CLSep 23, 2024

Beyond Fine-tuning: Unleashing the Potential of Continuous Pretraining for Clinical LLMs

arXiv:2409.14988v125 citationsh-index: 7
Originality Incremental advance
AI Analysis

This work addresses optimizing LLMs for clinical applications, presenting incremental improvements through tailored fine-tuning strategies.

The study investigated four adaptation techniques for clinical LLMs, finding that continuous pretraining beyond 250 billion tokens provides a foundation for instruct fine-tuning, with NEFTune and prompt engineering offering additional gains on clinical benchmarks.

Large Language Models (LLMs) have demonstrated significant potential in transforming clinical applications. In this study, we investigate the efficacy of four techniques in adapting LLMs for clinical use-cases: continuous pretraining, instruct fine-tuning, NEFTune, and prompt engineering. We employ these methods on Mistral 7B and Mixtral 8x7B models, leveraging a large-scale clinical pretraining dataset of 50 billion tokens and an instruct fine-tuning dataset of 500 million tokens. Our evaluation across various clinical tasks reveals the impact of each technique. While continuous pretraining beyond 250 billion tokens yields marginal improvements on its own, it establishes a strong foundation for instruct fine-tuning. Notably, NEFTune, designed primarily to enhance generation quality, surprisingly demonstrates additional gains on our benchmark. Complex prompt engineering methods further enhance performance. These findings show the importance of tailoring fine-tuning strategies and exploring innovative techniques to optimize LLM performance in the clinical domain.

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