Skip to content

Latest commit

 

History

History
13 lines (6 loc) · 954 Bytes

README.md

File metadata and controls

13 lines (6 loc) · 954 Bytes

Running March Madness Predictions with Aqueduct

You can try running your own server on Github Codespaces by clicking this link. The notebook that defines the workflow can be found here.

Check out our quickstart guide!

Aqueduct gives you a simple Python-native API to define machine learning pipelines, the ability to deploy those pipelines on your existing infrastructure (e.g., Spark, Kubernetes, Lambda), and visibility into the code, data, and metadata associated with your workflows. Aqueduct is fully open-source and runs securely in your cloud.