This package provides a MLServer runtime compatible with HuggingFace Transformers.
You can install the runtime, alongside mlserver
, as:
pip install mlserver mlserver-huggingface
For further information on how to use MLServer with HuggingFace, you can check out this worked out example.
The HuggingFace runtime will always decode the input request using its own built-in codec. Therefore, content type annotations at the request level will be ignored. Not that this doesn't include input-level content type annotations, which will be respected as usual.
The HuggingFace runtime exposes a couple extra parameters which can be used to
customise how the runtime behaves.
These settings can be added under the parameters.extra
section of your
model-settings.json
file, e.g.
---
emphasize-lines: 5-8
---
{
"name": "qa",
"implementation": "mlserver_huggingface.HuggingFaceRuntime",
"parameters": {
"extra": {
"task": "question-answering",
"optimum_model": true
}
}
}
These settings can also be injected through environment variables prefixed with `MLSERVER_MODEL_HUGGINGFACE_`, e.g.
```bash
MLSERVER_MODEL_HUGGINGFACE_TASK="question-answering"
MLSERVER_MODEL_HUGGINGFACE_OPTIMUM_MODEL=true
```
It is possible to load a local model into a HuggingFace pipeline by specifying the model artefact folder path in parameters.uri
in model-settings.json
.
Models in the HuggingFace hub can be loaded by specifying their name in parameters.extra.pretrained_model
in model-settings.json
.
If `parameters.extra.pretrained_model` is specified, it takes precedence over `parameters.uri`.
You can find the full reference of the accepted extra settings for the HuggingFace runtime below:
.. autopydantic_settings:: mlserver_huggingface.settings.HuggingFaceSettings