We're all getting familiar with generative AI – the chatbots and image generators that have exploded in popularity. But there's another approach called agentic AI that's fundamentally different. Let me break down how these two technologies work and why their differences matter for business users.
Generative AI systems are essentially reactive – they wait for you to provide a prompt, then generate content based on patterns they've learned during training. These systems are sophisticated pattern-matching machines that:
Think of generative AI as a talented but passive assistant who needs specific instructions for every task.
By contrast, agentic AI systems are proactive. They may start with your prompt, but then pursue goals through a series of independent actions. An agent follows a continuous cycle:
Agentic AI doesn't just respond – it takes initiative to complete multi-step tasks.
Many of us already use generative AI for content creation. For example, a YouTuber might use it to:
But the human creator remains central – reviewing outputs, refining them, and directing the process. The AI generates possibilities, but the human curates them.
Agentic AI excels at scenarios requiring ongoing management and multi-step processes. Imagine a personal shopping agent that:
All largely by itself, seeking your input only when necessary.
Interestingly, both approaches often share a common foundation in large language