SOCIA: An End-to-End Agentic Framework for Automated Cyber-Physical-Social Simulator Generation
By: Yuncheng Hua , Ji Miao , Mehdi Jafari and more
Potential Business Impact:
Builds fake worlds to test how people and tech interact.
This paper introduces SOCIA (Simulation Orchestration for Cyber-physical-social Intelligence and Agents), a novel end-to-end framework leveraging Large Language Model (LLM)-based multi-agent systems to automate the generation of high-fidelity Cyber-Physical-Social (CPS) simulators. Addressing the challenges of labor-intensive manual simulator development and complex data calibration, SOCIA integrates a centralized orchestration manager that coordinates specialized agents for tasks including data comprehension, code generation, simulation execution, and iterative evaluation-feedback loops. Through empirical evaluations across diverse CPS tasks, such as mask adoption behavior simulation (social), personal mobility generation (physical), and user modeling (cyber), SOCIA demonstrates its ability to produce high-fidelity, scalable simulations with reduced human intervention. These results highlight SOCIA's potential to offer a scalable solution for studying complex CPS phenomena
Similar Papers
SOCIA-Nabla: Textual Gradient Meets Multi-Agent Orchestration for Automated Simulator Generation
Artificial Intelligence
Builds smart computer worlds from simple instructions.
SOTOPIA-S4: a user-friendly system for flexible, customizable, and large-scale social simulation
Computers and Society
Builds fake worlds to test social ideas.
SocioVerse: A World Model for Social Simulation Powered by LLM Agents and A Pool of 10 Million Real-World Users
Computation and Language
Lets computers act like real people to study society.