AI Agent Simulation of Human Behavior
Автор: Learn by Doing with Steven
Загружено: 2025-10-26
Просмотров: 4
This presentation transcript from a Stanford Global Alumni Webinar details the emerging frontier of AI agent simulation designed to replicate and predict complex human behavior. The speaker argues that traditional decision-making often relies on incomplete data, leading to bad outcomes, and proposes that creating generative AI agents that act as digital twins of people can serve as a "what-if machine" to test strategies before deployment. The overview explains the architecture required for these simulations, including a memory stream, a capacity for reflection, and sophisticated planning mechanisms, citing experiments like the Smallville town simulation and the creation of 1,000 digital twins of real Americans to validate accuracy against real-world surveys. Finally, the speaker discusses the risks, advising caution with quantitative predictions and multi-agent systems, while highlighting applications in policy testing, market research, and soft skills training.
Доступные форматы для скачивания:
Скачать видео mp4
-
Информация по загрузке: