Referred Link - https://www.linkedin.com/posts/goyalshalini_ai-agents-vs-agentic-ai-whats-the-real-activity-7340626798772166656-Ceeg
AI Agents vs Agentic AI - What’s the Real Difference?
Not all autonomous systems are built the same. Understanding how traditional AI agents differ from modern agentic AI is key to building scalable, adaptive intelligence.
1. What Are AI Agents?
AI Agents are rule-based systems that perceive their environment, reason through it, and take specific actions. They typically execute predefined tasks and rely on human input when things go beyond their logic.
2. What Is Agentic AI?
Agentic AI takes things a step further. It consists of goal-oriented agents that coordinate, learn, adapt, and act independently. These systems don’t just follow commands, they figure out the best path to the goal, even in dynamic conditions.
3. Architectural Evolution
AI agents operate on a linear Perception → Reasoning → Action loop. Agentic AI evolves this by introducing multiple collaborating agents, shared memory, orchestration layers, and advanced planning for complex scenarios.
4. Key Differences
From autonomy and learning to adaptability and decision-making, Agentic AI is more self-sufficient, scalable, and capable of operating in uncertain, multi-agent environments. AI Agents, on the other hand, work well within clear instructions and simpler workflows.
Agentic AI brings a shift from task executors to goal-driven problem solvers that adapt and collaborate. Ideal for dynamic environments where flexibility and learning matter most.
Tags:
#ArtificialIntelligence, #AgenticAI, #NewTechnology,