×
Agentic AI emerges as the next evolution beyond generative AI—what you need to know
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Agentic AI represents a significant evolution beyond generative AI, offering the ability to automate complex decision-making processes by leveraging multiple agents working together autonomously. Unlike generative AI, which has transformed content creation, agentic AI enters as the third stage of AI development, sitting between conversational/reasoning stages and innovative/organizational intelligence. This advancement promises to revolutionize industries by providing rapid automated decisions with minimal human intervention, potentially having broader impacts than its generative predecessor.

The big picture: Agentic AI builds upon generative AI capabilities by enabling autonomous learning, adaptation, and complex task execution through multiple specialized AI agents working collaboratively.

  • While generative AI has dominated headlines since ChatGPT‘s release, agentic AI quietly positions itself as a more transformative technology for business operations.
  • Experts place agentic AI as the third of five developmental stages in artificial intelligence evolution, bridging the gap between conversational/reasoning stages and innovative/organizational intelligence.

How it works: Agentic AI leverages large language models as reasoning engines that can issue commands to existing tools via APIs, allowing them to perform actions and learn through environmental feedback.

  • Unlike traditional reinforcement learning that starts from scratch, agentic AI bypasses extensive learning phases by utilizing inherent reasoning capabilities.
  • For complex tasks, multiple LLMs can collaborate as specialized agents in role-playing dynamics, enhancing reasoning accuracy and decision-making quality.

Real-world applications: Agentic AI systems are already demonstrating significant operational improvements across various business functions and industries.

  • Supply chain management has been transformed, with purchase order response times reduced from weeks to just minutes.
  • HR processes have been streamlined for employee onboarding and administrative tasks, significantly reducing manual workloads.
  • In manufacturing, these systems predict machinery failures, reducing maintenance costs and extending asset lifespans.

Why this matters: The combination of generative and agentic AI creates sophisticated systems with unprecedented potential for efficiency and decision-making that outpaces human capabilities.

  • These systems can provide actionable insights faster than any human team, revolutionizing critical business functions including pricing strategies, inventory management, and customer interactions.
  • The long-term impacts of agentic AI are expected to be broader and more significant than those of generative AI alone, pointing to a future where increasingly complex business processes can be intelligently automated.
Beyond Generative AI

Recent News

Tines proposes identity-based definition to distinguish true AI agents from assistants

Tines shifts AI agent debate from capability to identity, arguing true agents maintain their own digital fingerprint in systems while assistants merely extend human actions.

Report: Government’s AI adoption gap threatens US national security

Federal agencies, hampered by scarce talent and outdated infrastructure, remain far behind private industry in AI adoption, creating vulnerabilities that could compromise critical government functions and regulation of increasingly sophisticated systems.

Anthropic’s new AI tutor guides students through thinking instead of giving answers

Anthropic's AI tutor prompts student reasoning with guiding questions rather than answers, addressing educators' concerns about shortcut thinking.