Agentic AI seeks to endow systems with sustained autonomy, reasoning, and interaction capabilities. To realize this vision, its assumptions about agency must be complemented by explicit models of cognition, cooperation, and governance. This paper argues that the conceptual tools developed within the Autonomous Agents and Multi-Agent Systems (AAMAS) community, such as BDI architectures, communication protocols, mechanism design, and institutional modelling, provide precisely such a foundation. By aligning adaptive, data-driven approaches with structured models of reasoning and coordination, we outline a path toward agentic systems that are not only capable and flexible, but also transparent, cooperative, and accountable. The result is a perspective on agency that bridges formal theory and practical autonomy.
翻译:智能体AI旨在赋予系统持续的自主性、推理能力和交互能力。为实现这一愿景,其关于智能体的假设必须辅以明确的认知、协作与治理模型。本文认为,自主智能体与多智能体系统(AAMAS)领域发展的概念工具——如BDI架构、通信协议、机制设计和制度建模——恰好为此提供了基础。通过将自适应、数据驱动的方法与结构化的推理及协调模型相结合,我们勾勒出一条路径,通向不仅能力强、灵活性高,而且透明、协作、可问责的智能体系统。由此形成的智能体视角,架起了形式化理论与实际自主性之间的桥梁。