Commit Graph

11863 Commits

Author SHA1 Message Date
psychedelicious
c11478a94a chore(ui): typegen 2024-06-17 09:51:18 +10:00
psychedelicious
fb694b3e17 feat(app): add model_install_download_started event
Previously, we used `model_install_download_progress` for both download starting and progressing. When handling this event, we don't know which actual thing it represents.

Add `model_install_download_started` event to explicitly represent a model download started event.
2024-06-17 09:50:25 +10:00
psychedelicious
1bc98abc76 docs(ui): explain model install events 2024-06-17 09:33:46 +10:00
chainchompa
7f03b04b2f
Merge branch 'main' into chainchompa/model-install-deeplink 2024-06-14 17:16:25 -04:00
chainchompa
4029972530 formatting 2024-06-14 17:15:55 -04:00
chainchompa
328f160e88 refetch model installs when a new model install starts 2024-06-14 17:09:07 -04:00
chainchompa
aae318425d added route for installing huggingface model from model marketplace 2024-06-14 17:08:39 -04:00
Ryan Dick
785bb1d9e4 Fix all comparisons against the DEFAULT_PRECISION constant. DEFAULT_PRECISION is a torch.dtype. Previously, it was compared to a str in a number of places where it would always resolve to False. This is a bugfix that results in a change to the default behavior. In practice, this will not change the behavior for many users, because it only causes a change in behavior if a users has configured float32 as their default precision. 2024-06-14 11:26:10 -07:00
Lincoln Stein
a3cb5da130
Improve RAM<->VRAM memory copy performance in LoRA patching and elsewhere (#6490)
* allow model patcher to optimize away the unpatching step when feasible

* remove lazy_offloading functionality

* allow model patcher to optimize away the unpatching step when feasible

* remove lazy_offloading functionality

* do not save original weights if there is a CPU copy of state dict

* Update invokeai/backend/model_manager/load/load_base.py

Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>

* documentation fixes requested during penultimate review

* add non-blocking=True parameters to several torch.nn.Module.to() calls, for slight performance increases

* fix ruff errors

* prevent crash on non-cuda-enabled systems

---------

Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: Kent Keirsey <31807370+hipsterusername@users.noreply.github.com>
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
2024-06-13 17:10:03 +00:00
blessedcoolant
568a4844f7 fix: other recursive imports 2024-06-10 04:12:20 -07:00
blessedcoolant
b1e56e2485 fix: SchedulerOutput not being imported correctly 2024-06-10 04:12:20 -07:00
Kent Keirsey
9432336e2b
Add simplified model manager install API to InvocationContext (#6132)
## Summary

This three two model manager-related methods to the InvocationContext
uniform API. They are accessible via `context.models.*`:

1. **`load_local_model(model_path: Path, loader:
Optional[Callable[[Path], AnyModel]] = None) ->
LoadedModelWithoutConfig`**

*Load the model located at the indicated path.*

This will load a local model (.safetensors, .ckpt or diffusers
directory) into the model manager RAM cache and return its
`LoadedModelWithoutConfig`. If the optional loader argument is provided,
the loader will be invoked to load the model into memory. Otherwise the
method will call `safetensors.torch.load_file()` `torch.load()` (with a
pickle scan), or `from_pretrained()` as appropriate to the path type.

Be aware that the `LoadedModelWithoutConfig` object differs from
`LoadedModel` by having no `config` attribute.

Here is an example of usage:

```
def invoke(self, context: InvocatinContext) -> ImageOutput:
       model_path = Path('/opt/models/RealESRGAN_x4plus.pth')
       loadnet = context.models.load_local_model(model_path)
       with loadnet as loadnet_model:
             upscaler = RealESRGAN(loadnet=loadnet_model,...)
```

---

2. **`load_remote_model(source: str | AnyHttpUrl, loader:
Optional[Callable[[Path], AnyModel]] = None) ->
LoadedModelWithoutConfig`**

*Load the model located at the indicated URL or repo_id.*

This is similar to `load_local_model()` but it accepts either a
HugginFace repo_id (as a string), or a URL. The model's file(s) will be
downloaded to `models/.download_cache` and then loaded, returning a

```
def invoke(self, context: InvocatinContext) -> ImageOutput:
       model_url = 'https://github.com/xinntao/Real-ESRGAN/releases/download/v0.1.0/RealESRGAN_x4plus.pth'
       loadnet = context.models.load_remote_model(model_url)
       with loadnet as loadnet_model:
             upscaler = RealESRGAN(loadnet=loadnet_model,...)
```
---

3. **`download_and_cache_model( source: str | AnyHttpUrl, access_token:
Optional[str] = None, timeout: Optional[int] = 0) -> Path`**

Download the model file located at source to the models cache and return
its Path. This will check `models/.download_cache` for the desired model
file and download it from the indicated source if not already present.
The local Path to the downloaded file is then returned.

---

## Other Changes

This PR performs a migration, in which it renames `models/.cache` to
`models/.convert_cache`, and migrates previously-downloaded ESRGAN,
openpose, DepthAnything and Lama inpaint models from the `models/core`
directory into `models/.download_cache`.

There are a number of legacy model files in `models/core`, such as
GFPGAN, which are no longer used. This PR deletes them and tidies up the
`models/core` directory.

## Related Issues / Discussions

I have systematically replaced all the calls to
`download_with_progress_bar()`. This function is no longer used
elsewhere and has been removed.

<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->

## QA Instructions

I have added unit tests for the three new calls. You may test that the
`load_and_cache_model()` call is working by running the upscaler within
the web app. On first try, you will see the model file being downloaded
into the models `.cache` directory. On subsequent tries, the model will
either load from RAM (if it hasn't been displaced) or will be loaded
from the filesystem.

<!--WHEN APPLICABLE: Describe how we can test the changes in this PR.-->

## Merge Plan

Squash merge when approved.

<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
DB schemas, may need some care when merging. For example, a careful
rebase by the change author, timing to not interfere with a pending
release, or a message to contributors on discord after merging.-->

## Checklist

- [X] _The PR has a short but descriptive title, suitable for a
changelog_
- [X] _Tests added / updated (if applicable)_
- [X] _Documentation added / updated (if applicable)_
2024-06-08 16:24:31 -07:00
Lincoln Stein
7d19af2caa
Merge branch 'main' into lstein/feat/simple-mm2-api 2024-06-08 18:55:06 -04:00
Ryan Dick
0dbec3ad8b
Split up latent.py (code reorganization, no functional changes) (#6491)
## Summary

I've started working towards a better tiled upscaling implementation. It
is going to require some refactoring of `DenoiseLatentsInvocation`. As a
first step, this PR splits up all of the invocations in latent.py into
their own files. That file had become a bit of a dumping ground - it
should be a bit more manageable to work with now.

This PR just re-organizes the code. There should be no functional
changes.

## QA Instructions

I've done some light smoke testing. I'll do some more before merging.
The main risk is that I missed a broken import, or some other copy-paste
error.

## Checklist

- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_: N/A
- [x] _Documentation added / updated (if applicable)_: N/A
2024-06-07 12:01:56 -04:00
Ryan Dick
52c0c4a32f Rename latent.py -> denoise_latents.py. 2024-06-07 09:28:42 -04:00
Ryan Dick
8f1afc032a Move SchedulerInvocation to a new file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
854bca668a Move CreateDenoiseMaskInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
fea9013cad Move CreateGradientMaskInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
045caddee1 Move LatentsToImageInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
58697141bf Move ImageToLatentsInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
5e419dbb56 Move ScaleLatentsInvocation and ResizeLatentsInvocation to their own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
595096bdcf Move BlendLatentsInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
ed03d281e6 Move CropLatentsCoreInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
0b37496c57 Move IdealSizeInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
psychedelicious
fde58ce0a3 Merge remote-tracking branch 'origin/main' into lstein/feat/simple-mm2-api 2024-06-07 14:23:41 +10:00
Lincoln Stein
dc134935c8 replace load_and_cache_model() with load_remote_model() and load_local_odel() 2024-06-07 14:12:16 +10:00
Lincoln Stein
9f9379682e ruff fixes 2024-06-07 13:54:41 +10:00
Lincoln Stein
f81b8bc9f6 add support for generic loading of diffusers directories 2024-06-07 13:54:30 +10:00
psychedelicious
6d067e56f2 fix(ui): on page load, if CA processed image no longer exists, re-process it 2024-06-07 10:32:28 +10:00
Lincoln Stein
2871676f79
LoRA patching optimization (#6439)
* allow model patcher to optimize away the unpatching step when feasible

* remove lazy_offloading functionality

* allow model patcher to optimize away the unpatching step when feasible

* remove lazy_offloading functionality

* do not save original weights if there is a CPU copy of state dict

* Update invokeai/backend/model_manager/load/load_base.py

Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>

* documentation fixes added during penultimate review

---------

Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: Kent Keirsey <31807370+hipsterusername@users.noreply.github.com>
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
2024-06-06 13:53:35 +00:00
psychedelicious
1c5c3cdbd6 tidy(ui): organize control layers konva logic
- More comments, docstrings
- Move things into saner, less-coupled locations
2024-06-06 07:45:13 +10:00
psychedelicious
3db69af220 refactor(ui): generalize stage event handlers
Create intermediary nanostores for values required by the event handlers. This allows the event handlers to be purely imperative, with no reactivity: instead of recreating/setting the handlers when a dependent piece of state changes, we use nanostores' imperative API to access dependent state.

For example, some handlers depend on brush size. If we used the standard declarative `useSelector` API, we'd need to recreate the event handler callback each time the brush size changed. This can be costly.

An intermediate `$brushSize` nanostore is set in a `useLayoutEffect()`, which responds to changes to the redux store. Then, in the event handler, we use the imperative API to access the brush size: `$brushSize.get()`.

This change allows the event handler logic to be shared with the pending canvas v2, and also more easily tested. It's a noticeable perf improvement, too, especially when changing brush size.
2024-06-06 07:45:13 +10:00
psychedelicious
1823e446ac fix(ui): conditionally render CL preview
This fixes an issue where it sometimes gets out of sync, and fixes some konva errors.
2024-06-06 07:45:13 +10:00
psychedelicious
311e44ad19 tidy(ui): clean up control layers renderers, docstrings 2024-06-06 07:45:13 +10:00
jstnlowe
848ca79da8 Changed translated labels to static suffixes, cleanup. 2024-06-05 14:45:43 +10:00
jstnlowe
9cba0dfac9 Providing fileName string directly to DataViewer as suggested 2024-06-05 14:45:43 +10:00
jstnlowe
37b1f21bcf ... and the workflow 2024-06-05 14:45:43 +10:00
jstnlowe
b2e005f6b5 Just realized we might want the same change made for the Graph JSON 2024-06-05 14:45:43 +10:00
jstnlowe
52aac954c0 Prefixed JSON filenames with the image UUID #6469 2024-06-05 14:45:43 +10:00
psychedelicious
ff01ceae99 Update invokeai_version.py 2024-06-05 05:53:19 +10:00
hugoalh
669d92d8db translationBot(ui): update translation (Chinese (Traditional))
Currently translated at 14.1% (179 of 1261 strings)

Co-authored-by: hugoalh <hugoalh@users.noreply.hosted.weblate.org>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hant/
Translation: InvokeAI/Web UI
2024-06-05 00:08:03 +10:00
Ettore Atalan
2903060154 translationBot(ui): update translation (German)
Currently translated at 67.0% (834 of 1243 strings)

Co-authored-by: Ettore Atalan <atalanttore@googlemail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/de/
Translation: InvokeAI/Web UI
2024-06-05 00:08:03 +10:00
gallegonovato
4af8699a00 translationBot(ui): update translation (Spanish)
Currently translated at 34.3% (427 of 1243 strings)

Co-authored-by: gallegonovato <fran-carro@hotmail.es>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
2024-06-05 00:08:03 +10:00
Bruno Castillejo
71fedd1a07 translationBot(ui): update translation (Spanish)
Currently translated at 34.3% (427 of 1243 strings)

Co-authored-by: Bruno Castillejo <soybrunocastillejo@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/es/
Translation: InvokeAI/Web UI
2024-06-05 00:08:03 +10:00
Riccardo Giovanetti
6bb1189c88 translationBot(ui): update translation (Italian)
Currently translated at 98.5% (1243 of 1261 strings)

translationBot(ui): update translation (Italian)

Currently translated at 98.5% (1243 of 1261 strings)

translationBot(ui): update translation (Italian)

Currently translated at 98.5% (1225 of 1243 strings)

translationBot(ui): update translation (Italian)

Currently translated at 98.5% (1225 of 1243 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
2024-06-05 00:08:03 +10:00
Васянатор
c7546bc82e translationBot(ui): update translation (Russian)
Currently translated at 100.0% (1261 of 1261 strings)

translationBot(ui): update translation (Russian)

Currently translated at 100.0% (1243 of 1243 strings)

Co-authored-by: Васянатор <ilabulanov339@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
2024-06-05 00:08:03 +10:00
psychedelicious
14372e3818 fix(nodes): blend latents with weight=0 with DPMSolverSDEScheduler
- Pass the seed from `latents_a` to the output latents. Fixed an issue where using `BlendLatentsInvocation` could result in different outputs during denoising even when the alpha or slerp weight was 0.

## Explanation

`LatentsField` has an optional `seed` field. During denoising, if this `seed` field is not present, we **fall back to 0 for the seed**. The seed is used during denoising in a few ways:

1. Initializing the scheduler.

The seed is used in two places in `invokeai/app/invocations/latent.py`.

The `get_scheduler()` utility function has special handling for `DPMSolverSDEScheduler`, which appears to need a seed for deterministic outputs.

`DenoiseLatentsInvocation.init_scheduler()` has special handling for schedulers that accept a generator - the generator needs to be seeded in a particular way. At the time of this commit, these are the Invoke-supported schedulers that need this seed:
  - DDIMScheduler
  - DDPMScheduler
  - DPMSolverMultistepScheduler
  - EulerAncestralDiscreteScheduler
  - EulerDiscreteScheduler
  - KDPM2AncestralDiscreteScheduler
  - LCMScheduler
  - TCDScheduler

2. Adding noise during inpainting.

If a mask is used for denoising, and we are not using an inpainting model, we add noise to the unmasked area. If, for some reason, we have a mask but no noise, the seed is used to add noise.

I wonder if we should instead assert that if a mask is provided, we also have noise.

This is done in `invokeai/backend/stable_diffusion/diffusers_pipeline.py` in `StableDiffusionGeneratorPipeline.latents_from_embeddings()`.

When we create noise to be used in denoising, we are expected to set `LatentsField.seed` to the seed used to create the noise. This introduces some awkwardness when we manipulate any "latents" that will be used for denoising. We have to pass the seed along for every operation.

If the wrong seed or no seed is passed along, we can get unexpected outputs during denoising. One notable case relates to blending latents (slerping tensors).

If we slerp two noise tensors (`LatentsField`s) _without_ passing along the seed from the source latents, when we denoise with a seed-dependent scheduler*, the schedulers use the fallback seed of 0 and we get the wrong output. This is most obvious when slerping with a weight of 0, in which case we expect the exact same output after denoising.

*It looks like only the DPMSolver* schedulers are affected, but I haven't tested all of them.

Passing the seed along in the output fixes this issue.
2024-06-05 00:02:52 +10:00
psychedelicious
64523c4b1b fix(ui): handle concat when recalling prompts
This required some minor reworking of of the logic to recall multiple items. I split this into a utility function that includes some special handling for concat.

Closes #6478
2024-06-04 06:01:01 +10:00
psychedelicious
89a764a359 fix(ui): improve model metadata parsing fallback
When the model in metadata's key no longer exists, fall back to fetching by name, base and type. This was the intention all along but the logic was never put in place.
2024-06-04 06:01:01 +10:00
Lincoln Stein
756108f6bd Update invokeai/app/invocations/latent.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
2024-06-03 11:41:47 -07:00