Today we’re joined by Pat Woowong, principal engineer in the applied machine intelligence group at The Home Depot.
We discuss a project that Pat recently presented at the Google Cloud Next conference which used machine learning to predict shelf-out scenarios within stores. We dig into the motivation for this system and how the team went about building it, including what type of models ended up working best, how they collected their data, their use of kubernetes to support future growth in the platform, and much more.
For the complete show notes, visit twimlai.com/talk/175.
How to Be Human in the Age of AI with Ayanna Howard - #460
How to Be Human in the Age of AI with Ayanna Howard - #460
Evolution and Intelligence with Penousal Machado - #459
Innovating Neural Machine Translation with Arul Menezes - #458
Building the Product Knowledge Graph at Amazon with Luna Dong - #457
Towards a Systems-Level Approach to Fair ML with Sarah M. Brown - #456
AI for Digital Health Innovation with Andrew Trister - #455
System Design for Autonomous Vehicles with Drago Anguelov - #454
Building, Adopting, and Maturing LinkedIn's Machine Learning Platform with Ya Xu - #453
Expressive Deep Learning with Magenta DDSP w/ Jesse Engel - #452
Semantic Folding for Natural Language Understanding with Francisco Weber - #451
The Future of Autonomous Systems with Gurdeep Pall - #450
AI for Ecology and Ecosystem Preservation with Bryan Carstens - #449
Off-Line, Off-Policy RL for Real-World Decision Making at Facebook - #448
A Future of Work for the Invisible Workers in A.I. with Saiph Savage - #447
Trends in Graph Machine Learning with Michael Bronstein - #446
Trends in Natural Language Processing with Sameer Singh - #445
Trends in Computer Vision with Pavan Turaga - #444
Trends in Reinforcement Learning with Pablo Samuel Castro - #443
MOReL: Model-Based Offline Reinforcement Learning with Aravind Rajeswaran - #442
Create your
podcast in
minutes
It is Free
20/20
The Dropout
10% Happier with Dan Harris
World News Tonight with David Muir
NEJM This Week