Tech Mahindra Hadoop Interview Questions

Tech Mahindra Hadoop Interview Questions


Tech Mahindra has its own Hortonworks certified analytics platform for big data solutions popularly known as TAP (Tech Mahindra Analytics Platform). TAP addresses the changing requirements of clients with a wide range of use cases in big data analytics. The technology initiative TAP being certified by Hortonworks further adds value to this asset and helps deliver efficient analytics solutions on HWX Hadoop distribution platform.

Hadoop Interview Questions asked at Tech Mahindra

"While Apache Hadoop steps in as an efficient management layer, the need for a value added intelligent analytics layer is still at large and TAP fits in perfectly as a value add of intelligent analytics. This recognition strengthens our offerings in TAP and recognizes its platform based approach towards deploying Big Data as a superior way to address today’s analytics needs of the industry" said Sanjay Joshi, Senior Vice President & Global Head of BI, Big Data & Analytics, Tech Mahindra.

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As of 18th August 2016, Glassdoor listed 97 Hadoop job openings at Tech Mahindra.

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