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A Multi-AI Agent System for Autonomous Optimization of Agentic AI Solutions via Iterative Refinement and LLM-Driven Feedback Loops

Kamer Ali Yüksel, Thiago Castro Ferreira, Mohamed Al-Badrashiny, Hassan Sawaf

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Abstract

Agentic AI systems use specialized agents to handle tasks within complex workflows, enabling automation and efficiency.However, optimizing these systems often requires laborintensive, manual adjustments to refine roles, tasks, and interactions.This paper introduces a framework for autonomously optimizing Agentic AI solutions across industries, such as NLGdriven enterprise applications.The system employs agents for Refinement, Execution, Evaluation, Modification, and Documentation, leveraging iterative feedback loops powered by an LLM (Llama 3.2-3B).The framework achieves optimal performance without human input by autonomously generating and testing hypotheses to improve system configurations.This approach enhances scalability and adaptability, offering a robust solution for real-world applications in dynamic environments.Case studies across diverse domains illustrate the transformative impact of this framework, showcasing significant improvements in output quality, relevance, and actionability.All data for these case studies, including original and evolved agent codes, along with their outputs, are here: anonymous.4open.science/r/evolver-1D11/

Topics & Concepts

Computer scienceArtificial intelligenceControl theory (sociology)Control (management)Advanced Control Systems OptimizationAdvanced Manufacturing and Logistics OptimizationSimulation Techniques and Applications
A Multi-AI Agent System for Autonomous Optimization of Agentic AI Solutions via Iterative Refinement and LLM-Driven Feedback Loops | Litcius