@0xCodez: SNAPCHAT PAID $150,000,000 FOR LOOKSERY - A STARTUP IN DEEP LEARNING COMPUTER VISION. This 1-hour MIT lecture on "Build…
Summary
Snapchat paid $150 million for Looksery, a deep learning computer vision startup. A free MIT lecture teaches building neural networks from scratch.
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SNAPCHAT PAID $150,000,000 FOR LOOKSERY - A STARTUP IN DEEP LEARNING COMPUTER VISION.
This 1-hour MIT lecture on “Building Neural Networks” will teach you how to build the same project from scratch.
Watch it today. It’s worth more than any $500 AI course on internet. https://t.co/ApWDRmeYDV
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