工作流程
计算机科学
一致性(知识库)
领域(数学分析)
编码(集合论)
机制(生物学)
计算流体力学
软件工程
分布式计算
系统工程
系统动力学
数据一致性
复杂系统
仿真建模
工作流管理系统
建模与仿真
领域知识
错误检测和纠正
文件系统
模拟
专家系统
领域(数学)
人为错误
数据库
源代码
作者
Ling Yue,Nithin Somasekharan,Zhang, Tingwen,Yadi Cao,Chen, Zhangze,Di, Shimin,Shaowu Pan
标识
DOI:10.48550/arxiv.2505.04997
摘要
Computational fluid dynamics (CFD) has been the main workhorse of computational physics. Yet its steep learning curve and fragmented, multi-stage workflow create significant barriers. To address these challenges, we present Foam-Agent, a multi-agent framework leveraging large language models (LLMs) to automate the end-to-end CFD workflow from a single natural language prompt. Foam-Agent orchestrates the comprehensive simulation workflow from mesh generation and high-performance computing job scripting to post-processing visualization. The system integrates retrieval-augmented generation with dependency-aware scheduling to synthesize high-fidelity simulation configurations. Furthermore, Foam-Agent adopts the Model Context Protocol to expose its core functions as discrete, callable tools. This allows for flexible integration and use by any other agentic systems. Evaluated on 110 simulation tasks, Foam-Agent achieved a state-of-the-art execution success rate of 88.2% without expert intervention. These results demonstrate how specialized multi-agent systems can effectively reduce expertise barriers and streamline complex fluid simulations.
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