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Computing / Hadoop / Apache Software Foundation / Cloud infrastructure / Computer networks / Parallel computing / Apache Hadoop / Remote direct memory access / IWARP / InfiniBand / Apache Spark / Apache HBase
Date: 2015-03-25 05:38:57
Computing
Hadoop
Apache Software Foundation
Cloud infrastructure
Computer networks
Parallel computing
Apache Hadoop
Remote direct memory access
IWARP
InfiniBand
Apache Spark
Apache HBase

Accelerating Big Data Processing with Hadoop, Spark and Memcached Talk at HPC Advisory Council Switzerland Conference (Mar ‘15) by Dhabaleswar K. (DK) Panda The Ohio State University

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