返回首页
苏宁会员
购物车 0
易付宝
手机苏宁

服务体验

店铺评分与同行业相比

用户评价:----

物流时效:----

售后服务:----

  • 服务承诺: 正品保障
  • 公司名称:
  • 所 在 地:

  • 流式系统(影印版) TylerAkidau,SlavaChernyak,ReuvenLax 著 专业科技 文轩网
  • 新华书店正版
    • 作者: TylerAkidau,SlavaChernyak,ReuvenLax著
    • 出版社: 东南大学出版社
    • 出版时间:2019-06-01 00:00:00
    送至
  • 由""直接销售和发货,并提供售后服务
  • 加入购物车 购买电子书
    服务

    看了又看

    商品预定流程:

    查看大图
    /
    ×

    苏宁商家

    商家:
    文轩网图书旗舰店
    联系:
    • 商品

    • 服务

    • 物流

    搜索店内商品

    商品分类

         https://product.suning.com/0070067633/11555288247.html

     

    商品参数
    • 作者: TylerAkidau,SlavaChernyak,ReuvenLax著
    • 出版社:东南大学出版社
    • 出版时间:2019-06-01 00:00:00
    • 版次:1
    • 印次:1
    • 字数:431千字
    • 页数:329
    • 开本:其他
    • 装帧:平装
    • ISBN:9787564183677
    • 国别/地区:中国
    • 版权提供:东南大学出版社

    流式系统(影印版)

    作  者:TylerAkidau,SlavaChernyak,ReuvenLax 著
    定  价:128
    出 版 社:东南大学出版社
    出版日期:2019年06月01日
    页  数:329
    装  帧:平装
    ISBN:9787564183677
    主编推荐

    内容简介

    在传统的数据处理流程中,总是先收集数据,然后将数据放到DB中。当人们需要的时候通过DB对数据做query,得到答案或进行相关的处理。这样看起来虽然很好合理,但是结果却很好的紧凑,尤其是在一些实时搜索应用环境中的某些具体问题,类似于MapReduce方式的离线处理并不能很好地解决问题。这就引出了一种新的数据计算结构---流计算方式。它可以很好地对大规模流动数据在不断变化的运动过程中实时地进行分析,捕捉到可能有用的信息,并把结果发送到下一计算节点。本书讲解流计算原理。

    作者简介

    泰勒?阿克道,Google的不错软件工程师,担任着Data ProcessingLanguages&Systems小组技术负责人的职务。他也是APacheBeam PMC的创始成员。

    精彩内容

    目录
    Preface Or: What Are You Getting Yourself Into Here?
    Part Ⅰ.The Beam Model
    1.Streaming 101
    Terminology: What Is Streaming?
    On the Greatly Exaggerated Limitations of Streaming
    Event Time Versus Processing Time
    Data Processing Patterns
    Bounded Data
    Unbounded Data: Batch
    Unbounded Data: Streaming
    Summary
    2.The What, Where, When, and How of Data Processing
    Roadmap
    Batch Foundations: What and Where
    What: Transformations
    Where: Windowing
    Going Streaming: When and How
    When: The Wonderful Thing About Triggers Is Triggers Are Wonderful Things!
    When: Watermarks
    When: Early/On-Time~Late Triggers FTWI
    When: Allowed Lateness (i.e., Garbage Collection
    How: Accumulation
    Summary
    3.Watermarks
    Definition
    Source Watermark Creation
    Perfect Watermark Creation
    Heuristic Watermark Creation
    Watermark Propagation
    Understanding Watermark Propagation
    Watermark Propagation and Output Timestamps
    The Tricky Case of Overlapping Windows
    Percentile Watermarks
    Processing-Time Watermarks
    Case Studies
    Case Study: Watermarks in Google Cloud Dataflow
    Case Study: Watermarks in Apache Flink
    Case Study: Source Watermarks for Google Cloud Pub/Sub
    Summary
    4.Advanced Windowing
    When/Where: Processing-Time Windows
    Event-Time Windowing
    Processing-Time Windowing via Triggers
    Processing-Time Windowing via Ingress Time
    Where: Session Windows
    Where: Custom Windowing
    Variations on Fixed Windows
    Variations on Session Windows
    One Size Does Not Fit All
    Summary
    5.Exactly-Once and Side Effects
    Why Exactly Once Matters
    Accuracy Versus Completeness
    Side Effects
    Problem Definition
    Ensuring Exactly Once in Shuffle
    Addressing Determinism
    Performance
    Graph Optimization
    Bloom Filters
    Garbage Collection
    Exactly Once in Sources
    Exactly Once in Sinks
    Use Cases
    Example Source: Cloud Pub/Sub
    Example Sink: Files
    Example Sink: Google BigQuery
    Other Systems
    Apache Spark Streaming
    Apache Flink
    Summary
    Part Ⅱ.Streams and Tables
    6.Streams and Tables
    Stream-and-Table Basics Or: a Spe Theory of Stream and Table Relativity
    Toward a General Theory of Stream and Table Relativity
    Batch Processing Versus Streams and Tables
    A Streams and Tables Analysis of MapReduce
    Reconciling with Batch Processing
    What, Where, When, and How in a Streams and Tables World
    What: Transformations
    Where: Windowing
    When: Triggers
    How: Accumulation
    A Holistic View Of Streams and Tables in the Beam Model
    A General Theory of Stream and Table Relativity
    Summary
    7.The Practicalities of Persistent State
    Motivation
    The Inevitability of Failure
    Correctness and Efficiency
    Implicit State
    Raw Grouping
    Incremental Combining
    Generalized State
    Case Study: Conversion Attribution
    Conversion Attribution with Apache Beam
    Summary
    8.Streaming SQL
    What Is Streaming SQL?
    Relational Algebra
    Time-Varying Relations
    Streams and Tables
    Looking Backward: Stream and Table Biases
    The Beam Model: A Stream-Biased Approach
    The SQL Model: A Table-Biased Approach
    Looking Forward: Toward Robust Streaming SQL
    Stream and Table Selection
    Temporal Operators
    Summary
    9.Streaming Joins
    All Your loins Are Belong to Streaming
    Unwindowed loins
    FULL OUTER
    LEFT OUTER
    RIGHT OUTER
    INNER
    ANTI
    SEMI
    Windowed loins
    Fixed Windows
    Temporal Validity
    Summary
    10.The Evolution of Large-Scale Data Processing
    MapReduce
    Hadoop
    Flume
    Storm
    Spark
    MillWheel
    Kafka
    Cloud Dataflow
    Flink
    Beam
    Summary
    Index

    售后保障

    最近浏览

    猜你喜欢

    该商品在当前城市正在进行 促销

    注:参加抢购将不再享受其他优惠活动

    x
    您已成功将商品加入收藏夹

    查看我的收藏夹

    确定

    非常抱歉,您前期未参加预订活动,
    无法支付尾款哦!

    关闭

    抱歉,您暂无任性付资格

    此时为正式期SUPER会员专享抢购期,普通会员暂不可抢购