Integrating Large Language Models For Monte Carlo Simulation of Chemical Reaction Networks
- URL: http://arxiv.org/abs/2503.21178v1
- Date: Thu, 27 Mar 2025 06:01:50 GMT
- Title: Integrating Large Language Models For Monte Carlo Simulation of Chemical Reaction Networks
- Authors: Sadikshya Gyawali, Ashwini Mandal, Manish Dahal, Manish Awale, Sanjay Rijal, Shital Adhikari, Vaghawan Ojha,
- Abstract summary: Chemical reaction network is an important method for modeling and exploring complex biological processes.<n>We show the efficacy and limitations of the modern large language models to parse and create reaction kinetics.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Chemical reaction network is an important method for modeling and exploring complex biological processes, bio-chemical interactions and the behavior of different dynamics in system biology. But, formulating such reaction kinetics takes considerable time. In this paper, we leverage the efficiency of modern large language models to automate the stochastic monte carlo simulation of chemical reaction networks and enable the simulation through the reaction description provided in the form of natural languages. We also integrate this process into widely used simulation tool Copasi to further give the edge and ease to the modelers and researchers. In this work, we show the efficacy and limitations of the modern large language models to parse and create reaction kinetics for modelling complex chemical reaction processes.
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