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  1. Getting started
  2. Architecture

Batch Materialization Engine

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Last updated 10 months ago

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A batch materialization engine is a component of Feast that's responsible for moving data from the offline store into the online store.

A materialization engine abstracts over specific technologies or frameworks that are used to materialize data. It allows users to use a pure local serialized approach (which is the default LocalMaterializationEngine), or delegates the materialization to seperate components (e.g. AWS Lambda, as implemented by the the LambdaMaterializaionEngine).

If the built-in engines are not sufficient, you can create your own custom materialization engine. Please see for more details.

Please see for configuring engines.

this guide
feature_store.yaml