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Data Unlocked Bonanza at Packt Publishing!

You're still in time to get some interesting Machine Learning and AI eBooks and videos for $10 each at Packt Publishing.


This promotion covers also my book "Hands-on Deep Learning with Apache Spark".
What are you waiting for? Go and check out for titles before the offer expires!
By the way, if you want to listen to follow-ups on topics covered by my book and get in touch with me in person, I am going to give talks at the following events in October and November:

Big Data Days, Moscow, Russian Federation, October 8th-10th
Spark+AI Summit Europe, Amsterdam, Netherlands, October 16th-17th
Big Things Conference, Madrid, Spain, November 20th-21st

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