Skip to content

Latest commit

 

History

History
30 lines (21 loc) · 1.31 KB

File metadata and controls

30 lines (21 loc) · 1.31 KB

Feature Pipeline

Check out Lesson 1 on Medium to better understand how we built the FE pipeline.

Also, check out Lesson 5 to learn how we implemented the data validation layer using Great Expectations.

Install for Development

Create virtual environment:

cd feature-pipeline
poetry shell
poetry install

Check the Set Up Additional Tools and Usage sections to see how to set up the additional tools and credentials you need to run this project.

Usage for Development

To start the ETL pipeline run:

python -m feature_pipeline.pipeline

To create a new feature view run:

python -m feature_pipeline.feature_view

NOTE: Be careful to complete the .env file and set the ML_PIPELINE_ROOT_DIR variable as explained in the Set Up the ML_PIPELINE_ROOT_DIR Variable section of the main README.