Stream (11) (Xử lý luồng dữ liệu) - Julian M. Kunkel
Bài giảng về xử lý luồng dữ liệu sử dụng Storm, Spark và Flink trong khuôn khổ môn học Phân tích dữ liệu lớn.
正在生成预览...
Stream Processing (with Storm, Spark, Flink) Lecture BigData Analytics Julian M. Kunkel julian.kunkel@googlemail.com University of Hamburg / German Climate Computing Center (DKRZ) 2017-01-27 Disclaimer: Big Data software is constantly updated, code samples may be outdated. Overview Spark Streaming Storm Architecture of Storm Programming and Execution Higher-Level APIs Apache Flink Summary Outline 1 Overview 2 Spark Streaming 3 Storm 4 Architecture of Storm 5 Programming and Execution 6 Higher-Level APIs 7 Apache Flink 8 Summary Julian M. Kunkel Lecture BigData Analytics, 2016 2 / 59 Overview Spark Streaming Storm Architecture of Storm Programming and Execution Higher-Level APIs Apache Flink Summary Stream Processing [12] Stream processing paradigm = dataflow programming Restrictions on the programming model: state and window ⇒ No view of the complete data at any time Uniform streaming: Operation is executed on all elements individually Windowing: sliding (overlapping) windows contain multiple elements Stateless vs. stateful (i.e., keep information for multiple elements) Programming Implement kernel functions (operations) and define data dependencies Advantages Pipelining of operations and massive parallelism is possible Data is in memory and often in CPU cache, i.e., in-memory computation Data dependencies of kernels are known and can be dealt at compile time Element Element Element Element stream Julian M. Kunkel Lecture BigData Analytics, 2016 3 / 59 Overview Spark Streaming Storm Architecture of Storm 1 Overview 2 Spark Streaming 3 Storm 4 Architecture of Storm 5 Programming and Execution 6 Higher-Level APIs 7 Apache Flink 8 Summary Julian M. Kunkel Programming and Execution Lecture BigData Analytics, 2016 Higher-Level APIs Apache Flink Summary 4 / 59 Overview Spark Streaming Storm Architecture of Storm Programming and Execution Higher-Level APIs Apache Flink Summary Spark S
… 下载原始文件以阅读完整文档。
- 文档名称
- Stream (11) (Xử lý luồng dữ liệu) - Julian M. Kunkel
- 学校 / 课程
- University of Hamburg · Big Data
- 内容
- Bài giảng này giới thiệu về xử lý luồng dữ liệu với Spark Streaming, Storm và Flink, bao gồm kiến trúc, lập trình và các API. Tài liệu giải thích các khái niệm cốt lõi như dataflow, state và windowing, cùng các ví dụ minh họa.
- 目录
- Overview
- Spark Streaming
- Storm
- Architecture of Storm
- Programming and Execution
- Higher-Level APIs
- Apache Flink
- Summary
- 页数
- 60 页
- 上传者
- Giang Le
常见问题
此文档免费吗?
是的。“Stream (11) (Xử lý luồng dữ liệu) - Julian M. Kunkel”是免费的 — 只需登录并点击“下载”即可获取原始文件。
这份文档有多少页?
该文档共有 60 页,适用于课程 Big Data。您可以在下载前进行在线预览。
我可以在下载前预览吗?
是的。您可以通过在线阅读器直接在本页面预览此文档,然后再决定是否下载。

评论 (0)
暂无评论。快来抢沙发吧!