mirror of
https://github.com/invoke-ai/InvokeAI
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203 lines
8.6 KiB
Markdown
203 lines
8.6 KiB
Markdown
# Invocations
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Invocations represent a single operation, its inputs, and its outputs. These
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operations and their outputs can be chained together to generate and modify
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images.
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## Creating a new invocation
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To create a new invocation, either find the appropriate module file in
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`/ldm/invoke/app/invocations` to add your invocation to, or create a new one in
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that folder. All invocations in that folder will be discovered and made
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available to the CLI and API automatically. Invocations make use of
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[typing](https://docs.python.org/3/library/typing.html) and
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[pydantic](https://pydantic-docs.helpmanual.io/) for validation and integration
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into the CLI and API.
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An invocation looks like this:
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```py
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class UpscaleInvocation(BaseInvocation):
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"""Upscales an image."""
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type: Literal['upscale'] = 'upscale'
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# Inputs
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image: Union[ImageField,None] = Field(description="The input image")
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strength: float = Field(default=0.75, gt=0, le=1, description="The strength")
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level: Literal[2,4] = Field(default=2, description = "The upscale level")
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def invoke(self, context: InvocationContext) -> ImageOutput:
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image = context.services.images.get(self.image.image_type, self.image.image_name)
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results = context.services.generate.upscale_and_reconstruct(
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image_list = [[image, 0]],
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upscale = (self.level, self.strength),
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strength = 0.0, # GFPGAN strength
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save_original = False,
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image_callback = None,
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)
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# Results are image and seed, unwrap for now
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# TODO: can this return multiple results?
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image_type = ImageType.RESULT
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image_name = context.services.images.create_name(context.graph_execution_state_id, self.id)
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context.services.images.save(image_type, image_name, results[0][0])
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return ImageOutput(
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image = ImageField(image_type = image_type, image_name = image_name)
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)
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```
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Each portion is important to implement correctly.
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### Class definition and type
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```py
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class UpscaleInvocation(BaseInvocation):
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"""Upscales an image."""
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type: Literal['upscale'] = 'upscale'
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```
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All invocations must derive from `BaseInvocation`. They should have a docstring
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that declares what they do in a single, short line. They should also have a
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`type` with a type hint that's `Literal["command_name"]`, where `command_name`
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is what the user will type on the CLI or use in the API to create this
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invocation. The `command_name` must be unique. The `type` must be assigned to
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the value of the literal in the type hint.
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### Inputs
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```py
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# Inputs
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image: Union[ImageField,None] = Field(description="The input image")
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strength: float = Field(default=0.75, gt=0, le=1, description="The strength")
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level: Literal[2,4] = Field(default=2, description="The upscale level")
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```
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Inputs consist of three parts: a name, a type hint, and a `Field` with default,
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description, and validation information. For example:
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| Part | Value | Description |
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| --------- | ------------------------------------------------------------- | ------------------------------------------------------------------------------------------------------------------------- |
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| Name | `strength` | This field is referred to as `strength` |
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| Type Hint | `float` | This field must be of type `float` |
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| Field | `Field(default=0.75, gt=0, le=1, description="The strength")` | The default value is `0.75`, the value must be in the range (0,1], and help text will show "The strength" for this field. |
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Notice that `image` has type `Union[ImageField,None]`. The `Union` allows this
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field to be parsed with `None` as a value, which enables linking to previous
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invocations. All fields should either provide a default value or allow `None` as
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a value, so that they can be overwritten with a linked output from another
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invocation.
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The special type `ImageField` is also used here. All images are passed as
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`ImageField`, which protects them from pydantic validation errors (since images
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only ever come from links).
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Finally, note that for all linking, the `type` of the linked fields must match.
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If the `name` also matches, then the field can be **automatically linked** to a
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previous invocation by name and matching.
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### Invoke Function
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```py
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def invoke(self, context: InvocationContext) -> ImageOutput:
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image = context.services.images.get(self.image.image_type, self.image.image_name)
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results = context.services.generate.upscale_and_reconstruct(
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image_list = [[image, 0]],
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upscale = (self.level, self.strength),
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strength = 0.0, # GFPGAN strength
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save_original = False,
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image_callback = None,
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)
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# Results are image and seed, unwrap for now
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image_type = ImageType.RESULT
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image_name = context.services.images.create_name(context.graph_execution_state_id, self.id)
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context.services.images.save(image_type, image_name, results[0][0])
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return ImageOutput(
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image = ImageField(image_type = image_type, image_name = image_name)
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)
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```
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The `invoke` function is the last portion of an invocation. It is provided an
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`InvocationContext` which contains services to perform work as well as a
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`session_id` for use as needed. It should return a class with output values that
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derives from `BaseInvocationOutput`.
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Before being called, the invocation will have all of its fields set from
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defaults, inputs, and finally links (overriding in that order).
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Assume that this invocation may be running simultaneously with other
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invocations, may be running on another machine, or in other interesting
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scenarios. If you need functionality, please provide it as a service in the
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`InvocationServices` class, and make sure it can be overridden.
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### Outputs
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```py
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class ImageOutput(BaseInvocationOutput):
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"""Base class for invocations that output an image"""
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type: Literal['image'] = 'image'
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image: ImageField = Field(default=None, description="The output image")
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```
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Output classes look like an invocation class without the invoke method. Prefer
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to use an existing output class if available, and prefer to name inputs the same
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as outputs when possible, to promote automatic invocation linking.
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## Schema Generation
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Invocation, output and related classes are used to generate an OpenAPI schema.
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### Required Properties
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The schema generation treat all properties with default values as optional. This
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makes sense internally, but when when using these classes via the generated
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schema, we end up with e.g. the `ImageOutput` class having its `image` property
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marked as optional.
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We know that this property will always be present, so the additional logic
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needed to always check if the property exists adds a lot of extraneous cruft.
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To fix this, we can leverage `pydantic`'s
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[schema customisation](https://docs.pydantic.dev/usage/schema/#schema-customization)
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to mark properties that we know will always be present as required.
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Here's that `ImageOutput` class, without the needed schema customisation:
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```python
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class ImageOutput(BaseInvocationOutput):
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"""Base class for invocations that output an image"""
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type: Literal["image"] = "image"
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image: ImageField = Field(default=None, description="The output image")
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```
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The generated OpenAPI schema, and all clients/types generated from it, will have
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the `type` and `image` properties marked as optional, even though we know they
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will always have a value by the time we can interact with them via the API.
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Here's the same class, but with the schema customisation added:
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```python
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class ImageOutput(BaseInvocationOutput):
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"""Base class for invocations that output an image"""
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type: Literal["image"] = "image"
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image: ImageField = Field(default=None, description="The output image")
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class Config:
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schema_extra = {
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'required': [
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'type',
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'image',
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]
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}
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```
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The resultant schema (and any API client or types generated from it) will now
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have see `type` as string literal `"image"` and `image` as an `ImageField`
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object.
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See this `pydantic` issue for discussion on this solution:
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<https://github.com/pydantic/pydantic/discussions/4577>
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