On How Machine Learning and Auction Theory Power Facebook Advertising
Eric Sodomka, Facebook
Algorithmic Game Theory and Practice
https://simons.berkeley.edu/talks/eric-sodomka-2015-11-17
Видео On How Machine Learning and Auction Theory Power Facebook Advertising канала Simons Institute
Algorithmic Game Theory and Practice
https://simons.berkeley.edu/talks/eric-sodomka-2015-11-17
Видео On How Machine Learning and Auction Theory Power Facebook Advertising канала Simons Institute
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Facebook Ads Machine Learning: Smarter Than a Seasoned Media Buyer? | Savannah Sanchez, AWasia 2019Serving a Billion Personalized News FeedsAn introduction to Reinforcement LearningThe Highs and Lows of Building an Adtech Data Pipeline | TripleLiftOCPSummit19 - Facebook AI Infrastructure- Presented by FacebookHow Does The Facebook Auction Work?Google's self-learning AI AlphaZero masters chess in 4 hoursForecasting Demand, Finding Sales Data - Facebook Prophet, Google Trends & PythonProf. Brian Cox - Machine Learning & Artificial Intelligence - Royal SocietyApplied Machine Learning for Ranking Products in an Ecommerce Setting Arnoud de Munnik Wehkamp JerryMy Journey Learning ML and AI through Self Study - Sachi Parikh - ML4ALL 2019How to Train Your Facebook Pixel and How to Choose Your Facebook Campaign OptimizationHow Facebook is using Artificial Intelligence (AI) And Deep LearningLarge Scale Ads CTR Prediction with Spark and Deep Learning: Lessons Learned - Yanbo LiangDesigning Instagram: System Design of News FeedLet's Talk Growth - Dennis Yu on Facebook as your PR machine by spending only $1 per dayOur Quantum Society: Living with EntanglementReal Time Bidding Models in Computational Advertising - AllieFlorian Hartl | Large Scale CTR Prediction Lessons LearnedMIT 6.S091: Introduction to Deep Reinforcement Learning (Deep RL)