The Label Studio ML backend is an SDK that lets you wrap your machine learning code and turn it into a web server. You can then connect that server to a Label Studio instance to perform 2 tasks:
- Dynamically pre-annotate data based on model inference results
- Retrain or fine-tune a model based on recently annotated data
If you just need to load static pre-annotated data into Label Studio, running an ML backend might be overkill for you. Instead, you can import preannotated data.
- Get your model code
- Wrap it with the Label Studio SDK
- Create a running server script
- Launch the script
- Connect Label Studio to ML backend on the UI
Follow this example tutorial to run an ML backend with a simple text classifier:
-
Clone the repo
git clone https://github.com/heartexlabs/label-studio-ml-backend
-
Setup environment
It is highly recommended to use
venv
,virtualenv
orconda
python environments. You can use the same environment as Label Studio does. Read more about creating virtual environments viavenv
.cd label-studio-ml-backend # Install label-studio-ml and its dependencies pip install -U -e . # Install example dependencies pip install -r label_studio_ml/examples/requirements.txt
-
Initialize an ML backend based on an example script:
label-studio-ml init my_ml_backend --script label_studio_ml/examples/simple_text_classifier/simple_text_classifier.py
This ML backend is an example provided by Label Studio. See how to create your own ML backend.
-
Start ML backend server
label-studio-ml start my_ml_backend
-
Start Label Studio and connect it to the running ML backend on the project settings page.
Follow this tutorial to wrap existing machine learning model code with the Label Studio ML SDK to use it as an ML backend with Label Studio.
Before you start, determine the following:
- The expected inputs and outputs for your model. In other words, the type of labeling that your model supports in Label Studio, which informs the Label Studio labeling config. For example, text classification labels of "Dog", "Cat", or "Opossum" could be possible inputs and outputs.
- The prediction format returned by your ML backend server.
This example tutorial outlines how to wrap a simple text classifier based on the scikit-learn framework with the Label Studio ML SDK.
Start by creating a class declaration. You can create a Label Studio-compatible ML backend server in one command by inheriting it from LabelStudioMLBase
.
from label_studio_ml.model import LabelStudioMLBase
class MyModel(LabelStudioMLBase):
Then, define loaders & initializers in the __init__
method.
def __init__(self, **kwargs):
# don't forget to initialize base class...
super(MyModel, self).__init__(**kwargs)
self.model = self.load_my_model()
There are special variables provided by the inherited class:
self.parsed_label_config
is a Python dict that provides a Label Studio project config structure. See ref for details. Use might want to use this to align your model input/output with Label Studio labeling configuration;self.label_config
is a raw labeling config string;self.train_output
is a Python dict with the results of the previous model training runs (the output of thefit()
method described bellow) Use this if you want to load the model for the next updates for active learning and model fine-tuning.
After you define the loaders, you can define two methods for your model: an inference call and a training call.
Use an inference call to get pre-annotations from your model on-the-fly. You must update the existing predict method in the example ML backend scripts to make them work for your specific use case. Write your own code to override the predict(tasks, **kwargs)
method, which takes JSON-formatted Label Studio tasks and returns predictions in the format accepted by Label Studio.
Example
def predict(self, tasks, **kwargs):
predictions = []
# Get annotation tag first, and extract from_name/to_name keys from the labeling config to make predictions
from_name, schema = list(self.parsed_label_config.items())[0]
to_name = schema['to_name'][0]
for task in tasks:
# for each task, return classification results in the form of "choices" pre-annotations
predictions.append({
'result': [{
'from_name': from_name,
'to_name': to_name,
'type': 'choices',
'value': {'choices': ['My Label']}
}],
# optionally you can include prediction scores that you can use to sort the tasks and do active learning
'score': 0.987
})
return predictions
Use the training call to update your model with new annotations. You don't need to use this call in your code, for example if you just want to pre-annotate tasks without retraining the model. If you do want to retrain the model based on annotations from Label Studio, use this method.
Write your own code to override the fit(annotations, **kwargs)
method, which takes JSON-formatted Label Studio annotations and returns an arbitrary dict where some information about the created model can be stored.
Example
def fit(self, completions, workdir=None, **kwargs):
# ... do some heavy computations, get your model and store checkpoints and resources
return {'checkpoints': 'my/model/checkpoints'} # <-- you can retrieve this dict as self.train_output in the subsequent calls
After you wrap your model code with the class, define the loaders, and define the methods, you're ready to run your model as an ML backend with Label Studio.
For other examples of ML backends, refer to the examples in this repository. These examples aren't production-ready, but can help you set up your own code as a Label Studio ML backend.
If you don't want to use the docker, you can run the ML backend with uwsgi workers and use custom port this way:
label-studio-ml-backend init --script examples/dummy_model/dummy_model.py my_backend
cd my_backend
python _wsgi.py -p 4242
Before you start:
- Install gcloud
- Init billing for account if it's not activated
- Init gcloud, type the following commands and login in browser:
gcloud auth login
- Activate your Cloud Build API
- Find your GCP project ID
- (Optional) Add GCP_REGION with your default region to your ENV variables
To start deployment:
- Create your own ML backend
- Start deployment to GCP:
label-studio-ml deploy gcp {ml-backend-local-dir} \
--from={model-python-script} \
--gcp-project-id {gcp-project-id} \
--label-studio-host {https://app.heartex.com} \
--label-studio-api-key {YOUR-LABEL-STUDIO-API-KEY}
- After label studio deploys the model - you will get model endpoint in console.