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Spring for Apache Hadoop - framework to build applications faster


Spring has been the 'darling' of developers for a few years now.  With this post, we give you link for a ready reckoner to Spring for Apache Hadoop.


Spring for Apache Hadoop supports reading from and writing to HDFS, running various types of Hadoop jobs (Java MapReduce, Streaming), scripting and HBase, Hive and Pig interactions. An important goal is to provide excellent support for non-Java based developers to be productive using Spring for Apache Hadoop and not have to write any Java code to use the core feature set.”

Read the full Reference Manual here.
Refer Part IV in the pdf for sample application build.





More documentation at this link.


Top Image source: http://www.techweekeurope.co.uk/news/vmware-helps-java-developers-handle-big-data-with-spring-hadoop-63891/attachment/vmware-spring-hadoop


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