/plushcap/analysis/arize/arize-feast-and-arize-supercharge-feature-management-and-model-monitoring-for-mlops

Feast and Arize Supercharge Feature Management and Model Monitoring for MLOps

What's this blog post about?

Feast and Arize AI have partnered to enhance the ML model lifecycle by empowering online/offline feature transformation and serving through Feast's feature store and detecting and resolving data inconsistencies through Arize's ML observability platform. The integration of a feature store and evaluation store can help improve productionization of features, mitigate data inconsistencies, and facilitate troubleshooting to resolve performance degradations in an end-to-end ML model lifecycle.

Company
Arize

Date published
Nov. 9, 2021

Author(s)
Aparna Dhinakaran

Word count
1918

Language
English

Hacker News points
None found.


By Matt Makai. 2021-2024.