Much of the hardest work of creating effective data products in the enterprise is not in the complexity of the algorithms applied but in effective design and integration into downstream systems. Hilary Mason (Cloudera) shares a process for repeatedly creating effective AI products, from idea through process to specific design considerations, and explains how architecture and algorithmic choices can support or hinder this process.
This session was recorded at the 2019 O'Reilly Artificial Intelligence Conference in New York.
Table of contents
- Title: Building enterprise data products
- Release date: October 2019
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 0636920339670
You might also like
A Transition to Mathematics with Proofs
Developed for the "transition" course for mathematics majors moving beyond the primarily procedural methods of their …
Microinteractions: Full Color Edition
It’s the little things that turn a good digital product into a great one. With this …
Mastering Functional Programming
Learn how functional programming can help you in deploying web servers and working with databases in …
HBR Guide to Critical Thinking
Tackle complex situations with critical thinking. You're facing a problem at work. There are many ways …