Authors: Riya Singh, Assistant Professor Dr. G. V. Khandekar, Assistant Professor Upendra Sinhg, Diksha Rawat
Abstract: Agentic Artificial Intelligence (Agentic AI) represents a paradigm shift in the field of artificial intelligence, enabling systems to operate autonomously with minimal human intervention. Unlike traditional AI models that rely on predefined instructions or reactive responses, Agentic AI systems are designed to perceive their environment, reason about complex situations, plan actions, and execute tasks in a goal-oriented manner. This paper provides a comprehensive overview of Agentic AI systems, focusing on their architecture, key challenges, and diverse applications. The architectural framework of Agentic AI integrates components such as perception, memory, reasoning, planning, and action modules within a closed-loop system that supports continuous learning and adaptation. The study also explores the wide range of applications across domains including healthcare, finance, robotics, and smart systems, where Agentic AI enhances efficiency, decision-making, and automation. However, the development of such systems presents several challenges, including issues related to trust, explainability, scalability, and computational complexity. Ethical and legal concerns, such as bias, privacy, and accountability, further complicate their deployment. This paper aims to provide a structured understanding of Agentic AI while highlighting the need for robust frameworks and responsible implementation strategies to fully realize its potential.
International Journal of Science, Engineering and Technology