bytehub
Feature store library
A Python-based feature store library with a simple, scalable, and flexible architecture for storing and managing data for machine learning applications.
ByteHub: making feature stores simple
58 stars
3 watching
4 forks
Language: Python
last commit: almost 4 years ago
Linked from 2 awesome lists
bytehub-clouddaskdata-engineeringdata-sciencefeature-engineeringfeature-storefeaturestoreforecastingmachine-learningmachinelearningmachinelearning-pythonpandastimeseries
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