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Big Things Conference 2020 starting today!

 I am back to the blog after some months where I have been pretty busy with interesting and challenging projects and coping with the new "normal" of the COVID-19 era. 

Lot of things happened and I have several stuff to share in the upcoming months.

Today I am going to speak at the Big Things 2020, the Data and AI conference. This year it moved virtual. Registration is still open and for free. I hope you have a chance to attend my talk at 7:45 PM GMT+1. I am going to discuss about Adversarial Attacks to Computer Vision systems and mitigation strategies. I hope to meet you there and do also some networking in the dedicated chat area. Follow-ups for this topic will be shared in this blog in the upcoming weeks.



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  1. Thanks admin for the nice post, Its really helpful to get lots of new information.

    Keto Specialist

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