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You're reading from  Deep Learning with Hadoop

Product typeBook
Published inFeb 2017
Reading LevelIntermediate
PublisherPackt
ISBN-139781787124769
Edition1st Edition
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Author (1)
Dipayan Dev
Dipayan Dev
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Dipayan Dev

Dipayan Dev has completed his M.Tech from National Institute of Technology, Silchar with a first class first and is currently working as a software professional in Bengaluru, India. He has extensive knowledge and experience in non-relational database technologies, having primarily worked with large-scale data over the last few years. His core expertise lies in Hadoop Framework. During his postgraduation, Dipayan had built an infinite scalable framework for Hadoop, called Dr. Hadoop, which got published in top-tier SCI-E indexed journal of Springer (http://link.springer.com/article/10.1631/FITEE.1500015). Dr. Hadoop has recently been cited by Goo Wikipedia in their Apache Hadoop article. Apart from that, he registers interest in a wide range of distributed system technologies, such as Redis, Apache Spark, Elasticsearch, Hive, Pig, Riak, and other NoSQL databases. Dipayan has also authored various research papers and book chapters, which are published by IEEE and top-tier Springer Journals. To know more about him, you can also visit his LinkedIn profile https://www.linkedin.com/in/dipayandev.
Read more about Dipayan Dev

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Distributed deep learning and Hadoop


From the earlier sections of this chapter, we already have enough insights on why and how the relationship of deep learning and big data can bring major changes to the research community. Also, a centralized system is not going to help this relationship substantially with the course of time. Hence, distribution of the deep learning network across multiple servers has become the primary goal of the current deep learning practitioners. However, dealing with big data in a distributed environment is always associated with several challenges. Most of those are explained in-depth in the previous section. These include dealing with higher dimensional data, data with too many features, amount of memory available to store, processing the massive Big datasets, and so on. Moreover, Big datasets have a high computational resource demand on CPU and memory time. So, the reduction of processing time has become an extremely significant criterion. The following are the...

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Deep Learning with Hadoop
Published in: Feb 2017Publisher: PacktISBN-13: 9781787124769

Author (1)

author image
Dipayan Dev

Dipayan Dev has completed his M.Tech from National Institute of Technology, Silchar with a first class first and is currently working as a software professional in Bengaluru, India. He has extensive knowledge and experience in non-relational database technologies, having primarily worked with large-scale data over the last few years. His core expertise lies in Hadoop Framework. During his postgraduation, Dipayan had built an infinite scalable framework for Hadoop, called Dr. Hadoop, which got published in top-tier SCI-E indexed journal of Springer (http://link.springer.com/article/10.1631/FITEE.1500015). Dr. Hadoop has recently been cited by Goo Wikipedia in their Apache Hadoop article. Apart from that, he registers interest in a wide range of distributed system technologies, such as Redis, Apache Spark, Elasticsearch, Hive, Pig, Riak, and other NoSQL databases. Dipayan has also authored various research papers and book chapters, which are published by IEEE and top-tier Springer Journals. To know more about him, you can also visit his LinkedIn profile https://www.linkedin.com/in/dipayandev.
Read more about Dipayan Dev