Understanding how AI fits into your workforce strategy starts with defining what it can and can't do. This article explains how agentic AI differs from traditional AI agents, highlighting why this distinction matters for businesses trying to scale automation responsibly. Read it for perspective on what's next in intelligent systems and what it means for your team's productivity, oversight, and outcomes. Contact Contoso Technical Solutions to discuss how to align your strategy with the right kind of AI.
AI agents are autonomous software systems designed to execute specific, goal-oriented tasks. They utilize tools like APIs and databases, and are often built on large language models such as GPT-4. These agents excel in areas like customer service, scheduling, and email prioritization. Unlike traditional generative AI, AI agents can plan, act, and iterate based on user-defined goals, leading to significant improvements in efficiency, such as a 40% reduction in customer support ticket resolution time.
Agentic AI represents a more advanced architecture that consists of multiple specialized agents working together under a central orchestrator. This coordinated approach allows for handling complex tasks that require dynamic planning and inter-agent negotiation. For instance, in a research lab, a multi-agent system can collaboratively write grant proposals, significantly reducing the time required from weeks to hours. This system also introduces capabilities like persistent memory and reflective reasoning, which are essential for long-term task fulfillment.
Challenges of AI Agents and Agentic AI
Both AI agents and agentic AI encounter notable challenges. AI agents may struggle with issues like hallucinations, brittleness in prompt design, and limited context retention. On the other hand, agentic AI faces coordination failures and unpredictability. Despite these challenges, ongoing advancements are being made to address these issues, paving the way for a future where these systems can operate more effectively in various business environments.