How do AI agents function in orchestration, and why are they significant for LLM apps?
Answer Posted / Surya Kant Singh
AI agents in orchestration act as intermediaries between various components of an LLM system. They coordinate tasks, manage resources, and ensure smooth communication between different parts of the ecosystem. The significance of AI agents lies in their ability to automate complex workflows and improve overall efficiency.
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