinja2 (from torch)
Using cached Jinja2-3.1.2-py3-none-any.whl (133 kB)
Collecting typing-inspect (from pyre-extensions==0.0.29->xformers==0.0.20)
Obtaining dependency information for typing-inspect from 107a22063b/typing_inspect-0.9.0-py3-none-any.whl.metadata
Using cached typing_inspect-0.9.0-py3-none-any.whl.metadata (1.5 kB)
Collecting requests (from torchvision)
Obtaining dependency information for requests from 0e2d847013/requests-2.31.0-py3-none-any.whl.metadata
Using cached requests-2.31.0-py3-none-any.whl.metadata (4.6 kB)
INFO: pip is looking at multiple versions of torchvision to determine which version is compatible with other requirements. This could take a while.
Collecting torchvision
Using cached torchvision-0.15.2-cp311-cp311-win_amd64.whl (1.2 MB)
Collecting pillow!=8.3.*,>=5.3.0 (from torchvision)
Obtaining dependency information for pillow!=8.3.*,>=5.3.0 from debe992677/Pillow-10.0.1-cp311-cp311-win_amd64.whl.metadata
Using cached Pillow-10.0.1-cp311-cp311-win_amd64.whl.metadata (9.6 kB)
Collecting MarkupSafe>=2.0 (from jinja2->torch)
Obtaining dependency information for MarkupSafe>=2.0 from 08b85bc194/MarkupSafe-2.1.3-cp311-cp311-win_amd64.whl.metadata
Using cached MarkupSafe-2.1.3-cp311-cp311-win_amd64.whl.metadata (3.1 kB)
Collecting charset-normalizer<4,>=2 (from requests->torchvision)
Obtaining dependency information for charset-normalizer<4,>=2 from 50028bbb26/charset_normalizer-3.3.0-cp311-cp311-win_amd64.whl.metadata
Using cached charset_normalizer-3.3.0-cp311-cp311-win_amd64.whl.metadata (33 kB)
Collecting idna<4,>=2.5 (from requests->torchvision)
Using cached idna-3.4-py3-none-any.whl (61 kB)
Collecting urllib3<3,>=1.21.1 (from requests->torchvision)
Obtaining dependency information for urllib3<3,>=1.21.1 from 9957270221/urllib3-2.0.6-py3-none-any.whl.metadata
Using cached urllib3-2.0.6-py3-none-any.whl.metadata (6.6 kB)
Collecting certifi>=2017.4.17 (from requests->torchvision)
Obtaining dependency information for certifi>=2017.4.17 from 2234eab223/certifi-2023.7.22-py3-none-any.whl.metadata
Using cached certifi-2023.7.22-py3-none-any.whl.metadata (2.2 kB)
Requirement already satisfied: mpmath>=0.19 in c:\users\drun\invokeai\.venv\lib\site-packages (from sympy->torch) (1.3.0)
Collecting mypy-extensions>=0.3.0 (from typing-inspect->pyre-extensions==0.0.29->xformers==0.0.20)
Using cached mypy_extensions-1.0.0-py3-none-any.whl (4.7 kB)
Using cached xformers-0.0.20-cp311-cp311-win_amd64.whl (97.6 MB)
Using cached Pillow-10.0.1-cp311-cp311-win_amd64.whl (2.5 MB)
Using cached filelock-3.12.4-py3-none-any.whl (11 kB)
Using cached numpy-1.26.0-cp311-cp311-win_amd64.whl (15.8 MB)
Using cached requests-2.31.0-py3-none-any.whl (62 kB)
Using cached certifi-2023.7.22-py3-none-any.whl (158 kB)
Using cached charset_normalizer-3.3.0-cp311-cp311-win_amd64.whl (97 kB)
Using cached MarkupSafe-2.1.3-cp311-cp311-win_amd64.whl (17 kB)
Using cached urllib3-2.0.6-py3-none-any.whl (123 kB)
Using cached typing_inspect-0.9.0-py3-none-any.whl (8.8 kB)
Installing collected packages: urllib3, pillow, numpy, networkx, mypy-extensions, MarkupSafe, idna, filelock, charset-normalizer, certifi, typing-inspect, requests, jinja2, torch, pyre-extensions, xformers, torchvision
Successfully installed MarkupSafe-2.1.3 certifi-2023.7.22 charset-normalizer-3.3.0 filelock-3.12.4 idna-3.4 jinja2-3.1.2 mypy-extensions-1.0.0 networkx-3.1 numpy-1.26.0 pillow-10.0.1 pyre-extensions-0.0.29 requests-2.31.0 torch-2.0.1 torchvision-0.15.2 typing-inspect-0.9.0 urllib3-2.0.6 xformers-0.0.20
```
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x] No, because: I'm no-brainer. It fixed issue for me, so I did PR.
Who knows?
## Technical details:
Windows 11, Standalone clean and freshly-installed Python 3.11
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
## Description
Removing LowRA from the initial models as it's been deleted from
CivitAI.
## Related Tickets & Documents
https://discord.com/channels/1020123559063990373/1168415065205112872
- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
Improve LoRA patching speed with the following changes:
- Calculate LoRA layer weights on the same device as the target model.
Prior to this change, weights were always calculated on the CPU. If the
target model is on the GPU, this significantly improves performance.
- Move models to their target devices _before_ applying LoRA patches.
- Improve the ordering of Tensor copy / cast operations.
## QA Instructions, Screenshots, Recordings
Tests:
- [x] Tested with a CUDA GPU, saw savings of ~10secs with 1 LoRA applied
to an SDXL model.
- [x] No regression in CPU-only environment
- [ ] No regression (and possible improvement?) on Mac with MPS.
- [x] Weights get restored correctly after using a LoRA
- [x] Stacking multiple LoRAs
Please hammer away with a variety of LoRAs in case there is some edge
case that I've missed.
## Added/updated tests?
- [x] Yes (Added some minimal unit tests. Definitely would benefit from
more, but it's a step in the right direction.)
- [ ] No
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This PR gives the user the option of upgrading to the latest PRE-RELEASE
in addition to the default of updating to the latest release. This will
allow users to conveniently try out the latest pre-release for a while
and then back out to the official release if it doesn't work for them.
Added Average Images node
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [X] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Added a new community node that averages input images.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This PR prevents the invokeai update script from offering prereleases.
Currently translated at 37.7% (460 of 1217 strings)
translationBot(ui): update translation (German)
Currently translated at 36.4% (444 of 1217 strings)
translationBot(ui): update translation (German)
Currently translated at 36.0% (439 of 1217 strings)
Co-authored-by: Alexander Eichhorn <pfannkuchensack@einfach-doof.de>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/de/
Translation: InvokeAI/Web UI
Currently translated at 37.7% (460 of 1217 strings)
translationBot(ui): update translation (German)
Currently translated at 36.4% (444 of 1217 strings)
translationBot(ui): update translation (German)
Currently translated at 36.4% (443 of 1217 strings)
translationBot(ui): update translation (German)
Currently translated at 36.0% (439 of 1217 strings)
translationBot(ui): update translation (German)
Currently translated at 35.5% (433 of 1217 strings)
Co-authored-by: Fabian Bahl <fabian98@bahl-netz.de>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/de/
Translation: InvokeAI/Web UI
Currently translated at 36.0% (439 of 1217 strings)
translationBot(ui): update translation (German)
Currently translated at 35.5% (433 of 1217 strings)
Co-authored-by: Jaulustus <jaulustus@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/de/
Translation: InvokeAI/Web UI
Currently translated at 56.1% (683 of 1217 strings)
translationBot(ui): update translation (Japanese)
Currently translated at 40.3% (491 of 1217 strings)
Co-authored-by: Gohsuke Shimada <ghoskay@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ja/
Translation: InvokeAI/Web UI
Update to Load Video Frame node to reflect changes made in link
locations... a.k.a. fixing broken links.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [x ] Documentation Update
- [x ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x ] No, because: Its just a doc change to fix links I made for
resources that the page depends on from my github.
## Have you updated all relevant documentation?
- [? ] Yes
- [ ] No
## Description
load vid frame community node layout and link change.
## Related Tickets & Documents
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because n/a
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
The introduction of `BaseModelType.Any` broke the code in the merge
script which relied on sd-1 coming first in the BaseModelType enum. This
assumption has been removed and the code should be less brittle now.
## Related Tickets & Documents
<!--
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
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## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Fix textual inversion training script crash caused by reorg of services.
## Related Tickets & Documents
- closes#4975
<!--
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below.
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- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [X] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This PR allows users to install checkpoint (safetensors) versions of
controlnet models. The models will be converted into diffusers format
and cached on the fly.
This only works for sd-1 and sd-2 controlnets, as I was unable to find
controlnet sdxl checkpoint models or their corresponding .yaml config
files.
After updating, please run `invokeai-configure --yes --default-only` to
install the missing config files. Users should be instructed to select
option [7] from the launcher "Re-run the configure script to fix a
broken install or to complete a major upgrade".
## Related Tickets & Documents
User request at
https://discord.com/channels/1020123559063990373/1160318627631870092/1160318627631870092
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- Related Issue #4743
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
See above for instructions on updating the config files after checking
out the PR.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
[fix(nodes): fix missing generation
modes](8615d53e65)
Lax typing on the metadata util functions allowed a typing issue to slip
through. Fixed the lax typing, updated core metadata node.
## Related Tickets & Documents
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below.
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- Related Issue #
- Closes#4959 (thanks @coder543)
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
fix(nodes): explicitly include custom nodes files
setuptools ignores markdown files - explicitly include all files in
`"invokeai.app.invocations"` to ensure all custom node files are
included
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [x] Optimization
- [x] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
- updates the Docker image with ubuntu23.04 base, python3.11
- use the newer pytorch wheel with cuda12.1 support
- corrects `docker compose` CLI in shell script wrappers and docs
- update / overhaul Docker docs
- clean up obsolete lines in `.gitignore`
## QA Instructions, Screenshots, Recordings
Follow the documentation changes, or simply:
```bash
cd docker
cp .env.sample .env
# Set your INVOKEAI_ROOT in .env
docker compose up
```
## Added/updated tests?
- [ ] Yes
- [x] No : N/A
Custom nodes may be places in `$INVOKEAI_ROOT/nodes/` (configurable with `custom_nodes_dir` option).
On app startup, an `__init__.py` is copied into the custom nodes dir, which recursively loads all python files in the directory as modules (files starting with `_` are ignored). The custom nodes dir is now a python module itself.
When we `from invocations import *` to load init all invocations, we load the custom nodes dir, registering all custom nodes.
Also added config options for metadata and workflow debounce times (`metadataFetchDebounce` & `workflowFetchDebounce`).
Falls back to 0 if not provided.
In OSS, because we have no major latency concerns, the debounce is 0. But in other environments, it may be desirable to set this to something like 300ms.
- Refactor how metadata is handled to support a user-defined metadata in graphs
- Update workflow embed handling
- Update UI to work with these changes
- Update tests to support metadata/workflow changes
This fixes a weird issue where the list images method needed to handle `None` for its `limit` and `offset` arguments, in order to get a count of all intermediates.
On our local installs this will be a very minor change. For those running on remote servers, load times should be slightly improved.
It's a small change but I think correct.
This should prevent `index.html` from *ever* being cached, so UIs will never be out of date.
Minor organisation to accomodate this.
Deleting old unused files from the early days
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
This PR adds the ability to pass multiple images to a single IP-Adapter
(note the difference from using _multiple IP-Adapters at once_, which is
already supported.). The image embeddings are combined in the IP-Adapter
attention layers. This is the same strategy for combining multiple
images as used in Insta-LoRA workflows
(https://civitai.com/articles/2345).
This PR only adds multi-image support in the backend and the node
editor. The Linear UI still needs to be updated.
## QA Instructions, Screenshots, Recordings
I have manually tested the following via the workflow editor:
- Multiple images with a single IP-Adapter
- Multiple images per IP-Adapter, and multiple IP-Adapters
- Both standard and sequential conditioning
- IP-Adapters still work in the Linear UI.
Please hammer at this feature some more with manual testing.
## Added/updated tests?
- [x] Yes
- [ ] No
I updated the existing IP-Adapter smoke test, but it provides pretty
limited coverage of this feature. This feature would probably be best
tested by an end-to-end workflow test, which is not currently supported.
(I'm hoping to put some effort into workflow-level testing soon.)
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
fix(ui): use pidi processor for sketch control adapters
Also, the PREVIOUS commit (@8d3885d, which was already pushed to github repo) was wrongly commented, but too late to fix without a force push or other mucking that I'm reluctant to do. That commit is actually the one that has all the changes to diffusers_pipeline.py to use additional arg down_intrablock_additional_residuals (introduced in diffusers PR https://github.com/huggingface/diffusers/pull/5362) to detangle T2I-Adapter from ControlNet inputs to main UNet.
Upgrade pydantic and fastapi to latest.
- pydantic~=2.4.2
- fastapi~=103.2
- fastapi-events~=0.9.1
**Big Changes**
There are a number of logic changes needed to support pydantic v2. Most changes are very simple, like using the new methods to serialized and deserialize models, but there are a few more complex changes.
**Invocations**
The biggest change relates to invocation creation, instantiation and validation.
Because pydantic v2 moves all validation logic into the rust pydantic-core, we may no longer directly stick our fingers into the validation pie.
Previously, we (ab)used models and fields to allow invocation fields to be optional at instantiation, but required when `invoke()` is called. We directly manipulated the fields and invocation models when calling `invoke()`.
With pydantic v2, this is much more involved. Changes to the python wrapper do not propagate down to the rust validation logic - you have to rebuild the model. This causes problem with concurrent access to the invocation classes and is not a free operation.
This logic has been totally refactored and we do not need to change the model any more. The details are in `baseinvocation.py`, in the `InputField` function and `BaseInvocation.invoke_internal()` method.
In the end, this implementation is cleaner.
**Invocation Fields**
In pydantic v2, you can no longer directly add or remove fields from a model.
Previously, we did this to add the `type` field to invocations.
**Invocation Decorators**
With pydantic v2, we instead use the imperative `create_model()` API to create a new model with the additional field. This is done in `baseinvocation.py` in the `invocation()` wrapper.
A similar technique is used for `invocation_output()`.
**Minor Changes**
There are a number of minor changes around the pydantic v2 models API.
**Protected `model_` Namespace**
All models' pydantic-provided methods and attributes are prefixed with `model_` and this is considered a protected namespace. This causes some conflict, because "model" means something to us, and we have a ton of pydantic models with attributes starting with "model_".
Forunately, there are no direct conflicts. However, in any pydantic model where we define an attribute or method that starts with "model_", we must tell set the protected namespaces to an empty tuple.
```py
class IPAdapterModelField(BaseModel):
model_name: str = Field(description="Name of the IP-Adapter model")
base_model: BaseModelType = Field(description="Base model")
model_config = ConfigDict(protected_namespaces=())
```
**Model Serialization**
Pydantic models no longer have `Model.dict()` or `Model.json()`.
Instead, we use `Model.model_dump()` or `Model.model_dump_json()`.
**Model Deserialization**
Pydantic models no longer have `Model.parse_obj()` or `Model.parse_raw()`, and there are no `parse_raw_as()` or `parse_obj_as()` functions.
Instead, you need to create a `TypeAdapter` object to parse python objects or JSON into a model.
```py
adapter_graph = TypeAdapter(Graph)
deserialized_graph_from_json = adapter_graph.validate_json(graph_json)
deserialized_graph_from_dict = adapter_graph.validate_python(graph_dict)
```
**Field Customisation**
Pydantic `Field`s no longer accept arbitrary args.
Now, you must put all additional arbitrary args in a `json_schema_extra` arg on the field.
**Schema Customisation**
FastAPI and pydantic schema generation now follows the OpenAPI version 3.1 spec.
This necessitates two changes:
- Our schema customization logic has been revised
- Schema parsing to build node templates has been revised
The specific aren't important, but this does present additional surface area for bugs.
**Performance Improvements**
Pydantic v2 is a full rewrite with a rust backend. This offers a substantial performance improvement (pydantic claims 5x to 50x depending on the task). We'll notice this the most during serialization and deserialization of sessions/graphs, which happens very very often - a couple times per node.
I haven't done any benchmarks, but anecdotally, graph execution is much faster. Also, very larges graphs - like with massive iterators - are much, much faster.
There's a bug in chrome that screws with headers on fetch requests and 307 responses. This causes images to fail to copy in the commercial environment.
This change attempts to get around this by copying images in a different way (similar to how the canvas works). When the user requests a copy we:
- create an `<img />` element
- set `crossOrigin` if needed
- add an onload handler:
- create a canvas element
- draw image onto it
- export canvas to blob
This is wrapped in a promise which resolves to the blob, which can then be copied to clipboard.
---
A customized version of Konva's `useImage` hook is also included, which returns the image blob in addition to the `<img />` element. Unfortunately, this hook is not suitable for use across the app, because it does all the image fetching up front, regardless of whether we actually want to copy the image.
In other words, we'd have to fetch the whole image file even if the user is just skipping through image metadata, in order to have the blob to copy. The callback approach means we only fetch the image when the user clicks copy. The hook is thus currently unused.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
Fix for breaking change in `python-socketio` 5.10.0 in which
`enter_room` and `leave_room` were made coroutines.
## Related Tickets & Documents
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- Closes#4899
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
fix(ui): fix control adapter translation string
Missed this during a previous change
## Related Tickets & Documents
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Reported by @Harvester62 :
https://discord.com/channels/1020123559063990373/1054129386447716433/1162018775437148160
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This PR strips leading and trailing whitespace from URLs that are
entered into either the Web Model Manager import field, or using the
TUI.
## Related Tickets & Documents
Closes#4536
## QA Instructions, Screenshots, Recordings
Try to import a URL with leading or trailing whitespace. Should not work
in current main. This PR should fix it.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Mac users have a recurring issue in which a `.DS_Store` directory is
created in their `models` hierarchy, causing the new model scanner to
freak out. This PR skips over any paths that begin with a dot. I haven't
tested it on a Macintosh, so I'm not 100% certain it will do the trick.
## Related Tickets & Documents
- Related Issue #4815
## QA Instructions, Screenshots, Recordings
Someone with a Mac please try to reproduce the `.DS_Store` crash and
then see if applying this PR addresses the issue.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
This was in the original fix in #4829 but I must have removed it
accidentally.
## Related Tickets & Documents
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- Related Issue #
- Closes#4889
## QA Instructions, Screenshots, Recordings
- Start from a fresh canvas session (may need to let a generation finish
or reset web UI if yours is locked)
- Invoke/add to queue
- Immediately cancel current, clear queue, or clear batch (can do this
from the queue tab)
- Canvas should return to normal state
<!--
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Facetools nodes were cutting off faces that extended beyond chunk boundaries in some cases. All faces found are considered and are coalesced rather than pruned, meaning that you should not see half a face any more.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Description
[fix(nodes,ui): optional
metadata](78b8cfede3)
- Make all metadata items optional. This will reduce errors related to
metadata not being provided when we update the backend but old queue
items still exist
- Fix a bug in t2i adapter metadata handling where it checked for ip
adapter metadata instaed of t2i adapter metadata
- Fix some metadata fields that were not using `InputField`
- Make all metadata items optional. This will reduce errors related to metadata not being provided when we update the backend but old queue items still exist
- Fix a bug in t2i adapter metadata handling where it checked for ip adapter metadata instaed of t2i adapter metadata
- Fix some metadata fields that were not using `InputField`
Currently translated at 91.4% (1112 of 1216 strings)
translationBot(ui): update translation (Italian)
Currently translated at 90.4% (1100 of 1216 strings)
translationBot(ui): update translation (Italian)
Currently translated at 90.4% (1100 of 1216 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
`mallinfo2` is not available on `glibc` < 2.33.
On these systems, we successfully load the library but get an `AttributeError` on attempting to access `mallinfo2`.
I'm not sure if the old `mallinfo` will work, and not sure how to install it safely to test, so for now we just handle the `AttributeError`.
This means the enhanced memory snapshot logic will be skipped for these systems, which isn't a big deal.
## What type of PR is this? (check all applicable)
- [X] Optimization
-
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
This PR changes the pypi-release workflow so that it will upload to PyPi
whenever a release is initiated from the `main` branch or another branch
beginning with `release/`. Previous support for v2.3 branches has been
removed.
I'm not sure if it's correct way of handling things, but correcting this string to '==0.0.20' fixes xformers install for me - and maybe for others too.
Please see this thread, this is the issue I had (trying to install InvokeAI):
https://github.com/facebookresearch/xformers/issues/740
* added HrfScale type with initial value
* working
* working
* working
* working
* working
* added addHrfToGraph
* continueing to implement this
* working on this
* comments
* working
* made hrf into its own collapse
* working on adding strength slider
* working
* working
* refactoring
* working
* change of this working: 0
* removed onnx support since apparently its not used
* working
* made scale integer
* trying out psycicpebbles idea
* working
* working on this
* working
* added toggle
* comments
* self review
* fixing things
* remove 'any' type
* fixing typing
* changed initial strength value to 3 (large values cause issues)
* set denoising start to be 1 - strength to resemble image to image
* set initial value
* added image to image
* pr1
* pr2
* updating to resolution finding
* working
* working
* working
* working
* working
* working
* working
* working
* working
* use memo
* connect rescale hw to noise
* working
* fixed min bug
* nit
* hides elements conditionally
* style
* feat(ui): add config for HRF, disable if feature disabled or ONNX model in use
* fix(ui): use `useCallback` for HRF toggle
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
* #4665 hides value of the corresponding metadata item by click on arrow
* #4787 return recall button back:)
* #4787 optional hide of metadata item, truncation and scrolling
* remove unused import
* #4787 recall parameters as separate tab in panel
* #4787 remove debug code
* fix(ui): undo changes to dist/locales/en.json
This file is autogenerated by our translation system and shouldn't be modified directly
* feat(ui): use scrollbar-enabled component for parameter recall tab
* fix(ui): revert unnecessary changes to DataViewer component
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
v3.3.0 was accidentally released with more changes than intended. This workflows change will allow us release to pypi from a separate branch rather than main.
## What type of PR is this? (check all applicable)
v3.3.0 release
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
The `invokeai-configure` TUI's slider for the RAM cache was not picking
up the current settings in `invokeai.yaml`, leading users to think their
change hadn't taken effect. This is fixed in this PR.
## Related Tickets & Documents
First described here:
https://discord.com/channels/1020123559063990373/1161919551441735711/1162058518417907743
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [X] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
A regression in 3.2.0 causes a seemingly nonsensical multiple choice
menu to appear when importing an SD-1 checkpoint model from the
autoimport directory. The menu asks the user to identify which type of
SD-2 model they are trying to import, which makes no sense.
In fact, the menu is popping up because there are now both "epsilon" and
"vprediction" SchedulerPredictionTypes for SD-1 as well as SD-2 models,
and the prober can't determine which prediction type to use. This PR
does two things:
1) rewords the menu as shown below
2) defaults to the most likely choice -- epsilon for v1 models and
vprediction for v2s
Here is the revised multiple-choice menu:
```
Please select the scheduler prediction type of the checkpoint named v1-5-pruned-emaonly.safetensors:
[1] "epsilon" - most v1.5 models and v2 models trained on 512 pixel images
[2] "vprediction" - v2 models trained on 768 pixel images and a few v1.5 models
[3] Accept the best guess; you can fix it in the Web UI later
select [3]>
```
Note that one can also put the appropriate config file into the same
directory as the checkpoint you wish to import. Give it the same name as
the model file, but with the extension `.yaml`. For example
`v1-5-pruned-emaonly.yaml`. The system will notice the yaml file and use
that, suppressing the quiz entirely.
## Related Tickets & Documents
- Closes#4768
- Closes#4827
Refactor services folder/module structure.
**Motivation**
While working on our services I've repeatedly encountered circular imports and a general lack of clarity regarding where to put things. The structure introduced goes a long way towards resolving those issues, setting us up for a clean structure going forward.
**Services**
Services are now in their own folder with a few files:
- `services/{service_name}/__init__.py`: init as needed, mostly empty now
- `services/{service_name}/{service_name}_base.py`: the base class for the service
- `services/{service_name}/{service_name}_{impl_type}.py`: the default concrete implementation of the service - typically one of `sqlite`, `default`, or `memory`
- `services/{service_name}/{service_name}_common.py`: any common items - models, exceptions, utilities, etc
Though it's a bit verbose to have the service name both as the folder name and the prefix for files, I found it is _extremely_ confusing to have all of the base classes just be named `base.py`. So, at the cost of some verbosity when importing things, I've included the service name in the filename.
There are some minor logic changes. For example, in `InvocationProcessor`, instead of assigning the model manager service to a variable to be used later in the file, the service is used directly via the `Invoker`.
**Shared**
Things that are used across disparate services are in `services/shared/`:
- `default_graphs.py`: previously in `services/`
- `graphs.py`: previously in `services/`
- `paginatation`: generic pagination models used in a few services
- `sqlite`: the `SqliteDatabase` class, other sqlite-specific things
**Service Dependencies**
Services that depend on other services now access those services via the `Invoker` object. This object is provided to the service as a kwarg to its `start()` method.
Until now, most services did not utilize this feature, and several services required their dependencies to be initialized and passed in on init.
Additionally, _all_ services are now registered as invocation services - including the low-level services. This obviates issues with inter-dependent services we would otherwise experience as we add workflow storage.
**Database Access**
Previously, we were passing in a separate sqlite connection and corresponding lock as args to services in their init. A good amount of posturing was done in each service that uses the db.
These objects, along with the sqlite startup and cleanup logic, is now abstracted into a simple `SqliteDatabase` class. This creates the shared connection and lock objects, enables foreign keys, and provides a `clean()` method to do startup db maintenance.
This is not a service as it's only used by sqlite services.
Currently translated at 98.0% (1186 of 1210 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 98.0% (1179 of 1203 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 97.9% (1175 of 1199 strings)
Co-authored-by: Surisen <zhonghx0804@outlook.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hans/
Translation: InvokeAI/Web UI
Currently translated at 92.0% (1104 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 92.1% (1105 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 83.2% (998 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 83.0% (996 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 67.5% (810 of 1199 strings)
Co-authored-by: Surisen <zhonghx0804@outlook.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hans/
Translation: InvokeAI/Web UI
Currently translated at 85.5% (1026 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.7% (1016 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.7% (1016 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.4% (1012 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.3% (1011 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 83.5% (1002 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.5% (978 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 80.8% (969 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 80.7% (968 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (607 of 607 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (605 of 605 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
Currently translated at 65.5% (643 of 981 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (605 of 605 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 81.2% (958 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.2% (958 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 76.6% (904 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 76.5% (903 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 71.9% (848 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 71.7% (845 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 71.7% (845 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 67.8% (799 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 58.5% (689 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 59.8% (640 of 1069 strings)
translationBot(ui): update translation (Italian)
Currently translated at 57.2% (612 of 1069 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (607 of 607 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (605 of 605 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (605 of 605 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (602 of 602 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 97.8% (589 of 602 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (603 of 603 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (599 of 599 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (596 of 596 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (595 of 595 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (595 of 595 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (593 of 593 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (592 of 592 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 99.6% (601 of 603 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 99.5% (600 of 603 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (599 of 599 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (596 of 596 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 99.8% (594 of 595 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (593 of 593 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (592 of 592 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (591 of 591 strings)
translationBot(ui): update translation (Italian)
Currently translated at 99.3% (587 of 591 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (586 of 586 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (578 of 578 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (563 of 563 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (559 of 559 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (559 of 559 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (551 of 551 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 99.5% (602 of 605 strings)
translationBot(ui): update translation (Russian)
Currently translated at 99.8% (605 of 606 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (596 of 596 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (595 of 595 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (593 of 593 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (592 of 592 strings)
translationBot(ui): update translation (Russian)
Currently translated at 90.2% (534 of 592 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (543 of 543 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (550 of 550 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (548 of 548 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (546 of 546 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (541 of 541 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (544 of 544 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (543 of 543 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 88.0% (477 of 542 strings)
Co-authored-by: Song, Pengcheng <17528592@qq.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hans/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Russian)
Currently translated at 98.8% (536 of 542 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (533 of 533 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (540 of 540 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (538 of 538 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 99.8% (535 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (533 of 533 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (533 of 533 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (591 of 591 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (586 of 586 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (578 of 578 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (563 of 563 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (550 of 550 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (550 of 550 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (548 of 548 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (546 of 546 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (544 of 544 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (543 of 543 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (540 of 540 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (533 of 533 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 99.8% (532 of 533 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (526 of 526 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (519 of 519 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (526 of 526 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (523 of 523 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (519 of 519 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (515 of 515 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (526 of 526 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (523 of 523 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (519 of 519 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (515 of 515 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
Currently translated at 98.0% (1186 of 1210 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 98.0% (1179 of 1203 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 97.9% (1175 of 1199 strings)
Co-authored-by: Surisen <zhonghx0804@outlook.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hans/
Translation: InvokeAI/Web UI
Currently translated at 92.0% (1104 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 92.1% (1105 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 83.2% (998 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 83.0% (996 of 1199 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 67.5% (810 of 1199 strings)
Co-authored-by: Surisen <zhonghx0804@outlook.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hans/
Translation: InvokeAI/Web UI
Currently translated at 87.1% (1054 of 1210 strings)
translationBot(ui): update translation (Italian)
Currently translated at 85.5% (1026 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.7% (1016 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.7% (1016 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.4% (1012 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 84.3% (1011 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 83.5% (1002 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.5% (978 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 80.8% (969 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 80.7% (968 of 1199 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.3% (959 of 1179 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (607 of 607 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (605 of 605 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
Currently translated at 65.5% (643 of 981 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (605 of 605 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 81.2% (958 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 81.2% (958 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 76.6% (904 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 76.5% (903 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 71.9% (848 of 1179 strings)
translationBot(ui): update translation (Italian)
Currently translated at 71.7% (845 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 71.7% (845 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 67.8% (799 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 58.5% (689 of 1177 strings)
translationBot(ui): update translation (Italian)
Currently translated at 59.8% (640 of 1069 strings)
translationBot(ui): update translation (Italian)
Currently translated at 57.2% (612 of 1069 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (607 of 607 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (605 of 605 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (605 of 605 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (602 of 602 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 97.8% (589 of 602 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (603 of 603 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (599 of 599 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (596 of 596 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (595 of 595 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (595 of 595 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (593 of 593 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (592 of 592 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 99.6% (601 of 603 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 99.5% (600 of 603 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (599 of 599 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (596 of 596 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 99.8% (594 of 595 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (593 of 593 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (592 of 592 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (591 of 591 strings)
translationBot(ui): update translation (Italian)
Currently translated at 99.3% (587 of 591 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (586 of 586 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (578 of 578 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (563 of 563 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (559 of 559 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (559 of 559 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (551 of 551 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 99.5% (602 of 605 strings)
translationBot(ui): update translation (Russian)
Currently translated at 99.8% (605 of 606 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (596 of 596 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (595 of 595 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (593 of 593 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (592 of 592 strings)
translationBot(ui): update translation (Russian)
Currently translated at 90.2% (534 of 592 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (543 of 543 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (550 of 550 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (548 of 548 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (546 of 546 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (541 of 541 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (544 of 544 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (543 of 543 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 88.0% (477 of 542 strings)
Co-authored-by: Song, Pengcheng <17528592@qq.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hans/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Russian)
Currently translated at 98.8% (536 of 542 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (533 of 533 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (540 of 540 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (538 of 538 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 99.8% (535 of 536 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (533 of 533 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (533 of 533 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (591 of 591 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (586 of 586 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (578 of 578 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (563 of 563 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (550 of 550 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (550 of 550 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (548 of 548 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (546 of 546 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (544 of 544 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (543 of 543 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (542 of 542 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (540 of 540 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (536 of 536 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (533 of 533 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 99.8% (532 of 533 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (526 of 526 strings)
translationBot(ui): update translation (Russian)
Currently translated at 100.0% (519 of 519 strings)
Co-authored-by: System X - Files <vasyasos@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (526 of 526 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (523 of 523 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (519 of 519 strings)
translationBot(ui): update translation (Italian)
Currently translated at 100.0% (515 of 515 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
Currently translated at 100.0% (526 of 526 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (523 of 523 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (519 of 519 strings)
translationBot(ui): update translation (Spanish)
Currently translated at 100.0% (515 of 515 strings)
Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
feat(ui): add translation strings for clear intermediates
## Related Tickets & Documents
<!--
For pull requests that relate or close an issue, please include them
below.
For example having the text: "closes #1234" would connect the current
pull
request to issue 1234. And when we merge the pull request, Github will
automatically close the issue.
-->
- Related Issue #
- Closes#4851
## [optional] Are there any post deployment tasks we need to perform?
@Millu this can go into 3.3.0
* UI for bulk downloading boards or groups of images
* placeholder route for bulk downloads that does nothing
* lint
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
@Millu pointed out this safetensors PR a few weeks ago, which claimed to
offer a performance benefit:
https://github.com/huggingface/safetensors/pull/362 . It was superseded
by https://github.com/huggingface/safetensors/pull/363 and included in
the latest [safetensors 0.4.0
release](https://github.com/huggingface/safetensors/releases/tag/v0.4.0).
Here are the results from my local performance comparison:
```
Before(0.3.1) / After(0.4.0)
sdxl:main:tokenizer from disk to cpu in 0.46s / 0.46s
sdxl:main:text_encoder from disk to cpu in 2.12s / 2.32s
embroidered_style_v1_sdxl.safetensors:sdxl:lora' from disk to cpu in 0.67s / 0.36s
VoxelXL_v1.safetensors:sdxl:lora' from disk to cpu in 1.64s / 0.60s
ryan_db_sdxl_epoch640.safetensors:sdxl:lora' from disk to cpu in 2.46s / 1.40s
sdxl:main:tokenizer_2 from disk to cpu in 0.37s / 0.39s
sdxl:main:text_encoder_2 from disk to cpu in 3.78s / 4.70s
sdxl:main:unet from disk to cpu in 4.66s / 3.08s
sdxl:main:scheduler from disk to cpu in 0.34s / 0.33s
sdxl:main:vae from disk to cpu in 0.66s / 0.51s
TOTAL GRAPH EXECUTION TIME: 56.489s / 53.416s
```
The benefit was marginal on my system (maybe even within measurement
error), but I figured we might as well pull it.
Add support for FreeU. See:
- https://huggingface.co/docs/diffusers/main/en/using-diffusers/freeu
- https://github.com/ChenyangSi/FreeU
Implementation:
- `ModelPatcher.apply_freeu()` handles the enabling freeu (which is very simple with diffusers).
- `FreeUConfig` model added to hold the hyperparameters.
- `freeu_config` added as optional sub-field on `UNetField`.
- `FreeUInvocation` added, works like LoRA - chain it to add the FreeU config to the UNet
- No support for model-dependent presets, this will be a future workflow editor enhancement
Closes#4845
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
This PR optimizes the time to load models from disk.
In my local testing, SDXL text_encoder_2 models saw the greatest
improvement:
- Before change, load time (disk to cpu): 14 secs
- After change, load time (disk to cpu): 4 secs
See the in-code documentation for an explanation of how this speedup is
achieved.
## Related Tickets & Documents
This change was previously proposed on the HF transformers repo, but did
not get any traction:
https://github.com/huggingface/transformers/issues/18505#issue-1330728188
## QA Instructions, Screenshots, Recordings
I don't expect any adverse effects, but the new context manager is
applied while loading **all** models, so it would make sense to exercise
everything.
## Added/updated tests?
- [x] Yes
- [ ] No
The canvas needs to be set to staging mode as soon as a canvas-destined batch is enqueued. If the batch is is fully canceled before an image is generated, we need to remove that batch from the canvas `batchIds` watchlist, else canvas gets stuck in staging mode with no way to exit.
The changes here allow the batch status to be tracked, and if a batch has all its items completed, we can remove it from the `batchIds` watchlist. The `batchIds` watchlist now accurately represents *incomplete* canvas batches, fixing this cause of soft lock.
The UI will always re-fetch queue and batch status on receiving this event, so we may as well jsut include that data in the event and save the extra network roundtrips.
## What type of PR is this? (check all applicable)
- [X] Feature
## Have you discussed this change with the InvokeAI team?
- [X] No, because: Non-controversial
## Have you updated all relevant documentation?
- [ ] Yes
- [X] N/A
## Description
This adds a list of T2I adapters to the “starter models” offered by the
TUI installer. None of the models is selected by default; this can be
done easily if requested. The models offered to the user are:
```
TencentARC/t2iadapter_canny_sd15v2
TencentARC/t2iadapter_sketch_sd15v2
TencentARC/t2iadapter_depth_sd15v2
TencentARC/t2iadapter_zoedepth_sd15v1
TencentARC/t2i-adapter-canny-sdxl-1.0
TencentARC/t2i-adapter-depth-zoe-sdxl-1.0
TencentARC/t2i-adapter-lineart-sdxl-1.0
TencentARC/t2i-adapter-sketch-sdxl-1.0
```
## Related Tickets & Documents
PR #4612
## QA Instructions, Screenshots, Recordings
The revised installer has a new IP-ADAPTERS tab that looks like this:

## Added/updated tests?
- [ ] Yes
- [X] No : It would be good to have a suite of model download tests, but
not set up yet.
- Update backend metadata for t2i adapter
- Fix typo in `T2IAdapterInvocation`: `ip_adapter_model` -> `t2i_adapter_model`
- Update linear graphs to use t2i adapter
- Add client metadata recall for t2i adapter
- Fix bug with controlnet metadata recall - processor should be set to 'none' when recalling a control adapter
Control adapters logic/state/ui is now generalized to hold controlnet, ip_adapter and t2i_adapter. In the future, other control adapter types can be added.
TODO:
- Limit IP adapter to 1
- Add T2I adapter to linear graphs
- Fix autoprocess
- T2I metadata saving & recall
- Improve on control adapters UI
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
This PR adds support for slow unit tests that depend on models. It
includes:
- Documentation explaining the handling of fast vs. slow unit tests.
- Utilities to assist with writing tests that depend on models.
- A sample test that loads and runs an IP-Adapter model. This is far
from complete test coverage of IP-Adapter - it's just intended as a
first example of how to write tests with models.
**Suggestion for reviewers**: Start with docs/contributing/TESTS.md
## QA Instructions, Screenshots, Recordings
I've tested it all, but it would make sense for others to try running
both the fast tests and the slow tests.
## Added/updated tests?
- [x] Yes
- [ ] No
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [x] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
This PR adds detailed debug logging to the model cache in order to give
more visibility into the model cache's memory utilization. **This PR
does not make any functional changes to the model cache.**
Every time a model is moved from disk to CPU, or between CPU/CUDA, a log
like this is emitted:
```bash
[2023-10-03 15:17:20,599]::[InvokeAI]::DEBUG --> Moved model '/home/ryan/invokeai/models/.cache/63742ed45b499e55620c402d6df26a20:sdxl:main:unet' from cpu to cuda in 1.23s.
Estimated model size: 4.782 GB.
Process RAM (-4.722): 6.987GB -> 2.265GB
libc mmap allocated (-4.722): 6.030GB -> 1.308GB
libc arena used (-0.061): 0.402GB -> 0.341GB
libc arena free (+0.061): 0.006GB -> 0.067GB
libc total allocated (-4.722): 6.439GB -> 1.717GB
libc total used (-4.783): 6.433GB -> 1.649GB
VRAM (+4.881): 1.538GB -> 6.418GB
```
## Related Tickets & Documents
https://github.com/invoke-ai/InvokeAI/pull/4694 contains related fixes
to some known memory issues.
## QA Instructions, Screenshots, Recordings
Make sure debug logs are enabled and you should see the new logs.
We should test each of the following environments:
- [x] Linux
- [x] Mac OS + MPS
- [x] Windows
## Added/updated tests?
- [x] Yes
- [ ] No
Added unit tests for the new utilities. Test coverage is still low for
the ModelCache, but not worse than before.
* Bump diffusers to 0.21.2.
* Add T2IAdapterInvocation boilerplate.
* Add T2I-Adapter model to model-management.
* (minor) Tidy prepare_control_image(...).
* Add logic to run the T2I-Adapter models at the start of the DenoiseLatentsInvocation.
* Add logic for applying T2I-Adapter weights and accumulating.
* Add T2IAdapter to MODEL_CLASSES map.
* yarn typegen
* Add model probes for T2I-Adapter models.
* Add all of the frontend boilerplate required to use T2I-Adapter in the nodes editor.
* Add T2IAdapterModel.convert_if_required(...).
* Fix errors in T2I-Adapter input image sizing logic.
* Fix bug with handling of multiple T2I-Adapters.
* black / flake8
* Fix typo
* yarn build
* Add num_channels param to prepare_control_image(...).
* Link to upstream diffusers bugfix PR that currently requires a workaround.
* feat: Add Color Map Preprocessor
Needed for the color T2I Adapter
* feat: Add Color Map Preprocessor to Linear UI
* Revert "feat: Add Color Map Preprocessor"
This reverts commit a1119a00bf.
* Revert "feat: Add Color Map Preprocessor to Linear UI"
This reverts commit bd8a9b82d8.
* Fix T2I-Adapter field rendering in workflow editor.
* yarn build, yarn typegen
---------
Co-authored-by: blessedcoolant <54517381+blessedcoolant@users.noreply.github.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
When the processor has an error and it has a queue item, mark that item failed.
This addresses processor errors resulting in `in_progress` queue items, which create a soft lock of the processor, requiring the user to cancel the `in_progress` item before anything else processes.
Makes graph validation logic more rigorous, validating graphs when they are created as part of a session or batch.
`validate_self()` method added to `Graph` model. It does all the validation that `is_valid()` did, plus a few extras:
- unique `node.id` values across graph
- node ids match their key in `Graph.nodes`
- recursively validate subgraphs
- validate all edges
- validate graph is acyclical
The new method is required because `is_valid()` just returned a boolean. That behaviour is retained, but `validate_self()` now raises appropriate exceptions for validation errors. This are then surfaced to the client.
The function is named `validate_self()` because pydantic reserves `validate()`.
There are two main places where graphs are created - in batches and in sessions.
Field validators are added to each of these for their `graph` fields, which call the new validation logic.
**Closes #4744**
In this issue, a batch is enqueued with an invalid graph. The output field is typed as optional while the input field is required. The field types themselves are not relevant - this change addresses the case where an invalid graph was created.
The mismatched types problem is not noticed until we attempt to invoke the graph, because the graph was never *fully* validated. An error is raised during the call to `graph_execution_state.next()` in `invoker.py`. This function prepares the edges and validates them, raising an exception due to the mismatched types.
This exception is caught by the session processor, but it doesn't handle this situation well - the graph is not marked as having an error and the queue item status is never changed. The queue item is therefore forever `in_progress`, so no new queue items are popped - the app won't do anything until the queue item is canceled manually.
This commit addresses this by preventing invalid graphs from being created in the first place, addressing a substantial number of fail cases.
The compress_level setting of PIL.Image.save(), used for PNG encoding. All settings are lossless. 0 = fastest, largest filesize, 9 = slowest, smallest filesize
Closes#4786
This is fired when the dnd image is moved over the 'none' board. Weren't defaulting to 'none' for the image's board_id, resulting in it being possible to drag a 'none' image onto 'none'.
Selections were not being `uniqBy()`'d, or were `uniqBy()`'d without a proper iteratee. This results in duplicate images in selections in certain situations.
Add correct `uniqBy()` to the reducer to prevent this in the future.
This caused a crapload of network requests any time an image was generated.
The counts are necessary to handle the logic for inserting images into existing image list caches; we have to keep track of the counts.
Replace tag invalidation with manual cache updates in all cases, except the initial request (which is necessary to get the initial image counts).
One subtle change is to make the counts an object instead of a number. This is required for `immer` to handle draft states. This should be raised as a bug with RTK Query, as no error is thrown when attempting to update a primitive immer draft.
The helper function `generate_face_box_mask()` had a bug that prevented larger faces from being detected in some situations. This is resolved, and its dependent nodes (all the FaceTools nodes) have a patch version bump.
## What type of PR is this? (check all applicable)
- [X] Bug Fix
## Have you discussed this change with the InvokeAI team?
- [X] Yes
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
## Description
This PR causes the font "Inter-Regular.ttf", which is needed by the
facetools Face Identifier node, to be installed along with other assets
in the virtual environment. It also fixes the font path resolution logic
in the invocation to work with both package and editable installs.
## Related Tickets & Documents
Closes#4771
## What type of PR is this? (check all applicable)
Release v3.2.0
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
Need to update prompting docs
## Description
3.2.0 release version
## [optional] Are there any post deployment tasks we need to perform?
* feat(ui): max upscale pixels config
Add `maxUpscalePixels: number` to the app config. The number should be the *total* number of pixels eg `maxUpscalePixels: 4096 * 4096`.
If not provided, any size image may be upscaled.
If the config is provided, users will see be advised if their image is too large for either model, or told to switch to an x2 model if it's only too large for x4.
The message is via tooltip in the popover and via toast if the user uses the hotkey to upscale.
* feat(ui): "mayUpscale" -> "isAllowedToUpscale"
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [x] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
Grid to Gif is two custom nodes, one that divides a grid image into an
image collection, the other converts an image collection into a animated
gif
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ x ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ x ] No, because:
## Have you updated all relevant documentation?
- [x ] Yes
- [ ] No
cv2 infill node was missing a version in its decorator, resulting in a
red exclamation mark on the node
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x] No, because: is tiny
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
Very tall IP adapter images didn't get fit to the panel. Now they do
* Initial commit of edge drag feature.
* Fixed build warnings
* code cleanup and drag to existing node
* improved isValidConnection check
* fixed build issues, removed cyclic dependency
* edge created nodes now spawn at cursor
* Add Node popover will no longer show when using drag to delete an edge.
* Fixed collection handling, added priority for handles matching name of source handle, removed current image/notes nodes from filtered list
* Fixed not properly clearing startParams when closing the Add Node popover
* fix(ui): do not allow Collect -> Iterate connection
This can be removed when #3956 is resolved
* feat(ui): use existing node validation logic in add-node-on-drop
This logic handles a number of special cases
---------
Co-authored-by: Millun Atluri <Millu@users.noreply.github.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
* node-FaceTools
* Added more documentation for facetools
* invert FaceMask masking
- FaceMask had face protected and surroundings change by default (face white, else black)
- Change to how FaceOff/others work: the opposite where surroundings protected, face changes by default (face black, else white)
* reflect changed facemask behaviour in docs
* add FaceOff+FaceMask workflows
- Add FaceOff and FaceMask example workflows to docs/workflows
* add FaceMask+FaceOff workflows to exampleworkflows.md
- used invokeai URL paths mimicking other workflow URLs, hopefully they translate when/if merged
* inheriting, typehints, black/isort/flake8
- modified FaceMask and FaceOff output classes to inherit base image, height, width from ImageOutput
- Added type annotations to helper functions, required some reworking of code's stored data
* remove credit header
- Was in my personal/repo copy, don't think it's necessary if merged.
* Optionals & image declaration duplication
- Added Optional[] to optional outputs and types
- removed duplication of image = context.services.images.get_pil_images(self.image.image_name) declaration
- Still need to find a way to deal with mask_pil None typing errors
* face(facetools): fix typing issues, add validation, clean up structure
* feat(facetools): update field descriptions
* Update FaceOff_FaceScale2x.json
- update FaceOff workflow after Bounded Image field removed in place of inheriting Image out field from ImageOutput
* feat(facetools): pass through original image on facemask if invalid face ids requested
* feat(facetools): tidy variable names & fn calls
* feat(facetools): bundle inter font, draw ids with it
Inter is a SIL Open Font license. The license is included and is fully permissive. Inter is the same font the UI and commercial application already uses.
Only the "regular" version is bundled.
* chore(facetools): isort & fix mypy issues
* docs(facetools): update and format docs
---------
Co-authored-by: Millun Atluri <millun.atluri@gmail.com>
Co-authored-by: Millun Atluri <Millu@users.noreply.github.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
* add control net to useRecallParams
* got recall controlnets working
* fix metadata viewer controlnet
* fix type errors
* fix controlnet metadata viewer
* add ip adapter to metadata
* added ip adapter to recall parameters
* got ip adapter recall working, still need to fix type errors
* fix type issues
* clean up logs
* python formatting
* cleanup
* fix(ui): only store `image_name` as ip adapter image
* fix(ui): use nullish coalescing operator for numbers
Need to use the nullish coalescing operator `??` instead of false-y coalescing operator `||` when the value being check is a number. This prevents unintended coalescing when the value is zero and therefore false-y.
* feat(ui): fall back on default values for ip adapter metadata
* fix(ui): remove unused schema
* feat(ui): re-use existing schemas in metadata schema
* fix(ui): do not disable invocationCache
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
[## What type of PR is this? (check all applicable)
- [X] Feature
## Have you discussed this change with the InvokeAI team?
- [X] Yes
## Have you updated all relevant documentation?
- [X] Yes
## Description
Very rarely a model lives in the subfolder of a non-pipeline HuggingFace
repo_id. The example I've been working with is
https://huggingface.co/monster-labs/control_v1p_sd15_qrcode_monster/tree/main,
where the improved monster QR code controlnet model lives in the `v2`
subdirectory.
In order to accommodate installing such files, I have made two changes
to the model installer.
1. At installation/configuration time, if a stanza in
`INITIAL_MODELS.yaml` contains the field `subfolder`, then the model
will be installed from the indicated subfolder. The syntax in this case
is:
```
sd-1/controlnet/qrcode_monster:
repo_id: monster-labs/control_v1p_sd15_qrcode_monster
subfolder: v2
```
2. From within the Web GUI or the installer TUI, if you wish to indicate
that the model resides in a subfolder, you can tack ":_subfoldername_"
to the end of the repo_id. The resulting repo_id will look like:
```
monster-labs/control_v1p_sd15_qrcode_monster:v2
```
The code for introducing these changes is obscure and somewhat hacky.
However, the whole installer code base has been rewritten for the model
manager refactor (#4252 ) and I will reimplement this feature in a more
elegant way in that PR.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [X] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
## Related Tickets & Documents
<!--
For pull requests that relate or close an issue, please include them
below.
For example having the text: "closes #1234" would connect the current
pull
request to issue 1234. And when we merge the pull request, Github will
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-->
- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
This hook was rerendering any time anything changed. Moved it to a logical component, put its useEffects inside the component. This reduces the effect of the rerenders to just that tiny always-null component.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x] No, because:
## Have you updated all relevant documentation?
- [x] Yes
- [ ] No
## Description
The IP-Adapter memory footprint was not being calculated correctly.
I think we could put checks in place to catch this type of error in the
future, but for now I'm just fixing the bug.
## QA Instructions, Screenshots, Recordings
I tested manually in a debugger. There are 3 pathways for calculating
the model size. All were tested:
- From file
- From state_dict
- From model weights
## Added/updated tests?
- [ ] Yes
- [x] No : This would require the ability to run tests that depend on
models. I'm working on this in another branch, but not ready quite yet.
* add control net to useRecallParams
* got recall controlnets working
* fix metadata viewer controlnet
* fix type errors
* fix controlnet metadata viewer
* set control image and use correct processor type and node
* clean up logs
* recall processor using substring
* feat(ui): enable controlNet when recalling one
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
- Current image number & total are displayed
- Left/right wrap around instead of stopping on first/last image
- Disable the left/right/number buttons when showing base layer
- improved translations
- Drag the end of an edge away from its handle to disconnect it
- Drop in empty space to delete the edge
- Drop on valid handle to reconnect it
- Update connection logic slightly to allow edge updates
* feat(ui): add error handling for enqueueBatch route, remove sessions
This re-implements the handling for the session create/invoke errors, but for batches.
Also remove all references to the old sessions routes in the UI.
* feat(ui): improve canvas image error UI
* make canvas error state gray instead of red
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
## What type of PR is this? (check all applicable)
- [X] Feature
## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [X] No - this should go into release notes.
## Description
During installation, the installer will now ask the user whether they
wish to perform a manual or automatic configuration of invokeai. If they
choose automatic (the default), then the install is performed without
running the TUI of the `invokeai-configure` script. Otherwise the
console-based interface is activated as usual.
This script also bumps up the default model RAM cache size to 7.5, which
improves performance on SDXL models.
* Add 'Random Float' node <3
does what it says on the tin :)
* Add random float + random seeded float nodes
altered my random float node as requested by Millu, kept the seeded version as an alternate variant for those that would like to control the randomization seed :)
* Update math.py
* Update math.py
* feat(nodes): standardize fields to match other nodes
---------
Co-authored-by: Millun Atluri <Millu@users.noreply.github.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
* fix(nodes): do not disable invocation cache delete methods
When the runtime disabled flag is on, do not skip the delete methods. This could lead to a hit on a missing resource.
Do skip them when the cache size is 0, because the user cannot change this (must restart app to change it).
* fix(nodes): do not use double-underscores in cache service
* Thread lock for cache
* Making cache LRU
* Bug fixes
* bugfix
* Switching to one Lock and OrderedDict cache
* Removing unused imports
* Move lock cache instance
* Addressing PR comments
---------
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Co-authored-by: Martin Kristiansen <martin@modyfi.io>
* add skeleton loading state for queue lit
* hide use cache checkbox if cache is disabled
* undo accidental add
* feat(ui): hide node footer entirely if nothing to show there
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Skeletons are for when we know the number of specific content items that are loading. When the queue is loading, we don't know how many items there are, or how many will load, so the whole list should be replaced with loading state.
The previous behaviour rendered a static number of skeletons. That number would rarely be the right number - the app shouldn't say "I'm loading 7 queue items", then load none, or load 50.
A future enhancement could use the queue item skeleton component and go by the total number of queue items, as reported by the queue status. I tried this but had some layout jankiness, not worth the effort right now.
The queue item skeleton component's styling was updated to support this future enhancement, making it exactly the same size as a queue item (it was a bit smaller before).
## What type of PR is this? (check all applicable)
- [X] Bug Fix
## Description
I left a dangling debug statement in a recent merged PR (#4674 ). This
removes it.
Updates my Image & Mask Composition Pack from 4 to 14 nodes, and moves
the Enhance Image node into it.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [X] Documentation Update
- [X] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because:
This is an update of my existing community nodes entries.
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
Adds 9 more nodes to my Image & Mask Composition pack including Clipseg,
Image Layer Blend, Masked Latent/Noise Blend, Image Dilate/Erode,
Shadows/Highlights/Midtones masks from image, and more.
## Related Tickets & Documents
n/a
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [X] No : out of scope, tested the nodes, will integrate tests with my
own repo in time as is helpful
Adds 9 more of my nodes to the Image & Mask Composition Pack in the community nodes page, and integrates the Enhance Image node into that pack as well (formerly it was its own entry).
Add some instructions about installing the frontend toolchain when doing
a git-based install.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [x] Documentation Update
- [ ] Community Node Submission
## Description
[Update
020_INSTALL_MANUAL.md](73ca8ccdb3)
Add some instructions about installing the frontend toolchain when doing
a git-based install.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ ] No, because:
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No
## Description
## Related Tickets & Documents
<!--
For pull requests that relate or close an issue, please include them
below.
For example having the text: "closes #1234" would connect the current
pull
request to issue 1234. And when we merge the pull request, Github will
automatically close the issue.
-->
- Related Issue #
- Closes #
## QA Instructions, Screenshots, Recordings
<!--
Please provide steps on how to test changes, any hardware or
software specifications as well as any other pertinent information.
-->
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
This is actually a platform-specific issue. `madge` is complaining about
a circular dependency on a single file -
`invokeai/frontend/web/src/features/queue/store/nanoStores.ts`. In that
file, we import from the `nanostores` package. Very similar name to the
file itself.
The error only appears on Windows and macOS, I imagine because those
systems both resolve `nanostores` to itself before resolving to the
package.
The solution is simple - rename `nanoStores.ts`. It's now
`queueNanoStore.ts`.
## Related Tickets & Documents
https://discord.com/channels/1020123559063990373/1155434451979993140
<!--
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below.
For example having the text: "closes #1234" would connect the current
pull
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automatically close the issue.
-->
## What type of PR is this? (check all applicable)
- [X] Feature
## Have you discussed this change with the InvokeAI team?
- [X] Yes
## Have you updated all relevant documentation?
- [X] Yes
## Description
This PR adds support for selecting and installing IP-Adapters at
configure time. The user is offered the four existing InvokeAI IP
Adapters in the UI as shown below. The matching image encoders are
selected and installed behind the scenes. That is, if the user selects
one of the three sd15 adapters, then the SD encoder will be installed.
If they select the sdxl adapter, then the SDXL encoder will be
installed.

Note that the automatic selection of the encoder does not work when the
installer is run in headless mode. I may be able to fix that soon, but
I'm out of time today.
This is actually a platform-specific issue. `madge` is complaining about a circular dependency on a single file - `invokeai/frontend/web/src/features/queue/store/nanoStores.ts`. In that file, we import from the `nanostores` package. Very similar name to the file itself.
The error only appears on Windows and macOS, I imagine because those systems both resolve `nanostores` to itself before resolving to the package.
The solution is simple - rename `nanoStores.ts`. It's now `queueNanoStore.ts`.
## What type of PR is this? (check all applicable)
- [X] Bug Fix
- [ ] Optimizatio
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] Np
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No
## Description
ip_adapter models live in a folder containing the file
`image_encoder.txt` and a safetensors file. The load-time probe for new
models was detecting the files contained within the folder rather than
the folder itself, and so models.yaml was not getting correctly updated.
This fixes the issue.
## Added/updated tests?
- [ ] Yes
- [ ] No : _please replace this line with details on why tests
have not been included_
## [optional] Are there any post deployment tasks we need to perform?
## What type of PR is this? (check all applicable)
- [X] Feature
## Have you discussed this change with the InvokeAI team?
- [X] Yes
## Have you updated all relevant documentation?
- [X] Yes
## Description
It turns out that there are a few SD-1 models that use the
`v_prediction` SchedulerPredictionType. Examples here:
https://huggingface.co/zatochu/EasyFluff/tree/main . Previously we only
allowed the user to set the prediction type for sd-2 models. This PR
does three things:
1. Add a new checkpoint configuration file `v1-inference-v.yaml`. This
will install automatically on new installs, but for existing installs
users will need to update and then run `invokeai-configure` to get it.
2. Change the prompt on the web model install page to indicate that some
SD-1 models use the "v_prediction" method
3. Provide backend support for sd-1 models that use the v_prediction
method.
## Related Tickets & Documents
<!--
For pull requests that relate or close an issue, please include them
below.
For example having the text: "closes #1234" would connect the current
pull
request to issue 1234. And when we merge the pull request, Github will
automatically close the issue.
-->
- Related Issue #
- Closes#4277
## QA Instructions, Screenshots, Recordings
Update, run `invoke-ai-configure --yes --skip-sd --skip-support`, and
then use the web interface to install
https://huggingface.co/zatochu/EasyFluff/resolve/main/EasyFluffV11.2.safetensors
with the prediction type set to "v_prediction." Check that the installed
model uses configuration `v1-inference-v.yaml`.
If "None" is selected from the install menu, check that SD-1 models
default to `v1-inference.yaml` and SD-2 default to
`v2-inference-v.yaml`.
Also try installing a checkpoint at a local path if a like-named config
.yaml file is located next to it in the same directory. This should
override everything else and use the local path .yaml.
## Added/updated tests?
- [ ] Yes
- [X] No
## What type of PR is this? (check all applicable)
- [X] Refactor
## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [X] No, because: trivial fix
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No
## Description
It annoyed me that the class method to get the invokeai logger was
`InvokeAILogger.getLogger()`. We do not use camelCase anywhere else. So
this PR renames the method `get_logger()`.
## What type of PR is this? (check all applicable)
- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission
## Description
Pydantic handles the casting so this is always safe.
Also de-duplicate some validation logic code that was needlessly
duplicated.
- Change translations to use arrays of paragraphs instead of a single paragraph.
- Change component to accept a `feature` prop to identify the feature which the popover describes.
- Add optional `wrapperProps`: passed to the wrapper element, allowing more flexibility when using the popover
- Add optional `popoverProps`: passed to the `<Popover />` component, allowing for overriding individual instances of the popover's props
- Move definitions of features and popover settings to `invokeai/frontend/web/src/common/components/IAIInformationalPopover/constants.ts`
- Add some type safety to the `feature` prop
- Edit `POPOVER_DATA` to provide `image`, `href`, `buttonLabel`, and any popover props. The popover props are applied to all instances of the popover for the given feature. Note that the component prop `popoverProps` will override settings here.
- Remove the popover's arrow. Because the popover is wrapping groups of components, sometimes the error ends up pointing to nothing, which looks kinda janky. I've just removed the arrow entirely, but feel free to add it back if you think it looks better.
- Use a `link` variant button with external link icon to better communicate that clicking the button will open a new tab.
- Default the link button label to "Learn More" (if a label is provided, that will be used instead)
- Make default position `top`, but set manually set some to `right` - namely, anything with a dropdown. This prevents the popovers from obscuring or being obscured by the dropdowns.
- Do a bit more restructuring of the Popover component itself, and how it is integrated with other components
- More ref forwarding
- Make the open delay 1s
- Set the popovers to use lazy mounting (eg do not mount until the user opens the thing)
- Update the verbiage for many popover items and add missing dynamic prompts stuff
When the runtime disabled flag is on, do not skip the delete methods. This could lead to a hit on a missing resource.
Do skip them when the cache size is 0, because the user cannot change this (must restart app to change it).
- No longer need to make network request to add image to board after it's finished - removed
- Update linear graphs & upscale graph to save image to the board
- Update autoSwitch logic so when image is generated we still switch to the right board
- Remove the add-to-board node
- Create `BoardField` field type & add it to `save_image` node
- Add UI for `BoardField`
- Tighten up some loose types
- Make `save_image` node, in workflow editor, default to not intermediate
- Patch bump `save_image`
@ -270,7 +272,7 @@ upgrade script.** See the next section for a Windows recipe.
3. Select option [1] to upgrade to the latest release.
4. Once the upgrade is finished you will be returned to the launcher
menu. Select option [7] "Re-run the configure script to fix a broken
menu. Select option [6] "Re-run the configure script to fix a broken
install or to complete a major upgrade".
This will run the configure script against the v2.3 directory and
@ -395,7 +397,7 @@ Notes](https://github.com/invoke-ai/InvokeAI/releases) and the
### Troubleshooting
Please check out our **[Q&A](https://invoke-ai.github.io/InvokeAI/help/TROUBLESHOOT/#faq)** to get solutions for common installation
Please check out our **[Troubleshooting Guide](https://invoke-ai.github.io/InvokeAI/installation/010_INSTALL_AUTOMATED/#troubleshooting)** to get solutions for common installation
problems and other issues. For more help, please join our [Discord][discord link]
All commands are to be run from the `docker` directory: `cd docker`
All commands should be run within the `docker` directory: `cd docker`
## Quickstart :rocket:
On a known working Linux+Docker+CUDA (Nvidia) system, execute `./run.sh` in this directory. It will take a few minutes - depending on your internet speed - to install the core models. Once the application starts up, open `http://localhost:9090` in your browser to Invoke!
For more configuration options (using an AMD GPU, custom root directory location, etc): read on.
## Detailed setup
#### Linux
1. Ensure builkit is enabled in the Docker daemon settings (`/etc/docker/daemon.json`)
2. Install the `docker compose` plugin using your package manager, or follow a [tutorial](https://www.digitalocean.com/community/tutorials/how-to-install-and-use-docker-compose-on-ubuntu-22-04).
2. Install the `docker compose` plugin using your package manager, or follow a [tutorial](https://docs.docker.com/compose/install/linux/#install-using-the-repository).
- The deprecated `docker-compose` (hyphenated) CLI continues to work for now.
3. Ensure docker daemon is able to access the GPU.
- You may need to install [nvidia-container-toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html)
@ -18,13 +26,12 @@ All commands are to be run from the `docker` directory: `cd docker`
This is done via Docker Desktop preferences
## Quickstart
### Configure Invoke environment
1. Make a copy of `env.sample` and name it `.env` (`cp env.sample .env` (Mac/Linux) or `copy example.env .env` (Windows)). Make changes as necessary. Set `INVOKEAI_ROOT` to an absolute path to:
a. the desired location of the InvokeAI runtime directory, or
b. an existing, v3.0.0 compatible runtime directory.
1.`docker compose up`
1.Execute `run.sh`
The image will be built automatically if needed.
@ -38,24 +45,28 @@ The runtime directory (holding models and outputs) will be created in the locati
The Docker daemon on the system must be already set up to use the GPU. In case of Linux, this involves installing `nvidia-docker-runtime` and configuring the `nvidia` runtime as default. Steps will be different for AMD. Please see Docker documentation for the most up-to-date instructions for using your GPU with Docker.
To use an AMD GPU, set `GPU_DRIVER=rocm` in your `.env` file.
## Customize
Check the `.env.sample` file. It contains some environment variables for running in Docker. Copy it, name it `.env`, and fill it in with your own values. Next time you run `docker compose up`, your custom values will be used.
Check the `.env.sample` file. It contains some environment variables for running in Docker. Copy it, name it `.env`, and fill it in with your own values. Next time you run `run.sh`, your custom values will be used.
You can also set these values in `dockercompose.yml` directly, but `.env` will help avoid conflicts when code is updated.
You can also set these values in `docker-compose.yml` directly, but `.env` will help avoid conflicts when code is updated.
Example (most values are optional):
Values are optional, but setting `INVOKEAI_ROOT` is highly recommended. The default is `~/invokeai`. Example:
```
```bash
INVOKEAI_ROOT=/Volumes/WorkDrive/invokeai
HUGGINGFACE_TOKEN=the_actual_token
CONTAINER_UID=1000
GPU_DRIVER=cuda
GPU_DRIVER=nvidia
```
Any environment variables supported by InvokeAI can be set here - please see the [Configuration docs](https://invoke-ai.github.io/InvokeAI/features/CONFIGURATION/) for further detail.
## Even Moar Customizing!
See the `dockercompose.yaml` file. The `command` instruction can be uncommented and used to run arbitrary startup commands. Some examples below.
See the `docker-compose.yml` file. The `command` instruction can be uncommented and used to run arbitrary startup commands. Some examples below.
### Reconfigure the runtime directory
@ -63,7 +74,7 @@ Can be used to download additional models from the supported model list
In conjunction with `INVOKEAI_ROOT` can be also used to initialize a runtime directory
"error": "Traceback (most recent call last):\n File \"/home/lstein/Projects/InvokeAI/invokeai/app/services/download/download_default.py\", line 182, in _download_next_item\n self._do_download(job)\n File \"/home/lstein/Projects/InvokeAI/invokeai/app/services/download/download_default.py\", line 206, in _do_download\n raise HTTPError(resp.reason)\nrequests.exceptions.HTTPError: Not Found\n"
Features in InvokeAI are added in the form of modular node-like systems called
Features in InvokeAI are added in the form of modular nodes systems called
**Invocations**.
An Invocation is simply a single operation that takes in some inputs and gives
@ -9,13 +9,34 @@ complex functionality.
## Invocations Directory
InvokeAI Invocations can be found in the `invokeai/app/invocations` directory.
InvokeAI Nodes can be found in the `invokeai/app/invocations` directory. These can be used as examples to create your own nodes.
You can add your new functionality to one of the existing Invocations in this
directory or create a new file in this directory as per your needs.
New nodes should be added to a subfolder in `nodes` direction found at the root level of the InvokeAI installation location. Nodes added to this folder will be able to be used upon application startup.
Example `nodes` subfolder structure:
```py
├──__init__.py# Invoke-managed custom node loader
│
├──cool_node
│├──__init__.py# see example below
│└──cool_node.py
│
└──my_node_pack
├──__init__.py# see example below
├──tasty_node.py
├──bodacious_node.py
├──utils.py
└──extra_nodes
└──fancy_node.py
```
Each node folder must have an `__init__.py` file that imports its nodes. Only nodes imported in the `__init__.py` file are loaded.
See the README in the nodes folder for more examples:
```py
from.cool_nodeimportCoolInvocation
```
**Note:** _All Invocations must be inside this directory for InvokeAI to
recognize them as valid Invocations._
## Creating A New Invocation
@ -44,7 +65,7 @@ The first set of things we need to do when creating a new Invocation are -
See the [tests documentation](./TESTS.md) for information about running and writing tests.
### Reloading Changes
Experimenting with changes to the Python source code is a drag if you have to re-start the server —
@ -167,6 +142,23 @@ and so you'll have access to the same python environment as the InvokeAI app.
This is _super_ handy.
#### Enabling Type-Checking with Pylance
We use python's typing system in InvokeAI. PR reviews will include checking that types are present and correct. We don't enforce types with `mypy` at this time, but that is on the horizon.
Using a code analysis tool to automatically type check your code (and types) is very important when writing with types. These tools provide immediate feedback in your editor when types are incorrect, and following their suggestions lead to fewer runtime bugs.
Pylance, installed at the beginning of this guide, is the de-facto python LSP (language server protocol). It provides type checking in the editor (among many other features). Once installed, you do need to enable type checking manually:
- Open a python file
- Look along the status bar in VSCode for `{ } Python`
- Click the `{ }`
- Turn type checking on - basic is fine
You'll now see red squiggly lines where type issues are detected. Hover your cursor over the indicated symbols to see what's wrong.
In 99% of cases when the type checker says there is a problem, there really is a problem, and you should take some time to understand and resolve what it is pointing out.
#### Debugging configs with `launch.json`
Debugging configs are managed in a `launch.json` file. Like most VSCode configs,
We use `pytest` to run the backend python tests. (See [pyproject.toml](/pyproject.toml) for the default `pytest` options.)
## Fast vs. Slow
All tests are categorized as either 'fast' (no test annotation) or 'slow' (annotated with the `@pytest.mark.slow` decorator).
'Fast' tests are run to validate every PR, and are fast enough that they can be run routinely during development.
'Slow' tests are currently only run manually on an ad-hoc basis. In the future, they may be automated to run nightly. Most developers are only expected to run the 'slow' tests that directly relate to the feature(s) that they are working on.
As a rule of thumb, tests should be marked as 'slow' if there is a chance that they take >1s (e.g. on a CPU-only machine with slow internet connection). Common examples of slow tests are tests that depend on downloading a model, or running model inference.
## Running Tests
Below are some common test commands:
```bash
# Run the fast tests. (This implicitly uses the configured default option: `-m "not slow"`.)
pytest tests/
# Equivalent command to run the fast tests.
pytest tests/ -m "not slow"
# Run the slow tests.
pytest tests/ -m "slow"
# Run the slow tests from a specific file.
pytest tests/path/to/slow_test.py -m "slow"
# Run all tests (fast and slow).
pytest tests -m ""
```
## Test Organization
All backend tests are in the [`tests/`](/tests/) directory. This directory mirrors the organization of the `invokeai/` directory. For example, tests for `invokeai/model_management/model_manager.py` would be found in `tests/model_management/test_model_manager.py`.
TODO: The above statement is aspirational. A re-organization of legacy tests is required to make it true.
## Tests that depend on models
There are a few things to keep in mind when adding tests that depend on models.
1. If a required model is not already present, it should automatically be downloaded as part of the test setup.
2. If a model is already downloaded, it should not be re-downloaded unnecessarily.
3. Take reasonable care to keep the total number of models required for the tests low. Whenever possible, re-use models that are already required for other tests. If you are adding a new model, consider including a comment to explain why it is required/unique.
There are several utilities to help with model setup for tests. Here is a sample test that depends on a model:
To review test coverage, append `--cov` to your pytest command:
```bash
pytest tests/ --cov
```
Test outcomes and coverage will be reported in the terminal. In addition, a more detailed report is created in both XML and HTML format in the `./coverage` folder. The HTML output is particularly helpful in identifying untested statements where coverage should be improved. The HTML report can be viewed by opening `./coverage/html/index.html`.
@ -38,12 +38,12 @@ There are two paths to making a development contribution:
If you need help, you can ask questions in the [#dev-chat](https://discord.com/channels/1020123559063990373/1049495067846524939) channel of the Discord.
For frontend related work, **@pyschedelicious** is the best person to reach out to.
For frontend related work, **@psychedelicious** is the best person to reach out to.
For backend related work, please reach out to **@blessedcoolant**, **@lstein**, **@StAlKeR7779** or **@pyschedelicious**.
For backend related work, please reach out to **@blessedcoolant**, **@lstein**, **@StAlKeR7779** or **@psychedelicious**.
## **What does the Code of Conduct mean for me?**
Our [Code of Conduct](CODE_OF_CONDUCT.md) means that you are responsible for treating everyone on the project with respect and courtesy regardless of their identity. If you are the victim of any inappropriate behavior or comments as described in our Code of Conduct, we are here for you and will do the best to ensure that the abuser is reprimanded appropriately, per our code.
Our [Code of Conduct](../../CODE_OF_CONDUCT.md) means that you are responsible for treating everyone on the project with respect and courtesy regardless of their identity. If you are the victim of any inappropriate behavior or comments as described in our Code of Conduct, we are here for you and will do the best to ensure that the abuser is reprimanded appropriately, per our code.
@ -10,4 +10,4 @@ When updating or creating documentation, please keep in mind InvokeAI is a tool
## Help & Questions
Please ping @imic1 or @hipsterusername in the [Discord](https://discord.com/channels/1020123559063990373/1049495067846524939) if you have any questions.
Please ping @imic or @hipsterusername in the [Discord](https://discord.com/channels/1020123559063990373/1049495067846524939) if you have any questions.
@ -211,8 +211,8 @@ Here are the invoke> command that apply to txt2img:
| `--facetool <name>` | `-ft <name>` | `-ft gfpgan` | Select face restoration algorithm to use: gfpgan, codeformer |
| `--codeformer_fidelity` | `-cf <float>` | `0.75` | Used along with CodeFormer. Takes values between 0 and 1. 0 produces high quality but low accuracy. 1 produces high accuracy but low quality |
| `--save_original` | `-save_orig` | `False` | When upscaling or fixing faces, this will cause the original image to be saved rather than replaced. |
| `--variation <float>` | `-v<float>` | `0.0` | Add a bit of noise (0.0=none, 1.0=high) to the image in order to generate a series of variations. Usually used in combination with `-S<seed>` and `-n<int>` to generate a series a riffs on a starting image. See [Variations](../features/VARIATIONS.md). |
| `--with_variations <pattern>` | | `None` | Combine two or more variations. See [Variations](../features/VARIATIONS.md) for now to use this. |
| `--variation <float>` | `-v<float>` | `0.0` | Add a bit of noise (0.0=none, 1.0=high) to the image in order to generate a series of variations. Usually used in combination with `-S<seed>` and `-n<int>` to generate a series a riffs on a starting image. See [Variations](VARIATIONS.md). |
| `--with_variations <pattern>` | | `None` | Combine two or more variations. See [Variations](VARIATIONS.md) for now to use this. |
| `--save_intermediates <n>` | | `None` | Save the image from every nth step into an "intermediates" folder inside the output directory |
| `--h_symmetry_time_pct <float>` | | `None` | Create symmetry along the X axis at the desired percent complete of the generation process. (Must be between 0.0 and 1.0; set to a very small number like 0.0001 for just after the first step of generation.) |
| `--v_symmetry_time_pct <float>` | | `None` | Create symmetry along the Y axis at the desired percent complete of the generation process. (Must be between 0.0 and 1.0; set to a very small number like 0.0001 for just after the first step of generation.) |
# :material-library-shelves: Textual Inversions and LoRAs
With the advances in research, many new capabilities are available to customize the knowledge and understanding of novel concepts not originally contained in the base model.
## Using Textual Inversion Files
Textual inversion (TI) files are small models that customize the output of
Stable Diffusion image generation. They can augment SD with specialized subjects
and artistic styles. They are also known as "embeds" in the machine learning
world.
Each TI file introduces one or more vocabulary terms to the SD model. These are
known in InvokeAI as "triggers." Triggers are denoted using angle brackets
as in "<trigger-phrase>". The two most common type of
TI files that you'll encounter are `.pt` and `.bin` files, which are produced by
different TI training packages. InvokeAI supports both formats, but its
[built-in TI training system](TRAINING.md) produces `.pt`.
[Hugging Face](https://huggingface.co/sd-concepts-library) has
amassed a large library of >800 community-contributed TI files covering a
broad range of subjects and styles. You can also install your own or others' TI files
by placing them in the designated directory for the compatible model type
### An Example
Here are a few examples to illustrate how it works. All these images were
generated using the command-line client and the Stable Diffusion 1.5 model:
| Japanese gardener | Japanese gardener <ghibli-face> | Japanese gardener <hoi4-leaders> | Japanese gardener <cartoona-animals> |
You can fix a broken `invokeai.yaml` by deleting it and running the
configuration script again -- option [7] in the launcher, "Re-run the
configuration script again -- option [6] in the launcher, "Re-run the
configure script".
#### Reading Environment Variables
@ -154,14 +154,16 @@ groups in `invokeia.yaml`:
### Web Server
| Setting | Default Value | Description |
|----------|----------------|--------------|
| `host` | `localhost` | Name or IP address of the network interface that the web server will listen on |
| `port` | `9090` | Network port number that the web server will listen on |
| `allow_origins` | `[]` | A list of host names or IP addresses that are allowed to connect to the InvokeAI API in the format `['host1','host2',...]` |
| `allow_credentials` | `true` | Require credentials for a foreign host to access the InvokeAI API (don't change this) |
| `allow_methods` | `*` | List of HTTP methods ("GET", "POST") that the web server is allowed to use when accessing the API |
| `allow_headers` | `*` | List of HTTP headers that the web server will accept when accessing the API |
| `host` | `localhost` | Name or IP address of the network interface that the web server will listen on |
| `port` | `9090` | Network port number that the web server will listen on |
| `allow_origins` | `[]` | A list of host names or IP addresses that are allowed to connect to the InvokeAI API in the format `['host1','host2',...]` |
| `allow_credentials` | `true` | Require credentials for a foreign host to access the InvokeAI API (don't change this) |
| `allow_methods` | `*` | List of HTTP methods ("GET", "POST") that the web server is allowed to use when accessing the API |
| `allow_headers` | `*` | List of HTTP headers that the web server will accept when accessing the API |
| `ssl_certfile` | null | Path to an SSL certificate file, used to enable HTTPS. |
| `ssl_keyfile` | null | Path to an SSL keyfile, if the key is not included in the certificate file. |
The documentation for InvokeAI's API can be accessed by browsing to the following URL: [http://localhost:9090/docs].
Command-line users can launch the model installer using the command
`invokeai-model-install`.
_Be aware that some ControlNet models require additional code
functionality in order to work properly, so just installing a
@ -65,6 +46,17 @@ third-party ControlNet model may not have the desired effect._ Please
read and follow the documentation for installing a third party model
not currently included among InvokeAI's default list.
Currently InvokeAI **only** supports 🤗 Diffusers-format ControlNet models. These are
folders that contain the files `config.json` and/or
`diffusion_pytorch_model.safetensors` and
`diffusion_pytorch_model.fp16.safetensors`. The name of the folder is
the name of the model.
🤗 Diffusers-format ControlNet models are available at HuggingFace
(http://huggingface.co) and accessed via their repo IDs (identifiers
in the format "author/modelname").
#### ControlNet Models
The models currently supported include:
**Canny**:
@ -96,6 +88,8 @@ A model that generates normal maps from input images, allowing for more realisti
**Image Segmentation**:
A model that divides input images into segments or regions, each of which corresponds to a different object or part of the image. (More details coming soon)
**QR Code Monster**:
A model that helps generate creative QR codes that still scan. Can also be used to create images with text, logos or shapes within them.
**Openpose**:
The OpenPose control model allows for the identification of the general pose of a character by pre-processing an existing image with a clear human structure. With advanced options, Openpose can also detect the face or hands in the image.
@ -120,7 +114,7 @@ With Pix2Pix, you can input an image into the controlnet, and then "instruct" th
Each of these models can be adjusted and combined with other ControlNet models to achieve different results, giving you even more control over your image generation process.
## Using ControlNet
### Using ControlNet
To use ControlNet, you can simply select the desired model and adjust both the ControlNet and Pre-processor settings to achieve the desired result. You can also use multiple ControlNet models at the same time, allowing you to achieve even more complex effects or styles in your generated images.
@ -132,3 +126,54 @@ Weight - Strength of the Controlnet model applied to the generation for the sect
Start/End - 0 represents the start of the generation, 1 represents the end. The Start/end setting controls what steps during the generation process have the ControlNet applied.
Additionally, each ControlNet section can be expanded in order to manipulate settings for the image pre-processor that adjusts your uploaded image before using it in when you Invoke.
## T2I-Adapter
[T2I-Adapter](https://github.com/TencentARC/T2I-Adapter) is a tool similar to ControlNet that allows for control over the generation process by providing control information during the generation process. T2I-Adapter models tend to be smaller and more efficient than ControlNets.
##### Installation
To install T2I-Adapter Models:
1. The easiest way to install models is
to use the InvokeAI model installer application. Use the
`invoke.sh`/`invoke.bat` launcher to select item [5] and then navigate
to the T2I-Adapters section. Select the models you wish to install and
press "APPLY CHANGES". You may also enter additional HuggingFace
repo_ids in the "Additional models" textbox.
2. Using the "Add Model" function of the model manager, enter the HuggingFace Repo ID of the T2I-Adapter. The ID is in the format "author/repoName"
#### Usage
Each T2I Adapter has two settings that are applied.
Weight - Strength of the model applied to the generation for the section, defined by start/end.
Start/End - 0 represents the start of the generation, 1 represents the end. The Start/end setting controls what steps during the generation process have the ControlNet applied.
Additionally, each section can be expanded with the "Show Advanced" button in order to manipulate settings for the image pre-processor that adjusts your uploaded image before using it in during the generation process.
## IP-Adapter
[IP-Adapter](https://ip-adapter.github.io) is a tooling that allows for image prompt capabilities with text-to-image diffusion models. IP-Adapter works by analyzing the given image prompt to extract features, then passing those features to the UNet along with any other conditioning provided.
There are several ways to install IP-Adapter models with an existing InvokeAI installation:
1. Through the command line interface launched from the invoke.sh / invoke.bat scripts, option [4] to download models.
2. Through the Model Manager UI with models from the *Tools* section of [www.models.invoke.ai](https://www.models.invoke.ai). To do this, copy the repo ID from the desired model page, and paste it in the Add Model field of the model manager. **Note** Both the IP-Adapter and the Image Encoder must be installed for IP-Adapter to work. For example, the [SD 1.5 IP-Adapter](https://models.invoke.ai/InvokeAI/ip_adapter_plus_sd15) and [SD1.5 Image Encoder](https://models.invoke.ai/InvokeAI/ip_adapter_sd_image_encoder) must be installed to use IP-Adapter with SD1.5 based models.
3.**Advanced -- Not recommended ** Manually downloading the IP-Adapter and Image Encoder files - Image Encoder folders shouid be placed in the `models\any\clip_vision` folders. IP Adapter Model folders should be placed in the relevant `ip-adapter` folder of relevant base model folder of Invoke root directory. For example, for the SDXL IP-Adapter, files should be added to the `model/sdxl/ip_adapter/` folder.
#### Using IP-Adapter
IP-Adapter can be used by navigating to the *Control Adapters* options and enabling IP-Adapter.
IP-Adapter requires an image to be used as the Image Prompt. It can also be used in conjunction with text prompts, Image-to-Image, Inpainting, Outpainting, ControlNets and LoRAs.
Each IP-Adapter has two settings that are applied to the IP-Adapter:
* Weight - Strength of the IP-Adapter model applied to the generation for the section, defined by start/end
* Start/End - 0 represents the start of the generation, 1 represents the end. The Start/end setting controls what steps during the generation process have the IP-Adapter applied.
With the advances in research, many new capabilities are available to customize the knowledge and understanding of novel concepts not originally contained in the base model.
## LoRAs
Low-Rank Adaptation (LoRA) files are models that customize the output of Stable Diffusion
image generation. Larger than embeddings, but much smaller than full
models, they augment SD with improved understanding of subjects and
artistic styles.
Unlike TI files, LoRAs do not introduce novel vocabulary into the
model's known tokens. Instead, LoRAs augment the model's weights that
are applied to generate imagery. LoRAs may be supplied with a
"trigger" word that they have been explicitly trained on, or may
simply apply their effect without being triggered.
LoRAs are typically stored in .safetensors files, which are the most
secure way to store and transmit these types of weights. You may
install any number of `.safetensors` LoRA files simply by copying them
into the `autoimport/lora` directory of the corresponding InvokeAI models
directory (usually `invokeai` in your home directory).
To use these when generating, open the LoRA menu item in the options
panel, select the LoRAs you want to apply and ensure that they have
the appropriate weight recommended by the model provider. Typically,
most LoRAs perform best at a weight of .75-1.
## LCM-LoRAs
Latent Consistency Models (LCMs) allowed a reduced number of steps to be used to generate images with Stable Diffusion. These are created by distilling base models, creating models that only require a small number of steps to generate images. However, LCMs require that any fine-tune of a base model be distilled to be used as an LCM.
LCM-LoRAs are models that provide the benefit of LCMs but are able to be used as LoRAs and applied to any fine tune of a base model. LCM-LoRAs are created by training a small number of adapters, rather than distilling the entire fine-tuned base model. The resulting LoRA can be used the same way as a standard LoRA, but with a greatly reduced step count. This enables SDXL images to be generated up to 10x faster than without the use of LCM-LoRAs.
**Using LCM-LoRAs**
LCM-LoRAs are natively supported in InvokeAI throughout the application. To get started, install any diffusers format LCM-LoRAs using the model manager and select it in the LoRA field.
There are a number parameter differences when using LCM-LoRAs and standard generation:
- When using LCM-LoRAs, the LoRA strength should be lower than if using a standard LoRA, with 0.35 recommended as a starting point.
- The LCM scheduler should be used for generation
- CFG-Scale should be reduced to ~1
- Steps should be reduced in the range of 4-8
Standard LoRAs can also be used alongside LCM-LoRAs, but will also require a lower strength, with 0.45 being recommended as a starting point.
More information can be found here: https://huggingface.co/blog/lcm_lora#fast-inference-with-sdxl-lcm-loras
@ -120,7 +120,7 @@ Generate an image with a given prompt, record the seed of the image, and then
use the `prompt2prompt` syntax to substitute words in the original prompt for
words in a new prompt. This works for `img2img` as well.
For example, consider the prompt `a cat.swap(dog) playing with a ball in the forest`. Normally, because of the word words interact with each other when doing a stable diffusion image generation, these two prompts would generate different compositions:
For example, consider the prompt `a cat.swap(dog) playing with a ball in the forest`. Normally, because the words interact with each other when doing a stable diffusion image generation, these two prompts would generate different compositions:
@ -229,29 +229,28 @@ clarity on the intent and common use cases we expect for utilizing them.
currently being rendered by your browser into a merged copy of the image. This
lowers the resource requirements and should improve performance.
### Seam Correction
### Compositing / Seam Correction
When doing Inpainting or Outpainting, Invoke needs to merge the pixels generated
by Stable Diffusion into your existing image. To do this, the area around the
`seam` at the boundary between your image and the new generation is
by Stable Diffusion into your existing image. This is achieved through compositing - the area around the the boundary between your image and the new generation is
automatically blended to produce a seamless output. In a fully automatic
process, a mask is generated to cover the seam, and then the area of the seam is
process, a mask is generated to cover the boundary, and then the area of the boundary is
Inpainted.
Although the default options should work well most of the time, sometimes it can
help to alter the parameters that control the seam Inpainting. A wider seam and
a blur setting of about 1/3 of the seam have been noted as producing
consistently strong results (e.g. 96 wide and 16 blur - adds up to 32 blur with
both sides). Seam strength of 0.7 is best for reducing hard seams.
help to alter the parameters that control the Compositing. A larger blur and
a blur setting have been noted as producing
consistently strong results . Strength of 0.7 is best for reducing hard seams.
- **Mode** - What part of the image will have the the Compositing applied to it.
- **Mask edge** will apply Compositing to the edge of the masked area
- **Mask** will apply Compositing to the entire masked area
- **Unmasked** will apply Compositing to the entire image
- **Steps** - Number of generation steps that will occur during the Coherence Pass, similar to Denoising Steps. Higher step counts will generally have better results.
- **Strength** - How much noise is added for the Coherence Pass, similar to Denoising Strength. A strength of 0 will result in an unchanged image, while a strength of 1 will result in an image with a completely new area as defined by the Mode setting.
- **Blur** - Adjusts the pixel radius of the the mask. A larger blur radius will cause the mask to extend past the visibly masked area, while too small of a blur radius will result in a mask that is smaller than the visibly masked area.
- **Blur Method** - The method of blur applied to the masked area.
- **Seam Size** - The size of the seam masked area. Set higher to make a larger
mask around the seam.
- **Seam Blur** - The size of the blur that is applied on _each_ side of the
masked area.
- **Seam Strength** - The Image To Image Strength parameter used for the
Inpainting generation that is applied to the seam area.
- **Seam Steps** - The number of generation steps that should be used to Inpaint
**Where do I get started? How can I install Invoke?**
- You can download the latest installers [here](https://github.com/invoke-ai/InvokeAI/releases) - Note that any releases marked as *pre-release* are in a beta state. You may experience some issues, but we appreciate your help testing those! For stable/reliable installations, please install the **[Latest Release](https://github.com/invoke-ai/InvokeAI/releases/latest)**
**How can I download models? Can I use models I already have downloaded?**
- Models can be downloaded through the model manager, or through option [4] in the invoke.bat/invoke.sh launcher script. To download a model through the Model Manager, use the HuggingFace Repo ID by pressing the “Copy” button next to the repository name. Alternatively, to download a model from CivitAi, use the download link in the Model Manager.
- Models that are already downloaded can be used by creating a symlink to the model location in the `autoimport` folder or by using the Model Manger’s “Scan for Models” function.
**My images are taking a long time to generate. How can I speed up generation?**
- A common solution is to reduce the size of your RAM & VRAM cache to 0.25. This ensures your system has enough memory to generate images.
- Additionally, check the [hardware requirements](https://invoke-ai.github.io/InvokeAI/#hardware-requirements) to ensure that your system is capable of generating images.
- Lastly, double check your generations are happening on your GPU (if you have one). InvokeAI will log what is being used for generation upon startup.
**I’ve installed Python on Windows but the installer says it can’t find it?**
- Then ensure that you checked **'Add python.exe to PATH'** when installing Python. This can be found at the bottom of the Python Installer window. If you already have Python installed, this can be done with the modify / repair feature of the installer.
**I’ve installed everything successfully but I still get an error about Triton when starting Invoke?**
- This can be safely ignored. InvokeAI doesn't use Triton, but if you are on Linux and wish to dismiss the error, you can install Triton.
**I updated to 3.4.0 and now xFormers can’t load C++/CUDA?**
- An issue occurred with your PyTorch update. Follow these steps to fix :
1. Launch your invoke.bat / invoke.sh and select the option to open the developer console
- If you run into an error with `typing_extensions`, re-open the developer console and run: `pip install -U typing-extensions`
**It says my pip is out of date - is that why my install isn't working?**
- An out of date won't cause an installation to fail. The cause of the error can likely be found above the message that says pip is out of date.
- If you saw that warning but the install went well, don't worry about it (but you can update pip afterwards if you'd like).
**How can I generate the exact same that I found on the internet?**
Most example images with prompts that you'll find on the internet have been generated using different software, so you can't expect to get identical results. In order to reproduce an image, you need to replicate the exact settings and processing steps, including (but not limited to) the model, the positive and negative prompts, the seed, the sampler, the exact image size, any upscaling steps, etc.
**Where can I get more help?**
- Create an issue on [GitHub](https://github.com/invoke-ai/InvokeAI/issues) or post in the [#help channel](https://discord.com/channels/1020123559063990373/1149510134058471514) of the InvokeAI Discord
@ -57,7 +57,9 @@ Prompts provide the models directions on what to generate. As a general rule of
Models are the magic that power InvokeAI. These files represent the output of training a machine on understanding massive amounts of images - providing them with the capability to generate new images using just a text description of what you’d like to see. (Like Stable Diffusion!)
Invoke offers a simple way to download several different models upon installation, but many more can be discovered online, including at ****. Each model can produce a unique style of output, based on the images it was trained on - Try out different models to see which best fits your creative vision!
Invoke offers a simple way to download several different models upon installation, but many more can be discovered online, including at https://models.invoke.ai
Each model can produce a unique style of output, based on the images it was trained on - Try out different models to see which best fits your creative vision!
- *Models that contain “inpainting” in the name are designed for use with the inpainting feature of the Unified Canvas*
This project is rapidly evolving. Please use the [Issues tab](https://github.com/invoke-ai/InvokeAI/issues) to report bugs and make feature requests. Be sure to use the provided templates as it will help aid response time.
@ -256,6 +256,10 @@ manager, please follow these steps:
*highly recommended** if your virtual environment is located outside of
your runtime directory.
!!! tip
On linux, it is recommended to run invokeai with the following env var: `MALLOC_MMAP_THRESHOLD_=1048576`. For example: `MALLOC_MMAP_THRESHOLD_=1048576 invokeai --web`. This helps to prevent memory fragmentation that can lead to memory accumulation over time. This env var is set automatically when running via `invoke.sh`.
10. Render away!
Browse the [features](../features/index.md) section to learn about all the
@ -289,6 +293,19 @@ manager, please follow these steps:
## Developer Install
!!! warning
InvokeAI uses a SQLite database. By running on `main`, you accept responsibility for your database. This
means making regular backups (especially before pulling) and/or fixing it yourself in the event that a
PR introduces a schema change.
If you don't need persistent backend storage, you can use an ephemeral in-memory database by setting
`use_memory_db: true` under `Path:` in your `invokeai.yaml` file.
If this is untenable, you should run the application via the official installer or a manual install of the
python package from pypi. These releases will not break your database.
If you have an interest in how InvokeAI works, or you would like to
add features or bugfixes, you are encouraged to install the source
code for InvokeAI. For this to work, you will need to install the
@ -296,8 +313,18 @@ code for InvokeAI. For this to work, you will need to install the
on your system, please see the [Git Installation
Guide](https://github.com/git-guides/install-git)
You will also need to install the [frontend development toolchain](https://github.com/invoke-ai/InvokeAI/blob/main/docs/contributing/contribution_guides/contributingToFrontend.md).
If you have a "normal" installation, you should create a totally separate virtual environment for the git-based installation, else the two may interfere.
> **Why do I need the frontend toolchain**?
>
> The InvokeAI project uses trunk-based development. That means our `main` branch is the development branch, and releases are tags on that branch. Because development is very active, we don't keep an updated build of the UI in `main` - we only build it for production releases.
>
> That means that between releases, to have a functioning application when running directly from the repo, you will need to run the UI in dev mode or build it regularly (any time the UI code changes).
1. Create a fork of the InvokeAI repository through the GitHub UI or [this link](https://github.com/invoke-ai/InvokeAI/fork)
Be sure to pass `-e` (for an editable install) and don't forget the
dot ("."). It is part of the command.
You can now run `invokeai` and its related commands. The code will be
5. Install the [frontend toolchain](https://github.com/invoke-ai/InvokeAI/blob/main/docs/contributing/contribution_guides/contributingToFrontend.md) and do a production build of the UI as described.
6. You can now run `invokeai` and its related commands. The code will be
read from the repository, so that you can edit the .py source files
and watch the code's behavior change.
4. If you wish to contribute to the InvokeAI project, you are
When you pull in new changes to the repo, be sure to re-build the UI.
7. If you wish to contribute to the InvokeAI project, you are
encouraged to establish a GitHub account and "fork"
https://github.com/invoke-ai/InvokeAI into your own copy of the
repository. You can then use GitHub functions to create and submit
@ -357,7 +388,7 @@ you can do so using this unsupported recipe:
We highly recommend to Install InvokeAI locally using [these instructions](INSTALLATION.md)
We highly recommend to Install InvokeAI locally using [these instructions](INSTALLATION.md),
because Docker containers can not access the GPU on macOS.
!!! tip "For developers"
!!! warning "AMD GPU Users"
For container-related development tasks or for enabling easy
deployment to other environments (on-premises or cloud), follow these
instructions.
Container support for AMD GPUs has been reported to work by the community, but has not received
extensive testing. Please make sure to set the `GPU_DRIVER=rocm` environment variable (see below), and
use the `build.sh` script to build the image for this to take effect at build time.
For general use, install locally to leverage your machine's GPU.
!!! tip "Linux and Windows Users"
For optimal performance, configure your Docker daemon to access your machine's GPU.
Docker Desktop on Windows [includes GPU support](https://www.docker.com/blog/wsl-2-gpu-support-for-docker-desktop-on-nvidia-gpus/).
Linux users should install and configure the [NVIDIA Container Toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html)
## Why containers?
They provide a flexible, reliable way to build and deploy InvokeAI. You'll also
use a Docker volume to store the largest model files and image outputs as a
first step in decoupling storage and compute. Future enhancements can do this
for other assets. See [Processes](https://12factor.net/processes) under the
Twelve-Factor App methodology for details on why running applications in such a
stateless fashion is important.
They provide a flexible, reliable way to build and deploy InvokeAI.
See [Processes](https://12factor.net/processes) under the Twelve-Factor App
methodology for details on why running applications in such a stateless fashion is important.
You can specify the target platform when building the image and running the
container. You'll also need to specify the InvokeAI requirements file that
matches the container's OS and the architecture it will run on.
The container is configured for CUDA by default, but can be built to support AMD GPUs
by setting the `GPU_DRIVER=rocm` environment variable at Docker image build time.
Developers on Apple silicon (M1/M2): You
Developers on Apple silicon (M1/M2/M3): You
[can't access your GPU cores from Docker containers](https://github.com/pytorch/pytorch/issues/81224)
and performance is reduced compared with running it directly on macOS but for
development purposes it's fine. Once you're done with development tasks on your
laptop you can build for the target platform and architecture and deploy to
another environment with NVIDIA GPUs on-premises or in the cloud.
## TL;DR
This assumes properly configured Docker on Linux or Windows/WSL2. Read on for detailed customization options.
```bash
# docker compose commands should be run from the `docker` directory
cd docker
docker compose up
```
## Installation in a Linux container (desktop)
### Prerequisites
@ -58,222 +69,44 @@ a token and copy it, since you will need in for the next step.
### Setup
Set the fork you want to use and other variables.
Set up your environmnent variables. In the `docker` directory, make a copy of `env.sample` and name it `.env`. Make changes as necessary.
!!! tip
Any environment variables supported by InvokeAI can be set here - please see the [CONFIGURATION](../features/CONFIGURATION.md) for further detail.
I preffer to save my env vars
in the repository root in a `.env` (or `.envrc`) file to automatically re-apply
them when I come back.
The build- and run- scripts contain default values for almost everything,
besides the [Hugging Face Token](https://huggingface.co/settings/tokens) you
created in the last step.
Some Suggestions of variables you may want to change besides the Token:
At a minimum, you might want to set the `INVOKEAI_ROOT` environment variable
to point to the location where you wish to store your InvokeAI models, configuration, and outputs.
| `HUGGING_FACE_HUB_TOKEN` | No default, but **required**! | This is the only **required** variable, without it you can't download the huggingface models |
| `REPOSITORY_NAME` | The Basename of the Repo folder | This name will used as the container repository/image name |
| `VOLUMENAME` | `${REPOSITORY_NAME,,}_data` | Name of the Docker Volume where model files will be stored |
| `ARCH` | arch of the build machine | Can be changed if you want to build the image for another arch |
| `CONTAINER_REGISTRY` | ghcr.io | Name of the Container Registry to use for the full tag |
| `CONTAINER_REPOSITORY` | `$(whoami)/${REPOSITORY_NAME}` | Name of the Container Repository |
| `CONTAINER_FLAVOR` | `cuda` | The flavor of the image to built, available options are `cuda`, `rocm` and `cpu`. If you choose `rocm` or `cpu`, the extra-index-url will be selected automatically, unless you set one yourself. |
| `CONTAINER_TAG` | `${INVOKEAI_BRANCH##*/}-${CONTAINER_FLAVOR}` | The Container Repository / Tag which will be used |
| `INVOKE_DOCKERFILE` | `Dockerfile` | The Dockerfile which should be built, handy for development |
| `PIP_EXTRA_INDEX_URL` | | If you want to use a custom pip-extra-index-url |
| `INVOKEAI_ROOT` | `~/invokeai` | **Required** - the location of your InvokeAI root directory. It will be created if it does not exist.
| `HUGGING_FACE_HUB_TOKEN` | | InvokeAI will work without it, but some of the integrations with HuggingFace (like downloading from models from private repositories) may not work|
| `GPU_DRIVER` | `cuda` | Optionally change this to `rocm` to build the image for AMD GPUs. NOTE: Use the `build.sh` script to build the image for this to take effect.
</figure>
#### Build the Image
I provided a build script, which is located next to the Dockerfile in
`docker/build.sh`. It can be executed from repository root like this:
Use the standard `docker compose build` command from within the `docker` directory.
```bash
./docker/build.sh
```
The build Script not only builds the container, but also creates the docker
volume if not existing yet.
If using an AMD GPU:
a: set the `GPU_DRIVER=rocm` environment variable in `docker-compose.yml` and continue using `docker compose build` as usual, or
b: set `GPU_DRIVER=rocm` in the `.env` file and use the `build.sh` script, provided for convenience
#### Run the Container
After the build process is done, you can run the container via the provided
`docker/run.sh` script
Use the standard `docker compose up` command, and generally the `docker compose` [CLI](https://docs.docker.com/compose/reference/) as usual.
```bash
./docker/run.sh
```
Once the container starts up (and configures the InvokeAI root directory if this is a new installation), you can access InvokeAI at [http://localhost:9090](http://localhost:9090)
When used without arguments, the container will start the webserver and provide
you the link to open it. But if you want to use some other parameters you can
also do so.
## Troubleshooting / FAQ
!!! example "run script example"
```bash
./docker/run.sh "banana sushi" -Ak_lms -S42 -s10
```
This would generate the legendary "banana sushi" with Seed 42, k_lms Sampler and 10 steps.
Find out more about available CLI-Parameters at [features/CLI.md](../../features/CLI/#arguments)
---
## Running the container on your GPU
If you have an Nvidia GPU, you can enable InvokeAI to run on the GPU by running
the container with an extra environment variable to enable GPU usage and have
the process run much faster:
```bash
GPU_FLAGS=all ./docker/run.sh
```
This passes the `--gpus all` to docker and uses the GPU.
If you don't have a GPU (or your host is not yet setup to use it) you will see a
message like this:
`docker: Error response from daemon: could not select device driver "" with capabilities: [[gpu]].`
You can use the full set of GPU combinations documented here:
You can also do text-guided image-to-image translation. For example, turning a
sketch into a detailed drawing.
`strength` is a value between 0.0 and 1.0 that controls the amount of noise that
is added to the input image. Values that approach 1.0 allow for lots of
variations but will also produce images that are not semantically consistent
with the input. 0.0 preserves image exactly, 1.0 replaces it completely.
Make sure your input image size dimensions are multiples of 64 e.g. 512x512.
Otherwise you'll get `Error: product of dimension sizes > 2**31'`. If you still
get the error
[try a different size](https://support.apple.com/guide/preview/resize-rotate-or-flip-an-image-prvw2015/mac#:~:text=image's%20file%20size-,In%20the%20Preview%20app%20on%20your%20Mac%2C%20open%20the%20file,is%20shown%20at%20the%20bottom.)
like 512x256.
If you're on a Docker container, copy your input image into the Docker volume
- Q: I am running on Windows under WSL2, and am seeing a "no such file or directory" error.
- A: Your `docker-entrypoint.sh` file likely has Windows (CRLF) as opposed to Unix (LF) line endings,
and you may have cloned this repository before the issue was fixed. To solve this, please change
the line endings in the `docker-entrypoint.sh` file to `LF`. You can do this in VSCode
(`Ctrl+P` and search for "line endings"), or by using the `dos2unix` utility in WSL.
Finally, you may delete `docker-entrypoint.sh` followed by `git pull; git checkout docker/docker-entrypoint.sh`
to reset the file to its most recent version.
For more information on this issue, please see the [Docker Desktop documentation](https://docs.docker.com/desktop/troubleshoot/topics/#avoid-unexpected-syntax-errors-use-unix-style-line-endings-for-files-in-containers)
@ -4,12 +4,19 @@ The workflow editor is a blank canvas allowing for the use of individual functio
If you're not familiar with Diffusion, take a look at our [Diffusion Overview.](../help/diffusion.md) Understanding how diffusion works will enable you to more easily use the Workflow Editor and build workflows to suit your needs.
## UI Features
## Features
### Workflow Library
The Workflow Library enables you to save workflows to the Invoke database, allowing you to easily creating, modify and share workflows as needed.
A curated set of workflows are provided by default - these are designed to help explain important nodes' usage in the Workflow Editor.
The Workflow Editor allows you to create a UI for your workflow, to make it easier to iterate on your generations.
To add an input to the Linear UI, right click on the input and select "Add to Linear View".
To add an input to the Linear UI, right click on the **input label** and select "Add to Linear View".
The Linear UI View will also be part of the saved workflow, allowing you share workflows and enable other to use them, regardless of complexity.
@ -25,8 +32,12 @@ Any node or input field can be renamed in the workflow editor. If the input fiel
* Backspace/Delete to delete a node
* Shift+Click to drag and select multiple nodes
### Node Caching
## Important Concepts
Nodes have a "Use Cache" option in their footer. This allows for performance improvements by using the previously cached values during the workflow processing.
## Important Nodes & Concepts
There are several node grouping concepts that can be examined with a narrow focus. These (and other) groupings can be pieced together to make up functional graph setups, and are important to understanding how groups of nodes work together as part of a whole. Note that the screenshots below aren't examples of complete functioning node graphs (see Examples).
@ -52,7 +63,7 @@ The ImageToLatents node takes in a pixel image and a VAE and outputs a latents.
It is common to want to use both the same seed (for continuity) and random seeds (for variety). To define a seed, simply enter it into the 'Seed' field on a noise node. Conversely, the RandomInt node generates a random integer between 'Low' and 'High', and can be used as input to the 'Seed' edge point on a noise node to randomize your seed.
@ -4,30 +4,127 @@ These are nodes that have been developed by the community, for the community. If
If you'd like to submit a node for the community, please refer to the [node creation overview](contributingNodes.md).
To download a node, simply download the `.py` node file from the link and add it to the `invokeai/app/invocations` folder in your InvokeAI install location. If you used the automated installation, this can be found inside the `.venv` folder. Along with the node, an example node graph should be provided to help you get started with the node.
To use a node, add the node to the `nodes` folder found in your InvokeAI install location.
The suggested method is to use `git clone` to clone the repository the node is found in. This allows for easy updates of the node in the future.
If you'd prefer, you can also just download the whole node folder from the linked repository and add it to the `nodes` folder.
To use a community workflow, download the the `.json` node graph file and load it into Invoke AI via the **Load Workflow** button in the Workflow Editor.
## Community Nodes
- Community Nodes
+ [Adapters-Linked](#adapters-linked-nodes)
+ [Average Images](#average-images)
+ [Clean Image Artifacts After Cut](#clean-image-artifacts-after-cut)
+ [Image and Mask Composition Pack](#image-and-mask-composition-pack)
+ [Image Dominant Color](#image-dominant-color)
+ [Image to Character Art Image Nodes](#image-to-character-art-image-nodes)
+ [Image Picker](#image-picker)
+ [Image Resize Plus](#image-resize-plus)
+ [Load Video Frame](#load-video-frame)
+ [Make 3D](#make-3d)
+ [Mask Operations](#mask-operations)
+ [Match Histogram](#match-histogram)
+ [Metadata-Linked](#metadata-linked-nodes)
+ [Negative Image](#negative-image)
+ [Nightmare Promptgen](#nightmare-promptgen)
+ [Oobabooga](#oobabooga)
+ [Prompt Tools](#prompt-tools)
+ [Remote Image](#remote-image)
+ [Remove Background](#remove-background)
+ [Retroize](#retroize)
+ [Size Stepper Nodes](#size-stepper-nodes)
+ [Simple Skin Detection](#simple-skin-detection)
+ [Text font to Image](#text-font-to-image)
+ [Thresholding](#thresholding)
+ [Unsharp Mask](#unsharp-mask)
+ [XY Image to Grid and Images to Grids nodes](#xy-image-to-grid-and-images-to-grids-nodes)
- [Example Node Template](#example-node-template)
- [Disclaimer](#disclaimer)
- [Help](#help)
### FaceTools
**Description:** FaceTools is a collection of nodes created to manipulate faces as you would in Unified Canvas. It includes FaceMask, FaceOff, and FacePlace. FaceMask autodetects a face in the image using MediaPipe and creates a mask from it. FaceOff similarly detects a face, then takes the face off of the image by adding a square bounding box around it and cropping/scaling it. FacePlace puts the bounded face image from FaceOff back onto the original image. Using these nodes with other inpainting node(s), you can put new faces on existing things, put new things around existing faces, and work closer with a face as a bounded image. Additionally, you can supply X and Y offset values to scale/change the shape of the mask for finer control on FaceMask and FaceOff. See GitHub repository below for usage examples.
**Description:**This node calculates an ideal image size for a first pass of a multi-pass upscaling. The aim is to avoid duplication that results from choosing a size larger than the model is capable of.
**Description:**A set of nodes for linked adapters (ControlNet, IP-Adaptor & T2I-Adapter). This allows multiple adapters to be chained together without using a `collect` node which means it can be used inside an `iterate` node without any collecting on every iteration issues.
**Description:** Render depth maps from Wavefront .obj files (triangulated) using this simple 3D renderer utilizing numpy and matplotlib to compute and color the scene. There are simple parameters to change the FOV, camera position, and model orientation.
To be imported, an .obj must use triangulated meshes, so make sure to enable that option if exporting from a 3D modeling program. This renderer makes each triangle a solid color based on its average depth, so it will cause anomalies if your .obj has large triangles. In Blender, the Remesh modifier can be helpful to subdivide a mesh into small pieces that work well given these limitations.
**Description:** This InvokeAI node takes in a collection of images and randomly chooses one. This can be useful when you have a number of poses to choose from for a ControlNet node, or a number of input images for another purpose.
**Description:** This set of 3 nodes generates prompts from simple user-defined grammar rules (loaded from custom files - examples provided below). The prompts are made by recursively expanding a special template string, replacing nonterminal "parts-of-speech" until no nonterminal terms remain in the string.
**Description:** Retroize is a collection of nodes for InvokeAI to "Retroize" images. Any image can be given a fresh coat of retro paint with these nodes, either from your gallery or from within the graph itself. It includes nodes to pixelize, quantize, palettize, and ditherize images; as well as to retrieve palettes from existing images.
**Description**: Halftone converts the source image to grayscale and then performs halftoning. CMYK Halftone converts the image to CMYK and applies a per-channel halftoning to make the source image look like a magazine or newspaper. For both nodes, you can specify angles and halftone dot spacing.
**Description:** This node calculates an ideal image size for a first pass of a multi-pass upscaling. The aim is to avoid duplication that results from choosing a size larger than the model is capable of.
**Description:** This is a pack of nodes for composing masks and images, including a simple text mask creator and both image and latent offset nodes. The offsets wrap around, so these can be used in conjunction with the Seamless node to progressively generate centered on different parts of the seamless tiling.
This includes 15 Nodes:
- *Adjust Image Hue Plus* - Rotate the hue of an image in one of several different color spaces.
- *Blend Latents/Noise (Masked)* - Use a mask to blend part of one latents tensor [including Noise outputs] into another. Can be used to "renoise" sections during a multi-stage [masked] denoising process.
- *Enhance Image* - Boost or reduce color saturation, contrast, brightness, sharpness, or invert colors of any image at any stage with this simple wrapper for pillow [PIL]'s ImageEnhance module.
- *Equivalent Achromatic Lightness* - Calculates image lightness accounting for Helmholtz-Kohlrausch effect based on a method described by High, Green, and Nussbaum (2023).
- *Text to Mask (Clipseg)* - Input a prompt and an image to generate a mask representing areas of the image matched by the prompt.
- *Text to Mask Advanced (Clipseg)* - Output up to four prompt masks combined with logical "and", logical "or", or as separate channels of an RGBA image.
- *Image Layer Blend* - Perform a layered blend of two images using alpha compositing. Opacity of top layer is selectable, with optional mask and several different blend modes/color spaces.
- *Image Compositor* - Take a subject from an image with a flat backdrop and layer it on another image using a chroma key or flood select background removal.
- *Image Dilate or Erode* - Dilate or expand a mask (or any image!). This is equivalent to an expand/contract operation.
- *Image Value Thresholds* - Clip an image to pure black/white beyond specified thresholds.
- *Offset Latents* - Offset a latents tensor in the vertical and/or horizontal dimensions, wrapping it around.
- *Offset Image* - Offset an image in the vertical and/or horizontal dimensions, wrapping it around.
- *Rotate/Flip Image* - Rotate an image in degrees clockwise/counterclockwise about its center, optionally resizing the image boundaries to fit, or flipping it about the vertical and/or horizontal axes.
- *Shadows/Highlights/Midtones* - Extract three masks (with adjustable hard or soft thresholds) representing shadows, midtones, and highlights regions of an image.
- *Text Mask (simple 2D)* - create and position a white on black (or black on white) line of text using any font locally available to Invoke.
**Description:** This InvokeAI node takes in a collection of images and randomly chooses one. This can be useful when you have a number of poses to choose from for a ControlNet node, or a number of input images for another purpose.
**Description:** This is a video frame image provider + indexer/video creation nodes for hooking up to iterators and ranges and ControlNets and such forinvokeAInode experimentation. Think animation + ControlNet outputs.
**Description:** This is a video frame image provider + indexer/video creation nodes for hooking up to iterators and ranges and ControlNets and such forinvokeAInode experimentation. Think animation + ControlNet outputs.
**Description:** An InvokeAI node to match a histogram from one image to another. This is a bit like the `color correct` node in the main InvokeAI but this works in the YCbCr colourspace and can handle images of different sizes. Also does not require a mask input.
- Option to only transfer luminance channel.
- Option to save output as grayscale
A good use case for this node is to normalize the colors of an image that has been through the tiled scaling workflow of my XYGrid Nodes.
See full docs here: https://github.com/skunkworxdark/Prompt-tools-nodes/edit/main/README.md
**Description:** Nightmare Prompt Generator - Uses a local text generation model to create unique imaginative (but usually nightmarish) prompts for InvokeAI. By default, it allows you to choose from some gpt-neo models I finetuned on over 2500 of my own InvokeAI prompts in Compel format, but you're able to add your own, as well. Offers support for replacing any troublesome words with a random choice from list you can also define.
"describe a new mystical creature in its natural environment"
@ -99,7 +370,7 @@ Generated Prompt: An enchanted weapon will be usable by any character regardless
"The mystical creature I am describing to you is called the "Glimmerwing". It is a majestic, iridescent being that inhabits the depths of the most enchanted forests and glimmering lakes. Its body is covered in shimmering scales that reflect every color of the rainbow, and it has delicate, translucent wings that sparkle like diamonds in the sunlight. The Glimmerwing's home is a crystal-clear lake, surrounded by towering trees with leaves that shimmer like jewels. In this serene environment, the Glimmerwing spends its days swimming gracefully through the water, chasing schools of glittering fish and playing with the gentle ripples of the lake's surface.
As the sun sets, the Glimmerwing perches on a branch of one of the trees, spreading its wings to catch the last rays of light. The creature's scales glow softly, casting a rainbow of colors across the forest floor. The Glimmerwing sings a haunting melody, its voice echoing through the stillness of the night air. Its song is said to have the power to heal the sick and bring peace to troubled souls. Those who are lucky enough to hear the Glimmerwing's song are forever changed by its beauty and grace."
@ -107,62 +378,76 @@ a Text-Generation-Webui instance (might work remotely too, but I never tried it)
**Note**
This node works best with SDXL models, especially as the style can be described independantly of the LLM's output.
This node works best with SDXL models, especially as the style can be described independently of the LLM's output.
--------------------------------
### Depth Map from Wavefront OBJ
### Prompt Tools
**Description:**Render depth maps from Wavefront .obj files (triangulated) using this simple 3D renderer utilizing numpy and matplotlib to compute and color the scene. There are simple parameters to change the FOV, camera position, and model orientation.
**Description:**A set of InvokeAI nodes that add general prompt (string) manipulation tools. Designed to accompany the `Prompts From File` node and other prompt generation nodes.
To be imported, an .obj must use triangulated meshes, so make sure to enable that option if exporting from a 3D modeling program. This renderer makes each triangle a solid color based on its average depth, so it will cause anomalies if your .obj has large triangles. In Blender, the Remesh modifier can be helpful to subdivide a mesh into small pieces that work well given these limitations.
1.`Prompt To File` - saves a prompt or collection of prompts to a file. one per line. There is an append/overwrite option.
2.`PTFields Collect` - Converts image generation fields into a Json format string that can be passed to Prompt to file.
3.`PTFields Expand` - Takes Json string and converts it to individual generation parameters. This can be fed from the Prompts to file node.
4.`Prompt Strength` - Formats prompt with strength like the weighted format of compel
5.`Prompt Strength Combine` - Combines weighted prompts for .and()/.blend()
6.`CSV To Index String` - Gets a string from a CSV by index. Includes a Random index option
**Description:**Boost or reduce color saturation, contrast, brightness, sharpness, or invert colors of any image at any stage with this simple wrapper for pillow [PIL]'s ImageEnhance module.
**Description:**This is a pack of nodes to interoperate with other services, be they public websites or bespoke local servers. The pack consists of these nodes:
Color inversion is toggled with a simple switch, while each of the four enhancer modes are activated by entering a value other than 1 in each corresponding input field. Values less than 1 will reduce the corresponding property, while values greater than 1 will enhance it.
- *Load Remote Image* - Lets you load remote images such as a realtime webcam image, an image of the day, or dynamically created images.
- *Post Image to Remote Server* - Lets you upload an image to a remote server using an HTTP POST request, eg for storage, display or further processing.
**Description:** This set of 3 nodes generates prompts from simple user-defined grammar rules (loaded from custom files - examples provided below). The prompts are made by recursively expanding a special template string, replacing nonterminal "parts-of-speech" until no more nonterminal terms remain in the string.
Description: An integration of the rembg package to remove backgrounds from images using multiple U2NET models.
This includes 3 Nodes:
- *Lookup Table from File* - loads a YAML file "prompt" section (or of a whole folder of YAML's) into a JSON-ified dictionary (Lookups output)
- *Lookups Entry from Prompt* - places a single entry in a new Lookups output under the specified heading
- *Prompt from Lookup Table* - uses a Collection of Lookups as grammar rules from which to randomly generate prompts.
**Description:**This is a pack of nodes for composing masks and images, including a simple text mask creator and both image and latent offset nodes. The offsets wrap around, so these can be used in conjunction with the Seamless node to progressively generate centered on different parts of the seamless tiling.
**Description:**Retroize is a collection of nodes for InvokeAI to "Retroize" images. Any image can be given a fresh coat of retro paint with these nodes, either from your gallery or from within the graph itself. It includes nodes to pixelize, quantize, palettize, and ditherize images; as well as to retrieve palettes from existing images.
This includes 4 Nodes:
- *Text Mask (simple 2D)* - create and position a white on black (or black on white) line of text using any font locally available to Invoke.
- *Image Compositor* - Take a subject from an image with a flat backdrop and layer it on another image using a chroma key or flood select background removal.
- *Offset Latents* - Offset a latents tensor in the vertical and/or horizontal dimensions, wrapping it around.
- *Offset Image* - Offset an image in the vertical and/or horizontal dimensions, wrapping it around.
**Description:** text font to text image node for InvokeAI, download a font to use (or if in font cache uses it from there), the text is always resized to the image size, but can control that with padding, optional 2nd line
@ -186,61 +470,83 @@ A third node is included, *Random Switch (Integers)*, which is just a generic ve
**Description:** This node generates masks for highlights, midtones, and shadows given an input image. You can optionally specify a blur for the lookup table used in making those masks from the source image.
**Description:** A set of InvokeAI nodes that add general prompt manipulation tools. These where written to accompany the PromptsFromFile node and other prompt generation nodes.
2. PromptReplace - performs a search and replace on a prompt. With the option of using regex.
3. PromptSplitNeg - splits a prompt into positive and negative using the old V2 method of [] for negative.
4. PromptToFile - saves a prompt or collection of prompts to a file. one per line. There is an append/overwrite option.
5. PTFieldsCollect - Converts image generation fields into a Json format string that can be passed to Prompt to file.
6. PTFieldsExpand - Takes Json string and converts it to individual generation parameters This can be fed from the Prompts to file node.
7. PromptJoinThree - Joins 3 prompt together.
8. PromptStrength - This take a string and float and outputs another string in the format of (string)strength like the weighted format of compel.
9. PromptStrengthCombine - This takes a collection of prompt strength strings and outputs a string in the .and() or .blend() format that can be fed into a proper prompt node.
**Examples**
See full docs here: https://github.com/skunkworxdark/Prompt-tools-nodes/edit/main/README.md
**Description:**Image to grid nodes and supporting tools.
**Description:**These nodes add the following to InvokeAI:
- Generate grids of images from multiple input images
- Create XY grid images with labels from parameters
- Split images into overlapping tiles for processing (for super-resolution workflows)
- Recombine image tiles into a single output image blending the seams
1. "Images To Grids" node - Takes a collection of images and creates a grid(s) of images. If there are more images than the size of a single grid then mutilple grids will be created until it runs out of images.
2."XYImage To Grid" node - Converts a collection of XYImages into a labeled Grid of images. The XYImages collection has to be built using the supporoting nodes. See example node setups for more details.
The nodes include:
1.`Images To Grids` - Combine multiple images into a grid of images
2.`XYImage To Grid` - Take X & Y params and creates a labeled image grid.
@ -4,7 +4,7 @@ To learn about the specifics of creating a new node, please visit our [Node crea
Once you’ve created a node and confirmed that it behaves as expected locally, follow these steps:
- Make sure the node is contained in a new Python (.py) file. Preferrably, the node is in a repo with a README detaling the nodes usage & examples to help others more easily use your node.
- Make sure the node is contained in a new Python (.py) file. Preferably, the node is in a repo with a README detailing the nodes usage & examples to help others more easily use your node. Including the tag "invokeai-node" in your repository's README can also help other users find it more easily.
- Submit a pull request with a link to your node(s) repo in GitHub against the `main` branch to add the node to the [Community Nodes](communityNodes.md) list
- Make sure you are following the template below and have provided all relevant details about the node and what it does. Example output images and workflows are very helpful for other users looking to use your node.
- A maintainer will review the pull request and node. If the node is aligned with the direction of the project, you may be asked for permission to include it in the core project.
|Boolean Primitive Collection | A collection of boolean primitive values|
|Boolean Primitive | A boolean primitive value|
|Canny Processor | Canny edge detection for ControlNet|
|CLIP Skip | Skip layers in clip text_encoder model.|
|Collect | Collects values into a collection|
|Color Correct | Shifts the colors of a target image to match the reference image, optionally using a mask to only color-correct certain regions of the target image.|
|Color Primitive | A color primitive value|
|Compel Prompt | Parse prompt using compel package to conditioning.|
|Conditioning Primitive Collection | A collection of conditioning tensor primitive values|
|Conditioning Primitive | A conditioning tensor primitive value|
|Content Shuffle Processor | Applies content shuffle processing to image|
|ControlNet | Collects ControlNet info to pass to other nodes|
|OpenCV Inpaint | Simple inpaint using opencv.|
|Denoise Latents | Denoises noisy latents to decodable images|
|Divide Integers | Divides two numbers|
|Dynamic Prompt | Parses a prompt using adieyal/dynamicprompts' random or combinatorial generator|
|Upscale (RealESRGAN) | Upscales an image using RealESRGAN.|
|Float Math | Perform basic math operations on two floats|
|Float Primitive Collection | A collection of float primitive values|
|Float Primitive | A float primitive value|
|Float Range | Creates a range|
|HED (softedge) Processor | Applies HED edge detection to image|
|Blur Image | Blurs an image|
|Extract Image Channel | Gets a channel from an image.|
|Image Primitive Collection | A collection of image primitive values|
|Integer Math | Perform basic math operations on two integers|
|Convert Image Mode | Converts an image to a different mode.|
|Crop Image | Crops an image to a specified box. The box can be outside of the image.|
|Image Hue Adjustment | Adjusts the Hue of an image.|
|Inverse Lerp Image | Inverse linear interpolation of all pixels of an image|
|Image Primitive | An image primitive value|
|Lerp Image | Linear interpolation of all pixels of an image|
|Offset Image Channel | Add to or subtract from an image color channel by a uniform value.|
|Multiply Image Channel | Multiply or Invert an image color channel by a scalar value.|
|Multiply Images | Multiplies two images together using `PIL.ImageChops.multiply()`.|
|Blur NSFW Image | Add blur to NSFW-flagged images|
|Paste Image | Pastes an image into another image.|
|ImageProcessor | Base class for invocations that preprocess images for ControlNet|
|Resize Image | Resizes an image to specific dimensions|
|Round Float | Rounds a float to a specified number of decimal places|
|Float to Integer | Converts a float to an integer. Optionally rounds to an even multiple of a input number.|
|Scale Image | Scales an image by a factor|
|Image to Latents | Encodes an image into latents.|
|Add Invisible Watermark | Add an invisible watermark to an image|
|Solid Color Infill | Infills transparent areas of an image with a solid color|
|PatchMatch Infill | Infills transparent areas of an image using the PatchMatch algorithm|
|Tile Infill | Infills transparent areas of an image with tiles of the image|
|Integer Primitive Collection | A collection of integer primitive values|
|Integer Primitive | An integer primitive value|
|Iterate | Iterates over a list of items|
|Latents Primitive Collection | A collection of latents tensor primitive values|
|Latents Primitive | A latents tensor primitive value|
|Latents to Image | Generates an image from latents.|
|Leres (Depth) Processor | Applies leres processing to image|
|Lineart Anime Processor | Applies line art anime processing to image|
|Lineart Processor | Applies line art processing to image|
|LoRA Loader | Apply selected lora to unet and text_encoder.|
|Main Model Loader | Loads a main model, outputting its submodels.|
|Combine Mask | Combine two masks together by multiplying them using `PIL.ImageChops.multiply()`.|
|Mask Edge | Applies an edge mask to an image|
|Mask from Alpha | Extracts the alpha channel of an image as a mask.|
|Mediapipe Face Processor | Applies mediapipe face processing to image|
|Midas (Depth) Processor | Applies Midas depth processing to image|
|MLSD Processor | Applies MLSD processing to image|
|Multiply Integers | Multiplies two numbers|
|Noise | Generates latent noise.|
|Normal BAE Processor | Applies NormalBae processing to image|
|ONNX Latents to Image | Generates an image from latents.|
|ONNX Prompt (Raw) | A node to processinputs and produce outputs. May use dependency injection in __init__ to receive providers.|
|ONNX Text to Latents | Generates latents from conditionings.|
|ONNX Model Loader | Loads a main model, outputting its submodels.|
|Openpose Processor | Applies Openpose processing to image|
|PIDI Processor | Applies PIDI processing to image|
|Prompts from File | Loads prompts from a text file|
|Random Integer | Outputs a single random integer.|
|Random Range | Creates a collection of random numbers|
|Integer Range | Creates a range of numbers from start to stop with step|
|Integer Range of Size | Creates a range from start to start + size with step|
|Resize Latents | Resizes latents to explicit width/height (in pixels). Provided dimensions are floor-divided by 8.|
|SDXL Compel Prompt | Parse prompt using compel package to conditioning.|
|SDXL LoRA Loader | Apply selected lora to unet and text_encoder.|
|SDXL Main Model Loader | Loads an sdxl base model, outputting its submodels.|
|SDXL Refiner Compel Prompt | Parse prompt using compel package to conditioning.|
|SDXL Refiner Model Loader | Loads an sdxl refiner model, outputting its submodels.|
|Scale Latents | Scales latents by a given factor.|
|Segment Anything Processor | Applies segment anything processing to image|
|Show Image | Displays a provided image, and passes it forward in the pipeline.|
|Color Correct | Shifts the colors of a target image to match the reference image, optionally using a mask to only color-correct certain regions of the target image. |
|Color Primitive | A color primitive value |
|Compel Prompt | Parse prompt using compel package to conditioning. |
|Conditioning Primitive Collection | A collection of conditioning tensor primitive values |
|Conditioning Primitive | A conditioning tensor primitive value |
| Face ID | The face ID to process, numbered from 0. Multiple faces not supported. Find a face's ID with FaceIdentifier node. |
| Minimum Confidence | Minimum confidence for face detection (lower if detection is failing) |
| X Offset | X-axis offset of the mask |
| Y Offset | Y-axis offset of the mask |
| Padding | All-axis padding around the mask in pixels |
| Chunk | Chunk (or divide) the image into sections to greatly improve face detection success. Defaults to off, but will activate if no faces are detected normally. Activate to chunk by default. |
| Face IDs | Comma-separated list of face ids to mask eg '0,2,7'. Numbered from 0. Leave empty to mask all. Find face IDs with FaceIdentifier node. |
| Minimum Confidence | Minimum confidence for face detection (lower if detection is failing) |
| X Offset | X-axis offset of the mask |
| Y Offset | Y-axis offset of the mask |
| Chunk | Chunk (or divide) the image into sections to greatly improve face detection success. Defaults to off, but will activate if no faces are detected normally. Activate to chunk by default. |
| Invert Mask | Toggle to invert the face mask |
| Output | Description |
| ------ | --------------------------------- |
| Image | The original image |
| Width | The width of the image in pixels |
| Height | The height of the image in pixels |
| Mask | The output face mask |
## FaceIdentifier
FaceIdentifier outputs an image with detected face IDs printed in white numbers
onto each face.
Face IDs can then be used in FaceMask and FaceOff to selectively mask all, a
specific combination, or single faces.
The FaceIdentifier output image is generated for user reference, and isn't meant
to be passed on to other image-processing nodes.
The "Minimum Confidence" input defaults to 0.5 (50%), and represents a pass/fail
threshold a detected face must reach for it to be processed. Lowering this value
may help if detection is failing. If an image is changed in the slightest, run
it through FaceIdentifier again to get updated FaceIDs.
| Minimum Confidence | Minimum confidence for face detection (lower if detection is failing) |
| Chunk | Chunk (or divide) the image into sections to greatly improve face detection success. Defaults to off, but will activate if no faces are detected normally. Activate to chunk by default. |
We've curated some example workflows for you to get started with Workflows in InvokeAI
We've curated some example workflows for you to get started with Workflows in InvokeAI! These can also be found in the Workflow Library, located in the Workflow Editor of Invoke.
To use them, right click on your desired workflow, press "Download Linked File". You can then use the "Load Workflow" functionality in InvokeAI to load the workflow and start generating images!
To use them, right click on your desired workflow, follow the link to GitHub and click the "⬇" button to download the raw file. You can then use the "Load Workflow" functionality in InvokeAI to load the workflow and start generating images!
If you're interested in finding more workflows, checkout the [#share-your-workflows](https://discord.com/channels/1020123559063990373/1130291608097661000) channel in the InvokeAI Discord.
* [SD1.5 / SD2 Text to Image](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/Text_to_Image.json)
* [SDXL Text to Image](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/SDXL_Text_to_Image.json)
* [SDXL (with Refiner) Text to Image](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/SDXL_Text_to_Image.json)
* [Tiled Upscaling with ControlNet](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/ESRGAN_img2img_upscale w_Canny_ControlNet.json)ß
* [SDXL Text to Image with Refiner](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/SDXL_w_Refiner_Text_to_Image.json)
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seterr_msg=No python was detected on your system. Please install Python version %MINIMUM_PYTHON_VERSION% or higher. We recommend Python 3.10.12 from %PYTHON_URL%
seterr_msg=Your version of Python is too low. You need at least %MINIMUM_PYTHON_VERSION% but you have %python_version%. We recommend Python 3.10.9 from %PYTHON_URL%
seterr_msg=Your version of Python is too low. You need at least %MINIMUM_PYTHON_VERSION% but you have %python_version%. We recommend Python 3.10.12 from %PYTHON_URL%
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