Leveraging Foundational Models in Computational Biology: Validation, Understanding, and Innovation.

Brett Beaulieu-Jones, Steven Brenner
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引用次数: 0

Abstract

Large Language Models (LLMs) have shown significant promise across a wide array of fields, including biomedical research, but face notable limitations in their current applications. While they offer a new paradigm for data analysis and hypothesis generation, their efficacy in computational biology trails other applications such as natural language processing. This workshop addresses the state of the art in LLMs, discussing their challenges and the potential for future development tailored to computational biology. Key issues include difficulties in validating LLM outputs, proprietary model limitations, and the need for expertise in critical evaluation of model failure modes.

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在计算生物学中利用基础模型:验证、理解和创新。
大型语言模型(llm)在包括生物医学研究在内的广泛领域显示出巨大的前景,但在目前的应用中面临着明显的限制。虽然它们为数据分析和假设生成提供了一个新的范例,但它们在计算生物学中的功效落后于自然语言处理等其他应用。本次研讨会讨论了法学硕士的最新进展,讨论了法学硕士面临的挑战以及为计算生物学量身定制的未来发展潜力。关键问题包括验证法学硕士输出的困难,专有模型的限制,以及对模型失效模式的关键评估的专业知识的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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