Track various canvas states:
- Filtering an entity
- Transforming an entity
- Rasterizing an entity
- Compositing
- Busy (derived from all of the above)
Also track individual entity states:
- Locked
- Disabled
- All of type are hidden
- Has objects
- Interactable (derived from all of the above)
These states then gate various actions. For example:
- Cannot invoke while the canvas is busy.
- Cannot transform, filter, duplicate, or delete when the canvas is busy.
Tool interaction restrictions are not yet implemented.
## Summary
This PR splits the lora.py monolith into separate files. The main
motivation for doing this in a standalone PR is to make the diffs more
interpretable in the [upcoming
changes](https://github.com/invoke-ai/InvokeAI/compare/main...ryan/flux-lora-sidecar)
to support LoRAs for FLUX.
This PR does not make any functional changes - it just moves files
around and changes import paths.
## QA Instructions
I smoke tested generation with LoRA, LoHA, LoKr, and IA3.
## Merge Plan
No special instructions. Merge on approval.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
- Add backcompat for cnet model default settings
- Default filter selection based on model type
- Updated UI components to use new filter nodes
- Added handling for failed filter executions, preventing filter from getting stuck in case it failed for some reason
- New translations for all filters & fields
Use a generic to narrow the `type` field from `string` to a literal. Now you can do e.g. `adapter.type === 'control_layer_adapter'` and TS narrows the type.
Similar to the existing node, but without any resizing. The backend logic was consolidated and modified so that it the model loading can be managed by the model manager.
The ONNX Runtime `InferenceSession` class was added to the `AnyModel` union to satisfy the type checker.
Similar to the existing node, but without any resizing and with a revised model loading API that uses the model manager.
All code related to the invocation now lives in the Invoke repo.