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1187 lines
48 KiB
Markdown
1187 lines
48 KiB
Markdown
# Introduction to the Model Manager V2
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The Model Manager is responsible for organizing the various machine
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learning models used by InvokeAI. It consists of a series of
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interdependent services that together handle the full lifecycle of a
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model. These are the:
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* _ModelRecordServiceBase_ Responsible for managing model metadata and
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configuration information. Among other things, the record service
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tracks the type of the model, its provenance, and where it can be
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found on disk.
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* _ModelInstallServiceBase_ A service for installing models to
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disk. It uses `DownloadQueueServiceBase` to download models and
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their metadata, and `ModelRecordServiceBase` to store that
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information. It is also responsible for managing the InvokeAI
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`models` directory and its contents.
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* _DownloadQueueServiceBase_ (**CURRENTLY UNDER DEVELOPMENT - NOT IMPLEMENTED**)
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A multithreaded downloader responsible
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for downloading models from a remote source to disk. The download
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queue has special methods for downloading repo_id folders from
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Hugging Face, as well as discriminating among model versions in
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Civitai, but can be used for arbitrary content.
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* _ModelLoadServiceBase_ (**CURRENTLY UNDER DEVELOPMENT - NOT IMPLEMENTED**)
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Responsible for loading a model from disk
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into RAM and VRAM and getting it ready for inference.
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## Location of the Code
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All four of these services can be found in
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`invokeai/app/services` in the following directories:
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* `invokeai/app/services/model_records/`
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* `invokeai/app/services/model_install/`
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* `invokeai/app/services/model_loader/` (**under development**)
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* `invokeai/app/services/downloads/`(**under development**)
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Code related to the FastAPI web API can be found in
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`invokeai/app/api/routers/model_records.py`.
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***
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## What's in a Model? The ModelRecordService
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The `ModelRecordService` manages the model's metadata. It supports a
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hierarchy of pydantic metadata "config" objects, which become
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increasingly specialized to support particular model types.
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### ModelConfigBase
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All model metadata classes inherit from this pydantic class. it
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provides the following fields:
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| **Field Name** | **Type** | **Description** |
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|----------------|-----------------|------------------|
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| `key` | str | Unique identifier for the model |
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| `name` | str | Name of the model (not unique) |
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| `model_type` | ModelType | The type of the model |
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| `model_format` | ModelFormat | The format of the model (e.g. "diffusers"); also used as a Union discriminator |
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| `base_model` | BaseModelType | The base model that the model is compatible with |
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| `path` | str | Location of model on disk |
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| `original_hash` | str | Hash of the model when it was first installed |
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| `current_hash` | str | Most recent hash of the model's contents |
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| `description` | str | Human-readable description of the model (optional) |
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| `source` | str | Model's source URL or repo id (optional) |
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The `key` is a unique 32-character random ID which was generated at
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install time. The `original_hash` field stores a hash of the model's
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contents at install time obtained by sampling several parts of the
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model's files using the `imohash` library. Over the course of the
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model's lifetime it may be transformed in various ways, such as
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changing its precision or converting it from a .safetensors to a
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diffusers model. When this happens, `original_hash` is unchanged, but
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`current_hash` is updated to indicate the current contents.
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`ModelType`, `ModelFormat` and `BaseModelType` are string enums that
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are defined in `invokeai.backend.model_manager.config`. They are also
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imported by, and can be reexported from,
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`invokeai.app.services.model_record_service`:
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```
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from invokeai.app.services.model_record_service import ModelType, ModelFormat, BaseModelType
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```
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The `path` field can be absolute or relative. If relative, it is taken
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to be relative to the `models_dir` setting in the user's
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`invokeai.yaml` file.
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### CheckpointConfig
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This adds support for checkpoint configurations, and adds the
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following field:
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| **Field Name** | **Type** | **Description** |
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|----------------|-----------------|------------------|
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| `config` | str | Path to the checkpoint's config file |
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`config` is the path to the checkpoint's config file. If relative, it
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is taken to be relative to the InvokeAI root directory
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(e.g. `configs/stable-diffusion/v1-inference.yaml`)
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### MainConfig
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This adds support for "main" Stable Diffusion models, and adds these
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fields:
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| **Field Name** | **Type** | **Description** |
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|----------------|-----------------|------------------|
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| `vae` | str | Path to a VAE to use instead of the burnt-in one |
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| `variant` | ModelVariantType| Model variant type, such as "inpainting" |
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`vae` can be an absolute or relative path. If relative, its base is
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taken to be the `models_dir` directory.
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`variant` is an enumerated string class with values `normal`,
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`inpaint` and `depth`. If needed, it can be imported if needed from
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either `invokeai.app.services.model_record_service` or
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`invokeai.backend.model_manager.config`.
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### ONNXSD2Config
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| **Field Name** | **Type** | **Description** |
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|----------------|-----------------|------------------|
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| `prediction_type` | SchedulerPredictionType | Scheduler prediction type to use, e.g. "epsilon" |
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| `upcast_attention` | bool | Model requires its attention module to be upcast |
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The `SchedulerPredictionType` enum can be imported from either
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`invokeai.app.services.model_record_service` or
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`invokeai.backend.model_manager.config`.
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### Other config classes
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There are a series of such classes each discriminated by their
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`ModelFormat`, including `LoRAConfig`, `IPAdapterConfig`, and so
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forth. These are rarely needed outside the model manager's internal
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code, but available in `invokeai.backend.model_manager.config` if
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needed. There is also a Union of all ModelConfig classes, called
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`AnyModelConfig` that can be imported from the same file.
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### Limitations of the Data Model
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The config hierarchy has a major limitation in its handling of the
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base model type. Each model can only be compatible with one base
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model, which breaks down in the event of models that are compatible
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with two or more base models. For example, SD-1 VAEs also work with
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SD-2 models. A partial workaround is to use `BaseModelType.Any`, which
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indicates that the model is compatible with any of the base
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models. This works OK for some models, such as the IP Adapter image
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encoders, but is an all-or-nothing proposition.
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Another issue is that the config class hierarchy is paralleled to some
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extent by a `ModelBase` class hierarchy defined in
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`invokeai.backend.model_manager.models.base` and its subclasses. These
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are classes representing the models after they are loaded into RAM and
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include runtime information such as load status and bytes used. Some
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of the fields, including `name`, `model_type` and `base_model`, are
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shared between `ModelConfigBase` and `ModelBase`, and this is a
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potential source of confusion.
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## Reading and Writing Model Configuration Records
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The `ModelRecordService` provides the ability to retrieve model
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configuration records from SQL or YAML databases, update them, and
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write them back.
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A application-wide `ModelRecordService` is created during API
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initialization and can be retrieved within an invocation from the
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`InvocationContext` object:
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```
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store = context.services.model_record_store
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```
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or from elsewhere in the code by accessing
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`ApiDependencies.invoker.services.model_record_store`.
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### Creating a `ModelRecordService`
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To create a new `ModelRecordService` database or open an existing one,
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you can directly create either a `ModelRecordServiceSQL` or a
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`ModelRecordServiceFile` object:
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```
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from invokeai.app.services.model_record_service import ModelRecordServiceSQL, ModelRecordServiceFile
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store = ModelRecordServiceSQL.from_connection(connection, lock)
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store = ModelRecordServiceSQL.from_db_file('/path/to/sqlite_database.db')
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store = ModelRecordServiceFile.from_db_file('/path/to/database.yaml')
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```
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The `from_connection()` form is only available from the
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`ModelRecordServiceSQL` class, and is used to manage records in a
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previously-opened SQLITE3 database using a `sqlite3.connection` object
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and a `threading.lock` object. It is intended for the specific use
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case of storing the record information in the main InvokeAI database,
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usually `databases/invokeai.db`.
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The `from_db_file()` methods can be used to open new connections to
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the named database files. If the file doesn't exist, it will be
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created and initialized.
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As a convenience, `ModelRecordServiceBase` offers two methods,
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`from_db_file` and `open`, which will return either a SQL or File
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implementation depending on the context. The former looks at the file
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extension to determine whether to open the file as a SQL database
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(".db") or as a file database (".yaml"). If the file exists, but is
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either the wrong type or does not contain the expected schema
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metainformation, then an appropriate `AssertionError` will be raised:
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```
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store = ModelRecordServiceBase.from_db_file('/path/to/a/file.{yaml,db}')
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```
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The `ModelRecordServiceBase.open()` method is specifically designed
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for use in the InvokeAI web server. Its signature is:
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```
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def open(
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cls,
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config: InvokeAIAppConfig,
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conn: Optional[sqlite3.Connection] = None,
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lock: Optional[threading.Lock] = None
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) -> Union[ModelRecordServiceSQL, ModelRecordServiceFile]:
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```
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The way it works is as follows:
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1. Retrieve the value of the `model_config_db` option from the user's
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`invokeai.yaml` config file.
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2. If `model_config_db` is `auto` (the default), then:
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- Use the values of `conn` and `lock` to return a `ModelRecordServiceSQL` object
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opened on the passed connection and lock.
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- Open up a new connection to `databases/invokeai.db` if `conn`
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and/or `lock` are missing (see note below).
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3. If `model_config_db` is a Path, then use `from_db_file`
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to return the appropriate type of ModelRecordService.
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4. If `model_config_db` is None, then retrieve the legacy
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`conf_path` option from `invokeai.yaml` and use the Path
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indicated there. This will default to `configs/models.yaml`.
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So a typical startup pattern would be:
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```
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import sqlite3
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from invokeai.app.services.thread import lock
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from invokeai.app.services.model_record_service import ModelRecordServiceBase
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from invokeai.app.services.config import InvokeAIAppConfig
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config = InvokeAIAppConfig.get_config()
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db_conn = sqlite3.connect(config.db_path.as_posix(), check_same_thread=False)
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store = ModelRecordServiceBase.open(config, db_conn, lock)
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```
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_A note on simultaneous access to `invokeai.db`_: The current InvokeAI
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service architecture for the image and graph databases is careful to
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use a shared sqlite3 connection and a thread lock to ensure that two
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threads don't attempt to access the database simultaneously. However,
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the default `sqlite3` library used by Python reports using
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**Serialized** mode, which allows multiple threads to access the
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database simultaneously using multiple database connections (see
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https://www.sqlite.org/threadsafe.html and
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https://ricardoanderegg.com/posts/python-sqlite-thread-safety/). Therefore
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it should be safe to allow the record service to open its own SQLite
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database connection. Opening a model record service should then be as
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simple as `ModelRecordServiceBase.open(config)`.
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### Fetching a Model's Configuration from `ModelRecordServiceBase`
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Configurations can be retrieved in several ways.
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#### get_model(key) -> AnyModelConfig:
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The basic functionality is to call the record store object's
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`get_model()` method with the desired model's unique key. It returns
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the appropriate subclass of ModelConfigBase:
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```
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model_conf = store.get_model('f13dd932c0c35c22dcb8d6cda4203764')
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print(model_conf.path)
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>> '/tmp/models/ckpts/v1-5-pruned-emaonly.safetensors'
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```
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If the key is unrecognized, this call raises an
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`UnknownModelException`.
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#### exists(key) -> AnyModelConfig:
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Returns True if a model with the given key exists in the databsae.
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#### search_by_path(path) -> AnyModelConfig:
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Returns the configuration of the model whose path is `path`. The path
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is matched using a simple string comparison and won't correctly match
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models referred to by different paths (e.g. using symbolic links).
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#### search_by_name(name, base, type) -> List[AnyModelConfig]:
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This method searches for models that match some combination of `name`,
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`BaseType` and `ModelType`. Calling without any arguments will return
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all the models in the database.
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#### all_models() -> List[AnyModelConfig]:
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Return all the model configs in the database. Exactly equivalent to
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calling `search_by_name()` with no arguments.
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#### search_by_tag(tags) -> List[AnyModelConfig]:
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`tags` is a list of strings. This method returns a list of model
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configs that contain all of the given tags. Examples:
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```
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# find all models that are marked as both SFW and as generating
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# background scenery
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configs = store.search_by_tag(['sfw', 'scenery'])
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```
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Note that only tags are not searchable in this way. Other fields can
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be searched using a filter:
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```
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commercializable_models = [x for x in store.all_models() \
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if x.license.contains('allowCommercialUse=Sell')]
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```
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#### version() -> str:
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Returns the version of the database, currently at `3.2`
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#### model_info_by_name(name, base_model, model_type) -> ModelConfigBase:
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This method exists to ease the transition from the previous version of
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the model manager, in which `get_model()` took the three arguments
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shown above. This looks for a unique model identified by name, base
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model and model type and returns it.
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The method will generate a `DuplicateModelException` if there are more
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than one models that share the same type, base and name. While
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unlikely, it is certainly possible to have a situation in which the
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user had added two models with the same name, base and type, one
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located at path `/foo/my_model` and the other at `/bar/my_model`. It
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is strongly recommended to search for models using `search_by_name()`,
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which can return multiple results, and then to select the desired
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model and pass its key to `get_model()`.
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### Writing model configs to the database
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Several methods allow you to create and update stored model config
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records.
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#### add_model(key, config) -> AnyModelConfig:
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Given a key and a configuration, this will add the model's
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configuration record to the database. `config` can either be a subclass of
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`ModelConfigBase` (i.e. any class listed in `AnyModelConfig`), or a
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`dict` of key/value pairs. In the latter case, the correct
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configuration class will be picked by Pydantic's discriminated union
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mechanism.
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If successful, the method will return the appropriate subclass of
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`ModelConfigBase`. It will raise a `DuplicateModelException` if a
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model with the same key is already in the database, or an
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`InvalidModelConfigException` if a dict was passed and Pydantic
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experienced a parse or validation error.
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### update_model(key, config) -> AnyModelConfig:
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Given a key and a configuration, this will update the model
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configuration record in the database. `config` can be either a
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instance of `ModelConfigBase`, or a sparse `dict` containing the
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fields to be updated. This will return an `AnyModelConfig` on success,
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or raise `InvalidModelConfigException` or `UnknownModelException`
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exceptions on failure.
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***
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## Model installation
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The `ModelInstallService` class implements the
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`ModelInstallServiceBase` abstract base class, and provides a one-stop
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shop for all your model install needs. It provides the following
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functionality:
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- Registering a model config record for a model already located on the
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local filesystem, without moving it or changing its path.
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- Installing a model alreadiy located on the local filesystem, by
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moving it into the InvokeAI root directory under the
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`models` folder (or wherever config parameter `models_dir`
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specifies).
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- Probing of models to determine their type, base type and other key
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information.
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- Interface with the InvokeAI event bus to provide status updates on
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the download, installation and registration process.
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- Downloading a model from an arbitrary URL and installing it in
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`models_dir` (_implementation pending_).
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- Special handling for Civitai model URLs which allow the user to
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paste in a model page's URL or download link (_implementation pending_).
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- Special handling for HuggingFace repo_ids to recursively download
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the contents of the repository, paying attention to alternative
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variants such as fp16. (_implementation pending_)
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### Initializing the installer
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A default installer is created at InvokeAI api startup time and stored
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in `ApiDependencies.invoker.services.model_install` and can
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also be retrieved from an invocation's `context` argument with
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`context.services.model_install`.
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In the event you wish to create a new installer, you may use the
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following initialization pattern:
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```
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from invokeai.app.services.config import InvokeAIAppConfig
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from invokeai.app.services.model_records import ModelRecordServiceSQL
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from invokeai.app.services.model_install import ModelInstallService
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from invokeai.app.services.shared.sqlite import SqliteDatabase
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from invokeai.backend.util.logging import InvokeAILogger
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config = InvokeAIAppConfig.get_config()
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config.parse_args()
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logger = InvokeAILogger.get_logger(config=config)
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db = SqliteDatabase(config, logger)
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store = ModelRecordServiceSQL(db)
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installer = ModelInstallService(config, store)
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```
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The full form of `ModelInstallService()` takes the following
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required parameters:
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| **Argument** | **Type** | **Description** |
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|------------------|------------------------------|------------------------------|
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| `config` | InvokeAIAppConfig | InvokeAI app configuration object |
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| `record_store` | ModelRecordServiceBase | Config record storage database |
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| `event_bus` | EventServiceBase | Optional event bus to send download/install progress events to |
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Once initialized, the installer will provide the following methods:
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#### install_job = installer.import_model()
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The `import_model()` method is the core of the installer. The
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following illustrates basic usage:
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```
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from invokeai.app.services.model_install import (
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LocalModelSource,
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HFModelSource,
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URLModelSource,
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)
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source1 = LocalModelSource(path='/opt/models/sushi.safetensors') # a local safetensors file
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source2 = LocalModelSource(path='/opt/models/sushi_diffusers') # a local diffusers folder
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source3 = HFModelSource(repo_id='runwayml/stable-diffusion-v1-5') # a repo_id
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source4 = HFModelSource(repo_id='runwayml/stable-diffusion-v1-5', subfolder='vae') # a subfolder within a repo_id
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source5 = HFModelSource(repo_id='runwayml/stable-diffusion-v1-5', variant='fp16') # a named variant of a HF model
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source6 = URLModelSource(url='https://civitai.com/api/download/models/63006') # model located at a URL
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source7 = URLModelSource(url='https://civitai.com/api/download/models/63006', access_token='letmein') # with an access token
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for source in [source1, source2, source3, source4, source5, source6, source7]:
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install_job = installer.install_model(source)
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source2job = installer.wait_for_installs()
|
|
for source in sources:
|
|
job = source2job[source]
|
|
if job.status == "completed":
|
|
model_config = job.config_out
|
|
model_key = model_config.key
|
|
print(f"{source} installed as {model_key}")
|
|
elif job.status == "error":
|
|
print(f"{source}: {job.error_type}.\nStack trace:\n{job.error}")
|
|
|
|
```
|
|
|
|
As shown here, the `import_model()` method accepts a variety of
|
|
sources, including local safetensors files, local diffusers folders,
|
|
HuggingFace repo_ids with and without a subfolder designation,
|
|
Civitai model URLs and arbitrary URLs that point to checkpoint files
|
|
(but not to folders).
|
|
|
|
Each call to `import_model()` return a `ModelInstallJob` job,
|
|
an object which tracks the progress of the install.
|
|
|
|
If a remote model is requested, the model's files are downloaded in
|
|
parallel across a multiple set of threads using the download
|
|
queue. During the download process, the `ModelInstallJob` is updated
|
|
to provide status and progress information. After the files (if any)
|
|
are downloaded, the remainder of the installation runs in a single
|
|
serialized background thread. These are the model probing, file
|
|
copying, and config record database update steps.
|
|
|
|
Multiple install jobs can be queued up. You may block until all
|
|
install jobs are completed (or errored) by calling the
|
|
`wait_for_installs()` method as shown in the code
|
|
example. `wait_for_installs()` will return a `dict` that maps the
|
|
requested source to its job. This object can be interrogated
|
|
to determine its status. If the job errored out, then the error type
|
|
and details can be recovered from `job.error_type` and `job.error`.
|
|
|
|
The full list of arguments to `import_model()` is as follows:
|
|
|
|
| **Argument** | **Type** | **Default** | **Description** |
|
|
|------------------|------------------------------|-------------|-------------------------------------------|
|
|
| `source` | Union[str, Path, AnyHttpUrl] | | The source of the model, Path, URL or repo_id |
|
|
| `inplace` | bool | True | Leave a local model in its current location |
|
|
| `variant` | str | None | Desired variant, such as 'fp16' or 'onnx' (HuggingFace only) |
|
|
| `subfolder` | str | None | Repository subfolder (HuggingFace only) |
|
|
| `config` | Dict[str, Any] | None | Override all or a portion of model's probed attributes |
|
|
| `access_token` | str | None | Provide authorization information needed to download |
|
|
|
|
|
|
The `inplace` field controls how local model Paths are handled. If
|
|
True (the default), then the model is simply registered in its current
|
|
location by the installer's `ModelConfigRecordService`. Otherwise, a
|
|
copy of the model put into the location specified by the `models_dir`
|
|
application configuration parameter.
|
|
|
|
The `variant` field is used for HuggingFace repo_ids only. If
|
|
provided, the repo_id download handler will look for and download
|
|
tensors files that follow the convention for the selected variant:
|
|
|
|
- "fp16" will select files named "*model.fp16.{safetensors,bin}"
|
|
- "onnx" will select files ending with the suffix ".onnx"
|
|
- "openvino" will select files beginning with "openvino_model"
|
|
|
|
In the special case of the "fp16" variant, the installer will select
|
|
the 32-bit version of the files if the 16-bit version is unavailable.
|
|
|
|
`subfolder` is used for HuggingFace repo_ids only. If provided, the
|
|
model will be downloaded from the designated subfolder rather than the
|
|
top-level repository folder. If a subfolder is attached to the repo_id
|
|
using the format `repo_owner/repo_name:subfolder`, then the subfolder
|
|
specified by the repo_id will override the subfolder argument.
|
|
|
|
`config` can be used to override all or a portion of the configuration
|
|
attributes returned by the model prober. See the section below for
|
|
details.
|
|
|
|
`access_token` is passed to the download queue and used to access
|
|
repositories that require it.
|
|
|
|
#### Monitoring the install job process
|
|
|
|
When you create an install job with `import_model()`, it launches the
|
|
download and installation process in the background and returns a
|
|
`ModelInstallJob` object for monitoring the process.
|
|
|
|
The `ModelInstallJob` class has the following structure:
|
|
|
|
| **Attribute** | **Type** | **Description** |
|
|
|----------------|-----------------|------------------|
|
|
| `status` | `InstallStatus` | An enum of ["waiting", "running", "completed" and "error" |
|
|
| `config_in` | `dict` | Overriding configuration values provided by the caller |
|
|
| `config_out` | `AnyModelConfig`| After successful completion, contains the configuration record written to the database |
|
|
| `inplace` | `boolean` | True if the caller asked to install the model in place using its local path |
|
|
| `source` | `ModelSource` | The local path, remote URL or repo_id of the model to be installed |
|
|
| `local_path` | `Path` | If a remote model, holds the path of the model after it is downloaded; if a local model, same as `source` |
|
|
| `error_type` | `str` | Name of the exception that led to an error status |
|
|
| `error` | `str` | Traceback of the error |
|
|
|
|
|
|
If the `event_bus` argument was provided, events will also be
|
|
broadcast to the InvokeAI event bus. The events will appear on the bus
|
|
as an event of type `EventServiceBase.model_event`, a timestamp and
|
|
the following event names:
|
|
|
|
- `model_install_started`
|
|
|
|
The payload will contain the keys `timestamp` and `source`. The latter
|
|
indicates the requested model source for installation.
|
|
|
|
- `model_install_progress`
|
|
|
|
Emitted at regular intervals when downloading a remote model, the
|
|
payload will contain the keys `timestamp`, `source`, `current_bytes`
|
|
and `total_bytes`. These events are _not_ emitted when a local model
|
|
already on the filesystem is imported.
|
|
|
|
- `model_install_completed`
|
|
|
|
Issued once at the end of a successful installation. The payload will
|
|
contain the keys `timestamp`, `source` and `key`, where `key` is the
|
|
ID under which the model has been registered.
|
|
|
|
- `model_install_error`
|
|
|
|
Emitted if the installation process fails for some reason. The payload
|
|
will contain the keys `timestamp`, `source`, `error_type` and
|
|
`error`. `error_type` is a short message indicating the nature of the
|
|
error, and `error` is the long traceback to help debug the problem.
|
|
|
|
#### Model confguration and probing
|
|
|
|
The install service uses the `invokeai.backend.model_manager.probe`
|
|
module during import to determine the model's type, base type, and
|
|
other configuration parameters. Among other things, it assigns a
|
|
default name and description for the model based on probed
|
|
fields.
|
|
|
|
When downloading remote models is implemented, additional
|
|
configuration information, such as list of trigger terms, will be
|
|
retrieved from the HuggingFace and Civitai model repositories.
|
|
|
|
The probed values can be overriden by providing a dictionary in the
|
|
optional `config` argument passed to `import_model()`. You may provide
|
|
overriding values for any of the model's configuration
|
|
attributes. Here is an example of setting the
|
|
`SchedulerPredictionType` and `name` for an sd-2 model:
|
|
|
|
This is typically used to set
|
|
the model's name and description, but can also be used to overcome
|
|
cases in which automatic probing is unable to (correctly) determine
|
|
the model's attribute. The most common situation is the
|
|
`prediction_type` field for sd-2 (and rare sd-1) models. Here is an
|
|
example of how it works:
|
|
|
|
```
|
|
install_job = installer.import_model(
|
|
source='stabilityai/stable-diffusion-2-1',
|
|
variant='fp16',
|
|
config=dict(
|
|
prediction_type=SchedulerPredictionType('v_prediction')
|
|
name='stable diffusion 2 base model',
|
|
)
|
|
)
|
|
```
|
|
|
|
### Other installer methods
|
|
|
|
This section describes additional methods provided by the installer class.
|
|
|
|
#### jobs = installer.wait_for_installs()
|
|
|
|
Block until all pending installs are completed or errored and then
|
|
returns a list of completed jobs.
|
|
|
|
#### jobs = installer.list_jobs([source])
|
|
|
|
Return a list of all active and complete `ModelInstallJobs`. An
|
|
optional `source` argument allows you to filter the returned list by a
|
|
model source string pattern using a partial string match.
|
|
|
|
#### jobs = installer.get_job(source)
|
|
|
|
Return a list of `ModelInstallJob` corresponding to the indicated
|
|
model source.
|
|
|
|
#### installer.prune_jobs
|
|
|
|
Remove non-pending jobs (completed or errored) from the job list
|
|
returned by `list_jobs()` and `get_job()`.
|
|
|
|
#### installer.app_config, installer.record_store,
|
|
installer.event_bus
|
|
|
|
Properties that provide access to the installer's `InvokeAIAppConfig`,
|
|
`ModelRecordServiceBase` and `EventServiceBase` objects.
|
|
|
|
#### key = installer.register_path(model_path, config), key = installer.install_path(model_path, config)
|
|
|
|
These methods bypass the download queue and directly register or
|
|
install the model at the indicated path, returning the unique ID for
|
|
the installed model.
|
|
|
|
Both methods accept a Path object corresponding to a checkpoint or
|
|
diffusers folder, and an optional dict of config attributes to use to
|
|
override the values derived from model probing.
|
|
|
|
The difference between `register_path()` and `install_path()` is that
|
|
the former creates a model configuration record without changing the
|
|
location of the model in the filesystem. The latter makes a copy of
|
|
the model inside the InvokeAI models directory before registering
|
|
it.
|
|
|
|
#### installer.unregister(key)
|
|
|
|
This will remove the model config record for the model at key, and is
|
|
equivalent to `installer.record_store.del_model(key)`
|
|
|
|
#### installer.delete(key)
|
|
|
|
This is similar to `unregister()` but has the additional effect of
|
|
conditionally deleting the underlying model file(s) if they reside
|
|
within the InvokeAI models directory
|
|
|
|
#### installer.unconditionally_delete(key)
|
|
|
|
This method is similar to `unregister()`, but also unconditionally
|
|
deletes the corresponding model weights file(s), regardless of whether
|
|
they are inside or outside the InvokeAI models hierarchy.
|
|
|
|
#### List[str]=installer.scan_directory(scan_dir: Path, install: bool)
|
|
|
|
This method will recursively scan the directory indicated in
|
|
`scan_dir` for new models and either install them in the models
|
|
directory or register them in place, depending on the setting of
|
|
`install` (default False).
|
|
|
|
The return value is the list of keys of the new installed/registered
|
|
models.
|
|
|
|
#### installer.sync_to_config()
|
|
|
|
This method synchronizes models in the models directory and autoimport
|
|
directory to those in the `ModelConfigRecordService` database. New
|
|
models are registered and orphan models are unregistered.
|
|
|
|
#### installer.start(invoker)
|
|
|
|
The `start` method is called by the API intialization routines when
|
|
the API starts up. Its effect is to call `sync_to_config()` to
|
|
synchronize the model record store database with what's currently on
|
|
disk.
|
|
|
|
# The remainder of this documentation is provisional, pending implementation of the Download and Load services
|
|
|
|
## Let's get loaded, the lowdown on ModelLoadService
|
|
|
|
The `ModelLoadService` is responsible for loading a named model into
|
|
memory so that it can be used for inference. Despite the fact that it
|
|
does a lot under the covers, it is very straightforward to use.
|
|
|
|
An application-wide model loader is created at API initialization time
|
|
and stored in
|
|
`ApiDependencies.invoker.services.model_loader`. However, you can
|
|
create alternative instances if you wish.
|
|
|
|
### Creating a ModelLoadService object
|
|
|
|
The class is defined in
|
|
`invokeai.app.services.model_loader_service`. It is initialized with
|
|
an InvokeAIAppConfig object, from which it gets configuration
|
|
information such as the user's desired GPU and precision, and with a
|
|
previously-created `ModelRecordServiceBase` object, from which it
|
|
loads the requested model's configuration information.
|
|
|
|
Here is a typical initialization pattern:
|
|
|
|
```
|
|
from invokeai.app.services.config import InvokeAIAppConfig
|
|
from invokeai.app.services.model_record_service import ModelRecordServiceBase
|
|
from invokeai.app.services.model_loader_service import ModelLoadService
|
|
|
|
config = InvokeAIAppConfig.get_config()
|
|
store = ModelRecordServiceBase.open(config)
|
|
loader = ModelLoadService(config, store)
|
|
```
|
|
|
|
Note that we are relying on the contents of the application
|
|
configuration to choose the implementation of
|
|
`ModelRecordServiceBase`.
|
|
|
|
### get_model(key, [submodel_type], [context]) -> ModelInfo:
|
|
|
|
*** TO DO: change to get_model(key, context=None, **kwargs)
|
|
|
|
The `get_model()` method, like its similarly-named cousin in
|
|
`ModelRecordService`, receives the unique key that identifies the
|
|
model. It loads the model into memory, gets the model ready for use,
|
|
and returns a `ModelInfo` object.
|
|
|
|
The optional second argument, `subtype` is a `SubModelType` string
|
|
enum, such as "vae". It is mandatory when used with a main model, and
|
|
is used to select which part of the main model to load.
|
|
|
|
The optional third argument, `context` can be provided by
|
|
an invocation to trigger model load event reporting. See below for
|
|
details.
|
|
|
|
The returned `ModelInfo` object shares some fields in common with
|
|
`ModelConfigBase`, but is otherwise a completely different beast:
|
|
|
|
| **Field Name** | **Type** | **Description** |
|
|
|----------------|-----------------|------------------|
|
|
| `key` | str | The model key derived from the ModelRecordService database |
|
|
| `name` | str | Name of this model |
|
|
| `base_model` | BaseModelType | Base model for this model |
|
|
| `type` | ModelType or SubModelType | Either the model type (non-main) or the submodel type (main models)|
|
|
| `location` | Path or str | Location of the model on the filesystem |
|
|
| `precision` | torch.dtype | The torch.precision to use for inference |
|
|
| `context` | ModelCache.ModelLocker | A context class used to lock the model in VRAM while in use |
|
|
|
|
The types for `ModelInfo` and `SubModelType` can be imported from
|
|
`invokeai.app.services.model_loader_service`.
|
|
|
|
To use the model, you use the `ModelInfo` as a context manager using
|
|
the following pattern:
|
|
|
|
```
|
|
model_info = loader.get_model('f13dd932c0c35c22dcb8d6cda4203764', SubModelType('vae'))
|
|
with model_info as vae:
|
|
image = vae.decode(latents)[0]
|
|
```
|
|
|
|
The `vae` model will stay locked in the GPU during the period of time
|
|
it is in the context manager's scope.
|
|
|
|
`get_model()` may raise any of the following exceptions:
|
|
|
|
- `UnknownModelException` -- key not in database
|
|
- `ModelNotFoundException` -- key in database but model not found at path
|
|
- `InvalidModelException` -- the model is guilty of a variety of sins
|
|
|
|
** TO DO: ** Resolve discrepancy between ModelInfo.location and
|
|
ModelConfig.path.
|
|
|
|
### Emitting model loading events
|
|
|
|
When the `context` argument is passed to `get_model()`, it will
|
|
retrieve the invocation event bus from the passed `InvocationContext`
|
|
object to emit events on the invocation bus. The two events are
|
|
"model_load_started" and "model_load_completed". Both carry the
|
|
following payload:
|
|
|
|
```
|
|
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_key=model_key,
|
|
submodel=submodel,
|
|
hash=model_info.hash,
|
|
location=str(model_info.location),
|
|
precision=str(model_info.precision),
|
|
)
|
|
```
|
|
|
|
***
|
|
|
|
## Get on line: The Download Queue
|
|
|
|
InvokeAI can download arbitrary files using a multithreaded background
|
|
download queue. Internally, the download queue is used for installing
|
|
models located at remote locations. The queue is implemented by the
|
|
`DownloadQueueService` defined in
|
|
`invokeai.app.services.download_manager`. However, most of the
|
|
implementation is spread out among several files in
|
|
`invokeai/backend/model_manager/download/*`
|
|
|
|
A default download queue is located in
|
|
`ApiDependencies.invoker.services.download_queue`. However, you can
|
|
create additional instances if you need to isolate your queue from the
|
|
main one.
|
|
|
|
### A job for every task
|
|
|
|
The queue operates on a series of download job objects. These objects
|
|
specify the source and destination of the download, and keep track of
|
|
the progress of the download. Jobs come in a variety of shapes and
|
|
colors as they are progressively specialized for particular download
|
|
task.
|
|
|
|
The basic job is the `DownloadJobBase`, a pydantic object with the
|
|
following fields:
|
|
|
|
| **Field** | **Type** | **Default** | **Description** |
|
|
|----------------|-----------------|---------------|-----------------|
|
|
| `id` | int | | Job ID, an integer >= 0 |
|
|
| `priority` | int | 10 | Job priority. Lower priorities run before higher priorities |
|
|
| `source` | str | | Where to download from (specialized types used in subclasses)|
|
|
| `destination` | Path | | Where to download to |
|
|
| `status` | DownloadJobStatus| Idle | Job's status (see below) |
|
|
| `event_handlers` | List[DownloadEventHandler]| | Event handlers (see below) |
|
|
| `job_started` | float | | Timestamp for when the job started running |
|
|
| `job_ended` | float | | Timestamp for when the job completed or errored out |
|
|
| `job_sequence` | int | | A counter that is incremented each time a model is dequeued |
|
|
| `preserve_partial_downloads`| bool | False | Resume partial downloads when relaunched. |
|
|
| `error` | Exception | | A copy of the Exception that caused an error during download |
|
|
|
|
When you create a job, you can assign it a `priority`. If multiple
|
|
jobs are queued, the job with the lowest priority runs first. (Don't
|
|
blame me! The Unix developers came up with this convention.)
|
|
|
|
Every job has a `source` and a `destination`. `source` is a string in
|
|
the base class, but subclassses redefine it more specifically.
|
|
|
|
The `destination` must be the Path to a file or directory on the local
|
|
filesystem. If the Path points to a new or existing file, then the
|
|
source will be stored under that filename. If the Path ponts to an
|
|
existing directory, then the downloaded file will be stored inside the
|
|
directory, usually using the name assigned to it at the remote site in
|
|
the `content-disposition` http field.
|
|
|
|
When the job is submitted, it is assigned a numeric `id`. The id can
|
|
then be used to control the job, such as starting, stopping and
|
|
cancelling its download.
|
|
|
|
The `status` field is updated by the queue to indicate where the job
|
|
is in its lifecycle. Values are defined in the string enum
|
|
`DownloadJobStatus`, a symbol available from
|
|
`invokeai.app.services.download_manager`. Possible values are:
|
|
|
|
| **Value** | **String Value** | ** Description ** |
|
|
|--------------|---------------------|-------------------|
|
|
| `IDLE` | idle | Job created, but not submitted to the queue |
|
|
| `ENQUEUED` | enqueued | Job is patiently waiting on the queue |
|
|
| `RUNNING` | running | Job is running! |
|
|
| `PAUSED` | paused | Job was paused and can be restarted |
|
|
| `COMPLETED` | completed | Job has finished its work without an error |
|
|
| `ERROR` | error | Job encountered an error and will not run again|
|
|
| `CANCELLED` | cancelled | Job was cancelled and will not run (again) |
|
|
|
|
`job_started`, `job_ended` and `job_sequence` indicate when the job
|
|
was started (using a python timestamp), when it completed, and the
|
|
order in which it was taken off the queue. These are mostly used for
|
|
debugging and performance testing.
|
|
|
|
In case of an error, the Exception that caused the error will be
|
|
placed in the `error` field, and the job's status will be set to
|
|
`DownloadJobStatus.ERROR`.
|
|
|
|
After an error occurs, any partially downloaded files will be deleted
|
|
from disk, unless `preserve_partial_downloads` was set to True at job
|
|
creation time (or set to True any time before the error
|
|
occurred). Note that since all InvokeAI model install operations
|
|
involve downloading files to a temporary directory that has a limited
|
|
lifetime, this flag is not used by the model installer.
|
|
|
|
There are a series of subclasses of `DownloadJobBase` that provide
|
|
support for specific types of downloads. These are:
|
|
|
|
#### DownloadJobPath
|
|
|
|
This subclass redefines `source` to be a filesystem Path. It is used
|
|
to move a file or directory from the `source` to the `destination`
|
|
paths in the background using a uniform event-based infrastructure.
|
|
|
|
#### DownloadJobRemoteSource
|
|
|
|
This subclass adds the following fields to the job:
|
|
|
|
| **Field** | **Type** | **Default** | **Description** |
|
|
|----------------|-----------------|---------------|-----------------|
|
|
| `bytes` | int | 0 | bytes downloaded so far |
|
|
| `total_bytes` | int | 0 | total size to download |
|
|
| `access_token` | Any | None | an authorization token to present to the remote source |
|
|
|
|
The job will start out with 0/0 in its bytes/total_bytes fields. Once
|
|
it starts running, `total_bytes` will be populated from information
|
|
provided in the HTTP download header (if available), and the number of
|
|
bytes downloaded so far will be progressively incremented.
|
|
|
|
#### DownloadJobURL
|
|
|
|
This is a subclass of `DownloadJobBase`. It redefines `source` to be a
|
|
Pydantic `AnyHttpUrl` object, which enforces URL validation checking
|
|
on the field.
|
|
|
|
Note that the installer service defines an additional subclass of
|
|
`DownloadJobRemoteSource` that accepts HuggingFace repo_ids in
|
|
addition to URLs. This is discussed later in this document.
|
|
|
|
### Event handlers
|
|
|
|
While a job is being downloaded, the queue will emit events at
|
|
periodic intervals. A typical series of events during a successful
|
|
download session will look like this:
|
|
|
|
- enqueued
|
|
- running
|
|
- running
|
|
- running
|
|
- completed
|
|
|
|
There will be a single enqueued event, followed by one or more running
|
|
events, and finally one `completed`, `error` or `cancelled`
|
|
events.
|
|
|
|
It is possible for a caller to pause download temporarily, in which
|
|
case the events may look something like this:
|
|
|
|
- enqueued
|
|
- running
|
|
- running
|
|
- paused
|
|
- running
|
|
- completed
|
|
|
|
The download queue logs when downloads start and end (unless `quiet`
|
|
is set to True at initialization time) but doesn't log any progress
|
|
events. You will probably want to be alerted to events during the
|
|
download job and provide more user feedback. In order to intercept and
|
|
respond to events you may install a series of one or more event
|
|
handlers in the job. Whenever the job's status changes, the chain of
|
|
event handlers is traversed and executed in the same thread that the
|
|
download job is running in.
|
|
|
|
Event handlers have the signature `Callable[["DownloadJobBase"],
|
|
None]`, i.e.
|
|
|
|
```
|
|
def handler(job: DownloadJobBase):
|
|
pass
|
|
```
|
|
|
|
A typical handler will examine `job.status` and decide if there's
|
|
something to be done. This can include cancelling or erroring the job,
|
|
but more typically is used to report on the job status to the user
|
|
interface or to perform certain actions on successful completion of
|
|
the job.
|
|
|
|
Event handlers can be attached to a job at creation time. In addition,
|
|
you can create a series of default handlers that are attached to the
|
|
queue object itself. These handlers will be executed for each job
|
|
after the job's own handlers (if any) have run.
|
|
|
|
During a download, running events are issued every time roughly 1% of
|
|
the file is transferred. This is to provide just enough granularity to
|
|
update a tqdm progress bar smoothly.
|
|
|
|
Handlers can be added to a job after the fact using the job's
|
|
`add_event_handler` method:
|
|
|
|
```
|
|
job.add_event_handler(my_handler)
|
|
```
|
|
|
|
All handlers can be cleared using the job's `clear_event_handlers()`
|
|
method. Note that it might be a good idea to pause the job before
|
|
altering its handlers.
|
|
|
|
### Creating a download queue object
|
|
|
|
The `DownloadQueueService` constructor takes the following arguments:
|
|
|
|
| **Argument** | **Type** | **Default** | **Description** |
|
|
|----------------|-----------------|---------------|-----------------|
|
|
| `event_handlers` | List[DownloadEventHandler] | [] | Event handlers |
|
|
| `max_parallel_dl` | int | 5 | Maximum number of simultaneous downloads allowed |
|
|
| `requests_session` | requests.sessions.Session | None | An alternative requests Session object to use for the download |
|
|
| `quiet` | bool | False| Do work quietly without issuing log messages |
|
|
|
|
A typical initialization sequence will look like:
|
|
|
|
```
|
|
from invokeai.app.services.download_manager import DownloadQueueService
|
|
|
|
def log_download_event(job: DownloadJobBase):
|
|
logger.info(f'job={job.id}: status={job.status}')
|
|
|
|
queue = DownloadQueueService(
|
|
event_handlers=[log_download_event]
|
|
)
|
|
```
|
|
|
|
Event handlers can be provided to the queue at initialization time as
|
|
shown in the example. These will be automatically appended to the
|
|
handler list for any job that is submitted to this queue.
|
|
|
|
`max_parallel_dl` sets the number of simultaneous active downloads
|
|
that are allowed. The default of five has not been benchmarked in any
|
|
way, but seems to give acceptable performance.
|
|
|
|
`requests_session` can be used to provide a `requests` module Session
|
|
object that will be used to stream remote URLs to disk. This facility
|
|
was added for use in the module's unit tests to simulate a remote web
|
|
server, but may be useful in other contexts.
|
|
|
|
`quiet` will prevent the queue from issuing any log messages at the
|
|
INFO or higher levels.
|
|
|
|
### Submitting a download job
|
|
|
|
You can submit a download job to the queue either by creating the job
|
|
manually and passing it to the queue's `submit_download_job()` method,
|
|
or using the `create_download_job()` method, which will do the same
|
|
thing on your behalf.
|
|
|
|
To use the former method, follow this example:
|
|
|
|
```
|
|
job = DownloadJobRemoteSource(
|
|
source='http://www.civitai.com/models/13456',
|
|
destination='/tmp/models/',
|
|
event_handlers=[my_handler1, my_handler2], # if desired
|
|
)
|
|
queue.submit_download_job(job, start=True)
|
|
```
|
|
|
|
`submit_download_job()` takes just two arguments: the job to submit,
|
|
and a flag indicating whether to immediately start the job (defaulting
|
|
to True). If you choose not to start the job immediately, you can
|
|
start it later by calling the queue's `start_job()` or
|
|
`start_all_jobs()` methods, which are described later.
|
|
|
|
To have the queue create the job for you, follow this example instead:
|
|
|
|
```
|
|
job = queue.create_download_job(
|
|
source='http://www.civitai.com/models/13456',
|
|
destdir='/tmp/models/',
|
|
filename='my_model.safetensors',
|
|
event_handlers=[my_handler1, my_handler2], # if desired
|
|
start=True,
|
|
)
|
|
```
|
|
|
|
The `filename` argument forces the downloader to use the specified
|
|
name for the file rather than the name provided by the remote source,
|
|
and is equivalent to manually specifying a destination of
|
|
`/tmp/models/my_model.safetensors' in the submitted job.
|
|
|
|
Here is the full list of arguments that can be provided to
|
|
`create_download_job()`:
|
|
|
|
|
|
| **Argument** | **Type** | **Default** | **Description** |
|
|
|------------------|------------------------------|-------------|-------------------------------------------|
|
|
| `source` | Union[str, Path, AnyHttpUrl] | | Download remote or local source |
|
|
| `destdir` | Path | | Destination directory for downloaded file |
|
|
| `filename` | Path | None | Filename for downloaded file |
|
|
| `start` | bool | True | Enqueue the job immediately |
|
|
| `priority` | int | 10 | Starting priority for this job |
|
|
| `access_token` | str | None | Authorization token for this resource |
|
|
| `event_handlers` | List[DownloadEventHandler] | [] | Event handlers for this job |
|
|
|
|
Internally, `create_download_job()` has a little bit of internal logic
|
|
that looks at the type of the source and selects the right subclass of
|
|
`DownloadJobBase` to create and enqueue.
|
|
|
|
**TODO**: move this logic into its own method for overriding in
|
|
subclasses.
|
|
|
|
### Job control
|
|
|
|
Prior to completion, jobs can be controlled with a series of queue
|
|
method calls. Do not attempt to modify jobs by directly writing to
|
|
their fields, as this is likely to lead to unexpected results.
|
|
|
|
Any method that accepts a job argument may raise an
|
|
`UnknownJobIDException` if the job has not yet been submitted to the
|
|
queue or was not created by this queue.
|
|
|
|
#### queue.join()
|
|
|
|
This method will block until all the active jobs in the queue have
|
|
reached a terminal state (completed, errored or cancelled).
|
|
|
|
#### jobs = queue.list_jobs()
|
|
|
|
This will return a list of all jobs, including ones that have not yet
|
|
been enqueued and those that have completed or errored out.
|
|
|
|
#### job = queue.id_to_job(int)
|
|
|
|
This method allows you to recover a submitted job using its ID.
|
|
|
|
#### queue.prune_jobs()
|
|
|
|
Remove completed and errored jobs from the job list.
|
|
|
|
#### queue.start_job(job)
|
|
|
|
If the job was submitted with `start=False`, then it can be started
|
|
using this method.
|
|
|
|
#### queue.pause_job(job)
|
|
|
|
This will temporarily pause the job, if possible. It can later be
|
|
restarted and pick up where it left off using `queue.start_job()`.
|
|
|
|
#### queue.cancel_job(job)
|
|
|
|
This will cancel the job if possible and clean up temporary files and
|
|
other resources that it might have been using.
|
|
|
|
#### queue.start_all_jobs(), queue.pause_all_jobs(), queue.cancel_all_jobs()
|
|
|
|
This will start/pause/cancel all jobs that have been submitted to the
|
|
queue and have not yet reached a terminal state.
|
|
|