Distinguishing Autonomous AI Agents from Collaborative Agentic Systems: A Comprehensive Framework for Understanding Modern Intelligent Architectures
- URL: http://arxiv.org/abs/2506.01438v2
- Date: Mon, 16 Jun 2025 17:03:41 GMT
- Title: Distinguishing Autonomous AI Agents from Collaborative Agentic Systems: A Comprehensive Framework for Understanding Modern Intelligent Architectures
- Authors: Prashik Buddhaghosh Bansod,
- Abstract summary: The emergence of large language models has catalyzed two distinct yet interconnected paradigms in artificial intelligence: standalone AI Agents and collaborative Agentic AI ecosystems.<n>This study establishes a definitive framework for distinguishing these architectures through systematic analysis of their operational principles, structural compositions, and deployment methodologies.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The emergence of large language models has catalyzed two distinct yet interconnected paradigms in artificial intelligence: standalone AI Agents and collaborative Agentic AI ecosystems. This comprehensive study establishes a definitive framework for distinguishing these architectures through systematic analysis of their operational principles, structural compositions, and deployment methodologies. We characterize AI Agents as specialized, tool-enhanced systems leveraging foundation models for targeted automation within constrained environments. Conversely, Agentic AI represents sophisticated multi-entity frameworks where distributed agents exhibit emergent collective intelligence through coordinated interaction protocols. Our investigation traces the evolutionary trajectory from traditional rule-based systems through generative AI foundations to contemporary agent architectures. We present detailed architectural comparisons examining planning mechanisms, memory systems, coordination protocols, and decision-making processes. The study categorizes application landscapes, contrasting single-agent implementations in customer service and content management with multi-agent deployments in research automation and complex decision support. We identify critical challenges including reliability issues, coordination complexities, and scalability constraints, while proposing innovative solutions through enhanced reasoning frameworks, robust memory architectures, and improved coordination mechanisms. This framework provides essential guidance for practitioners selecting appropriate agentic approaches and establishes foundational principles for next-generation intelligent system development.
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