Raptis Emmanuel K, Kapoutsis Athanasios Ch, Kosmatopoulos Elias B
Information Technologies Institute, The Centre for Research and Technology Hellas, Thessaloniki, Greece.
Department of Electrical and Computer Engineering, Democritus University of Thrace, Xanthi, Greece.
Front Robot AI. 2025 Aug 19;12:1605405. doi: 10.3389/frobt.2025.1605405. eCollection 2025.
Agentic AI refers to autonomous systems that can perceive their environment, make decisions, and take actions to achieve goals with minimal or no human intervention. Recent advances in Large Language Models (LLMs) have opened new pathways to imbue robots with such "agentic" behaviors by leveraging the LLMs' vast knowledge and reasoning capabilities for planning and control. This survey provides the first comprehensive exploration of LLM-based robotic systems integration into agentic behaviors that have been validated in real-world applications. We systematically categorized these systems across navigation, manipulation, multi-agent, and general-purpose multi-task robots, reflecting the range of applications explored. We introduce a novel, first-of-its-kind agenticness classification that evaluates existing LLM-driven robotic works based on their degree of autonomy, goal-directed behavior, adaptability, and decision-making. Additionally, central to our contribution is an evaluation framework explicitly addressing ethical, safety, and transparency principles-including bias mitigation, fairness, robustness, safety guardrails, human oversight, explainability, auditability, and regulatory compliance. By jointly mapping the landscape of agentic capabilities and ethical safeguards, we uncover key gaps, tensions, and design trade-offs in current approaches. We believe that this work serves as both a diagnostic and a call to action: as LLM-empowered robots grow more capable, ensuring they remain comprehensible, controllable, and aligned with societal norms is not optional-it is essential.
智能体人工智能是指能够感知环境、做出决策并采取行动以实现目标,且只需极少人工干预或无需人工干预的自主系统。大语言模型(LLMs)的最新进展开辟了新途径,通过利用大语言模型的广泛知识和推理能力进行规划和控制,使机器人具备这种“智能体”行为。本综述首次全面探讨了基于大语言模型的机器人系统集成到已在实际应用中得到验证的智能体行为。我们系统地将这些系统分类为导航机器人、操作机器人、多智能体机器人和通用多任务机器人,反映了所探索的应用范围。我们引入了一种新颖的、首创的智能体分类方法,该方法基于现有大语言模型驱动的机器人作品的自主程度、目标导向行为、适应性和决策能力对其进行评估。此外,我们贡献的核心是一个明确涉及伦理、安全和透明度原则的评估框架,包括减轻偏差、公平性、稳健性、安全防护、人工监督、可解释性、可审计性和法规遵从性。通过共同描绘智能体能力和伦理保障的全貌,我们揭示了当前方法中的关键差距、矛盾和设计权衡。我们相信,这项工作既是一种诊断,也是一种行动呼吁:随着由大语言模型赋能的机器人能力不断增强,确保它们保持可理解、可控并符合社会规范不是一种选择,而是至关重要的。