利用大型语言模型中的提示工程加速化学研究

IF 12.7 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Feifei Luo, Jinglang Zhang, Qilong Wang* and Chunpeng Yang*, 
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引用次数: 0

摘要

使用gpt等大型语言模型(llm)的人工智能(AI)已经彻底改变了各个领域。最近,法学硕士也在化学研究方面取得了进展,甚至对没有编码专业知识的用户也是如此。然而,直接应用llm可能会导致“幻觉”,即模型产生的信息不可靠或不准确,并且由于数据集有限和化学报告固有的复杂性而进一步加剧。为了解决这个问题,研究人员提出了提示工程,它可以将人类的想法形式化地、明确地传达给法学硕士,同时提高法学硕士的推理能力。到目前为止,提示工程在化学中还没有得到充分的利用,许多化学家对它的原理和技术知之甚少。在本展望中,我们深入研究了各种提示工程技术,并举例说明了从金属有机框架和快速充电电池到自主实验的广泛研究的相关示例。我们还阐明了当前llm提示工程的局限性,例如不完整或有偏差的结果以及封闭源限制所施加的约束。虽然llm辅助的化学研究仍处于早期阶段,但即时工程的应用将显著提高准确性和可靠性,从而加快化学研究。使用大型语言模型的人工智能为化学发现和快速工程创造了前所未有的机会,有望释放它们加速化学研究的真正潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Prompt Engineering in Large Language Models for Accelerating Chemical Research

Artificial intelligence (AI) using large language models (LLMs) such as GPTs has revolutionized various fields. Recently, LLMs have also made inroads in chemical research even for users without expertise in coding. However, applying LLMs directly may lead to “hallucinations”, where the model generates unreliable or inaccurate information and is further exacerbated by limited data set and inherent complexity of chemical reports. To counteract this, researchers have suggested prompt engineering, which can convey human ideas formatively and unambiguously to LLMs and simultaneously improve LLMs’ reasoning capability. So far, prompt engineering remains underutilized in chemistry, with many chemists barely acquainted with its principle and techniques. In this Outlook, we delve into various prompt engineering techniques and illustrate relevant examples for extensive research from metal–organic frameworks and fast-charging batteries to autonomous experiments. We also elucidate the current limitations of prompt engineering with LLMs such as incomplete or biased outcomes and constraints imposed by closed-source limitations. Although LLM-assisted chemical research is still in its early stages, the application of prompt engineering will significantly enhance accuracy and reliability, thereby accelerating chemical research.

AI using large language models creates an unprecedented opportunity for chemical discovery and prompt engineering hopefully unleashes their true potential for accelerating chemical research.

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来源期刊
ACS Central Science
ACS Central Science Chemical Engineering-General Chemical Engineering
CiteScore
25.50
自引率
0.50%
发文量
194
审稿时长
10 weeks
期刊介绍: ACS Central Science publishes significant primary reports on research in chemistry and allied fields where chemical approaches are pivotal. As the first fully open-access journal by the American Chemical Society, it covers compelling and important contributions to the broad chemistry and scientific community. "Central science," a term popularized nearly 40 years ago, emphasizes chemistry's central role in connecting physical and life sciences, and fundamental sciences with applied disciplines like medicine and engineering. The journal focuses on exceptional quality articles, addressing advances in fundamental chemistry and interdisciplinary research.
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