Farhad-Davaripour / FEA_Assisted_AgentLinks
An AI-driven tool integrating Abaqus and OpenAI's LLM for automating finite element simulations, including input file generation, job execution, stress extraction, parametric studies, and sensitivity analysis, streamlining complex workflows for enhanced decision-making.
☆18Updated 7 months ago
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