LGOct 13, 2025

Neural Weight Compression for Language Models

arXiv:2510.11234v1h-index: 3
Originality Highly original
AI Analysis

This addresses the storage and transmission challenges for large language models, offering a novel method for weight compression.

The paper tackled the problem of compressing language model weights efficiently by proposing Neural Weight Compression (NWC), a learned autoencoder-based framework that achieves competitive or state-of-the-art accuracy-compression tradeoffs, with accuracy nearly on par with FP16 models at 4-6 bit precisions.

The efficient storage and transmission of language model weights is becoming increasingly important, as their scale and adoption continue to grow. However, as our understanding of this new data modality is limited, designing a good compression algorithm for language model weights heavily relies on manual, trial-and-error approaches. In this paper, we propose a learned compression framework that trains neural codecs directly from pretrained language model weights. Unlike conventional data (e.g., images), language model weights pose unique challenges: the sizes and shapes of weight tensors vary significantly, and the reconstruction quality must be judged by downstream model predictions rather than naïve MSE loss. To address this, we introduce Neural Weight Compression (NWC), a novel autoencoder-based neural codec tailored to model weight compression. The proposed method inherits the advantages of autoencoder-based codecs while incorporating three technical components: (1) column-wise tensor chunking and normalization; (2) an importance-aware training loss; (3) an inference-time error compensation mechanism guided by model outputs. Experiments on open-weight language models show that NWC achieves competitive or state-of-the-art accuracy-compression tradeoffs, with particularly strong results at 4-6 bit precisions where accuracy remains nearly on par with FP16 models.

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