Tuesday, 27 May 2025
AI Agents vs. Multi-agent systems: From solo expertise to orchestrated collective intelligence

This article is part of our trend series on Multi-agent AI. Explore all related content.
Two approaches to creating value with Agent-based AI
AI agents – these autonomous programs capable of executing specific and complex tasks - are already transforming business processes by automating and streamlining operations. But innovation is going even further with multi-agent systems (MAS), which coordinate multiple specialized AI agents to work together.
According to Gartner, 75% of large enterprises will have adopted MAS by 2026. Even more striking, BCG projects that MAS will generate $53 billion in revenue by 2030, nearly ten times the $5.7 billion recorded in 2024.
Comparison table: AI Agent - Multi-agent system
Criteria | AI Agent | Multi-agent system (MAS) |
Definition |
|
|
Challenges addressed |
|
|
Use cases |
|
|
Key benefits |
|
|
Limitations |
|
|
A strategic approach to deploy these technologies
The importance of expert support
The success of your transformation through agent-based AI depends on specialized support. Whether you choose an AI agents or multi-agents systems, AI experts can help you:
- Analyze your processes and identify the highest-ROI opportunities
- Design a scalable architecture aligned with your overall strategy
- Secure deployment and ensure adoption by your teams
- Measure impact and continuously optimize performance
Without this expertise, AI projects risk remaining isolated initiatives with little transformational impact on your organization.