AWS re:Invent 2018: Build and Govern Your Data Lakes with AWS Glue (ANT309)
As data volumes grow and customers store more data on AWS, they often have valuable data that is not easily discoverable and available for analytics. Learn how AWS Glue makes it easy to build and manage enterprise-grade data lakes on Amazon S3. AWS Glue can ingest data from variety of sources into your data lake, clean it, transform it, and automatically register it in the AWS Glue Data Catalog, making data readily available for analytics. Learn how you can set appropriate security policies in the Data Catalog and make data available for a variety of use cases, such as run ad-hoc analytics in Amazon Athena, run queries across your data warehouse and data lake with Amazon Redshift Spectrum, run big data analysis in Amazon EMR, and build machine learning models with Amazon SageMaker and AWS Glue.
Additionally, Robinhood will share how they were able to move from a world of data silos to building a robust, petabyte scale data lake on Amazon S3 with AWS Glue. Robinhood is one of the fastest-growing brokerages, serving over five million users with an easy to use investment platform that offers commission-free trading of equities, ETFs, options, and cryptocurrencies. Learn about the design paradigms and tradeoffs that Robinhood made to achieve a cost effective and performant data lake that unifies all data access, analytics, and machine learning use cases.
Видео AWS re:Invent 2018: Build and Govern Your Data Lakes with AWS Glue (ANT309) канала Amazon Web Services
Additionally, Robinhood will share how they were able to move from a world of data silos to building a robust, petabyte scale data lake on Amazon S3 with AWS Glue. Robinhood is one of the fastest-growing brokerages, serving over five million users with an easy to use investment platform that offers commission-free trading of equities, ETFs, options, and cryptocurrencies. Learn about the design paradigms and tradeoffs that Robinhood made to achieve a cost effective and performant data lake that unifies all data access, analytics, and machine learning use cases.
Видео AWS re:Invent 2018: Build and Govern Your Data Lakes with AWS Glue (ANT309) канала Amazon Web Services
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
PwC on AWS: Customer Story | Amazon Web ServicesWho is Driving a Driverless Car? | Builders Innovate on AWSAccelerate FM pre-training on Amazon SageMaker HyperPod (Amazon EKS) | Amazon Web ServicesAWS Cloud Operations - Compliance | Amazon Web ServicesJoin AWS Data Exchange Data with Amazon Redshift Spectrum Data | Amazon Web ServicesAmazon MGM Studios leverages an AWS Solution for visualizing workloads | Amazon Web ServicesNearmap on AWS: Customer Story | Amazon Web ServicesMeet Rosemon, Global Account Representative, AWS Automotive | Amazon Web ServicesImprove Customer Engagement and Conversion with Amazon PersonalizeCloud 101 | Amazon Web ServicesKatherine McConnell, Brighte | Found To Founded | AWS StartupsMLC Life on AWS: Customer Story | Amazon Web ServicesBuilding Indonesia's Digital Future (Membangun Masa Depan Digital Indonesia) | Amazon Web ServicesAWS Behind the Cloud: Meet Christian Hoff, AWS WWPS Sales Executive | Amazon Web ServicesGenerating Customer Centricity with AI: Dazerolab on AWS | Amazon Web ServicesHavmor & AWS : Icecream Made on CloudEnterprise AI Revolution: How AI21 Labs and Amazon Bedrock are Changing the GameAWS DeepRacer League 2021 TeaserMeet Robert, AWS Premium Support, DublinIntroduction to AWS Glue Elastic ViewsHow do I resolve the security token expired warning when running Java apps on my EC2 instance?