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Tag: role specialization

Multi-Agent Systems with LLMs: How Specialized AI Agents Collaborate to Solve Complex Problems
Multi-Agent Systems with LLMs: How Specialized AI Agents Collaborate to Solve Complex Problems

Tamara Weed, Oct, 8 2025

Multi-agent systems with LLMs use teams of specialized AI agents to solve complex tasks more accurately than single models. Learn how frameworks like Chain-of-Agents, MacNet, and LatentMAS work, where they're used, and the risks involved.

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