Real Time Analytics at UBER Scale
James Burkhart explains how Uber supports millions of analytical queries daily across real-time data with Apollo. James covers the architectural decisions and lessons learned building an exactly-once ingest pipeline storing raw events across in-memory row storage and on-disk columnar storage and a custom metalanguage and query layer leveraging partial OLAP result set caching and query canonicalization. Putting all the pieces together provides thousands of Uber employees with subsecond p95 latency analytical queries spanning hundreds of millions of recent events.
To get a free trial, click here: https://www.singlestore.com/free/?utm_medium=osm&utm_source=youtube
To post questions on MemSQL forums, click here: https://www.singlestore.com/forum/?utm_medium=osm&utm_source=youtube
To talk to a product expert, click here: https://www.singlestore.com/contact/?utm_medium=osm&utm_source=youtube
#MemSQL is now #SingleStore
Видео Real Time Analytics at UBER Scale канала SingleStore
To get a free trial, click here: https://www.singlestore.com/free/?utm_medium=osm&utm_source=youtube
To post questions on MemSQL forums, click here: https://www.singlestore.com/forum/?utm_medium=osm&utm_source=youtube
To talk to a product expert, click here: https://www.singlestore.com/contact/?utm_medium=osm&utm_source=youtube
#MemSQL is now #SingleStore
Видео Real Time Analytics at UBER Scale канала SingleStore
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Architecture for Developers: A Primer on Distributed SQL SystemsWhat is Data Labeling ? | Prepare Your Data for ML and AI | Attaching meaning to digital data 273 Things I wish I knew when starting with GraphQL ft Kitze | Prismic[Uber Open Source] Leveraging Pinot at Uber for Large-scale AnalyticsSingleStore Studio TourBatch Processing vs Stream Processing | System Design Primer | Tech PrimersSingleStore Architecture OverviewJP MORGAN Interview Questions and Answers! (How to PASS a JP Morgan Chase Interview!Near Real Time Analytics with Apache Spark: Ingestion, ETL, and Interactive QueriesBrandon Hamric EvAWS re:Invent 2020: A day in the life of a machine learning data scientist at JPMorgan ChaseHow Superset and Druid Power Real-Time Analytics at Airbnb | DataEngConf SF '17Meet Oribi - Marketing AnalyticsHow to Design and Build a Recommendation System Pipeline in Python (Jill Cates)Siggraph 2018 - Using a Real-Time Engine in Movie ProductionTesting Airflow workflows - ensuring your DAGs work before going into productionArchitecting a Modern Financial InstitutionPresto: Fast SQL on Everything (Facebook)Data pipelines from zero to solidHow to create Google Data Studio Real-Time DashboardMap Matching @ Uber