Litcius/Paper detail

Prompt engineering of GPT-4 for chemical research: what can/cannot be done?

Kan Hatakeyama‐Sato, Naoki Yamane, Yasuhiko Igarashi, Yuta Nabae, Teruaki Hayakawa

2023Science and Technology of Advanced Materials Methods31 citationsDOIOpen Access PDF

Abstract

This paper evaluates the capabilities and limitations of the Generative Pre-trained Transformer 4 (GPT-4) in chemical research. Although GPT-4 exhibits remarkable proficiencies, it is evident that the quality of input data significantly affects its performance. We explore GPT-4’s potential in chemical tasks, such as foundational chemistry knowledge, cheminformatics, data analysis, problem prediction, and proposal abilities. While the language model partially outperformed traditional methods, such as black-box optimization, it fell short against specialized algorithms, highlighting the need for their combined use. The paper shares the prompts given to GPT-4 and its responses, providing a resource for prompt engineering within the community, and concludes with a discussion on the future of chemical research using large language models.

Topics & Concepts

CheminformaticsComputer scienceTransformerGenerative grammarData scienceMachine learningArtificial intelligenceBioinformaticsEngineeringBiologyElectrical engineeringVoltageMachine Learning in Materials ScienceComputational Drug Discovery Methods