Scaling Big Data with Hadoop and Solr - by Hrishikesh Vijay Karambelkar

Scaling Big Data with Hadoop and Solr - by Hrishikesh Vijay Karambelkar

Regular price
Checking stock...
Regular price
Checking stock...
World of Books

At World of Books, you’ll find millions of preloved reads at great prices, from bestsellers to hidden gems. Every book you buy saves money and helps reduce waste, so you can read more for less while giving stories a second life.

The feel-good place to buy books
  • Free US shipping over $15
  • Buying preloved emits 41% less CO2 than new
  • Millions of affordable books
  • Give your books a new home - sell them back to us!

Scaling Big Data with Hadoop and Solr - by Hrishikesh Vijay Karambelkar

0
Hrishikesh Vijay Karambelkar is an enterprise architect who has been developing a blend of technical and entrepreneurial experience for more than 14 years. His core expertise lies in working on multiple subjects, which include big data, enterprise search, semantic web, link data analysis, analytics, and he also enjoys architecting solutions for the next generation of product development for IT organizations. He spends most of his time at work, solving challenging problems faced by the software industry. Currently, he is working as the Director of Data Capabilities at The Digital Group. In the past, Hrishikesh has worked in the domain of graph databases; some of his work has been published at international conferences, such as VLDB, ICDE, and others. He has also written Scaling Apache Solr, published by Packt Publishing. He enjoys travelling, trekking, and taking pictures of birds living in the dense forests of India. He can be reached at http://hrishikesh.karambelkar.co.in/.
SKU Unavailable
ISBN 13 9781783553396
ISBN 10 1783553391
Title Scaling Big Data with Hadoop and Solr -
Author Hrishikesh Vijay Karambelkar
Condition Unavailable
Publisher Packt Publishing Limited
Year published 2023-04-02
Number of pages 166
Cover note Book picture is for illustrative purposes only, actual binding, cover or edition may vary.