Agent Smith
Research on "Agent Smith" (a placeholder name, as the provided papers don't refer to a specific entity named Agent Smith) focuses on developing autonomous AI agents capable of complex reasoning and interaction within various environments, leveraging large language models (LLMs) as their core decision-making component. Current research emphasizes improving agent capabilities through techniques like knowledge graph integration, multi-agent collaboration, and the incorporation of error-correction mechanisms, often within specialized frameworks designed for specific tasks (e.g., medical question answering, social simulation, or software engineering). This work is significant for advancing AI capabilities in complex domains and improving the reliability and safety of autonomous systems, with potential applications ranging from scientific research to healthcare and industrial automation.
Papers
Playing NetHack with LLMs: Potential & Limitations as Zero-Shot Agents
Dominik Jeurissen, Diego Perez-Liebana, Jeremy Gow, Duygu Cakmak, James Kwan
Never-Ending Behavior-Cloning Agent for Robotic Manipulation
Wenqi Liang, Gan Sun, Qian He, Yu Ren, Jiahua Dong, Yang Cong
Efficient Reinforcement Learning for Global Decision Making in the Presence of Local Agents at Scale
Emile Anand, Guannan Qu
Agent-Pro: Learning to Evolve via Policy-Level Reflection and Optimization
Wenqi Zhang, Ke Tang, Hai Wu, Mengna Wang, Yongliang Shen, Guiyang Hou, Zeqi Tan, Peng Li, Yueting Zhuang, Weiming Lu
BASES: Large-scale Web Search User Simulation with Large Language Model based Agents
Ruiyang Ren, Peng Qiu, Yingqi Qu, Jing Liu, Wayne Xin Zhao, Hua Wu, Ji-Rong Wen, Haifeng Wang
DS-Agent: Automated Data Science by Empowering Large Language Models with Case-Based Reasoning
Siyuan Guo, Cheng Deng, Ying Wen, Hechang Chen, Yi Chang, Jun Wang