• S3E32 - Streaming Data with Chris Bono

  • 2024/10/01
  • 再生時間: 57 分
  • ポッドキャスト

S3E32 - Streaming Data with Chris Bono

  • サマリー

  • In this episode of Spring Office Hours, hosts Dan Vega and DeShaun Carter interview Chris Bono, a Spring team member who works on Spring Cloud Dataflow and Spring Pulsar. They discuss streaming data, comparing Apache Kafka and Apache Pulsar, and explore the features and use cases of Spring Cloud Stream applications. Chris provides insights into the architecture of streaming applications, explains key concepts, and highlights the benefits of using Spring's abstraction layers for working with messaging systems.

    Show Notes:

    1. Introduction to Chris Bono and his work on Spring Cloud Dataflow and Spring Pulsar
    2. Comparison between Apache Kafka and Apache Pulsar
    3. Overview of Spring Cloud Stream and its binders
    4. Explanation of source, processor, and sink concepts in streaming applications
    5. Introduction to Spring Cloud Stream Applications project
    6. Discussion on Change Data Capture (CDC) and its importance in streaming
    7. Exploration of various sources, processors, and sinks available in Spring Cloud Stream Applications
    8. Mention of KEDA (Kubernetes Event-driven Autoscaling) and its potential use with Spring Cloud applications
    9. Upcoming features in Spring Pulsar 1.2 release
    10. Importance of community feedback and using GitHub discussions for feature requests and issue reporting

    The podcast provides a comprehensive overview of streaming data concepts and how Spring projects can be used to build efficient streaming applications.

    続きを読む 一部表示

あらすじ・解説

In this episode of Spring Office Hours, hosts Dan Vega and DeShaun Carter interview Chris Bono, a Spring team member who works on Spring Cloud Dataflow and Spring Pulsar. They discuss streaming data, comparing Apache Kafka and Apache Pulsar, and explore the features and use cases of Spring Cloud Stream applications. Chris provides insights into the architecture of streaming applications, explains key concepts, and highlights the benefits of using Spring's abstraction layers for working with messaging systems.

Show Notes:

  1. Introduction to Chris Bono and his work on Spring Cloud Dataflow and Spring Pulsar
  2. Comparison between Apache Kafka and Apache Pulsar
  3. Overview of Spring Cloud Stream and its binders
  4. Explanation of source, processor, and sink concepts in streaming applications
  5. Introduction to Spring Cloud Stream Applications project
  6. Discussion on Change Data Capture (CDC) and its importance in streaming
  7. Exploration of various sources, processors, and sinks available in Spring Cloud Stream Applications
  8. Mention of KEDA (Kubernetes Event-driven Autoscaling) and its potential use with Spring Cloud applications
  9. Upcoming features in Spring Pulsar 1.2 release
  10. Importance of community feedback and using GitHub discussions for feature requests and issue reporting

The podcast provides a comprehensive overview of streaming data concepts and how Spring projects can be used to build efficient streaming applications.

S3E32 - Streaming Data with Chris Bonoに寄せられたリスナーの声

カスタマーレビュー:以下のタブを選択することで、他のサイトのレビューをご覧になれます。