How Riot Games Uses Data to Maximize Engagement & Enjoyment
ABOUT THE TALK:
League of legends faces lots of interesting problems in the data space that are unique due to the video game aspect. How do you deploy and train models in a binary video game? How has the data and ML stack changed since the league's inception in 2009? How do you do player-facing ML (Lane detection, feeding detection, etc.) and decision science at this scale?
ABOUT THE SPEAKER:
Ian is a senior software engineer at Riot Games, working on the League Data Central team. Along with his team, Ian ships Machine Learning and Data products to millions of league of legends and tft players including in game recommendations, player behaviour models, and internal decision science to help make the game a better place for all.
ABOUT DATA COUNCIL:
Data Council (https://www.datacouncil.ai/) is a community and conference series that provides data professionals with the learning and networking opportunities they need to grow their careers.
Make sure to subscribe to our channel for the most up-to-date talks from technical professionals on data related topics including data infrastructure, data engineering, ML systems, analytics and AI from top startups and tech companies.
FOLLOW DATA COUNCIL:
Twitter: https://twitter.com/DataCouncilAI
LinkedIn: https://www.linkedin.com/company/datacouncil-ai/
Видео How Riot Games Uses Data to Maximize Engagement & Enjoyment канала Data Council
League of legends faces lots of interesting problems in the data space that are unique due to the video game aspect. How do you deploy and train models in a binary video game? How has the data and ML stack changed since the league's inception in 2009? How do you do player-facing ML (Lane detection, feeding detection, etc.) and decision science at this scale?
ABOUT THE SPEAKER:
Ian is a senior software engineer at Riot Games, working on the League Data Central team. Along with his team, Ian ships Machine Learning and Data products to millions of league of legends and tft players including in game recommendations, player behaviour models, and internal decision science to help make the game a better place for all.
ABOUT DATA COUNCIL:
Data Council (https://www.datacouncil.ai/) is a community and conference series that provides data professionals with the learning and networking opportunities they need to grow their careers.
Make sure to subscribe to our channel for the most up-to-date talks from technical professionals on data related topics including data infrastructure, data engineering, ML systems, analytics and AI from top startups and tech companies.
FOLLOW DATA COUNCIL:
Twitter: https://twitter.com/DataCouncilAI
LinkedIn: https://www.linkedin.com/company/datacouncil-ai/
Видео How Riot Games Uses Data to Maximize Engagement & Enjoyment канала Data Council
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
DC_THURS : dbt w/ Drew BaninDevOps for Machine Learning & Other Half Truths Processes & Tools for the ML Lifecycle | DataRobotData Discovery Getting More From Your MetadataTechnical Founders PanelFeed The Alligators With the Lights On: How Data Engineers Can See Who Really Uses Data | StemmaArchitecting a Low-Latency Schemaless SQL Engine | RocksetBuilding High Performance Recommender Systems with Feature Stores | TectonOffice Hours with Stitch Fix Data PlatformDC_THURS on TrinoEnterprise Data Science Comes of Age | AnacondaUsing Machine Learning and Observability Together to Reduce Incident Impact | DigitalOceanMaking Friends with Generative Models | TonicThe Right Way to Track Mobile DataDC_THURS on Feature EngineeringScaling Uber's Metric System from Elasticsearch to Pinot | UberRikai: A New Data Format for Analytics on Unstructured Data at ScaleDC_THURS on DataHub w/ Shirshanka Das (Acryl Data)The Road to Exceptional Data CorrectnessBuilding an ML Experimentation Platform for Easy Reproducibility | TreeverseHow Vercel Builds Dozens of Metrics from One Heterogenous TableDC_THURS w/ Patrick Thompson, CEO of Iteratively