clearml-serving/examples/sklearn/readme.md
2022-03-21 01:00:19 +02:00

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# Train and Deploy Scikit-Learn model
## training mock logistic regression model
Run the mock python training code
```bash
pip install -r examples/sklearn/requirements.txt
python examples/sklearn/train_model.py
```
The output will be a model created on the project "serving examples", by the name "train sklearn model"
## setting up the serving service
1. Create serving Service: `clearml-serving create --name "serving example"` (write down the service ID)
2. Create model endpoint:
`clearml-serving --id <service_id> model add --engine sklearn --endpoint "test_model_sklearn" --preprocess "examples/sklearn/preprocess.py" --name "train sklearn model" --project "serving examples"`
Or auto update
`clearml-serving --id <service_id> model auto-update --engine sklearn --endpoint "test_model_sklearn_auto" --preprocess "examples/sklearn/preprocess.py" --name "train sklearn model" --project "serving examples" --max-versions 2`
Or add Canary endpoint
`clearml-serving --id <service_id> model canary --endpoint "test_model_sklearn_auto" --weights 0.1 0.9 --input-endpoint-prefix test_model_sklearn_auto`
3. Run the clearml-serving container `docker run -v ~/clearml.conf:/root/clearml.conf -p 8080:8080 -e CLEARML_SERVING_TASK_ID=<service_id> clearml-serving:latest`
4. Test new endpoint: `curl -X POST "http://127.0.0.1:8080/serve/test_model_sklearn" -H "accept: application/json" -H "Content-Type: application/json" -d '{"x0": 1, "x1": 2}'`
> **_Notice:_** You can also change the serving service while it is already running!
This includes adding/removing endpoints, adding canary model routing etc.
by default new endpoints/models will be automatically updated after 1 minute