You can choose several data access frameworks when building Java enterprise applications that work with relational databases. But what about big data? This hands-on introduction shows you how Spring Data makes it relatively easy to build applications across a wide range of new data access technologies such as NoSQL and Hadoop. Through several sample projects, you'll learn how Spring Data provides a consistent programming model that retains NoSQL-specific features and capabilities, and helps you develop Hadoop applications across a wide range of use-cases such as data analysis, event stream…mehr
You can choose several data access frameworks when building Java enterprise applications that work with relational databases. But what about big data? This hands-on introduction shows you how Spring Data makes it relatively easy to build applications across a wide range of new data access technologies such as NoSQL and Hadoop. Through several sample projects, you'll learn how Spring Data provides a consistent programming model that retains NoSQL-specific features and capabilities, and helps you develop Hadoop applications across a wide range of use-cases such as data analysis, event stream processing, and workflow. You'll also discover the features Spring Data adds to Spring's existing JPA and JDBC support for writing RDBMS-based data access layers. Learn about Spring's template helper classes to simplify the use ofdatabase-specific functionality Explore Spring Data's repository abstraction and advanced query functionality Use Spring Data with Redis (key/value store), HBase(column-family), MongoDB (document database), and Neo4j (graph database) Discover the GemFire distributed data grid solution Export Spring Data JPA-managed entities to the Web as RESTful web services Simplify the development of HBase applications, using a lightweight object-mapping framework Build example big-data pipelines with Spring Batch and Spring IntegrationHinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Dr. Mark Pollack has worked on Big Data solutions in High Energy Physics at Brookhaven National Laboratory and then moved to the financial services industry as a technical lead or architect for front office trading systems.Always interested in best practices and improving the software development process, Mark has been a core Spring (Java) developer since 2003 and founded its Microsoft counterpart, Spring.NET, in 2004.Mark now leads the Spring Data project that aims to simplify application development with new data technologies around Big Data and NoSQL databases. Oliver Gierke is engineer at SpringSource, a division of VMware, project lead of the Spring Data JPA, MongoDB and core module. He has been into developing enterprise applications and open source projects for over 6 years now. His working focus is centered around software architecture, Spring and persistence technologies. He is regularly speaking at German and international conferences as well as author of technology articles. Thomas Risberg is currently a member of the Spring Data team focusing on the MongoDB and JDBC Extensions projects. He is also a committer on the Spring Framework project, primarily contributing to enhancements of the JDBC framework portion. Thomas works on the VMware's Cloud Foundry team developing integration for the various frameworks and languages supported by the Cloud Foundry project. Thomas is co-author of "Professional Java Development with the Spring Framework” together with Rod Johnson, Juergen Hoeller, Alef Arendsen, and Colin Sampaleanu, published by Wiley in 2005. Jon Brisbin is a member of the SpringSource Spring Data team and focuses on providing developers useful libraries to facilitate next-generation data manipulation. He's helped bring elements of the Grails GORM object mapper to Java-based MongoDB applications, he's provided key integration components between the Riak datastore and the RabbitMQ message broker, he blogs and speaks on evented application models, and is working diligently to bridge the gap between the bleeding-edge non-blocking and traditional JVM-based applications. Michael Hunger has been passionate about software development for a long time. He is particularly interested in the people who develop software, software craftsmanship, programming languages, and improving code. For the last two years he has been working with Neo Technology on the Neo4j graph database. As the project lead of Spring Data Neo4j he helped developing the idea to become a convenient and complete solution for object graph mapping. He is also taking care of Neo4j cloud hosting efforts. As a developer he loves to work with many aspects of programming languages, learning new things every day, participating in exciting and ambitious open source projects and contributing to different programming related books. Michael is also an active editor and interviewer at InfoQ.
Inhaltsangabe
Foreword Preface Overview of the New Data Access Landscape How to Read This Book Conventions Used in This Book Using Code Examples Safari® Books Online How to Contact Us Acknowledgments Background Chapter 1: The Spring Data Project 1.1 NoSQL Data Access for Spring Developers 1.2 General Themes 1.3 The Domain 1.4 The Sample Code Chapter 2: Repositories: Convenient Data Access Layers 2.1 Quick Start 2.2 Defining Query Methods 2.3 Defining Repositories 2.4 IDE Integration Chapter 3: Type-Safe Querying Using Querydsl 3.1 Introduction to Querydsl 3.2 Generating the Query Metamodel 3.3 Integration with Spring Data Repositories Relational Databases Chapter 4: JPA Repositories 4.1 The Sample Project 4.2 The Traditional Approach 4.3 Bootstrapping the Sample Code 4.4 Using Spring Data Repositories Chapter 5: Type-Safe JDBC Programming with Querydsl SQL 5.1 The Sample Project and Setup 5.2 The QueryDslJdbcTemplate 5.3 Executing Queries 5.4 Insert, Update, and Delete Operations NoSQL Chapter 6: MongoDB: A Document Store 6.1 MongoDB in a Nutshell 6.2 Setting Up the Infrastructure Using the Spring Namespace 6.3 The Mapping Subsystem 6.4 MongoTemplate 6.5 Mongo Repositories Chapter 7: Neo4j: A Graph Database 7.1 Graph Databases 7.2 Neo4j 7.3 Spring Data Neo4j Overview 7.4 Modeling the Domain as a Graph 7.5 Persisting Domain Objects with Spring Data Neo4j 7.6 Combining Graph and Repository Power 7.7 Advanced Graph Use Cases in the Example Domain 7.8 Transactions, Entity Life Cycle, and Fetch Strategies 7.9 Advanced Mapping Mode 7.10 Working with Neo4j Server 7.11 Continuing From Here Chapter 8: Redis: A Key/Value Store 8.1 Redis in a Nutshell 8.2 Connecting to Redis 8.3 Object Conversion 8.4 Object Mapping 8.5 Atomic Counters 8.6 Pub/Sub Functionality 8.7 Using Spring's Cache Abstraction with Redis Rapid Application Development Chapter 9: Persistence Layers with Spring Roo 9.1 A Brief Introduction to Roo 9.2 Roo's Persistence Layers 9.3 Quick Start 9.4 A Spring Roo JPA Repository Example 9.5 A Spring Roo MongoDB Repository Example Chapter 10: REST Repository Exporter 10.1 The Sample Project Big Data Chapter 11: Spring for Apache Hadoop 11.1 Challenges Developing with Hadoop 11.2 Hello World 11.3 Hello World Revealed 11.4 Hello World Using Spring for Apache Hadoop 11.5 Scripting HDFS on the JVM 11.6 Combining HDFS Scripting and Job Submission 11.7 Job Scheduling Chapter 12: Analyzing Data with Hadoop 12.1 Using Hive 12.2 Using Pig 12.3 Using HBase Chapter 13: Creating Big Data Pipelines with Spring Batch and Spring Integration 13.1 Collecting and Loading Data into HDFS 13.2 Hadoop Workflows 13.3 Exporting Data from HDFS 13.4 Collecting and Loading Data into Splunk Data Grids Chapter 14: GemFire: A Distributed Data Grid 14.1 GemFire in a Nutshell 14.2 Caches and Regions 14.3 How to Get GemFire 14.4 Configuring GemFire with the Spring XML Namespace 14.5 Data Access with GemfireTemplate 14.6 Repository Usage 14.7 Continuous Query Support Bibliography Colophon
Foreword Preface Overview of the New Data Access Landscape How to Read This Book Conventions Used in This Book Using Code Examples Safari® Books Online How to Contact Us Acknowledgments Background Chapter 1: The Spring Data Project 1.1 NoSQL Data Access for Spring Developers 1.2 General Themes 1.3 The Domain 1.4 The Sample Code Chapter 2: Repositories: Convenient Data Access Layers 2.1 Quick Start 2.2 Defining Query Methods 2.3 Defining Repositories 2.4 IDE Integration Chapter 3: Type-Safe Querying Using Querydsl 3.1 Introduction to Querydsl 3.2 Generating the Query Metamodel 3.3 Integration with Spring Data Repositories Relational Databases Chapter 4: JPA Repositories 4.1 The Sample Project 4.2 The Traditional Approach 4.3 Bootstrapping the Sample Code 4.4 Using Spring Data Repositories Chapter 5: Type-Safe JDBC Programming with Querydsl SQL 5.1 The Sample Project and Setup 5.2 The QueryDslJdbcTemplate 5.3 Executing Queries 5.4 Insert, Update, and Delete Operations NoSQL Chapter 6: MongoDB: A Document Store 6.1 MongoDB in a Nutshell 6.2 Setting Up the Infrastructure Using the Spring Namespace 6.3 The Mapping Subsystem 6.4 MongoTemplate 6.5 Mongo Repositories Chapter 7: Neo4j: A Graph Database 7.1 Graph Databases 7.2 Neo4j 7.3 Spring Data Neo4j Overview 7.4 Modeling the Domain as a Graph 7.5 Persisting Domain Objects with Spring Data Neo4j 7.6 Combining Graph and Repository Power 7.7 Advanced Graph Use Cases in the Example Domain 7.8 Transactions, Entity Life Cycle, and Fetch Strategies 7.9 Advanced Mapping Mode 7.10 Working with Neo4j Server 7.11 Continuing From Here Chapter 8: Redis: A Key/Value Store 8.1 Redis in a Nutshell 8.2 Connecting to Redis 8.3 Object Conversion 8.4 Object Mapping 8.5 Atomic Counters 8.6 Pub/Sub Functionality 8.7 Using Spring's Cache Abstraction with Redis Rapid Application Development Chapter 9: Persistence Layers with Spring Roo 9.1 A Brief Introduction to Roo 9.2 Roo's Persistence Layers 9.3 Quick Start 9.4 A Spring Roo JPA Repository Example 9.5 A Spring Roo MongoDB Repository Example Chapter 10: REST Repository Exporter 10.1 The Sample Project Big Data Chapter 11: Spring for Apache Hadoop 11.1 Challenges Developing with Hadoop 11.2 Hello World 11.3 Hello World Revealed 11.4 Hello World Using Spring for Apache Hadoop 11.5 Scripting HDFS on the JVM 11.6 Combining HDFS Scripting and Job Submission 11.7 Job Scheduling Chapter 12: Analyzing Data with Hadoop 12.1 Using Hive 12.2 Using Pig 12.3 Using HBase Chapter 13: Creating Big Data Pipelines with Spring Batch and Spring Integration 13.1 Collecting and Loading Data into HDFS 13.2 Hadoop Workflows 13.3 Exporting Data from HDFS 13.4 Collecting and Loading Data into Splunk Data Grids Chapter 14: GemFire: A Distributed Data Grid 14.1 GemFire in a Nutshell 14.2 Caches and Regions 14.3 How to Get GemFire 14.4 Configuring GemFire with the Spring XML Namespace 14.5 Data Access with GemfireTemplate 14.6 Repository Usage 14.7 Continuous Query Support Bibliography Colophon
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