@NVIDIAAI: You're welcome

X AI KOLs Timeline Models

Summary

NVIDIA AI releases a 75B MoE model (9.3B active) compressed from Nemotron-3-Super-120B using the Iterative Puzzle framework, with 1M token context support.

You're welcome 👊
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Cached at: 07/08/26, 03:40 AM

You’re welcome 👊

mr-r0b0t (@mr_r0b0t): @NVIDIAAI just gifted us a 75B MoE 🤩🤩🤩

nvidia/NVIDIA-Nemotron-Labs-3-Puzzle-75B-A9B-NVFP4

75.3B total / 9.3B active compressed from Nemotron-3-Super-120B using the Iterative Puzzle framework. 1M token context support!

Perfect for your single GB10 ♥️

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