Efficient AI

BPDQ: Bit-Plane Decomposition Quantization on a Variable Grid for Large Language Models

JJunyu ChenJJungang LiJJing XiongWWenjie WangQQingyao YangHHe XiaoZZhen LiTTaiqiang WuMMengzhao ChenZZhen PengCChaofan TaoLLong ShiHHongxia YangNNgai Wong
Published
February 4, 2026
Authors
14

Abstract

Large language model (LLM) inference is often bounded by memory footprint and memory bandwidth in resource-constrained deployments, making quantization a fundamental technique for efficient serving. While post-training quantization (PTQ) maintains high fidelity at 4-bit, it deteriorates at 2-3 bits. Fundamentally, existing methods enforce a shape-invariant quantization grid (e.g., the fixed uniform intervals of UINT2) for each group, severely restricting the feasible set for error minimization. To address this, we propose Bit-Plane Decomposition Quantization (BPDQ), which constructs a variable quantization grid via bit-planes and scalar coefficients, and iteratively refines them using approximate second-order information while progressively compensating quantization errors to minimize output discrepancy. In the 2-bit regime, BPDQ enables serving Qwen2.5-72B on a single RTX 3090 with 83.85% GSM8K accuracy (vs. 90.83% at 16-bit). Moreover, we provide theoretical analysis showing that the variable grid expands the feasible set, and that the quantization process consistently aligns with the optimization objective in Hessian-induced geometry. Code: github.com/KingdalfGoodman/BPDQ.

Keywords

post-training quantizationquantization gridbit-plane decompositionscalar coefficientssecond-order informationquantization errorHessian-induced geometry

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BPDQ: Bit-Plane Decomposition Quantization on a Variable Grid for Large Language Models | Paperchime