Загрузка страницы

AWS re:Invent 2020: Top 5 best practices for data streaming with Amazon Kinesis

Latency and throughput are key considerations in stream processing workloads. In this session, you learn tips for optimizing throughput and latency in stream processing architectures. You also learn about scenarios when it’s necessary to find trade-offs between latency and throughput and about scalability. Services discussed in this session include Amazon Kinesis Data Streams, Amazon Kinesis Data Firehose, and Amazon Kinesis Data Analytics for Apache Flink.

Learn more about re:Invent 2020 at http://bit.ly/3c4NSdY

Subscribe:
More AWS videos http://bit.ly/2O3zS75
More AWS events videos http://bit.ly/316g9t4

#AWS #AWSEvents

Видео AWS re:Invent 2020: Top 5 best practices for data streaming with Amazon Kinesis канала AWS Events
Показать
Комментарии отсутствуют
Введите заголовок:

Введите адрес ссылки:

Введите адрес видео с YouTube:

Зарегистрируйтесь или войдите с
Информация о видео
5 февраля 2021 г. 23:44:06
00:27:48
Другие видео канала
AWS re:Invent 2019: [REPEAT 1] Building a streaming data platform with Amazon Kinesis (ANT326-R1)AWS re:Invent 2019: [REPEAT 1] Building a streaming data platform with Amazon Kinesis (ANT326-R1)AWS re:Invent 2020: VPC endpoints & PrivateLink: Optimize for security, cost & operationsAWS re:Invent 2020: VPC endpoints & PrivateLink: Optimize for security, cost & operationsBest Practices for Maximizing Your Data Warehouse Performance with Amazon RedshiftBest Practices for Maximizing Your Data Warehouse Performance with Amazon RedshiftEverything You Need to Know About Big Data: From Architectural Principles to Best PracticesEverything You Need to Know About Big Data: From Architectural Principles to Best PracticesAWS re:Invent 2020: AWS CDK: What’s new and what’s nextAWS re:Invent 2020: AWS CDK: What’s new and what’s nextAmazon Kinesis IntroductionAmazon Kinesis IntroductionAWS re:Invent 2020: Deep dive on AWS Lambda consumers for Amazon KinesisAWS re:Invent 2020: Deep dive on AWS Lambda consumers for Amazon KinesisHigh Performance Data Streaming with Amazon Kinesis: Best Practices and Common PitfallsHigh Performance Data Streaming with Amazon Kinesis: Best Practices and Common PitfallsAWS re:Invent 2018: High Performance Data Streaming with Amazon Kinesis: Best Practices (ANT322-R1)AWS re:Invent 2018: High Performance Data Streaming with Amazon Kinesis: Best Practices (ANT322-R1)AWS re:Invent 2020: AWS Fargate: Are serverless containers right for you?AWS re:Invent 2020: AWS Fargate: Are serverless containers right for you?EP-63 | AWS SQS vs AWS SNS vs AWS KINESIS | AWS RecapEP-63 | AWS SQS vs AWS SNS vs AWS KINESIS | AWS RecapAmazon Kinesis Data Streams FundamentalsAmazon Kinesis Data Streams FundamentalsAWS re:Invent 2020: AWS security: Where we’ve been, where we’re goingAWS re:Invent 2020: AWS security: Where we’ve been, where we’re goingAWS re:Invent 2020: Security best practices the AWS Well-Architected wayAWS re:Invent 2020: Security best practices the AWS Well-Architected wayAWS re:Invent 2019: [REPEAT 2] I didn’t know Amazon API Gateway did that (SVS212-R2)AWS re:Invent 2019: [REPEAT 2] I didn’t know Amazon API Gateway did that (SVS212-R2)Build data Lakes and Analytics on AWS: Patterns and Best PracticesBuild data Lakes and Analytics on AWS: Patterns and Best PracticesAWS re:Invent 2020: Build governance at scale with AWS Control TowerAWS re:Invent 2020: Build governance at scale with AWS Control TowerAWS re:Invent 2019: [REPEAT] Amazon Aurora storage demystified: How it all works (DAT309-R)AWS re:Invent 2019: [REPEAT] Amazon Aurora storage demystified: How it all works (DAT309-R)AWS re:Invent 2019: Deep dive and best practices for Amazon Redshift (ANT418)AWS re:Invent 2019: Deep dive and best practices for Amazon Redshift (ANT418)AWS re:Invent 2020: AWS Lambda – Part 1: Optimizing your serverless applicationsAWS re:Invent 2020: AWS Lambda – Part 1: Optimizing your serverless applications
Яндекс.Метрика