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Gangnam Style Hadoop Learning

A crazy video that is topping the music charts along with an amazing technology which is top of the IT industry - how about a mashup of both of them ?

So, here it is - a fun way to learn Hadoop - Gangnam style...from HadoopSphere.

Turn on your speakers to full volume and learn Hadoop like never before in this 90 second teaser video...



ps: what's with the dots on the elephant ?... that's his new polka dot weekend shirt : ))

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