Scavenging Hyena: Distilling Transformers into Long Convolution Models

Published: 21 Jun 2024, Last Modified: 24 Jul 2024ES-FoMo-II 2024 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: large language model, hyena, distillation
TL;DR: Evaluating joint knowledge transfer on Hyena-mechanism LLMs.
Abstract: The rapid evolution of Large Language Models (LLMs), epitomized by architectures like GPT-4, has reshaped the landscape of natural language processing. This paper introduces a pioneering approach to address the efficiency concerns associated with LLM pre-training, proposing the use of knowledge distillation for cross-architecture transfer. Leveraging insights from the efficient Hyena mechanism, our method replaces attention heads in transformer models by Hyena, offering a cost-effective alternative to traditional pre-training while confronting the challenge of processing long contextual information, inherent in quadratic attention mechanisms. Unlike conventional compression-focused methods, our technique not only enhances inference speed but also surpasses pre-training in terms of both accuracy and efficiency. In the era of evolving LLMs, our work contributes to the pursuit of sustainable AI solutions, striking a balance between computational power and environmental impact.
Submission Number: 57
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