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Bibliographic Details
Main Authors: Liu, Jiarun, Xu, Shiyue, Liu, Shangkun, Li, Yang, Liu, Wen, Liu, Min, Zhou, Xiaoqing, Wang, Hanmin, Jia, Shilin, Wang, zhen, Tian, Shaohua, Li, Hanhao, Zhang, Junbo, Yu, Yongli, Cao, Peng, Wang, Haofen
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.00510
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Table of Contents:
  • Large Language Models are increasingly deployed as autonomous agents for complex real-world tasks, yet existing systems often focus on isolated improvements without a unifying design for robustness and adaptability. We propose a generalist agent architecture that integrates three core components: a collective multi-agent framework combining planning and execution agents with critic model voting, a hierarchical memory system spanning working, semantic, and procedural layers, and a refined tool suite for search, code execution, and multimodal parsing. Evaluated on a comprehensive benchmark, our framework consistently outperforms open-source baselines and approaches the performance of proprietary systems. These results demonstrate the importance of system-level integration and highlight a path toward scalable, resilient, and adaptive AI assistants capable of operating across diverse domains and tasks.