From determining the most convenient rider pickup points to predicting the fastest routes, Uber uses data-driven machine learning to create seamless trip experiences. Zhenxiao Luo explains how Uber tackles data caching in large-scale machine learning, exploring Uber's machine learning architecture, how Uber uses big data to power machine learning, and how to use data caching to speed up AI jobs.
Table of contents
- Title: How machine learning powers the Uber infrastructure
- Release date: May 2019
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 0636920424031
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