InvokeAI/invokeai/app/services/events/events_base.py
psychedelicious c238a7f18b feat(api): chore: pydantic & fastapi upgrade
Upgrade pydantic and fastapi to latest.

- pydantic~=2.4.2
- fastapi~=103.2
- fastapi-events~=0.9.1

**Big Changes**

There are a number of logic changes needed to support pydantic v2. Most changes are very simple, like using the new methods to serialized and deserialize models, but there are a few more complex changes.

**Invocations**

The biggest change relates to invocation creation, instantiation and validation.

Because pydantic v2 moves all validation logic into the rust pydantic-core, we may no longer directly stick our fingers into the validation pie.

Previously, we (ab)used models and fields to allow invocation fields to be optional at instantiation, but required when `invoke()` is called. We directly manipulated the fields and invocation models when calling `invoke()`.

With pydantic v2, this is much more involved. Changes to the python wrapper do not propagate down to the rust validation logic - you have to rebuild the model. This causes problem with concurrent access to the invocation classes and is not a free operation.

This logic has been totally refactored and we do not need to change the model any more. The details are in `baseinvocation.py`, in the `InputField` function and `BaseInvocation.invoke_internal()` method.

In the end, this implementation is cleaner.

**Invocation Fields**

In pydantic v2, you can no longer directly add or remove fields from a model.

Previously, we did this to add the `type` field to invocations.

**Invocation Decorators**

With pydantic v2, we instead use the imperative `create_model()` API to create a new model with the additional field. This is done in `baseinvocation.py` in the `invocation()` wrapper.

A similar technique is used for `invocation_output()`.

**Minor Changes**

There are a number of minor changes around the pydantic v2 models API.

**Protected `model_` Namespace**

All models' pydantic-provided methods and attributes are prefixed with `model_` and this is considered a protected namespace. This causes some conflict, because "model" means something to us, and we have a ton of pydantic models with attributes starting with "model_".

Forunately, there are no direct conflicts. However, in any pydantic model where we define an attribute or method that starts with "model_", we must tell set the protected namespaces to an empty tuple.

```py
class IPAdapterModelField(BaseModel):
    model_name: str = Field(description="Name of the IP-Adapter model")
    base_model: BaseModelType = Field(description="Base model")

    model_config = ConfigDict(protected_namespaces=())
```

**Model Serialization**

Pydantic models no longer have `Model.dict()` or `Model.json()`.

Instead, we use `Model.model_dump()` or `Model.model_dump_json()`.

**Model Deserialization**

Pydantic models no longer have `Model.parse_obj()` or `Model.parse_raw()`, and there are no `parse_raw_as()` or `parse_obj_as()` functions.

Instead, you need to create a `TypeAdapter` object to parse python objects or JSON into a model.

```py
adapter_graph = TypeAdapter(Graph)
deserialized_graph_from_json = adapter_graph.validate_json(graph_json)
deserialized_graph_from_dict = adapter_graph.validate_python(graph_dict)
```

**Field Customisation**

Pydantic `Field`s no longer accept arbitrary args.

Now, you must put all additional arbitrary args in a `json_schema_extra` arg on the field.

**Schema Customisation**

FastAPI and pydantic schema generation now follows the OpenAPI version 3.1 spec.

This necessitates two changes:
- Our schema customization logic has been revised
- Schema parsing to build node templates has been revised

The specific aren't important, but this does present additional surface area for bugs.

**Performance Improvements**

Pydantic v2 is a full rewrite with a rust backend. This offers a substantial performance improvement (pydantic claims 5x to 50x depending on the task). We'll notice this the most during serialization and deserialization of sessions/graphs, which happens very very often - a couple times per node.

I haven't done any benchmarks, but anecdotally, graph execution is much faster. Also, very larges graphs - like with massive iterators - are much, much faster.
2023-10-17 14:59:25 +11:00

316 lines
11 KiB
Python

# Copyright (c) 2022 Kyle Schouviller (https://github.com/kyle0654)
from typing import Any, Optional
from invokeai.app.services.invocation_processor.invocation_processor_common import ProgressImage
from invokeai.app.services.session_queue.session_queue_common import (
BatchStatus,
EnqueueBatchResult,
SessionQueueItem,
SessionQueueStatus,
)
from invokeai.app.util.misc import get_timestamp
from invokeai.backend.model_management.model_manager import ModelInfo
from invokeai.backend.model_management.models.base import BaseModelType, ModelType, SubModelType
class EventServiceBase:
queue_event: str = "queue_event"
"""Basic event bus, to have an empty stand-in when not needed"""
def dispatch(self, event_name: str, payload: Any) -> None:
pass
def __emit_queue_event(self, event_name: str, payload: dict) -> None:
"""Queue events are emitted to a room with queue_id as the room name"""
payload["timestamp"] = get_timestamp()
self.dispatch(
event_name=EventServiceBase.queue_event,
payload=dict(event=event_name, data=payload),
)
# Define events here for every event in the system.
# This will make them easier to integrate until we find a schema generator.
def emit_generator_progress(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
node: dict,
source_node_id: str,
progress_image: Optional[ProgressImage],
step: int,
order: int,
total_steps: int,
) -> None:
"""Emitted when there is generation progress"""
self.__emit_queue_event(
event_name="generator_progress",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
node_id=node.get("id"),
source_node_id=source_node_id,
progress_image=progress_image.model_dump() if progress_image is not None else None,
step=step,
order=order,
total_steps=total_steps,
),
)
def emit_invocation_complete(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
result: dict,
node: dict,
source_node_id: str,
) -> None:
"""Emitted when an invocation has completed"""
self.__emit_queue_event(
event_name="invocation_complete",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
node=node,
source_node_id=source_node_id,
result=result,
),
)
def emit_invocation_error(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
node: dict,
source_node_id: str,
error_type: str,
error: str,
) -> None:
"""Emitted when an invocation has completed"""
self.__emit_queue_event(
event_name="invocation_error",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
node=node,
source_node_id=source_node_id,
error_type=error_type,
error=error,
),
)
def emit_invocation_started(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
node: dict,
source_node_id: str,
) -> None:
"""Emitted when an invocation has started"""
self.__emit_queue_event(
event_name="invocation_started",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
node=node,
source_node_id=source_node_id,
),
)
def emit_graph_execution_complete(
self, queue_id: str, queue_item_id: int, queue_batch_id: str, graph_execution_state_id: str
) -> None:
"""Emitted when a session has completed all invocations"""
self.__emit_queue_event(
event_name="graph_execution_state_complete",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
),
)
def emit_model_load_started(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
submodel: SubModelType,
) -> None:
"""Emitted when a model is requested"""
self.__emit_queue_event(
event_name="model_load_started",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
model_name=model_name,
base_model=base_model,
model_type=model_type,
submodel=submodel,
),
)
def emit_model_load_completed(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
model_name: str,
base_model: BaseModelType,
model_type: ModelType,
submodel: SubModelType,
model_info: ModelInfo,
) -> None:
"""Emitted when a model is correctly loaded (returns model info)"""
self.__emit_queue_event(
event_name="model_load_completed",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
model_name=model_name,
base_model=base_model,
model_type=model_type,
submodel=submodel,
hash=model_info.hash,
location=str(model_info.location),
precision=str(model_info.precision),
),
)
def emit_session_retrieval_error(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
error_type: str,
error: str,
) -> None:
"""Emitted when session retrieval fails"""
self.__emit_queue_event(
event_name="session_retrieval_error",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
error_type=error_type,
error=error,
),
)
def emit_invocation_retrieval_error(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
node_id: str,
error_type: str,
error: str,
) -> None:
"""Emitted when invocation retrieval fails"""
self.__emit_queue_event(
event_name="invocation_retrieval_error",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
node_id=node_id,
error_type=error_type,
error=error,
),
)
def emit_session_canceled(
self,
queue_id: str,
queue_item_id: int,
queue_batch_id: str,
graph_execution_state_id: str,
) -> None:
"""Emitted when a session is canceled"""
self.__emit_queue_event(
event_name="session_canceled",
payload=dict(
queue_id=queue_id,
queue_item_id=queue_item_id,
queue_batch_id=queue_batch_id,
graph_execution_state_id=graph_execution_state_id,
),
)
def emit_queue_item_status_changed(
self,
session_queue_item: SessionQueueItem,
batch_status: BatchStatus,
queue_status: SessionQueueStatus,
) -> None:
"""Emitted when a queue item's status changes"""
self.__emit_queue_event(
event_name="queue_item_status_changed",
payload=dict(
queue_id=queue_status.queue_id,
queue_item=dict(
queue_id=session_queue_item.queue_id,
item_id=session_queue_item.item_id,
status=session_queue_item.status,
batch_id=session_queue_item.batch_id,
session_id=session_queue_item.session_id,
error=session_queue_item.error,
created_at=str(session_queue_item.created_at) if session_queue_item.created_at else None,
updated_at=str(session_queue_item.updated_at) if session_queue_item.updated_at else None,
started_at=str(session_queue_item.started_at) if session_queue_item.started_at else None,
completed_at=str(session_queue_item.completed_at) if session_queue_item.completed_at else None,
),
batch_status=batch_status.model_dump(),
queue_status=queue_status.model_dump(),
),
)
def emit_batch_enqueued(self, enqueue_result: EnqueueBatchResult) -> None:
"""Emitted when a batch is enqueued"""
self.__emit_queue_event(
event_name="batch_enqueued",
payload=dict(
queue_id=enqueue_result.queue_id,
batch_id=enqueue_result.batch.batch_id,
enqueued=enqueue_result.enqueued,
),
)
def emit_queue_cleared(self, queue_id: str) -> None:
"""Emitted when the queue is cleared"""
self.__emit_queue_event(
event_name="queue_cleared",
payload=dict(queue_id=queue_id),
)