

RECOMMENDER SYSTEM: Why They Update Models 100 Times a Day // Gleb Abroskin // MLOps Coffee Sessions #123
Sep 16, 2022
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18
Introduction
00:00 • 2min
You Love You Love Recommender Systems
01:50 • 2min
How Long Does It Take You to Try Your Idea?
03:33 • 3min
Six Data Scientists for Three for Three Software Engineers
06:14 • 2min
Kubernetes
07:56 • 3min
Is There a Need for a Feature Store?
10:31 • 4min
What Is a Feature Store?
14:53 • 5min
What's the Future of Rexis?
19:51 • 2min
What's Your Kind of Latency for Business Metrics?
21:56 • 4min
How to Measure Intent Signals in the Data Engineering Pipeline
25:30 • 4min
Using Cobalt in a Recommendation System?
29:47 • 2min
Is Your Front End Degrading Your Models?
31:24 • 2min
MLOps
33:11 • 2min
What's Missing From a REXIS System?
34:51 • 5min
Data Science and the Infinite Service - ONNX
39:25 • 3min
What's the Worst Case Scenario?
42:23 • 2min
Rex Systems Live and Die by Testing
44:33 • 5min
What Was the Last Book You Read?
49:37 • 2min