Deploying a Multi-Stage Recommender System#
We created two Jupyter notebooks that demonstrate two different stages of a Recommender Systems. The goal of the notebooks is to show how to deploy a multi-stage Recommender System and serve recommendations with Triton Inference Server. The notebooks demonstrate how to use the NVTabular, Merlin Models, and Merlin Systems libraries for feature engineering, training, and then inference.
The two example notebooks are structured as follows:
Building the Recommender System:
Execute the preprocessing and feature engineering pipeline (ETL) with NVTabular on the GPU/CPU.
Train a ranking and retrieval model with TensorFlow based on the ETL output.
Export the saved models, user and item features, and item embeddings.
Deploying the Recommender System with Triton:
Set up a Feast feature store for feature storing and a Faiss index for similarity search.
Build a multi-stage recommender system ensemble pipeline with Merlin Systems operators.
Perform inference with the Triton Inference Server using the Merlin Systems library.
Running the Example Notebooks#
Merlin docker containers are available on http://ngc.nvidia.com/catalog/containers/ with pre-installed versions. For Building-and-deploying-multi-stage-RecSys
example notebooks we used merlin-tensorflow-inference
container that has NVTabular with TensorFlow and Triton Inference support.
To run the example notebooks using Docker containers, do the following:
Once you pull the inference container, launch it by running the following command:
docker run -it --gpus all -p 8000:8000 -p 8001:8001 -p 8002:8002 -p 8888:8888 -v <path to your data>:/workspace/data/ --ipc=host <docker container> /bin/bash
The container will open a shell when the run command execution is completed. You can remove the --gpus all
flag to run the example on CPU.
You will have to start JupyterLab on the Docker container. First, install jupyter-lab with the following command if it is missing:
pip install jupyterlab
For more information, see Installation Guide.
Start the jupyter-lab server by running the following command:
jupyter-lab --allow-root --ip='0.0.0.0' --NotebookApp.token='<password>'
Open any browser to access the jupyter-lab server using
localhost:8888
.Once in the server, navigate to the
/Merlin/examples/Building-and-deploying-multi-stage-RecSys/
directory and execute the example notebooks.