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  • 设计数据密集型应用(影印版) (英)马丁·科勒普曼 著 专业科技 文轩网
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    • 作者: Martin Kleppmann著
    • 出版社: 东南大学出版社
    • 出版时间:2018-01-01 00:00:00
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    • 作者: Martin Kleppmann著
    • 出版社:东南大学出版社
    • 出版时间:2018-01-01 00:00:00
    • 装帧:平装
    • ISBN:9787564173852
    • 国别/地区:中国
    • 版权提供:东南大学出版社

    设计数据密集型应用(影印版)

    作  者:(英)马丁·科勒普曼 著
    定  价:138
    出 版 社:东南大学出版社
    出版日期:2017年10月01日
    页  数:616
    装  帧:平装
    ISBN:9787564173852
    主编推荐

    内容简介

    今天,数据是系统设计的众多挑战中非常核心的部分。我们需要解决许多难题,例如可伸缩性、一致性、可靠性、效率以及可维护性。此外,工具的选择纷繁复杂,包括关系数据库、NoSQL数据库、流式处理器或批处理器以及消息中间件。对于应用程序来说,哪个才是正确的选择?如何才能搞清楚所有这些时髦词?在这本务实且全面的指导之作中,作者Martin Kleppmann会带你领略这一领域的多样性,他会分析各种数据处理工具和数据存储工具的优缺点。软件在不断变化,不过基本的原则没有变。通过《设计数据密集型应用(影印版)》,软件工程师和架构师会学到如何在实际中应用这些原则,如何在现代应用程序中充分使用数据。

    作者简介

    精彩内容

    目录
    Preface
    Part I.Foundations of Data Systems
    1.Reliable,Scalable,and Maintainable Applications 3
    Thinking About Data Systems 4
    Reliability 6
    Hardware Faults 7
    Software Errors 8
    Human Errors 9
    How Important Is Reliability? 10
    Scalability 10
    Describing Load 11
    Describing Performance 13
    Approaches for Coping with Load 17
    Maintainability 18
    Operability:Making Life Easy for Operations 19
    Simplicity:Managing Complexity 20
    Evolvability:Making Change Easy 21
    Summary 22
    2.Data Models and Query Languages 27
    Relational Model Versus Document Model 28
    The Birth of NoSQL 29
    The Object-Relational Mismatch 29
    Many-to-One and Many-to-Many Relationships 33
    Are Document Databases Repeating History? 36
    Relational Versus Document Databases Today 38
    Query Languages for Data 42
    Declarative Queries on the Web 44
    MapReduce Querying 46
    Graph-Like Data Models 49
    Property Graphs 50
    The Cypher Query Language 52
    Graph Queries in SQL 53
    Triple-Stores and SPARQL 55
    The Foundation:Datalog 60
    Summary 63
    3.Storage and Retrieval 69
    Data Structures That Power Your Database 70
    Hash Indexes 72
    SSTables and LSM-Trees 76
    B-Trees 79
    Comparing B-Trees and LSM-Trees 83
    Other Indexing Structures 85
    Transaction Processing or Analytics? 90
    Data Warehousing 91
    Stars and Snowflakes:Schemas for Analytics 93
    Column-Oriented Storage 95
    Column Compression 97
    Sort Order in Column Storage 99
    Writing to Column-Oriented Storage 101
    Aggregation:Data Cubes and Materialized Views 101
    Summary 103
    4.Encoding and Evolution 111
    Formats for Encoding Data 112
    Language-Specific Formats 113
    JSON,XML,and Binary Variants 114
    Thrift and Protocol Buffers 117
    Avro 122
    The Merits of Schemas 127
    Modes of Dataflow 128
    Dataflow Through Databases 129
    Dataflow Through Services:REST and RPC 131
    Message-Passing Dataflow 136
    Summary 139
    Part II.Distributed Data
    5.Replication 151
    Leaders and Followers 152
    Synchronous Versus Asynchronous Replication 153
    Setting Up New Followers 155
    Handling Node Outages 156
    Implementation of Replication Logs 158
    Problems with Replication Lag 161
    Reading Your Own Writes 162
    Monotonic Reads 164
    Consistent Prefix Reads 165
    Solutions for Replication Lag 167
    Multi-Leader Replication 168
    Use Cases for Multi-Leader Replication 168
    Handling Write Conflicts 171
    Multi-Leader Replication Topologies 175
    Leaderless Replication 177
    Writing to the Database When a Node Is Down 177
    Limitations of Quorum Consistency 181
    Sloppy Quorums and Hinted Handoff 183
    Detecting Concurrent Writes 184
    Summary 192
    6.Partitioning 199
    Partitioning and Replication 200
    Partitioning of Key-Value Data 201
    Partitioning by Key Range 202
    Partitioning by Hash of Key 203
    Skewed Workloads and Relieving Hot Spots 205
    Partitioning and Secondary Indexes 206
    Partitioning Secondary Indexes by Document 206
    Partitioning Secondary Indexes by Term 208
    Rebalancing Partitions 209
    Strategies for Rebalancing 210
    Operations:Automatic or Manual Rebalancing 213
    Request Routing 214
    Parallel Query Execution 216
    Summary 216
    7.Transactions 221
    The Slippery Concept of a Transaction 222
    The Meaning of ACID 223
    Single-Object and Multi-Object Operations 228
    Weak Isolation Levels 233
    Read Committed 234
    Snapshot Isolation and Repeatable Read 237
    Preventing Lost Updates 242
    Write Skew and Phantoms 246
    Serializability 251
    Actual Serial Execution 252
    Two-Phase Locking (2PL) 257
    Serializable Snapshot Isolation (SSI) 261
    Summary 266
    8.The Trouble with Distributed Systems 273
    Faults and Partial Failures 274
    Cloud Computing and Supercomputing 275
    Unreliable Networks 277
    Network Faults in Practice 279
    Detecting Faults 280
    Timeouts and Unbounded Delays 281
    Synchronous Versus Asynchronous Networks 284
    Unreliable Clocks 287
    Monotonic Versus Time-of-Day Clocks 288
    Clock Synchronization and Accuracy 289
    Relying on Synchronized Clocks 291
    Process Pauses 295
    Knowledge,Truth,and Lies 300
    The Truth Is Defined by the Majority 300
    Byzantine Faults 304
    System Model and Reality 306
    Summary 310
    9.Consistency and Consensus 321
    Consistency Guarantees 322
    Linearizability 324
    What Makes a System Linearizable? 325
    Relying on Linearizability 330
    Implementing Linearizable Systems 332
    The Cost of Linearizability 335
    Ordering Guarantees 339
    Ordering and Causality 339
    Sequence Number Ordering 343
    Total Order Broadcast 348
    Distributed Transactions and Consensus 352
    Atomic Commit and Two-Phase Commit (2PC) 354
    Distributed Transactions in Practice 360
    Fault-Tolerant Consensus 364
    Membership and Coordination Services 370
    Summary 373
    Part III.Derived Data
    10.Batch Processing 389
    Batch Processing with Unix Tools 391
    Simple Log Analysis 391
    The Unix Philosophy 394
    MapReduce and Distributed Filesystems 397
    MapReduce Job Execution 399
    Reduce-Side Joins and Grouping 403
    Map-Side Joins 408
    The Output of Batch Workflows 411
    Comparing Hadoop to Distributed Databases 414
    Beyond MapReduce 419
    Materialization of Intermediate State 419
    Graphs and Iterative Processing 424
    High-Level APIs and Languages 426
    Summary 429
    11.Stream Processing 439
    Transmitting Event Streams 440
    Messaging Systems 441
    Partitioned Logs 446
    Databases and Streams 451
    Keeping Systems in Sync 452
    Change Data Capture 454
    Event Sourcing 457
    State,Streams,and Immutability 459
    Processing Streams 464
    Uses of Stream Processing 465
    Reasoning About Time 468
    Stream Joins 472
    Fault Tolerance 476
    Summary 479
    12.The Future of Data Systems 489
    Data Integration 490
    Combining Specialized Tools by Deriving Data 490
    Batch and Stream Processing 494
    Unbundling Databases 499
    Composing Data Storage Technologies 499
    Designing Applications Around Dataflow 504
    Observing Derived State 509
    Aiming for Correctness 515
    The End-to-End Argument for Databases 516
    Enforcing Constraints 521
    Timeliness and Integrity 524
    Trust,but Verify 528
    Doing the Right Thing 533
    Predictive Analytics 533
    Privacy and Tracking 536
    Summary 543
    Glossary 553
    Index 559

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