AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)

7 064
18.8
Опубликовано 3 декабря 2016, 18:44
For many companies, recommendation systems solve important machine learning problems. But as recommendation systems grow to millions of users and millions of items, they pose significant challenges when deployed at scale. The user-item matrix can have trillions of entries (or more), most of which are zero. To make common ML techniques practical, sparse data requires special techniques. Learn how to use MXNet to build neural network models for recommendation systems that can scale efficiently to large sparse datasets.
Свежие видео
10 дней – 205 72212:11
Hidden Storage With a Twist
12 дней – 6034:51
Back to Basics: Bulk Data Storage
20 дней – 27 24312:54
My last RTX 4000 Gaming PC.
автотехномузыкадетское