Poster
in
Workshop: ES-FoMo III: 3rd Workshop on Efficient Systems for Foundation Models
Radio: Rate–Distortion Optimization for Large Language Model Compression
Sean I. Young
Abstract:
In recent years, the compression of large language models (LLMs) has emerged as a key problem in facilitating LLM deployment on resource-limited devices, reducing compute costs, and mitigating the environmental footprint due to large-scale AI infrastructure. Here, we establish the foundations of LLM quantization from a rate–distortion theory perspective and propose a quantization technique based on simple rate–distortion optimization. Our technique scales to models containing hundreds of billions of weight parameters and offers users the flexibility to compress models, post-training, to a model size or accuracy specified by the user.
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