Session
Beyond Single Agents: LLM Councils, Agentic Tools, and the Future of Human-AI Intelligence
Design and scale agentic AI frameworks where multiple LLM agents, governed by councils, domain-specific context, and agentic tools, work together to augment human intelligence—while maintaining quality, security, and enterprise-grade guardrails.
In this talk, we explore a practical agentic framework where:
LLM agents collaborate through an LLM Council (multi-agent review, validation, and arbitration)
Each agent operates with domain-specific context powered by 16 types of RAG
Traditional MCP tools evolve into Agentic Tools with intent, memory, and policy awareness
Quality, security, and jailbreak resistance are enforced at the framework level, not bolted on later
We’ll show how agentic systems move from reactive question-answering to proactive problem-solving, and how this elevates—not replaces—human intelligence in real engineering workflows.
This is not a product demo. It’s a blueprint for how AI-native systems actually work at scale.
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