Python Test

95: Data Science Pipeline Testing with Great Expectations - Abe Gong

11.30.2019 - By Brian OkkenPlay

Download our free app to listen on your phone

Download on the App StoreGet it on Google Play

Data science and machine learning are affecting more of our lives every day. Decisions based on data science and machine learning are heavily dependent on the quality of the data, and the quality of the data pipeline.

Some of the software in the pipeline can be tested to some extent with traditional testing tools, like pytest.

But what about the data? The data entering the pipeline, and at various stages along the pipeline, should be validated.

That's where pipeline tests come in.

Pipeline tests are applied to data. Pipeline tests help you guard against upstream data changes and monitor data quality.

Abe Gong and Superconductive are building an open source project called Great Expectations. It's a tool to help you build pipeline tests.

This is quite an interesting idea, and I hope it gains traction and takes off. Special Guest: Abe Gong. Sponsored By:Raygun: Detect, diagnose, and destroy Python errors that are affecting your customers. With smart Python error monitoring software from Raygun.com, you can be alerted to issues affecting your users the second they happen.Links:Great Expectations

More episodes from Python Test