AI RESEARCH

FAAR: Format-Aware Adaptive Rounding for NVFP4

arXiv CS.AI

ArXi:2603.22370v1 Announce Type: cross Deploying large language models (LLMs) on edge devices requires extremely low-bit quantization. Ultra-low precision formats such as NVFP4 offer a promising solution for reducing memory footprint and accelerating computation. However, existing quantization methods typically rely on conventional rounding strategies and fail to account for the non-uniformity of the NVFP4 numerical grid, resulting in suboptimal rounding decisions and amplified quantization errors.