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66 Commits

Author SHA1 Message Date
ec1e66dcd3 refactor the model bases variable 2023-11-04 11:25:13 -04:00
69543c23d0 fix model-not-found error 2023-11-04 11:12:29 -04:00
2bbba323c6 Fix model cache gc.collect() condition. (#5036)
See
https://github.com/invoke-ai/InvokeAI/pull/5034#discussion_r1382381733
2023-11-04 09:09:46 -04:00
aa02ebf8f5 Fix model cache gc.collect() condition. 2023-11-04 08:52:10 -04:00
fb3d0c4b12 Fix bug in model cache reference count checking. 2023-11-03 13:50:40 -07:00
8488ab0134 Reduce frequency that we call gc.collect() in the model cache. 2023-11-03 13:50:40 -07:00
875231ed3d Add reminder to clean up our model cache clearing logic. 2023-11-03 13:50:40 -07:00
43b300498f Remove explicit gc.collect() after transferring models from device to CPU. I'm not sure why this was there in the first place, but it was taking a significant amount of time (up to ~1sec in my tests). 2023-11-03 13:50:40 -07:00
5b420653f9 feat(ui): show placeholder in refiner collapse instead of hiding it, if no refiner models installed 2023-11-03 14:15:24 +11:00
3d32ce2b58 fix(ui): hide refiner collapse if refiner not installed 2023-11-03 14:15:24 +11:00
e391f3c9a8 Skip torch.nn.Embedding.reset_parameters(...) when loading a text encoder model. 2023-11-02 19:41:33 -07:00
6e7a3f0546 (minor) Fix static checks and typo. 2023-11-02 19:20:37 -07:00
4a683cc669 Add a app config parameter to control the ModelCache logging behavior. 2023-11-02 19:20:37 -07:00
3781e56e57 Add log_memory_usage param to ModelCache. 2023-11-02 19:20:37 -07:00
267e709ba2 (minor) Fix int literal typing error. 2023-11-02 19:20:37 -07:00
8ff49109a8 Update get_pretty_snapshot_diff(...) to handle None-snapshots. 2023-11-02 19:20:37 -07:00
bac2a757e8 Replace deepcopy with a pickle roundtrip in apply_ti(...) to improve speed. 2023-11-02 19:05:24 -07:00
a4a7b601a1 Improve LoRA patching speed (#5017)
## 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
2023-11-02 13:34:10 -04:00
fa7f6a6a10 Further tidying of LoRA patching. Revert some changes that didn't end up being important under the constraint that calculations are done on the same device as the model. 2023-11-02 10:03:17 -07:00
e92b84955c Add minimal unit tests for ModelPatcher.apply_lora(...) 2023-11-02 10:03:17 -07:00
61b17c475a Add TODO note about improving _resolve_lora_key(...). 2023-11-02 10:03:17 -07:00
379d68f595 Patch LoRA on device when model is already on device. 2023-11-02 10:03:17 -07:00
545c811bf1 Remove device and dtype members from LoRAModelRaw, they can too easily get out-of-sync with the underlying layer states. 2023-11-02 10:03:17 -07:00
2ba5b44ec4 Remove unused _lora_forward_hook(...). 2023-11-02 10:03:17 -07:00
7f4ce518b7 auto-format lora.py 2023-11-02 10:03:17 -07:00
6c66adcd90 fix(ui): show collapse labels only if not default value 2023-11-01 14:41:13 +11:00
94055ae54a translationBot(ui): update translation (Chinese (Simplified))
Currently translated at 99.8% (1215 of 1217 strings)

Co-authored-by: nemuruibai <nemuruibai@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/zh_Hans/
Translation: InvokeAI/Web UI
2023-11-01 05:31:16 +11:00
a79c86b901 translationBot(ui): update translation (German)
Currently translated at 51.7% (630 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
2023-11-01 05:31:16 +11:00
ed81d6d533 Update contributingNodes.md 2023-10-31 07:17:14 -07:00
63548c5ea7 Update community node installation instructions 2023-10-31 07:17:14 -07:00
8481db96ed Updated workflows 2023-10-31 07:17:14 -07:00
bb68175fd0 Add negative IP Adapter support 2023-10-31 14:30:24 +11:00
316131f69b Add option to invokeai update script to install latest prerelease (#5008)
## 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.
2023-10-31 08:45:25 +11:00
9721e1382d add option to install latest prerelease 2023-10-30 15:49:27 -04:00
03a64275c6 fix(db): fix deprecated pydantic .json() method 2023-10-31 04:34:51 +11:00
55bfadfd0b fix(nodes): fix DenoiseMaskField.masked_latents_name
This optional field needs to have a default of `None`.
2023-10-31 04:18:09 +11:00
224b09f8fd Enforce Unix line endings in container (#4990)
* (fix) enforce Unix (LF) line endings in docker/ directory

* (fix) update docker docs wrt line endings on Windows

* (fix) static check fixes
2023-10-30 12:34:30 -04:00
8dca194e2c Update communityNodes.md (#4999)
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.
2023-10-30 11:15:11 +11:00
3a33bd7881 Merge branch 'main' into JPPhoto-average-images 2023-10-30 11:12:40 +11:00
d6d0fd313b Prevent prereleases from showing up in updater (#4997)
## 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.
2023-10-30 10:21:53 +11:00
95b90d22b5 Merge branch 'main' into bugfix/dont-release-prereleases 2023-10-30 06:04:24 +11:00
249618f6b4 translationBot(ui): update translation (German)
Currently translated at 40.3% (491 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
2023-10-30 05:26:20 +11:00
8109bc5316 translationBot(ui): update translation (German)
Currently translated at 40.3% (491 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
2023-10-30 05:26:20 +11:00
015cec197b translationBot(ui): update translation (German)
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
2023-10-30 05:15:49 +11:00
54b0c4f3c9 translationBot(ui): update translation (German)
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
2023-10-30 05:15:49 +11:00
60a105103b 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: Jaulustus <jaulustus@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/de/
Translation: InvokeAI/Web UI
2023-10-30 05:15:49 +11:00
67fb2c8129 translationBot(ui): update translation (German)
Currently translated at 35.5% (433 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
2023-10-30 05:15:49 +11:00
09bb61f630 translationBot(ui): update translation (English)
Currently translated at 100.0% (1217 of 1217 strings)

Co-authored-by: Fabian Bahl <fabian98@bahl-netz.de>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/en/
Translation: InvokeAI/Web UI
2023-10-30 05:15:49 +11:00
69ba3a7278 translationBot(ui): update translation (Japanese)
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
2023-10-30 05:15:49 +11:00
6e05292813 translationBot(ui): update translation (Italian)
Currently translated at 97.6% (1188 of 1217 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
2023-10-30 05:15:49 +11:00
859e3d5a61 chore: flake8 2023-10-30 01:49:10 +11:00
fe5d2c023b Update communityNodes.md
Added Average Images node
2023-10-28 08:13:51 -05:00
b6c259ab92 Update communityNodes.md (#4981)
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

<!--
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?
2023-10-28 20:37:48 +11:00
0fde82a24b Merge branch 'main' into main 2023-10-28 20:35:41 +11:00
4f74549f17 prevent prereleases from showing up in updater 2023-10-27 19:12:48 -04:00
c95c6c5374 Make the merge script work again (#4979)
## 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

<!--
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?
2023-10-24 17:28:39 -04:00
d946cb78e6 Merge branch 'main' into bugfix/merge-script-display-correct-model-bases 2023-10-24 17:20:36 -04:00
48fc07e049 Make textual inversion script work again (#4978)
## 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. 

For example having the text: "closes #1234" would connect the current
pull
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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?
2023-10-24 14:24:53 -04:00
5c9046580f Merge branch 'main' into bugfix/textual-inversion 2023-10-24 14:17:43 -04:00
d397e80e0d Merge branch 'main' into bugfix/merge-script-display-correct-model-bases 2023-10-24 14:17:19 -04:00
c04099a869 Support conversion of controlnets from safetensors to diffusers format (#4980)
## 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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below. 

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pull
request to issue 1234.  And when we merge the pull request, Github will
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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.
2023-10-24 14:16:52 -04:00
3b7e17c0cc Update communityNodes.md
Update to Load Video Frame node to reflect changes made in link locations... a.k.a. fixing broken links.
2023-10-23 21:46:51 -06:00
6cbc69f3b7 support conversion of controlnets from safetensors to diffusers 2023-10-23 22:06:10 -04:00
c14aa30956 fix the merge script to correctly display models sorted by base 2023-10-23 20:37:33 -04:00
3546c41f4a close #4975 2023-10-23 18:48:14 -04:00
8e948d3f17 fix(assets): re-add missing caution image 2023-10-20 16:50:16 +11:00
50 changed files with 8382 additions and 2765 deletions

1
.gitattributes vendored
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@ -2,3 +2,4 @@
# Only affects text files and ignores other file types.
# For more info see: https://www.aleksandrhovhannisyan.com/blog/crlf-vs-lf-normalizing-line-endings-in-git/
* text=auto
docker/** text eol=lf

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@ -150,7 +150,6 @@ Start/End - 0 represents the start of the generation, 1 represents the end. The
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.
**Note:** T2I-Adapter models and ControlNet models cannot currently be used together.
## IP-Adapter

View File

@ -99,3 +99,14 @@ If using an AMD GPU:
Use the standard `docker compose up` command, and generally the `docker compose` [CLI](https://docs.docker.com/compose/reference/) as usual.
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)
## Troubleshooting / FAQ
- 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)

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@ -4,11 +4,16 @@ 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 Invoke AI 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 `.py` file 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
+ [Average Images](#average-images)
+ [Depth Map from Wavefront OBJ](#depth-map-from-wavefront-obj)
+ [Film Grain](#film-grain)
+ [Generative Grammar-Based Prompt Nodes](#generative-grammar-based-prompt-nodes)
@ -33,6 +38,13 @@ To use a community workflow, download the the `.json` node graph file and load i
- [Help](#help)
--------------------------------
### Average Images
**Description:** This node takes in a collection of images of the same size and averages them as output. It converts everything to RGB mode first.
**Node Link:** https://github.com/JPPhoto/average-images-node
--------------------------------
### Depth Map from Wavefront OBJ
@ -177,12 +189,8 @@ This includes 15 Nodes:
**Node Link:** https://github.com/helix4u/load_video_frame
**Example Node Graph:** https://github.com/helix4u/load_video_frame/blob/main/Example_Workflow.json
**Output Example:**
<img src="https://raw.githubusercontent.com/helix4u/load_video_frame/main/testmp4_embed_converted.gif" width="500" />
[Full mp4 of Example Output test.mp4](https://github.com/helix4u/load_video_frame/blob/main/test.mp4)
<img src="https://raw.githubusercontent.com/helix4u/load_video_frame/main/_git_assets/testmp4_embed_converted.gif" width="500" />
--------------------------------
### Make 3D
@ -325,9 +333,9 @@ See full docs here: https://github.com/skunkworxdark/XYGrid_nodes/edit/main/READ
**Description:** This node allows you to do super cool things with InvokeAI.
**Node Link:** https://github.com/invoke-ai/InvokeAI/fake_node.py
**Node Link:** https://github.com/invoke-ai/InvokeAI/blob/main/invokeai/app/invocations/prompt.py
**Example Node Graph:** https://github.com/invoke-ai/InvokeAI/fake_node_graph.json
**Example Workflow:** https://github.com/invoke-ai/InvokeAI/blob/docs/main/docs/workflows/Prompt_from_File.json
**Output Examples**

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@ -4,7 +4,7 @@ To learn about the specifics of creating a new node, please visit our [Node crea
Once youve 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.

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@ -2,13 +2,17 @@
We've curated some example workflows for you to get started with Workflows in InvokeAI
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)
* [SDXL Text to Image](https://github.com/invoke-ai/InvokeAI/blob/docs/main/docs/workflows/SDXL_Text_to_Image.json)
* [SDXL Text to Image with Refiner](https://github.com/invoke-ai/InvokeAI/blob/docs/main/docs/workflows/SDXL_w_Refiner_Text_to_Image.json)
* [Multi ControlNet (Canny & Depth)](https://github.com/invoke-ai/InvokeAI/blob/docs/main/docs/workflows/Multi_ControlNet_Canny_and_Depth.json)
* [Tiled Upscaling with ControlNet](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/ESRGAN_img2img_upscale_w_Canny_ControlNet.json)
* [Prompt From File](https://github.com/invoke-ai/InvokeAI/blob/docs/main/docs/workflows/Prompt_from_File.json)
* [Face Detailer with IP-Adapter & ControlNet](https://github.com/invoke-ai/InvokeAI/blob/docs/main/docs/workflows/Face_Detailer_with_IP-Adapter_and_Canny.json.json)
* [FaceMask](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/FaceMask.json)
* [FaceOff with 2x Face Scaling](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/FaceOff_FaceScale2x.json)
* [QR Code Monster](https://github.com/invoke-ai/InvokeAI/blob/docs/main/docs/workflows/QR_Code_Monster.json)

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View File

@ -0,0 +1,719 @@
{
"name": "Prompt from File",
"author": "InvokeAI",
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View File

@ -0,0 +1,758 @@
{
"name": "QR Code Monster",
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@ -686,50 +710,42 @@
{
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{
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}

File diff suppressed because it is too large Load Diff

View File

@ -18,10 +18,6 @@
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@ -32,7 +28,6 @@
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@ -64,20 +59,21 @@
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@ -352,51 +279,66 @@
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@ -404,7 +346,7 @@
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@ -412,71 +354,71 @@
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@ -486,13 +428,95 @@
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@ -522,52 +546,52 @@
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"source": "c8d55139-f380-4695-b7f2-8b3d1e1e3db8",
"sourceHandle": "vae",
"target": "dbcd2f98-d809-48c8-bf64-2635f88a2fe9",
"targetHandle": "vae",
"id": "reactflow__edge-c8d55139-f380-4695-b7f2-8b3d1e1e3db8vae-dbcd2f98-d809-48c8-bf64-2635f88a2fe9vae",
"type": "default"
},
{
"source": "75899702-fa44-46d2-b2d5-3e17f234c3e7",
"sourceHandle": "latents",
"target": "dbcd2f98-d809-48c8-bf64-2635f88a2fe9",
"targetHandle": "latents",
"id": "reactflow__edge-75899702-fa44-46d2-b2d5-3e17f234c3e7latents-dbcd2f98-d809-48c8-bf64-2635f88a2fe9latents",
"source": "55705012-79b9-4aac-9f26-c0b10309785b",
"sourceHandle": "noise",
"target": "eea2702a-19fb-45b5-9d75-56b4211ec03c",
"targetHandle": "noise",
"id": "reactflow__edge-55705012-79b9-4aac-9f26-c0b10309785bnoise-eea2702a-19fb-45b5-9d75-56b4211ec03cnoise",
"type": "default"
},
{
"source": "7d8bf987-284f-413a-b2fd-d825445a5d6c",
"sourceHandle": "conditioning",
"target": "75899702-fa44-46d2-b2d5-3e17f234c3e7",
"target": "eea2702a-19fb-45b5-9d75-56b4211ec03c",
"targetHandle": "positive_conditioning",
"id": "reactflow__edge-7d8bf987-284f-413a-b2fd-d825445a5d6cconditioning-75899702-fa44-46d2-b2d5-3e17f234c3e7positive_conditioning",
"id": "reactflow__edge-7d8bf987-284f-413a-b2fd-d825445a5d6cconditioning-eea2702a-19fb-45b5-9d75-56b4211ec03cpositive_conditioning",
"type": "default"
},
{
"source": "93dc02a4-d05b-48ed-b99c-c9b616af3402",
"sourceHandle": "conditioning",
"target": "75899702-fa44-46d2-b2d5-3e17f234c3e7",
"target": "eea2702a-19fb-45b5-9d75-56b4211ec03c",
"targetHandle": "negative_conditioning",
"id": "reactflow__edge-93dc02a4-d05b-48ed-b99c-c9b616af3402conditioning-75899702-fa44-46d2-b2d5-3e17f234c3e7negative_conditioning",
"id": "reactflow__edge-93dc02a4-d05b-48ed-b99c-c9b616af3402conditioning-eea2702a-19fb-45b5-9d75-56b4211ec03cnegative_conditioning",
"type": "default"
},
{
"source": "c8d55139-f380-4695-b7f2-8b3d1e1e3db8",
"sourceHandle": "unet",
"target": "75899702-fa44-46d2-b2d5-3e17f234c3e7",
"target": "eea2702a-19fb-45b5-9d75-56b4211ec03c",
"targetHandle": "unet",
"id": "reactflow__edge-c8d55139-f380-4695-b7f2-8b3d1e1e3db8unet-75899702-fa44-46d2-b2d5-3e17f234c3e7unet",
"id": "reactflow__edge-c8d55139-f380-4695-b7f2-8b3d1e1e3db8unet-eea2702a-19fb-45b5-9d75-56b4211ec03cunet",
"type": "default"
},
{
"source": "55705012-79b9-4aac-9f26-c0b10309785b",
"sourceHandle": "noise",
"target": "75899702-fa44-46d2-b2d5-3e17f234c3e7",
"targetHandle": "noise",
"id": "reactflow__edge-55705012-79b9-4aac-9f26-c0b10309785bnoise-75899702-fa44-46d2-b2d5-3e17f234c3e7noise",
"source": "eea2702a-19fb-45b5-9d75-56b4211ec03c",
"sourceHandle": "latents",
"target": "58c957f5-0d01-41fc-a803-b2bbf0413d4f",
"targetHandle": "latents",
"id": "reactflow__edge-eea2702a-19fb-45b5-9d75-56b4211ec03clatents-58c957f5-0d01-41fc-a803-b2bbf0413d4flatents",
"type": "default"
},
{
"source": "c8d55139-f380-4695-b7f2-8b3d1e1e3db8",
"sourceHandle": "vae",
"target": "58c957f5-0d01-41fc-a803-b2bbf0413d4f",
"targetHandle": "vae",
"id": "reactflow__edge-c8d55139-f380-4695-b7f2-8b3d1e1e3db8vae-58c957f5-0d01-41fc-a803-b2bbf0413d4fvae",
"type": "default"
}
]
}
}

View File

@ -108,13 +108,14 @@ class CompelInvocation(BaseInvocation):
print(f'Warn: trigger: "{trigger}" not found')
with (
ModelPatcher.apply_lora_text_encoder(text_encoder_info.context.model, _lora_loader()),
ModelPatcher.apply_ti(tokenizer_info.context.model, text_encoder_info.context.model, ti_list) as (
tokenizer,
ti_manager,
),
ModelPatcher.apply_clip_skip(text_encoder_info.context.model, self.clip.skipped_layers),
text_encoder_info as text_encoder,
# Apply the LoRA after text_encoder has been moved to its target device for faster patching.
ModelPatcher.apply_lora_text_encoder(text_encoder, _lora_loader()),
):
compel = Compel(
tokenizer=tokenizer,
@ -229,13 +230,14 @@ class SDXLPromptInvocationBase:
print(f'Warn: trigger: "{trigger}" not found')
with (
ModelPatcher.apply_lora(text_encoder_info.context.model, _lora_loader(), lora_prefix),
ModelPatcher.apply_ti(tokenizer_info.context.model, text_encoder_info.context.model, ti_list) as (
tokenizer,
ti_manager,
),
ModelPatcher.apply_clip_skip(text_encoder_info.context.model, clip_field.skipped_layers),
text_encoder_info as text_encoder,
# Apply the LoRA after text_encoder has been moved to its target device for faster patching.
ModelPatcher.apply_lora(text_encoder, _lora_loader(), lora_prefix),
):
compel = Compel(
tokenizer=tokenizer,

View File

@ -67,7 +67,7 @@ class IPAdapterInvocation(BaseInvocation):
# weight: float = InputField(default=1.0, description="The weight of the IP-Adapter.", ui_type=UIType.Float)
weight: Union[float, List[float]] = InputField(
default=1, ge=0, description="The weight given to the IP-Adapter", ui_type=UIType.Float, title="Weight"
default=1, ge=-1, description="The weight given to the IP-Adapter", ui_type=UIType.Float, title="Weight"
)
begin_step_percent: float = InputField(

View File

@ -710,9 +710,10 @@ class DenoiseLatentsInvocation(BaseInvocation):
)
with (
ExitStack() as exit_stack,
ModelPatcher.apply_lora_unet(unet_info.context.model, _lora_loader()),
set_seamless(unet_info.context.model, self.unet.seamless_axes),
unet_info as unet,
# Apply the LoRA after unet has been moved to its target device for faster patching.
ModelPatcher.apply_lora_unet(unet, _lora_loader()),
):
latents = latents.to(device=unet.device, dtype=unet.dtype)
if noise is not None:

View File

@ -293,7 +293,7 @@ class DenoiseMaskField(BaseModel):
"""An inpaint mask field"""
mask_name: str = Field(description="The name of the mask image")
masked_latents_name: Optional[str] = Field(description="The name of the masked image latents")
masked_latents_name: Optional[str] = Field(default=None, description="The name of the masked image latents")
@invocation_output("denoise_mask_output")

View File

@ -45,6 +45,7 @@ InvokeAI:
ram: 13.5
vram: 0.25
lazy_offload: true
log_memory_usage: false
Device:
device: auto
precision: auto
@ -261,6 +262,7 @@ class InvokeAIAppConfig(InvokeAISettings):
ram : float = Field(default=7.5, gt=0, description="Maximum memory amount used by model cache for rapid switching (floating point number, GB)", json_schema_extra=Categories.ModelCache, )
vram : float = Field(default=0.25, ge=0, description="Amount of VRAM reserved for model storage (floating point number, GB)", json_schema_extra=Categories.ModelCache, )
lazy_offload : bool = Field(default=True, description="Keep models in VRAM until their space is needed", json_schema_extra=Categories.ModelCache, )
log_memory_usage : bool = Field(default=False, description="If True, a memory snapshot will be captured before and after every model cache operation, and the result will be logged (at debug level). There is a time cost to capturing the memory snapshots, so it is recommended to only enable this feature if you are actively inspecting the model cache's behaviour.", json_schema_extra=Categories.ModelCache)
# DEVICE
device : Literal["auto", "cpu", "cuda", "cuda:1", "mps"] = Field(default="auto", description="Generation device", json_schema_extra=Categories.Device)

View File

@ -0,0 +1 @@
from .model_manager_default import ModelManagerService # noqa F401

View File

@ -57,7 +57,7 @@ class SqliteWorkflowRecordsStorage(WorkflowRecordsStorageBase):
INSERT INTO workflows(workflow)
VALUES (?);
""",
(workflow.json(),),
(workflow.model_dump_json(),),
)
self._conn.commit()
except Exception:

View File

@ -460,6 +460,12 @@ class ModelInstall(object):
possible_conf = path.with_suffix(".yaml")
if possible_conf.exists():
legacy_conf = str(self.relative_to_root(possible_conf))
else:
legacy_conf = Path(
self.config.root_path,
"configs/controlnet",
("cldm_v15.yaml" if info.base_type == BaseModelType("sd-1") else "cldm_v21.yaml"),
)
if legacy_conf:
attributes.update(dict(config=str(legacy_conf)))

View File

@ -1,6 +1,6 @@
from __future__ import annotations
import copy
import pickle
from contextlib import contextmanager
from pathlib import Path
from typing import Any, Dict, List, Optional, Tuple, Union
@ -54,24 +54,6 @@ class ModelPatcher:
return (module_key, module)
@staticmethod
def _lora_forward_hook(
applied_loras: List[Tuple[LoRAModel, float]],
layer_name: str,
):
def lora_forward(module, input_h, output):
if len(applied_loras) == 0:
return output
for lora, weight in applied_loras:
layer = lora.layers.get(layer_name, None)
if layer is None:
continue
output += layer.forward(module, input_h, weight)
return output
return lora_forward
@classmethod
@contextmanager
def apply_lora_unet(
@ -129,21 +111,40 @@ class ModelPatcher:
if not layer_key.startswith(prefix):
continue
# TODO(ryand): A non-negligible amount of time is currently spent resolving LoRA keys. This
# should be improved in the following ways:
# 1. The key mapping could be more-efficiently pre-computed. This would save time every time a
# LoRA model is applied.
# 2. From an API perspective, there's no reason that the `ModelPatcher` should be aware of the
# intricacies of Stable Diffusion key resolution. It should just expect the input LoRA
# weights to have valid keys.
module_key, module = cls._resolve_lora_key(model, layer_key, prefix)
# All of the LoRA weight calculations will be done on the same device as the module weight.
# (Performance will be best if this is a CUDA device.)
device = module.weight.device
dtype = module.weight.dtype
if module_key not in original_weights:
original_weights[module_key] = module.weight.detach().to(device="cpu", copy=True)
# enable autocast to calc fp16 loras on cpu
# with torch.autocast(device_type="cpu"):
layer.to(dtype=torch.float32)
layer_scale = layer.alpha / layer.rank if (layer.alpha and layer.rank) else 1.0
layer_weight = layer.get_weight(original_weights[module_key]) * lora_weight * layer_scale
# We intentionally move to the target device first, then cast. Experimentally, this was found to
# be significantly faster for 16-bit CPU tensors being moved to a CUDA device than doing the
# same thing in a single call to '.to(...)'.
layer.to(device=device)
layer.to(dtype=torch.float32)
# TODO(ryand): Using torch.autocast(...) over explicit casting may offer a speed benefit on CUDA
# devices here. Experimentally, it was found to be very slow on CPU. More investigation needed.
layer_weight = layer.get_weight(module.weight) * (lora_weight * layer_scale)
layer.to(device="cpu")
if module.weight.shape != layer_weight.shape:
# TODO: debug on lycoris
layer_weight = layer_weight.reshape(module.weight.shape)
module.weight += layer_weight.to(device=module.weight.device, dtype=module.weight.dtype)
module.weight += layer_weight.to(dtype=dtype)
yield # wait for context manager exit
@ -164,7 +165,13 @@ class ModelPatcher:
new_tokens_added = None
try:
ti_tokenizer = copy.deepcopy(tokenizer)
# HACK: The CLIPTokenizer API does not include a way to remove tokens after calling add_tokens(...). As a
# workaround, we create a full copy of `tokenizer` so that its original behavior can be restored after
# exiting this `apply_ti(...)` context manager.
#
# In a previous implementation, the deep copy was obtained with `ti_tokenizer = copy.deepcopy(tokenizer)`,
# but a pickle roundtrip was found to be much faster (1 sec vs. 0.05 secs).
ti_tokenizer = pickle.loads(pickle.dumps(tokenizer))
ti_manager = TextualInversionManager(ti_tokenizer)
init_tokens_count = text_encoder.resize_token_embeddings(None).num_embeddings
@ -196,7 +203,9 @@ class ModelPatcher:
if model_embeddings.weight.data[token_id].shape != embedding.shape:
raise ValueError(
f"Cannot load embedding for {trigger}. It was trained on a model with token dimension {embedding.shape[0]}, but the current model has token dimension {model_embeddings.weight.data[token_id].shape[0]}."
f"Cannot load embedding for {trigger}. It was trained on a model with token dimension"
f" {embedding.shape[0]}, but the current model has token dimension"
f" {model_embeddings.weight.data[token_id].shape[0]}."
)
model_embeddings.weight.data[token_id] = embedding.to(
@ -257,7 +266,8 @@ class TextualInversionModel:
if "string_to_param" in state_dict:
if len(state_dict["string_to_param"]) > 1:
print(
f'Warn: Embedding "{file_path.name}" contains multiple tokens, which is not supported. The first token will be used.'
f'Warn: Embedding "{file_path.name}" contains multiple tokens, which is not supported. The first'
" token will be used."
)
result.embedding = next(iter(state_dict["string_to_param"].values()))
@ -435,7 +445,13 @@ class ONNXModelPatcher:
orig_embeddings = None
try:
ti_tokenizer = copy.deepcopy(tokenizer)
# HACK: The CLIPTokenizer API does not include a way to remove tokens after calling add_tokens(...). As a
# workaround, we create a full copy of `tokenizer` so that its original behavior can be restored after
# exiting this `apply_ti(...)` context manager.
#
# In a previous implementation, the deep copy was obtained with `ti_tokenizer = copy.deepcopy(tokenizer)`,
# but a pickle roundtrip was found to be much faster (1 sec vs. 0.05 secs).
ti_tokenizer = pickle.loads(pickle.dumps(tokenizer))
ti_manager = TextualInversionManager(ti_tokenizer)
def _get_trigger(ti_name, index):
@ -470,7 +486,9 @@ class ONNXModelPatcher:
if embeddings[token_id].shape != embedding.shape:
raise ValueError(
f"Cannot load embedding for {trigger}. It was trained on a model with token dimension {embedding.shape[0]}, but the current model has token dimension {embeddings[token_id].shape[0]}."
f"Cannot load embedding for {trigger}. It was trained on a model with token dimension"
f" {embedding.shape[0]}, but the current model has token dimension"
f" {embeddings[token_id].shape[0]}."
)
embeddings[token_id] = embedding

View File

@ -64,7 +64,7 @@ class MemorySnapshot:
return cls(process_ram, vram, malloc_info)
def get_pretty_snapshot_diff(snapshot_1: MemorySnapshot, snapshot_2: MemorySnapshot) -> str:
def get_pretty_snapshot_diff(snapshot_1: Optional[MemorySnapshot], snapshot_2: Optional[MemorySnapshot]) -> str:
"""Get a pretty string describing the difference between two `MemorySnapshot`s."""
def get_msg_line(prefix: str, val1: int, val2: int):
@ -73,6 +73,9 @@ def get_pretty_snapshot_diff(snapshot_1: MemorySnapshot, snapshot_2: MemorySnaps
msg = ""
if snapshot_1 is None or snapshot_2 is None:
return msg
msg += get_msg_line("Process RAM", snapshot_1.process_ram, snapshot_2.process_ram)
if snapshot_1.malloc_info is not None and snapshot_2.malloc_info is not None:

View File

@ -117,6 +117,7 @@ class ModelCache(object):
lazy_offloading: bool = True,
sha_chunksize: int = 16777216,
logger: types.ModuleType = logger,
log_memory_usage: bool = False,
):
"""
:param max_cache_size: Maximum size of the RAM cache [6.0 GB]
@ -126,6 +127,10 @@ class ModelCache(object):
:param lazy_offloading: Keep model in VRAM until another model needs to be loaded
:param sequential_offload: Conserve VRAM by loading and unloading each stage of the pipeline sequentially
:param sha_chunksize: Chunksize to use when calculating sha256 model hash
:param log_memory_usage: If True, a memory snapshot will be captured before and after every model cache
operation, and the result will be logged (at debug level). There is a time cost to capturing the memory
snapshots, so it is recommended to disable this feature unless you are actively inspecting the model cache's
behaviour.
"""
self.model_infos: Dict[str, ModelBase] = dict()
# allow lazy offloading only when vram cache enabled
@ -137,6 +142,7 @@ class ModelCache(object):
self.storage_device: torch.device = storage_device
self.sha_chunksize = sha_chunksize
self.logger = logger
self._log_memory_usage = log_memory_usage
# used for stats collection
self.stats = None
@ -144,6 +150,11 @@ class ModelCache(object):
self._cached_models = dict()
self._cache_stack = list()
def _capture_memory_snapshot(self) -> Optional[MemorySnapshot]:
if self._log_memory_usage:
return MemorySnapshot.capture()
return None
def get_key(
self,
model_path: str,
@ -223,10 +234,10 @@ class ModelCache(object):
# Load the model from disk and capture a memory snapshot before/after.
start_load_time = time.time()
snapshot_before = MemorySnapshot.capture()
snapshot_before = self._capture_memory_snapshot()
with skip_torch_weight_init():
model = model_info.get_model(child_type=submodel, torch_dtype=self.precision)
snapshot_after = MemorySnapshot.capture()
snapshot_after = self._capture_memory_snapshot()
end_load_time = time.time()
self_reported_model_size_after_load = model_info.get_size(submodel)
@ -275,9 +286,9 @@ class ModelCache(object):
return
start_model_to_time = time.time()
snapshot_before = MemorySnapshot.capture()
snapshot_before = self._capture_memory_snapshot()
cache_entry.model.to(target_device)
snapshot_after = MemorySnapshot.capture()
snapshot_after = self._capture_memory_snapshot()
end_model_to_time = time.time()
self.logger.debug(
f"Moved model '{key}' from {source_device} to"
@ -286,7 +297,12 @@ class ModelCache(object):
f"{get_pretty_snapshot_diff(snapshot_before, snapshot_after)}"
)
if snapshot_before.vram is not None and snapshot_after.vram is not None:
if (
snapshot_before is not None
and snapshot_after is not None
and snapshot_before.vram is not None
and snapshot_after.vram is not None
):
vram_change = abs(snapshot_before.vram - snapshot_after.vram)
# If the estimated model size does not match the change in VRAM, log a warning.
@ -422,12 +438,17 @@ class ModelCache(object):
self.logger.debug(f"Before unloading: cached_models={len(self._cached_models)}")
pos = 0
models_cleared = 0
while current_size + bytes_needed > maximum_size and pos < len(self._cache_stack):
model_key = self._cache_stack[pos]
cache_entry = self._cached_models[model_key]
refs = sys.getrefcount(cache_entry.model)
# HACK: This is a workaround for a memory-management issue that we haven't tracked down yet. We are directly
# going against the advice in the Python docs by using `gc.get_referrers(...)` in this way:
# https://docs.python.org/3/library/gc.html#gc.get_referrers
# manualy clear local variable references of just finished function calls
# for some reason python don't want to collect it even by gc.collect() immidiately
if refs > 2:
@ -453,15 +474,16 @@ class ModelCache(object):
f" refs: {refs}"
)
# 2 refs:
# Expected refs:
# 1 from cache_entry
# 1 from getrefcount function
# 1 from onnx runtime object
if not cache_entry.locked and refs <= 3 if "onnx" in model_key else 2:
if not cache_entry.locked and refs <= (3 if "onnx" in model_key else 2):
self.logger.debug(
f"Unloading model {model_key} to free {(model_size/GIG):.2f} GB (-{(cache_entry.size/GIG):.2f} GB)"
)
current_size -= cache_entry.size
models_cleared += 1
if self.stats:
self.stats.cleared += 1
del self._cache_stack[pos]
@ -471,7 +493,20 @@ class ModelCache(object):
else:
pos += 1
gc.collect()
if models_cleared > 0:
# There would likely be some 'garbage' to be collected regardless of whether a model was cleared or not, but
# there is a significant time cost to calling `gc.collect()`, so we want to use it sparingly. (The time cost
# is high even if no garbage gets collected.)
#
# Calling gc.collect(...) when a model is cleared seems like a good middle-ground:
# - If models had to be cleared, it's a signal that we are close to our memory limit.
# - If models were cleared, there's a good chance that there's a significant amount of garbage to be
# collected.
#
# Keep in mind that gc is only responsible for handling reference cycles. Most objects should be cleaned up
# immediately when their reference count hits 0.
gc.collect()
torch.cuda.empty_cache()
if choose_torch_device() == torch.device("mps"):
mps.empty_cache()
@ -491,7 +526,6 @@ class ModelCache(object):
vram_in_use = torch.cuda.memory_allocated()
self.logger.debug(f"{(vram_in_use/GIG):.2f}GB VRAM used for models; max allowed={(reserved/GIG):.2f}GB")
gc.collect()
torch.cuda.empty_cache()
if choose_torch_device() == torch.device("mps"):
mps.empty_cache()

View File

@ -17,7 +17,7 @@ def skip_torch_weight_init():
completely unnecessary if the intent is to load checkpoint weights from disk for the layer. This context manager
monkey-patches common torch layers to skip the weight initialization step.
"""
torch_modules = [torch.nn.Linear, torch.nn.modules.conv._ConvNd]
torch_modules = [torch.nn.Linear, torch.nn.modules.conv._ConvNd, torch.nn.Embedding]
saved_functions = [m.reset_parameters for m in torch_modules]
try:

View File

@ -351,6 +351,7 @@ class ModelManager(object):
precision=precision,
sequential_offload=sequential_offload,
logger=logger,
log_memory_usage=self.app_config.log_memory_usage,
)
self._read_models(config)

View File

@ -132,13 +132,14 @@ def _convert_controlnet_ckpt_and_cache(
model_path: str,
output_path: str,
base_model: BaseModelType,
model_config: ControlNetModel.CheckpointConfig,
model_config: str,
) -> str:
"""
Convert the controlnet from checkpoint format to diffusers format,
cache it to disk, and return Path to converted
file. If already on disk then just returns Path.
"""
print(f"DEBUG: controlnet config = {model_config}")
app_config = InvokeAIAppConfig.get_config()
weights = app_config.root_path / model_path
output_path = Path(output_path)

View File

@ -440,33 +440,19 @@ class IA3Layer(LoRALayerBase):
class LoRAModelRaw: # (torch.nn.Module):
_name: str
layers: Dict[str, LoRALayer]
_device: torch.device
_dtype: torch.dtype
def __init__(
self,
name: str,
layers: Dict[str, LoRALayer],
device: torch.device,
dtype: torch.dtype,
):
self._name = name
self._device = device or torch.cpu
self._dtype = dtype or torch.float32
self.layers = layers
@property
def name(self):
return self._name
@property
def device(self):
return self._device
@property
def dtype(self):
return self._dtype
def to(
self,
device: Optional[torch.device] = None,
@ -475,8 +461,6 @@ class LoRAModelRaw: # (torch.nn.Module):
# TODO: try revert if exception?
for key, layer in self.layers.items():
layer.to(device=device, dtype=dtype)
self._device = device
self._dtype = dtype
def calc_size(self) -> int:
model_size = 0
@ -557,8 +541,6 @@ class LoRAModelRaw: # (torch.nn.Module):
file_path = Path(file_path)
model = cls(
device=device,
dtype=dtype,
name=file_path.stem, # TODO:
layers=dict(),
)

View File

@ -41,7 +41,7 @@ from transformers import CLIPTextModel, CLIPTokenizer
# invokeai stuff
from invokeai.app.services.config import InvokeAIAppConfig, PagingArgumentParser
from invokeai.app.services.model_manager_service import ModelManagerService
from invokeai.app.services.model_manager import ModelManagerService
from invokeai.backend.model_management.models import SubModelType
if version.parse(version.parse(PIL.__version__).base_version) >= version.parse("9.1.0"):

View File

@ -0,0 +1,79 @@
model:
target: cldm.cldm.ControlLDM
params:
linear_start: 0.00085
linear_end: 0.0120
num_timesteps_cond: 1
log_every_t: 200
timesteps: 1000
first_stage_key: "jpg"
cond_stage_key: "txt"
control_key: "hint"
image_size: 64
channels: 4
cond_stage_trainable: false
conditioning_key: crossattn
monitor: val/loss_simple_ema
scale_factor: 0.18215
use_ema: False
only_mid_control: False
control_stage_config:
target: cldm.cldm.ControlNet
params:
image_size: 32 # unused
in_channels: 4
hint_channels: 3
model_channels: 320
attention_resolutions: [ 4, 2, 1 ]
num_res_blocks: 2
channel_mult: [ 1, 2, 4, 4 ]
num_heads: 8
use_spatial_transformer: True
transformer_depth: 1
context_dim: 768
use_checkpoint: True
legacy: False
unet_config:
target: cldm.cldm.ControlledUnetModel
params:
image_size: 32 # unused
in_channels: 4
out_channels: 4
model_channels: 320
attention_resolutions: [ 4, 2, 1 ]
num_res_blocks: 2
channel_mult: [ 1, 2, 4, 4 ]
num_heads: 8
use_spatial_transformer: True
transformer_depth: 1
context_dim: 768
use_checkpoint: True
legacy: False
first_stage_config:
target: ldm.models.autoencoder.AutoencoderKL
params:
embed_dim: 4
monitor: val/rec_loss
ddconfig:
double_z: true
z_channels: 4
resolution: 256
in_channels: 3
out_ch: 3
ch: 128
ch_mult:
- 1
- 2
- 4
- 4
num_res_blocks: 2
attn_resolutions: []
dropout: 0.0
lossconfig:
target: torch.nn.Identity
cond_stage_config:
target: ldm.modules.encoders.modules.FrozenCLIPEmbedder

View File

@ -0,0 +1,85 @@
model:
target: cldm.cldm.ControlLDM
params:
linear_start: 0.00085
linear_end: 0.0120
num_timesteps_cond: 1
log_every_t: 200
timesteps: 1000
first_stage_key: "jpg"
cond_stage_key: "txt"
control_key: "hint"
image_size: 64
channels: 4
cond_stage_trainable: false
conditioning_key: crossattn
monitor: val/loss_simple_ema
scale_factor: 0.18215
use_ema: False
only_mid_control: False
control_stage_config:
target: cldm.cldm.ControlNet
params:
use_checkpoint: True
image_size: 32 # unused
in_channels: 4
hint_channels: 3
model_channels: 320
attention_resolutions: [ 4, 2, 1 ]
num_res_blocks: 2
channel_mult: [ 1, 2, 4, 4 ]
num_head_channels: 64 # need to fix for flash-attn
use_spatial_transformer: True
use_linear_in_transformer: True
transformer_depth: 1
context_dim: 1024
legacy: False
unet_config:
target: cldm.cldm.ControlledUnetModel
params:
use_checkpoint: True
image_size: 32 # unused
in_channels: 4
out_channels: 4
model_channels: 320
attention_resolutions: [ 4, 2, 1 ]
num_res_blocks: 2
channel_mult: [ 1, 2, 4, 4 ]
num_head_channels: 64 # need to fix for flash-attn
use_spatial_transformer: True
use_linear_in_transformer: True
transformer_depth: 1
context_dim: 1024
legacy: False
first_stage_config:
target: ldm.models.autoencoder.AutoencoderKL
params:
embed_dim: 4
monitor: val/rec_loss
ddconfig:
#attn_type: "vanilla-xformers"
double_z: true
z_channels: 4
resolution: 256
in_channels: 3
out_ch: 3
ch: 128
ch_mult:
- 1
- 2
- 4
- 4
num_res_blocks: 2
attn_resolutions: []
dropout: 0.0
lossconfig:
target: torch.nn.Identity
cond_stage_config:
target: ldm.modules.encoders.modules.FrozenOpenCLIPEmbedder
params:
freeze: True
layer: "penultimate"

View File

@ -50,7 +50,7 @@ def invokeai_is_running() -> bool:
return False
def welcome(versions: dict):
def welcome(latest_release: str, latest_prerelease: str):
@group()
def text():
yield f"InvokeAI Version: [bold yellow]{__version__}"
@ -61,7 +61,8 @@ def welcome(versions: dict):
yield "making the web frontend unusable. Please downgrade to the latest release if this happens."
yield ""
yield "[bold yellow]Options:"
yield f"""[1] Update to the latest official release ([italic]{versions[0]['tag_name']}[/italic])
yield f"""[1] Update to the latest [bold]official release[/bold] ([italic]{latest_release}[/italic])
[2] Update to the latest [bold]pre-release[/bold] (may be buggy; caveat emptor!) ([italic]{latest_prerelease}[/italic])
[2] Manually enter the [bold]tag name[/bold] for the version you wish to update to
[3] Manually enter the [bold]branch name[/bold] for the version you wish to update to"""
@ -92,12 +93,17 @@ def get_extras():
def main():
versions = get_versions()
released_versions = [x for x in versions if not (x["draft"] or x["prerelease"])]
prerelease_versions = [x for x in versions if not x["draft"] and x["prerelease"]]
latest_release = released_versions[0]["tag_name"] if len(released_versions) else None
latest_prerelease = prerelease_versions[0]["tag_name"] if len(prerelease_versions) else None
if invokeai_is_running():
print(":exclamation: [bold red]Please terminate all running instances of InvokeAI before updating.[/red bold]")
input("Press any key to continue...")
return
welcome(versions)
welcome(latest_release, latest_prerelease)
tag = None
branch = None
@ -105,11 +111,13 @@ def main():
choice = Prompt.ask("Choice:", choices=["1", "2", "3", "4"], default="1")
if choice == "1":
release = versions[0]["tag_name"]
release = latest_release
elif choice == "2":
release = latest_prerelease
elif choice == "3":
while not tag:
tag = Prompt.ask("Enter an InvokeAI tag name")
elif choice == "3":
elif choice == "4":
while not branch:
branch = Prompt.ask("Enter an InvokeAI branch name")

View File

@ -9,7 +9,7 @@ import curses
import sys
from argparse import Namespace
from pathlib import Path
from typing import List, Optional
from typing import List
import npyscreen
from npyscreen import widget
@ -90,6 +90,7 @@ def _parse_args() -> Namespace:
# ------------------------- GUI HERE -------------------------
class mergeModelsForm(npyscreen.FormMultiPageAction):
interpolations = ["weighted_sum", "sigmoid", "inv_sigmoid"]
bases = ["sd-1", "sd-2", "sdxl"]
def __init__(self, parentApp, name):
self.parentApp = parentApp
@ -131,6 +132,7 @@ class mergeModelsForm(npyscreen.FormMultiPageAction):
values=[
"Models Built on SD-1.x",
"Models Built on SD-2.x",
"Models Built on SDXL",
],
value=[self.current_base],
columns=4,
@ -275,7 +277,7 @@ class mergeModelsForm(npyscreen.FormMultiPageAction):
args = dict(
model_names=models,
base_model=tuple(BaseModelType)[self.base_select.value[0]],
base_model=BaseModelType(self.bases[self.base_select.value[0]]),
alpha=self.alpha.value,
interp=interp,
force=self.force.value,
@ -309,7 +311,7 @@ class mergeModelsForm(npyscreen.FormMultiPageAction):
else:
return True
def get_model_names(self, base_model: Optional[BaseModelType] = None) -> List[str]:
def get_model_names(self, base_model: BaseModelType = BaseModelType.StableDiffusion1) -> List[str]:
model_names = [
info["model_name"]
for info in self.model_manager.list_models(model_type=ModelType.Main, base_model=base_model)
@ -318,7 +320,7 @@ class mergeModelsForm(npyscreen.FormMultiPageAction):
return sorted(model_names)
def _populate_models(self, value=None):
base_model = tuple(BaseModelType)[value[0]]
base_model = BaseModelType(self.bases[value[0]])
self.model_names = self.get_model_names(base_model)
models_plus_none = self.model_names.copy()

View File

@ -4,14 +4,14 @@
"reportBugLabel": "Fehler melden",
"settingsLabel": "Einstellungen",
"img2img": "Bild zu Bild",
"nodes": "Knoten",
"nodes": "Knoten Editor",
"langGerman": "Deutsch",
"nodesDesc": "Ein knotenbasiertes System, für die Erzeugung von Bildern, ist derzeit in der Entwicklung. Bleiben Sie gespannt auf Updates zu dieser fantastischen Funktion.",
"postProcessing": "Nachbearbeitung",
"postProcessDesc1": "InvokeAI bietet eine breite Palette von Nachbearbeitungsfunktionen. Bildhochskalierung und Gesichtsrekonstruktion sind bereits in der WebUI verfügbar. Sie können sie über das Menü Erweiterte Optionen der Reiter Text in Bild und Bild in Bild aufrufen. Sie können Bilder auch direkt bearbeiten, indem Sie die Schaltflächen für Bildaktionen oberhalb der aktuellen Bildanzeige oder im Viewer verwenden.",
"postProcessDesc2": "Eine spezielle Benutzeroberfläche wird in Kürze veröffentlicht, um erweiterte Nachbearbeitungs-Workflows zu erleichtern.",
"postProcessDesc3": "Die InvokeAI Kommandozeilen-Schnittstelle bietet verschiedene andere Funktionen, darunter Embiggen.",
"training": "Training",
"training": "trainieren",
"trainingDesc1": "Ein spezieller Arbeitsablauf zum Trainieren Ihrer eigenen Embeddings und Checkpoints mit Textual Inversion und Dreambooth über die Weboberfläche.",
"trainingDesc2": "InvokeAI unterstützt bereits das Training von benutzerdefinierten Embeddings mit Textual Inversion unter Verwendung des Hauptskripts.",
"upload": "Hochladen",
@ -38,14 +38,14 @@
"statusUpscalingESRGAN": "Hochskalierung (ESRGAN)",
"statusLoadingModel": "Laden des Modells",
"statusModelChanged": "Modell Geändert",
"cancel": "Abbruch",
"cancel": "Abbrechen",
"accept": "Annehmen",
"back": "Zurück",
"langEnglish": "Englisch",
"langDutch": "Niederländisch",
"langFrench": "Französisch",
"langItalian": "Italienisch",
"langPortuguese": "Portogisisch",
"langPortuguese": "Portugiesisch",
"langRussian": "Russisch",
"langUkranian": "Ukrainisch",
"hotkeysLabel": "Tastenkombinationen",
@ -58,12 +58,43 @@
"langArabic": "Arabisch",
"langKorean": "Koreanisch",
"langHebrew": "Hebräisch",
"langSpanish": "Spanisch"
"langSpanish": "Spanisch",
"t2iAdapter": "T2I Adapter",
"communityLabel": "Gemeinschaft",
"dontAskMeAgain": "Frag mich nicht nochmal",
"loadingInvokeAI": "Lade Invoke AI",
"statusMergedModels": "Modelle zusammengeführt",
"areYouSure": "Bist du dir sicher?",
"statusConvertingModel": "Model konvertieren",
"on": "An",
"nodeEditor": "Knoten Editor",
"statusMergingModels": "Modelle zusammenführen",
"langSimplifiedChinese": "Vereinfachtes Chinesisch",
"ipAdapter": "IP Adapter",
"controlAdapter": "Control Adapter",
"auto": "Automatisch",
"controlNet": "ControlNet",
"imageFailedToLoad": "Kann Bild nicht laden",
"statusModelConverted": "Model konvertiert",
"modelManager": "Model Manager",
"lightMode": "Heller Modus",
"generate": "Erstellen",
"learnMore": "Mehr lernen",
"darkMode": "Dunkler Modus",
"loading": "Lade",
"random": "Zufall",
"batch": "Batch-Manager",
"advanced": "Erweitert",
"langBrPortuguese": "Portugiesisch (Brasilien)",
"unifiedCanvas": "Einheitliche Leinwand",
"openInNewTab": "In einem neuem Tab öffnen",
"statusProcessing": "wird bearbeitet",
"linear": "Linear"
},
"gallery": {
"generations": "Erzeugungen",
"showGenerations": "Zeige Erzeugnisse",
"uploads": "Hochgelades",
"uploads": "Uploads",
"showUploads": "Zeige Uploads",
"galleryImageSize": "Bildgröße",
"galleryImageResetSize": "Größe zurücksetzen",
@ -73,7 +104,15 @@
"singleColumnLayout": "Einspaltiges Layout",
"allImagesLoaded": "Alle Bilder geladen",
"loadMore": "Mehr laden",
"noImagesInGallery": "Keine Bilder in der Galerie"
"noImagesInGallery": "Keine Bilder in der Galerie",
"loading": "Lade",
"preparingDownload": "bereite Download vor",
"preparingDownloadFailed": "Problem beim Download vorbereiten",
"deleteImage": "Lösche Bild",
"images": "Bilder",
"copy": "Kopieren",
"download": "Runterladen",
"setCurrentImage": "Setze aktuelle Bild"
},
"hotkeys": {
"keyboardShortcuts": "Tastenkürzel",
@ -82,7 +121,8 @@
"galleryHotkeys": "Galerie Tastenkürzel",
"unifiedCanvasHotkeys": "Unified Canvas Tastenkürzel",
"invoke": {
"desc": "Ein Bild erzeugen"
"desc": "Ein Bild erzeugen",
"title": "Invoke"
},
"cancel": {
"title": "Abbrechen",
@ -166,7 +206,7 @@
},
"toggleGalleryPin": {
"title": "Galerie anheften umschalten",
"desc": "Heftet die Galerie an die Benutzeroberfläche bzw. löst die sie."
"desc": "Heftet die Galerie an die Benutzeroberfläche bzw. löst die sie"
},
"increaseGalleryThumbSize": {
"title": "Größe der Galeriebilder erhöhen",
@ -279,6 +319,10 @@
"acceptStagingImage": {
"title": "Staging-Bild akzeptieren",
"desc": "Akzeptieren Sie das aktuelle Bild des Staging-Bereichs"
},
"nodesHotkeys": "Knoten Tastenkürzel",
"addNodes": {
"title": "Knotenpunkt hinzufügen"
}
},
"modelManager": {
@ -295,7 +339,7 @@
"config": "Konfiguration",
"configValidationMsg": "Pfad zur Konfigurationsdatei Ihres Models.",
"modelLocation": "Ort des Models",
"modelLocationValidationMsg": "Pfad zum Speicherort Ihres Models.",
"modelLocationValidationMsg": "Pfad zum Speicherort Ihres Models",
"vaeLocation": "VAE Ort",
"vaeLocationValidationMsg": "Pfad zum Speicherort Ihres VAE.",
"width": "Breite",
@ -328,11 +372,63 @@
"deleteModel": "Model löschen",
"deleteConfig": "Konfiguration löschen",
"deleteMsg1": "Möchten Sie diesen Model-Eintrag wirklich aus InvokeAI löschen?",
"deleteMsg2": "Dadurch wird die Modellprüfpunktdatei nicht von Ihrer Festplatte gelöscht. Sie können sie bei Bedarf erneut hinzufügen.",
"deleteMsg2": "Dadurch WIRD das Modell von der Festplatte gelöscht WENN es im InvokeAI Root Ordner liegt. Wenn es in einem anderem Ordner liegt wird das Modell NICHT von der Festplatte gelöscht.",
"customConfig": "Benutzerdefinierte Konfiguration",
"invokeRoot": "InvokeAI Ordner",
"formMessageDiffusersVAELocationDesc": "Falls nicht angegeben, sucht InvokeAI nach der VAE-Datei innerhalb des oben angegebenen Modell Speicherortes.",
"checkpointModels": "Kontrollpunkte"
"checkpointModels": "Kontrollpunkte",
"convert": "Umwandeln",
"addCheckpointModel": "Kontrollpunkt / SafeTensors Modell hinzufügen",
"allModels": "Alle Modelle",
"alpha": "Alpha",
"addDifference": "Unterschied hinzufügen",
"convertToDiffusersHelpText2": "Bei diesem Vorgang wird Ihr Eintrag im Modell-Manager durch die Diffusor-Version desselben Modells ersetzt.",
"convertToDiffusersHelpText5": "Bitte stellen Sie sicher, dass Sie über genügend Speicherplatz verfügen. Die Modelle sind in der Regel zwischen 2 GB und 7 GB groß.",
"convertToDiffusersHelpText3": "Ihre Kontrollpunktdatei auf der Festplatte wird NICHT gelöscht oder in irgendeiner Weise verändert. Sie können Ihren Kontrollpunkt dem Modell-Manager wieder hinzufügen, wenn Sie dies wünschen.",
"convertToDiffusersHelpText4": "Dies ist ein einmaliger Vorgang. Er kann je nach den Spezifikationen Ihres Computers etwa 30-60 Sekunden dauern.",
"convertToDiffusersHelpText6": "Möchten Sie dieses Modell konvertieren?",
"custom": "Benutzerdefiniert",
"modelConverted": "Modell umgewandelt",
"inverseSigmoid": "Inverses Sigmoid",
"invokeAIFolder": "Invoke AI Ordner",
"formMessageDiffusersModelLocationDesc": "Bitte geben Sie mindestens einen an.",
"customSaveLocation": "Benutzerdefinierter Speicherort",
"formMessageDiffusersVAELocation": "VAE Speicherort",
"mergedModelCustomSaveLocation": "Benutzerdefinierter Pfad",
"modelMergeHeaderHelp2": "Nur Diffusers sind für die Zusammenführung verfügbar. Wenn Sie ein Kontrollpunktmodell zusammenführen möchten, konvertieren Sie es bitte zuerst in Diffusers.",
"manual": "Manuell",
"modelManager": "Modell Manager",
"modelMergeAlphaHelp": "Alpha steuert die Überblendungsstärke für die Modelle. Niedrigere Alphawerte führen zu einem geringeren Einfluss des zweiten Modells.",
"modelMergeHeaderHelp1": "Sie können bis zu drei verschiedene Modelle miteinander kombinieren, um eine Mischung zu erstellen, die Ihren Bedürfnissen entspricht.",
"ignoreMismatch": "Unstimmigkeiten zwischen ausgewählten Modellen ignorieren",
"model": "Modell",
"convertToDiffusersSaveLocation": "Speicherort",
"pathToCustomConfig": "Pfad zur benutzerdefinierten Konfiguration",
"v1": "v1",
"modelMergeInterpAddDifferenceHelp": "In diesem Modus wird zunächst Modell 3 von Modell 2 subtrahiert. Die resultierende Version wird mit Modell 1 mit dem oben eingestellten Alphasatz gemischt.",
"modelTwo": "Modell 2",
"modelOne": "Modell 1",
"v2_base": "v2 (512px)",
"scanForModels": "Nach Modellen suchen",
"name": "Name",
"safetensorModels": "SafeTensors",
"pickModelType": "Modell Typ auswählen",
"sameFolder": "Gleicher Ordner",
"modelThree": "Modell 3",
"v2_768": "v2 (768px)",
"none": "Nix",
"repoIDValidationMsg": "Online Repo Ihres Modells",
"vaeRepoIDValidationMsg": "Online Repo Ihrer VAE",
"importModels": "Importiere Modelle",
"merge": "Zusammenführen",
"addDiffuserModel": "Diffusers hinzufügen",
"advanced": "Erweitert",
"closeAdvanced": "Schließe Erweitert",
"convertingModelBegin": "Konvertiere Modell. Bitte warten.",
"customConfigFileLocation": "Benutzerdefinierte Konfiguration Datei Speicherort",
"baseModel": "Basis Modell",
"convertToDiffusers": "Konvertiere zu Diffusers",
"diffusersModels": "Diffusers"
},
"parameters": {
"images": "Bilder",
@ -352,7 +448,7 @@
"type": "Art",
"strength": "Stärke",
"upscaling": "Hochskalierung",
"upscale": "Hochskalieren",
"upscale": "Hochskalieren (Shift + U)",
"upscaleImage": "Bild hochskalieren",
"scale": "Maßstab",
"otherOptions": "Andere Optionen",
@ -369,7 +465,7 @@
"seamCorrectionHeader": "Nahtkorrektur",
"infillScalingHeader": "Infill und Skalierung",
"img2imgStrength": "Bild-zu-Bild-Stärke",
"toggleLoopback": "Toggle Loopback",
"toggleLoopback": "Loopback umschalten",
"sendTo": "Senden an",
"sendToImg2Img": "Senden an Bild zu Bild",
"sendToUnifiedCanvas": "Senden an Unified Canvas",
@ -384,8 +480,20 @@
"initialImage": "Ursprüngliches Bild",
"showOptionsPanel": "Optionsleiste zeigen",
"cancel": {
"setType": "Abbruchart festlegen"
}
"setType": "Abbruchart festlegen",
"immediate": "Sofort abbrechen",
"schedule": "Abbrechen nach der aktuellen Iteration",
"isScheduled": "Abbrechen"
},
"copyImage": "Bild kopieren",
"denoisingStrength": "Stärke der Entrauschung",
"symmetry": "Symmetrie",
"imageToImage": "Bild zu Bild",
"info": "Information",
"general": "Allgemein",
"hiresStrength": "High Res Stärke",
"hidePreview": "Verstecke Vorschau",
"showPreview": "Zeige Vorschau"
},
"settings": {
"displayInProgress": "Bilder in Bearbeitung anzeigen",
@ -396,7 +504,9 @@
"resetWebUI": "Web-Oberfläche zurücksetzen",
"resetWebUIDesc1": "Das Zurücksetzen der Web-Oberfläche setzt nur den lokalen Cache des Browsers mit Ihren Bildern und gespeicherten Einstellungen zurück. Es werden keine Bilder von der Festplatte gelöscht.",
"resetWebUIDesc2": "Wenn die Bilder nicht in der Galerie angezeigt werden oder etwas anderes nicht funktioniert, versuchen Sie bitte, die Einstellungen zurückzusetzen, bevor Sie einen Fehler auf GitHub melden.",
"resetComplete": "Die Web-Oberfläche wurde zurückgesetzt. Aktualisieren Sie die Seite, um sie neu zu laden."
"resetComplete": "Die Web-Oberfläche wurde zurückgesetzt.",
"models": "Modelle",
"useSlidersForAll": "Schieberegler für alle Optionen verwenden"
},
"toast": {
"tempFoldersEmptied": "Temp-Ordner geleert",
@ -406,7 +516,7 @@
"imageCopied": "Bild kopiert",
"imageLinkCopied": "Bildlink kopiert",
"imageNotLoaded": "Kein Bild geladen",
"imageNotLoadedDesc": "Kein Bild gefunden, das an das Bild zu Bild-Modul gesendet werden kann",
"imageNotLoadedDesc": "Konnte kein Bild finden",
"imageSavedToGallery": "Bild in die Galerie gespeichert",
"canvasMerged": "Leinwand zusammengeführt",
"sentToImageToImage": "Gesendet an Bild zu Bild",
@ -476,7 +586,7 @@
"autoSaveToGallery": "Automatisch in Galerie speichern",
"saveBoxRegionOnly": "Nur Auswahlbox speichern",
"limitStrokesToBox": "Striche auf Box beschränken",
"showCanvasDebugInfo": "Leinwand-Debug-Infos anzeigen",
"showCanvasDebugInfo": "Zusätzliche Informationen zur Leinwand anzeigen",
"clearCanvasHistory": "Leinwand-Verlauf löschen",
"clearHistory": "Verlauf löschen",
"clearCanvasHistoryMessage": "Wenn Sie den Verlauf der Leinwand löschen, bleibt die aktuelle Leinwand intakt, aber der Verlauf der Rückgängig- und Wiederherstellung wird unwiderruflich gelöscht.",
@ -501,14 +611,17 @@
"betaClear": "Löschen",
"betaDarkenOutside": "Außen abdunkeln",
"betaLimitToBox": "Begrenzung auf das Feld",
"betaPreserveMasked": "Maskiertes bewahren"
"betaPreserveMasked": "Maskiertes bewahren",
"antialiasing": "Kantenglättung",
"showResultsOn": "Zeige Ergebnisse (An)",
"showResultsOff": "Zeige Ergebnisse (Aus)"
},
"accessibility": {
"modelSelect": "Model Auswahl",
"uploadImage": "Bild hochladen",
"previousImage": "Voriges Bild",
"useThisParameter": "Benutze diesen Parameter",
"copyMetadataJson": "Kopiere metadata JSON",
"copyMetadataJson": "Kopiere Metadaten JSON",
"zoomIn": "Vergrößern",
"rotateClockwise": "Im Uhrzeigersinn drehen",
"flipHorizontally": "Horizontal drehen",
@ -517,9 +630,163 @@
"toggleAutoscroll": "Auroscroll ein/ausschalten",
"toggleLogViewer": "Log Betrachter ein/ausschalten",
"showOptionsPanel": "Zeige Optionen",
"reset": "Zurücksetzen",
"reset": "Zurücksetzten",
"nextImage": "Nächstes Bild",
"zoomOut": "Verkleinern",
"rotateCounterClockwise": "Gegen den Uhrzeigersinn verdrehen"
"rotateCounterClockwise": "Gegen den Uhrzeigersinn verdrehen",
"showGalleryPanel": "Galeriefenster anzeigen",
"exitViewer": "Betrachten beenden",
"menu": "Menü",
"loadMore": "Mehr laden",
"invokeProgressBar": "Invoke Fortschrittsanzeige"
},
"boards": {
"autoAddBoard": "Automatisches Hinzufügen zum Ordner",
"topMessage": "Dieser Ordner enthält Bilder die in den folgenden Funktionen verwendet werden:",
"move": "Bewegen",
"menuItemAutoAdd": "Automatisches Hinzufügen zu diesem Ordner",
"myBoard": "Meine Ordner",
"searchBoard": "Ordner durchsuchen...",
"noMatching": "Keine passenden Ordner",
"selectBoard": "Ordner aussuchen",
"cancel": "Abbrechen",
"addBoard": "Ordner hinzufügen",
"uncategorized": "Nicht kategorisiert",
"downloadBoard": "Ordner runterladen",
"changeBoard": "Ordner wechseln",
"loading": "Laden...",
"clearSearch": "Suche leeren"
},
"controlnet": {
"showAdvanced": "Zeige Erweitert",
"contentShuffleDescription": "Mischt den Inhalt von einem Bild",
"addT2IAdapter": "$t(common.t2iAdapter) hinzufügen",
"importImageFromCanvas": "Importieren Bild von Zeichenfläche",
"lineartDescription": "Konvertiere Bild zu Lineart",
"importMaskFromCanvas": "Importiere Maske von Zeichenfläche",
"hed": "HED",
"hideAdvanced": "Verstecke Erweitert",
"contentShuffle": "Inhalt mischen",
"controlNetEnabledT2IDisabled": "$t(common.controlNet) ist aktiv, $t(common.t2iAdapter) ist deaktiviert",
"ipAdapterModel": "Adapter Modell",
"beginEndStepPercent": "Start / Ende Step Prozent",
"duplicate": "Kopieren",
"f": "F",
"h": "H",
"depthMidasDescription": "Tiefenmap erstellen mit Midas",
"controlnet": "$t(controlnet.controlAdapter_one) #{{number}} ($t(common.controlNet))",
"t2iEnabledControlNetDisabled": "$t(common.t2iAdapter) ist aktiv, $t(common.controlNet) ist deaktiviert",
"weight": "Breite",
"selectModel": "Wähle ein Modell",
"depthMidas": "Tiefe (Midas)",
"w": "W",
"addControlNet": "$t(common.controlNet) hinzufügen",
"none": "Kein",
"incompatibleBaseModel": "Inkompatibles Basismodell:",
"enableControlnet": "Aktiviere ControlNet",
"detectResolution": "Auflösung erkennen",
"controlNetT2IMutexDesc": "$t(common.controlNet) und $t(common.t2iAdapter) zur gleichen Zeit wird nicht unterstützt.",
"ip_adapter": "$t(controlnet.controlAdapter_one) #{{number}} ($t(common.ipAdapter))",
"fill": "Füllen",
"addIPAdapter": "$t(common.ipAdapter) hinzufügen",
"colorMapDescription": "Erstelle eine Farbkarte von diesem Bild",
"t2i_adapter": "$t(controlnet.controlAdapter_one) #{{number}} ($t(common.t2iAdapter))",
"imageResolution": "Bild Auflösung",
"depthZoe": "Tiefe (Zoe)",
"colorMap": "Farbe",
"lowThreshold": "Niedrige Schwelle",
"highThreshold": "Hohe Schwelle",
"toggleControlNet": "Schalten ControlNet um",
"delete": "Löschen",
"controlAdapter_one": "Control Adapter",
"controlAdapter_other": "Control Adapters",
"colorMapTileSize": "Tile Größe",
"depthZoeDescription": "Tiefenmap erstellen mit Zoe",
"setControlImageDimensions": "Setze Control Bild Auflösung auf Breite/Höhe",
"handAndFace": "Hand und Gesicht",
"enableIPAdapter": "Aktiviere IP Adapter"
},
"queue": {
"status": "Status",
"cancelTooltip": "Aktuellen Aufgabe abbrechen",
"queueEmpty": "Warteschlange leer",
"in_progress": "In Arbeit",
"queueFront": "An den Anfang der Warteschlange tun",
"completed": "Fertig",
"queueBack": "In die Warteschlange",
"clearFailed": "Probleme beim leeren der Warteschlange",
"clearSucceeded": "Warteschlange geleert",
"pause": "Pause",
"cancelSucceeded": "Auftrag abgebrochen",
"queue": "Warteschlange",
"batch": "Stapel",
"pending": "Ausstehend",
"clear": "Leeren",
"prune": "Leeren",
"total": "Gesamt",
"canceled": "Abgebrochen",
"clearTooltip": "Abbrechen und alle Aufträge leeren",
"current": "Aktuell",
"failed": "Fehler",
"cancelItem": "Abbruch Auftrag",
"next": "Nächste",
"cancel": "Abbruch",
"session": "Sitzung",
"queueTotal": "{{total}} Gesamt",
"resume": "Wieder aufnehmen",
"item": "Auftrag"
},
"metadata": {
"negativePrompt": "Negativ Beschreibung",
"metadata": "Meta-Data",
"strength": "Bild zu Bild stärke",
"imageDetails": "Bild Details",
"model": "Modell",
"noImageDetails": "Keine Bild Details gefunden",
"cfgScale": "CFG-Skala",
"fit": "Bild zu Bild passen",
"height": "Höhe",
"noMetaData": "Keine Meta-Data gefunden",
"width": "Breite",
"createdBy": "Erstellt von",
"steps": "Schritte"
},
"popovers": {
"noiseUseCPU": {
"heading": "Nutze Prozessor rauschen"
},
"paramModel": {
"heading": "Modell"
},
"paramIterations": {
"heading": "Iterationen"
},
"paramCFGScale": {
"heading": "CFG-Skala"
},
"paramSteps": {
"heading": "Schritte"
},
"lora": {
"heading": "LoRA Gewichte"
},
"infillMethod": {
"heading": "Füllmethode"
},
"paramVAE": {
"heading": "VAE"
}
},
"ui": {
"lockRatio": "Verhältnis sperren",
"hideProgressImages": "Verstecke Prozess Bild",
"showProgressImages": "Zeige Prozess Bild"
},
"invocationCache": {
"disable": "Deaktivieren",
"misses": "Cache Nötig",
"hits": "Cache Treffer",
"enable": "Aktivieren",
"clear": "Leeren"
}
}

View File

@ -70,8 +70,8 @@
"langDutch": "Nederlands",
"langEnglish": "English",
"langFrench": "Français",
"langGerman": "Deutsch",
"langHebrew": "עברית",
"langGerman": "German",
"langHebrew": "Hebrew",
"langItalian": "Italiano",
"langJapanese": "日本語",
"langKorean": "한국어",
@ -722,7 +722,9 @@
"noMatchingModels": "No matching Models",
"noModelsAvailable": "No models available",
"selectLoRA": "Select a LoRA",
"selectModel": "Select a Model"
"selectModel": "Select a Model",
"noLoRAsInstalled": "No LoRAs installed",
"noRefinerModelsInstalled": "No SDXL Refiner models installed"
},
"nodes": {
"addNode": "Add Node",
@ -1122,7 +1124,6 @@
"clearIntermediates": "Clear Intermediates",
"clearIntermediatesWithCount_one": "Clear {{count}} Intermediate",
"clearIntermediatesWithCount_other": "Clear {{count}} Intermediates",
"clearIntermediatesWithCount_zero": "No Intermediates to Clear",
"intermediatesCleared_one": "Cleared {{count}} Intermediate",
"intermediatesCleared_other": "Cleared {{count}} Intermediates",
"intermediatesClearedFailed": "Problem Clearing Intermediates"
@ -1257,11 +1258,15 @@
},
"compositingBlur": {
"heading": "Blur",
"paragraphs": ["The blur radius of the mask."]
"paragraphs": [
"The blur radius of the mask."
]
},
"compositingBlurMethod": {
"heading": "Blur Method",
"paragraphs": ["The method of blur applied to the masked area."]
"paragraphs": [
"The method of blur applied to the masked area."
]
},
"compositingCoherencePass": {
"heading": "Coherence Pass",
@ -1271,7 +1276,9 @@
},
"compositingCoherenceMode": {
"heading": "Mode",
"paragraphs": ["The mode of the Coherence Pass."]
"paragraphs": [
"The mode of the Coherence Pass."
]
},
"compositingCoherenceSteps": {
"heading": "Steps",
@ -1289,7 +1296,9 @@
},
"compositingMaskAdjustments": {
"heading": "Mask Adjustments",
"paragraphs": ["Adjust the mask."]
"paragraphs": [
"Adjust the mask."
]
},
"controlNetBeginEnd": {
"heading": "Begin / End Step Percentage",
@ -1347,7 +1356,9 @@
},
"infillMethod": {
"heading": "Infill Method",
"paragraphs": ["Method to infill the selected area."]
"paragraphs": [
"Method to infill the selected area."
]
},
"lora": {
"heading": "LoRA Weight",

View File

@ -1116,7 +1116,8 @@
"controlAdapter_other": "Adattatori di Controllo",
"megaControl": "Mega ControlNet",
"minConfidence": "Confidenza minima",
"scribble": "Scribble"
"scribble": "Scribble",
"amult": "Angolo di illuminazione"
},
"queue": {
"queueFront": "Aggiungi all'inizio della coda",

View File

@ -1,6 +1,6 @@
{
"common": {
"languagePickerLabel": "言語選択",
"languagePickerLabel": "言語",
"reportBugLabel": "バグ報告",
"settingsLabel": "設定",
"langJapanese": "日本語",
@ -63,11 +63,34 @@
"langFrench": "Français",
"langGerman": "Deutsch",
"langPortuguese": "Português",
"nodes": "ノード",
"nodes": "ワークフローエディター",
"langKorean": "한국어",
"langPolish": "Polski",
"txt2img": "txt2img",
"postprocessing": "Post Processing"
"postprocessing": "Post Processing",
"t2iAdapter": "T2I アダプター",
"communityLabel": "コミュニティ",
"dontAskMeAgain": "次回から確認しない",
"areYouSure": "本当によろしいですか?",
"on": "オン",
"nodeEditor": "ノードエディター",
"ipAdapter": "IPアダプター",
"controlAdapter": "コントロールアダプター",
"auto": "自動",
"openInNewTab": "新しいタブで開く",
"controlNet": "コントロールネット",
"statusProcessing": "処理中",
"linear": "リニア",
"imageFailedToLoad": "画像が読み込めません",
"imagePrompt": "画像プロンプト",
"modelManager": "モデルマネージャー",
"lightMode": "ライトモード",
"generate": "生成",
"learnMore": "もっと学ぶ",
"darkMode": "ダークモード",
"random": "ランダム",
"batch": "バッチマネージャー",
"advanced": "高度な設定"
},
"gallery": {
"uploads": "アップロード",
@ -274,7 +297,7 @@
"config": "Config",
"configValidationMsg": "モデルの設定ファイルへのパス",
"modelLocation": "モデルの場所",
"modelLocationValidationMsg": "モデルが配置されている場所へのパス。",
"modelLocationValidationMsg": "ディフューザーモデルのあるローカルフォルダーのパスを入力してください",
"repo_id": "Repo ID",
"repoIDValidationMsg": "モデルのリモートリポジトリ",
"vaeLocation": "VAEの場所",
@ -309,12 +332,79 @@
"delete": "削除",
"deleteModel": "モデルを削除",
"deleteConfig": "設定を削除",
"deleteMsg1": "InvokeAIからこのモデルエントリーを削除してよろしいですか?",
"deleteMsg2": "これは、ドライブからモデルのCheckpointファイルを削除するものではありません。必要であればそれらを読み込むことができます。",
"deleteMsg1": "InvokeAIからこのモデルを削除してよろしいですか?",
"deleteMsg2": "これは、モデルがInvokeAIルートフォルダ内にある場合、ディスクからモデルを削除します。カスタム保存場所を使用している場合、モデルはディスクから削除されません。",
"formMessageDiffusersModelLocation": "Diffusersモデルの場所",
"formMessageDiffusersModelLocationDesc": "最低でも1つは入力してください。",
"formMessageDiffusersVAELocation": "VAEの場所s",
"formMessageDiffusersVAELocationDesc": "指定しない場合、InvokeAIは上記のモデルの場所にあるVAEファイルを探します。"
"formMessageDiffusersVAELocationDesc": "指定しない場合、InvokeAIは上記のモデルの場所にあるVAEファイルを探します。",
"importModels": "モデルをインポート",
"custom": "カスタム",
"none": "なし",
"convert": "変換",
"statusConverting": "変換中",
"cannotUseSpaces": "スペースは使えません",
"convertToDiffusersHelpText6": "このモデルを変換しますか?",
"checkpointModels": "チェックポイント",
"settings": "設定",
"convertingModelBegin": "モデルを変換しています...",
"baseModel": "ベースモデル",
"modelDeleteFailed": "モデルの削除ができませんでした",
"convertToDiffusers": "ディフューザーに変換",
"alpha": "アルファ",
"diffusersModels": "ディフューザー",
"pathToCustomConfig": "カスタム設定のパス",
"noCustomLocationProvided": "カスタムロケーションが指定されていません",
"modelConverted": "モデル変換が完了しました",
"weightedSum": "重み付け総和",
"inverseSigmoid": "逆シグモイド",
"invokeAIFolder": "Invoke AI フォルダ",
"syncModelsDesc": "モデルがバックエンドと同期していない場合、このオプションを使用してモデルを更新できます。通常、モデル.yamlファイルを手動で更新したり、アプリケーションの起動後にモデルをInvokeAIルートフォルダに追加した場合に便利です。",
"noModels": "モデルが見つかりません",
"sigmoid": "シグモイド",
"merge": "マージ",
"modelMergeInterpAddDifferenceHelp": "このモードでは、モデル3がまずモデル2から減算されます。その結果得られたバージョンが、上記で設定されたアルファ率でモデル1とブレンドされます。",
"customConfig": "カスタム設定",
"predictionType": "予測タイプ(安定したディフュージョン 2.x モデルおよび一部の安定したディフュージョン 1.x モデル用)",
"selectModel": "モデルを選択",
"modelSyncFailed": "モデルの同期に失敗しました",
"quickAdd": "クイック追加",
"simpleModelDesc": "ローカルのDiffusersモデル、ローカルのチェックポイント/safetensorsモデル、HuggingFaceリポジトリのID、またはチェックポイント/ DiffusersモデルのURLへのパスを指定してください。",
"customSaveLocation": "カスタム保存場所",
"advanced": "高度な設定",
"modelDeleted": "モデルが削除されました",
"convertToDiffusersHelpText2": "このプロセスでは、モデルマネージャーのエントリーを同じモデルのディフューザーバージョンに置き換えます。",
"modelUpdateFailed": "モデル更新が失敗しました",
"useCustomConfig": "カスタム設定を使用する",
"convertToDiffusersHelpText5": "十分なディスク空き容量があることを確認してください。モデルは一般的に2GBから7GBのサイズがあります。",
"modelConversionFailed": "モデル変換が失敗しました",
"modelEntryDeleted": "モデルエントリーが削除されました",
"syncModels": "モデルを同期",
"mergedModelSaveLocation": "保存場所",
"closeAdvanced": "高度な設定を閉じる",
"modelType": "モデルタイプ",
"modelsMerged": "モデルマージ完了",
"modelsMergeFailed": "モデルマージ失敗",
"scanForModels": "モデルをスキャン",
"customConfigFileLocation": "カスタム設定ファイルの場所",
"convertToDiffusersHelpText1": "このモデルは 🧨 Diffusers フォーマットに変換されます。",
"modelsSynced": "モデルが同期されました",
"invokeRoot": "InvokeAIフォルダ",
"mergedModelCustomSaveLocation": "カスタムパス",
"mergeModels": "マージモデル",
"interpolationType": "補間タイプ",
"modelMergeHeaderHelp2": "マージできるのはDiffusersのみです。チェックポイントモデルをマージしたい場合は、まずDiffusersに変換してください。",
"convertToDiffusersSaveLocation": "保存場所",
"pickModelType": "モデルタイプを選択",
"sameFolder": "同じフォルダ",
"convertToDiffusersHelpText3": "チェックポイントファイルは、InvokeAIルートフォルダ内にある場合、ディスクから削除されます。カスタムロケーションにある場合は、削除されません。",
"loraModels": "LoRA",
"modelMergeAlphaHelp": "アルファはモデルのブレンド強度を制御します。アルファ値が低いと、2番目のモデルの影響が低くなります。",
"addDifference": "差分を追加",
"modelMergeHeaderHelp1": "あなたのニーズに適したブレンドを作成するために、異なるモデルを最大3つまでマージすることができます。",
"ignoreMismatch": "選択されたモデル間の不一致を無視する",
"convertToDiffusersHelpText4": "これは一回限りのプロセスです。コンピュータの仕様によっては、約30秒から60秒かかる可能性があります。",
"mergedModelName": "マージされたモデル名"
},
"parameters": {
"images": "画像",
@ -440,7 +530,8 @@
"next": "次",
"accept": "同意",
"showHide": "表示/非表示",
"discardAll": "すべて破棄"
"discardAll": "すべて破棄",
"snapToGrid": "グリッドにスナップ"
},
"accessibility": {
"modelSelect": "モデルを選択",
@ -452,7 +543,7 @@
"useThisParameter": "このパラメータを使用する",
"copyMetadataJson": "メタデータをコピー(JSON)",
"zoomIn": "ズームイン",
"exitViewer": "ExitViewer",
"exitViewer": "ビューアーを終了",
"zoomOut": "ズームアウト",
"rotateCounterClockwise": "反時計回りに回転",
"rotateClockwise": "時計回りに回転",
@ -461,6 +552,265 @@
"toggleAutoscroll": "自動スクロールの切替",
"modifyConfig": "Modify Config",
"toggleLogViewer": "Log Viewerの切替",
"showOptionsPanel": "オプションパネルを表示"
"showOptionsPanel": "サイドパネルを表示",
"showGalleryPanel": "ギャラリーパネルを表示",
"menu": "メニュー",
"loadMore": "さらに読み込む"
},
"controlnet": {
"resize": "リサイズ",
"showAdvanced": "高度な設定を表示",
"addT2IAdapter": "$t(common.t2iAdapter)を追加",
"importImageFromCanvas": "キャンバスから画像をインポート",
"lineartDescription": "画像を線画に変換",
"importMaskFromCanvas": "キャンバスからマスクをインポート",
"hideAdvanced": "高度な設定を非表示",
"ipAdapterModel": "アダプターモデル",
"resetControlImage": "コントロール画像をリセット",
"beginEndStepPercent": "開始 / 終了ステップパーセンテージ",
"duplicate": "複製",
"balanced": "バランス",
"prompt": "プロンプト",
"depthMidasDescription": "Midasを使用して深度マップを生成",
"openPoseDescription": "Openposeを使用してポーズを推定",
"control": "コントロール",
"resizeMode": "リサイズモード",
"weight": "重み",
"selectModel": "モデルを選択",
"crop": "切り抜き",
"w": "幅",
"processor": "プロセッサー",
"addControlNet": "$t(common.controlNet)を追加",
"none": "なし",
"incompatibleBaseModel": "互換性のないベースモデル:",
"enableControlnet": "コントロールネットを有効化",
"detectResolution": "検出解像度",
"controlNetT2IMutexDesc": "$t(common.controlNet)と$t(common.t2iAdapter)の同時使用は現在サポートされていません。",
"pidiDescription": "PIDI画像処理",
"controlMode": "コントロールモード",
"fill": "塗りつぶし",
"cannyDescription": "Canny 境界検出",
"addIPAdapter": "$t(common.ipAdapter)を追加",
"colorMapDescription": "画像からカラーマップを生成",
"lineartAnimeDescription": "アニメスタイルの線画処理",
"imageResolution": "画像解像度",
"megaControl": "メガコントロール",
"lowThreshold": "最低閾値",
"autoConfigure": "プロセッサーを自動設定",
"highThreshold": "最大閾値",
"saveControlImage": "コントロール画像を保存",
"toggleControlNet": "このコントロールネットを切り替え",
"delete": "削除",
"controlAdapter_other": "コントロールアダプター",
"colorMapTileSize": "タイルサイズ",
"ipAdapterImageFallback": "IP Adapterの画像が選択されていません",
"mediapipeFaceDescription": "Mediapipeを使用して顔を検出",
"depthZoeDescription": "Zoeを使用して深度マップを生成",
"setControlImageDimensions": "コントロール画像のサイズを幅と高さにセット",
"resetIPAdapterImage": "IP Adapterの画像をリセット",
"handAndFace": "手と顔",
"enableIPAdapter": "IP Adapterを有効化",
"amult": "a_mult",
"contentShuffleDescription": "画像の内容をシャッフルします",
"bgth": "bg_th",
"controlNetEnabledT2IDisabled": "$t(common.controlNet) が有効化され、$t(common.t2iAdapter)s が無効化されました",
"controlnet": "$t(controlnet.controlAdapter_one) #{{number}} ($t(common.controlNet))",
"t2iEnabledControlNetDisabled": "$t(common.t2iAdapter) が有効化され、$t(common.controlNet)s が無効化されました",
"ip_adapter": "$t(controlnet.controlAdapter_one) #{{number}} ($t(common.ipAdapter))",
"t2i_adapter": "$t(controlnet.controlAdapter_one) #{{number}} ($t(common.t2iAdapter))",
"minConfidence": "最小確信度",
"colorMap": "Color",
"noneDescription": "処理は行われていません",
"canny": "Canny",
"hedDescription": "階層的エッジ検出",
"maxFaces": "顔の最大数"
},
"metadata": {
"seamless": "シームレス",
"Threshold": "ノイズ閾値",
"seed": "シード",
"width": "幅",
"workflow": "ワークフロー",
"steps": "ステップ",
"scheduler": "スケジューラー",
"positivePrompt": "ポジティブプロンプト",
"strength": "Image to Image 強度",
"perlin": "パーリンノイズ",
"recallParameters": "パラメータを呼び出す"
},
"queue": {
"queueEmpty": "キューが空です",
"pauseSucceeded": "処理が一時停止されました",
"queueFront": "キューの先頭へ追加",
"queueBack": "キューに追加",
"queueCountPrediction": "{{predicted}}をキューに追加",
"queuedCount": "保留中 {{pending}}",
"pause": "一時停止",
"queue": "キュー",
"pauseTooltip": "処理を一時停止",
"cancel": "キャンセル",
"queueTotal": "合計 {{total}}",
"resumeSucceeded": "処理が再開されました",
"resumeTooltip": "処理を再開",
"resume": "再会",
"status": "ステータス",
"pruneSucceeded": "キューから完了アイテム{{item_count}}件を削除しました",
"cancelTooltip": "現在のアイテムをキャンセル",
"in_progress": "進行中",
"notReady": "キューに追加できません",
"batchFailedToQueue": "バッチをキューに追加できませんでした",
"completed": "完了",
"batchValues": "バッチの値",
"cancelFailed": "アイテムのキャンセルに問題があります",
"batchQueued": "バッチをキューに追加しました",
"pauseFailed": "処理の一時停止に問題があります",
"clearFailed": "キューのクリアに問題があります",
"front": "先頭",
"clearSucceeded": "キューがクリアされました",
"pruneTooltip": "{{item_count}} の完了アイテムを削除",
"cancelSucceeded": "アイテムがキャンセルされました",
"batchQueuedDesc_other": "{{count}} セッションをキューの{{direction}}に追加しました",
"graphQueued": "グラフをキューに追加しました",
"batch": "バッチ",
"clearQueueAlertDialog": "キューをクリアすると、処理中のアイテムは直ちにキャンセルされ、キューは完全にクリアされます。",
"pending": "保留中",
"resumeFailed": "処理の再開に問題があります",
"clear": "クリア",
"total": "合計",
"canceled": "キャンセル",
"pruneFailed": "キューの削除に問題があります",
"cancelBatchSucceeded": "バッチがキャンセルされました",
"clearTooltip": "全てのアイテムをキャンセルしてクリア",
"current": "現在",
"failed": "失敗",
"cancelItem": "項目をキャンセル",
"next": "次",
"cancelBatch": "バッチをキャンセル",
"session": "セッション",
"enqueueing": "バッチをキューに追加",
"queueMaxExceeded": "{{max_queue_size}} の最大値を超えたため、{{skip}} をスキップします",
"cancelBatchFailed": "バッチのキャンセルに問題があります",
"clearQueueAlertDialog2": "キューをクリアしてもよろしいですか?",
"item": "アイテム",
"graphFailedToQueue": "グラフをキューに追加できませんでした"
},
"models": {
"noMatchingModels": "一致するモデルがありません",
"loading": "読み込み中",
"noMatchingLoRAs": "一致するLoRAがありません",
"noLoRAsAvailable": "使用可能なLoRAがありません",
"noModelsAvailable": "使用可能なモデルがありません",
"selectModel": "モデルを選択してください",
"selectLoRA": "LoRAを選択してください"
},
"nodes": {
"addNode": "ノードを追加",
"boardField": "ボード",
"boolean": "ブーリアン",
"boardFieldDescription": "ギャラリーボード",
"addNodeToolTip": "ノードを追加 (Shift+A, Space)",
"booleanPolymorphicDescription": "ブーリアンのコレクション。",
"inputField": "入力フィールド",
"latentsFieldDescription": "潜在空間はノード間で伝達できます。",
"floatCollectionDescription": "浮動小数点のコレクション。",
"missingTemplate": "テンプレートが見つかりません",
"ipAdapterPolymorphicDescription": "IP-Adaptersのコレクション。",
"latentsPolymorphicDescription": "潜在空間はノード間で伝達できます。",
"colorFieldDescription": "RGBAカラー。",
"ipAdapterCollection": "IP-Adapterコレクション",
"conditioningCollection": "条件付きコレクション",
"hideGraphNodes": "グラフオーバーレイを非表示",
"loadWorkflow": "ワークフローを読み込み",
"integerPolymorphicDescription": "整数のコレクション。",
"hideLegendNodes": "フィールドタイプの凡例を非表示",
"float": "浮動小数点",
"booleanCollectionDescription": "ブーリアンのコレクション。",
"integer": "整数",
"colorField": "カラー",
"nodeTemplate": "ノードテンプレート",
"integerDescription": "整数は小数点を持たない数値です。",
"imagePolymorphicDescription": "画像のコレクション。",
"doesNotExist": "存在しません",
"ipAdapterCollectionDescription": "IP-Adaptersのコレクション。",
"inputMayOnlyHaveOneConnection": "入力は1つの接続しか持つことができません",
"nodeOutputs": "ノード出力",
"currentImageDescription": "ノードエディタ内の現在の画像を表示",
"downloadWorkflow": "ワークフローのJSONをダウンロード",
"integerCollection": "整数コレクション",
"collectionItem": "コレクションアイテム",
"fieldTypesMustMatch": "フィールドタイプが一致している必要があります",
"edge": "輪郭",
"inputNode": "入力ノード",
"imageField": "画像",
"animatedEdgesHelp": "選択したエッジおよび選択したノードに接続されたエッジをアニメーション化します",
"cannotDuplicateConnection": "重複した接続は作れません",
"noWorkflow": "ワークフローがありません",
"integerCollectionDescription": "整数のコレクション。",
"colorPolymorphicDescription": "カラーのコレクション。",
"missingCanvaInitImage": "キャンバスの初期画像が見つかりません",
"clipFieldDescription": "トークナイザーとテキストエンコーダーサブモデル。",
"fullyContainNodesHelp": "ノードは選択ボックス内に完全に存在する必要があります",
"clipField": "クリップ",
"nodeType": "ノードタイプ",
"executionStateInProgress": "処理中",
"executionStateError": "エラー",
"ipAdapterModel": "IP-Adapterモデル",
"ipAdapterDescription": "イメージプロンプトアダプター(IP-Adapter)。",
"missingCanvaInitMaskImages": "キャンバスの初期画像およびマスクが見つかりません",
"hideMinimapnodes": "ミニマップを非表示",
"fitViewportNodes": "全体を表示",
"executionStateCompleted": "完了",
"node": "ノード",
"currentImage": "現在の画像",
"controlField": "コントロール",
"booleanDescription": "ブーリアンはtrueかfalseです。",
"collection": "コレクション",
"ipAdapterModelDescription": "IP-Adapterモデルフィールド",
"cannotConnectInputToInput": "入力から入力には接続できません",
"invalidOutputSchema": "無効な出力スキーマ",
"floatDescription": "浮動小数点は、小数点を持つ数値です。",
"floatPolymorphicDescription": "浮動小数点のコレクション。",
"floatCollection": "浮動小数点コレクション",
"latentsField": "潜在空間",
"cannotConnectOutputToOutput": "出力から出力には接続できません",
"booleanCollection": "ブーリアンコレクション",
"cannotConnectToSelf": "自身のノードには接続できません",
"inputFields": "入力フィールド(複数)",
"colorCodeEdges": "カラー-Code Edges",
"imageCollectionDescription": "画像のコレクション。",
"loadingNodes": "ノードを読み込み中...",
"imageCollection": "画像コレクション"
},
"boards": {
"autoAddBoard": "自動追加するボード",
"move": "移動",
"menuItemAutoAdd": "このボードに自動追加",
"myBoard": "マイボード",
"searchBoard": "ボードを検索...",
"noMatching": "一致するボードがありません",
"selectBoard": "ボードを選択",
"cancel": "キャンセル",
"addBoard": "ボードを追加",
"uncategorized": "未分類",
"downloadBoard": "ボードをダウンロード",
"changeBoard": "ボードを変更",
"loading": "ロード中...",
"topMessage": "このボードには、以下の機能で使用されている画像が含まれています:",
"bottomMessage": "このボードおよび画像を削除すると、現在これらを利用している機能はリセットされます。",
"clearSearch": "検索をクリア"
},
"embedding": {
"noMatchingEmbedding": "一致する埋め込みがありません",
"addEmbedding": "埋め込みを追加",
"incompatibleModel": "互換性のないベースモデル:"
},
"invocationCache": {
"invocationCache": "呼び出しキャッシュ",
"clearSucceeded": "呼び出しキャッシュをクリアしました",
"clearFailed": "呼び出しキャッシュのクリアに問題があります",
"enable": "有効",
"clear": "クリア",
"maxCacheSize": "最大キャッシュサイズ",
"cacheSize": "キャッシュサイズ"
}
}

View File

@ -866,7 +866,7 @@
"version": "版本",
"validateConnections": "验证连接和节点图",
"inputMayOnlyHaveOneConnection": "输入仅能有一个连接",
"notes": "节点",
"notes": "注释",
"nodeOutputs": "节点输出",
"currentImageDescription": "在节点编辑器中显示当前图像",
"validateConnectionsHelp": "防止建立无效连接和调用无效节点图",
@ -892,11 +892,11 @@
"currentImage": "当前图像",
"workflowName": "名称",
"cannotConnectInputToInput": "无法将输入连接到输入",
"workflowNotes": "节点",
"workflowNotes": "注释",
"cannotConnectOutputToOutput": "无法将输出连接到输出",
"connectionWouldCreateCycle": "连接将创建一个循环",
"cannotConnectToSelf": "无法连接自己",
"notesDescription": "添加有关您的工作流的节点",
"notesDescription": "添加有关您的工作流的注释",
"unknownField": "未知",
"colorCodeEdges": "边缘颜色编码",
"unknownNode": "未知节点",

View File

@ -16,15 +16,13 @@ const ParamDynamicPromptsCollapse = () => {
() =>
createSelector(stateSelector, ({ dynamicPrompts }) => {
const count = dynamicPrompts.prompts.length;
if (count === 1) {
return t('dynamicPrompts.promptsWithCount_one', {
count,
});
} else {
if (count > 1) {
return t('dynamicPrompts.promptsWithCount_other', {
count,
});
}
return;
}),
[t]
);

View File

@ -10,6 +10,7 @@ import { loraAdded } from 'features/lora/store/loraSlice';
import { MODEL_TYPE_MAP } from 'features/parameters/types/constants';
import { forEach } from 'lodash-es';
import { memo, useCallback, useMemo } from 'react';
import { useTranslation } from 'react-i18next';
import { useGetLoRAModelsQuery } from 'services/api/endpoints/models';
const selector = createSelector(
@ -24,7 +25,7 @@ const ParamLoRASelect = () => {
const dispatch = useAppDispatch();
const { loras } = useAppSelector(selector);
const { data: loraModels } = useGetLoRAModelsQuery();
const { t } = useTranslation();
const currentMainModel = useAppSelector(
(state: RootState) => state.generation.model
);
@ -79,7 +80,7 @@ const ParamLoRASelect = () => {
return (
<Flex sx={{ justifyContent: 'center', p: 2 }}>
<Text sx={{ fontSize: 'sm', color: 'base.500', _dark: 'base.700' }}>
No LoRAs Loaded
{t('models.noLoRAsInstalled')}
</Text>
</Flex>
);

View File

@ -28,9 +28,7 @@ export default function ParamAdvancedCollapse() {
const activeLabel = useMemo(() => {
const activeLabel: string[] = [];
if (shouldUseCpuNoise) {
activeLabel.push(t('parameters.cpuNoise'));
} else {
if (!shouldUseCpuNoise) {
activeLabel.push(t('parameters.gpuNoise'));
}

View File

@ -4,12 +4,13 @@ import { RootState, stateSelector } from 'app/store/store';
import { useAppSelector } from 'app/store/storeHooks';
import { defaultSelectorOptions } from 'app/store/util/defaultMemoizeOptions';
import IAICollapse from 'common/components/IAICollapse';
import { useFeatureStatus } from 'features/system/hooks/useFeatureStatus';
import { useMemo } from 'react';
import { useTranslation } from 'react-i18next';
import ParamHrfHeight from './ParamHrfHeight';
import ParamHrfStrength from './ParamHrfStrength';
import ParamHrfToggle from './ParamHrfToggle';
import ParamHrfWidth from './ParamHrfWidth';
import ParamHrfHeight from './ParamHrfHeight';
import { useFeatureStatus } from 'features/system/hooks/useFeatureStatus';
const selector = createSelector(
stateSelector,
@ -22,15 +23,14 @@ const selector = createSelector(
);
export default function ParamHrfCollapse() {
const { t } = useTranslation();
const isHRFFeatureEnabled = useFeatureStatus('hrf').isFeatureEnabled;
const { hrfEnabled } = useAppSelector(selector);
const activeLabel = useMemo(() => {
if (hrfEnabled) {
return 'On';
} else {
return 'Off';
return t('common.on');
}
}, [hrfEnabled]);
}, [t, hrfEnabled]);
if (!isHRFFeatureEnabled) {
return null;

View File

@ -1,4 +1,4 @@
import { Flex } from '@chakra-ui/react';
import { Flex, Text } from '@chakra-ui/react';
import { createSelector } from '@reduxjs/toolkit';
import { stateSelector } from 'app/store/store';
import { useAppSelector } from 'app/store/storeHooks';
@ -14,6 +14,7 @@ import ParamSDXLRefinerStart from './SDXLRefiner/ParamSDXLRefinerStart';
import ParamSDXLRefinerSteps from './SDXLRefiner/ParamSDXLRefinerSteps';
import ParamUseSDXLRefiner from './SDXLRefiner/ParamUseSDXLRefiner';
import { useTranslation } from 'react-i18next';
import { useIsRefinerAvailable } from 'services/api/hooks/useIsRefinerAvailable';
const selector = createSelector(
stateSelector,
@ -31,6 +32,19 @@ const selector = createSelector(
const ParamSDXLRefinerCollapse = () => {
const { activeLabel, shouldUseSliders } = useAppSelector(selector);
const { t } = useTranslation();
const isRefinerAvailable = useIsRefinerAvailable();
if (!isRefinerAvailable) {
return (
<IAICollapse label={t('sdxl.refiner')} activeLabel={activeLabel}>
<Flex sx={{ justifyContent: 'center', p: 2 }}>
<Text sx={{ fontSize: 'sm', color: 'base.500', _dark: 'base.700' }}>
{t('models.noRefinerModelsInstalled')}
</Text>
</Flex>
</IAICollapse>
);
}
return (
<IAICollapse label={t('sdxl.refiner')} activeLabel={activeLabel}>

View File

@ -166,6 +166,7 @@ version = { attr = "invokeai.version.__version__" }
]
[tool.setuptools.package-data]
"invokeai.app.assets" = ["**/*.png"]
"invokeai.assets.fonts" = ["**/*.ttf"]
"invokeai.backend" = ["**.png"]
"invokeai.configs" = ["*.example", "**/*.yaml", "*.txt"]
@ -205,6 +206,7 @@ exclude = [
"build",
"dist",
"invokeai/frontend/web/node_modules/",
".venv*",
]
[tool.black]

View File

@ -0,0 +1,102 @@
# test that if the model's device changes while the lora is applied, the weights can still be restored
# test that LoRA patching works on both CPU and CUDA
import pytest
import torch
from invokeai.backend.model_management.lora import ModelPatcher
from invokeai.backend.model_management.models.lora import LoRALayer, LoRAModelRaw
@pytest.mark.parametrize(
"device",
[
"cpu",
pytest.param("cuda", marks=pytest.mark.skipif(not torch.cuda.is_available(), reason="requires CUDA device")),
],
)
@torch.no_grad()
def test_apply_lora(device):
"""Test the basic behavior of ModelPatcher.apply_lora(...). Check that patching and unpatching produce the correct
result, and that model/LoRA tensors are moved between devices as expected.
"""
linear_in_features = 4
linear_out_features = 8
lora_dim = 2
model = torch.nn.ModuleDict(
{"linear_layer_1": torch.nn.Linear(linear_in_features, linear_out_features, device=device, dtype=torch.float16)}
)
lora_layers = {
"linear_layer_1": LoRALayer(
layer_key="linear_layer_1",
values={
"lora_down.weight": torch.ones((lora_dim, linear_in_features), device="cpu", dtype=torch.float16),
"lora_up.weight": torch.ones((linear_out_features, lora_dim), device="cpu", dtype=torch.float16),
},
)
}
lora = LoRAModelRaw("lora_name", lora_layers)
lora_weight = 0.5
orig_linear_weight = model["linear_layer_1"].weight.data.detach().clone()
expected_patched_linear_weight = orig_linear_weight + (lora_dim * lora_weight)
with ModelPatcher.apply_lora(model, [(lora, lora_weight)], prefix=""):
# After patching, all LoRA layer weights should have been moved back to the cpu.
assert lora_layers["linear_layer_1"].up.device.type == "cpu"
assert lora_layers["linear_layer_1"].down.device.type == "cpu"
# After patching, the patched model should still be on its original device.
assert model["linear_layer_1"].weight.data.device.type == device
torch.testing.assert_close(model["linear_layer_1"].weight.data, expected_patched_linear_weight)
# After unpatching, the original model weights should have been restored on the original device.
assert model["linear_layer_1"].weight.data.device.type == device
torch.testing.assert_close(model["linear_layer_1"].weight.data, orig_linear_weight)
@pytest.mark.skipif(not torch.cuda.is_available(), reason="requires CUDA device")
@torch.no_grad()
def test_apply_lora_change_device():
"""Test that if LoRA patching is applied on the CPU, and then the patched model is moved to the GPU, unpatching
still behaves correctly.
"""
linear_in_features = 4
linear_out_features = 8
lora_dim = 2
# Initialize the model on the CPU.
model = torch.nn.ModuleDict(
{"linear_layer_1": torch.nn.Linear(linear_in_features, linear_out_features, device="cpu", dtype=torch.float16)}
)
lora_layers = {
"linear_layer_1": LoRALayer(
layer_key="linear_layer_1",
values={
"lora_down.weight": torch.ones((lora_dim, linear_in_features), device="cpu", dtype=torch.float16),
"lora_up.weight": torch.ones((linear_out_features, lora_dim), device="cpu", dtype=torch.float16),
},
)
}
lora = LoRAModelRaw("lora_name", lora_layers)
orig_linear_weight = model["linear_layer_1"].weight.data.detach().clone()
with ModelPatcher.apply_lora(model, [(lora, 0.5)], prefix=""):
# After patching, all LoRA layer weights should have been moved back to the cpu.
assert lora_layers["linear_layer_1"].up.device.type == "cpu"
assert lora_layers["linear_layer_1"].down.device.type == "cpu"
# After patching, the patched model should still be on the CPU.
assert model["linear_layer_1"].weight.data.device.type == "cpu"
# Move the model to the GPU.
assert model.to("cuda")
# After unpatching, the original model weights should have been restored on the GPU.
assert model["linear_layer_1"].weight.data.device.type == "cuda"
torch.testing.assert_close(model["linear_layer_1"].weight.data, orig_linear_weight, check_device=False)

View File

@ -13,10 +13,11 @@ def test_memory_snapshot_capture():
snapshots = [
MemorySnapshot(process_ram=1.0, vram=2.0, malloc_info=Struct_mallinfo2()),
MemorySnapshot(process_ram=1.0, vram=2.0, malloc_info=None),
MemorySnapshot(process_ram=1.0, vram=None, malloc_info=Struct_mallinfo2()),
MemorySnapshot(process_ram=1.0, vram=None, malloc_info=None),
MemorySnapshot(process_ram=1, vram=2, malloc_info=Struct_mallinfo2()),
MemorySnapshot(process_ram=1, vram=2, malloc_info=None),
MemorySnapshot(process_ram=1, vram=None, malloc_info=Struct_mallinfo2()),
MemorySnapshot(process_ram=1, vram=None, malloc_info=None),
None,
]
@ -26,10 +27,12 @@ def test_get_pretty_snapshot_diff(snapshot_1, snapshot_2):
"""Test that get_pretty_snapshot_diff() works with various combinations of missing MemorySnapshot fields."""
msg = get_pretty_snapshot_diff(snapshot_1, snapshot_2)
expected_lines = 1
if snapshot_1.vram is not None and snapshot_2.vram is not None:
expected_lines = 0
if snapshot_1 is not None and snapshot_2 is not None:
expected_lines += 1
if snapshot_1.malloc_info is not None and snapshot_2.malloc_info is not None:
expected_lines += 5
if snapshot_1.vram is not None and snapshot_2.vram is not None:
expected_lines += 1
if snapshot_1.malloc_info is not None and snapshot_2.malloc_info is not None:
expected_lines += 5
assert len(msg.splitlines()) == expected_lines

View File

@ -11,6 +11,7 @@ from invokeai.backend.model_management.model_load_optimizations import _no_op, s
(torch.nn.Conv1d, {"in_channels": 10, "out_channels": 20, "kernel_size": 3}),
(torch.nn.Conv2d, {"in_channels": 10, "out_channels": 20, "kernel_size": 3}),
(torch.nn.Conv3d, {"in_channels": 10, "out_channels": 20, "kernel_size": 3}),
(torch.nn.Embedding, {"num_embeddings": 10, "embedding_dim": 10}),
],
)
def test_skip_torch_weight_init_linear(torch_module, layer_args):
@ -36,12 +37,14 @@ def test_skip_torch_weight_init_linear(torch_module, layer_args):
# Check that reset_parameters is skipped while `skip_torch_weight_init()` is active.
assert reset_params_fn_during == _no_op
assert not torch.allclose(layer_before.weight, layer_during.weight)
assert not torch.allclose(layer_before.bias, layer_during.bias)
if hasattr(layer_before, "bias"):
assert not torch.allclose(layer_before.bias, layer_during.bias)
# Check that the original behavior is restored after `skip_torch_weight_init()` ends.
assert reset_params_fn_before is reset_params_fn_after
assert torch.allclose(layer_before.weight, layer_after.weight)
assert torch.allclose(layer_before.bias, layer_after.bias)
if hasattr(layer_before, "bias"):
assert torch.allclose(layer_before.bias, layer_after.bias)
def test_skip_torch_weight_init_restores_base_class_behavior():