The rapid advancement of generative artificial intelligence has significantly increased public and academic interest in Large Language Models (LLMs) and, more recently, Agentic Artificial Intelligence (Agentic AI). Although these terms are frequently used interchangeably in popular discussions, they represent fundamentally different concepts within modern artificial intelligence. Large Language Models primarily function as probabilistic language prediction systems capable of understanding and generating human language, whereas Agentic AI represents a broader computational architecture that combines language models with autonomous planning, memory, reasoning, tool utilization, environmental interaction, and goal-directed decision-making. Understanding this distinction is becoming increasingly important as organizations transition from conversational artificial intelligence toward autonomous intelligent systems capable of executing complex workflows with limited human intervention. This preprint examines the conceptual, architectural, operational, and functional differences between Large Language Models and Agentic Artificial Intelligence. The discussion explores the technological evolution of both paradigms, their computational foundations, decision-making capabilities, memory structures, reasoning mechanisms, environmental awareness, adaptability, and real-world applications. Particular emphasis is placed on understanding why an LLM alone cannot be considered an autonomous intelligent agent and how agentic architectures integrate multiple computational components to achieve independent task execution and long-term objective management. The paper further investigates the implications of these differences for enterprise automation, scientific research, healthcare, finance, education, software engineering, cybersecurity, robotics, and intelligent decision-support systems. Current limitations, ethical challenges, and future research directions are also discussed to provide a comprehensive perspective on the evolution of autonomous artificial intelligence. The study concludes that Agentic AI should be viewed not as a replacement for Large Language Models but as a higher-level intelligent architecture in which LLMs function as one of several essential cognitive components supporting autonomous behavior.
Anshuman Sinha (Tue,) studied this question.