Feast (Feature Store) is a tool for managing and serving machine learning features.
Feast is the bridge between your models and your data
Feast aims to:
- Provide a unified means of managing feature data from a single person to large enterprises.
- Provide scalable and performant access to feature data when training and serving models.
- Provide consistent and point-in-time correct access to feature data.
- Enable discovery, documentation, and insights into your features.
TL;DR: Feast decouples feature engineering from feature usage. Features that are added to Feast become available immediately for training and serving. Models can retrieve the same features used in training from a low latency online store in production.
This means that new ML projects start with a process of feature selection from a catalog instead of having to do feature engineering from scratch.