Good news! Our friend site will continue updating latest books at

Spring Data

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 Integration

Table of Contents
Part I: Background
Chapter 1. The Spring Data Project
Chapter 2. Repositories: Convenient Data Access Layers
Chapter 3. Type-Safe Querying Using Querydsl

Part II: Relational Databases
Chapter 4. JPA Repositories
Chapter 5. Type-Safe JDBC Programming with Querydsl SQL

Chapter 6. MongoDB: A Document Store
Chapter 7. Neo4j: A Graph Database
Chapter 8. Redis: A Key/Value Store

Part IV: Rapid Application Development
Chapter 9. Persistence Layers with Spring Roo
Chapter 10. REST Repository Exporter

Part V: Big Data
Chapter 11. Spring for Apache Hadoop
Chapter 12. Analyzing Data with Hadoop
Chapter 13. Creating Big Data Pipelines with Spring Batch and Spring Integration

Part VI: Data Grids
Chapter 14. GemFire: A Distributed Data Grid

Book Details

  • Paperback: 316 pages
  • Publisher: O’Reilly Media (October 2012)
  • Language: English
  • ISBN-10: 1449323952
  • ISBN-13: 978-1449323950
Download [16.0 MiB]

You may also like...

Leave a Reply