TL;DR
This paper introduces a new approach to quantizing large language models using multiple adaptive grids, which significantly improves accuracy over traditional single-grid methods.
Contribution
It formalizes the PO2 problem, demonstrates theoretical benefits of multiple grids, and presents practical grid families that enhance quantization performance.
Findings
Adaptive grids improve accuracy in quantization of language models.
Theoretical results show benefits of multiple grids for small groups.
Practical experiments confirm improved performance on open models.
Abstract
A major recent advance in quantization is given by microscaled 4-bit formats such as NVFP4 and MXFP4, quantizing values into small groups sharing a scale, assuming a fixed floating-point grid. In this paper, we study the following natural extension: assume that, for each group of values, we are free to select the "better" among two or more 4-bit grids marked by one or more bits in the scale value. We formalize the power-of-two-grids (PO2) problem, and provide theoretical results showing that practical small-group formats such as MXFP or NVFP can benefit significantly from PO2 grids, while the advantage vanishes for very large groups. On the practical side, we instantiate several grid families, including 1) PO2(NF4), which pairs the standard NF4 normal grid with a learned grid, 2) MPO2, a grid pair that is fully learned over real weights and activations, 3) PO2(Split87), an explicit-zero…
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