Agentic AI

Simple Definition

Agentic AI describes AI systems that act like agents — they pursue goals, plan steps, use tools, and take actions across multiple interactions, rather than just answering individual questions.

A chatbot responds to your messages. An agentic AI system receives a goal and figures out how to accomplish it.

The Shift from Chatbot to Agent

Traditional chatbot:

  • You ask a question
  • It answers
  • Done

Agentic AI:

  • You give a goal (“research competitors and draft a report”)
  • It plans: search web → read pages → extract info → organize → write report
  • It executes each step, possibly using multiple tools
  • It delivers the result

Key Properties of Agentic AI

  • Goal-directed — works toward an objective, not just responding
  • Multi-step — executes sequences of actions
  • Tool-using — accesses search, code execution, APIs, files
  • Adaptive — adjusts when steps fail or produce unexpected results
  • Persistent — can work over longer time horizons (minutes, hours, days)

Real-World Examples

  • Coding agents (Devin, Claude Code) — write, test, and debug code autonomously
  • Research agents — find, read, and synthesize sources
  • Personal assistants — manage email, calendar, and tasks
  • Customer service agents — handle complex support cases end-to-end

Current Maturity

Agentic AI is rapidly improving but still unreliable for complex, high-stakes tasks. The most productive use today involves human oversight at key decision points.

  • AI Agent — the individual actors in agentic systems
  • Autonomous Agent — agents that operate with minimal human input
  • Tool Use — essential capability for agentic AI
  • Orchestration — coordinating multiple agents in a system

See AI terms in action

Browse practical AI workflows that use the concepts in this glossary.

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