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206 Commits

Author SHA1 Message Date
Millun Atluri
06296896a9 Update invokeai version 2023-08-10 22:23:41 -04:00
Millun Atluri
a7399aca0c Add new JS files for 3.0.2 build 2023-08-10 22:23:41 -04:00
Lincoln Stein
d1ea8b1e98 Two changes to command-line scripts (#4235)
During install testing I discovered two small problems in the
command-line scripts. These are fixed.

## What type of PR is this? (check all applicable)

- [X Bug Fix

## Have you discussed this change with the InvokeAI team?
- [X] Yes
- 
      
## Have you updated all relevant documentation?
- [X] Yes


## Description

- installer - use correct entry point for invokeai-configure
- model merge script - prevent error when `--root` not provided
2023-08-10 21:11:45 -04:00
Lincoln Stein
f851ad7ba0 Two changes to command-line scripts
- installer - use correct entry point for invokeai-configure
- model merge script - prevent error when `--root` not provided
2023-08-10 20:59:22 -04:00
StAlKeR7779
591838a84b Add support for LyCORIS IA3 format (#4234)
## What type of PR is this? (check all applicable)

- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission


## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [x] No

      
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No


## Description
Add support for LyCORIS IA3 format

## Related Tickets & Documents
- Closes #4229 

## Added/updated tests?

- [ ] Yes
- [x] No
2023-08-11 03:30:35 +03:00
Sergey Borisov
c0c2ab3dcf Format by black 2023-08-11 03:20:56 +03:00
Sergey Borisov
56023bc725 Add support for LyCORIS IA3 format 2023-08-11 02:08:08 +03:00
Sergey Borisov
2ef6a8995b Temporary force set vae to same precision as unet 2023-08-10 18:01:58 -04:00
Lincoln Stein
d0fee93aac round slider values to nice numbers 2023-08-10 18:00:45 -04:00
Lincoln Stein
1bfe9835cf clip cache settings to permissible values; remove redundant imports in install __init__ file 2023-08-10 18:00:45 -04:00
Kent Keirsey
8e7eae6cc7 Probe LoRAs that do not have the text encoder (#4181)
## What type of PR is this? (check all applicable)

- [X] Bug Fix

## Have you discussed this change with the InvokeAI team?
- [X] No - minor fix

      
## Have you updated all relevant documentation?
- [X] Yes

## Description

It turns out that some LoRAs do not have the text encoder model, and
this was causing the code that distinguishes the model base type during
model import to reject them as having an unknown base model. This PR
enables detection of these cases.
2023-08-10 17:50:20 -04:00
Kent Keirsey
f6522c8971 Merge branch 'main' into fix/detect-more-loras 2023-08-10 17:33:16 -04:00
Lincoln Stein
a969707e45 prevent vae: '' from crashing model 2023-08-10 17:33:04 -04:00
Kent Keirsey
6c8e898f09 Update scripts/verify_checkpoint_template.py
Co-authored-by: Eugene Brodsky <ebr@users.noreply.github.com>
2023-08-10 16:00:33 -04:00
Lincoln Stein
7bad9bcf53 update dependencies and docs to cu118 2023-08-10 15:19:12 -04:00
blessedcoolant
d42b45116f fix(ui): fix lora sort (#4222)
## What type of PR is this? (check all applicable)

- [ ] Refactor
- [ ] Feature
- [s] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission


## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:

      

## Description

was sorting with disabled at top of list instead of bottom

fixes #4217

## 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 #4217

## QA Instructions, Screenshots, Recordings

<!-- 
Please provide steps on how to test changes, any hardware or 
software specifications as well as any other pertinent information. 
-->

![image](https://github.com/invoke-ai/InvokeAI/assets/4822129/dd895b86-05de-4303-8674-9b181037abaa)
2023-08-10 21:04:28 +12:00
psychedelicious
d4812bbc8d Merge branch 'main' into fix/ui/fix-lora-sort 2023-08-10 19:00:26 +10:00
psychedelicious
3cd05cf6bf fix(ui): fix lora sort
was sorting with disabled at top of list instead of bottom

fixes #4217
2023-08-10 15:31:29 +10:00
blessedcoolant
2564301aeb fix(ui): fix canvas model switching (#4221)
## What type of PR is this? (check all applicable)

- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission


## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:

## Description

There was no check at all to see if the canvas had a valid model already
selected. The first model in the list was selected every time.

Now, we check if its valid. If not, we go through the logic to try and
pick the first valid model.

If there are no valid models, or there was a problem listing models, the
model selection is cleared.

## 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.
-->


- Closes #4125

## QA Instructions, Screenshots, Recordings

<!-- 
Please provide steps on how to test changes, any hardware or 
software specifications as well as any other pertinent information. 
-->

- Go to Canvas tab
- Select a model other than the first one in the list
- Go to a different tab
- Go back to Canvas tab
- The model should be the same as you selected
2023-08-10 17:29:41 +12:00
psychedelicious
da0efeaa7f fix(ui): fix canvas model switching
There was no check at all to see if the canvas had a valid model already selected. The first model in the list was selected every time.

Now, we check if its valid. If not, we go through the logic to try and pick the first valid model.

If there are no valid models, or there was a problem listing models, the model selection is cleared.
2023-08-10 15:20:37 +10:00
psychedelicious
49cce1eec6 feat: add app_version to image metadata 2023-08-10 14:22:39 +10:00
Martin Kristiansen
c8fbaf54b6 Add self.min, not self.max 2023-08-10 09:59:22 +10:00
Kevin Turner
f86d388786 refactor(diffusers_pipeline): remove unused pipeline methods 🚮 (#4175) 2023-08-09 15:19:27 -07:00
Lincoln Stein
cd2c688562 Merge branch 'main' into refactor/remove_unused_pipeline_methods 2023-08-09 17:26:09 -04:00
Lincoln Stein
2d29ac6f0d Add techjedi's image import script (#4171)
## What type of PR is this? (check all applicable)

- [X ] Feature

## Have you discussed this change with the InvokeAI team?
- [X] Yes

## Have you updated all relevant documentation?
- [X] Yes

## Description

This PR adds the `invokeai-import-images` script, which imports a
directory of 2.*.* -generated images into the current InvokeAI root
directory, preserving and converting their metadata. The script also
handles 3.* images.

Many thanks to @techjedi for writing this. This version differs from the
original in two minor respects:

1. It is installed as an `invokeai-import-images` command.
2. The prompts for image and database paths use file completion provided
by the `prompt_toolkit` library.
## To Test

1. Activate the virtual environment for the destination root to import
INTO
2. Run `invokeai-import-images`
3. Follow the prompts

## Related Tickets & Documents

This is a frequently-requested feature on Discord, but I couldn't find
an Issue.

## QA Instructions, Screenshots, Recordings

<!-- 
Please provide steps on how to test changes, any hardware or 
software specifications as well as any other pertinent information. 
-->

## Added/updated tests?

- [ ] Yes
- [X] No : but should in the future
2023-08-09 13:17:08 -04:00
Eugene Brodsky
2c2b731386 fix typo 2023-08-09 13:08:59 -04:00
Lincoln Stein
2f68a1a76c use Stalker's simplified LoRA vector-length detection code 2023-08-09 09:21:29 -04:00
Lincoln Stein
930e7bc754 Merge branch 'main' into feat/image-import-script 2023-08-09 08:54:56 -04:00
Lincoln Stein
7d4ace962a Merge branch 'main' into fix/detect-more-loras 2023-08-09 08:48:27 -04:00
Millun Atluri
06842f8e0a Update to 3.0.2rc1 2023-08-09 00:29:43 -04:00
Millun Atluri
c82da330db Pin safetensors to 0.3.1
Safetensors 0.3.2 does not ship an ARM64 wheel so install on macOS fails
2023-08-09 00:29:43 -04:00
Millun Atluri
628df4ec98 Add updated frontend html file 2023-08-09 00:29:43 -04:00
Millun Atluri
16b956616f Update version to 3.0.2 2023-08-09 00:29:43 -04:00
Millun Atluri
604cc17a3a Yarn build JS files 2023-08-09 00:29:43 -04:00
Millun Atluri
37c9b85549 Add slider for VRAM cache in configure script (#4133)
## What type of PR is this? (check all applicable)

- [X ] Feature

## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:

      
## Have you updated all relevant documentation?
- [ ] Yes
- [X] No - will be in release notes

## Description

On CUDA systems, this PR adds a new slider to the install-time configure
script for adjusting the VRAM cache and suggests a good starting value
based on the user's max VRAM (this is subject to verification).

On non-CUDA systems this slider is suppressed.

Please test on both CUDA and non-CUDA systems using:
```
invokeai-configure --root ~/invokeai-main/ --skip-sd --skip-support
```

To see and test the default values, move `invokeai.yaml` out of the way
before running.

**Note added 8 August 2023**

This PR also fixes the configure and model install scripts so that if
the window is too small to fit the user interface, the user will be
prompted to interactively resize the window and/or change font size
(with the option to give up). This will prevent `npyscreen` from
generating its horrible tracebacks.

## 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?
2023-08-09 12:27:54 +10:00
Millun Atluri
8b39b67ec7 Merge branch 'main' into feat/select-vram-in-config 2023-08-09 12:17:27 +10:00
Millun Atluri
a933977861 Pick correct config file for sdxl models (#4191)
## What type of PR is this? (check all applicable)

- [X] Bug Fix

## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:

      
## Have you updated all relevant documentation?
- [X Yes
- [ ] No


## Description

If `models.yaml` is cleared out for some reason, the model manager will
repopulate it by scanning `models`. However, this would fail with a
pydantic validation error if any SDXL checkpoint models were present
because the lack of logic to pick the correct configuration file. This
has now been added.
2023-08-09 11:16:48 +10:00
StAlKeR7779
dfb41d8461 Merge branch 'main' into bugfix/autodetect-sdxl-ckpt-config 2023-08-09 03:57:44 +03:00
Lincoln Stein
4d5169e16d Merge branch 'main' into feat/select-vram-in-config 2023-08-08 13:50:02 -04:00
Lincoln Stein
f56f19710d allow user to interactively resize screen before UI runs 2023-08-08 12:27:25 -04:00
Lincoln Stein
e77400ab62 remove deprecated options from config 2023-08-08 08:33:30 -07:00
Lincoln Stein
13347f6aec blackified 2023-08-08 08:33:30 -07:00
Lincoln Stein
a9bf387e5e turned on Pydantic validate_assignment 2023-08-08 08:33:30 -07:00
Lincoln Stein
8258c87a9f refrain from writing deprecated legacy options to invokeai.yaml 2023-08-08 08:33:30 -07:00
Lincoln Stein
1b1b399fd0 Fix crash when attempting to update a model (#4192)
## What type of PR is this? (check all applicable)

- [X] Bug Fix


## Have you discussed this change with the InvokeAI team?
- [X No, because small fix

      
## Have you updated all relevant documentation?
- [X] Yes

## Description

A logic bug was introduced in PR #4109 that caused Web-based model
updates to fail with a pydantic validation error. This corrects the
problem.

## Related Tickets & Documents

PR #4109
2023-08-08 10:54:27 -04:00
Lincoln Stein
a8d3e078c0 Merge branch 'main' into fix/detect-more-loras 2023-08-08 10:42:45 -04:00
Lincoln Stein
6ed7ba57dd Merge branch 'main' into bugfix/fix-model-updates 2023-08-08 09:05:25 -04:00
Kevin Turner
2b3b77a276 api(images): allow HEAD request on image/full (#4193) 2023-08-08 00:08:48 -07:00
Kevin Turner
8b8ec68b30 Merge branch 'main' into feat/image_http_head 2023-08-08 00:02:48 -07:00
psychedelicious
e20af5aef0 feat(ui): add LoRA support to SDXL linear UI
new graph modifier `addSDXLLoRasToGraph()` handles adding LoRA to the SDXL t2i and i2i graphs.
2023-08-08 15:02:00 +10:00
psychedelicious
57e8ec9488 chore(ui): lint/format 2023-08-08 12:53:47 +10:00
Mary Hipp
734a9e4271 invalidate board total when images deleted, only run date range logic if board has less than 20 images 2023-08-08 12:53:47 +10:00
Mary Hipp
fe924daee3 add option to disable multiselect 2023-08-08 12:53:47 +10:00
Lincoln Stein
750f09fbed blackify 2023-08-07 21:01:59 -04:00
Lincoln Stein
4df581811e add template verification script 2023-08-07 21:01:48 -04:00
Lincoln Stein
eb70bc2ae4 add scripts to create model templates and check whether they match 2023-08-07 21:00:47 -04:00
Kevin Turner
809705c30d api(images): allow HEAD request on image/full 2023-08-07 15:11:47 -07:00
Lincoln Stein
f0918edf98 improve error reporting on unrecognized lora models 2023-08-07 16:38:58 -04:00
Lincoln Stein
a846d82fa1 Add techedi code to avoid rendering prompt/seed with null
- Added techjedi github and real names
2023-08-07 16:29:46 -04:00
Lincoln Stein
22f7cf0638 add stalker's complicated but effective code for finding token vector length in LoRAs 2023-08-07 16:19:57 -04:00
Kevin Turner
25c669b1d6 Merge remote-tracking branch 'origin/main' into refactor/remove_unused_pipeline_methods 2023-08-07 13:03:10 -07:00
Kevin Turner
4367061b19 fix(ModelManager): fix overridden VAE with relative path (#4059) 2023-08-07 12:57:32 -07:00
Lincoln Stein
0fd13d3604 Merge branch 'main' into feat/select-vram-in-config 2023-08-07 15:51:59 -04:00
Lincoln Stein
72a3e776b2 fix logic error introduced in PR 4109 2023-08-07 15:38:22 -04:00
Lincoln Stein
af044007d5 pick correct config file for sdxl models 2023-08-07 15:19:49 -04:00
Kevin Turner
f272a44feb Merge branch 'main' into refactor/model_manager_instantiate 2023-08-07 10:59:28 -07:00
psychedelicious
8469d3e95a chore: black 2023-08-07 10:05:52 +10:00
Jonathan
ae17d01e1d Fix hue adjustment (#4182)
* Fix hue adjustment

Hue adjustment wasn't working correctly because color channels got swapped. This has now been fixed and we're using PIL rather than cv2 to do the RGBA->HSV->RGBA conversion. The range of hue adjustment is also the more typical 0..360 degrees.
2023-08-06 23:23:51 +00:00
Lincoln Stein
f3d3316558 probe LoRAs that do not have the text encoder 2023-08-06 16:00:53 -04:00
Lincoln Stein
5a6cefb0ea add backslash to end of incomplete windows paths 2023-08-06 12:34:35 -04:00
Lincoln Stein
1a6f5f0860 use backslash on Windows systems for autoadded delimiter 2023-08-06 12:29:31 -04:00
Kevin Turner
5bfd6cb66f Merge remote-tracking branch 'origin/main' into refactor/model_manager_instantiate
# Conflicts:
#	invokeai/backend/model_management/model_manager.py
2023-08-05 22:02:28 -07:00
Kevin Turner
59caff7ff0 refactor(diffusers_pipeline): remove unused img2img wrappers 🚮
invokeai.app no longer needs this as a single method, as it builds on latents2latents instead.
2023-08-05 21:50:52 -07:00
Kevin Turner
6487e7d906 refactor(diffusers_pipeline): remove unused ModelGroup 🚮
orphaned since #3550 removed the LazilyLoadedModelGroup code, probably unused since ModelCache took over responsibility for sequential offload somewhere around #3335.
2023-08-05 21:50:52 -07:00
Kevin Turner
77033eabd3 refactor(diffusers_pipeline): remove unused precision 🚮 2023-08-05 21:50:52 -07:00
Kevin Turner
b80abdd101 refactor(diffusers_pipeline): remove unused image_from_embeddings 🚮 2023-08-05 21:50:52 -07:00
Kevin Turner
006d782cc8 refactor(diffusers_pipeline): tidy imports 🚮 2023-08-05 21:50:52 -07:00
psychedelicious
d09dfc3e9b fix(api): use db_location instead of db_path_string
This may just be the SQLite memory sentinel value.
2023-08-06 14:09:04 +10:00
psychedelicious
66f524cae7 fix(mm): fix a lot of typing issues
Most fixes are just things being typed as `str` but having default values of `None`, but there are some minor logic changes.
2023-08-06 14:09:04 +10:00
psychedelicious
9ba50130a1 fix(api): fix db location types
The services all want strings instead of `Path`s; create variable for the string representation of the path provided by the config services.
2023-08-06 14:09:04 +10:00
psychedelicious
d4cf2d2666 fix(api): fix ApiDependencies.invoker types
ApiDependencies.invoker` provides typing for the API's services layer. Marking it `Optional` results in all the routes seeing it as optional, which is not good.

Instead of marking it optional to satisfy the initial assignment to `None`, we can just skip the initial assignment. This preserves the IDE hinting in API layer and is types-legal.
2023-08-06 14:09:04 +10:00
psychedelicious
b8b589c150 fix(nodes): fix hsl nodes rebase conflict 2023-08-06 09:57:49 +10:00
Kent Keirsey
d93900a8de Added HSL Nodes 2023-08-06 09:57:49 +10:00
Kevin Turner
7f4c387080 test(model_management): factor out name strings 2023-08-05 15:46:46 -07:00
Kevin Turner
80876bbbd1 Merge remote-tracking branch 'origin/refactor/model_manager_instantiate' into refactor/model_manager_instantiate 2023-08-05 15:25:05 -07:00
Kevin Turner
7a4ff4c089 Merge branch 'main' into refactor/model_manager_instantiate 2023-08-05 15:23:38 -07:00
Kevin Turner
44bf308192 test(model_management): add a couple tests for _get_model_path 2023-08-05 15:22:23 -07:00
Lincoln Stein
12e51c84ae blackified 2023-08-05 14:26:16 -07:00
Lincoln Stein
b2eb83deff add docs 2023-08-05 14:26:16 -07:00
Lincoln Stein
0ccc3b509e add techjedi's import script, with some filecompletion tweaks 2023-08-05 14:26:16 -07:00
Lincoln Stein
4043a4c21c blackified 2023-08-05 12:44:58 -04:00
Lincoln Stein
c8ceb96091 add docs 2023-08-05 12:26:52 -04:00
Lincoln Stein
83f75750a9 add techjedi's import script, with some filecompletion tweaks 2023-08-05 12:19:24 -04:00
Jonathan
dc96a3e79d Fix random number generator
Passing in seed=0 is not equivalent to seed=None. The latter will get a new seed from entropy in the OS, and that's what we should be using.
2023-08-06 00:29:08 +10:00
Lincoln Stein
c076f1397e rebuild frontend 2023-08-05 14:40:42 +10:00
Lincoln Stein
2568aafc0b bump version number so that pip updates work 2023-08-05 14:40:42 +10:00
Kevin Turner
65ed224bfc Merge branch 'main' into refactor/model_manager_instantiate 2023-08-04 21:34:38 -07:00
psychedelicious
b6e369c745 chore: black 2023-08-05 12:28:35 +10:00
gogurtenjoyer
ecabfc252b devices.py - Update MPS FP16 check to account for upcoming MacOS Sonoma
float16 doesn't seem to work on MacOS Sonoma due to further changes with Metal. This'll default back to float32 for Sonoma users.
2023-08-05 12:28:35 +10:00
psychedelicious
da96a41103 Merge branch 'main' into feat/select-vram-in-config 2023-08-05 12:11:50 +10:00
Lincoln Stein
d162b78767 fix broken civitai example link 2023-08-05 12:10:52 +10:00
psychedelicious
eb6c317f04 chore: black 2023-08-05 12:05:24 +10:00
psychedelicious
6d7223238f fix: fix typo in message 2023-08-05 12:05:24 +10:00
Damian Stewart
8607d124c5 improve message about the consequences of the --ignore_missing_core_models flag 2023-08-05 12:05:24 +10:00
Damian Stewart
23497bf759 add --ignore_missing_core_models CLI flag to bypass checking for missing core models 2023-08-05 12:05:24 +10:00
Kevin Turner
b10cf20eb1 Merge branch 'main' into refactor/model_manager_instantiate
# Conflicts:
#	invokeai/backend/model_management/model_manager.py
2023-08-04 18:28:18 -07:00
StAlKeR7779
3d93851dba Installer should download fp16 models if user has specified 'auto' in config (#4129)
## 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

At install time, when the user's config specified "auto" precision, the
installer was downloading the fp32 models even when an fp16 model would
be appropriate for the OS.


## 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.
-->

- Closes #4127
2023-08-05 01:56:25 +03:00
StAlKeR7779
9bacd77a79 Merge branch 'main' into bugfix/fp16-models 2023-08-05 01:42:43 +03:00
Lincoln Stein
1b158f62c4 resolve vae overrides correctly 2023-08-04 18:24:47 -04:00
Lincoln Stein
6ad565d84c folded in changes from 4099 2023-08-04 18:24:47 -04:00
Sergey Borisov
04229082d6 Provide ti name from model manager, not from ti itself 2023-08-04 18:24:47 -04:00
Lincoln Stein
03c27412f7 [WIP] Add sdxl lora support (#4097)
## What type of PR is this? (check all applicable)

- [ ] Refactor
- [x] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission


## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:

      
## Have you updated all relevant documentation?
- [ ] Yes
- [x] No


## Description
Add lora loading for sdxl.
NOT TESTED - I run only 2 loras, please check more(including lycoris if
they already exists).

## QA Instructions, Screenshots, Recordings
https://civitai.com/models/118536/voxel-xl

![image](https://github.com/invoke-ai/InvokeAI/assets/7768370/76a6abff-cb0a-43b4-b779-a0b0e5b46e56)


## Added/updated tests?

- [ ] Yes
- [x] No
2023-08-04 16:12:22 -04:00
Sergey Borisov
f0613bb0ef Fix merge conflict resolve - restore full/diff layer support 2023-08-04 19:53:27 +03:00
StAlKeR7779
0e9f92b868 Merge branch 'main' into feat/sdxl_lora 2023-08-04 19:22:13 +03:00
psychedelicious
7d0cc6ec3f chore: black 2023-08-05 02:04:22 +10:00
Sergey Borisov
2f8b928486 Add support for diff/full lora layers 2023-08-05 02:04:22 +10:00
StAlKeR7779
0d3c27f46c Fix typo
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
2023-08-04 11:44:56 -04:00
Sergey Borisov
cff91f06d3 Add lora apply in sdxl l2l node 2023-08-04 11:44:56 -04:00
Lincoln Stein
1d5d187ba1 model probe detects sdxl lora models 2023-08-04 11:44:56 -04:00
Sergey Borisov
1ac14a1e43 add sdxl lora support 2023-08-04 11:44:56 -04:00
Mary Hipp
cfc3a20565 autoAddBoardId should always be defined 2023-08-04 22:19:11 +10:00
Lincoln Stein
05ae4e283c Stop checking for unet/model.onnx when a model_index.json is detected (#4132)
## What type of PR is this? (check all applicable)

- [ ] Refactor
- [ ] Feature
- [x] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission


## Have you discussed this change with the InvokeAI team?
- [x] Yes
- [ ] No, because:

      
## Have you updated all relevant documentation?
- [ ] Yes
- [ ] No


## Description


## 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?
2023-08-03 22:10:37 -04:00
Lincoln Stein
f06fee4581 Merge branch 'main' into remove-onnx-model-check-from-pipeline-download 2023-08-03 22:02:05 -04:00
Lincoln Stein
9091e19de8 Add execution stat reporting after each invocation (#4125)
## What type of PR is this? (check all applicable)

- [X] Feature


## Have you discussed this change with the InvokeAI team?
- [X] Yes
- [ ] No, because:

      
## Have you updated all relevant documentation?
- [X] Yes
- [ ] No

## Description

This PR adds execution time and VRAM usage reporting to each graph
invocation. The log output will look like this:

```
[2023-08-02 18:03:04,507]::[InvokeAI]::INFO --> Graph stats: c7764585-9c68-4d9d-a199-55e8186790f3                                                                                              
[2023-08-02 18:03:04,507]::[InvokeAI]::INFO --> Node                 Calls  Seconds  VRAM Used                                                                                                 
[2023-08-02 18:03:04,507]::[InvokeAI]::INFO --> main_model_loader        1   0.005s     0.01G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> clip_skip                1   0.004s     0.01G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> compel                   2   0.512s     0.26G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> rand_int                 1   0.001s     0.01G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> range_of_size            1   0.001s     0.01G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> iterate                  1   0.001s     0.01G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> metadata_accumulator     1   0.002s     0.01G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> noise                    1   0.002s     0.01G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> t2l                      1   3.541s     1.93G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> l2i                      1   0.679s     0.58G                                                                                                  
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> TOTAL GRAPH EXECUTION TIME:  4.749s                                                                                                            
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> Current VRAM utilization 0.01G                                                                                                                 
```
On systems without CUDA, the VRAM stats are not printed.

The current implementation keeps track of graph ids separately so will
not be confused when several graphs are executing in parallel. It
handles exceptions, and it is integrated into the app framework by
defining an abstract base class and storing an implementation instance
in `InvocationServices`.
2023-08-03 20:05:21 -04:00
Lincoln Stein
0a0b7141af Merge branch 'main' into feat/execution-stats 2023-08-03 19:49:00 -04:00
Lincoln Stein
1deca89fde Merge branch 'main' into feat/select-vram-in-config 2023-08-03 19:27:58 -04:00
Lincoln Stein
446fb4a438 blackify 2023-08-03 19:24:23 -04:00
Lincoln Stein
ab5d938a1d use variant instead of revision 2023-08-03 19:23:52 -04:00
Brandon
9942af756a Merge branch 'main' into remove-onnx-model-check-from-pipeline-download 2023-08-03 10:10:51 -04:00
Lincoln Stein
06742faca7 Merge branch 'feat/execution-stats' of github.com:invoke-ai/InvokeAI into feat/execution-stats 2023-08-03 08:48:05 -04:00
Lincoln Stein
d2bddf7f91 tweak formatting to accommodate longer runtimes 2023-08-03 08:47:56 -04:00
Kevin Turner
91ebf9f76e Merge branch 'main' into refactor/model_manager_instantiate 2023-08-02 19:01:21 -07:00
psychedelicious
bf94412d14 feat: add multi-select to gallery
multi-select actions include:
- drag to board to move all to that board
- right click to add all to board or delete all

backend changes:
- add routes for changing board for list of image names, deleting list of images
- change image-specific routes to `images/i/{image_name}` to not clobber other routes (like `images/upload`, `images/delete`)
- subclass pydantic `BaseModel` as `BaseModelExcludeNull`, which excludes null values when calling `dict()` on the model. this fixes inconsistent types related to JSON parsing null values into `null` instead of `undefined`
- remove `board_id` from `remove_image_from_board`

frontend changes:
- multi-selection stuff uses `ImageDTO[]` as payloads, for dnd and other mutations. this gives us access to image `board_id`s when hitting routes, and enables efficient cache updates.
- consolidate change board and delete image modals to handle single and multiples
- board totals are now re-fetched on mutation and not kept in sync manually - was way too tedious to do this
- fixed warning about nested `<p>` elements
- closes #4088 , need to handle case when `autoAddBoardId` is `"none"`
- add option to show gallery image delete button on every gallery image

frontend refactors/organisation:
- make typegen script js instead of ts
- enable `noUncheckedIndexedAccess` to help avoid bugs when indexing into arrays, many small changes needed to satisfy TS after this
- move all image-related endpoints into `endpoints/images.ts`, its a big file now, but this fixes a number of circular dependency issues that were otherwise felt impossible to resolve
2023-08-03 11:46:59 +10:00
Lincoln Stein
e080fd1e08 blackify 2023-08-03 11:25:20 +10:00
Lincoln Stein
eeef1e08f8 restore ability to convert merged inpaint .safetensors files 2023-08-03 11:25:20 +10:00
Mary Hipp
b3b94b5a8d use correct prop 2023-08-03 11:01:21 +10:00
Mary Hipp
5c9787c145 add project-id header to requests 2023-08-03 11:01:21 +10:00
psychedelicious
cf72eba15c Merge branch 'main' into feat/execution-stats 2023-08-03 10:53:25 +10:00
psychedelicious
a6f9396a30 fix(db): retrieve metadata even when no session_id
this was unnecessarily skipped if there was no `session_id`.
2023-08-03 10:43:44 +10:00
Brandon Rising
118d5b387b deploy: refactor github workflows
Currently we use some workflow trigger conditionals to run either a real test workflow (installing the app and running it) or a fake workflow, disguised as the real one, that just auto-passes.

This change refactors the workflow to use a single workflow that can be skipped, using another github action to determine which things to run depending on the paths changed.
2023-08-03 10:32:50 +10:00
Kevin Turner
02d2cc758d Merge branch 'main' into refactor/model_manager_instantiate 2023-08-02 17:11:23 -07:00
Millun Atluri
db545f8801 chore: move PR template to .github/ dir (#4060)
## What type of PR is this? (check all applicable)

- [x] Refactor

## Have you discussed this change with the InvokeAI team?
- [x] No, because it's pretty minor

      
## Have you updated all relevant documentation?
- [x] No


## Description

This PR just moves the PR template to within the `.github/` directory
leading to a overall minimal project structure.

## Added/updated tests?

- [x] No : because this change doesn't affect or need a separate test
2023-08-03 10:08:17 +10:00
Millun Atluri
b0d72b15b3 Merge branch 'main' into patch-1 2023-08-03 10:04:47 +10:00
Damian Stewart
4e0949fa55 fix .swap() by reverting improperly merged @classmethod change 2023-08-03 10:00:43 +10:00
psychedelicious
f028342f5b Merge branch 'main' into patch-1 2023-08-03 10:00:10 +10:00
Eugene Brodsky
7021467048 (ci) do not install all dependencies when running static checks (#4036)
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
2023-08-02 23:46:02 +00:00
Kevin Brack
26ef5249b1 guard board switching in board context menu 2023-08-03 09:18:46 +10:00
Kevin Brack
87424be95d block auto add board change during generation. Switch condition to isProcessing 2023-08-03 09:18:46 +10:00
Kevin Brack
366952f810 fix localization 2023-08-03 09:18:46 +10:00
Kevin Brack
450e95de59 auto change board waiting for isReady 2023-08-03 09:18:46 +10:00
Kevin Brack
0ba8a0ea6c Board assignment changing on click 2023-08-03 09:18:46 +10:00
Lincoln Stein
f4981f26d5 Merge branch 'main' into bugfix/fp16-models 2023-08-02 19:17:55 -04:00
Lincoln Stein
6bc21984c6 Merge branch 'main' into feat/select-vram-in-config 2023-08-02 19:12:43 -04:00
Lincoln Stein
43d6312587 Merge branch 'main' into feat/execution-stats 2023-08-02 19:12:08 -04:00
psychedelicious
0d125bf3e4 chore: delete nonfunctional shell.nix
This was for v2.3 and is very broken. See `flake.nix`, thanks to @zopieux
2023-08-03 09:09:40 +10:00
Lincoln Stein
921ccad04d added stats service to the cli_app startup 2023-08-02 18:41:43 -04:00
Lincoln Stein
05c9207e7b Merge branch 'feat/execution-stats' of github.com:invoke-ai/InvokeAI into feat/execution-stats 2023-08-02 18:31:33 -04:00
Lincoln Stein
3fc789a7ee fix unit tests 2023-08-02 18:31:10 -04:00
Lincoln Stein
008362918e Merge branch 'main' into feat/execution-stats 2023-08-02 18:15:51 -04:00
Lincoln Stein
8fc75a71ee integrate correctly into app API and add features
- Create abstract base class InvocationStatsServiceBase
- Store InvocationStatsService in the InvocationServices object
- Collect and report stats on simultaneous graph execution
  independently for each graph id
- Track VRAM usage for each node
- Handle cancellations and other exceptions gracefully
2023-08-02 18:10:52 -04:00
Brandon
82d259f43b Merge branch 'main' into remove-onnx-model-check-from-pipeline-download 2023-08-02 16:35:46 -04:00
Lincoln Stein
ec48779080 blackify 2023-08-02 14:28:19 -04:00
Lincoln Stein
bc20fe4cb5 Merge branch 'main' into feat/select-vram-in-config 2023-08-02 14:27:17 -04:00
Lincoln Stein
5de42be4a6 reduce VRAM cache default; take max RAM from system 2023-08-02 14:27:13 -04:00
Lincoln Stein
818c55cd53 Refactor/cleanup root detection (#4102)
## What type of PR is this? (check all applicable)

- [ X] Refactor
- [ ] Feature
- [ ] Bug Fix
- [ ] Optimization
- [ ] Documentation Update
- [ ] Community Node Submission


## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ X] No, because: invisible change

      
## Have you updated all relevant documentation?
- [ X] Yes
- [ ] No


## Description

There was a problem in 3.0.1 with root resolution. If INVOKEAI_ROOT were
set to "." (or any relative path), then the location of root would
change if the code did an os.chdir() after config initialization. I
fixed this in a quick and dirty way for 3.0.1.post3.

This PR cleans up the code with a little refactoring.

## 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?
2023-08-02 10:36:12 -04:00
Lincoln Stein
0db1e97119 Merge branch 'main' into refactor/cleanup-root-detection 2023-08-02 09:46:46 -04:00
Lincoln Stein
29ac252501 blackify 2023-08-02 09:44:06 -04:00
Lincoln Stein
880727436c fix default vram cache size calculation 2023-08-02 09:43:52 -04:00
Lincoln Stein
77c5c18542 add slider for VRAM cache 2023-08-02 09:11:24 -04:00
Brandon Rising
ed76250dba Stop checking for unet/model.onnx when a model_index.json is detected 2023-08-02 07:21:21 -04:00
Lincoln Stein
4d22cafdad Installer should download fp16 models if user has specified 'auto' in config
- Closes #4127
2023-08-01 22:06:27 -04:00
Kevin Turner
1f9e984b0d Merge branch 'main' into refactor/model_manager_instantiate 2023-08-01 16:49:39 -07:00
Lincoln Stein
8a4e5f73aa reset stats on exception 2023-08-01 19:39:42 -04:00
psychedelicious
4599575e65 fix(ui): use const for wsProtocol, lint 2023-08-02 09:26:20 +10:00
Zerdoumi
242d860a47 fix https/wss behind reverse proxy 2023-08-02 09:26:20 +10:00
Lincoln Stein
0c1a7e72d4 Fix manual installation documentation (#4107)
## What type of PR is this? (check all applicable)

- [ ] Refactor
- [ ] Feature
- [ ]X Bug Fix
- [ ] Optimization
- [ X] Documentation Update
- [ ] Community Node Submission


## Have you discussed this change with the InvokeAI team?
- [ ] Yes
- [ X] No, because: obvious problem

      
## Have you updated all relevant documentation?
- [ X] Yes
- [ ] No


## Description

The manual installation documentation in both README.md and
020_MANUAL_INSTALL give an incomplete `invokeai-configure` command which
leaves out the path to the root directory to create. As a result, the
invokeai root directory gets created in the user’s home directory, even
if they intended it to be placed somewhere else.

This is a fairly important issue.
2023-08-01 18:55:53 -04:00
Lincoln Stein
11a44b944d fix installation documentation 2023-08-01 18:52:17 -04:00
Lincoln Stein
fd7b842419 add execution stat reporting after each invocation 2023-08-01 17:44:09 -04:00
Kevin Turner
5998509888 Merge branch 'main' into refactor/model_manager_instantiate 2023-08-01 11:09:43 -07:00
Alexandre Macabies
403a6e88f2 fix: flake: add opencv with CUDA, new patchmatch dependency. 2023-08-01 23:56:41 +10:00
blessedcoolant
c9d452b9d4 fix: Model Manager Tab Issues (#4087)
## What type of PR is this? (check all applicable)

- [x] Refactor
- [x] Feature
- [x] Bug Fix
- [?] Optimization


## Have you discussed this change with the InvokeAI team?
- [x] No

     
## Description

- Fixed filter type select using `images` instead of `all` -- Probably
some merge conflict.
- Added loading state for model lists. Handy when the model list takes
longer than a second for any reason to fetch. Better to show this than
an empty screen.
- Refactored the render model list function so we modify the display
component in one area rather than have repeated code.

### Other Issues

- The list can get a bit laggy on initial load when you have a hundreds
of models / loras. This needs to be fixed. Will make another PR for
this.
2023-08-02 01:06:53 +12:00
blessedcoolant
dcc274a2b9 feat: Make ModelListWrapper instead of rendering conditionally 2023-08-01 22:50:10 +10:00
blessedcoolant
f404669831 fix: Rename loading vars for consistency 2023-08-01 22:42:05 +10:00
blessedcoolant
ce687b28ef fix: Model Manager Tab Issues 2023-08-01 22:41:32 +10:00
psychedelicious
7292d89108 Merge branch 'main' into refactor/cleanup-root-detection 2023-08-01 22:14:56 +10:00
Lincoln Stein
437f45a97f do not depend on existence of /tmp directory 2023-08-01 00:41:35 -04:00
Lincoln Stein
13ef33ed64 Merge branch 'refactor/cleanup-root-detection' of github.com:invoke-ai/InvokeAI into refactor/cleanup-root-detection 2023-08-01 00:19:55 -04:00
Lincoln Stein
86d8b46fca Merge branch 'main' into refactor/cleanup-root-detection 2023-08-01 00:14:26 -04:00
Lincoln Stein
df53b62048 get rid of dangling debug statements 2023-07-31 22:39:11 -04:00
Lincoln Stein
55d3f04476 additional refactoring 2023-07-31 22:36:11 -04:00
Lincoln Stein
72ebe2ce68 refactor root directory detection to be cleaner 2023-07-31 22:30:06 -04:00
Lincoln Stein
7cd8b2f207 Refactor root detection code 2023-07-31 21:15:44 -04:00
Kevin Turner
bacdf985f1 doc(model_manager): docstrings 2023-07-31 09:16:32 -07:00
Kevin Turner
e3519052ae Merge remote-tracking branch 'origin/main' into refactor/model_manager_instantiate 2023-07-31 08:46:09 -07:00
Kevin Turner
adfd1e52f4 refactor(model_manager): avoid copy/paste logic 2023-07-30 11:53:12 -07:00
Kevin Turner
0e48c98330 Merge remote-tracking branch 'origin/main' into refactor/model_manager_instantiate
# Conflicts:
#	invokeai/backend/model_management/model_manager.py
2023-07-30 11:33:13 -07:00
Kevin Turner
ff1c40747e lint: formatting 2023-07-29 20:02:31 -07:00
Kevin Turner
dbfd1bcb5e Merge branch 'main' into refactor/model_manager_instantiate 2023-07-29 19:53:21 -07:00
Kevin Turner
ccceb32a85 lint: formatting 2023-07-29 11:50:04 -07:00
Kevin Turner
21617e60e1 Merge remote-tracking branch 'origin/main' into refactor/model_manager_instantiate 2023-07-29 08:21:26 -07:00
Saurav Maheshkar
35dd58e273 chore: move PR template to .github/ dir 2023-07-29 12:59:56 +05:30
Kevin Turner
86b8b69e88 internal(ModelManager): add instantiate method 2023-07-28 22:30:25 -07:00
Kevin Turner
bc9a5038fd refactor(ModelManager): factor out get_model_path 2023-07-28 22:29:36 -07:00
Kevin Turner
b163ae6a4d refactor(ModelManager): factor out get_model_config 2023-07-28 21:30:20 -07:00
Kevin Turner
dca685ac25 refactor(ModelManager): refactor rescan-on-miss to exists() method 2023-07-28 21:11:00 -07:00
Kevin Turner
e70bedba7d refactor(ModelManager): factor out _get_implementation method 2023-07-28 21:03:27 -07:00
212 changed files with 6320 additions and 4234 deletions

View File

@@ -1,13 +1,14 @@
name: Black # TODO: add isort and flake8 later
name: style checks
# just formatting for now
# TODO: add isort and flake8 later
on:
pull_request: {}
pull_request:
push:
branches: master
tags: "*"
branches: main
jobs:
test:
black:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v3
@@ -19,8 +20,7 @@ jobs:
- name: Install dependencies with pip
run: |
pip install --upgrade pip wheel
pip install .[test]
pip install black
# - run: isort --check-only .
- run: black --check .

View File

@@ -1,50 +0,0 @@
name: Test invoke.py pip
# This is a dummy stand-in for the actual tests
# we don't need to run python tests on non-Python changes
# But PRs require passing tests to be mergeable
on:
pull_request:
paths:
- '**'
- '!pyproject.toml'
- '!invokeai/**'
- '!tests/**'
- 'invokeai/frontend/web/**'
merge_group:
workflow_dispatch:
concurrency:
group: ${{ github.workflow }}-${{ github.head_ref || github.run_id }}
cancel-in-progress: true
jobs:
matrix:
if: github.event.pull_request.draft == false
strategy:
matrix:
python-version:
- '3.10'
pytorch:
- linux-cuda-11_7
- linux-rocm-5_2
- linux-cpu
- macos-default
- windows-cpu
include:
- pytorch: linux-cuda-11_7
os: ubuntu-22.04
- pytorch: linux-rocm-5_2
os: ubuntu-22.04
- pytorch: linux-cpu
os: ubuntu-22.04
- pytorch: macos-default
os: macOS-12
- pytorch: windows-cpu
os: windows-2022
name: ${{ matrix.pytorch }} on ${{ matrix.python-version }}
runs-on: ${{ matrix.os }}
steps:
- name: skip
run: echo "no build required"

View File

@@ -3,16 +3,7 @@ on:
push:
branches:
- 'main'
paths:
- 'pyproject.toml'
- 'invokeai/**'
- '!invokeai/frontend/web/**'
pull_request:
paths:
- 'pyproject.toml'
- 'invokeai/**'
- 'tests/**'
- '!invokeai/frontend/web/**'
types:
- 'ready_for_review'
- 'opened'
@@ -65,10 +56,23 @@ jobs:
id: checkout-sources
uses: actions/checkout@v3
- name: Check for changed python files
id: changed-files
uses: tj-actions/changed-files@v37
with:
files_yaml: |
python:
- 'pyproject.toml'
- 'invokeai/**'
- '!invokeai/frontend/web/**'
- 'tests/**'
- name: set test prompt to main branch validation
if: steps.changed-files.outputs.python_any_changed == 'true'
run: echo "TEST_PROMPTS=tests/validate_pr_prompt.txt" >> ${{ matrix.github-env }}
- name: setup python
if: steps.changed-files.outputs.python_any_changed == 'true'
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python-version }}
@@ -76,6 +80,7 @@ jobs:
cache-dependency-path: pyproject.toml
- name: install invokeai
if: steps.changed-files.outputs.python_any_changed == 'true'
env:
PIP_EXTRA_INDEX_URL: ${{ matrix.extra-index-url }}
run: >
@@ -83,6 +88,7 @@ jobs:
--editable=".[test]"
- name: run pytest
if: steps.changed-files.outputs.python_any_changed == 'true'
id: run-pytest
run: pytest

View File

@@ -161,7 +161,7 @@ the command `npm install -g yarn` if needed)
_For Windows/Linux with an NVIDIA GPU:_
```terminal
pip install "InvokeAI[xformers]" --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu117
pip install "InvokeAI[xformers]" --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu118
```
_For Linux with an AMD GPU:_
@@ -184,8 +184,9 @@ the command `npm install -g yarn` if needed)
6. Configure InvokeAI and install a starting set of image generation models (you only need to do this once):
```terminal
invokeai-configure
invokeai-configure --root .
```
Don't miss the dot at the end!
7. Launch the web server (do it every time you run InvokeAI):
@@ -193,15 +194,9 @@ the command `npm install -g yarn` if needed)
invokeai-web
```
8. Build Node.js assets
8. Point your browser to http://localhost:9090 to bring up the web interface.
```terminal
cd invokeai/frontend/web/
yarn vite build
```
9. Point your browser to http://localhost:9090 to bring up the web interface.
10. Type `banana sushi` in the box on the top left and click `Invoke`.
9. Type `banana sushi` in the box on the top left and click `Invoke`.
Be sure to activate the virtual environment each time before re-launching InvokeAI,
using `source .venv/bin/activate` or `.venv\Scripts\activate`.
@@ -311,13 +306,30 @@ InvokeAI. The second will prepare the 2.3 directory for use with 3.0.
You may now launch the WebUI in the usual way, by selecting option [1]
from the launcher script
#### Migration Caveats
#### Migrating Images
The migration script will migrate your invokeai settings and models,
including textual inversion models, LoRAs and merges that you may have
installed previously. However it does **not** migrate the generated
images stored in your 2.3-format outputs directory. You will need to
manually import selected images into the 3.0 gallery via drag-and-drop.
images stored in your 2.3-format outputs directory. To do this, you
need to run an additional step:
1. From a working InvokeAI 3.0 root directory, start the launcher and
enter menu option [8] to open the "developer's console".
2. At the developer's console command line, type the command:
```bash
invokeai-import-images
```
3. This will lead you through the process of confirming the desired
source and destination for the imported images. The images will
appear in the gallery board of your choice, and contain the
original prompt, model name, and other parameters used to generate
the image.
(Many kudos to **techjedi** for contributing this script.)
## Hardware Requirements

View File

@@ -264,7 +264,7 @@ experimental versions later.
you can create several levels of subfolders and drop your models into
whichever ones you want.
- ***Autoimport FolderLICENSE***
- ***LICENSE***
At the bottom of the screen you will see a checkbox for accepting
the CreativeML Responsible AI Licenses. You need to accept the license
@@ -471,7 +471,7 @@ Then type the following commands:
=== "NVIDIA System"
```bash
pip install torch torchvision --force-reinstall --extra-index-url https://download.pytorch.org/whl/cu117
pip install torch torchvision --force-reinstall --extra-index-url https://download.pytorch.org/whl/cu118
pip install xformers
```

View File

@@ -148,7 +148,7 @@ manager, please follow these steps:
=== "CUDA (NVidia)"
```bash
pip install "InvokeAI[xformers]" --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu117
pip install "InvokeAI[xformers]" --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu118
```
=== "ROCm (AMD)"
@@ -192,8 +192,10 @@ manager, please follow these steps:
your outputs.
```terminal
invokeai-configure
invokeai-configure --root .
```
Don't miss the dot at the end of the command!
The script `invokeai-configure` will interactively guide you through the
process of downloading and installing the weights files needed for InvokeAI.
@@ -225,12 +227,6 @@ manager, please follow these steps:
!!! warning "Make sure that the virtual environment is activated, which should create `(.venv)` in front of your prompt!"
=== "CLI"
```bash
invokeai
```
=== "local Webserver"
```bash
@@ -243,6 +239,12 @@ manager, please follow these steps:
invokeai --web --host 0.0.0.0
```
=== "CLI"
```bash
invokeai
```
If you choose the run the web interface, point your browser at
http://localhost:9090 in order to load the GUI.
@@ -310,7 +312,7 @@ installation protocol (important!)
=== "CUDA (NVidia)"
```bash
pip install -e .[xformers] --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu117
pip install -e .[xformers] --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu118
```
=== "ROCm (AMD)"
@@ -354,7 +356,7 @@ you can do so using this unsupported recipe:
mkdir ~/invokeai
conda create -n invokeai python=3.10
conda activate invokeai
pip install InvokeAI[xformers] --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu117
pip install InvokeAI[xformers] --use-pep517 --extra-index-url https://download.pytorch.org/whl/cu118
invokeai-configure --root ~/invokeai
invokeai --root ~/invokeai --web
```

View File

@@ -34,11 +34,11 @@ directly from NVIDIA. **Do not try to install Ubuntu's
nvidia-cuda-toolkit package. It is out of date and will cause
conflicts among the NVIDIA driver and binaries.**
Go to [CUDA Toolkit 11.7
Downloads](https://developer.nvidia.com/cuda-11-7-0-download-archive),
and use the target selection wizard to choose your operating system,
hardware platform, and preferred installation method (e.g. "local"
versus "network").
Go to [CUDA Toolkit
Downloads](https://developer.nvidia.com/cuda-downloads), and use the
target selection wizard to choose your operating system, hardware
platform, and preferred installation method (e.g. "local" versus
"network").
This will provide you with a downloadable install file or, depending
on your choices, a recipe for downloading and running a install shell
@@ -61,7 +61,7 @@ Runtime Site](https://developer.nvidia.com/nvidia-container-runtime)
When installing torch and torchvision manually with `pip`, remember to provide
the argument `--extra-index-url
https://download.pytorch.org/whl/cu117` as described in the [Manual
https://download.pytorch.org/whl/cu118` as described in the [Manual
Installation Guide](020_INSTALL_MANUAL.md).
## :simple-amd: ROCm

View File

@@ -124,7 +124,7 @@ installation. Examples:
invokeai-model-install --list controlnet
# (install the model at the indicated URL)
invokeai-model-install --add http://civitai.com/2860
invokeai-model-install --add https://civitai.com/api/download/models/128713
# (delete the named model)
invokeai-model-install --delete sd-1/main/analog-diffusion
@@ -170,4 +170,4 @@ elsewhere on disk and they will be autoimported. You can also create
subfolders and organize them as you wish.
The location of the autoimport directories are controlled by settings
in `invokeai.yaml`. See [Configuration](../features/CONFIGURATION.md).
in `invokeai.yaml`. See [Configuration](../features/CONFIGURATION.md).

View File

@@ -28,18 +28,21 @@ command line, then just be sure to activate it's virtual environment.
Then run the following three commands:
```sh
pip install xformers==0.0.16rc425
pip install triton
pip install xformers~=0.0.19
pip install triton # WON'T WORK ON WINDOWS
python -m xformers.info output
```
The first command installs `xformers`, the second installs the
`triton` training accelerator, and the third prints out the `xformers`
installation status. If all goes well, you'll see a report like the
installation status. On Windows, please omit the `triton` package,
which is not available on that platform.
If all goes well, you'll see a report like the
following:
```sh
xFormers 0.0.16rc425
xFormers 0.0.20
memory_efficient_attention.cutlassF: available
memory_efficient_attention.cutlassB: available
memory_efficient_attention.flshattF: available
@@ -48,22 +51,28 @@ memory_efficient_attention.smallkF: available
memory_efficient_attention.smallkB: available
memory_efficient_attention.tritonflashattF: available
memory_efficient_attention.tritonflashattB: available
indexing.scaled_index_addF: available
indexing.scaled_index_addB: available
indexing.index_select: available
swiglu.dual_gemm_silu: available
swiglu.gemm_fused_operand_sum: available
swiglu.fused.p.cpp: available
is_triton_available: True
is_functorch_available: False
pytorch.version: 1.13.1+cu117
pytorch.version: 2.0.1+cu118
pytorch.cuda: available
gpu.compute_capability: 8.6
gpu.name: NVIDIA RTX A2000 12GB
gpu.compute_capability: 8.9
gpu.name: NVIDIA GeForce RTX 4070
build.info: available
build.cuda_version: 1107
build.python_version: 3.10.9
build.torch_version: 1.13.1+cu117
build.cuda_version: 1108
build.python_version: 3.10.11
build.torch_version: 2.0.1+cu118
build.env.TORCH_CUDA_ARCH_LIST: 5.0+PTX 6.0 6.1 7.0 7.5 8.0 8.6
build.env.XFORMERS_BUILD_TYPE: Release
build.env.XFORMERS_ENABLE_DEBUG_ASSERTIONS: None
build.env.NVCC_FLAGS: None
build.env.XFORMERS_PACKAGE_FROM: wheel-v0.0.16rc425
build.env.XFORMERS_PACKAGE_FROM: wheel-v0.0.20
build.nvcc_version: 11.8.89
source.privacy: open source
```
@@ -83,14 +92,14 @@ installed from source. These instructions were written for a system
running Ubuntu 22.04, but other Linux distributions should be able to
adapt this recipe.
#### 1. Install CUDA Toolkit 11.7
#### 1. Install CUDA Toolkit 11.8
You will need the CUDA developer's toolkit in order to compile and
install xFormers. **Do not try to install Ubuntu's nvidia-cuda-toolkit
package.** It is out of date and will cause conflicts among the NVIDIA
driver and binaries. Instead install the CUDA Toolkit package provided
by NVIDIA itself. Go to [CUDA Toolkit 11.7
Downloads](https://developer.nvidia.com/cuda-11-7-0-download-archive)
by NVIDIA itself. Go to [CUDA Toolkit 11.8
Downloads](https://developer.nvidia.com/cuda-11-8-0-download-archive)
and use the target selection wizard to choose your platform and Linux
distribution. Select an installer type of "runfile (local)" at the
last step.
@@ -101,17 +110,17 @@ example, the install script recipe for Ubuntu 22.04 running on a
x86_64 system is:
```
wget https://developer.download.nvidia.com/compute/cuda/11.7.0/local_installers/cuda_11.7.0_515.43.04_linux.run
sudo sh cuda_11.7.0_515.43.04_linux.run
wget https://developer.download.nvidia.com/compute/cuda/11.8.0/local_installers/cuda_11.8.0_520.61.05_linux.run
sudo sh cuda_11.8.0_520.61.05_linux.run
```
Rather than cut-and-paste this example, We recommend that you walk
through the toolkit wizard in order to get the most up to date
installer for your system.
#### 2. Confirm/Install pyTorch 1.13 with CUDA 11.7 support
#### 2. Confirm/Install pyTorch 2.01 with CUDA 11.8 support
If you are using InvokeAI 2.3 or higher, these will already be
If you are using InvokeAI 3.0.2 or higher, these will already be
installed. If not, you can check whether you have the needed libraries
using a quick command. Activate the invokeai virtual environment,
either by entering the "developer's console", or manually with a
@@ -124,7 +133,7 @@ Then run the command:
python -c 'exec("import torch\nprint(torch.__version__)")'
```
If it prints __1.13.1+cu117__ you're good. If not, you can install the
If it prints __1.13.1+cu118__ you're good. If not, you can install the
most up to date libraries with this command:
```sh

View File

@@ -34,6 +34,10 @@
cudaPackages.cudnn
cudaPackages.cuda_nvrtc
cudatoolkit
pkgconfig
libconfig
cmake
blas
freeglut
glib
gperf
@@ -42,6 +46,12 @@
libGLU
linuxPackages.nvidia_x11
python
(opencv4.override {
enableGtk3 = true;
enableFfmpeg = true;
enableCuda = true;
enableUnfree = true;
})
stdenv.cc
stdenv.cc.cc.lib
xorg.libX11

View File

@@ -348,7 +348,7 @@ class InvokeAiInstance:
introduction()
from invokeai.frontend.install import invokeai_configure
from invokeai.frontend.install.invokeai_configure import invokeai_configure
# NOTE: currently the config script does its own arg parsing! this means the command-line switches
# from the installer will also automatically propagate down to the config script.
@@ -463,10 +463,10 @@ def get_torch_source() -> (Union[str, None], str):
url = "https://download.pytorch.org/whl/cpu"
if device == "cuda":
url = "https://download.pytorch.org/whl/cu117"
url = "https://download.pytorch.org/whl/cu118"
optional_modules = "[xformers,onnx-cuda]"
if device == "cuda_and_dml":
url = "https://download.pytorch.org/whl/cu117"
url = "https://download.pytorch.org/whl/cu118"
optional_modules = "[xformers,onnx-directml]"
# in all other cases, Torch wheels should be coming from PyPi as of Torch 1.13

View File

@@ -2,7 +2,6 @@
from typing import Optional
from logging import Logger
import os
from invokeai.app.services.board_image_record_storage import (
SqliteBoardImageRecordStorage,
)
@@ -30,6 +29,7 @@ from ..services.invoker import Invoker
from ..services.processor import DefaultInvocationProcessor
from ..services.sqlite import SqliteItemStorage
from ..services.model_manager_service import ModelManagerService
from ..services.invocation_stats import InvocationStatsService
from .events import FastAPIEventService
@@ -55,7 +55,7 @@ logger = InvokeAILogger.getLogger()
class ApiDependencies:
"""Contains and initializes all dependencies for the API"""
invoker: Optional[Invoker] = None
invoker: Invoker
@staticmethod
def initialize(config: InvokeAIAppConfig, event_handler_id: int, logger: Logger = logger):
@@ -68,8 +68,9 @@ class ApiDependencies:
output_folder = config.output_path
# TODO: build a file/path manager?
db_location = config.db_path
db_location.parent.mkdir(parents=True, exist_ok=True)
db_path = config.db_path
db_path.parent.mkdir(parents=True, exist_ok=True)
db_location = str(db_path)
graph_execution_manager = SqliteItemStorage[GraphExecutionState](
filename=db_location, table_name="graph_executions"
@@ -128,6 +129,7 @@ class ApiDependencies:
graph_execution_manager=graph_execution_manager,
processor=DefaultInvocationProcessor(),
configuration=config,
performance_statistics=InvocationStatsService(graph_execution_manager),
logger=logger,
)

View File

@@ -1,24 +1,30 @@
from fastapi import Body, HTTPException, Path, Query
from fastapi import Body, HTTPException
from fastapi.routing import APIRouter
from invokeai.app.services.board_record_storage import BoardRecord, BoardChanges
from invokeai.app.services.image_record_storage import OffsetPaginatedResults
from invokeai.app.services.models.board_record import BoardDTO
from invokeai.app.services.models.image_record import ImageDTO
from pydantic import BaseModel, Field
from ..dependencies import ApiDependencies
board_images_router = APIRouter(prefix="/v1/board_images", tags=["boards"])
class AddImagesToBoardResult(BaseModel):
board_id: str = Field(description="The id of the board the images were added to")
added_image_names: list[str] = Field(description="The image names that were added to the board")
class RemoveImagesFromBoardResult(BaseModel):
removed_image_names: list[str] = Field(description="The image names that were removed from their board")
@board_images_router.post(
"/",
operation_id="create_board_image",
operation_id="add_image_to_board",
responses={
201: {"description": "The image was added to a board successfully"},
},
status_code=201,
)
async def create_board_image(
async def add_image_to_board(
board_id: str = Body(description="The id of the board to add to"),
image_name: str = Body(description="The name of the image to add"),
):
@@ -29,26 +35,78 @@ async def create_board_image(
)
return result
except Exception as e:
raise HTTPException(status_code=500, detail="Failed to add to board")
raise HTTPException(status_code=500, detail="Failed to add image to board")
@board_images_router.delete(
"/",
operation_id="remove_board_image",
operation_id="remove_image_from_board",
responses={
201: {"description": "The image was removed from the board successfully"},
},
status_code=201,
)
async def remove_board_image(
board_id: str = Body(description="The id of the board"),
image_name: str = Body(description="The name of the image to remove"),
async def remove_image_from_board(
image_name: str = Body(description="The name of the image to remove", embed=True),
):
"""Deletes a board_image"""
"""Removes an image from its board, if it had one"""
try:
result = ApiDependencies.invoker.services.board_images.remove_image_from_board(
board_id=board_id, image_name=image_name
)
result = ApiDependencies.invoker.services.board_images.remove_image_from_board(image_name=image_name)
return result
except Exception as e:
raise HTTPException(status_code=500, detail="Failed to update board")
raise HTTPException(status_code=500, detail="Failed to remove image from board")
@board_images_router.post(
"/batch",
operation_id="add_images_to_board",
responses={
201: {"description": "Images were added to board successfully"},
},
status_code=201,
response_model=AddImagesToBoardResult,
)
async def add_images_to_board(
board_id: str = Body(description="The id of the board to add to"),
image_names: list[str] = Body(description="The names of the images to add", embed=True),
) -> AddImagesToBoardResult:
"""Adds a list of images to a board"""
try:
added_image_names: list[str] = []
for image_name in image_names:
try:
ApiDependencies.invoker.services.board_images.add_image_to_board(
board_id=board_id, image_name=image_name
)
added_image_names.append(image_name)
except:
pass
return AddImagesToBoardResult(board_id=board_id, added_image_names=added_image_names)
except Exception as e:
raise HTTPException(status_code=500, detail="Failed to add images to board")
@board_images_router.post(
"/batch/delete",
operation_id="remove_images_from_board",
responses={
201: {"description": "Images were removed from board successfully"},
},
status_code=201,
response_model=RemoveImagesFromBoardResult,
)
async def remove_images_from_board(
image_names: list[str] = Body(description="The names of the images to remove", embed=True),
) -> RemoveImagesFromBoardResult:
"""Removes a list of images from their board, if they had one"""
try:
removed_image_names: list[str] = []
for image_name in image_names:
try:
ApiDependencies.invoker.services.board_images.remove_image_from_board(image_name=image_name)
removed_image_names.append(image_name)
except:
pass
return RemoveImagesFromBoardResult(removed_image_names=removed_image_names)
except Exception as e:
raise HTTPException(status_code=500, detail="Failed to remove images from board")

View File

@@ -1,21 +1,20 @@
import io
from typing import Optional
from PIL import Image
from fastapi import Body, HTTPException, Path, Query, Request, Response, UploadFile
from fastapi.responses import FileResponse
from fastapi.routing import APIRouter
from PIL import Image
from pydantic import BaseModel
from invokeai.app.invocations.metadata import ImageMetadata
from invokeai.app.models.image import ImageCategory, ResourceOrigin
from invokeai.app.services.image_record_storage import OffsetPaginatedResults
from invokeai.app.services.item_storage import PaginatedResults
from invokeai.app.services.models.image_record import (
ImageDTO,
ImageRecordChanges,
ImageUrlsDTO,
)
from ..dependencies import ApiDependencies
images_router = APIRouter(prefix="/v1/images", tags=["images"])
@@ -25,7 +24,7 @@ IMAGE_MAX_AGE = 31536000
@images_router.post(
"/",
"/upload",
operation_id="upload_image",
responses={
201: {"description": "The image was uploaded successfully"},
@@ -77,7 +76,7 @@ async def upload_image(
raise HTTPException(status_code=500, detail="Failed to create image")
@images_router.delete("/{image_name}", operation_id="delete_image")
@images_router.delete("/i/{image_name}", operation_id="delete_image")
async def delete_image(
image_name: str = Path(description="The name of the image to delete"),
) -> None:
@@ -103,7 +102,7 @@ async def clear_intermediates() -> int:
@images_router.patch(
"/{image_name}",
"/i/{image_name}",
operation_id="update_image",
response_model=ImageDTO,
)
@@ -120,7 +119,7 @@ async def update_image(
@images_router.get(
"/{image_name}",
"/i/{image_name}",
operation_id="get_image_dto",
response_model=ImageDTO,
)
@@ -136,7 +135,7 @@ async def get_image_dto(
@images_router.get(
"/{image_name}/metadata",
"/i/{image_name}/metadata",
operation_id="get_image_metadata",
response_model=ImageMetadata,
)
@@ -151,8 +150,9 @@ async def get_image_metadata(
raise HTTPException(status_code=404)
@images_router.get(
"/{image_name}/full",
@images_router.api_route(
"/i/{image_name}/full",
methods=["GET", "HEAD"],
operation_id="get_image_full",
response_class=Response,
responses={
@@ -187,7 +187,7 @@ async def get_image_full(
@images_router.get(
"/{image_name}/thumbnail",
"/i/{image_name}/thumbnail",
operation_id="get_image_thumbnail",
response_class=Response,
responses={
@@ -216,7 +216,7 @@ async def get_image_thumbnail(
@images_router.get(
"/{image_name}/urls",
"/i/{image_name}/urls",
operation_id="get_image_urls",
response_model=ImageUrlsDTO,
)
@@ -265,3 +265,24 @@ async def list_image_dtos(
)
return image_dtos
class DeleteImagesFromListResult(BaseModel):
deleted_images: list[str]
@images_router.post("/delete", operation_id="delete_images_from_list", response_model=DeleteImagesFromListResult)
async def delete_images_from_list(
image_names: list[str] = Body(description="The list of names of images to delete", embed=True),
) -> DeleteImagesFromListResult:
try:
deleted_images: list[str] = []
for image_name in image_names:
try:
ApiDependencies.invoker.services.images.delete(image_name)
deleted_images.append(image_name)
except:
pass
return DeleteImagesFromListResult(deleted_images=deleted_images)
except Exception as e:
raise HTTPException(status_code=500, detail="Failed to delete images")

View File

@@ -104,8 +104,12 @@ async def update_model(
): # model manager moved model path during rename - don't overwrite it
info.path = new_info.get("path")
# replace empty string values with None/null to avoid phenomenon of vae: ''
info_dict = info.dict()
info_dict = {x: info_dict[x] if info_dict[x] else None for x in info_dict.keys()}
ApiDependencies.invoker.services.model_manager.update_model(
model_name=model_name, base_model=base_model, model_type=model_type, model_attributes=info.dict()
model_name=model_name, base_model=base_model, model_type=model_type, model_attributes=info_dict
)
model_raw = ApiDependencies.invoker.services.model_manager.list_model(

View File

@@ -37,6 +37,7 @@ from invokeai.app.services.image_record_storage import SqliteImageRecordStorage
from invokeai.app.services.images import ImageService, ImageServiceDependencies
from invokeai.app.services.resource_name import SimpleNameService
from invokeai.app.services.urls import LocalUrlService
from invokeai.app.services.invocation_stats import InvocationStatsService
from .services.default_graphs import default_text_to_image_graph_id, create_system_graphs
from .services.latent_storage import DiskLatentsStorage, ForwardCacheLatentsStorage
@@ -311,6 +312,7 @@ def invoke_cli():
graph_library=SqliteItemStorage[LibraryGraph](filename=db_location, table_name="graphs"),
graph_execution_manager=graph_execution_manager,
processor=DefaultInvocationProcessor(),
performance_statistics=InvocationStatsService(graph_execution_manager),
logger=logger,
configuration=config,
)

View File

@@ -109,12 +109,15 @@ class CompelInvocation(BaseInvocation):
name = trigger[1:-1]
try:
ti_list.append(
context.services.model_manager.get_model(
model_name=name,
base_model=self.clip.text_encoder.base_model,
model_type=ModelType.TextualInversion,
context=context,
).context.model
(
name,
context.services.model_manager.get_model(
model_name=name,
base_model=self.clip.text_encoder.base_model,
model_type=ModelType.TextualInversion,
context=context,
).context.model,
)
)
except ModelNotFoundException:
# print(e)
@@ -173,7 +176,7 @@ class CompelInvocation(BaseInvocation):
class SDXLPromptInvocationBase:
def run_clip_raw(self, context, clip_field, prompt, get_pooled):
def run_clip_raw(self, context, clip_field, prompt, get_pooled, lora_prefix):
tokenizer_info = context.services.model_manager.get_model(
**clip_field.tokenizer.dict(),
context=context,
@@ -197,12 +200,15 @@ class SDXLPromptInvocationBase:
name = trigger[1:-1]
try:
ti_list.append(
context.services.model_manager.get_model(
model_name=name,
base_model=clip_field.text_encoder.base_model,
model_type=ModelType.TextualInversion,
context=context,
).context.model
(
name,
context.services.model_manager.get_model(
model_name=name,
base_model=clip_field.text_encoder.base_model,
model_type=ModelType.TextualInversion,
context=context,
).context.model,
)
)
except ModelNotFoundException:
# print(e)
@@ -210,8 +216,8 @@ class SDXLPromptInvocationBase:
# print(traceback.format_exc())
print(f'Warn: trigger: "{trigger}" not found')
with ModelPatcher.apply_lora_text_encoder(
text_encoder_info.context.model, _lora_loader()
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,
@@ -247,7 +253,7 @@ class SDXLPromptInvocationBase:
return c, c_pooled, None
def run_clip_compel(self, context, clip_field, prompt, get_pooled):
def run_clip_compel(self, context, clip_field, prompt, get_pooled, lora_prefix):
tokenizer_info = context.services.model_manager.get_model(
**clip_field.tokenizer.dict(),
context=context,
@@ -271,12 +277,15 @@ class SDXLPromptInvocationBase:
name = trigger[1:-1]
try:
ti_list.append(
context.services.model_manager.get_model(
model_name=name,
base_model=clip_field.text_encoder.base_model,
model_type=ModelType.TextualInversion,
context=context,
).context.model
(
name,
context.services.model_manager.get_model(
model_name=name,
base_model=clip_field.text_encoder.base_model,
model_type=ModelType.TextualInversion,
context=context,
).context.model,
)
)
except ModelNotFoundException:
# print(e)
@@ -284,8 +293,8 @@ class SDXLPromptInvocationBase:
# print(traceback.format_exc())
print(f'Warn: trigger: "{trigger}" not found')
with ModelPatcher.apply_lora_text_encoder(
text_encoder_info.context.model, _lora_loader()
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,
@@ -357,11 +366,11 @@ class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
@torch.no_grad()
def invoke(self, context: InvocationContext) -> CompelOutput:
c1, c1_pooled, ec1 = self.run_clip_compel(context, self.clip, self.prompt, False)
c1, c1_pooled, ec1 = self.run_clip_compel(context, self.clip, self.prompt, False, "lora_te1_")
if self.style.strip() == "":
c2, c2_pooled, ec2 = self.run_clip_compel(context, self.clip2, self.prompt, True)
c2, c2_pooled, ec2 = self.run_clip_compel(context, self.clip2, self.prompt, True, "lora_te2_")
else:
c2, c2_pooled, ec2 = self.run_clip_compel(context, self.clip2, self.style, True)
c2, c2_pooled, ec2 = self.run_clip_compel(context, self.clip2, self.style, True, "lora_te2_")
original_size = (self.original_height, self.original_width)
crop_coords = (self.crop_top, self.crop_left)
@@ -415,7 +424,8 @@ class SDXLRefinerCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase
@torch.no_grad()
def invoke(self, context: InvocationContext) -> CompelOutput:
c2, c2_pooled, ec2 = self.run_clip_compel(context, self.clip2, self.style, True)
# TODO: if there will appear lora for refiner - write proper prefix
c2, c2_pooled, ec2 = self.run_clip_compel(context, self.clip2, self.style, True, "<NONE>")
original_size = (self.original_height, self.original_width)
crop_coords = (self.crop_top, self.crop_left)
@@ -467,11 +477,11 @@ class SDXLRawPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
@torch.no_grad()
def invoke(self, context: InvocationContext) -> CompelOutput:
c1, c1_pooled, ec1 = self.run_clip_raw(context, self.clip, self.prompt, False)
c1, c1_pooled, ec1 = self.run_clip_raw(context, self.clip, self.prompt, False, "lora_te1_")
if self.style.strip() == "":
c2, c2_pooled, ec2 = self.run_clip_raw(context, self.clip2, self.prompt, True)
c2, c2_pooled, ec2 = self.run_clip_raw(context, self.clip2, self.prompt, True, "lora_te2_")
else:
c2, c2_pooled, ec2 = self.run_clip_raw(context, self.clip2, self.style, True)
c2, c2_pooled, ec2 = self.run_clip_raw(context, self.clip2, self.style, True, "lora_te2_")
original_size = (self.original_height, self.original_width)
crop_coords = (self.crop_top, self.crop_left)
@@ -525,7 +535,8 @@ class SDXLRefinerRawPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
@torch.no_grad()
def invoke(self, context: InvocationContext) -> CompelOutput:
c2, c2_pooled, ec2 = self.run_clip_raw(context, self.clip2, self.style, True)
# TODO: if there will appear lora for refiner - write proper prefix
c2, c2_pooled, ec2 = self.run_clip_raw(context, self.clip2, self.style, True, "<NONE>")
original_size = (self.original_height, self.original_width)
crop_coords = (self.crop_top, self.crop_left)

View File

@@ -1,26 +1,23 @@
# Copyright (c) 2022 Kyle Schouviller (https://github.com/kyle0654)
from contextlib import contextmanager, ContextDecorator
from functools import partial
from typing import Literal, Optional, get_args
import torch
from pydantic import Field
from invokeai.app.models.image import ColorField, ImageCategory, ImageField, ResourceOrigin
from invokeai.app.util.misc import SEED_MAX, get_random_seed
from invokeai.backend.generator.inpaint import infill_methods
from ...backend.generator import Inpaint, InvokeAIGenerator
from ...backend.stable_diffusion import PipelineIntermediateState
from ..util.step_callback import stable_diffusion_step_callback
from .baseinvocation import BaseInvocation, InvocationConfig, InvocationContext
from .image import ImageOutput
from ...backend.model_management.lora import ModelPatcher
from ...backend.stable_diffusion.diffusers_pipeline import StableDiffusionGeneratorPipeline
from .model import UNetField, VaeField
from .compel import ConditioningField
from contextlib import contextmanager, ExitStack, ContextDecorator
from .image import ImageOutput
from .model import UNetField, VaeField
from ..util.step_callback import stable_diffusion_step_callback
from ...backend.generator import Inpaint, InvokeAIGenerator
from ...backend.model_management.lora import ModelPatcher
from ...backend.stable_diffusion import PipelineIntermediateState
from ...backend.stable_diffusion.diffusers_pipeline import StableDiffusionGeneratorPipeline
SAMPLER_NAME_VALUES = Literal[tuple(InvokeAIGenerator.schedulers())]
INFILL_METHODS = Literal[tuple(infill_methods())]
@@ -184,6 +181,8 @@ class InpaintInvocation(BaseInvocation):
device = context.services.model_manager.mgr.cache.execution_device
dtype = context.services.model_manager.mgr.cache.precision
vae.to(dtype=unet.dtype)
pipeline = StableDiffusionGeneratorPipeline(
vae=vae,
text_encoder=None,
@@ -193,8 +192,6 @@ class InpaintInvocation(BaseInvocation):
safety_checker=None,
feature_extractor=None,
requires_safety_checker=False,
precision="float16" if dtype == torch.float16 else "float32",
execution_device=device,
)
yield OldModelInfo(

View File

@@ -3,6 +3,7 @@
from typing import Literal, Optional
import numpy
import cv2
from PIL import Image, ImageFilter, ImageOps, ImageChops
from pydantic import Field
from pathlib import Path
@@ -500,7 +501,7 @@ class ImageLerpInvocation(BaseInvocation, PILInvocationConfig):
image = context.services.images.get_pil_image(self.image.image_name)
image_arr = numpy.asarray(image, dtype=numpy.float32) / 255
image_arr = image_arr * (self.max - self.min) + self.max
image_arr = image_arr * (self.max - self.min) + self.min
lerp_image = Image.fromarray(numpy.uint8(image_arr))
@@ -650,3 +651,143 @@ class ImageWatermarkInvocation(BaseInvocation, PILInvocationConfig):
width=image_dto.width,
height=image_dto.height,
)
class ImageHueAdjustmentInvocation(BaseInvocation):
"""Adjusts the Hue of an image."""
# fmt: off
type: Literal["img_hue_adjust"] = "img_hue_adjust"
# Inputs
image: ImageField = Field(default=None, description="The image to adjust")
hue: int = Field(default=0, description="The degrees by which to rotate the hue, 0-360")
# fmt: on
def invoke(self, context: InvocationContext) -> ImageOutput:
pil_image = context.services.images.get_pil_image(self.image.image_name)
# Convert image to HSV color space
hsv_image = numpy.array(pil_image.convert("HSV"))
# Convert hue from 0..360 to 0..256
hue = int(256 * ((self.hue % 360) / 360))
# Increment each hue and wrap around at 255
hsv_image[:, :, 0] = (hsv_image[:, :, 0] + hue) % 256
# Convert back to PIL format and to original color mode
pil_image = Image.fromarray(hsv_image, mode="HSV").convert("RGBA")
image_dto = context.services.images.create(
image=pil_image,
image_origin=ResourceOrigin.INTERNAL,
image_category=ImageCategory.GENERAL,
node_id=self.id,
is_intermediate=self.is_intermediate,
session_id=context.graph_execution_state_id,
)
return ImageOutput(
image=ImageField(
image_name=image_dto.image_name,
),
width=image_dto.width,
height=image_dto.height,
)
class ImageLuminosityAdjustmentInvocation(BaseInvocation):
"""Adjusts the Luminosity (Value) of an image."""
# fmt: off
type: Literal["img_luminosity_adjust"] = "img_luminosity_adjust"
# Inputs
image: ImageField = Field(default=None, description="The image to adjust")
luminosity: float = Field(default=1.0, ge=0, le=1, description="The factor by which to adjust the luminosity (value)")
# fmt: on
def invoke(self, context: InvocationContext) -> ImageOutput:
pil_image = context.services.images.get_pil_image(self.image.image_name)
# Convert PIL image to OpenCV format (numpy array), note color channel
# ordering is changed from RGB to BGR
image = numpy.array(pil_image.convert("RGB"))[:, :, ::-1]
# Convert image to HSV color space
hsv_image = cv2.cvtColor(image, cv2.COLOR_BGR2HSV)
# Adjust the luminosity (value)
hsv_image[:, :, 2] = numpy.clip(hsv_image[:, :, 2] * self.luminosity, 0, 255)
# Convert image back to BGR color space
image = cv2.cvtColor(hsv_image, cv2.COLOR_HSV2BGR)
# Convert back to PIL format and to original color mode
pil_image = Image.fromarray(image[:, :, ::-1], "RGB").convert("RGBA")
image_dto = context.services.images.create(
image=pil_image,
image_origin=ResourceOrigin.INTERNAL,
image_category=ImageCategory.GENERAL,
node_id=self.id,
is_intermediate=self.is_intermediate,
session_id=context.graph_execution_state_id,
)
return ImageOutput(
image=ImageField(
image_name=image_dto.image_name,
),
width=image_dto.width,
height=image_dto.height,
)
class ImageSaturationAdjustmentInvocation(BaseInvocation):
"""Adjusts the Saturation of an image."""
# fmt: off
type: Literal["img_saturation_adjust"] = "img_saturation_adjust"
# Inputs
image: ImageField = Field(default=None, description="The image to adjust")
saturation: float = Field(default=1.0, ge=0, le=1, description="The factor by which to adjust the saturation")
# fmt: on
def invoke(self, context: InvocationContext) -> ImageOutput:
pil_image = context.services.images.get_pil_image(self.image.image_name)
# Convert PIL image to OpenCV format (numpy array), note color channel
# ordering is changed from RGB to BGR
image = numpy.array(pil_image.convert("RGB"))[:, :, ::-1]
# Convert image to HSV color space
hsv_image = cv2.cvtColor(image, cv2.COLOR_BGR2HSV)
# Adjust the saturation
hsv_image[:, :, 1] = numpy.clip(hsv_image[:, :, 1] * self.saturation, 0, 255)
# Convert image back to BGR color space
image = cv2.cvtColor(hsv_image, cv2.COLOR_HSV2BGR)
# Convert back to PIL format and to original color mode
pil_image = Image.fromarray(image[:, :, ::-1], "RGB").convert("RGBA")
image_dto = context.services.images.create(
image=pil_image,
image_origin=ResourceOrigin.INTERNAL,
image_category=ImageCategory.GENERAL,
node_id=self.id,
is_intermediate=self.is_intermediate,
session_id=context.graph_execution_state_id,
)
return ImageOutput(
image=ImageField(
image_name=image_dto.image_name,
),
width=image_dto.width,
height=image_dto.height,
)

View File

@@ -5,16 +5,27 @@ from typing import List, Literal, Optional, Union
import einops
import torch
from diffusers import ControlNetModel
from diffusers.image_processor import VaeImageProcessor
from diffusers.models.attention_processor import (
AttnProcessor2_0,
LoRAAttnProcessor2_0,
LoRAXFormersAttnProcessor,
XFormersAttnProcessor,
)
from diffusers.schedulers import SchedulerMixin as Scheduler
from pydantic import BaseModel, Field, validator
from invokeai.app.invocations.metadata import CoreMetadata
from invokeai.app.util.controlnet_utils import prepare_control_image
from invokeai.app.util.step_callback import stable_diffusion_step_callback
from invokeai.backend.model_management.models import ModelType, SilenceWarnings
from ...backend.model_management.lora import ModelPatcher
from .baseinvocation import BaseInvocation, BaseInvocationOutput, InvocationConfig, InvocationContext
from .compel import ConditioningField
from .controlnet_image_processors import ControlField
from .image import ImageOutput
from .model import ModelInfo, UNetField, VaeField
from ..models.image import ImageCategory, ImageField, ResourceOrigin
from ...backend.model_management import ModelPatcher
from ...backend.stable_diffusion import PipelineIntermediateState
from ...backend.stable_diffusion.diffusers_pipeline import (
ConditioningData,
@@ -24,23 +35,7 @@ from ...backend.stable_diffusion.diffusers_pipeline import (
)
from ...backend.stable_diffusion.diffusion.shared_invokeai_diffusion import PostprocessingSettings
from ...backend.stable_diffusion.schedulers import SCHEDULER_MAP
from ...backend.model_management import ModelPatcher
from ...backend.util.devices import choose_torch_device, torch_dtype, choose_precision
from ..models.image import ImageCategory, ImageField, ResourceOrigin
from .baseinvocation import BaseInvocation, BaseInvocationOutput, InvocationConfig, InvocationContext
from .compel import ConditioningField
from .controlnet_image_processors import ControlField
from .image import ImageOutput
from .model import ModelInfo, UNetField, VaeField
from invokeai.app.util.controlnet_utils import prepare_control_image
from diffusers.models.attention_processor import (
AttnProcessor2_0,
LoRAAttnProcessor2_0,
LoRAXFormersAttnProcessor,
XFormersAttnProcessor,
)
DEFAULT_PRECISION = choose_precision(choose_torch_device())
@@ -231,7 +226,6 @@ class TextToLatentsInvocation(BaseInvocation):
safety_checker=None,
feature_extractor=None,
requires_safety_checker=False,
precision="float16" if unet.dtype == torch.float16 else "float32",
)
def prep_control_data(

View File

@@ -1,7 +1,8 @@
from typing import Literal, Optional, Union
from pydantic import BaseModel, Field
from pydantic import Field
from ...version import __version__
from invokeai.app.invocations.baseinvocation import (
BaseInvocation,
BaseInvocationOutput,
@@ -10,18 +11,20 @@ from invokeai.app.invocations.baseinvocation import (
)
from invokeai.app.invocations.controlnet_image_processors import ControlField
from invokeai.app.invocations.model import LoRAModelField, MainModelField, VAEModelField
from invokeai.app.util.model_exclude_null import BaseModelExcludeNull
class LoRAMetadataField(BaseModel):
class LoRAMetadataField(BaseModelExcludeNull):
"""LoRA metadata for an image generated in InvokeAI."""
lora: LoRAModelField = Field(description="The LoRA model")
weight: float = Field(description="The weight of the LoRA model")
class CoreMetadata(BaseModel):
class CoreMetadata(BaseModelExcludeNull):
"""Core generation metadata for an image generated in InvokeAI."""
app_version: str = Field(default=__version__, description="The version of InvokeAI used to generate this image")
generation_mode: str = Field(
description="The generation mode that output this image",
)
@@ -70,7 +73,7 @@ class CoreMetadata(BaseModel):
refiner_start: Union[float, None] = Field(default=None, description="The start value used for refiner denoising")
class ImageMetadata(BaseModel):
class ImageMetadata(BaseModelExcludeNull):
"""An image's generation metadata"""
metadata: Optional[dict] = Field(

View File

@@ -262,6 +262,103 @@ class LoraLoaderInvocation(BaseInvocation):
return output
class SDXLLoraLoaderOutput(BaseInvocationOutput):
"""Model loader output"""
# fmt: off
type: Literal["sdxl_lora_loader_output"] = "sdxl_lora_loader_output"
unet: Optional[UNetField] = Field(default=None, description="UNet submodel")
clip: Optional[ClipField] = Field(default=None, description="Tokenizer and text_encoder submodels")
clip2: Optional[ClipField] = Field(default=None, description="Tokenizer2 and text_encoder2 submodels")
# fmt: on
class SDXLLoraLoaderInvocation(BaseInvocation):
"""Apply selected lora to unet and text_encoder."""
type: Literal["sdxl_lora_loader"] = "sdxl_lora_loader"
lora: Union[LoRAModelField, None] = Field(default=None, description="Lora model name")
weight: float = Field(default=0.75, description="With what weight to apply lora")
unet: Optional[UNetField] = Field(description="UNet model for applying lora")
clip: Optional[ClipField] = Field(description="Clip model for applying lora")
clip2: Optional[ClipField] = Field(description="Clip2 model for applying lora")
class Config(InvocationConfig):
schema_extra = {
"ui": {
"title": "SDXL Lora Loader",
"tags": ["lora", "loader"],
"type_hints": {"lora": "lora_model"},
},
}
def invoke(self, context: InvocationContext) -> SDXLLoraLoaderOutput:
if self.lora is None:
raise Exception("No LoRA provided")
base_model = self.lora.base_model
lora_name = self.lora.model_name
if not context.services.model_manager.model_exists(
base_model=base_model,
model_name=lora_name,
model_type=ModelType.Lora,
):
raise Exception(f"Unknown lora name: {lora_name}!")
if self.unet is not None and any(lora.model_name == lora_name for lora in self.unet.loras):
raise Exception(f'Lora "{lora_name}" already applied to unet')
if self.clip is not None and any(lora.model_name == lora_name for lora in self.clip.loras):
raise Exception(f'Lora "{lora_name}" already applied to clip')
if self.clip2 is not None and any(lora.model_name == lora_name for lora in self.clip2.loras):
raise Exception(f'Lora "{lora_name}" already applied to clip2')
output = SDXLLoraLoaderOutput()
if self.unet is not None:
output.unet = copy.deepcopy(self.unet)
output.unet.loras.append(
LoraInfo(
base_model=base_model,
model_name=lora_name,
model_type=ModelType.Lora,
submodel=None,
weight=self.weight,
)
)
if self.clip is not None:
output.clip = copy.deepcopy(self.clip)
output.clip.loras.append(
LoraInfo(
base_model=base_model,
model_name=lora_name,
model_type=ModelType.Lora,
submodel=None,
weight=self.weight,
)
)
if self.clip2 is not None:
output.clip2 = copy.deepcopy(self.clip2)
output.clip2.loras.append(
LoraInfo(
base_model=base_model,
model_name=lora_name,
model_type=ModelType.Lora,
submodel=None,
weight=self.weight,
)
)
return output
class VAEModelField(BaseModel):
"""Vae model field"""

View File

@@ -65,7 +65,6 @@ class ONNXPromptInvocation(BaseInvocation):
**self.clip.text_encoder.dict(),
)
with tokenizer_info as orig_tokenizer, text_encoder_info as text_encoder, ExitStack() as stack:
# loras = [(stack.enter_context(context.services.model_manager.get_model(**lora.dict(exclude={"weight"}))), lora.weight) for lora in self.clip.loras]
loras = [
(context.services.model_manager.get_model(**lora.dict(exclude={"weight"})).context.model, lora.weight)
for lora in self.clip.loras
@@ -76,18 +75,14 @@ class ONNXPromptInvocation(BaseInvocation):
name = trigger[1:-1]
try:
ti_list.append(
# stack.enter_context(
# context.services.model_manager.get_model(
# model_name=name,
# base_model=self.clip.text_encoder.base_model,
# model_type=ModelType.TextualInversion,
# )
# )
context.services.model_manager.get_model(
model_name=name,
base_model=self.clip.text_encoder.base_model,
model_type=ModelType.TextualInversion,
).context.model
(
name,
context.services.model_manager.get_model(
model_name=name,
base_model=self.clip.text_encoder.base_model,
model_type=ModelType.TextualInversion,
).context.model,
)
)
except Exception:
# print(e)

View File

@@ -5,7 +5,7 @@ from typing import List, Literal, Optional, Union
from pydantic import Field, validator
from ...backend.model_management import ModelType, SubModelType
from ...backend.model_management import ModelType, SubModelType, ModelPatcher
from invokeai.app.util.step_callback import stable_diffusion_xl_step_callback
from .baseinvocation import BaseInvocation, BaseInvocationOutput, InvocationConfig, InvocationContext
@@ -293,10 +293,20 @@ class SDXLTextToLatentsInvocation(BaseInvocation):
num_inference_steps = self.steps
def _lora_loader():
for lora in self.unet.loras:
lora_info = context.services.model_manager.get_model(
**lora.dict(exclude={"weight"}),
context=context,
)
yield (lora_info.context.model, lora.weight)
del lora_info
return
unet_info = context.services.model_manager.get_model(**self.unet.unet.dict(), context=context)
do_classifier_free_guidance = True
cross_attention_kwargs = None
with unet_info as unet:
with ModelPatcher.apply_lora_unet(unet_info.context.model, _lora_loader()), unet_info as unet:
scheduler.set_timesteps(num_inference_steps, device=unet.device)
timesteps = scheduler.timesteps
@@ -543,9 +553,19 @@ class SDXLLatentsToLatentsInvocation(BaseInvocation):
context=context,
)
def _lora_loader():
for lora in self.unet.loras:
lora_info = context.services.model_manager.get_model(
**lora.dict(exclude={"weight"}),
context=context,
)
yield (lora_info.context.model, lora.weight)
del lora_info
return
do_classifier_free_guidance = True
cross_attention_kwargs = None
with unet_info as unet:
with ModelPatcher.apply_lora_unet(unet_info.context.model, _lora_loader()), unet_info as unet:
# apply denoising_start
num_inference_steps = self.steps
scheduler.set_timesteps(num_inference_steps, device=unet.device)

View File

@@ -25,7 +25,6 @@ class BoardImageRecordStorageBase(ABC):
@abstractmethod
def remove_image_from_board(
self,
board_id: str,
image_name: str,
) -> None:
"""Removes an image from a board."""
@@ -154,7 +153,6 @@ class SqliteBoardImageRecordStorage(BoardImageRecordStorageBase):
def remove_image_from_board(
self,
board_id: str,
image_name: str,
) -> None:
try:
@@ -162,9 +160,9 @@ class SqliteBoardImageRecordStorage(BoardImageRecordStorageBase):
self._cursor.execute(
"""--sql
DELETE FROM board_images
WHERE board_id = ? AND image_name = ?;
WHERE image_name = ?;
""",
(board_id, image_name),
(image_name,),
)
self._conn.commit()
except sqlite3.Error as e:

View File

@@ -31,7 +31,6 @@ class BoardImagesServiceABC(ABC):
@abstractmethod
def remove_image_from_board(
self,
board_id: str,
image_name: str,
) -> None:
"""Removes an image from a board."""
@@ -93,10 +92,9 @@ class BoardImagesService(BoardImagesServiceABC):
def remove_image_from_board(
self,
board_id: str,
image_name: str,
) -> None:
self._services.board_image_records.remove_image_from_board(board_id, image_name)
self._services.board_image_records.remove_image_from_board(image_name)
def get_all_board_image_names_for_board(
self,

View File

@@ -24,11 +24,10 @@ InvokeAI:
sequential_guidance: false
precision: float16
max_cache_size: 6
max_vram_cache_size: 2.7
max_vram_cache_size: 0.5
always_use_cpu: false
free_gpu_mem: false
Features:
restore: true
esrgan: true
patchmatch: true
internet_available: true
@@ -165,7 +164,7 @@ import pydoc
import os
import sys
from argparse import ArgumentParser
from omegaconf import OmegaConf, DictConfig
from omegaconf import OmegaConf, DictConfig, ListConfig
from pathlib import Path
from pydantic import BaseSettings, Field, parse_obj_as
from typing import ClassVar, Dict, List, Set, Literal, Union, get_origin, get_type_hints, get_args
@@ -173,6 +172,7 @@ from typing import ClassVar, Dict, List, Set, Literal, Union, get_origin, get_ty
INIT_FILE = Path("invokeai.yaml")
DB_FILE = Path("invokeai.db")
LEGACY_INIT_FILE = Path("invokeai.init")
DEFAULT_MAX_VRAM = 0.5
class InvokeAISettings(BaseSettings):
@@ -189,7 +189,12 @@ class InvokeAISettings(BaseSettings):
opt = parser.parse_args(argv)
for name in self.__fields__:
if name not in self._excluded():
setattr(self, name, getattr(opt, name))
value = getattr(opt, name)
if isinstance(value, ListConfig):
value = list(value)
elif isinstance(value, DictConfig):
value = dict(value)
setattr(self, name, value)
def to_yaml(self) -> str:
"""
@@ -274,7 +279,7 @@ class InvokeAISettings(BaseSettings):
@classmethod
def _excluded(self) -> List[str]:
# internal fields that shouldn't be exposed as command line options
return ["type", "initconf", "cached_root"]
return ["type", "initconf"]
@classmethod
def _excluded_from_yaml(self) -> List[str]:
@@ -282,15 +287,10 @@ class InvokeAISettings(BaseSettings):
return [
"type",
"initconf",
"gpu_mem_reserved",
"max_loaded_models",
"version",
"from_file",
"model",
"restore",
"root",
"nsfw_checker",
"cached_root",
]
class Config:
@@ -356,7 +356,7 @@ class InvokeAISettings(BaseSettings):
def _find_root() -> Path:
venv = Path(os.environ.get("VIRTUAL_ENV") or ".")
if os.environ.get("INVOKEAI_ROOT"):
root = Path(os.environ.get("INVOKEAI_ROOT")).resolve()
root = Path(os.environ["INVOKEAI_ROOT"])
elif any([(venv.parent / x).exists() for x in [INIT_FILE, LEGACY_INIT_FILE]]):
root = (venv.parent).resolve()
else:
@@ -389,21 +389,17 @@ class InvokeAIAppConfig(InvokeAISettings):
internet_available : bool = Field(default=True, description="If true, attempt to download models on the fly; otherwise only use local models", category='Features')
log_tokenization : bool = Field(default=False, description="Enable logging of parsed prompt tokens.", category='Features')
patchmatch : bool = Field(default=True, description="Enable/disable patchmatch inpaint code", category='Features')
restore : bool = Field(default=True, description="Enable/disable face restoration code (DEPRECATED)", category='DEPRECATED')
always_use_cpu : bool = Field(default=False, description="If true, use the CPU for rendering even if a GPU is available.", category='Memory/Performance')
free_gpu_mem : bool = Field(default=False, description="If true, purge model from GPU after each generation.", category='Memory/Performance')
max_loaded_models : int = Field(default=3, gt=0, description="(DEPRECATED: use max_cache_size) Maximum number of models to keep in memory for rapid switching", category='DEPRECATED')
max_cache_size : float = Field(default=6.0, gt=0, description="Maximum memory amount used by model cache for rapid switching", category='Memory/Performance')
max_vram_cache_size : float = Field(default=2.75, ge=0, description="Amount of VRAM reserved for model storage", category='Memory/Performance')
gpu_mem_reserved : float = Field(default=2.75, ge=0, description="DEPRECATED: use max_vram_cache_size. Amount of VRAM reserved for model storage", category='DEPRECATED')
nsfw_checker : bool = Field(default=True, description="DEPRECATED: use Web settings to enable/disable", category='DEPRECATED')
precision : Literal[tuple(['auto','float16','float32','autocast'])] = Field(default='auto',description='Floating point precision', category='Memory/Performance')
sequential_guidance : bool = Field(default=False, description="Whether to calculate guidance in serial instead of in parallel, lowering memory requirements", category='Memory/Performance')
xformers_enabled : bool = Field(default=True, description="Enable/disable memory-efficient attention", category='Memory/Performance')
tiled_decode : bool = Field(default=False, description="Whether to enable tiled VAE decode (reduces memory consumption with some performance penalty)", category='Memory/Performance')
root : Path = Field(default=_find_root(), description='InvokeAI runtime root directory', category='Paths')
root : Path = Field(default=None, description='InvokeAI runtime root directory', category='Paths')
autoimport_dir : Path = Field(default='autoimport', description='Path to a directory of models files to be imported on startup.', category='Paths')
lora_dir : Path = Field(default=None, description='Path to a directory of LoRA/LyCORIS models to be imported on startup.', category='Paths')
embedding_dir : Path = Field(default=None, description='Path to a directory of Textual Inversion embeddings to be imported on startup.', category='Paths')
@@ -415,8 +411,7 @@ class InvokeAIAppConfig(InvokeAISettings):
outdir : Path = Field(default='outputs', description='Default folder for output images', category='Paths')
from_file : Path = Field(default=None, description='Take command input from the indicated file (command-line client only)', category='Paths')
use_memory_db : bool = Field(default=False, description='Use in-memory database for storing image metadata', category='Paths')
model : str = Field(default='stable-diffusion-1.5', description='Initial model name', category='Models')
ignore_missing_core_models : bool = Field(default=False, description='Ignore missing models in models/core/convert', category='Features')
log_handlers : List[str] = Field(default=["console"], description='Log handler. Valid options are "console", "file=<path>", "syslog=path|address:host:port", "http=<url>"', category="Logging")
# note - would be better to read the log_format values from logging.py, but this creates circular dependencies issues
@@ -424,9 +419,11 @@ class InvokeAIAppConfig(InvokeAISettings):
log_level : Literal[tuple(["debug","info","warning","error","critical"])] = Field(default="info", description="Emit logging messages at this level or higher", category="Logging")
version : bool = Field(default=False, description="Show InvokeAI version and exit", category="Other")
cached_root : Path = Field(default=None, description="internal use only", category="DEPRECATED")
# fmt: on
class Config:
validate_assignment = True
def parse_args(self, argv: List[str] = None, conf: DictConfig = None, clobber=False):
"""
Update settings with contents of init file, environment, and
@@ -472,15 +469,12 @@ class InvokeAIAppConfig(InvokeAISettings):
"""
Path to the runtime root directory
"""
# we cache value of root to protect against it being '.' and the cwd changing
if self.cached_root:
root = self.cached_root
elif self.root:
if self.root:
root = Path(self.root).expanduser().absolute()
else:
root = self.find_root()
self.cached_root = root
return self.cached_root
root = self.find_root().expanduser().absolute()
self.root = root # insulate ourselves from relative paths that may change
return root
@property
def root_dir(self) -> Path:

View File

@@ -289,9 +289,10 @@ class ImageService(ImageServiceABC):
def get_metadata(self, image_name: str) -> Optional[ImageMetadata]:
try:
image_record = self._services.image_records.get(image_name)
metadata = self._services.image_records.get_metadata(image_name)
if not image_record.session_id:
return ImageMetadata()
return ImageMetadata(metadata=metadata)
session_raw = self._services.graph_execution_manager.get_raw(image_record.session_id)
graph = None
@@ -303,7 +304,6 @@ class ImageService(ImageServiceABC):
self._services.logger.warn(f"Failed to parse session graph: {e}")
graph = None
metadata = self._services.image_records.get_metadata(image_name)
return ImageMetadata(graph=graph, metadata=metadata)
except ImageRecordNotFoundException:
self._services.logger.error("Image record not found")

View File

@@ -32,6 +32,7 @@ class InvocationServices:
logger: "Logger"
model_manager: "ModelManagerServiceBase"
processor: "InvocationProcessorABC"
performance_statistics: "InvocationStatsServiceBase"
queue: "InvocationQueueABC"
def __init__(
@@ -47,6 +48,7 @@ class InvocationServices:
logger: "Logger",
model_manager: "ModelManagerServiceBase",
processor: "InvocationProcessorABC",
performance_statistics: "InvocationStatsServiceBase",
queue: "InvocationQueueABC",
):
self.board_images = board_images
@@ -61,4 +63,5 @@ class InvocationServices:
self.logger = logger
self.model_manager = model_manager
self.processor = processor
self.performance_statistics = performance_statistics
self.queue = queue

View File

@@ -0,0 +1,223 @@
# Copyright 2023 Lincoln D. Stein <lincoln.stein@gmail.com>
"""Utility to collect execution time and GPU usage stats on invocations in flight"""
"""
Usage:
statistics = InvocationStatsService(graph_execution_manager)
with statistics.collect_stats(invocation, graph_execution_state.id):
... execute graphs...
statistics.log_stats()
Typical output:
[2023-08-02 18:03:04,507]::[InvokeAI]::INFO --> Graph stats: c7764585-9c68-4d9d-a199-55e8186790f3
[2023-08-02 18:03:04,507]::[InvokeAI]::INFO --> Node Calls Seconds VRAM Used
[2023-08-02 18:03:04,507]::[InvokeAI]::INFO --> main_model_loader 1 0.005s 0.01G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> clip_skip 1 0.004s 0.01G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> compel 2 0.512s 0.26G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> rand_int 1 0.001s 0.01G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> range_of_size 1 0.001s 0.01G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> iterate 1 0.001s 0.01G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> metadata_accumulator 1 0.002s 0.01G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> noise 1 0.002s 0.01G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> t2l 1 3.541s 1.93G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> l2i 1 0.679s 0.58G
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> TOTAL GRAPH EXECUTION TIME: 4.749s
[2023-08-02 18:03:04,508]::[InvokeAI]::INFO --> Current VRAM utilization 0.01G
The abstract base class for this class is InvocationStatsServiceBase. An implementing class which
writes to the system log is stored in InvocationServices.performance_statistics.
"""
import time
from abc import ABC, abstractmethod
from contextlib import AbstractContextManager
from dataclasses import dataclass, field
from typing import Dict
import torch
import invokeai.backend.util.logging as logger
from ..invocations.baseinvocation import BaseInvocation
from .graph import GraphExecutionState
from .item_storage import ItemStorageABC
class InvocationStatsServiceBase(ABC):
"Abstract base class for recording node memory/time performance statistics"
@abstractmethod
def __init__(self, graph_execution_manager: ItemStorageABC["GraphExecutionState"]):
"""
Initialize the InvocationStatsService and reset counters to zero
:param graph_execution_manager: Graph execution manager for this session
"""
pass
@abstractmethod
def collect_stats(
self,
invocation: BaseInvocation,
graph_execution_state_id: str,
) -> AbstractContextManager:
"""
Return a context object that will capture the statistics on the execution
of invocaation. Use with: to place around the part of the code that executes the invocation.
:param invocation: BaseInvocation object from the current graph.
:param graph_execution_state: GraphExecutionState object from the current session.
"""
pass
@abstractmethod
def reset_stats(self, graph_execution_state_id: str):
"""
Reset all statistics for the indicated graph
:param graph_execution_state_id
"""
pass
@abstractmethod
def reset_all_stats(self):
"""Zero all statistics"""
pass
@abstractmethod
def update_invocation_stats(
self,
graph_id: str,
invocation_type: str,
time_used: float,
vram_used: float,
):
"""
Add timing information on execution of a node. Usually
used internally.
:param graph_id: ID of the graph that is currently executing
:param invocation_type: String literal type of the node
:param time_used: Time used by node's exection (sec)
:param vram_used: Maximum VRAM used during exection (GB)
"""
pass
@abstractmethod
def log_stats(self):
"""
Write out the accumulated statistics to the log or somewhere else.
"""
pass
@dataclass
class NodeStats:
"""Class for tracking execution stats of an invocation node"""
calls: int = 0
time_used: float = 0.0 # seconds
max_vram: float = 0.0 # GB
@dataclass
class NodeLog:
"""Class for tracking node usage"""
# {node_type => NodeStats}
nodes: Dict[str, NodeStats] = field(default_factory=dict)
class InvocationStatsService(InvocationStatsServiceBase):
"""Accumulate performance information about a running graph. Collects time spent in each node,
as well as the maximum and current VRAM utilisation for CUDA systems"""
def __init__(self, graph_execution_manager: ItemStorageABC["GraphExecutionState"]):
self.graph_execution_manager = graph_execution_manager
# {graph_id => NodeLog}
self._stats: Dict[str, NodeLog] = {}
class StatsContext:
def __init__(self, invocation: BaseInvocation, graph_id: str, collector: "InvocationStatsServiceBase"):
self.invocation = invocation
self.collector = collector
self.graph_id = graph_id
self.start_time = 0
def __enter__(self):
self.start_time = time.time()
if torch.cuda.is_available():
torch.cuda.reset_peak_memory_stats()
def __exit__(self, *args):
self.collector.update_invocation_stats(
self.graph_id,
self.invocation.type,
time.time() - self.start_time,
torch.cuda.max_memory_allocated() / 1e9 if torch.cuda.is_available() else 0.0,
)
def collect_stats(
self,
invocation: BaseInvocation,
graph_execution_state_id: str,
) -> StatsContext:
"""
Return a context object that will capture the statistics.
:param invocation: BaseInvocation object from the current graph.
:param graph_execution_state: GraphExecutionState object from the current session.
"""
if not self._stats.get(graph_execution_state_id): # first time we're seeing this
self._stats[graph_execution_state_id] = NodeLog()
return self.StatsContext(invocation, graph_execution_state_id, self)
def reset_all_stats(self):
"""Zero all statistics"""
self._stats = {}
def reset_stats(self, graph_execution_id: str):
"""Zero the statistics for the indicated graph."""
try:
self._stats.pop(graph_execution_id)
except KeyError:
logger.warning(f"Attempted to clear statistics for unknown graph {graph_execution_id}")
def update_invocation_stats(self, graph_id: str, invocation_type: str, time_used: float, vram_used: float):
"""
Add timing information on execution of a node. Usually
used internally.
:param graph_id: ID of the graph that is currently executing
:param invocation_type: String literal type of the node
:param time_used: Floating point seconds used by node's exection
"""
if not self._stats[graph_id].nodes.get(invocation_type):
self._stats[graph_id].nodes[invocation_type] = NodeStats()
stats = self._stats[graph_id].nodes[invocation_type]
stats.calls += 1
stats.time_used += time_used
stats.max_vram = max(stats.max_vram, vram_used)
def log_stats(self):
"""
Send the statistics to the system logger at the info level.
Stats will only be printed if when the execution of the graph
is complete.
"""
completed = set()
for graph_id, node_log in self._stats.items():
current_graph_state = self.graph_execution_manager.get(graph_id)
if not current_graph_state.is_complete():
continue
total_time = 0
logger.info(f"Graph stats: {graph_id}")
logger.info("Node Calls Seconds VRAM Used")
for node_type, stats in self._stats[graph_id].nodes.items():
logger.info(f"{node_type:<20} {stats.calls:>5} {stats.time_used:7.3f}s {stats.max_vram:4.2f}G")
total_time += stats.time_used
logger.info(f"TOTAL GRAPH EXECUTION TIME: {total_time:7.3f}s")
if torch.cuda.is_available():
logger.info("Current VRAM utilization " + "%4.2fG" % (torch.cuda.memory_allocated() / 1e9))
completed.add(graph_id)
for graph_id in completed:
del self._stats[graph_id]

View File

@@ -3,9 +3,10 @@
from __future__ import annotations
from abc import ABC, abstractmethod
from logging import Logger
from pathlib import Path
from pydantic import Field
from typing import Optional, Union, Callable, List, Tuple, TYPE_CHECKING
from typing import Literal, Optional, Union, Callable, List, Tuple, TYPE_CHECKING
from types import ModuleType
from invokeai.backend.model_management import (
@@ -193,7 +194,7 @@ class ModelManagerServiceBase(ABC):
self,
model_name: str,
base_model: BaseModelType,
model_type: Union[ModelType.Main, ModelType.Vae],
model_type: Literal[ModelType.Main, ModelType.Vae],
) -> AddModelResult:
"""
Convert a checkpoint file into a diffusers folder, deleting the cached
@@ -292,7 +293,7 @@ class ModelManagerService(ModelManagerServiceBase):
def __init__(
self,
config: InvokeAIAppConfig,
logger: ModuleType,
logger: Logger,
):
"""
Initialize with the path to the models.yaml config file.
@@ -396,7 +397,7 @@ class ModelManagerService(ModelManagerServiceBase):
model_type,
)
def model_info(self, model_name: str, base_model: BaseModelType, model_type: ModelType) -> dict:
def model_info(self, model_name: str, base_model: BaseModelType, model_type: ModelType) -> Union[dict, None]:
"""
Given a model name returns a dict-like (OmegaConf) object describing it.
"""
@@ -416,7 +417,7 @@ class ModelManagerService(ModelManagerServiceBase):
"""
return self.mgr.list_models(base_model, model_type)
def list_model(self, model_name: str, base_model: BaseModelType, model_type: ModelType) -> dict:
def list_model(self, model_name: str, base_model: BaseModelType, model_type: ModelType) -> Union[dict, None]:
"""
Return information about the model using the same format as list_models()
"""
@@ -429,7 +430,7 @@ class ModelManagerService(ModelManagerServiceBase):
model_type: ModelType,
model_attributes: dict,
clobber: bool = False,
) -> None:
) -> AddModelResult:
"""
Update the named model with a dictionary of attributes. Will fail with an
assertion error if the name already exists. Pass clobber=True to overwrite.
@@ -478,7 +479,7 @@ class ModelManagerService(ModelManagerServiceBase):
self,
model_name: str,
base_model: BaseModelType,
model_type: Union[ModelType.Main, ModelType.Vae],
model_type: Literal[ModelType.Main, ModelType.Vae],
convert_dest_directory: Optional[Path] = Field(
default=None, description="Optional directory location for merged model"
),
@@ -573,9 +574,9 @@ class ModelManagerService(ModelManagerServiceBase):
default=None, description="Base model shared by all models to be merged"
),
merged_model_name: str = Field(default=None, description="Name of destination model after merging"),
alpha: Optional[float] = 0.5,
alpha: float = 0.5,
interp: Optional[MergeInterpolationMethod] = None,
force: Optional[bool] = False,
force: bool = False,
merge_dest_directory: Optional[Path] = Field(
default=None, description="Optional directory location for merged model"
),
@@ -633,8 +634,8 @@ class ModelManagerService(ModelManagerServiceBase):
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
new_name: str = None,
new_base: BaseModelType = None,
new_name: Optional[str] = None,
new_base: Optional[BaseModelType] = None,
):
"""
Rename the indicated model. Can provide a new name and/or a new base.

View File

@@ -0,0 +1,8 @@
from pydantic import Field
from invokeai.app.util.model_exclude_null import BaseModelExcludeNull
class BoardImage(BaseModelExcludeNull):
board_id: str = Field(description="The id of the board")
image_name: str = Field(description="The name of the image")

View File

@@ -1,10 +1,11 @@
from typing import Optional, Union
from datetime import datetime
from pydantic import BaseModel, Extra, Field, StrictBool, StrictStr
from pydantic import Field
from invokeai.app.util.misc import get_iso_timestamp
from invokeai.app.util.model_exclude_null import BaseModelExcludeNull
class BoardRecord(BaseModel):
class BoardRecord(BaseModelExcludeNull):
"""Deserialized board record."""
board_id: str = Field(description="The unique ID of the board.")

View File

@@ -1,13 +1,14 @@
import datetime
from typing import Optional, Union
from pydantic import BaseModel, Extra, Field, StrictBool, StrictStr
from pydantic import Extra, Field, StrictBool, StrictStr
from invokeai.app.models.image import ImageCategory, ResourceOrigin
from invokeai.app.util.misc import get_iso_timestamp
from invokeai.app.util.model_exclude_null import BaseModelExcludeNull
class ImageRecord(BaseModel):
class ImageRecord(BaseModelExcludeNull):
"""Deserialized image record without metadata."""
image_name: str = Field(description="The unique name of the image.")
@@ -40,7 +41,7 @@ class ImageRecord(BaseModel):
"""The node ID that generated this image, if it is a generated image."""
class ImageRecordChanges(BaseModel, extra=Extra.forbid):
class ImageRecordChanges(BaseModelExcludeNull, extra=Extra.forbid):
"""A set of changes to apply to an image record.
Only limited changes are valid:
@@ -60,7 +61,7 @@ class ImageRecordChanges(BaseModel, extra=Extra.forbid):
"""The image's new `is_intermediate` flag."""
class ImageUrlsDTO(BaseModel):
class ImageUrlsDTO(BaseModelExcludeNull):
"""The URLs for an image and its thumbnail."""
image_name: str = Field(description="The unique name of the image.")
@@ -76,11 +77,15 @@ class ImageDTO(ImageRecord, ImageUrlsDTO):
board_id: Optional[str] = Field(description="The id of the board the image belongs to, if one exists.")
"""The id of the board the image belongs to, if one exists."""
pass
def image_record_to_dto(
image_record: ImageRecord, image_url: str, thumbnail_url: str, board_id: Optional[str]
image_record: ImageRecord,
image_url: str,
thumbnail_url: str,
board_id: Optional[str],
) -> ImageDTO:
"""Converts an image record to an image DTO."""
return ImageDTO(

View File

@@ -1,14 +1,15 @@
import time
import traceback
from threading import Event, Thread, BoundedSemaphore
from ..invocations.baseinvocation import InvocationContext
from .invocation_queue import InvocationQueueItem
from .invoker import InvocationProcessorABC, Invoker
from ..models.exceptions import CanceledException
from threading import BoundedSemaphore, Event, Thread
import invokeai.backend.util.logging as logger
from ..invocations.baseinvocation import InvocationContext
from ..models.exceptions import CanceledException
from .invocation_queue import InvocationQueueItem
from .invocation_stats import InvocationStatsServiceBase
from .invoker import InvocationProcessorABC, Invoker
class DefaultInvocationProcessor(InvocationProcessorABC):
__invoker_thread: Thread
@@ -35,6 +36,8 @@ class DefaultInvocationProcessor(InvocationProcessorABC):
def __process(self, stop_event: Event):
try:
self.__threadLimit.acquire()
statistics: InvocationStatsServiceBase = self.__invoker.services.performance_statistics
while not stop_event.is_set():
try:
queue_item: InvocationQueueItem = self.__invoker.services.queue.get()
@@ -83,35 +86,38 @@ class DefaultInvocationProcessor(InvocationProcessorABC):
# Invoke
try:
outputs = invocation.invoke(
InvocationContext(
services=self.__invoker.services,
graph_execution_state_id=graph_execution_state.id,
with statistics.collect_stats(invocation, graph_execution_state.id):
outputs = invocation.invoke(
InvocationContext(
services=self.__invoker.services,
graph_execution_state_id=graph_execution_state.id,
)
)
)
# Check queue to see if this is canceled, and skip if so
if self.__invoker.services.queue.is_canceled(graph_execution_state.id):
continue
# Check queue to see if this is canceled, and skip if so
if self.__invoker.services.queue.is_canceled(graph_execution_state.id):
continue
# Save outputs and history
graph_execution_state.complete(invocation.id, outputs)
# Save outputs and history
graph_execution_state.complete(invocation.id, outputs)
# Save the state changes
self.__invoker.services.graph_execution_manager.set(graph_execution_state)
# Save the state changes
self.__invoker.services.graph_execution_manager.set(graph_execution_state)
# Send complete event
self.__invoker.services.events.emit_invocation_complete(
graph_execution_state_id=graph_execution_state.id,
node=invocation.dict(),
source_node_id=source_node_id,
result=outputs.dict(),
)
# Send complete event
self.__invoker.services.events.emit_invocation_complete(
graph_execution_state_id=graph_execution_state.id,
node=invocation.dict(),
source_node_id=source_node_id,
result=outputs.dict(),
)
statistics.log_stats()
except KeyboardInterrupt:
pass
except CanceledException:
statistics.reset_stats(graph_execution_state.id)
pass
except Exception as e:
@@ -133,7 +139,7 @@ class DefaultInvocationProcessor(InvocationProcessorABC):
error_type=e.__class__.__name__,
error=error,
)
statistics.reset_stats(graph_execution_state.id)
pass
# Check queue to see if this is canceled, and skip if so

View File

@@ -20,6 +20,6 @@ class LocalUrlService(UrlServiceBase):
# These paths are determined by the routes in invokeai/app/api/routers/images.py
if thumbnail:
return f"{self._base_url}/images/{image_basename}/thumbnail"
return f"{self._base_url}/images/i/{image_basename}/thumbnail"
return f"{self._base_url}/images/{image_basename}/full"
return f"{self._base_url}/images/i/{image_basename}/full"

View File

@@ -18,5 +18,5 @@ SEED_MAX = np.iinfo(np.uint32).max
def get_random_seed():
rng = np.random.default_rng(seed=0)
rng = np.random.default_rng(seed=None)
return int(rng.integers(0, SEED_MAX))

View File

@@ -0,0 +1,23 @@
from typing import Any
from pydantic import BaseModel
"""
We want to exclude null values from objects that make their way to the client.
Unfortunately there is no built-in way to do this in pydantic, so we need to override the default
dict method to do this.
From https://github.com/tiangolo/fastapi/discussions/8882#discussioncomment-5154541
"""
class BaseModelExcludeNull(BaseModel):
def dict(self, *args, **kwargs) -> dict[str, Any]:
"""
Override the default dict method to exclude None values in the response
"""
kwargs.pop("exclude_none", None)
return super().dict(*args, exclude_none=True, **kwargs)
pass

View File

@@ -1,25 +1,11 @@
"""
invokeai.backend.generator.img2img descends from .generator
"""
from typing import Optional
import torch
from accelerate.utils import set_seed
from diffusers import logging
from ..stable_diffusion import (
ConditioningData,
PostprocessingSettings,
StableDiffusionGeneratorPipeline,
)
from .base import Generator
class Img2Img(Generator):
def __init__(self, model, precision):
super().__init__(model, precision)
self.init_latent = None # by get_noise()
def get_make_image(
self,
sampler,
@@ -42,51 +28,4 @@ class Img2Img(Generator):
Returns a function returning an image derived from the prompt and the initial image
Return value depends on the seed at the time you call it.
"""
self.perlin = perlin
# noinspection PyTypeChecker
pipeline: StableDiffusionGeneratorPipeline = self.model
pipeline.scheduler = sampler
uc, c, extra_conditioning_info = conditioning
conditioning_data = ConditioningData(
uc,
c,
cfg_scale,
extra_conditioning_info,
postprocessing_settings=PostprocessingSettings(
threshold=threshold,
warmup=warmup,
h_symmetry_time_pct=h_symmetry_time_pct,
v_symmetry_time_pct=v_symmetry_time_pct,
),
).add_scheduler_args_if_applicable(pipeline.scheduler, eta=ddim_eta)
def make_image(x_T: torch.Tensor, seed: int):
# FIXME: use x_T for initial seeded noise
# We're not at the moment because the pipeline automatically resizes init_image if
# necessary, which the x_T input might not match.
# In the meantime, reset the seed prior to generating pipeline output so we at least get the same result.
logging.set_verbosity_error() # quench safety check warnings
pipeline_output = pipeline.img2img_from_embeddings(
init_image,
strength,
steps,
conditioning_data,
noise_func=self.get_noise_like,
callback=step_callback,
seed=seed,
)
if pipeline_output.attention_map_saver is not None and attention_maps_callback is not None:
attention_maps_callback(pipeline_output.attention_map_saver)
return pipeline.numpy_to_pil(pipeline_output.images)[0]
return make_image
def get_noise_like(self, like: torch.Tensor):
device = like.device
x = torch.randn_like(like, device=device)
if self.perlin > 0.0:
shape = like.shape
x = (1 - self.perlin) * x + self.perlin * self.get_perlin_noise(shape[3], shape[2])
return x
raise NotImplementedError("replaced by invokeai.app.invocations.latent.LatentsToLatentsInvocation")

View File

@@ -377,3 +377,11 @@ class Inpaint(Img2Img):
)
return corrected_result
def get_noise_like(self, like: torch.Tensor):
device = like.device
x = torch.randn_like(like, device=device)
if self.perlin > 0.0:
shape = like.shape
x = (1 - self.perlin) * x + self.perlin * self.get_perlin_noise(shape[3], shape[2])
return x

View File

@@ -12,16 +12,17 @@ def check_invokeai_root(config: InvokeAIAppConfig):
assert config.model_conf_path.exists(), f"{config.model_conf_path} not found"
assert config.db_path.parent.exists(), f"{config.db_path.parent} not found"
assert config.models_path.exists(), f"{config.models_path} not found"
for model in [
"CLIP-ViT-bigG-14-laion2B-39B-b160k",
"bert-base-uncased",
"clip-vit-large-patch14",
"sd-vae-ft-mse",
"stable-diffusion-2-clip",
"stable-diffusion-safety-checker",
]:
path = config.models_path / f"core/convert/{model}"
assert path.exists(), f"{path} is missing"
if not config.ignore_missing_core_models:
for model in [
"CLIP-ViT-bigG-14-laion2B-39B-b160k",
"bert-base-uncased",
"clip-vit-large-patch14",
"sd-vae-ft-mse",
"stable-diffusion-2-clip",
"stable-diffusion-safety-checker",
]:
path = config.models_path / f"core/convert/{model}"
assert path.exists(), f"{path} is missing"
except Exception as e:
print()
print(f"An exception has occurred: {str(e)}")
@@ -32,5 +33,10 @@ def check_invokeai_root(config: InvokeAIAppConfig):
print(
'** From the command line, activate the virtual environment and run "invokeai-configure --yes --skip-sd-weights" **'
)
print(
'** (To skip this check completely, add "--ignore_missing_core_models" to your CLI args. Not installing '
"these core models will prevent the loading of some or all .safetensors and .ckpt files. However, you can "
"always come back and install these core models in the future.)"
)
input("Press any key to continue...")
sys.exit(0)

View File

@@ -10,15 +10,17 @@ import sys
import argparse
import io
import os
import psutil
import shutil
import textwrap
import torch
import traceback
import yaml
import warnings
from argparse import Namespace
from enum import Enum
from pathlib import Path
from shutil import get_terminal_size
from typing import get_type_hints
from urllib import request
import npyscreen
@@ -44,6 +46,8 @@ from invokeai.app.services.config import (
)
from invokeai.backend.util.logging import InvokeAILogger
from invokeai.frontend.install.model_install import addModelsForm, process_and_execute
# TO DO - Move all the frontend code into invokeai.frontend.install
from invokeai.frontend.install.widgets import (
SingleSelectColumns,
CenteredButtonPress,
@@ -53,6 +57,7 @@ from invokeai.frontend.install.widgets import (
CyclingForm,
MIN_COLS,
MIN_LINES,
WindowTooSmallException,
)
from invokeai.backend.install.legacy_arg_parsing import legacy_parser
from invokeai.backend.install.model_install_backend import (
@@ -61,6 +66,7 @@ from invokeai.backend.install.model_install_backend import (
ModelInstall,
)
from invokeai.backend.model_management.model_probe import ModelType, BaseModelType
from pydantic.error_wrappers import ValidationError
warnings.filterwarnings("ignore")
transformers.logging.set_verbosity_error()
@@ -76,6 +82,13 @@ Default_config_file = config.model_conf_path
SD_Configs = config.legacy_conf_path
PRECISION_CHOICES = ["auto", "float16", "float32"]
GB = 1073741824 # GB in bytes
HAS_CUDA = torch.cuda.is_available()
_, MAX_VRAM = torch.cuda.mem_get_info() if HAS_CUDA else (0, 0)
MAX_VRAM /= GB
MAX_RAM = psutil.virtual_memory().total / GB
INIT_FILE_PREAMBLE = """# InvokeAI initialization file
# This is the InvokeAI initialization file, which contains command-line default values.
@@ -86,6 +99,12 @@ INIT_FILE_PREAMBLE = """# InvokeAI initialization file
logger = InvokeAILogger.getLogger()
class DummyWidgetValue(Enum):
zero = 0
true = True
false = False
# --------------------------------------------
def postscript(errors: None):
if not any(errors):
@@ -376,15 +395,47 @@ Use cursor arrows to make a checkbox selection, and space to toggle.
max_width=80,
scroll_exit=True,
)
self.max_cache_size = self.add_widget_intelligent(
IntTitleSlider,
name="Size of the RAM cache used for fast model switching (GB)",
value=old_opts.max_cache_size,
out_of=20,
lowest=3,
begin_entry_at=6,
self.nextrely += 1
self.add_widget_intelligent(
npyscreen.TitleFixedText,
name="RAM cache size (GB). Make this at least large enough to hold a single full model.",
begin_entry_at=0,
editable=False,
color="CONTROL",
scroll_exit=True,
)
self.nextrely -= 1
self.max_cache_size = self.add_widget_intelligent(
npyscreen.Slider,
value=clip(old_opts.max_cache_size, range=(3.0, MAX_RAM), step=0.5),
out_of=round(MAX_RAM),
lowest=0.0,
step=0.5,
relx=8,
scroll_exit=True,
)
if HAS_CUDA:
self.nextrely += 1
self.add_widget_intelligent(
npyscreen.TitleFixedText,
name="VRAM cache size (GB). Reserving a small amount of VRAM will modestly speed up the start of image generation.",
begin_entry_at=0,
editable=False,
color="CONTROL",
scroll_exit=True,
)
self.nextrely -= 1
self.max_vram_cache_size = self.add_widget_intelligent(
npyscreen.Slider,
value=clip(old_opts.max_vram_cache_size, range=(0, MAX_VRAM), step=0.25),
out_of=round(MAX_VRAM * 2) / 2,
lowest=0.0,
relx=8,
step=0.25,
scroll_exit=True,
)
else:
self.max_vram_cache_size = DummyWidgetValue.zero
self.nextrely += 1
self.outdir = self.add_widget_intelligent(
FileBox,
@@ -401,7 +452,7 @@ Use cursor arrows to make a checkbox selection, and space to toggle.
self.autoimport_dirs = {}
self.autoimport_dirs["autoimport_dir"] = self.add_widget_intelligent(
FileBox,
name=f"Folder to recursively scan for new checkpoints, ControlNets, LoRAs and TI models",
name="Folder to recursively scan for new checkpoints, ControlNets, LoRAs and TI models",
value=str(config.root_path / config.autoimport_dir),
select_dir=True,
must_exist=False,
@@ -476,6 +527,7 @@ https://huggingface.co/stabilityai/stable-diffusion-xl-base-1.0/blob/main/LICENS
"outdir",
"free_gpu_mem",
"max_cache_size",
"max_vram_cache_size",
"xformers_enabled",
"always_use_cpu",
]:
@@ -553,6 +605,16 @@ def default_user_selections(program_opts: Namespace) -> InstallSelections:
)
# -------------------------------------
def clip(value: float, range: tuple[float, float], step: float) -> float:
minimum, maximum = range
if value < minimum:
value = minimum
if value > maximum:
value = maximum
return round(value / step) * step
# -------------------------------------
def initialize_rootdir(root: Path, yes_to_all: bool = False):
logger.info("Initializing InvokeAI runtime directory")
@@ -592,13 +654,13 @@ def maybe_create_models_yaml(root: Path):
# -------------------------------------
def run_console_ui(program_opts: Namespace, initfile: Path = None) -> (Namespace, Namespace):
# parse_args() will read from init file if present
invokeai_opts = default_startup_options(initfile)
invokeai_opts.root = program_opts.root
# The third argument is needed in the Windows 11 environment to
# launch a console window running this program.
set_min_terminal_size(MIN_COLS, MIN_LINES)
if not set_min_terminal_size(MIN_COLS, MIN_LINES):
raise WindowTooSmallException(
"Could not increase terminal size. Try running again with a larger window or smaller font size."
)
# the install-models application spawns a subprocess to install
# models, and will crash unless this is set before running.
@@ -654,10 +716,13 @@ def migrate_init_file(legacy_format: Path):
old = legacy_parser.parse_args([f"@{str(legacy_format)}"])
new = InvokeAIAppConfig.get_config()
fields = list(get_type_hints(InvokeAIAppConfig).keys())
fields = [x for x, y in InvokeAIAppConfig.__fields__.items() if y.field_info.extra.get("category") != "DEPRECATED"]
for attr in fields:
if hasattr(old, attr):
setattr(new, attr, getattr(old, attr))
try:
setattr(new, attr, getattr(old, attr))
except ValidationError as e:
print(f"* Ignoring incompatible value for field {attr}:\n {str(e)}")
# a few places where the field names have changed and we have to
# manually add in the new names/values
@@ -777,6 +842,7 @@ def main():
models_to_download = default_user_selections(opt)
new_init_file = config.root_path / "invokeai.yaml"
if opt.yes_to_all:
write_default_options(opt, new_init_file)
init_options = Namespace(precision="float32" if opt.full_precision else "float16")
@@ -802,6 +868,8 @@ def main():
postscript(errors=errors)
if not opt.yes_to_all:
input("Press any key to continue...")
except WindowTooSmallException as e:
logger.error(str(e))
except KeyboardInterrupt:
print("\nGoodbye! Come back soon.")

View File

@@ -591,7 +591,6 @@ script, which will perform a full upgrade in place.""",
# TODO: revisit - don't rely on invokeai.yaml to exist yet!
dest_is_setup = (dest_root / "models/core").exists() and (dest_root / "databases").exists()
if not dest_is_setup:
import invokeai.frontend.install.invokeai_configure
from invokeai.backend.install.invokeai_configure import initialize_rootdir
initialize_rootdir(dest_root, True)

View File

@@ -13,6 +13,7 @@ import requests
from diffusers import DiffusionPipeline
from diffusers import logging as dlogging
import onnx
import torch
from huggingface_hub import hf_hub_url, HfFolder, HfApi
from omegaconf import OmegaConf
from tqdm import tqdm
@@ -23,6 +24,7 @@ from invokeai.app.services.config import InvokeAIAppConfig
from invokeai.backend.model_management import ModelManager, ModelType, BaseModelType, ModelVariantType, AddModelResult
from invokeai.backend.model_management.model_probe import ModelProbe, SchedulerPredictionType, ModelProbeInfo
from invokeai.backend.util import download_with_resume
from invokeai.backend.util.devices import torch_dtype, choose_torch_device
from ..util.logging import InvokeAILogger
warnings.filterwarnings("ignore")
@@ -99,9 +101,9 @@ class ModelInstall(object):
def __init__(
self,
config: InvokeAIAppConfig,
prediction_type_helper: Callable[[Path], SchedulerPredictionType] = None,
model_manager: ModelManager = None,
access_token: str = None,
prediction_type_helper: Optional[Callable[[Path], SchedulerPredictionType]] = None,
model_manager: Optional[ModelManager] = None,
access_token: Optional[str] = None,
):
self.config = config
self.mgr = model_manager or ModelManager(config.model_conf_path)
@@ -303,7 +305,7 @@ class ModelInstall(object):
with TemporaryDirectory(dir=self.config.models_path) as staging:
staging = Path(staging)
if "model_index.json" in files and "unet/model.onnx" not in files:
if "model_index.json" in files:
location = self._download_hf_pipeline(repo_id, staging) # pipeline
elif "unet/model.onnx" in files:
location = self._download_hf_model(repo_id, files, staging)
@@ -416,15 +418,25 @@ class ModelInstall(object):
does a save_pretrained() to the indicated staging area.
"""
_, name = repo_id.split("/")
revisions = ["fp16", "main"] if self.config.precision == "float16" else ["main"]
precision = torch_dtype(choose_torch_device())
variants = ["fp16", None] if precision == torch.float16 else [None, "fp16"]
model = None
for revision in revisions:
for variant in variants:
try:
model = DiffusionPipeline.from_pretrained(repo_id, revision=revision, safety_checker=None)
except: # most errors are due to fp16 not being present. Fix this to catch other errors
pass
model = DiffusionPipeline.from_pretrained(
repo_id,
variant=variant,
torch_dtype=precision,
safety_checker=None,
)
except Exception as e: # most errors are due to fp16 not being present. Fix this to catch other errors
if "fp16" not in str(e):
print(e)
if model:
break
if not model:
logger.error(f"Diffusers model {repo_id} could not be downloaded. Skipping.")
return None

View File

@@ -13,3 +13,4 @@ from .models import (
DuplicateModelException,
)
from .model_merge import ModelMerger, MergeInterpolationMethod
from .lora import ModelPatcher

View File

@@ -20,424 +20,6 @@ from diffusers.models import UNet2DConditionModel
from safetensors.torch import load_file
from transformers import CLIPTextModel, CLIPTokenizer
# TODO: rename and split this file
class LoRALayerBase:
# rank: Optional[int]
# alpha: Optional[float]
# bias: Optional[torch.Tensor]
# layer_key: str
# @property
# def scale(self):
# return self.alpha / self.rank if (self.alpha and self.rank) else 1.0
def __init__(
self,
layer_key: str,
values: dict,
):
if "alpha" in values:
self.alpha = values["alpha"].item()
else:
self.alpha = None
if "bias_indices" in values and "bias_values" in values and "bias_size" in values:
self.bias = torch.sparse_coo_tensor(
values["bias_indices"],
values["bias_values"],
tuple(values["bias_size"]),
)
else:
self.bias = None
self.rank = None # set in layer implementation
self.layer_key = layer_key
def forward(
self,
module: torch.nn.Module,
input_h: Any, # for real looks like Tuple[torch.nn.Tensor] but not sure
multiplier: float,
):
if type(module) == torch.nn.Conv2d:
op = torch.nn.functional.conv2d
extra_args = dict(
stride=module.stride,
padding=module.padding,
dilation=module.dilation,
groups=module.groups,
)
else:
op = torch.nn.functional.linear
extra_args = {}
weight = self.get_weight()
bias = self.bias if self.bias is not None else 0
scale = self.alpha / self.rank if (self.alpha and self.rank) else 1.0
return (
op(
*input_h,
(weight + bias).view(module.weight.shape),
None,
**extra_args,
)
* multiplier
* scale
)
def get_weight(self):
raise NotImplementedError()
def calc_size(self) -> int:
model_size = 0
for val in [self.bias]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
if self.bias is not None:
self.bias = self.bias.to(device=device, dtype=dtype)
# TODO: find and debug lora/locon with bias
class LoRALayer(LoRALayerBase):
# up: torch.Tensor
# mid: Optional[torch.Tensor]
# down: torch.Tensor
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
self.up = values["lora_up.weight"]
self.down = values["lora_down.weight"]
if "lora_mid.weight" in values:
self.mid = values["lora_mid.weight"]
else:
self.mid = None
self.rank = self.down.shape[0]
def get_weight(self):
if self.mid is not None:
up = self.up.reshape(self.up.shape[0], self.up.shape[1])
down = self.down.reshape(self.down.shape[0], self.down.shape[1])
weight = torch.einsum("m n w h, i m, n j -> i j w h", self.mid, up, down)
else:
weight = self.up.reshape(self.up.shape[0], -1) @ self.down.reshape(self.down.shape[0], -1)
return weight
def calc_size(self) -> int:
model_size = super().calc_size()
for val in [self.up, self.mid, self.down]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
self.up = self.up.to(device=device, dtype=dtype)
self.down = self.down.to(device=device, dtype=dtype)
if self.mid is not None:
self.mid = self.mid.to(device=device, dtype=dtype)
class LoHALayer(LoRALayerBase):
# w1_a: torch.Tensor
# w1_b: torch.Tensor
# w2_a: torch.Tensor
# w2_b: torch.Tensor
# t1: Optional[torch.Tensor] = None
# t2: Optional[torch.Tensor] = None
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
self.w1_a = values["hada_w1_a"]
self.w1_b = values["hada_w1_b"]
self.w2_a = values["hada_w2_a"]
self.w2_b = values["hada_w2_b"]
if "hada_t1" in values:
self.t1 = values["hada_t1"]
else:
self.t1 = None
if "hada_t2" in values:
self.t2 = values["hada_t2"]
else:
self.t2 = None
self.rank = self.w1_b.shape[0]
def get_weight(self):
if self.t1 is None:
weight = (self.w1_a @ self.w1_b) * (self.w2_a @ self.w2_b)
else:
rebuild1 = torch.einsum("i j k l, j r, i p -> p r k l", self.t1, self.w1_b, self.w1_a)
rebuild2 = torch.einsum("i j k l, j r, i p -> p r k l", self.t2, self.w2_b, self.w2_a)
weight = rebuild1 * rebuild2
return weight
def calc_size(self) -> int:
model_size = super().calc_size()
for val in [self.w1_a, self.w1_b, self.w2_a, self.w2_b, self.t1, self.t2]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
self.w1_a = self.w1_a.to(device=device, dtype=dtype)
self.w1_b = self.w1_b.to(device=device, dtype=dtype)
if self.t1 is not None:
self.t1 = self.t1.to(device=device, dtype=dtype)
self.w2_a = self.w2_a.to(device=device, dtype=dtype)
self.w2_b = self.w2_b.to(device=device, dtype=dtype)
if self.t2 is not None:
self.t2 = self.t2.to(device=device, dtype=dtype)
class LoKRLayer(LoRALayerBase):
# w1: Optional[torch.Tensor] = None
# w1_a: Optional[torch.Tensor] = None
# w1_b: Optional[torch.Tensor] = None
# w2: Optional[torch.Tensor] = None
# w2_a: Optional[torch.Tensor] = None
# w2_b: Optional[torch.Tensor] = None
# t2: Optional[torch.Tensor] = None
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
if "lokr_w1" in values:
self.w1 = values["lokr_w1"]
self.w1_a = None
self.w1_b = None
else:
self.w1 = None
self.w1_a = values["lokr_w1_a"]
self.w1_b = values["lokr_w1_b"]
if "lokr_w2" in values:
self.w2 = values["lokr_w2"]
self.w2_a = None
self.w2_b = None
else:
self.w2 = None
self.w2_a = values["lokr_w2_a"]
self.w2_b = values["lokr_w2_b"]
if "lokr_t2" in values:
self.t2 = values["lokr_t2"]
else:
self.t2 = None
if "lokr_w1_b" in values:
self.rank = values["lokr_w1_b"].shape[0]
elif "lokr_w2_b" in values:
self.rank = values["lokr_w2_b"].shape[0]
else:
self.rank = None # unscaled
def get_weight(self):
w1 = self.w1
if w1 is None:
w1 = self.w1_a @ self.w1_b
w2 = self.w2
if w2 is None:
if self.t2 is None:
w2 = self.w2_a @ self.w2_b
else:
w2 = torch.einsum("i j k l, i p, j r -> p r k l", self.t2, self.w2_a, self.w2_b)
if len(w2.shape) == 4:
w1 = w1.unsqueeze(2).unsqueeze(2)
w2 = w2.contiguous()
weight = torch.kron(w1, w2)
return weight
def calc_size(self) -> int:
model_size = super().calc_size()
for val in [self.w1, self.w1_a, self.w1_b, self.w2, self.w2_a, self.w2_b, self.t2]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
if self.w1 is not None:
self.w1 = self.w1.to(device=device, dtype=dtype)
else:
self.w1_a = self.w1_a.to(device=device, dtype=dtype)
self.w1_b = self.w1_b.to(device=device, dtype=dtype)
if self.w2 is not None:
self.w2 = self.w2.to(device=device, dtype=dtype)
else:
self.w2_a = self.w2_a.to(device=device, dtype=dtype)
self.w2_b = self.w2_b.to(device=device, dtype=dtype)
if self.t2 is not None:
self.t2 = self.t2.to(device=device, dtype=dtype)
class LoRAModel: # (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,
dtype: Optional[torch.dtype] = None,
) -> LoRAModel:
# 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
for _, layer in self.layers.items():
model_size += layer.calc_size()
return model_size
@classmethod
def from_checkpoint(
cls,
file_path: Union[str, Path],
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
device = device or torch.device("cpu")
dtype = dtype or torch.float32
if isinstance(file_path, str):
file_path = Path(file_path)
model = cls(
device=device,
dtype=dtype,
name=file_path.stem, # TODO:
layers=dict(),
)
if file_path.suffix == ".safetensors":
state_dict = load_file(file_path.absolute().as_posix(), device="cpu")
else:
state_dict = torch.load(file_path, map_location="cpu")
state_dict = cls._group_state(state_dict)
for layer_key, values in state_dict.items():
# lora and locon
if "lora_down.weight" in values:
layer = LoRALayer(layer_key, values)
# loha
elif "hada_w1_b" in values:
layer = LoHALayer(layer_key, values)
# lokr
elif "lokr_w1_b" in values or "lokr_w1" in values:
layer = LoKRLayer(layer_key, values)
else:
# TODO: diff/ia3/... format
print(f">> Encountered unknown lora layer module in {model.name}: {layer_key}")
return
# lower memory consumption by removing already parsed layer values
state_dict[layer_key].clear()
layer.to(device=device, dtype=dtype)
model.layers[layer_key] = layer
return model
@staticmethod
def _group_state(state_dict: dict):
state_dict_groupped = dict()
for key, value in state_dict.items():
stem, leaf = key.split(".", 1)
if stem not in state_dict_groupped:
state_dict_groupped[stem] = dict()
state_dict_groupped[stem][leaf] = value
return state_dict_groupped
"""
loras = [
(lora_model1, 0.7),
@@ -516,6 +98,26 @@ class ModelPatcher:
with cls.apply_lora(text_encoder, loras, "lora_te_"):
yield
@classmethod
@contextmanager
def apply_sdxl_lora_text_encoder(
cls,
text_encoder: CLIPTextModel,
loras: List[Tuple[LoRAModel, float]],
):
with cls.apply_lora(text_encoder, loras, "lora_te1_"):
yield
@classmethod
@contextmanager
def apply_sdxl_lora_text_encoder2(
cls,
text_encoder: CLIPTextModel,
loras: List[Tuple[LoRAModel, float]],
):
with cls.apply_lora(text_encoder, loras, "lora_te2_"):
yield
@classmethod
@contextmanager
def apply_lora(
@@ -541,7 +143,7 @@ class ModelPatcher:
# 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() * lora_weight * layer_scale
layer_weight = layer.get_weight(original_weights[module_key]) * lora_weight * layer_scale
if module.weight.shape != layer_weight.shape:
# TODO: debug on lycoris
@@ -562,7 +164,7 @@ class ModelPatcher:
cls,
tokenizer: CLIPTokenizer,
text_encoder: CLIPTextModel,
ti_list: List[Any],
ti_list: List[Tuple[str, Any]],
) -> Tuple[CLIPTokenizer, TextualInversionManager]:
init_tokens_count = None
new_tokens_added = None
@@ -572,27 +174,27 @@ class ModelPatcher:
ti_manager = TextualInversionManager(ti_tokenizer)
init_tokens_count = text_encoder.resize_token_embeddings(None).num_embeddings
def _get_trigger(ti, index):
trigger = ti.name
def _get_trigger(ti_name, index):
trigger = ti_name
if index > 0:
trigger += f"-!pad-{i}"
return f"<{trigger}>"
# modify tokenizer
new_tokens_added = 0
for ti in ti_list:
for ti_name, ti in ti_list:
for i in range(ti.embedding.shape[0]):
new_tokens_added += ti_tokenizer.add_tokens(_get_trigger(ti, i))
new_tokens_added += ti_tokenizer.add_tokens(_get_trigger(ti_name, i))
# modify text_encoder
text_encoder.resize_token_embeddings(init_tokens_count + new_tokens_added)
model_embeddings = text_encoder.get_input_embeddings()
for ti in ti_list:
for ti_name, ti in ti_list:
ti_tokens = []
for i in range(ti.embedding.shape[0]):
embedding = ti.embedding[i]
trigger = _get_trigger(ti, i)
trigger = _get_trigger(ti_name, i)
token_id = ti_tokenizer.convert_tokens_to_ids(trigger)
if token_id == ti_tokenizer.unk_token_id:
@@ -637,7 +239,6 @@ class ModelPatcher:
class TextualInversionModel:
name: str
embedding: torch.Tensor # [n, 768]|[n, 1280]
@classmethod
@@ -651,7 +252,6 @@ class TextualInversionModel:
file_path = Path(file_path)
result = cls() # TODO:
result.name = file_path.stem # TODO:
if file_path.suffix == ".safetensors":
state_dict = load_file(file_path.absolute().as_posix(), device="cpu")
@@ -761,7 +361,8 @@ class ONNXModelPatcher:
layer.to(dtype=torch.float32)
layer_key = layer_key.replace(prefix, "")
layer_weight = layer.get_weight().detach().cpu().numpy() * lora_weight
# TODO: rewrite to pass original tensor weight(required by ia3)
layer_weight = layer.get_weight(None).detach().cpu().numpy() * lora_weight
if layer_key is blended_loras:
blended_loras[layer_key] += layer_weight
else:
@@ -828,7 +429,7 @@ class ONNXModelPatcher:
cls,
tokenizer: CLIPTokenizer,
text_encoder: IAIOnnxRuntimeModel,
ti_list: List[Any],
ti_list: List[Tuple[str, Any]],
) -> Tuple[CLIPTokenizer, TextualInversionManager]:
from .models.base import IAIOnnxRuntimeModel
@@ -841,17 +442,17 @@ class ONNXModelPatcher:
ti_tokenizer = copy.deepcopy(tokenizer)
ti_manager = TextualInversionManager(ti_tokenizer)
def _get_trigger(ti, index):
trigger = ti.name
def _get_trigger(ti_name, index):
trigger = ti_name
if index > 0:
trigger += f"-!pad-{i}"
return f"<{trigger}>"
# modify tokenizer
new_tokens_added = 0
for ti in ti_list:
for ti_name, ti in ti_list:
for i in range(ti.embedding.shape[0]):
new_tokens_added += ti_tokenizer.add_tokens(_get_trigger(ti, i))
new_tokens_added += ti_tokenizer.add_tokens(_get_trigger(ti_name, i))
# modify text_encoder
orig_embeddings = text_encoder.tensors["text_model.embeddings.token_embedding.weight"]
@@ -861,11 +462,11 @@ class ONNXModelPatcher:
axis=0,
)
for ti in ti_list:
for ti_name, ti in ti_list:
ti_tokens = []
for i in range(ti.embedding.shape[0]):
embedding = ti.embedding[i].detach().numpy()
trigger = _get_trigger(ti, i)
trigger = _get_trigger(ti_name, i)
token_id = ti_tokenizer.convert_tokens_to_ids(trigger)
if token_id == ti_tokenizer.unk_token_id:

View File

@@ -28,8 +28,6 @@ import torch
import logging
import invokeai.backend.util.logging as logger
from invokeai.app.services.config import get_invokeai_config
from .lora import LoRAModel, TextualInversionModel
from .models import BaseModelType, ModelType, SubModelType, ModelBase
# Maximum size of the cache, in gigs
@@ -188,7 +186,7 @@ class ModelCache(object):
cache_entry = self._cached_models.get(key, None)
if cache_entry is None:
self.logger.info(
f"Loading model {model_path}, type {base_model.value}:{model_type.value}:{submodel.value if submodel else ''}"
f"Loading model {model_path}, type {base_model.value}:{model_type.value}{':'+submodel.value if submodel else ''}"
)
# this will remove older cached models until

View File

@@ -228,19 +228,19 @@ the root is the InvokeAI ROOTDIR.
"""
from __future__ import annotations
import os
import hashlib
import os
import textwrap
import yaml
import types
from dataclasses import dataclass
from pathlib import Path
from typing import Optional, List, Tuple, Union, Dict, Set, Callable, types
from shutil import rmtree, move
from typing import Optional, List, Literal, Tuple, Union, Dict, Set, Callable
import torch
import yaml
from omegaconf import OmegaConf
from omegaconf.dictconfig import DictConfig
from pydantic import BaseModel, Field
import invokeai.backend.util.logging as logger
@@ -259,6 +259,7 @@ from .models import (
ModelNotFoundException,
InvalidModelException,
DuplicateModelException,
ModelBase,
)
# We are only starting to number the config file with release 3.
@@ -361,7 +362,7 @@ class ModelManager(object):
if model_key.startswith("_"):
continue
model_name, base_model, model_type = self.parse_key(model_key)
model_class = MODEL_CLASSES[base_model][model_type]
model_class = self._get_implementation(base_model, model_type)
# alias for config file
model_config["model_format"] = model_config.pop("format")
self.models[model_key] = model_class.create_config(**model_config)
@@ -381,18 +382,24 @@ class ModelManager(object):
# causing otherwise unreferenced models to be removed from memory
self._read_models()
def model_exists(
self,
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
) -> bool:
def model_exists(self, model_name: str, base_model: BaseModelType, model_type: ModelType, *, rescan=False) -> bool:
"""
Given a model name, returns True if it is a valid
identifier.
Given a model name, returns True if it is a valid identifier.
:param model_name: symbolic name of the model in models.yaml
:param model_type: ModelType enum indicating the type of model to return
:param base_model: BaseModelType enum indicating the base model used by this model
:param rescan: if True, scan_models_directory
"""
model_key = self.create_key(model_name, base_model, model_type)
return model_key in self.models
exists = model_key in self.models
# if model not found try to find it (maybe file just pasted)
if rescan and not exists:
self.scan_models_directory(base_model=base_model, model_type=model_type)
exists = self.model_exists(model_name, base_model, model_type, rescan=False)
return exists
@classmethod
def create_key(
@@ -443,39 +450,32 @@ class ModelManager(object):
:param model_name: symbolic name of the model in models.yaml
:param model_type: ModelType enum indicating the type of model to return
:param base_model: BaseModelType enum indicating the base model used by this model
:param submode_typel: an ModelType enum indicating the portion of
:param submodel_type: an ModelType enum indicating the portion of
the model to retrieve (e.g. ModelType.Vae)
"""
model_class = MODEL_CLASSES[base_model][model_type]
model_key = self.create_key(model_name, base_model, model_type)
# if model not found try to find it (maybe file just pasted)
if model_key not in self.models:
self.scan_models_directory(base_model=base_model, model_type=model_type)
if model_key not in self.models:
raise ModelNotFoundException(f"Model not found - {model_key}")
if not self.model_exists(model_name, base_model, model_type, rescan=True):
raise ModelNotFoundException(f"Model not found - {model_key}")
model_config = self.models[model_key]
model_path = self.resolve_model_path(model_config.path)
model_config = self._get_model_config(base_model, model_name, model_type)
model_path, is_submodel_override = self._get_model_path(model_config, submodel_type)
if is_submodel_override:
model_type = submodel_type
submodel_type = None
model_class = self._get_implementation(base_model, model_type)
if not model_path.exists():
if model_class.save_to_config:
self.models[model_key].error = ModelError.NotFound
raise Exception(f'Files for model "{model_key}" not found')
raise Exception(f'Files for model "{model_key}" not found at {model_path}')
else:
self.models.pop(model_key, None)
raise ModelNotFoundException(f"Model not found - {model_key}")
# vae/movq override
# TODO:
if submodel_type is not None and hasattr(model_config, submodel_type):
override_path = getattr(model_config, submodel_type)
if override_path:
model_path = self.app_config.root_path / override_path
model_type = submodel_type
submodel_type = None
model_class = MODEL_CLASSES[base_model][model_type]
raise ModelNotFoundException(f'Files for model "{model_key}" not found at {model_path}')
# TODO: path
# TODO: is it accurate to use path as id
@@ -513,12 +513,61 @@ class ModelManager(object):
_cache=self.cache,
)
def _get_model_path(
self, model_config: ModelConfigBase, submodel_type: Optional[SubModelType] = None
) -> (Path, bool):
"""Extract a model's filesystem path from its config.
:return: The fully qualified Path of the module (or submodule).
"""
model_path = model_config.path
is_submodel_override = False
# Does the config explicitly override the submodel?
if submodel_type is not None and hasattr(model_config, submodel_type):
submodel_path = getattr(model_config, submodel_type)
if submodel_path is not None and len(submodel_path) > 0:
model_path = getattr(model_config, submodel_type)
is_submodel_override = True
model_path = self.resolve_model_path(model_path)
return model_path, is_submodel_override
def _get_model_config(self, base_model: BaseModelType, model_name: str, model_type: ModelType) -> ModelConfigBase:
"""Get a model's config object."""
model_key = self.create_key(model_name, base_model, model_type)
try:
model_config = self.models[model_key]
except KeyError:
raise ModelNotFoundException(f"Model not found - {model_key}")
return model_config
def _get_implementation(self, base_model: BaseModelType, model_type: ModelType) -> type[ModelBase]:
"""Get the concrete implementation class for a specific model type."""
model_class = MODEL_CLASSES[base_model][model_type]
return model_class
def _instantiate(
self,
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
submodel_type: Optional[SubModelType] = None,
) -> ModelBase:
"""Make a new instance of this model, without loading it."""
model_config = self._get_model_config(base_model, model_name, model_type)
model_path, is_submodel_override = self._get_model_path(model_config, submodel_type)
# FIXME: do non-overriden submodels get the right class?
constructor = self._get_implementation(base_model, model_type)
instance = constructor(model_path, base_model, model_type)
return instance
def model_info(
self,
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
) -> dict:
) -> Union[dict, None]:
"""
Given a model name returns the OmegaConf (dict-like) object describing it.
"""
@@ -540,13 +589,16 @@ class ModelManager(object):
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
) -> dict:
) -> Union[dict, None]:
"""
Returns a dict describing one installed model, using
the combined format of the list_models() method.
"""
models = self.list_models(base_model, model_type, model_name)
return models[0] if models else None
if len(models) >= 1:
return models[0]
else:
return None
def list_models(
self,
@@ -560,7 +612,7 @@ class ModelManager(object):
model_keys = (
[self.create_key(model_name, base_model, model_type)]
if model_name
if model_name and base_model and model_type
else sorted(self.models, key=str.casefold)
)
models = []
@@ -596,7 +648,7 @@ class ModelManager(object):
Print a table of models and their descriptions. This needs to be redone
"""
# TODO: redo
for model_type, model_dict in self.list_models().items():
for model_dict in self.list_models():
for model_name, model_info in model_dict.items():
line = f'{model_info["name"]:25s} {model_info["type"]:10s} {model_info["description"]}'
print(line)
@@ -658,7 +710,7 @@ class ModelManager(object):
if path := model_attributes.get("path"):
model_attributes["path"] = str(self.relative_model_path(Path(path)))
model_class = MODEL_CLASSES[base_model][model_type]
model_class = self._get_implementation(base_model, model_type)
model_config = model_class.create_config(**model_attributes)
model_key = self.create_key(model_name, base_model, model_type)
@@ -670,7 +722,7 @@ class ModelManager(object):
# TODO: if path changed and old_model.path inside models folder should we delete this too?
# remove conversion cache as config changed
old_model_path = self.app_config.root_path / old_model.path
old_model_path = self.resolve_model_path(old_model.path)
old_model_cache = self._get_model_cache_path(old_model_path)
if old_model_cache.exists():
if old_model_cache.is_dir():
@@ -699,8 +751,8 @@ class ModelManager(object):
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
new_name: str = None,
new_base: BaseModelType = None,
new_name: Optional[str] = None,
new_base: Optional[BaseModelType] = None,
):
"""
Rename or rebase a model.
@@ -753,7 +805,7 @@ class ModelManager(object):
self,
model_name: str,
base_model: BaseModelType,
model_type: Union[ModelType.Main, ModelType.Vae],
model_type: Literal[ModelType.Main, ModelType.Vae],
dest_directory: Optional[Path] = None,
) -> AddModelResult:
"""
@@ -767,6 +819,10 @@ class ModelManager(object):
This will raise a ValueError unless the model is a checkpoint.
"""
info = self.model_info(model_name, base_model, model_type)
if info is None:
raise FileNotFoundError(f"model not found: {model_name}")
if info["model_format"] != "checkpoint":
raise ValueError(f"not a checkpoint format model: {model_name}")
@@ -780,7 +836,7 @@ class ModelManager(object):
model_type,
**submodel,
)
checkpoint_path = self.app_config.root_path / info["path"]
checkpoint_path = self.resolve_model_path(info["path"])
old_diffusers_path = self.resolve_model_path(model.location)
new_diffusers_path = (
dest_directory or self.app_config.models_path / base_model.value / model_type.value
@@ -836,7 +892,7 @@ class ModelManager(object):
return search_folder, found_models
def commit(self, conf_file: Path = None) -> None:
def commit(self, conf_file: Optional[Path] = None) -> None:
"""
Write current configuration out to the indicated file.
"""
@@ -845,7 +901,7 @@ class ModelManager(object):
for model_key, model_config in self.models.items():
model_name, base_model, model_type = self.parse_key(model_key)
model_class = MODEL_CLASSES[base_model][model_type]
model_class = self._get_implementation(base_model, model_type)
if model_class.save_to_config:
# TODO: or exclude_unset better fits here?
data_to_save[model_key] = model_config.dict(exclude_defaults=True, exclude={"error"})
@@ -903,7 +959,7 @@ class ModelManager(object):
model_path = self.resolve_model_path(model_config.path).absolute()
if not model_path.exists():
model_class = MODEL_CLASSES[cur_base_model][cur_model_type]
model_class = self._get_implementation(cur_base_model, cur_model_type)
if model_class.save_to_config:
model_config.error = ModelError.NotFound
self.models.pop(model_key, None)
@@ -919,7 +975,7 @@ class ModelManager(object):
for cur_model_type in ModelType:
if model_type is not None and cur_model_type != model_type:
continue
model_class = MODEL_CLASSES[cur_base_model][cur_model_type]
model_class = self._get_implementation(cur_base_model, cur_model_type)
models_dir = self.resolve_model_path(Path(cur_base_model.value, cur_model_type.value))
if not models_dir.exists():
@@ -935,7 +991,9 @@ class ModelManager(object):
raise DuplicateModelException(f"Model with key {model_key} added twice")
model_path = self.relative_model_path(model_path)
model_config: ModelConfigBase = model_class.probe_config(str(model_path))
model_config: ModelConfigBase = model_class.probe_config(
str(model_path), model_base=cur_base_model
)
self.models[model_key] = model_config
new_models_found = True
except DuplicateModelException as e:
@@ -983,7 +1041,7 @@ class ModelManager(object):
# LS: hacky
# Patch in the SD VAE from core so that it is available for use by the UI
try:
self.heuristic_import({self.resolve_model_path("core/convert/sd-vae-ft-mse")})
self.heuristic_import({str(self.resolve_model_path("core/convert/sd-vae-ft-mse"))})
except:
pass
@@ -992,7 +1050,7 @@ class ModelManager(object):
model_manager=self,
prediction_type_helper=ask_user_for_prediction_type,
)
known_paths = {config.root_path / x["path"] for x in self.list_models()}
known_paths = {self.resolve_model_path(x["path"]) for x in self.list_models()}
directories = {
config.root_path / x
for x in [
@@ -1011,7 +1069,7 @@ class ModelManager(object):
def heuristic_import(
self,
items_to_import: Set[str],
prediction_type_helper: Callable[[Path], SchedulerPredictionType] = None,
prediction_type_helper: Optional[Callable[[Path], SchedulerPredictionType]] = None,
) -> Dict[str, AddModelResult]:
"""Import a list of paths, repo_ids or URLs. Returns the set of
successfully imported items.

View File

@@ -33,7 +33,7 @@ class ModelMerger(object):
self,
model_paths: List[Path],
alpha: float = 0.5,
interp: MergeInterpolationMethod = None,
interp: Optional[MergeInterpolationMethod] = None,
force: bool = False,
**kwargs,
) -> DiffusionPipeline:
@@ -73,7 +73,7 @@ class ModelMerger(object):
base_model: Union[BaseModelType, str],
merged_model_name: str,
alpha: float = 0.5,
interp: MergeInterpolationMethod = None,
interp: Optional[MergeInterpolationMethod] = None,
force: bool = False,
merge_dest_directory: Optional[Path] = None,
**kwargs,
@@ -122,7 +122,7 @@ class ModelMerger(object):
dump_path.mkdir(parents=True, exist_ok=True)
dump_path = dump_path / merged_model_name
merged_pipe.save_pretrained(dump_path, safe_serialization=1)
merged_pipe.save_pretrained(dump_path, safe_serialization=True)
attributes = dict(
path=str(dump_path),
description=f"Merge of models {', '.join(model_names)}",

View File

@@ -17,6 +17,7 @@ from .models import (
SilenceWarnings,
InvalidModelException,
)
from .util import lora_token_vector_length
from .models.base import read_checkpoint_meta
@@ -315,21 +316,16 @@ class LoRACheckpointProbe(CheckpointProbeBase):
def get_base_type(self) -> BaseModelType:
checkpoint = self.checkpoint
key1 = "lora_te_text_model_encoder_layers_0_mlp_fc1.lora_down.weight"
key2 = "lora_te_text_model_encoder_layers_0_self_attn_k_proj.hada_w1_a"
lora_token_vector_length = (
checkpoint[key1].shape[1]
if key1 in checkpoint
else checkpoint[key2].shape[0]
if key2 in checkpoint
else 768
)
if lora_token_vector_length == 768:
token_vector_length = lora_token_vector_length(checkpoint)
if token_vector_length == 768:
return BaseModelType.StableDiffusion1
elif lora_token_vector_length == 1024:
elif token_vector_length == 1024:
return BaseModelType.StableDiffusion2
elif token_vector_length == 2048:
return BaseModelType.StableDiffusionXL
else:
return None
raise InvalidModelException(f"Unknown LoRA type: {self.checkpoint_path}")
class TextualInversionCheckpointProbe(CheckpointProbeBase):

View File

@@ -292,8 +292,9 @@ class DiffusersModel(ModelBase):
)
break
except Exception as e:
# print("====ERR LOAD====")
# print(f"{variant}: {e}")
if not str(e).startswith("Error no file"):
print("====ERR LOAD====")
print(f"{variant}: {e}")
pass
else:
raise Exception(f"Failed to load {self.base_model}:{self.model_type}:{child_type} model")

View File

@@ -1,7 +1,9 @@
import os
import torch
from enum import Enum
from typing import Optional, Union, Literal
from typing import Optional, Dict, Union, Literal, Any
from pathlib import Path
from safetensors.torch import load_file
from .base import (
ModelBase,
ModelConfigBase,
@@ -13,9 +15,6 @@ from .base import (
ModelNotFoundException,
)
# TODO: naming
from ..lora import LoRAModel as LoRAModelRaw
class LoRAModelFormat(str, Enum):
LyCORIS = "lycoris"
@@ -50,6 +49,7 @@ class LoRAModel(ModelBase):
model = LoRAModelRaw.from_checkpoint(
file_path=self.model_path,
dtype=torch_dtype,
base_model=self.base_model,
)
self.model_size = model.calc_size()
@@ -87,3 +87,591 @@ class LoRAModel(ModelBase):
raise NotImplementedError("Diffusers lora not supported")
else:
return model_path
class LoRALayerBase:
# rank: Optional[int]
# alpha: Optional[float]
# bias: Optional[torch.Tensor]
# layer_key: str
# @property
# def scale(self):
# return self.alpha / self.rank if (self.alpha and self.rank) else 1.0
def __init__(
self,
layer_key: str,
values: dict,
):
if "alpha" in values:
self.alpha = values["alpha"].item()
else:
self.alpha = None
if "bias_indices" in values and "bias_values" in values and "bias_size" in values:
self.bias = torch.sparse_coo_tensor(
values["bias_indices"],
values["bias_values"],
tuple(values["bias_size"]),
)
else:
self.bias = None
self.rank = None # set in layer implementation
self.layer_key = layer_key
def get_weight(self, orig_weight: torch.Tensor):
raise NotImplementedError()
def calc_size(self) -> int:
model_size = 0
for val in [self.bias]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
if self.bias is not None:
self.bias = self.bias.to(device=device, dtype=dtype)
# TODO: find and debug lora/locon with bias
class LoRALayer(LoRALayerBase):
# up: torch.Tensor
# mid: Optional[torch.Tensor]
# down: torch.Tensor
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
self.up = values["lora_up.weight"]
self.down = values["lora_down.weight"]
if "lora_mid.weight" in values:
self.mid = values["lora_mid.weight"]
else:
self.mid = None
self.rank = self.down.shape[0]
def get_weight(self, orig_weight: torch.Tensor):
if self.mid is not None:
up = self.up.reshape(self.up.shape[0], self.up.shape[1])
down = self.down.reshape(self.down.shape[0], self.down.shape[1])
weight = torch.einsum("m n w h, i m, n j -> i j w h", self.mid, up, down)
else:
weight = self.up.reshape(self.up.shape[0], -1) @ self.down.reshape(self.down.shape[0], -1)
return weight
def calc_size(self) -> int:
model_size = super().calc_size()
for val in [self.up, self.mid, self.down]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
self.up = self.up.to(device=device, dtype=dtype)
self.down = self.down.to(device=device, dtype=dtype)
if self.mid is not None:
self.mid = self.mid.to(device=device, dtype=dtype)
class LoHALayer(LoRALayerBase):
# w1_a: torch.Tensor
# w1_b: torch.Tensor
# w2_a: torch.Tensor
# w2_b: torch.Tensor
# t1: Optional[torch.Tensor] = None
# t2: Optional[torch.Tensor] = None
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
self.w1_a = values["hada_w1_a"]
self.w1_b = values["hada_w1_b"]
self.w2_a = values["hada_w2_a"]
self.w2_b = values["hada_w2_b"]
if "hada_t1" in values:
self.t1 = values["hada_t1"]
else:
self.t1 = None
if "hada_t2" in values:
self.t2 = values["hada_t2"]
else:
self.t2 = None
self.rank = self.w1_b.shape[0]
def get_weight(self, orig_weight: torch.Tensor):
if self.t1 is None:
weight = (self.w1_a @ self.w1_b) * (self.w2_a @ self.w2_b)
else:
rebuild1 = torch.einsum("i j k l, j r, i p -> p r k l", self.t1, self.w1_b, self.w1_a)
rebuild2 = torch.einsum("i j k l, j r, i p -> p r k l", self.t2, self.w2_b, self.w2_a)
weight = rebuild1 * rebuild2
return weight
def calc_size(self) -> int:
model_size = super().calc_size()
for val in [self.w1_a, self.w1_b, self.w2_a, self.w2_b, self.t1, self.t2]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
self.w1_a = self.w1_a.to(device=device, dtype=dtype)
self.w1_b = self.w1_b.to(device=device, dtype=dtype)
if self.t1 is not None:
self.t1 = self.t1.to(device=device, dtype=dtype)
self.w2_a = self.w2_a.to(device=device, dtype=dtype)
self.w2_b = self.w2_b.to(device=device, dtype=dtype)
if self.t2 is not None:
self.t2 = self.t2.to(device=device, dtype=dtype)
class LoKRLayer(LoRALayerBase):
# w1: Optional[torch.Tensor] = None
# w1_a: Optional[torch.Tensor] = None
# w1_b: Optional[torch.Tensor] = None
# w2: Optional[torch.Tensor] = None
# w2_a: Optional[torch.Tensor] = None
# w2_b: Optional[torch.Tensor] = None
# t2: Optional[torch.Tensor] = None
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
if "lokr_w1" in values:
self.w1 = values["lokr_w1"]
self.w1_a = None
self.w1_b = None
else:
self.w1 = None
self.w1_a = values["lokr_w1_a"]
self.w1_b = values["lokr_w1_b"]
if "lokr_w2" in values:
self.w2 = values["lokr_w2"]
self.w2_a = None
self.w2_b = None
else:
self.w2 = None
self.w2_a = values["lokr_w2_a"]
self.w2_b = values["lokr_w2_b"]
if "lokr_t2" in values:
self.t2 = values["lokr_t2"]
else:
self.t2 = None
if "lokr_w1_b" in values:
self.rank = values["lokr_w1_b"].shape[0]
elif "lokr_w2_b" in values:
self.rank = values["lokr_w2_b"].shape[0]
else:
self.rank = None # unscaled
def get_weight(self, orig_weight: torch.Tensor):
w1 = self.w1
if w1 is None:
w1 = self.w1_a @ self.w1_b
w2 = self.w2
if w2 is None:
if self.t2 is None:
w2 = self.w2_a @ self.w2_b
else:
w2 = torch.einsum("i j k l, i p, j r -> p r k l", self.t2, self.w2_a, self.w2_b)
if len(w2.shape) == 4:
w1 = w1.unsqueeze(2).unsqueeze(2)
w2 = w2.contiguous()
weight = torch.kron(w1, w2)
return weight
def calc_size(self) -> int:
model_size = super().calc_size()
for val in [self.w1, self.w1_a, self.w1_b, self.w2, self.w2_a, self.w2_b, self.t2]:
if val is not None:
model_size += val.nelement() * val.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
if self.w1 is not None:
self.w1 = self.w1.to(device=device, dtype=dtype)
else:
self.w1_a = self.w1_a.to(device=device, dtype=dtype)
self.w1_b = self.w1_b.to(device=device, dtype=dtype)
if self.w2 is not None:
self.w2 = self.w2.to(device=device, dtype=dtype)
else:
self.w2_a = self.w2_a.to(device=device, dtype=dtype)
self.w2_b = self.w2_b.to(device=device, dtype=dtype)
if self.t2 is not None:
self.t2 = self.t2.to(device=device, dtype=dtype)
class FullLayer(LoRALayerBase):
# weight: torch.Tensor
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
self.weight = values["diff"]
if len(values.keys()) > 1:
_keys = list(values.keys())
_keys.remove("diff")
raise NotImplementedError(f"Unexpected keys in lora diff layer: {_keys}")
self.rank = None # unscaled
def get_weight(self, orig_weight: torch.Tensor):
return self.weight
def calc_size(self) -> int:
model_size = super().calc_size()
model_size += self.weight.nelement() * self.weight.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
self.weight = self.weight.to(device=device, dtype=dtype)
class IA3Layer(LoRALayerBase):
# weight: torch.Tensor
# on_input: torch.Tensor
def __init__(
self,
layer_key: str,
values: dict,
):
super().__init__(layer_key, values)
self.weight = values["weight"]
self.on_input = values["on_input"]
self.rank = None # unscaled
def get_weight(self, orig_weight: torch.Tensor):
weight = self.weight
if not self.on_input:
weight = weight.reshape(-1, 1)
return orig_weight * weight
def calc_size(self) -> int:
model_size = super().calc_size()
model_size += self.weight.nelement() * self.weight.element_size()
model_size += self.on_input.nelement() * self.on_input.element_size()
return model_size
def to(
self,
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
):
super().to(device=device, dtype=dtype)
self.weight = self.weight.to(device=device, dtype=dtype)
self.on_input = self.on_input.to(device=device, dtype=dtype)
# TODO: rename all methods used in model logic with Info postfix and remove here Raw postfix
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,
dtype: Optional[torch.dtype] = None,
):
# 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
for _, layer in self.layers.items():
model_size += layer.calc_size()
return model_size
@classmethod
def _convert_sdxl_compvis_keys(cls, state_dict):
new_state_dict = dict()
for full_key, value in state_dict.items():
if full_key.startswith("lora_te1_") or full_key.startswith("lora_te2_"):
continue # clip same
if not full_key.startswith("lora_unet_"):
raise NotImplementedError(f"Unknown prefix for sdxl lora key - {full_key}")
src_key = full_key.replace("lora_unet_", "")
try:
dst_key = None
while "_" in src_key:
if src_key in SDXL_UNET_COMPVIS_MAP:
dst_key = SDXL_UNET_COMPVIS_MAP[src_key]
break
src_key = "_".join(src_key.split("_")[:-1])
if dst_key is None:
raise Exception(f"Unknown sdxl lora key - {full_key}")
new_key = full_key.replace(src_key, dst_key)
except:
print(SDXL_UNET_COMPVIS_MAP)
raise
new_state_dict[new_key] = value
return new_state_dict
@classmethod
def from_checkpoint(
cls,
file_path: Union[str, Path],
device: Optional[torch.device] = None,
dtype: Optional[torch.dtype] = None,
base_model: Optional[BaseModelType] = None,
):
device = device or torch.device("cpu")
dtype = dtype or torch.float32
if isinstance(file_path, str):
file_path = Path(file_path)
model = cls(
device=device,
dtype=dtype,
name=file_path.stem, # TODO:
layers=dict(),
)
if file_path.suffix == ".safetensors":
state_dict = load_file(file_path.absolute().as_posix(), device="cpu")
else:
state_dict = torch.load(file_path, map_location="cpu")
state_dict = cls._group_state(state_dict)
if base_model == BaseModelType.StableDiffusionXL:
state_dict = cls._convert_sdxl_compvis_keys(state_dict)
for layer_key, values in state_dict.items():
# lora and locon
if "lora_down.weight" in values:
layer = LoRALayer(layer_key, values)
# loha
elif "hada_w1_b" in values:
layer = LoHALayer(layer_key, values)
# lokr
elif "lokr_w1_b" in values or "lokr_w1" in values:
layer = LoKRLayer(layer_key, values)
# diff
elif "diff" in values:
layer = FullLayer(layer_key, values)
# ia3
elif "weight" in values and "on_input" in values:
layer = IA3Layer(layer_key, values)
else:
print(f">> Encountered unknown lora layer module in {model.name}: {layer_key} - {list(values.keys())}")
raise Exception("Unknown lora format!")
# lower memory consumption by removing already parsed layer values
state_dict[layer_key].clear()
layer.to(device=device, dtype=dtype)
model.layers[layer_key] = layer
return model
@staticmethod
def _group_state(state_dict: dict):
state_dict_groupped = dict()
for key, value in state_dict.items():
stem, leaf = key.split(".", 1)
if stem not in state_dict_groupped:
state_dict_groupped[stem] = dict()
state_dict_groupped[stem][leaf] = value
return state_dict_groupped
# code from
# https://github.com/bmaltais/kohya_ss/blob/2accb1305979ba62f5077a23aabac23b4c37e935/networks/lora_diffusers.py#L15C1-L97C32
def make_sdxl_unet_conversion_map():
unet_conversion_map_layer = []
for i in range(3): # num_blocks is 3 in sdxl
# loop over downblocks/upblocks
for j in range(2):
# loop over resnets/attentions for downblocks
hf_down_res_prefix = f"down_blocks.{i}.resnets.{j}."
sd_down_res_prefix = f"input_blocks.{3*i + j + 1}.0."
unet_conversion_map_layer.append((sd_down_res_prefix, hf_down_res_prefix))
if i < 3:
# no attention layers in down_blocks.3
hf_down_atn_prefix = f"down_blocks.{i}.attentions.{j}."
sd_down_atn_prefix = f"input_blocks.{3*i + j + 1}.1."
unet_conversion_map_layer.append((sd_down_atn_prefix, hf_down_atn_prefix))
for j in range(3):
# loop over resnets/attentions for upblocks
hf_up_res_prefix = f"up_blocks.{i}.resnets.{j}."
sd_up_res_prefix = f"output_blocks.{3*i + j}.0."
unet_conversion_map_layer.append((sd_up_res_prefix, hf_up_res_prefix))
# if i > 0: commentout for sdxl
# no attention layers in up_blocks.0
hf_up_atn_prefix = f"up_blocks.{i}.attentions.{j}."
sd_up_atn_prefix = f"output_blocks.{3*i + j}.1."
unet_conversion_map_layer.append((sd_up_atn_prefix, hf_up_atn_prefix))
if i < 3:
# no downsample in down_blocks.3
hf_downsample_prefix = f"down_blocks.{i}.downsamplers.0.conv."
sd_downsample_prefix = f"input_blocks.{3*(i+1)}.0.op."
unet_conversion_map_layer.append((sd_downsample_prefix, hf_downsample_prefix))
# no upsample in up_blocks.3
hf_upsample_prefix = f"up_blocks.{i}.upsamplers.0."
sd_upsample_prefix = f"output_blocks.{3*i + 2}.{2}." # change for sdxl
unet_conversion_map_layer.append((sd_upsample_prefix, hf_upsample_prefix))
hf_mid_atn_prefix = "mid_block.attentions.0."
sd_mid_atn_prefix = "middle_block.1."
unet_conversion_map_layer.append((sd_mid_atn_prefix, hf_mid_atn_prefix))
for j in range(2):
hf_mid_res_prefix = f"mid_block.resnets.{j}."
sd_mid_res_prefix = f"middle_block.{2*j}."
unet_conversion_map_layer.append((sd_mid_res_prefix, hf_mid_res_prefix))
unet_conversion_map_resnet = [
# (stable-diffusion, HF Diffusers)
("in_layers.0.", "norm1."),
("in_layers.2.", "conv1."),
("out_layers.0.", "norm2."),
("out_layers.3.", "conv2."),
("emb_layers.1.", "time_emb_proj."),
("skip_connection.", "conv_shortcut."),
]
unet_conversion_map = []
for sd, hf in unet_conversion_map_layer:
if "resnets" in hf:
for sd_res, hf_res in unet_conversion_map_resnet:
unet_conversion_map.append((sd + sd_res, hf + hf_res))
else:
unet_conversion_map.append((sd, hf))
for j in range(2):
hf_time_embed_prefix = f"time_embedding.linear_{j+1}."
sd_time_embed_prefix = f"time_embed.{j*2}."
unet_conversion_map.append((sd_time_embed_prefix, hf_time_embed_prefix))
for j in range(2):
hf_label_embed_prefix = f"add_embedding.linear_{j+1}."
sd_label_embed_prefix = f"label_emb.0.{j*2}."
unet_conversion_map.append((sd_label_embed_prefix, hf_label_embed_prefix))
unet_conversion_map.append(("input_blocks.0.0.", "conv_in."))
unet_conversion_map.append(("out.0.", "conv_norm_out."))
unet_conversion_map.append(("out.2.", "conv_out."))
return unet_conversion_map
SDXL_UNET_COMPVIS_MAP = {
f"{sd}".rstrip(".").replace(".", "_"): f"{hf}".rstrip(".").replace(".", "_")
for sd, hf in make_sdxl_unet_conversion_map()
}

View File

@@ -80,8 +80,10 @@ class StableDiffusionXLModel(DiffusersModel):
raise Exception("Unkown stable diffusion 2.* model format")
if ckpt_config_path is None:
# TO DO: implement picking
pass
# avoid circular import
from .stable_diffusion import _select_ckpt_config
ckpt_config_path = _select_ckpt_config(kwargs.get("model_base", BaseModelType.StableDiffusionXL), variant)
return cls.create_config(
path=path,

View File

@@ -4,6 +4,7 @@ from enum import Enum
from pydantic import Field
from pathlib import Path
from typing import Literal, Optional, Union
from diffusers import StableDiffusionInpaintPipeline, StableDiffusionPipeline
from .base import (
ModelConfigBase,
BaseModelType,
@@ -263,6 +264,8 @@ def _convert_ckpt_and_cache(
weights = app_config.models_path / model_config.path
config_file = app_config.root_path / model_config.config
output_path = Path(output_path)
variant = model_config.variant
pipeline_class = StableDiffusionInpaintPipeline if variant == "inpaint" else StableDiffusionPipeline
# return cached version if it exists
if output_path.exists():
@@ -289,6 +292,7 @@ def _convert_ckpt_and_cache(
original_config_file=config_file,
extract_ema=True,
scan_needed=True,
pipeline_class=pipeline_class,
from_safetensors=weights.suffix == ".safetensors",
precision=torch_dtype(choose_torch_device()),
**kwargs,

View File

@@ -1,9 +1,14 @@
import os
import torch
import safetensors
from enum import Enum
from pathlib import Path
from typing import Optional, Union, Literal
from typing import Optional
import safetensors
import torch
from diffusers.utils import is_safetensors_available
from omegaconf import OmegaConf
from invokeai.app.services.config import InvokeAIAppConfig
from .base import (
ModelBase,
ModelConfigBase,
@@ -18,9 +23,6 @@ from .base import (
InvalidModelException,
ModelNotFoundException,
)
from invokeai.app.services.config import InvokeAIAppConfig
from diffusers.utils import is_safetensors_available
from omegaconf import OmegaConf
class VaeModelFormat(str, Enum):
@@ -80,7 +82,7 @@ class VaeModel(ModelBase):
@classmethod
def detect_format(cls, path: str):
if not os.path.exists(path):
raise ModelNotFoundException()
raise ModelNotFoundException(f"Does not exist as local file: {path}")
if os.path.isdir(path):
if os.path.exists(os.path.join(path, "config.json")):

View File

@@ -0,0 +1,75 @@
# Copyright (c) 2023 The InvokeAI Development Team
"""Utilities used by the Model Manager"""
def lora_token_vector_length(checkpoint: dict) -> int:
"""
Given a checkpoint in memory, return the lora token vector length
:param checkpoint: The checkpoint
"""
def _get_shape_1(key, tensor, checkpoint):
lora_token_vector_length = None
if "." not in key:
return lora_token_vector_length # wrong key format
model_key, lora_key = key.split(".", 1)
# check lora/locon
if lora_key == "lora_down.weight":
lora_token_vector_length = tensor.shape[1]
# check loha (don't worry about hada_t1/hada_t2 as it used only in 4d shapes)
elif lora_key in ["hada_w1_b", "hada_w2_b"]:
lora_token_vector_length = tensor.shape[1]
# check lokr (don't worry about lokr_t2 as it used only in 4d shapes)
elif "lokr_" in lora_key:
if model_key + ".lokr_w1" in checkpoint:
_lokr_w1 = checkpoint[model_key + ".lokr_w1"]
elif model_key + "lokr_w1_b" in checkpoint:
_lokr_w1 = checkpoint[model_key + ".lokr_w1_b"]
else:
return lora_token_vector_length # unknown format
if model_key + ".lokr_w2" in checkpoint:
_lokr_w2 = checkpoint[model_key + ".lokr_w2"]
elif model_key + "lokr_w2_b" in checkpoint:
_lokr_w2 = checkpoint[model_key + ".lokr_w2_b"]
else:
return lora_token_vector_length # unknown format
lora_token_vector_length = _lokr_w1.shape[1] * _lokr_w2.shape[1]
elif lora_key == "diff":
lora_token_vector_length = tensor.shape[1]
# ia3 can be detected only by shape[0] in text encoder
elif lora_key == "weight" and "lora_unet_" not in model_key:
lora_token_vector_length = tensor.shape[0]
return lora_token_vector_length
lora_token_vector_length = None
lora_te1_length = None
lora_te2_length = None
for key, tensor in checkpoint.items():
if key.startswith("lora_unet_") and ("_attn2_to_k." in key or "_attn2_to_v." in key):
lora_token_vector_length = _get_shape_1(key, tensor, checkpoint)
elif key.startswith("lora_te") and "_self_attn_" in key:
tmp_length = _get_shape_1(key, tensor, checkpoint)
if key.startswith("lora_te_"):
lora_token_vector_length = tmp_length
elif key.startswith("lora_te1_"):
lora_te1_length = tmp_length
elif key.startswith("lora_te2_"):
lora_te2_length = tmp_length
if lora_te1_length is not None and lora_te2_length is not None:
lora_token_vector_length = lora_te1_length + lora_te2_length
if lora_token_vector_length is not None:
break
return lora_token_vector_length

View File

@@ -4,25 +4,21 @@ import dataclasses
import inspect
import math
import secrets
from collections.abc import Sequence
from dataclasses import dataclass, field
from typing import Any, Callable, Generic, List, Optional, Type, TypeVar, Union
from pydantic import Field
import einops
import PIL.Image
import numpy as np
from accelerate.utils import set_seed
import einops
import psutil
import torch
import torchvision.transforms as T
from accelerate.utils import set_seed
from diffusers.models import AutoencoderKL, UNet2DConditionModel
from diffusers.models.controlnet import ControlNetModel
from diffusers.pipelines.stable_diffusion import StableDiffusionPipelineOutput
from diffusers.pipelines.stable_diffusion.pipeline_stable_diffusion import (
StableDiffusionPipeline,
)
from diffusers.pipelines.stable_diffusion.pipeline_stable_diffusion_img2img import (
StableDiffusionImg2ImgPipeline,
)
@@ -31,21 +27,20 @@ from diffusers.pipelines.stable_diffusion.safety_checker import (
)
from diffusers.schedulers import KarrasDiffusionSchedulers
from diffusers.schedulers.scheduling_utils import SchedulerMixin, SchedulerOutput
from diffusers.utils import PIL_INTERPOLATION
from diffusers.utils.import_utils import is_xformers_available
from diffusers.utils.outputs import BaseOutput
from pydantic import Field
from torchvision.transforms.functional import resize as tv_resize
from transformers import CLIPFeatureExtractor, CLIPTextModel, CLIPTokenizer
from typing_extensions import ParamSpec
from invokeai.app.services.config import InvokeAIAppConfig
from ..util import CPU_DEVICE, normalize_device
from .diffusion import (
AttentionMapSaver,
InvokeAIDiffuserComponent,
PostprocessingSettings,
)
from .offloading import FullyLoadedModelGroup, ModelGroup
from ..util import normalize_device
@dataclass
@@ -289,8 +284,6 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
feature_extractor ([`CLIPFeatureExtractor`]):
Model that extracts features from generated images to be used as inputs for the `safety_checker`.
"""
_model_group: ModelGroup
ID_LENGTH = 8
def __init__(
@@ -303,9 +296,7 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
safety_checker: Optional[StableDiffusionSafetyChecker],
feature_extractor: Optional[CLIPFeatureExtractor],
requires_safety_checker: bool = False,
precision: str = "float32",
control_model: ControlNetModel = None,
execution_device: Optional[torch.device] = None,
):
super().__init__(
vae,
@@ -330,9 +321,6 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
# control_model=control_model,
)
self.invokeai_diffuser = InvokeAIDiffuserComponent(self.unet, self._unet_forward)
self._model_group = FullyLoadedModelGroup(execution_device or self.unet.device)
self._model_group.install(*self._submodels)
self.control_model = control_model
def _adjust_memory_efficient_attention(self, latents: torch.Tensor):
@@ -368,72 +356,6 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
else:
self.disable_attention_slicing()
def to(self, torch_device: Optional[Union[str, torch.device]] = None, silence_dtype_warnings=False):
# overridden method; types match the superclass.
if torch_device is None:
return self
self._model_group.set_device(torch.device(torch_device))
self._model_group.ready()
@property
def device(self) -> torch.device:
return self._model_group.execution_device
@property
def _submodels(self) -> Sequence[torch.nn.Module]:
module_names, _, _ = self.extract_init_dict(dict(self.config))
submodels = []
for name in module_names.keys():
if hasattr(self, name):
value = getattr(self, name)
else:
value = getattr(self.config, name)
if isinstance(value, torch.nn.Module):
submodels.append(value)
return submodels
def image_from_embeddings(
self,
latents: torch.Tensor,
num_inference_steps: int,
conditioning_data: ConditioningData,
*,
noise: torch.Tensor,
callback: Callable[[PipelineIntermediateState], None] = None,
run_id=None,
) -> InvokeAIStableDiffusionPipelineOutput:
r"""
Function invoked when calling the pipeline for generation.
:param conditioning_data:
:param latents: Pre-generated un-noised latents, to be used as inputs for
image generation. Can be used to tweak the same generation with different prompts.
:param num_inference_steps: The number of denoising steps. More denoising steps usually lead to a higher quality
image at the expense of slower inference.
:param noise: Noise to add to the latents, sampled from a Gaussian distribution.
:param callback:
:param run_id:
"""
result_latents, result_attention_map_saver = self.latents_from_embeddings(
latents,
num_inference_steps,
conditioning_data,
noise=noise,
run_id=run_id,
callback=callback,
)
# https://discuss.huggingface.co/t/memory-usage-by-later-pipeline-stages/23699
torch.cuda.empty_cache()
with torch.inference_mode():
image = self.decode_latents(result_latents)
output = InvokeAIStableDiffusionPipelineOutput(
images=image,
nsfw_content_detected=[],
attention_map_saver=result_attention_map_saver,
)
return self.check_for_safety(output, dtype=conditioning_data.dtype)
def latents_from_embeddings(
self,
latents: torch.Tensor,
@@ -450,7 +372,7 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
if self.scheduler.config.get("cpu_only", False):
scheduler_device = torch.device("cpu")
else:
scheduler_device = self._model_group.device_for(self.unet)
scheduler_device = self.unet.device
if timesteps is None:
self.scheduler.set_timesteps(num_inference_steps, device=scheduler_device)
@@ -504,7 +426,7 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
(batch_size,),
timesteps[0],
dtype=timesteps.dtype,
device=self._model_group.device_for(self.unet),
device=self.unet.device,
)
latents = self.scheduler.add_noise(latents, noise, batched_t)
@@ -700,79 +622,6 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
**kwargs,
).sample
def img2img_from_embeddings(
self,
init_image: Union[torch.FloatTensor, PIL.Image.Image],
strength: float,
num_inference_steps: int,
conditioning_data: ConditioningData,
*,
callback: Callable[[PipelineIntermediateState], None] = None,
run_id=None,
noise_func=None,
seed=None,
) -> InvokeAIStableDiffusionPipelineOutput:
if isinstance(init_image, PIL.Image.Image):
init_image = image_resized_to_grid_as_tensor(init_image.convert("RGB"))
if init_image.dim() == 3:
init_image = einops.rearrange(init_image, "c h w -> 1 c h w")
# 6. Prepare latent variables
initial_latents = self.non_noised_latents_from_image(
init_image,
device=self._model_group.device_for(self.unet),
dtype=self.unet.dtype,
)
if seed is not None:
set_seed(seed)
noise = noise_func(initial_latents)
return self.img2img_from_latents_and_embeddings(
initial_latents,
num_inference_steps,
conditioning_data,
strength,
noise,
run_id,
callback,
)
def img2img_from_latents_and_embeddings(
self,
initial_latents,
num_inference_steps,
conditioning_data: ConditioningData,
strength,
noise: torch.Tensor,
run_id=None,
callback=None,
) -> InvokeAIStableDiffusionPipelineOutput:
timesteps, _ = self.get_img2img_timesteps(num_inference_steps, strength)
result_latents, result_attention_maps = self.latents_from_embeddings(
latents=initial_latents
if strength < 1.0
else torch.zeros_like(initial_latents, device=initial_latents.device, dtype=initial_latents.dtype),
num_inference_steps=num_inference_steps,
conditioning_data=conditioning_data,
timesteps=timesteps,
noise=noise,
run_id=run_id,
callback=callback,
)
# https://discuss.huggingface.co/t/memory-usage-by-later-pipeline-stages/23699
torch.cuda.empty_cache()
with torch.inference_mode():
image = self.decode_latents(result_latents)
output = InvokeAIStableDiffusionPipelineOutput(
images=image,
nsfw_content_detected=[],
attention_map_saver=result_attention_maps,
)
return self.check_for_safety(output, dtype=conditioning_data.dtype)
def get_img2img_timesteps(self, num_inference_steps: int, strength: float, device=None) -> (torch.Tensor, int):
img2img_pipeline = StableDiffusionImg2ImgPipeline(**self.components)
assert img2img_pipeline.scheduler is self.scheduler
@@ -780,7 +629,7 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
if self.scheduler.config.get("cpu_only", False):
scheduler_device = torch.device("cpu")
else:
scheduler_device = self._model_group.device_for(self.unet)
scheduler_device = self.unet.device
img2img_pipeline.scheduler.set_timesteps(num_inference_steps, device=scheduler_device)
timesteps, adjusted_steps = img2img_pipeline.get_timesteps(
@@ -806,7 +655,7 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
noise_func=None,
seed=None,
) -> InvokeAIStableDiffusionPipelineOutput:
device = self._model_group.device_for(self.unet)
device = self.unet.device
latents_dtype = self.unet.dtype
if isinstance(init_image, PIL.Image.Image):
@@ -877,42 +726,17 @@ class StableDiffusionGeneratorPipeline(StableDiffusionPipeline):
nsfw_content_detected=[],
attention_map_saver=result_attention_maps,
)
return self.check_for_safety(output, dtype=conditioning_data.dtype)
return output
def non_noised_latents_from_image(self, init_image, *, device: torch.device, dtype):
init_image = init_image.to(device=device, dtype=dtype)
with torch.inference_mode():
self._model_group.load(self.vae)
init_latent_dist = self.vae.encode(init_image).latent_dist
init_latents = init_latent_dist.sample().to(dtype=dtype) # FIXME: uses torch.randn. make reproducible!
init_latents = 0.18215 * init_latents
return init_latents
def check_for_safety(self, output, dtype):
with torch.inference_mode():
screened_images, has_nsfw_concept = self.run_safety_checker(output.images, dtype=dtype)
screened_attention_map_saver = None
if has_nsfw_concept is None or not has_nsfw_concept:
screened_attention_map_saver = output.attention_map_saver
return InvokeAIStableDiffusionPipelineOutput(
screened_images,
has_nsfw_concept,
# block the attention maps if NSFW content is detected
attention_map_saver=screened_attention_map_saver,
)
def run_safety_checker(self, image, device=None, dtype=None):
# overriding to use the model group for device info instead of requiring the caller to know.
if self.safety_checker is not None:
device = self._model_group.device_for(self.safety_checker)
return super().run_safety_checker(image, device, dtype)
def decode_latents(self, latents):
# Explicit call to get the vae loaded, since `decode` isn't the forward method.
self._model_group.load(self.vae)
return super().decode_latents(latents)
def debug_latents(self, latents, msg):
from invokeai.backend.image_util import debug_image

View File

@@ -78,10 +78,9 @@ class InvokeAIDiffuserComponent:
self.cross_attention_control_context = None
self.sequential_guidance = config.sequential_guidance
@classmethod
@contextmanager
def custom_attention_context(
cls,
self,
unet: UNet2DConditionModel, # note: also may futz with the text encoder depending on requested LoRAs
extra_conditioning_info: Optional[ExtraConditioningInfo],
step_count: int,
@@ -91,18 +90,19 @@ class InvokeAIDiffuserComponent:
old_attn_processors = unet.attn_processors
# Load lora conditions into the model
if extra_conditioning_info.wants_cross_attention_control:
cross_attention_control_context = Context(
self.cross_attention_control_context = Context(
arguments=extra_conditioning_info.cross_attention_control_args,
step_count=step_count,
)
setup_cross_attention_control_attention_processors(
unet,
cross_attention_control_context,
self.cross_attention_control_context,
)
try:
yield None
finally:
self.cross_attention_control_context = None
if old_attn_processors is not None:
unet.set_attn_processor(old_attn_processors)
# TODO resuscitate attention map saving

View File

@@ -1,253 +0,0 @@
from __future__ import annotations
import warnings
import weakref
from abc import ABCMeta, abstractmethod
from collections.abc import MutableMapping
from typing import Callable, Union
import torch
from accelerate.utils import send_to_device
from torch.utils.hooks import RemovableHandle
OFFLOAD_DEVICE = torch.device("cpu")
class _NoModel:
"""Symbol that indicates no model is loaded.
(We can't weakref.ref(None), so this was my best idea at the time to come up with something
type-checkable.)
"""
def __bool__(self):
return False
def to(self, device: torch.device):
pass
def __repr__(self):
return "<NO MODEL>"
NO_MODEL = _NoModel()
class ModelGroup(metaclass=ABCMeta):
"""
A group of models.
The use case I had in mind when writing this is the sub-models used by a DiffusionPipeline,
e.g. its text encoder, U-net, VAE, etc.
Those models are :py:class:`diffusers.ModelMixin`, but "model" is interchangeable with
:py:class:`torch.nn.Module` here.
"""
def __init__(self, execution_device: torch.device):
self.execution_device = execution_device
@abstractmethod
def install(self, *models: torch.nn.Module):
"""Add models to this group."""
pass
@abstractmethod
def uninstall(self, models: torch.nn.Module):
"""Remove models from this group."""
pass
@abstractmethod
def uninstall_all(self):
"""Remove all models from this group."""
@abstractmethod
def load(self, model: torch.nn.Module):
"""Load this model to the execution device."""
pass
@abstractmethod
def offload_current(self):
"""Offload the current model(s) from the execution device."""
pass
@abstractmethod
def ready(self):
"""Ready this group for use."""
pass
@abstractmethod
def set_device(self, device: torch.device):
"""Change which device models from this group will execute on."""
pass
@abstractmethod
def device_for(self, model) -> torch.device:
"""Get the device the given model will execute on.
The model should already be a member of this group.
"""
pass
@abstractmethod
def __contains__(self, model):
"""Check if the model is a member of this group."""
pass
def __repr__(self) -> str:
return f"<{self.__class__.__name__} object at {id(self):x}: " f"device={self.execution_device} >"
class LazilyLoadedModelGroup(ModelGroup):
"""
Only one model from this group is loaded on the GPU at a time.
Running the forward method of a model will displace the previously-loaded model,
offloading it to CPU.
If you call other methods on the model, e.g. ``model.encode(x)`` instead of ``model(x)``,
you will need to explicitly load it with :py:method:`.load(model)`.
This implementation relies on pytorch forward-pre-hooks, and it will copy forward arguments
to the appropriate execution device, as long as they are positional arguments and not keyword
arguments. (I didn't make the rules; that's the way the pytorch 1.13 API works for hooks.)
"""
_hooks: MutableMapping[torch.nn.Module, RemovableHandle]
_current_model_ref: Callable[[], Union[torch.nn.Module, _NoModel]]
def __init__(self, execution_device: torch.device):
super().__init__(execution_device)
self._hooks = weakref.WeakKeyDictionary()
self._current_model_ref = weakref.ref(NO_MODEL)
def install(self, *models: torch.nn.Module):
for model in models:
self._hooks[model] = model.register_forward_pre_hook(self._pre_hook)
def uninstall(self, *models: torch.nn.Module):
for model in models:
hook = self._hooks.pop(model)
hook.remove()
if self.is_current_model(model):
# no longer hooked by this object, so don't claim to manage it
self.clear_current_model()
def uninstall_all(self):
self.uninstall(*self._hooks.keys())
def _pre_hook(self, module: torch.nn.Module, forward_input):
self.load(module)
if len(forward_input) == 0:
warnings.warn(
f"Hook for {module.__class__.__name__} got no input. " f"Inputs must be positional, not keywords.",
stacklevel=3,
)
return send_to_device(forward_input, self.execution_device)
def load(self, module):
if not self.is_current_model(module):
self.offload_current()
self._load(module)
def offload_current(self):
module = self._current_model_ref()
if module is not NO_MODEL:
module.to(OFFLOAD_DEVICE)
self.clear_current_model()
def _load(self, module: torch.nn.Module) -> torch.nn.Module:
assert self.is_empty(), f"A model is already loaded: {self._current_model_ref()}"
module = module.to(self.execution_device)
self.set_current_model(module)
return module
def is_current_model(self, model: torch.nn.Module) -> bool:
"""Is the given model the one currently loaded on the execution device?"""
return self._current_model_ref() is model
def is_empty(self):
"""Are none of this group's models loaded on the execution device?"""
return self._current_model_ref() is NO_MODEL
def set_current_model(self, value):
self._current_model_ref = weakref.ref(value)
def clear_current_model(self):
self._current_model_ref = weakref.ref(NO_MODEL)
def set_device(self, device: torch.device):
if device == self.execution_device:
return
self.execution_device = device
current = self._current_model_ref()
if current is not NO_MODEL:
current.to(device)
def device_for(self, model):
if model not in self:
raise KeyError(f"This does not manage this model {type(model).__name__}", model)
return self.execution_device # this implementation only dispatches to one device
def ready(self):
pass # always ready to load on-demand
def __contains__(self, model):
return model in self._hooks
def __repr__(self) -> str:
return (
f"<{self.__class__.__name__} object at {id(self):x}: "
f"current_model={type(self._current_model_ref()).__name__} >"
)
class FullyLoadedModelGroup(ModelGroup):
"""
A group of models without any implicit loading or unloading.
:py:meth:`.ready` loads _all_ the models to the execution device at once.
"""
_models: weakref.WeakSet
def __init__(self, execution_device: torch.device):
super().__init__(execution_device)
self._models = weakref.WeakSet()
def install(self, *models: torch.nn.Module):
for model in models:
self._models.add(model)
model.to(self.execution_device)
def uninstall(self, *models: torch.nn.Module):
for model in models:
self._models.remove(model)
def uninstall_all(self):
self.uninstall(*self._models)
def load(self, model):
model.to(self.execution_device)
def offload_current(self):
for model in self._models:
model.to(OFFLOAD_DEVICE)
def ready(self):
for model in self._models:
self.load(model)
def set_device(self, device: torch.device):
self.execution_device = device
for model in self._models:
if model.device != OFFLOAD_DEVICE:
model.to(device)
def device_for(self, model):
if model not in self:
raise KeyError("This does not manage this model f{type(model).__name__}", model)
return self.execution_device # this implementation only dispatches to one device
def __contains__(self, model):
return model in self._models

View File

@@ -1,6 +1,8 @@
from __future__ import annotations
from contextlib import nullcontext
from packaging import version
import platform
import torch
from torch import autocast
@@ -30,7 +32,7 @@ def choose_precision(device: torch.device) -> str:
device_name = torch.cuda.get_device_name(device)
if not ("GeForce GTX 1660" in device_name or "GeForce GTX 1650" in device_name):
return "float16"
elif device.type == "mps":
elif device.type == "mps" and version.parse(platform.mac_ver()[0]) < version.parse("14.0.0"):
return "float16"
return "float32"

View File

@@ -1,6 +1,3 @@
"""
Initialization file for invokeai.frontend.config
"""
from .invokeai_configure import main as invokeai_configure
from .invokeai_update import main as invokeai_update
from .model_install import main as invokeai_model_install

View File

@@ -0,0 +1,795 @@
# Copyright (c) 2023 - The InvokeAI Team
# Primary Author: David Lovell (github @f412design, discord @techjedi)
# co-author, minor tweaks - Lincoln Stein
# pylint: disable=line-too-long
# pylint: disable=broad-exception-caught
"""Script to import images into the new database system for 3.0.0"""
import os
import datetime
import shutil
import locale
import sqlite3
import json
import glob
import re
import uuid
import yaml
import PIL
import PIL.ImageOps
import PIL.PngImagePlugin
from pathlib import Path
from prompt_toolkit import prompt
from prompt_toolkit.shortcuts import message_dialog
from prompt_toolkit.completion import PathCompleter
from prompt_toolkit.key_binding import KeyBindings
from invokeai.app.services.config import InvokeAIAppConfig
app_config = InvokeAIAppConfig.get_config()
bindings = KeyBindings()
@bindings.add("c-c")
def _(event):
raise KeyboardInterrupt
# release notes
# "Use All" with size dimensions not selectable in the UI will not load dimensions
class Config:
"""Configuration loader."""
def __init__(self):
pass
TIMESTAMP_STRING = datetime.datetime.utcnow().strftime("%Y%m%dT%H%M%SZ")
INVOKE_DIRNAME = "invokeai"
YAML_FILENAME = "invokeai.yaml"
DATABASE_FILENAME = "invokeai.db"
database_path = None
database_backup_dir = None
outputs_path = None
thumbnail_path = None
def find_and_load(self):
"""find the yaml config file and load"""
root = app_config.root_path
if not self.confirm_and_load(os.path.abspath(root)):
print("\r\nSpecify custom database and outputs paths:")
self.confirm_and_load_from_user()
self.database_backup_dir = os.path.join(os.path.dirname(self.database_path), "backup")
self.thumbnail_path = os.path.join(self.outputs_path, "thumbnails")
def confirm_and_load(self, invoke_root):
"""Validates a yaml path exists, confirms the user wants to use it and loads config."""
yaml_path = os.path.join(invoke_root, self.YAML_FILENAME)
if os.path.exists(yaml_path):
db_dir, outdir = self.load_paths_from_yaml(yaml_path)
if os.path.isabs(db_dir):
database_path = os.path.join(db_dir, self.DATABASE_FILENAME)
else:
database_path = os.path.join(invoke_root, db_dir, self.DATABASE_FILENAME)
if os.path.isabs(outdir):
outputs_path = os.path.join(outdir, "images")
else:
outputs_path = os.path.join(invoke_root, outdir, "images")
db_exists = os.path.exists(database_path)
outdir_exists = os.path.exists(outputs_path)
text = f"Found {self.YAML_FILENAME} file at {yaml_path}:"
text += f"\n Database : {database_path}"
text += f"\n Outputs : {outputs_path}"
text += "\n\nUse these paths for import (yes) or choose different ones (no) [Yn]: "
if db_exists and outdir_exists:
if (prompt(text).strip() or "Y").upper().startswith("Y"):
self.database_path = database_path
self.outputs_path = outputs_path
return True
else:
return False
else:
print(" Invalid: One or more paths in this config did not exist and cannot be used.")
else:
message_dialog(
title="Path not found",
text=f"Auto-discovery of configuration failed! Could not find ({yaml_path}), Custom paths can be specified.",
).run()
return False
def confirm_and_load_from_user(self):
default = ""
while True:
database_path = os.path.expanduser(
prompt(
"Database: Specify absolute path to the database to import into: ",
completer=PathCompleter(
expanduser=True, file_filter=lambda x: Path(x).is_dir() or x.endswith((".db"))
),
default=default,
)
)
if database_path.endswith(".db") and os.path.isabs(database_path) and os.path.exists(database_path):
break
default = database_path + "/" if Path(database_path).is_dir() else database_path
default = ""
while True:
outputs_path = os.path.expanduser(
prompt(
"Outputs: Specify absolute path to outputs/images directory to import into: ",
completer=PathCompleter(expanduser=True, only_directories=True),
default=default,
)
)
if outputs_path.endswith("images") and os.path.isabs(outputs_path) and os.path.exists(outputs_path):
break
default = outputs_path + "/" if Path(outputs_path).is_dir() else outputs_path
self.database_path = database_path
self.outputs_path = outputs_path
return
def load_paths_from_yaml(self, yaml_path):
"""Load an Invoke AI yaml file and get the database and outputs paths."""
try:
with open(yaml_path, "rt", encoding=locale.getpreferredencoding()) as file:
yamlinfo = yaml.safe_load(file)
db_dir = yamlinfo.get("InvokeAI", {}).get("Paths", {}).get("db_dir", None)
outdir = yamlinfo.get("InvokeAI", {}).get("Paths", {}).get("outdir", None)
return db_dir, outdir
except Exception:
print(f"Failed to load paths from yaml file! {yaml_path}!")
return None, None
class ImportStats:
"""DTO for tracking work progress."""
def __init__(self):
pass
time_start = datetime.datetime.utcnow()
count_source_files = 0
count_skipped_file_exists = 0
count_skipped_db_exists = 0
count_imported = 0
count_imported_by_version = {}
count_file_errors = 0
@staticmethod
def get_elapsed_time_string():
"""Get a friendly time string for the time elapsed since processing start."""
time_now = datetime.datetime.utcnow()
total_seconds = (time_now - ImportStats.time_start).total_seconds()
hours = int((total_seconds) / 3600)
minutes = int(((total_seconds) % 3600) / 60)
seconds = total_seconds % 60
out_str = f"{hours} hour(s) -" if hours > 0 else ""
out_str += f"{minutes} minute(s) -" if minutes > 0 else ""
out_str += f"{seconds:.2f} second(s)"
return out_str
class InvokeAIMetadata:
"""DTO for core Invoke AI generation properties parsed from metadata."""
def __init__(self):
pass
def __str__(self):
formatted_str = f"{self.generation_mode}~{self.steps}~{self.cfg_scale}~{self.model_name}~{self.scheduler}~{self.seed}~{self.width}~{self.height}~{self.rand_device}~{self.strength}~{self.init_image}"
formatted_str += f"\r\npositive_prompt: {self.positive_prompt}"
formatted_str += f"\r\nnegative_prompt: {self.negative_prompt}"
return formatted_str
generation_mode = None
steps = None
cfg_scale = None
model_name = None
scheduler = None
seed = None
width = None
height = None
rand_device = None
strength = None
init_image = None
positive_prompt = None
negative_prompt = None
imported_app_version = None
def to_json(self):
"""Convert the active instance to json format."""
prop_dict = {}
prop_dict["generation_mode"] = self.generation_mode
# dont render prompt nodes if neither are set to avoid the ui thinking it can set them
# if at least one exists, render them both, but use empty string instead of None if one of them is empty
# this allows the field that is empty to actually be cleared byt he UI instead of leaving the previous value
if self.positive_prompt or self.negative_prompt:
prop_dict["positive_prompt"] = "" if self.positive_prompt is None else self.positive_prompt
prop_dict["negative_prompt"] = "" if self.negative_prompt is None else self.negative_prompt
prop_dict["width"] = self.width
prop_dict["height"] = self.height
# only render seed if it has a value to avoid ui thinking it can set this and then error
if self.seed:
prop_dict["seed"] = self.seed
prop_dict["rand_device"] = self.rand_device
prop_dict["cfg_scale"] = self.cfg_scale
prop_dict["steps"] = self.steps
prop_dict["scheduler"] = self.scheduler
prop_dict["clip_skip"] = 0
prop_dict["model"] = {}
prop_dict["model"]["model_name"] = self.model_name
prop_dict["model"]["base_model"] = None
prop_dict["controlnets"] = []
prop_dict["loras"] = []
prop_dict["vae"] = None
prop_dict["strength"] = self.strength
prop_dict["init_image"] = self.init_image
prop_dict["positive_style_prompt"] = None
prop_dict["negative_style_prompt"] = None
prop_dict["refiner_model"] = None
prop_dict["refiner_cfg_scale"] = None
prop_dict["refiner_steps"] = None
prop_dict["refiner_scheduler"] = None
prop_dict["refiner_aesthetic_store"] = None
prop_dict["refiner_start"] = None
prop_dict["imported_app_version"] = self.imported_app_version
return json.dumps(prop_dict)
class InvokeAIMetadataParser:
"""Parses strings with json data to find Invoke AI core metadata properties."""
def __init__(self):
pass
def parse_meta_tag_dream(self, dream_string):
"""Take as input an png metadata json node for the 'dream' field variant from prior to 1.15"""
props = InvokeAIMetadata()
props.imported_app_version = "pre1.15"
seed_match = re.search("-S\\s*(\\d+)", dream_string)
if seed_match is not None:
try:
props.seed = int(seed_match[1])
except ValueError:
props.seed = None
raw_prompt = re.sub("(-S\\s*\\d+)", "", dream_string)
else:
raw_prompt = dream_string
pos_prompt, neg_prompt = self.split_prompt(raw_prompt)
props.positive_prompt = pos_prompt
props.negative_prompt = neg_prompt
return props
def parse_meta_tag_sd_metadata(self, tag_value):
"""Take as input an png metadata json node for the 'sd-metadata' field variant from 1.15 through 2.3.5 post 2"""
props = InvokeAIMetadata()
props.imported_app_version = tag_value.get("app_version")
props.model_name = tag_value.get("model_weights")
img_node = tag_value.get("image")
if img_node is not None:
props.generation_mode = img_node.get("type")
props.width = img_node.get("width")
props.height = img_node.get("height")
props.seed = img_node.get("seed")
props.rand_device = "cuda" # hardcoded since all generations pre 3.0 used cuda random noise instead of cpu
props.cfg_scale = img_node.get("cfg_scale")
props.steps = img_node.get("steps")
props.scheduler = self.map_scheduler(img_node.get("sampler"))
props.strength = img_node.get("strength")
if props.strength is None:
props.strength = img_node.get("strength_steps") # try second name for this property
props.init_image = img_node.get("init_image_path")
if props.init_image is None: # try second name for this property
props.init_image = img_node.get("init_img")
# remove the path info from init_image so if we move the init image, it will be correctly relative in the new location
if props.init_image is not None:
props.init_image = os.path.basename(props.init_image)
raw_prompt = img_node.get("prompt")
if isinstance(raw_prompt, list):
raw_prompt = raw_prompt[0].get("prompt")
props.positive_prompt, props.negative_prompt = self.split_prompt(raw_prompt)
return props
def parse_meta_tag_invokeai(self, tag_value):
"""Take as input an png metadata json node for the 'invokeai' field variant from 3.0.0 beta 1 through 5"""
props = InvokeAIMetadata()
props.imported_app_version = "3.0.0 or later"
props.generation_mode = tag_value.get("type")
if props.generation_mode is not None:
props.generation_mode = props.generation_mode.replace("t2l", "txt2img").replace("l2l", "img2img")
props.width = tag_value.get("width")
props.height = tag_value.get("height")
props.seed = tag_value.get("seed")
props.cfg_scale = tag_value.get("cfg_scale")
props.steps = tag_value.get("steps")
props.scheduler = tag_value.get("scheduler")
props.strength = tag_value.get("strength")
props.positive_prompt = tag_value.get("positive_conditioning")
props.negative_prompt = tag_value.get("negative_conditioning")
return props
def map_scheduler(self, old_scheduler):
"""Convert the legacy sampler names to matching 3.0 schedulers"""
if old_scheduler is None:
return None
match (old_scheduler):
case "ddim":
return "ddim"
case "plms":
return "pnmd"
case "k_lms":
return "lms"
case "k_dpm_2":
return "kdpm_2"
case "k_dpm_2_a":
return "kdpm_2_a"
case "dpmpp_2":
return "dpmpp_2s"
case "k_dpmpp_2":
return "dpmpp_2m"
case "k_dpmpp_2_a":
return None # invalid, in 2.3.x, selecting this sample would just fallback to last run or plms if new session
case "k_euler":
return "euler"
case "k_euler_a":
return "euler_a"
case "k_heun":
return "heun"
return None
def split_prompt(self, raw_prompt: str):
"""Split the unified prompt strings by extracting all negative prompt blocks out into the negative prompt."""
if raw_prompt is None:
return "", ""
raw_prompt_search = raw_prompt.replace("\r", "").replace("\n", "")
matches = re.findall(r"\[(.+?)\]", raw_prompt_search)
if len(matches) > 0:
negative_prompt = ""
if len(matches) == 1:
negative_prompt = matches[0].strip().strip(",")
else:
for match in matches:
negative_prompt += f"({match.strip().strip(',')})"
positive_prompt = re.sub(r"(\[.+?\])", "", raw_prompt_search).strip()
else:
positive_prompt = raw_prompt_search.strip()
negative_prompt = ""
return positive_prompt, negative_prompt
class DatabaseMapper:
"""Class to abstract database functionality."""
def __init__(self, database_path, database_backup_dir):
self.database_path = database_path
self.database_backup_dir = database_backup_dir
self.connection = None
self.cursor = None
def connect(self):
"""Open connection to the database."""
self.connection = sqlite3.connect(self.database_path)
self.cursor = self.connection.cursor()
def get_board_names(self):
"""Get a list of the current board names from the database."""
sql_get_board_name = "SELECT board_name FROM boards"
self.cursor.execute(sql_get_board_name)
rows = self.cursor.fetchall()
return [row[0] for row in rows]
def does_image_exist(self, image_name):
"""Check database if a image name already exists and return a boolean."""
sql_get_image_by_name = f"SELECT image_name FROM images WHERE image_name='{image_name}'"
self.cursor.execute(sql_get_image_by_name)
rows = self.cursor.fetchall()
return True if len(rows) > 0 else False
def add_new_image_to_database(self, filename, width, height, metadata, modified_date_string):
"""Add an image to the database."""
sql_add_image = f"""INSERT INTO images (image_name, image_origin, image_category, width, height, session_id, node_id, metadata, is_intermediate, created_at, updated_at)
VALUES ('{filename}', 'internal', 'general', {width}, {height}, null, null, '{metadata}', 0, '{modified_date_string}', '{modified_date_string}')"""
self.cursor.execute(sql_add_image)
self.connection.commit()
def get_board_id_with_create(self, board_name):
"""Get the board id for supplied name, and create the board if one does not exist."""
sql_find_board = f"SELECT board_id FROM boards WHERE board_name='{board_name}' COLLATE NOCASE"
self.cursor.execute(sql_find_board)
rows = self.cursor.fetchall()
if len(rows) > 0:
return rows[0][0]
else:
board_date_string = datetime.datetime.utcnow().date().isoformat()
new_board_id = str(uuid.uuid4())
sql_insert_board = f"INSERT INTO boards (board_id, board_name, created_at, updated_at) VALUES ('{new_board_id}', '{board_name}', '{board_date_string}', '{board_date_string}')"
self.cursor.execute(sql_insert_board)
self.connection.commit()
return new_board_id
def add_image_to_board(self, filename, board_id):
"""Add an image mapping to a board."""
add_datetime_str = datetime.datetime.utcnow().isoformat()
sql_add_image_to_board = f"""INSERT INTO board_images (board_id, image_name, created_at, updated_at)
VALUES ('{board_id}', '{filename}', '{add_datetime_str}', '{add_datetime_str}')"""
self.cursor.execute(sql_add_image_to_board)
self.connection.commit()
def disconnect(self):
"""Disconnect from the db, cleaning up connections and cursors."""
if self.cursor is not None:
self.cursor.close()
if self.connection is not None:
self.connection.close()
def backup(self, timestamp_string):
"""Take a backup of the database."""
if not os.path.exists(self.database_backup_dir):
print(f"Database backup directory {self.database_backup_dir} does not exist -> creating...", end="")
os.makedirs(self.database_backup_dir)
print("Done!")
database_backup_path = os.path.join(self.database_backup_dir, f"backup-{timestamp_string}-invokeai.db")
print(f"Making DB Backup at {database_backup_path}...", end="")
shutil.copy2(self.database_path, database_backup_path)
print("Done!")
class MediaImportProcessor:
"""Containing class for script functionality."""
def __init__(self):
pass
board_name_id_map = {}
def get_import_file_list(self):
"""Ask the user for the import folder and scan for the list of files to return."""
while True:
default = ""
while True:
import_dir = os.path.expanduser(
prompt(
"Inputs: Specify absolute path containing InvokeAI .png images to import: ",
completer=PathCompleter(expanduser=True, only_directories=True),
default=default,
)
)
if len(import_dir) > 0 and Path(import_dir).is_dir():
break
default = import_dir
recurse_directories = (
(prompt("Include files from subfolders recursively [yN]? ").strip() or "N").upper().startswith("N")
)
if recurse_directories:
is_recurse = False
matching_file_list = glob.glob(import_dir + "/*.png", recursive=False)
else:
is_recurse = True
matching_file_list = glob.glob(import_dir + "/**/*.png", recursive=True)
if len(matching_file_list) > 0:
return import_dir, is_recurse, matching_file_list
else:
print(f"The specific path {import_dir} exists, but does not contain .png files!")
def get_file_details(self, filepath):
"""Retrieve the embedded metedata fields and dimensions from an image file."""
with PIL.Image.open(filepath) as img:
img.load()
png_width, png_height = img.size
img_info = img.info
return img_info, png_width, png_height
def select_board_option(self, board_names, timestamp_string):
"""Allow the user to choose how a board is selected for imported files."""
while True:
print("\r\nOptions for board selection for imported images:")
print(f"1) Select an existing board name. (found {len(board_names)})")
print("2) Specify a board name to create/add to.")
print("3) Create/add to board named 'IMPORT'.")
print(
f"4) Create/add to board named 'IMPORT' with the current datetime string appended (.e.g IMPORT_{timestamp_string})."
)
print(
"5) Create/add to board named 'IMPORT' with a the original file app_version appended (.e.g IMPORT_2.2.5)."
)
input_option = input("Specify desired board option: ")
match (input_option):
case "1":
if len(board_names) < 1:
print("\r\nThere are no existing board names to choose from. Select another option!")
continue
board_name = self.select_item_from_list(
board_names, "board name", True, "Cancel, go back and choose a different board option."
)
if board_name is not None:
return board_name
case "2":
while True:
board_name = input("Specify new/existing board name: ")
if board_name:
return board_name
case "3":
return "IMPORT"
case "4":
return f"IMPORT_{timestamp_string}"
case "5":
return "IMPORT_APPVERSION"
def select_item_from_list(self, items, entity_name, allow_cancel, cancel_string):
"""A general function to render a list of items to select in the console, prompt the user for a selection and ensure a valid entry is selected."""
print(f"Select a {entity_name.lower()} from the following list:")
index = 1
for item in items:
print(f"{index}) {item}")
index += 1
if allow_cancel:
print(f"{index}) {cancel_string}")
while True:
try:
option_number = int(input("Specify number of selection: "))
except ValueError:
continue
if allow_cancel and option_number == index:
return None
if option_number >= 1 and option_number <= len(items):
return items[option_number - 1]
def import_image(self, filepath: str, board_name_option: str, db_mapper: DatabaseMapper, config: Config):
"""Import a single file by its path"""
parser = InvokeAIMetadataParser()
file_name = os.path.basename(filepath)
file_destination_path = os.path.join(config.outputs_path, file_name)
print("===============================================================================")
print(f"Importing {filepath}")
# check destination to see if the file was previously imported
if os.path.exists(file_destination_path):
print("File already exists in the destination, skipping!")
ImportStats.count_skipped_file_exists += 1
return
# check if file name is already referenced in the database
if db_mapper.does_image_exist(file_name):
print("A reference to a file with this name already exists in the database, skipping!")
ImportStats.count_skipped_db_exists += 1
return
# load image info and dimensions
img_info, png_width, png_height = self.get_file_details(filepath)
# parse metadata
destination_needs_meta_update = True
log_version_note = "(Unknown)"
if "invokeai_metadata" in img_info:
# for the latest, we will just re-emit the same json, no need to parse/modify
converted_field = None
latest_json_string = img_info.get("invokeai_metadata")
log_version_note = "3.0.0+"
destination_needs_meta_update = False
else:
if "sd-metadata" in img_info:
converted_field = parser.parse_meta_tag_sd_metadata(json.loads(img_info.get("sd-metadata")))
elif "invokeai" in img_info:
converted_field = parser.parse_meta_tag_invokeai(json.loads(img_info.get("invokeai")))
elif "dream" in img_info:
converted_field = parser.parse_meta_tag_dream(img_info.get("dream"))
elif "Dream" in img_info:
converted_field = parser.parse_meta_tag_dream(img_info.get("Dream"))
else:
converted_field = InvokeAIMetadata()
destination_needs_meta_update = False
print("File does not have metadata from known Invoke AI versions, add only, no update!")
# use the loaded img dimensions if the metadata didnt have them
if converted_field.width is None:
converted_field.width = png_width
if converted_field.height is None:
converted_field.height = png_height
log_version_note = converted_field.imported_app_version if converted_field else "NoVersion"
log_version_note = log_version_note or "NoVersion"
latest_json_string = converted_field.to_json()
print(f"From Invoke AI Version {log_version_note} with dimensions {png_width} x {png_height}.")
# if metadata needs update, then update metdata and copy in one shot
if destination_needs_meta_update:
print("Updating metadata while copying...", end="")
self.update_file_metadata_while_copying(
filepath, file_destination_path, "invokeai_metadata", latest_json_string
)
print("Done!")
else:
print("No metadata update necessary, copying only...", end="")
shutil.copy2(filepath, file_destination_path)
print("Done!")
# create thumbnail
print("Creating thumbnail...", end="")
thumbnail_path = os.path.join(config.thumbnail_path, os.path.splitext(file_name)[0]) + ".webp"
thumbnail_size = 256, 256
with PIL.Image.open(filepath) as source_image:
source_image.thumbnail(thumbnail_size)
source_image.save(thumbnail_path, "webp")
print("Done!")
# finalize the dynamic board name if there is an APPVERSION token in it.
if converted_field is not None:
board_name = board_name_option.replace("APPVERSION", converted_field.imported_app_version or "NoVersion")
else:
board_name = board_name_option.replace("APPVERSION", "Latest")
# maintain a map of alrady created/looked up ids to avoid DB queries
print("Finding/Creating board...", end="")
if board_name in self.board_name_id_map:
board_id = self.board_name_id_map[board_name]
else:
board_id = db_mapper.get_board_id_with_create(board_name)
self.board_name_id_map[board_name] = board_id
print("Done!")
# add image to db
print("Adding image to database......", end="")
modified_time = datetime.datetime.utcfromtimestamp(os.path.getmtime(filepath))
db_mapper.add_new_image_to_database(file_name, png_width, png_height, latest_json_string, modified_time)
print("Done!")
# add image to board
print("Adding image to board......", end="")
db_mapper.add_image_to_board(file_name, board_id)
print("Done!")
ImportStats.count_imported += 1
if log_version_note in ImportStats.count_imported_by_version:
ImportStats.count_imported_by_version[log_version_note] += 1
else:
ImportStats.count_imported_by_version[log_version_note] = 1
def update_file_metadata_while_copying(self, filepath, file_destination_path, tag_name, tag_value):
"""Perform a metadata update with save to a new destination which accomplishes a copy while updating metadata."""
with PIL.Image.open(filepath) as target_image:
existing_img_info = target_image.info
metadata = PIL.PngImagePlugin.PngInfo()
# re-add any existing invoke ai tags unless they are the one we are trying to add
for key in existing_img_info:
if key != tag_name and key in ("dream", "Dream", "sd-metadata", "invokeai", "invokeai_metadata"):
metadata.add_text(key, existing_img_info[key])
metadata.add_text(tag_name, tag_value)
target_image.save(file_destination_path, pnginfo=metadata)
def process(self):
"""Begin main processing."""
print("===============================================================================")
print("This script will import images generated by earlier versions of")
print("InvokeAI into the currently installed root directory:")
print(f" {app_config.root_path}")
print("If this is not what you want to do, type ctrl-C now to cancel.")
# load config
print("===============================================================================")
print("= Configuration & Settings")
config = Config()
config.find_and_load()
db_mapper = DatabaseMapper(config.database_path, config.database_backup_dir)
db_mapper.connect()
import_dir, is_recurse, import_file_list = self.get_import_file_list()
ImportStats.count_source_files = len(import_file_list)
board_names = db_mapper.get_board_names()
board_name_option = self.select_board_option(board_names, config.TIMESTAMP_STRING)
print("\r\n===============================================================================")
print("= Import Settings Confirmation")
print()
print(f"Database File Path : {config.database_path}")
print(f"Outputs/Images Directory : {config.outputs_path}")
print(f"Import Image Source Directory : {import_dir}")
print(f" Recurse Source SubDirectories : {'Yes' if is_recurse else 'No'}")
print(f"Count of .png file(s) found : {len(import_file_list)}")
print(f"Board name option specified : {board_name_option}")
print(f"Database backup will be taken at : {config.database_backup_dir}")
print("\r\nNotes about the import process:")
print("- Source image files will not be modified, only copied to the outputs directory.")
print("- If the same file name already exists in the destination, the file will be skipped.")
print("- If the same file name already has a record in the database, the file will be skipped.")
print("- Invoke AI metadata tags will be updated/written into the imported copy only.")
print(
"- On the imported copy, only Invoke AI known tags (latest and legacy) will be retained (dream, sd-metadata, invokeai, invokeai_metadata)"
)
print(
"- A property 'imported_app_version' will be added to metadata that can be viewed in the UI's metadata viewer."
)
print(
"- The new 3.x InvokeAI outputs folder structure is flat so recursively found source imges will all be placed into the single outputs/images folder."
)
while True:
should_continue = prompt("\nDo you wish to continue with the import [Yn] ? ").lower() or "y"
if should_continue == "n":
print("\r\nCancelling Import")
return
elif should_continue == "y":
print()
break
db_mapper.backup(config.TIMESTAMP_STRING)
print()
ImportStats.time_start = datetime.datetime.utcnow()
for filepath in import_file_list:
try:
self.import_image(filepath, board_name_option, db_mapper, config)
except sqlite3.Error as sql_ex:
print(f"A database related exception was found processing {filepath}, will continue to next file. ")
print("Exception detail:")
print(sql_ex)
ImportStats.count_file_errors += 1
except Exception as ex:
print(f"Exception processing {filepath}, will continue to next file. ")
print("Exception detail:")
print(ex)
ImportStats.count_file_errors += 1
print("\r\n===============================================================================")
print(f"= Import Complete - Elpased Time: {ImportStats.get_elapsed_time_string()}")
print()
print(f"Source File(s) : {ImportStats.count_source_files}")
print(f"Total Imported : {ImportStats.count_imported}")
print(f"Skipped b/c file already exists on disk : {ImportStats.count_skipped_file_exists}")
print(f"Skipped b/c file already exists in db : {ImportStats.count_skipped_db_exists}")
print(f"Errors during import : {ImportStats.count_file_errors}")
if ImportStats.count_imported > 0:
print("\r\nBreakdown of imported files by version:")
for key, version in ImportStats.count_imported_by_version.items():
print(f" {key:20} : {version}")
def main():
try:
processor = MediaImportProcessor()
processor.process()
except KeyboardInterrupt:
print("\r\n\r\nUser cancelled execution.")
if __name__ == "__main__":
main()

View File

@@ -1,4 +1,4 @@
"""
Wrapper for invokeai.backend.configure.invokeai_configure
"""
from ...backend.install.invokeai_configure import main
from ...backend.install.invokeai_configure import main as invokeai_configure

View File

@@ -28,7 +28,6 @@ from npyscreen import widget
from invokeai.backend.util.logging import InvokeAILogger
from invokeai.backend.install.model_install_backend import (
ModelInstallList,
InstallSelections,
ModelInstall,
SchedulerPredictionType,
@@ -41,12 +40,12 @@ from invokeai.frontend.install.widgets import (
SingleSelectColumns,
TextBox,
BufferBox,
FileBox,
set_min_terminal_size,
select_stable_diffusion_config_file,
CyclingForm,
MIN_COLS,
MIN_LINES,
WindowTooSmallException,
)
from invokeai.app.services.config import InvokeAIAppConfig
@@ -156,7 +155,7 @@ class addModelsForm(CyclingForm, npyscreen.FormMultiPage):
BufferBox,
name="Log Messages",
editable=False,
max_height=15,
max_height=6,
)
self.nextrely += 1
@@ -693,7 +692,11 @@ def select_and_download_models(opt: Namespace):
# needed to support the probe() method running under a subprocess
torch.multiprocessing.set_start_method("spawn")
set_min_terminal_size(MIN_COLS, MIN_LINES)
if not set_min_terminal_size(MIN_COLS, MIN_LINES):
raise WindowTooSmallException(
"Could not increase terminal size. Try running again with a larger window or smaller font size."
)
installApp = AddModelApplication(opt)
try:
installApp.run()
@@ -787,6 +790,8 @@ def main():
curses.echo()
curses.endwin()
logger.info("Goodbye! Come back soon.")
except WindowTooSmallException as e:
logger.error(str(e))
except widget.NotEnoughSpaceForWidget as e:
if str(e).startswith("Height of 1 allocated"):
logger.error("Insufficient vertical space for the interface. Please make your window taller and try again")

View File

@@ -21,31 +21,40 @@ MIN_COLS = 130
MIN_LINES = 38
class WindowTooSmallException(Exception):
pass
# -------------------------------------
def set_terminal_size(columns: int, lines: int):
ts = get_terminal_size()
width = max(columns, ts.columns)
height = max(lines, ts.lines)
def set_terminal_size(columns: int, lines: int) -> bool:
OS = platform.uname().system
if OS == "Windows":
pass
# not working reliably - ask user to adjust the window
# _set_terminal_size_powershell(width,height)
elif OS in ["Darwin", "Linux"]:
_set_terminal_size_unix(width, height)
screen_ok = False
while not screen_ok:
ts = get_terminal_size()
width = max(columns, ts.columns)
height = max(lines, ts.lines)
# check whether it worked....
ts = get_terminal_size()
pause = False
if ts.columns < columns:
print("\033[1mThis window is too narrow for the user interface.\033[0m")
pause = True
if ts.lines < lines:
print("\033[1mThis window is too short for the user interface.\033[0m")
pause = True
if pause:
input("Maximize the window then press any key to continue..")
if OS == "Windows":
pass
# not working reliably - ask user to adjust the window
# _set_terminal_size_powershell(width,height)
elif OS in ["Darwin", "Linux"]:
_set_terminal_size_unix(width, height)
# check whether it worked....
ts = get_terminal_size()
if ts.columns < columns or ts.lines < lines:
print(
f"\033[1mThis window is too small for the interface. InvokeAI requires {columns}x{lines} (w x h) characters, but window is {ts.columns}x{ts.lines}\033[0m"
)
resp = input(
"Maximize the window and/or decrease the font size then press any key to continue. Type [Q] to give up.."
)
if resp.upper().startswith("Q"):
break
else:
screen_ok = True
return screen_ok
def _set_terminal_size_powershell(width: int, height: int):
@@ -80,14 +89,14 @@ def _set_terminal_size_unix(width: int, height: int):
sys.stdout.flush()
def set_min_terminal_size(min_cols: int, min_lines: int):
def set_min_terminal_size(min_cols: int, min_lines: int) -> bool:
# make sure there's enough room for the ui
term_cols, term_lines = get_terminal_size()
if term_cols >= min_cols and term_lines >= min_lines:
return
return True
cols = max(term_cols, min_cols)
lines = max(term_lines, min_lines)
set_terminal_size(cols, lines)
return set_terminal_size(cols, lines)
class IntSlider(npyscreen.Slider):
@@ -164,7 +173,7 @@ class FloatSlider(npyscreen.Slider):
class FloatTitleSlider(npyscreen.TitleText):
_entry_type = FloatSlider
_entry_type = npyscreen.Slider
class SelectColumnBase:

View File

@@ -382,7 +382,8 @@ def run_cli(args: Namespace):
def main():
args = _parse_args()
config.parse_args(["--root", str(args.root_dir)])
if args.root_dir:
config.parse_args(["--root", str(args.root_dir)])
try:
if args.front_end:

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View File

@@ -1,4 +1,4 @@
import{A as m,f$ as Je,z as y,a4 as Ka,g0 as Xa,af as va,aj as d,g1 as b,g2 as t,g3 as Ya,g4 as h,g5 as ua,g6 as Ja,g7 as Qa,aI as Za,g8 as et,ad as rt,g9 as at}from"./index-18f2f740.js";import{s as fa,n as o,t as tt,o as ha,p as ot,q as ma,v as ga,w as ya,x as it,y as Sa,z as pa,A as xr,B as nt,D as lt,E as st,F as xa,G as $a,H as ka,J as dt,K as _a,L as ct,M as bt,N as vt,O as ut,Q as wa,R as ft,S as ht,T as mt,U as gt,V as yt,W as St,e as pt,X as xt}from"./MantineProvider-b20a2267.js";var za=String.raw,Ca=za`
import{B as m,g7 as Je,A as y,a5 as Ka,g8 as Xa,af as va,aj as d,g9 as b,ga as t,gb as Ya,gc as h,gd as ua,ge as Ja,gf as Qa,aL as Za,gg as et,ad as rt,gh as at}from"./index-815faab3.js";import{s as fa,n as o,t as tt,o as ha,p as ot,q as ma,v as ga,w as ya,x as it,y as Sa,z as pa,A as xr,B as nt,D as lt,E as st,F as xa,G as $a,H as ka,J as dt,K as _a,L as ct,M as bt,N as vt,O as ut,Q as wa,R as ft,S as ht,T as mt,U as gt,V as yt,W as St,e as pt,X as xt}from"./menu-e9f8a36e.js";var za=String.raw,Ca=za`
:root,
:host {
--chakra-vh: 100vh;

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View File

@@ -12,7 +12,7 @@
margin: 0;
}
</style>
<script type="module" crossorigin src="./assets/index-18f2f740.js"></script>
<script type="module" crossorigin src="./assets/index-815faab3.js"></script>
</head>
<body dir="ltr">

View File

@@ -124,7 +124,8 @@
"deleteImageBin": "Deleted images will be sent to your operating system's Bin.",
"deleteImagePermanent": "Deleted images cannot be restored.",
"images": "Images",
"assets": "Assets"
"assets": "Assets",
"autoAssignBoardOnClick": "Auto-Assign Board on Click"
},
"hotkeys": {
"keyboardShortcuts": "Keyboard Shortcuts",

View File

@@ -23,7 +23,7 @@
"dev": "concurrently \"vite dev\" \"yarn run theme:watch\"",
"dev:host": "concurrently \"vite dev --host\" \"yarn run theme:watch\"",
"build": "yarn run lint && vite build",
"typegen": "npx ts-node scripts/typegen.ts",
"typegen": "node scripts/typegen.js",
"preview": "vite preview",
"lint:madge": "madge --circular src/main.tsx",
"lint:eslint": "eslint --max-warnings=0 .",

View File

@@ -124,7 +124,8 @@
"deleteImageBin": "Deleted images will be sent to your operating system's Bin.",
"deleteImagePermanent": "Deleted images cannot be restored.",
"images": "Images",
"assets": "Assets"
"assets": "Assets",
"autoAssignBoardOnClick": "Auto-Assign Board on Click"
},
"hotkeys": {
"keyboardShortcuts": "Keyboard Shortcuts",

View File

@@ -4,8 +4,9 @@ import { appStarted } from 'app/store/middleware/listenerMiddleware/listeners/ap
import { useAppDispatch, useAppSelector } from 'app/store/storeHooks';
import { PartialAppConfig } from 'app/types/invokeai';
import ImageUploader from 'common/components/ImageUploader';
import ChangeBoardModal from 'features/changeBoardModal/components/ChangeBoardModal';
import DeleteImageModal from 'features/deleteImageModal/components/DeleteImageModal';
import GalleryDrawer from 'features/gallery/components/GalleryPanel';
import DeleteImageModal from 'features/imageDeletion/components/DeleteImageModal';
import SiteHeader from 'features/system/components/SiteHeader';
import { configChanged } from 'features/system/store/configSlice';
import { languageSelector } from 'features/system/store/systemSelectors';
@@ -16,7 +17,6 @@ import ParametersDrawer from 'features/ui/components/ParametersDrawer';
import i18n from 'i18n';
import { size } from 'lodash-es';
import { ReactNode, memo, useEffect } from 'react';
import UpdateImageBoardModal from '../../features/gallery/components/Boards/UpdateImageBoardModal';
import GlobalHotkeys from './GlobalHotkeys';
import Toaster from './Toaster';
@@ -84,7 +84,7 @@ const App = ({ config = DEFAULT_CONFIG, headerComponent }: Props) => {
</Portal>
</Grid>
<DeleteImageModal />
<UpdateImageBoardModal />
<ChangeBoardModal />
<Toaster />
<GlobalHotkeys />
</>

View File

@@ -58,7 +58,7 @@ const DragPreview = (props: OverlayDragImageProps) => {
);
}
if (props.dragData.payloadType === 'IMAGE_NAMES') {
if (props.dragData.payloadType === 'IMAGE_DTOS') {
return (
<Flex
sx={{
@@ -71,7 +71,7 @@ const DragPreview = (props: OverlayDragImageProps) => {
...STYLES,
}}
>
<Heading>{props.dragData.payload.image_names.length}</Heading>
<Heading>{props.dragData.payload.imageDTOs.length}</Heading>
<Heading size="sm">Images</Heading>
</Flex>
);

View File

@@ -18,27 +18,32 @@ import {
DragStartEvent,
TypesafeDraggableData,
} from './typesafeDnd';
import { logger } from 'app/logging/logger';
type ImageDndContextProps = PropsWithChildren;
const ImageDndContext = (props: ImageDndContextProps) => {
const [activeDragData, setActiveDragData] =
useState<TypesafeDraggableData | null>(null);
const log = logger('images');
const dispatch = useAppDispatch();
const handleDragStart = useCallback((event: DragStartEvent) => {
console.log('dragStart', event.active.data.current);
const activeData = event.active.data.current;
if (!activeData) {
return;
}
setActiveDragData(activeData);
}, []);
const handleDragStart = useCallback(
(event: DragStartEvent) => {
log.trace({ dragData: event.active.data.current }, 'Drag started');
const activeData = event.active.data.current;
if (!activeData) {
return;
}
setActiveDragData(activeData);
},
[log]
);
const handleDragEnd = useCallback(
(event: DragEndEvent) => {
console.log('dragEnd', event.active.data.current);
log.trace({ dragData: event.active.data.current }, 'Drag ended');
const overData = event.over?.data.current;
if (!activeDragData || !overData) {
return;
@@ -46,7 +51,7 @@ const ImageDndContext = (props: ImageDndContextProps) => {
dispatch(dndDropped({ overData, activeData: activeDragData }));
setActiveDragData(null);
},
[activeDragData, dispatch]
[activeDragData, dispatch, log]
);
const mouseSensor = useSensor(MouseSensor, {

View File

@@ -11,7 +11,6 @@ import {
useDraggable as useOriginalDraggable,
useDroppable as useOriginalDroppable,
} from '@dnd-kit/core';
import { BoardId } from 'features/gallery/store/types';
import { ImageDTO } from 'services/api/types';
type BaseDropData = {
@@ -54,9 +53,13 @@ export type AddToBatchDropData = BaseDropData & {
actionType: 'ADD_TO_BATCH';
};
export type MoveBoardDropData = BaseDropData & {
actionType: 'MOVE_BOARD';
context: { boardId: BoardId };
export type AddToBoardDropData = BaseDropData & {
actionType: 'ADD_TO_BOARD';
context: { boardId: string };
};
export type RemoveFromBoardDropData = BaseDropData & {
actionType: 'REMOVE_FROM_BOARD';
};
export type TypesafeDroppableData =
@@ -67,7 +70,8 @@ export type TypesafeDroppableData =
| NodesImageDropData
| AddToBatchDropData
| NodesMultiImageDropData
| MoveBoardDropData;
| AddToBoardDropData
| RemoveFromBoardDropData;
type BaseDragData = {
id: string;
@@ -78,14 +82,12 @@ export type ImageDraggableData = BaseDragData & {
payload: { imageDTO: ImageDTO };
};
export type ImageNamesDraggableData = BaseDragData & {
payloadType: 'IMAGE_NAMES';
payload: { image_names: string[] };
export type ImageDTOsDraggableData = BaseDragData & {
payloadType: 'IMAGE_DTOS';
payload: { imageDTOs: ImageDTO[] };
};
export type TypesafeDraggableData =
| ImageDraggableData
| ImageNamesDraggableData;
export type TypesafeDraggableData = ImageDraggableData | ImageDTOsDraggableData;
interface UseDroppableTypesafeArguments
extends Omit<UseDroppableArguments, 'data'> {
@@ -156,14 +158,39 @@ export const isValidDrop = (
case 'SET_NODES_IMAGE':
return payloadType === 'IMAGE_DTO';
case 'SET_MULTI_NODES_IMAGE':
return payloadType === 'IMAGE_DTO' || 'IMAGE_NAMES';
return payloadType === 'IMAGE_DTO' || 'IMAGE_DTOS';
case 'ADD_TO_BATCH':
return payloadType === 'IMAGE_DTO' || 'IMAGE_NAMES';
case 'MOVE_BOARD': {
return payloadType === 'IMAGE_DTO' || 'IMAGE_DTOS';
case 'ADD_TO_BOARD': {
// If the board is the same, don't allow the drop
// Check the payload types
const isPayloadValid = payloadType === 'IMAGE_DTO' || 'IMAGE_NAMES';
const isPayloadValid = payloadType === 'IMAGE_DTO' || 'IMAGE_DTOS';
if (!isPayloadValid) {
return false;
}
// Check if the image's board is the board we are dragging onto
if (payloadType === 'IMAGE_DTO') {
const { imageDTO } = active.data.current.payload;
const currentBoard = imageDTO.board_id ?? 'none';
const destinationBoard = overData.context.boardId;
return currentBoard !== destinationBoard;
}
if (payloadType === 'IMAGE_DTOS') {
// TODO (multi-select)
return true;
}
return false;
}
case 'REMOVE_FROM_BOARD': {
// If the board is the same, don't allow the drop
// Check the payload types
const isPayloadValid = payloadType === 'IMAGE_DTO' || 'IMAGE_DTOS';
if (!isPayloadValid) {
return false;
}
@@ -172,20 +199,16 @@ export const isValidDrop = (
if (payloadType === 'IMAGE_DTO') {
const { imageDTO } = active.data.current.payload;
const currentBoard = imageDTO.board_id;
const destinationBoard = overData.context.boardId;
const isSameBoard = currentBoard === destinationBoard;
const isDestinationValid = !currentBoard ? destinationBoard : true;
return !isSameBoard && isDestinationValid;
return currentBoard !== 'none';
}
if (payloadType === 'IMAGE_NAMES') {
if (payloadType === 'IMAGE_DTOS') {
// TODO (multi-select)
return false;
return true;
}
return true;
return false;
}
default:
return false;

View File

@@ -1,4 +1,6 @@
import { Middleware } from '@reduxjs/toolkit';
import { store } from 'app/store/store';
import { PartialAppConfig } from 'app/types/invokeai';
import React, {
lazy,
memo,
@@ -7,16 +9,11 @@ import React, {
useEffect,
} from 'react';
import { Provider } from 'react-redux';
import { PartialAppConfig } from 'app/types/invokeai';
import { addMiddleware, resetMiddlewares } from 'redux-dynamic-middlewares';
import Loading from '../../common/components/Loading/Loading';
import { Middleware } from '@reduxjs/toolkit';
import { $authToken, $baseUrl } from 'services/api/client';
import { $authToken, $baseUrl, $projectId } from 'services/api/client';
import { socketMiddleware } from 'services/events/middleware';
import Loading from '../../common/components/Loading/Loading';
import '../../i18n';
import { AddImageToBoardContextProvider } from '../contexts/AddImageToBoardContext';
import ImageDndContext from './ImageDnd/ImageDndContext';
const App = lazy(() => import('./App'));
@@ -37,6 +34,7 @@ const InvokeAIUI = ({
config,
headerComponent,
middleware,
projectId,
}: Props) => {
useEffect(() => {
// configure API client token
@@ -49,6 +47,11 @@ const InvokeAIUI = ({
$baseUrl.set(apiUrl);
}
// configure API client project header
if (projectId) {
$projectId.set(projectId);
}
// reset dynamically added middlewares
resetMiddlewares();
@@ -68,8 +71,9 @@ const InvokeAIUI = ({
// Reset the API client token and base url on unmount
$baseUrl.set(undefined);
$authToken.set(undefined);
$projectId.set(undefined);
};
}, [apiUrl, token, middleware]);
}, [apiUrl, token, middleware, projectId]);
return (
<React.StrictMode>
@@ -77,9 +81,7 @@ const InvokeAIUI = ({
<React.Suspense fallback={<Loading />}>
<ThemeLocaleProvider>
<ImageDndContext>
<AddImageToBoardContextProvider>
<App config={config} headerComponent={headerComponent} />
</AddImageToBoardContextProvider>
<App config={config} headerComponent={headerComponent} />
</ImageDndContext>
</ThemeLocaleProvider>
</React.Suspense>

View File

@@ -1,91 +0,0 @@
import { useDisclosure } from '@chakra-ui/react';
import { PropsWithChildren, createContext, useCallback, useState } from 'react';
import { ImageDTO } from 'services/api/types';
import { imagesApi } from 'services/api/endpoints/images';
import { useAppDispatch } from '../store/storeHooks';
export type ImageUsage = {
isInitialImage: boolean;
isCanvasImage: boolean;
isNodesImage: boolean;
isControlNetImage: boolean;
};
type AddImageToBoardContextValue = {
/**
* Whether the move image dialog is open.
*/
isOpen: boolean;
/**
* Closes the move image dialog.
*/
onClose: () => void;
/**
* The image pending movement
*/
image?: ImageDTO;
onClickAddToBoard: (image: ImageDTO) => void;
handleAddToBoard: (boardId: string) => void;
};
export const AddImageToBoardContext =
createContext<AddImageToBoardContextValue>({
isOpen: false,
onClose: () => undefined,
onClickAddToBoard: () => undefined,
handleAddToBoard: () => undefined,
});
type Props = PropsWithChildren;
export const AddImageToBoardContextProvider = (props: Props) => {
const [imageToMove, setImageToMove] = useState<ImageDTO>();
const { isOpen, onOpen, onClose } = useDisclosure();
const dispatch = useAppDispatch();
// Clean up after deleting or dismissing the modal
const closeAndClearImageToDelete = useCallback(() => {
setImageToMove(undefined);
onClose();
}, [onClose]);
const onClickAddToBoard = useCallback(
(image?: ImageDTO) => {
if (!image) {
return;
}
setImageToMove(image);
onOpen();
},
[setImageToMove, onOpen]
);
const handleAddToBoard = useCallback(
(boardId: string) => {
if (imageToMove) {
dispatch(
imagesApi.endpoints.addImageToBoard.initiate({
imageDTO: imageToMove,
board_id: boardId,
})
);
closeAndClearImageToDelete();
}
},
[dispatch, closeAndClearImageToDelete, imageToMove]
);
return (
<AddImageToBoardContext.Provider
value={{
isOpen,
image: imageToMove,
onClose: closeAndClearImageToDelete,
onClickAddToBoard,
handleAddToBoard,
}}
>
{props.children}
</AddImageToBoardContext.Provider>
);
};

View File

@@ -1,8 +0,0 @@
import { createContext } from 'react';
type VoidFunc = () => void;
type ImageUploaderTriggerContextType = VoidFunc | null;
export const ImageUploaderTriggerContext =
createContext<ImageUploaderTriggerContextType>(null);

View File

@@ -23,6 +23,6 @@ const serializationDenylist: {
};
export const serialize: SerializeFunction = (data, key) => {
const result = omit(data, serializationDenylist[key]);
const result = omit(data, serializationDenylist[key] ?? []);
return JSON.stringify(result);
};

View File

@@ -27,7 +27,8 @@ import {
addImageDeletedFulfilledListener,
addImageDeletedPendingListener,
addImageDeletedRejectedListener,
addRequestedImageDeletionListener,
addRequestedSingleImageDeletionListener,
addRequestedMultipleImageDeletionListener,
} from './listeners/imageDeleted';
import { addImageDroppedListener } from './listeners/imageDropped';
import {
@@ -111,7 +112,8 @@ addImageUploadedRejectedListener();
addInitialImageSelectedListener();
// Image deleted
addRequestedImageDeletionListener();
addRequestedSingleImageDeletionListener();
addRequestedMultipleImageDeletionListener();
addImageDeletedPendingListener();
addImageDeletedFulfilledListener();
addImageDeletedRejectedListener();

View File

@@ -1,12 +1,10 @@
import { createAction } from '@reduxjs/toolkit';
import { imageSelected } from 'features/gallery/store/gallerySlice';
import { IMAGE_CATEGORIES } from 'features/gallery/store/types';
import {
ImageCache,
getListImagesUrl,
imagesApi,
} from 'services/api/endpoints/images';
import { imagesApi } from 'services/api/endpoints/images';
import { startAppListening } from '..';
import { getListImagesUrl, imagesAdapter } from 'services/api/util';
import { ImageCache } from 'services/api/types';
export const appStarted = createAction('app/appStarted');
@@ -34,7 +32,8 @@ export const addFirstListImagesListener = () => {
if (data.ids.length > 0) {
// Select the first image
dispatch(imageSelected(data.ids[0] as string));
const firstImage = imagesAdapter.getSelectors().selectAll(data)[0];
dispatch(imageSelected(firstImage ?? null));
}
},
});

View File

@@ -18,7 +18,9 @@ export const addAppConfigReceivedListener = () => {
const infillMethod = getState().generation.infillMethod;
if (!infill_methods.includes(infillMethod)) {
dispatch(setInfillMethod(infill_methods[0]));
// if there is no infill method, set it to the first one
// if there is no first one... god help us
dispatch(setInfillMethod(infill_methods[0] as string));
}
if (!nsfw_methods.includes('nsfw_checker')) {

View File

@@ -1,14 +1,14 @@
import { resetCanvas } from 'features/canvas/store/canvasSlice';
import { controlNetReset } from 'features/controlNet/store/controlNetSlice';
import { getImageUsage } from 'features/imageDeletion/store/imageDeletionSelectors';
import { getImageUsage } from 'features/deleteImageModal/store/selectors';
import { nodeEditorReset } from 'features/nodes/store/nodesSlice';
import { clearInitialImage } from 'features/parameters/store/generationSlice';
import { imagesApi } from 'services/api/endpoints/images';
import { startAppListening } from '..';
import { boardsApi } from '../../../../../services/api/endpoints/boards';
export const addDeleteBoardAndImagesFulfilledListener = () => {
startAppListening({
matcher: boardsApi.endpoints.deleteBoardAndImages.matchFulfilled,
matcher: imagesApi.endpoints.deleteBoardAndImages.matchFulfilled,
effect: async (action, { dispatch, getState }) => {
const { deleted_images } = action.payload;

View File

@@ -10,6 +10,7 @@ import {
} from 'features/gallery/store/types';
import { imagesApi } from 'services/api/endpoints/images';
import { startAppListening } from '..';
import { imagesSelectors } from 'services/api/util';
export const addBoardIdSelectedListener = () => {
startAppListening({
@@ -52,8 +53,9 @@ export const addBoardIdSelectedListener = () => {
queryArgs
)(getState());
if (boardImagesData?.ids.length) {
dispatch(imageSelected((boardImagesData.ids[0] as string) ?? null));
if (boardImagesData) {
const firstImage = imagesSelectors.selectAll(boardImagesData)[0];
dispatch(imageSelected(firstImage ?? null));
} else {
// board has no images - deselect
dispatch(imageSelected(null));

View File

@@ -26,6 +26,8 @@ export const addCanvasSavedToGalleryListener = () => {
return;
}
const { autoAddBoardId } = state.gallery;
dispatch(
imagesApi.endpoints.uploadImage.initiate({
file: new File([blob], 'savedCanvas.png', {
@@ -33,7 +35,7 @@ export const addCanvasSavedToGalleryListener = () => {
}),
image_category: 'general',
is_intermediate: false,
board_id: state.gallery.autoAddBoardId,
board_id: autoAddBoardId === 'none' ? undefined : autoAddBoardId,
crop_visible: true,
postUploadAction: {
type: 'TOAST',

View File

@@ -31,15 +31,20 @@ const predicate: AnyListenerPredicate<RootState> = (
// do not process if the user just disabled auto-config
if (
prevState.controlNet.controlNets[action.payload.controlNetId]
.shouldAutoConfig === true
?.shouldAutoConfig === true
) {
return false;
}
}
const { controlImage, processorType, shouldAutoConfig } =
state.controlNet.controlNets[action.payload.controlNetId];
const cn = state.controlNet.controlNets[action.payload.controlNetId];
if (!cn) {
// something is wrong, the controlNet should exist
return false;
}
const { controlImage, processorType, shouldAutoConfig } = cn;
if (controlNetModelChanged.match(action) && !shouldAutoConfig) {
// do not process if the action is a model change but the processor settings are dirty
return false;

View File

@@ -17,7 +17,7 @@ export const addControlNetImageProcessedListener = () => {
const { controlNetId } = action.payload;
const controlNet = getState().controlNet.controlNets[controlNetId];
if (!controlNet.controlImage) {
if (!controlNet?.controlImage) {
log.error('Unable to process ControlNet image');
return;
}

View File

@@ -1,57 +1,72 @@
import { logger } from 'app/logging/logger';
import { resetCanvas } from 'features/canvas/store/canvasSlice';
import { controlNetReset } from 'features/controlNet/store/controlNetSlice';
import { imageDeletionConfirmed } from 'features/deleteImageModal/store/actions';
import { isModalOpenChanged } from 'features/deleteImageModal/store/slice';
import { selectListImagesBaseQueryArgs } from 'features/gallery/store/gallerySelectors';
import { imageSelected } from 'features/gallery/store/gallerySlice';
import { imageDeletionConfirmed } from 'features/imageDeletion/store/actions';
import { isModalOpenChanged } from 'features/imageDeletion/store/imageDeletionSlice';
import { nodeEditorReset } from 'features/nodes/store/nodesSlice';
import { clearInitialImage } from 'features/parameters/store/generationSlice';
import { clamp } from 'lodash-es';
import { api } from 'services/api';
import { imagesApi } from 'services/api/endpoints/images';
import { imagesAdapter } from 'services/api/util';
import { startAppListening } from '..';
/**
* Called when the user requests an image deletion
*/
export const addRequestedImageDeletionListener = () => {
export const addRequestedSingleImageDeletionListener = () => {
startAppListening({
actionCreator: imageDeletionConfirmed,
effect: async (action, { dispatch, getState, condition }) => {
const { imageDTO, imageUsage } = action.payload;
const { imageDTOs, imagesUsage } = action.payload;
if (imageDTOs.length !== 1 || imagesUsage.length !== 1) {
// handle multiples in separate listener
return;
}
const imageDTO = imageDTOs[0];
const imageUsage = imagesUsage[0];
if (!imageDTO || !imageUsage) {
// satisfy noUncheckedIndexedAccess
return;
}
dispatch(isModalOpenChanged(false));
const { image_name } = imageDTO;
const state = getState();
const lastSelectedImage =
state.gallery.selection[state.gallery.selection.length - 1];
state.gallery.selection[state.gallery.selection.length - 1]?.image_name;
if (imageDTO && imageDTO?.image_name === lastSelectedImage) {
const { image_name } = imageDTO;
if (lastSelectedImage === image_name) {
const baseQueryArgs = selectListImagesBaseQueryArgs(state);
const { data } =
imagesApi.endpoints.listImages.select(baseQueryArgs)(state);
const ids = data?.ids ?? [];
const cachedImageDTOs = data
? imagesAdapter.getSelectors().selectAll(data)
: [];
const deletedImageIndex = ids.findIndex(
(result) => result.toString() === image_name
const deletedImageIndex = cachedImageDTOs.findIndex(
(i) => i.image_name === image_name
);
const filteredIds = ids.filter((id) => id.toString() !== image_name);
const filteredImageDTOs = cachedImageDTOs.filter(
(i) => i.image_name !== image_name
);
const newSelectedImageIndex = clamp(
deletedImageIndex,
0,
filteredIds.length - 1
filteredImageDTOs.length - 1
);
const newSelectedImageId = filteredIds[newSelectedImageIndex];
const newSelectedImageDTO = filteredImageDTOs[newSelectedImageIndex];
if (newSelectedImageId) {
dispatch(imageSelected(newSelectedImageId as string));
if (newSelectedImageDTO) {
dispatch(imageSelected(newSelectedImageDTO));
} else {
dispatch(imageSelected(null));
}
@@ -97,6 +112,66 @@ export const addRequestedImageDeletionListener = () => {
});
};
/**
* Called when the user requests an image deletion
*/
export const addRequestedMultipleImageDeletionListener = () => {
startAppListening({
actionCreator: imageDeletionConfirmed,
effect: async (action, { dispatch, getState }) => {
const { imageDTOs, imagesUsage } = action.payload;
if (imageDTOs.length < 1 || imagesUsage.length < 1) {
// handle singles in separate listener
return;
}
try {
// Delete from server
await dispatch(
imagesApi.endpoints.deleteImages.initiate({ imageDTOs })
).unwrap();
const state = getState();
const baseQueryArgs = selectListImagesBaseQueryArgs(state);
const { data } =
imagesApi.endpoints.listImages.select(baseQueryArgs)(state);
const newSelectedImageDTO = data
? imagesAdapter.getSelectors().selectAll(data)[0]
: undefined;
if (newSelectedImageDTO) {
dispatch(imageSelected(newSelectedImageDTO));
} else {
dispatch(imageSelected(null));
}
dispatch(isModalOpenChanged(false));
// We need to reset the features where the image is in use - none of these work if their image(s) don't exist
if (imagesUsage.some((i) => i.isCanvasImage)) {
dispatch(resetCanvas());
}
if (imagesUsage.some((i) => i.isControlNetImage)) {
dispatch(controlNetReset());
}
if (imagesUsage.some((i) => i.isInitialImage)) {
dispatch(clearInitialImage());
}
if (imagesUsage.some((i) => i.isNodesImage)) {
dispatch(nodeEditorReset());
}
} catch {
// no-op
}
},
});
};
/**
* Called when the actual delete request is sent to the server
*/

View File

@@ -6,10 +6,7 @@ import {
import { logger } from 'app/logging/logger';
import { setInitialCanvasImage } from 'features/canvas/store/canvasSlice';
import { controlNetImageChanged } from 'features/controlNet/store/controlNetSlice';
import {
imageSelected,
imagesAddedToBatch,
} from 'features/gallery/store/gallerySlice';
import { imageSelected } from 'features/gallery/store/gallerySlice';
import { fieldValueChanged } from 'features/nodes/store/nodesSlice';
import { initialImageChanged } from 'features/parameters/store/generationSlice';
import { imagesApi } from 'services/api/endpoints/images';
@@ -27,19 +24,32 @@ export const addImageDroppedListener = () => {
const log = logger('images');
const { activeData, overData } = action.payload;
log.debug({ activeData, overData }, 'Image or selection dropped');
if (activeData.payloadType === 'IMAGE_DTO') {
log.debug({ activeData, overData }, 'Image dropped');
} else if (activeData.payloadType === 'IMAGE_DTOS') {
log.debug(
{ activeData, overData },
`Images (${activeData.payload.imageDTOs.length}) dropped`
);
} else {
log.debug({ activeData, overData }, `Unknown payload dropped`);
}
// set current image
/**
* Image dropped on current image
*/
if (
overData.actionType === 'SET_CURRENT_IMAGE' &&
activeData.payloadType === 'IMAGE_DTO' &&
activeData.payload.imageDTO
) {
dispatch(imageSelected(activeData.payload.imageDTO.image_name));
dispatch(imageSelected(activeData.payload.imageDTO));
return;
}
// set initial image
/**
* Image dropped on initial image
*/
if (
overData.actionType === 'SET_INITIAL_IMAGE' &&
activeData.payloadType === 'IMAGE_DTO' &&
@@ -49,27 +59,9 @@ export const addImageDroppedListener = () => {
return;
}
// add image to batch
if (
overData.actionType === 'ADD_TO_BATCH' &&
activeData.payloadType === 'IMAGE_DTO' &&
activeData.payload.imageDTO
) {
dispatch(imagesAddedToBatch([activeData.payload.imageDTO.image_name]));
return;
}
// add multiple images to batch
if (
overData.actionType === 'ADD_TO_BATCH' &&
activeData.payloadType === 'IMAGE_NAMES'
) {
dispatch(imagesAddedToBatch(activeData.payload.image_names));
return;
}
// set control image
/**
* Image dropped on ControlNet
*/
if (
overData.actionType === 'SET_CONTROLNET_IMAGE' &&
activeData.payloadType === 'IMAGE_DTO' &&
@@ -85,7 +77,9 @@ export const addImageDroppedListener = () => {
return;
}
// set canvas image
/**
* Image dropped on Canvas
*/
if (
overData.actionType === 'SET_CANVAS_INITIAL_IMAGE' &&
activeData.payloadType === 'IMAGE_DTO' &&
@@ -95,7 +89,9 @@ export const addImageDroppedListener = () => {
return;
}
// set nodes image
/**
* Image dropped on node image field
*/
if (
overData.actionType === 'SET_NODES_IMAGE' &&
activeData.payloadType === 'IMAGE_DTO' &&
@@ -112,61 +108,36 @@ export const addImageDroppedListener = () => {
return;
}
// set multiple nodes images (single image handler)
if (
overData.actionType === 'SET_MULTI_NODES_IMAGE' &&
activeData.payloadType === 'IMAGE_DTO' &&
activeData.payload.imageDTO
) {
const { fieldName, nodeId } = overData.context;
dispatch(
fieldValueChanged({
nodeId,
fieldName,
value: [activeData.payload.imageDTO],
})
);
return;
}
// // set multiple nodes images (multiple images handler)
/**
* TODO
* Image selection dropped on node image collection field
*/
// if (
// overData.actionType === 'SET_MULTI_NODES_IMAGE' &&
// activeData.payloadType === 'IMAGE_NAMES'
// activeData.payloadType === 'IMAGE_DTO' &&
// activeData.payload.imageDTO
// ) {
// const { fieldName, nodeId } = overData.context;
// dispatch(
// imageCollectionFieldValueChanged({
// fieldValueChanged({
// nodeId,
// fieldName,
// value: activeData.payload.image_names.map((image_name) => ({
// image_name,
// })),
// value: [activeData.payload.imageDTO],
// })
// );
// return;
// }
// add image to board
/**
* Image dropped on user board
*/
if (
overData.actionType === 'MOVE_BOARD' &&
overData.actionType === 'ADD_TO_BOARD' &&
activeData.payloadType === 'IMAGE_DTO' &&
activeData.payload.imageDTO
) {
const { imageDTO } = activeData.payload;
const { boardId } = overData.context;
// image was droppe on the "NoBoardBoard"
if (!boardId) {
dispatch(
imagesApi.endpoints.removeImageFromBoard.initiate({
imageDTO,
})
);
return;
}
// image was dropped on a user board
dispatch(
imagesApi.endpoints.addImageToBoard.initiate({
imageDTO,
@@ -176,67 +147,58 @@ export const addImageDroppedListener = () => {
return;
}
// // add gallery selection to board
// if (
// overData.actionType === 'MOVE_BOARD' &&
// activeData.payloadType === 'IMAGE_NAMES' &&
// overData.context.boardId
// ) {
// console.log('adding gallery selection to board');
// const board_id = overData.context.boardId;
// dispatch(
// boardImagesApi.endpoints.addManyBoardImages.initiate({
// board_id,
// image_names: activeData.payload.image_names,
// })
// );
// return;
// }
/**
* Image dropped on 'none' board
*/
if (
overData.actionType === 'REMOVE_FROM_BOARD' &&
activeData.payloadType === 'IMAGE_DTO' &&
activeData.payload.imageDTO
) {
const { imageDTO } = activeData.payload;
dispatch(
imagesApi.endpoints.removeImageFromBoard.initiate({
imageDTO,
})
);
return;
}
// // remove gallery selection from board
// if (
// overData.actionType === 'MOVE_BOARD' &&
// activeData.payloadType === 'IMAGE_NAMES' &&
// overData.context.boardId === null
// ) {
// console.log('removing gallery selection to board');
// dispatch(
// boardImagesApi.endpoints.deleteManyBoardImages.initiate({
// image_names: activeData.payload.image_names,
// })
// );
// return;
// }
/**
* Multiple images dropped on user board
*/
if (
overData.actionType === 'ADD_TO_BOARD' &&
activeData.payloadType === 'IMAGE_DTOS' &&
activeData.payload.imageDTOs
) {
const { imageDTOs } = activeData.payload;
const { boardId } = overData.context;
dispatch(
imagesApi.endpoints.addImagesToBoard.initiate({
imageDTOs,
board_id: boardId,
})
);
return;
}
// // add batch selection to board
// if (
// overData.actionType === 'MOVE_BOARD' &&
// activeData.payloadType === 'IMAGE_NAMES' &&
// overData.context.boardId
// ) {
// const board_id = overData.context.boardId;
// dispatch(
// boardImagesApi.endpoints.addManyBoardImages.initiate({
// board_id,
// image_names: activeData.payload.image_names,
// })
// );
// return;
// }
// // remove batch selection from board
// if (
// overData.actionType === 'MOVE_BOARD' &&
// activeData.payloadType === 'IMAGE_NAMES' &&
// overData.context.boardId === null
// ) {
// dispatch(
// boardImagesApi.endpoints.deleteManyBoardImages.initiate({
// image_names: activeData.payload.image_names,
// })
// );
// return;
// }
/**
* Multiple images dropped on 'none' board
*/
if (
overData.actionType === 'REMOVE_FROM_BOARD' &&
activeData.payloadType === 'IMAGE_DTOS' &&
activeData.payload.imageDTOs
) {
const { imageDTOs } = activeData.payload;
dispatch(
imagesApi.endpoints.removeImagesFromBoard.initiate({
imageDTOs,
})
);
return;
}
},
});
};

View File

@@ -1,37 +1,32 @@
import { imageDeletionConfirmed } from 'features/imageDeletion/store/actions';
import { selectImageUsage } from 'features/imageDeletion/store/imageDeletionSelectors';
import { imageDeletionConfirmed } from 'features/deleteImageModal/store/actions';
import { selectImageUsage } from 'features/deleteImageModal/store/selectors';
import {
imageToDeleteSelected,
imagesToDeleteSelected,
isModalOpenChanged,
} from 'features/imageDeletion/store/imageDeletionSlice';
} from 'features/deleteImageModal/store/slice';
import { startAppListening } from '..';
export const addImageToDeleteSelectedListener = () => {
startAppListening({
actionCreator: imageToDeleteSelected,
actionCreator: imagesToDeleteSelected,
effect: async (action, { dispatch, getState }) => {
const imageDTO = action.payload;
const imageDTOs = action.payload;
const state = getState();
const { shouldConfirmOnDelete } = state.system;
const imageUsage = selectImageUsage(getState());
if (!imageUsage) {
// should never happen
return;
}
const imagesUsage = selectImageUsage(getState());
const isImageInUse =
imageUsage.isCanvasImage ||
imageUsage.isInitialImage ||
imageUsage.isControlNetImage ||
imageUsage.isNodesImage;
imagesUsage.some((i) => i.isCanvasImage) ||
imagesUsage.some((i) => i.isInitialImage) ||
imagesUsage.some((i) => i.isControlNetImage) ||
imagesUsage.some((i) => i.isNodesImage);
if (shouldConfirmOnDelete || isImageInUse) {
dispatch(isModalOpenChanged(true));
return;
}
dispatch(imageDeletionConfirmed({ imageDTO, imageUsage }));
dispatch(imageDeletionConfirmed({ imageDTOs, imagesUsage }));
},
});
};

View File

@@ -2,14 +2,13 @@ import { UseToastOptions } from '@chakra-ui/react';
import { logger } from 'app/logging/logger';
import { setInitialCanvasImage } from 'features/canvas/store/canvasSlice';
import { controlNetImageChanged } from 'features/controlNet/store/controlNetSlice';
import { imagesAddedToBatch } from 'features/gallery/store/gallerySlice';
import { fieldValueChanged } from 'features/nodes/store/nodesSlice';
import { initialImageChanged } from 'features/parameters/store/generationSlice';
import { addToast } from 'features/system/store/systemSlice';
import { omit } from 'lodash-es';
import { boardsApi } from 'services/api/endpoints/boards';
import { startAppListening } from '..';
import { imagesApi } from '../../../../../services/api/endpoints/images';
import { omit } from 'lodash-es';
const DEFAULT_UPLOADED_TOAST: UseToastOptions = {
title: 'Image Uploaded',
@@ -41,7 +40,7 @@ export const addImageUploadedFulfilledListener = () => {
// default action - just upload and alert user
if (postUploadAction?.type === 'TOAST') {
const { toastOptions } = postUploadAction;
if (!autoAddBoardId) {
if (!autoAddBoardId || autoAddBoardId === 'none') {
dispatch(addToast({ ...DEFAULT_UPLOADED_TOAST, ...toastOptions }));
} else {
// Add this image to the board
@@ -121,17 +120,6 @@ export const addImageUploadedFulfilledListener = () => {
);
return;
}
if (postUploadAction?.type === 'ADD_TO_BATCH') {
dispatch(imagesAddedToBatch([imageDTO.image_name]));
dispatch(
addToast({
...DEFAULT_UPLOADED_TOAST,
description: 'Added to batch',
})
);
return;
}
},
});
};

View File

@@ -15,7 +15,7 @@ import {
setShouldUseSDXLRefiner,
} from 'features/sdxl/store/sdxlSlice';
import { forEach, some } from 'lodash-es';
import { modelsApi } from 'services/api/endpoints/models';
import { modelsApi, vaeModelsAdapter } from 'services/api/endpoints/models';
import { startAppListening } from '..';
export const addModelsLoadedListener = () => {
@@ -144,8 +144,9 @@ export const addModelsLoadedListener = () => {
return;
}
const firstModelId = action.payload.ids[0];
const firstModel = action.payload.entities[firstModelId];
const firstModel = vaeModelsAdapter
.getSelectors()
.selectAll(action.payload)[0];
if (!firstModel) {
// No custom VAEs loaded at all; use the default

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