Evolutionary Trends in Agentic Automation: From Simple Bots to Intelligent Agents (Published)
The evolution of automation technology has progressed through three distinct waves, transforming from simple rule-based systems to sophisticated agentic automation. This article traces this evolutionary journey, examining how Robotic Process Automation (RPA) established foundations for efficiency while the integration of artificial intelligence capabilities expanded automation’s scope and resilience. The emergence of Agentic Process Automation (APA) represents the frontier of this evolution, enabling autonomous learning, contextual decision-making, and self-directed optimization. The technical foundations of APA systems are explored, including reinforcement learning frameworks, multi-agent architectures, and explainable AI components that enable increasingly sophisticated capabilities. The article addresses implementation challenges such as knowledge representation, safety controls, and legacy system integration, highlighting effective technical solutions. Finally, future investigation directions and industry applications are examined, including cross-domain generalization, ethical decision frameworks, and transformative applications across financial services, healthcare, and manufacturing sectors
Keywords: agentic process automation, cross-domain generalization, explainable AI, multi-agent architectures, reinforcement learning