Skip to content

jaybroker/bodywork-ml-pipeline-project

 
 

Repository files navigation

Deploy ML Pipelines on Kubernetes with Bodywork

bodywork

This repository demonstrates how to run a continuous training pipeline on Kubernetes, using Bodywork. The example ML pipeline has two stages:

  1. Run a batch job to train a model.
  2. Deploy the trained model as service with a REST API.

For information on this demo, take a look here. To run this project, follow the steps below. If you are new to Kubernetes, then take a look at our Kubernetes Quickstart Guide.

Install Bodywork

Bodywork is distributed as a Python package that can be installed using Pip,

$ pip install bodywork

Run the ML Pipeline

To test the pipeline defined in thie repository run,

$ bodywork create deployment https://github.com/bodywork-ml/bodywork-ml-pipeline-project

Logs will be streamed to your terminal until the job has been successfully completed.

Make this Project Your Own

This repository is a GitHub template repository that can be automatically copied into your own GitHub account by clicking the Use this template button above.

After you've cloned the template project, use official Bodywork documentation to help modify the project to meet your own requirements.

About

Deployment template for a continuous training pipeline.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 62.4%
  • Python 37.6%