Words Instead of Weights? Self-Learning Multi-Agent RAG (HERA)

Discover AI · Beginner ·🤖 AI Agents & Automation ·1mo ago
The authors: " ... we propose HERA, a hierarchical framework that jointly evolves multi-agent orchestration and role-specific agent prompts. At the global level, HERA optimizes query-specific agent topologies through reward-guided sampling and experience accumulation. At the local level, Role-Aware Prompt Evolution refines agent behaviors via credit assignment and dual-axes adaptation along operational and behavioral principles, enabling targeted, role-conditioned improvements. " All rights w/ authors: "Experience as a Compass: Multi-agent RAG with Evolving Orchestration and Agent Prompts" Sha Li Virginia Tech Naren Ramakrishnan Virginia Tech #aiexplained #chatgpt #airesearch #scienceeducation #scienceexperiment
Watch on YouTube ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

The Future of Physical AI Isn’t Smarter Robots, It’s Smarter Interfaces
The future of physical AI lies in smarter interfaces, enabling humans to interact with devices more efficiently in various environments
IEEE Spectrum
Data Engineering Without Humans: A Vision for Fully Agentic Cloud Platforms
Learn how fully agentic cloud platforms can revolutionize data engineering by automating tasks and reducing human intervention, increasing efficiency and scalability
Medium · AI
Your Studio Is Not a Folder System
Learn how AI can revolutionize architectural offices by transforming them into intelligent operating systems, enhancing productivity and efficiency
Medium · AI
Microsoft Clarity Now Shows Grounding Queries Behind AI Citations via @sejournal, @TaylorDanRW
Microsoft Clarity reveals grounding queries behind AI citations, showing how AI engines decompose intent in a platform-agnostic way
Search Engine Journal
Up next
Hermes Agent OS Is INSANE! 🤯
Julian Goldie SEO
Watch →