主体性设计模式:一个系统理论框架 / Agentic Design Patterns: A System-Theoretic Framework
1️⃣ 一句话总结
这篇论文提出了一个基于系统理论的框架,将AI智能体分解为五个核心功能子系统,并据此归纳出12种可复用的设计模式,旨在解决当前AI智能体设计中存在的不可靠和脆弱问题,为构建更模块化、可靠的自主体系统提供了结构化方法。
With the development of foundation model (FM), agentic AI systems are getting more attention, yet their inherent issues like hallucination and poor reasoning, coupled with the frequent ad-hoc nature of system design, lead to unreliable and brittle applications. Existing efforts to characterise agentic design patterns often lack a rigorous systems-theoretic foundation, resulting in high-level or convenience-based taxonomies that are difficult to implement. This paper addresses this gap by introducing a principled methodology for engineering robust AI agents. We propose two primary contributions: first, a novel system-theoretic framework that deconstructs an agentic AI system into five core, interacting functional subsystems: Reasoning & World Model, Perception & Grounding, Action Execution, Learning & Adaptation, and Inter-Agent Communication. Second, derived from this architecture and directly mapped to a comprehensive taxonomy of agentic challenges, we present a collection of 12 agentic design patterns. These patterns - categorised as Foundational, Cognitive & Decisional, Execution & Interaction, and Adaptive & Learning - offer reusable, structural solutions to recurring problems in agent design. The utility of the framework is demonstrated by a case study on the ReAct framework, showing how the proposed patterns can rectify systemic architectural deficiencies. This work provides a foundational language and a structured methodology to standardise agentic design communication among researchers and engineers, leading to more modular, understandable, and reliable autonomous systems.
主体性设计模式:一个系统理论框架 / Agentic Design Patterns: A System-Theoretic Framework
这篇论文提出了一个基于系统理论的框架,将AI智能体分解为五个核心功能子系统,并据此归纳出12种可复用的设计模式,旨在解决当前AI智能体设计中存在的不可靠和脆弱问题,为构建更模块化、可靠的自主体系统提供了结构化方法。
源自 arXiv: 2601.19752