Generative to Agentic AI: Survey, Conceptualization, and Challenges
By: Johannes Schneider
Potential Business Impact:
AI can now do complex jobs by itself.
Agentic Artificial Intelligence (AI) builds upon Generative AI (GenAI). It constitutes the next major step in the evolution of AI with much stronger reasoning and interaction capabilities that enable more autonomous behavior to tackle complex tasks. Since the initial release of ChatGPT (3.5), Generative AI has seen widespread adoption, giving users firsthand experience. However, the distinction between Agentic AI and GenAI remains less well understood. To address this gap, our survey is structured in two parts. In the first part, we compare GenAI and Agentic AI using existing literature, discussing their key characteristics, how Agentic AI remedies limitations of GenAI, and the major steps in GenAI's evolution toward Agentic AI. This section is intended for a broad audience, including academics in both social sciences and engineering, as well as industry professionals. It provides the necessary insights to comprehend novel applications that are possible with Agentic AI but not with GenAI. In the second part, we deep dive into novel aspects of Agentic AI, including recent developments and practical concerns such as defining agents. Finally, we discuss several challenges that could serve as a future research agenda, while cautioning against risks that can emerge when exceeding human intelligence.
Similar Papers
AI Agents vs. Agentic AI: A Conceptual Taxonomy, Applications and Challenges
Artificial Intelligence
Helps AI work together to solve big problems.
Generative AI for Software Architecture. Applications, Challenges, and Future Directions
Software Engineering
Helps computers design software faster and smarter.
Generative Artificial Intelligence and Agents in Research and Teaching
Computers and Society
Helps computers create text, art, and ideas.