--- title: Tutorial --- In this tutorial, you will go over the model lifecycle -- from training to serving -- in the following steps: * Training a model using the [sklearn example script](https://github.com/allegroai/clearml-serving/blob/main/examples/sklearn/train_model.py) * Serving the model using **ClearML Serving** * Spinning the inference container The tutorial also covers the following`clearml-serving` features: * Automatic model deployment * Canary endpoints * Model performance monitoring ## Prerequisite Before executing the steps below, make sure you have completed `clearml-serving`'s [initial setup](clearml_serving_setup.md#initial-setup). ## Steps ### Step 1: Train Model Train a model using the example script. Start from the root directory of your local `clearml-serving` repository. 1. Create a Python virtual environment 1. Install the script requirements: `pip3 install -r examples/sklearn/requirements.txt` 1. Execute the [training script](https://github.com/allegroai/clearml-serving/blob/main/examples/sklearn/train_model.py): `python3 examples/sklearn/train_model.py`. During execution, ClearML automatically registers the sklearn model and uploads it to the model repository. For information about explicit model registration, see [Registering and Deploying New Models Manually](#registering-and-deploying-new-models-manually). ### Step 2: Register Model Register the new Model on the Serving Service: ```bash clearml-serving --id model add --engine sklearn --endpoint "test_model_sklearn" --preprocess "examples/sklearn/preprocess.py" --name "train sklearn model - sklearn-model" --project "serving examples" ``` :::info Service ID Make sure that you have executed `clearml-serving`'s [initial setup](clearml_serving_setup.md#initial-setup), in which you create a Serving Service. The Serving Service's ID is required to register a model, and to execute `clearml-serving`'s `metrics` and `config` commands. ::: :::note The preprocessing Python code is packaged and uploaded to the Serving Service, to be used by any inference container, and downloaded in real time when updated. ::: ### Step 3: Spin Inference Container Spin the Inference Container: 1. Customize container [Dockerfile](https://github.com/allegroai/clearml-serving/blob/main/clearml_serving/serving/Dockerfile) if needed 1. Build container: ```bash docker build --tag clearml-serving-inference:latest -f clearml_serving/serving/Dockerfile . ``` 1. Spin the inference container: ```bash docker run -v ~/clearml.conf:/root/clearml.conf -p 8080:8080 -e CLEARML_SERVING_TASK_ID= -e CLEARML_SERVING_POLL_FREQ=5 clearml-serving-inference:latest ``` 1. Test the new model inference endpoint: ```bash 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}' ``` Now that you have an inference container running, you can add new model inference endpoints directly with the CLI. The inference container will automatically sync every 5 minutes. The first few requests may take longer while the inference container downloads the model file and preprocessing Python code. Once everything is cached, responses will return almost immediately. :::note Review the model repository in the ClearML web UI, under the "serving examples" Project on your ClearML account/server ([free hosted](https://app.clear.ml) or [self-deployed](https://github.com/allegroai/clearml-server)). Inference services status, console outputs and machine metrics are available in the ClearML UI in the Serving Service project (default: "DevOps" project). ::: ## Registering and Deploying New Models Manually Uploading an existing model file into the model repository can be done via the `clearml` RestAPI, the python interface, or with the `clearml-serving` CLI. 1. Upload the model file to the `clearml-server` file storage and register it. The `--path` parameter is used to input the path to a local model file (local model created in [step 1](#step-1--train-model) located in `./sklearn-model.pkl`). ```bash clearml-serving --id model upload --name "manual sklearn model" --project "serving examples" --framework "scikitlearn" --path ./sklearn-model.pkl ``` You now have a new Model named `manual sklearn model` in the `serving examples` project. The CLI output prints the UID of the new model, which you will use to register a new endpoint. In the [ClearML web UI](../webapp/webapp_overview.md), the new model is listed under the **Models** tab of its project. You can also download the model file itself directly from the web UI. 1. Register a new endpoint with the new model: ```bash clearml-serving --id model add --engine sklearn --endpoint "test_model_sklearn" --preprocess "examples/sklearn/preprocess.py" --model-id ``` :::info Model Storage You can also provide a different storage destination for the model, such as S3/GS/Azure, by passing `--destination="s3://bucket/folder"`, `s3://host_addr:port/bucket` (for non-AWS S3-like services like MinIO), `gs://bucket/folder`, `azure://.blob.core.windows.net/path/to/file`. There is no need to provide a unique path to the destination argument, the location of the model will be a unique path based on the serving service ID and the model name. ::: ## Additional Options ### Automatic Model Deployment The ClearML Serving Service supports automatic model deployment and upgrades, which is connected with the model repository and API. When the model auto-deploy is configured, new model versions will be automatically deployed when you `publish` or `tag` a new model in the ClearML model repository. This automation interface allows for a simpler CI/CD model deployment process, as a single API automatically deploys (or removes) a model from the Serving Service. #### Automatic Model Deployment Example 1. Configure the model auto-update on the Serving Service: ```bash clearml-serving --id model auto-update --engine sklearn --endpoint "test_model_sklearn_auto" --preprocess "preprocess.py" --name "train sklearn model" --project "serving examples" --max-versions 2` ``` 1. Deploy the Inference container (if not already deployed) 1. Publish a new model in the model repository in one of the following ways: - Go to the "serving examples" project in the ClearML web UI, click on the Models Tab, search for "train sklearn model" right-click and select "Publish" - Use the RestAPI (see [details](https://clear.ml/docs/latest/docs/references/api/models#post-modelspublish_many)) - Use Python interface: ```python from clearml import Model Model(model_id="unique_model_id_here").publish() ``` 1. The new model is available on a new endpoint version (1), test with: ```bash curl -X POST "http://127.0.0.1:8080/serve/test_model_sklearn_auto/1" -H "accept: application/json" -H "Content-Type: application/json" -d '{"x0": 1, "x1": 2}' ``` ### Canary Endpoint Setup Canary endpoint deployment adds a new endpoint where the actual request is sent to a preconfigured set of endpoints with pre-provided distribution. For example, let's create a new endpoint "test_model_sklearn_canary", you can provide a list of endpoints and probabilities (weights). ```bash clearml-serving --id model canary --endpoint "test_model_sklearn_canary" --weights 0.1 0.9 --input-endpoints test_model_sklearn/2 test_model_sklearn/1 ``` This means that any request coming to `/test_model_sklearn_canary/` will be routed with probability of 90% to `/test_model_sklearn/1/` and with probability of 10% to `/test_model_sklearn/2/`. :::note As with any other Serving Service configuration, you can configure the Canary endpoint while the Inference containers are already running and deployed, they will get updated in their next update cycle (default: once every 5 minutes). ::: You can also prepare a "fixed" canary endpoint, always splitting the load between the last two deployed models: ```bash clearml-serving --id model canary --endpoint "test_model_sklearn_canary" --weights 0.1 0.9 --input-endpoints-prefix test_model_sklearn/ ``` This means that you have two model inference endpoints: `/test_model_sklearn/1/` and `/test_model_sklearn/2/`. The 10% probability (weight 0.1) will match the last (order by version number) endpoint, i.e. `/test_model_sklearn/2/`, and the 90% will match `/test_model_sklearn/2/`. When you add a new model endpoint version, e.g. `/test_model_sklearn/3/`, the canary distribution will automatically match the 90% probability to `/test_model_sklearn/2/` and the 10% to the new endpoint `/test_model_sklearn/3/`. Example: 1. Add two endpoints: ```bash clearml-serving --id model add --engine sklearn --endpoint "test_model_sklearn" --preprocess "examples/sklearn/preprocess.py" --name "train sklearn model" --version 1 --project "serving examples" ``` ```bash clearml-serving --id model add --engine sklearn --endpoint "test_model_sklearn" --preprocess "examples/sklearn/preprocess.py" --name "train sklearn model" --version 2 --project "serving examples" ``` 1. Add Canary endpoint: ```bash clearml-serving --id model canary --endpoint "test_model_sklearn_canary" --weights 0.1 0.9 --input-endpoints test_model_sklearn/2 test_model_sklearn/1 ``` 1. Test Canary endpoint: ```bash curl -X POST "http://127.0.0.1:8080/serve/test_model" -H "accept: application/json" -H "Content-Type: application/json" -d '{"x0": 1, "x1": 2}'` ``` ### Model Monitoring and Performance Metrics ![Grafana Screenshot](https://github.com/allegroai/clearml-serving/raw/main/docs/grafana_screenshot.png) ClearML serving instances send serving statistics (count/latency) automatically to Prometheus and Grafana can be used to visualize and create live dashboards. The default docker-compose installation is preconfigured with Prometheus and Grafana. Notice that by default data/ate of both containers is *not* persistent. To add persistence, adding a volume mount is recommended. You can also add many custom metrics on the input/predictions of your models. Once a model endpoint is registered, adding custom metrics can be done using the CLI. For example, assume the mock scikit-learn model is deployed on endpoint `test_model_sklearn`, you can log the requests inputs and outputs (see examples/sklearn/preprocess.py example): ```bash clearml-serving --id metrics add --endpoint test_model_sklearn --variable-scalar x0=0,0.1,0.5,1,10 x1=0,0.1,0.5,1,10 y=0,0.1,0.5,0.75,1 ``` This will create a distribution histogram (buckets specified via a list of less-equal values after `=` sign), that you will be able to visualize on Grafana. :::info time-series values You can also log time-series values with `--variable-value x2` or discrete results (e.g. classifications strings) with `--variable-enum animal=cat,dog,sheep`. Additional custom variables can be added in the preprocess and postprocess with a call to `collect_custom_statistics_fn({'new_var': 1.337})`. See [preprocess_template.py](https://github.com/allegroai/clearml-serving/blob/main/clearml_serving/preprocess/preprocess_template.py). ::: With the new metrics logged, you can create a visualization dashboard over the latency of the calls, and the output distribution. #### Grafana Model Performance Example 1. Browse to `http://localhost:3000` 1. Login with: admin/admin 1. Create a new dashboard 1. Select Prometheus as data source 1. Add a query: `100 * increase(test_model_sklearn:_latency_bucket[1m]) / increase(test_model_sklearn:_latency_sum[1m])` 1. Change type to heatmap, and select on the right hand-side under "Data Format" select "Time series buckets". You now have the latency distribution, over time. 1. Repeat the same process for x0, the query would be `100 * increase(test_model_sklearn:x0_bucket[1m]) / increase(test_model_sklearn:x0_sum[1m])` :::note If not specified all serving requests will be logged, which can be changed with the `CLEARML_DEFAULT_METRIC_LOG_FREQ` environment variable. For example `CLEARML_DEFAULT_METRIC_LOG_FREQ=0.2` means only 20% of all requests will be logged. You can also specify per-endpoint log frequency with the `clearml-serving` CLI. See [clearml-serving metrics](clearml_serving_cli.md#metrics). ::: ## Further Examples See examples of ClearML Serving with other supported frameworks: * [scikit-learn](https://github.com/allegroai/clearml-serving/blob/main/examples/sklearn/readme.md) - Random data * [scikit-learn Model Ensemble](https://github.com/allegroai/clearml-serving/blob/main/examples/ensemble/readme.md) - Random data * [XGBoost](https://github.com/allegroai/clearml-serving/blob/main/examples/xgboost/readme.md) - Iris dataset * [LightGBM](https://github.com/allegroai/clearml-serving/blob/main/examples/lightgbm/readme.md) - Iris dataset * [PyTorch](https://github.com/allegroai/clearml-serving/blob/main/examples/pytorch/readme.md) - MNIST dataset * [TensorFlow/Keras](https://github.com/allegroai/clearml-serving/blob/main/examples/keras/readme.md) - MNIST dataset * [Model Pipeline](https://github.com/allegroai/clearml-serving/blob/main/examples/pipeline/readme.md) - Random data