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Compress Your Deep Learning Models with No Code, No Hassle

Nota’s (Free) NetsPresso Compression Toolkit

You’ve worked hard to build a deep learning model that performs well. Now it’s time to take it out of the massive GPU centers and into the standard everyday devices it’ll be used on. Let’s see how it performs!

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Data Scientists must think like an artist when finding a solution when creating a piece of code. ⚪️ Artists enjoy working on interesting problems, even if there is no obvious answer ⚪️ linktr.ee/mlearning 🔵 Follow to join our 18K+ Unique DAILY Readers 🟠

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Andre Ye

Andre Ye

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