Hadoop权威指南 (第4版 英文影印版)

Hadoop权威指南 (第4版 英文影印版) pdf epub mobi txt 电子书 下载 2025

出版者:东南大学出版社
作者:Tom White
出品人:
页数:726
译者:
出版时间:2015-8
价格:99.00
装帧:平装
isbn号码:9787564159177
丛书系列:
图书标签:
  • hadoop
  • Programming
  • BigData
  • Hadoop
  • 大数据
  • 分布式存储
  • 分布式计算
  • MapReduce
  • YARN
  • HDFS
  • 数据分析
  • 云计算
  • 技术经典
想要找书就要到 小美书屋
立刻按 ctrl+D收藏本页
你会得到大惊喜!!

具体描述

《Hadoop权威指南(第4版)(修订版)(影印版)(英文版)》作者Tom White增加了关于YARN和一些Hadoop相关项目,如Parquet、Flume、Crunch和Spark的新章节。你将会了解到Hadoop版本的最新变化,并且研究在医疗健康系统和基因数据处理中Hadoop的应用案例。

作者简介

怀特(Tom White),Tom White是Cloudera的工程师和Apache软件基金会的成员,从2007年起就是Apache Hadoop的代码提交者。他在oreilly.com、java.net和IBM的developerWorks写了大量文章,并且经常在产业大会上作关于Hadoop的演讲。

目录信息

Foreword
Preface
Part Ⅰ.Hadoop Fundamentals
1.MeetHadoop
Data!
Data Storage and Analysis
Querying All Your Data
Beyond Batch
Comparison with Other Systems
Relational Database Management Systems
Grid Computing
Volunteer Computing
A Brief History of Apache Hadoop
What's in This Book?
2.MapReduce
A Weather Dataset
Data Format
Analyzing the Data with Unix Tools
Analyzing the Data with Hadoop
Map and Reduce
Java MapReduce
Scaling Out
Data Flow
Combiner Functions
Running a Distributed MapReduce Job
Hadoop Streaming
Ruby
Python
3.The Hadoop Distributed Filesystem
The Design of HDFS
HDFS Concepts
Blocks
Namenodes and Datanodes
Block Caching
HDFS Federation
HDFS High Availability
The Command—Line Interface
Basic Filesystem Operations
Hadoop Filesystems
Interfaces
The Java Interface
Reading Data from a Hadoop URL
Reading Data Using the FileSystem API
Writing Data
Directories
Querying the Filesystem
Deleting Data
Data Flow
Anatomy of a File Read
Anatomy of a File Write
Coherency Model
Parallel Copying with distcp
Keeping an HDFS Cluster Balanced
4.YARN
Anatomy of a YARN Application Run
Resource Requests
Application Lifespan
Building YARN Applications
YARN Compared to MapReduce 1
Scheduling in YARN
Scheduler Options
Capacity Scheduler Configuration
Fair Scheduler Configuration
Delay Scheduling
Dominant Resource Fairness
Further Reading
5.Hadoop I/O
Data Integrity
Data Integrity in HDFS
LocaIFileSystem
ChecksumFileSystem
Compression
Codecs
Compression and Input Splits
Using Compression in MapReduce
Serialization
The Writable Interface
Writable Classes
Implementing a Custom Writable
Serialization Frameworks
File—Based Data Structures
SequenceFile
MapFile
Other File Formats and Column—Oriented Formats
Part Ⅱ.MapReduce
6.Developing a MapReduce Application
The Conflguration API
Combining Resources
Variable Expansion
Setting Up the Development Environment
Managing Configuration
GenericOptionsParser, Tool, and ToolRunner
Writing a Unit Test with MRUnit
Mapper
Reducer
Running Locally on Test Data
Running a Job in a Local Job Runner
Testing the Driver
Running on a Cluster
Packaging a Job
Launching a Job
The MapReduce Web UI
Retrieving the Results
Debugging a Job
Hadoop Logs
Remote Debugging
Tuning a Job
Profiling Tasks
MapReduce Workflows
Decomposing a Problem into MapReduce Jobs
IobControl
Apache Oozie
7.How MapReduce Works
Anatomy ofa MapReduce Job Run
Job Submission
Job Initialization
Task Assignmenl
Task Execution
Progress and Status Updates
Job Completion
Failures
Task Failure
Application Master Failure
Node Manager Failure
Resource Manager Failure
Shuffle and Sort
The Map Side
The Reduce Side
Configuration Tuning
Task Execution
The Task Execution Environment
Speculative Execution
Output Committers
8.MapReduce Typesand Formats
MapReduce Types
The Default MapReduce Job
Input Formats
Input Splits and Records
Text Input
Binary Input
Multiple Inputs
Database Input (and Output)
Output Formats
Text Output
Binary Output
Multiple Outputs
Lazy Output
Database Output
……
9.MapReduce Features
Part Ⅲ.Hadoop Operations
10.Setting Up a Hadoop Cluster
11.Administering Hadoop
Part Ⅳ.RelatedProjects
12.Avro
13.Parquet
14.Flume
15.Sqoop
16.Pig
17.Hive
18.Crunch
19.Spark
20.HBase
21.ZooKeeper
Part Ⅴ.Case Studies
22.Composable Data at Cerner
23.Biological Data Saence: Saving Lives with Software
24.Cascading
A.Installing Apache Hadoop
B.Cloudera's Distribution Including Apache Hadoop
C.Preparing the NCDC Weather Data
D.The Old and New Java MapReduce APls
Index
· · · · · · (收起)

读后感

评分

其实也不算全部读完了,读它主要是为了技术选型,考虑升级持久层架构、提高系统可扩展性,仔细研读了前几章,对Hadoop、MapReduce、HDFS的模型、机制、使用场景有了一定了解。后面几章及其生态圈内的其他项目抱着了解的心态简单浏览了一下。整体感觉还行,至少从我看过的章节来...  

评分

书中没有透露太多实现架构方面的细节,更多的是从使用者的角度上介绍了Hadoop的各种知识,包括MapReduce, HDFS, Hive, Pig, HBase, ZooKeeper。几乎涉及了Hadoop的所有关于使用方面的知识,包括安装和使用。 你甚至可以直接在自己的电脑上装上一个Hadoop,对着书中的例子实际演...  

评分

看了几章中文版的,各种错误,太低级,实在是看不下去了。 建议还是看原版吧。 译者们的脸皮可真厚,英文译不明白也就罢了,中文都组织的不通顺,好意思吗!! 什么叫 “但是,......,但是”啊,“但是体”啊。  

评分

买了第一版,时间太紧,没来得及看,后来出了个号称修订升级的第二版,毫不犹豫又买了,后来听说第二版比第一版翻译得好,心中窃喜,再后来看了第二版,我震惊了,我TM就是一傻子,放着好好的英文版不看,赶什么时髦买中文版呢。在这个神奇的国度,牛奶里放的是三聚氰胺,火腿...  

评分

书中没有透露太多实现架构方面的细节,更多的是从使用者的角度上介绍了Hadoop的各种知识,包括MapReduce, HDFS, Hive, Pig, HBase, ZooKeeper。几乎涉及了Hadoop的所有关于使用方面的知识,包括安装和使用。 你甚至可以直接在自己的电脑上装上一个Hadoop,对着书中的例子实际演...  

用户评价

评分

评分

评分

评分

评分

本站所有内容均为互联网搜索引擎提供的公开搜索信息,本站不存储任何数据与内容,任何内容与数据均与本站无关,如有需要请联系相关搜索引擎包括但不限于百度google,bing,sogou

© 2025 book.quotespace.org All Rights Reserved. 小美书屋 版权所有