Evolution and Scaling of Feature Store at Uber
Offered By: Linux Foundation via YouTube
Course Description
Overview
Explore the evolution and scaling of Uber's Palette Feature Store in this 33-minute conference talk by Divya Nagar from Uber Technologies. Learn how Uber introduced the concept of sharing features between teams and use cases to reduce storage and serving costs while maintaining high scalability and reliability standards. Discover how Palette currently serves over 21,000 features with 25 million queries per second at 99.999% uptime, and gain insights into the innovative approaches used to optimize feature management for machine learning models at scale.
Syllabus
Evolution and Scaling of Feature Store at Uber - Divya Nagar, Uber Technologies
Taught by
Linux Foundation
Tags
Related Courses
Advanced Operating SystemsGeorgia Institute of Technology via Udacity High Performance Computing
Georgia Institute of Technology via Udacity GT - Refresher - Advanced OS
Georgia Institute of Technology via Udacity Distributed Machine Learning with Apache Spark
University of California, Berkeley via edX CS125x: Advanced Distributed Machine Learning with Apache Spark
University of California, Berkeley via edX