Commit Graph

343 Commits

Author SHA1 Message Date
blessedcoolant
6bab040d24 Merge branch 'main' into ip-adapter-style-comp 2024-04-16 21:14:06 +05:30
Lincoln Stein
e93f4d632d
[util] Add generic torch device class (#6174)
* introduce new abstraction layer for GPU devices

* add unit test for device abstraction

* fix ruff

* convert TorchDeviceSelect into a stateless class

* move logic to select context-specific execution device into context API

* add mock hardware environments to pytest

* remove dangling mocker fixture

* fix unit test for running on non-CUDA systems

* remove unimplemented get_execution_device() call

* remove autocast precision

* Multiple changes:

1. Remove TorchDeviceSelect.get_execution_device(), as well as calls to
   context.models.get_execution_device().
2. Rename TorchDeviceSelect to TorchDevice
3. Added back the legacy public API defined in `invocation_api`, including
   choose_precision().
4. Added a config file migration script to accommodate removal of precision=autocast.

* add deprecation warnings to choose_torch_device() and choose_precision()

* fix test crash

* remove app_config argument from choose_torch_device() and choose_torch_dtype()

---------

Co-authored-by: Lincoln Stein <lstein@gmail.com>
2024-04-15 13:12:49 +00:00
blessedcoolant
d4393e4170 chore: linter fixes 2024-04-13 12:14:45 +05:30
blessedcoolant
6ea183f0d4 wip: Initial Implementation IP Adapter Style & Comp Modes 2024-04-13 11:09:45 +05:30
psychedelicious
026d095afe fix(nodes): do not set seed on output latents from denoise latents
`LatentsField` objects have an optional `seed` field. This should only be populated when the latents are noise, generated from a seed.

`DenoiseLatentsInvocation` needs a seed value for scheduler initialization. It's used in a few places, and there is some logic for determining the seed to use with a series of fallbacks:
- Use the seed from the noise (a `LatentsField` object)
- Use the seed from the latents (a `LatentsField` object - normally it won't have a seed)
- Use `0` as a final fallback

In `DenoisLatentsInvocation`, we set the seed in the `LatentsOutput`, even though the output latents are not noise.

This is normally fine, but when we use refiner, we re-use the those same latents for the refiner denoise. This causes that characteristic same-seed-fried look on the refiner pass.

Simple fix - do not set the field in the output latents.
2024-04-11 07:21:50 -04:00
Ryan Dick
0bdbfd4d1d Add support for IP-Adapter masks. 2024-04-09 15:06:51 -04:00
Ryan Dick
2e27ed5f3d Pass IP-Adapter scales through the cross_attn_kwargs pathway, since they are the same for all attention layers. This change also helps to prepare for adding IP-Adapter region masks. 2024-04-09 15:06:51 -04:00
Ryan Dick
4a828818da Remove support for Prompt-to-Prompt cross-attention control (aka .swap()). This feature is not widely used. It does not work with SDXL and is incompatible with IP-Adapter and regional prompting. The implementation is also intertwined with both text embedding and the UNet attention layers, resulting in a high maintenance burden. For all of these reasons, we have decided to drop support. 2024-04-09 10:57:02 -04:00
Ryan Dick
182810337c Add utility to_standard_float_mask(...) to convert various mask formats to a standardized format. 2024-04-09 08:12:12 -04:00
Ryan Dick
338bf808d6 Rename MaskField to be a generice TensorField. 2024-04-09 08:12:12 -04:00
Ryan Dick
5b5a4204a1 Fix dimensions of mask produced by ExtractMasksAndPromptsInvocation. Also, added a clearer error message in case the same error is introduced in the future. 2024-04-09 08:12:12 -04:00
Ryan Dick
dc64fec771 Add support for lists of prompt embeddings to be passed to the DenoiseLatents invocation, and add handling of the conditioning region masks in DenoiseLatents. 2024-04-09 08:12:12 -04:00
Ryan Dick
d1e45585d0 Add TextConditioningRegions to the TextConditioningData data structure. 2024-04-09 08:12:12 -04:00
Ryan Dick
e354c29b52 Rename ConditioningData -> TextConditioningData. 2024-04-09 08:12:12 -04:00
Ryan Dick
a7f363e654 Split ip_adapter_conditioning out from ConditioningData. 2024-04-09 08:12:12 -04:00
Ryan Dick
9b2162e564 Remove scheduler_args from ConditioningData structure. 2024-04-09 08:12:12 -04:00
Jonathan
3659219f46
Fix IdealSizeInvocation (#6145) 2024-04-05 08:38:40 +11:00
blessedcoolant
79f7b61dfe fix: cleanup across various ip adapter files 2024-04-03 12:39:52 +05:30
blessedcoolant
b1c8266e22 feat: add base model recognition for ip adapter safetensor files 2024-04-03 12:39:52 +05:30
psychedelicious
29b04b7e83 chore: bump nodes versions
Bump all nodes in prep for v4.0.0.
2024-03-20 10:28:07 +11:00
psychedelicious
897fe497dc fix(config): use new get_config across the app, use correct settings 2024-03-19 09:24:28 +11:00
Brandon Rising
8d2a4db902 Found another instance of expecting a mid_block on the decoder in a vae 2024-03-12 12:11:38 -04:00
Brandon Rising
7b393656de Update l2i invoke and seamless to support AutoencoderTiny, remove attention processors if no mid_block is detected 2024-03-12 12:00:24 -04:00
Ryan Dick
145bb45858 Remove dead code related to an old symmetry feature. 2024-03-10 00:13:18 -06:00
dunkeroni
631e789195 fix(canvas): create masked latents when None 2024-03-10 11:58:41 +11:00
psychedelicious
92b0d13d0e feat(nodes): "ModelField" -> "ModelIdentifierField", add hash/name/base/type 2024-03-10 11:03:38 +11:00
psychedelicious
132790eebe tidy(nodes): use canonical capitalizations 2024-03-07 10:56:59 +11:00
psychedelicious
528ac5dd25 refactor(nodes): model identifiers
- All models are identified by a key and optionally a submodel type via new model `ModelField`. Previously, a few model types had their own class, but not all of them. This inconsistency just added complexity without any benefit.
- Update all invocation to use the new format.
- In the node API, models are loaded by key or an instance of `ModelField` as a convenience.
- Add an enriched model schema for metadata. It includes key, hash, name, base and type.
2024-03-07 10:56:59 +11:00
dunkeroni
735857479d fix(canvas): use corrected mask for pasteback 2024-03-03 12:58:47 -05:00
Ryan Dick
cc45007dc4 Remove unused code for attention map saving. 2024-03-02 08:25:41 -05:00
Ryan Dick
ad96857e0f Fix avoid storing extra conditioning info in two places. 2024-03-01 15:12:03 -05:00
dunkeroni
06cc57d82a feat(nodes): added gradient mask node 2024-03-01 10:42:33 +11:00
Lincoln Stein
5d612ec095 Tidy names and locations of modules
- Rename old "model_management" directory to "model_management_OLD" in order to catch
  dangling references to original model manager.
- Caught and fixed most dangling references (still checking)
- Rename lora, textual_inversion and model_patcher modules
- Introduce a RawModel base class to simplfy the Union returned by the
  model loaders.
- Tidy up the model manager 2-related tests. Add useful fixtures, and
  a finalizer to the queue and installer fixtures that will stop the
  services and release threads.
2024-03-01 10:42:33 +11:00
psychedelicious
6df3c450e8 fix(nodes): fix t2i adapter model loading 2024-03-01 10:42:33 +11:00
psychedelicious
539570cc7a feat(nodes): update invocation context for mm2, update nodes model usage 2024-03-01 10:42:33 +11:00
Brandon Rising
262cbaacdd References to context.services.model_manager.store.get_model can only accept keys, remove invalid assertion 2024-03-01 10:42:33 +11:00
Brandon Rising
35e8a33dfd Remove references to model_records service, change submodel property on ModelInfo to submodel_type to support new params in model manager 2024-03-01 10:42:33 +11:00
Lincoln Stein
a23dedd2ee make model manager v2 ready for PR review
- Replace legacy model manager service with the v2 manager.

- Update invocations to use new load interface.

- Fixed many but not all type checking errors in the invocations. Most
  were unrelated to model manager

- Updated routes. All the new routes live under the route tag
  `model_manager_v2`. To avoid confusion with the old routes,
  they have the URL prefix `/api/v2/models`. The old routes
  have been de-registered.

- Added a pytest for the loader.

- Updated documentation in contributing/MODEL_MANAGER.md
2024-03-01 10:42:33 +11:00
Lincoln Stein
78ef946e01 BREAKING CHANGES: invocations now require model key, not base/type/name
- Implement new model loader and modify invocations and embeddings

- Finish implementation loaders for all models currently supported by
  InvokeAI.

- Move lora, textual_inversion, and model patching support into
  backend/embeddings.

- Restore support for model cache statistics collection (a little ugly,
  needs work).

- Fixed up invocations that load and patch models.

- Move seamless and silencewarnings utils into better location
2024-03-01 10:42:33 +11:00
psychedelicious
25f64d5b19 chore(nodes): "SAMPLER_NAME_VALUES" -> "SCHEDULER_NAME_VALUES"
This was named inaccurately.
2024-03-01 10:42:33 +11:00
psychedelicious
e5d8921cf2 feat(nodes): extract LATENT_SCALE_FACTOR to constants.py 2024-03-01 10:42:33 +11:00
psychedelicious
9f382419dc revert(nodes): revert making tensors/conditioning use item storage
Turns out they are just different enough in purpose that the implementations would be rather unintuitive. I've made a separate ObjectSerializer service to handle tensors and conditioning.

Refined the class a bit too.
2024-03-01 10:42:33 +11:00
psychedelicious
0710fb3fb0 feat(nodes): replace latents service with tensors and conditioning services
- New generic class `PickleStorageBase`, implements the same API as `LatentsStorageBase`, use for storing non-serializable data via pickling
- Implementation `PickleStorageTorch` uses `torch.save` and `torch.load`, same as `LatentsStorageDisk`
- Add `tensors: PickleStorageBase[torch.Tensor]` to `InvocationServices`
- Add `conditioning: PickleStorageBase[ConditioningFieldData]` to `InvocationServices`
- Remove `latents` service and all `LatentsStorage` classes
- Update `InvocationContext` and all usage of old `latents` service to use the new services/context wrapper methods
2024-03-01 10:42:33 +11:00
psychedelicious
7fbdfbf9e5 feat(nodes): add WithBoard field helper class
This class works the same way as `WithMetadata` - it simply adds a `board` field to the node. The context wrapper function is able to pull the board id from this. This allows image-outputting nodes to get a board field "for free", and have their outputs automatically saved to it.

This is a breaking change for node authors who may have a field called `board`, because it makes `board` a reserved field name. I'll look into how to avoid this - maybe by naming this invoke-managed field `_board` to avoid collisions?

Supporting changes:
- `WithBoard` is added to all image-outputting nodes, giving them the ability to save to board.
- Unused, duplicate `WithMetadata` and `WithWorkflow` classes are deleted from `baseinvocation.py`. The "real" versions are in `fields.py`.
- Remove `LinearUIOutputInvocation`. Now that all nodes that output images also have a `board` field by default, this node is no longer necessary. See comment here for context: https://github.com/invoke-ai/InvokeAI/pull/5491#discussion_r1480760629
- Without `LinearUIOutputInvocation`, the `ImagesInferface.update` method is no longer needed, and removed.

Note: This commit does not bump all node versions. I will ensure that is done correctly before merging the PR of which this commit is a part.

Note: A followup commit will implement the frontend changes to support this change.
2024-03-01 10:42:33 +11:00
psychedelicious
cc8d713c57 fix(nodes): restore missing context type annotations 2024-03-01 10:42:33 +11:00
psychedelicious
4ce21087d3 fix(nodes): restore type annotations for InvocationContext 2024-03-01 10:42:33 +11:00
psychedelicious
8637c40661 feat(nodes): update all invocations to use new invocation context
Update all invocations to use the new context. The changes are all fairly simple, but there are a lot of them.

Supporting minor changes:
- Patch bump for all nodes that use the context
- Update invocation processor to provide new context
- Minor change to `EventServiceBase` to accept a node's ID instead of the dict version of a node
- Minor change to `ModelManagerService` to support the new wrapped context
- Fanagling of imports to avoid circular dependencies
2024-03-01 10:42:33 +11:00
psychedelicious
992b02aa65 tidy(nodes): move all field things to fields.py
Unfortunately, this is necessary to prevent circular imports at runtime.
2024-03-01 10:42:33 +11:00
JPPhoto
6a2856e46f Updated field descriptions 2024-01-23 02:26:30 +11:00
Jonathan
892fe62264 Add Ideal Size node to core nodes
The Ideal Size node is useful for High-Res Optimization as it gives the optimum size for creating an initial generation with minimal artifacts (duplication and other strangeness) from today's models.

After inclusion, front end graph generation can be simplified by offloading calculations for HRO initial generation to this node.
2024-01-23 02:26:30 +11:00