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Main Authors: Madiraju, Meher Bhaskar, Madiraju, Meher Sai Preetam
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.19205
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author Madiraju, Meher Bhaskar
Madiraju, Meher Sai Preetam
author_facet Madiraju, Meher Bhaskar
Madiraju, Meher Sai Preetam
contents Hyperparameter optimization (HPO) is a critical yet challenging aspect of machine learning model development, significantly impacting model performance and generalization. Traditional HPO methods often struggle with high dimensionality, complex interdependencies, and computational expense. This paper introduces OptiMindTune, a novel multi-agent framework designed to intelligently and efficiently optimize hyperparameters. OptiMindTune leverages the collaborative intelligence of three specialized AI agents -- a Recommender Agent, an Evaluator Agent, and a Decision Agent -- each powered by Google's Gemini models. These agents address distinct facets of the HPO problem, from model selection and hyperparameter suggestion to robust evaluation and strategic decision-making. By fostering dynamic interactions and knowledge sharing, OptiMindTune aims to converge to optimal hyperparameter configurations more rapidly and robustly than existing single-agent or monolithic approaches. Our framework integrates principles from advanced large language models, and adaptive search to achieve scalable and intelligent AutoML. We posit that this multi-agent paradigm offers a promising avenue for tackling the increasing complexity of modern machine learning model tuning.
format Preprint
id arxiv_https___arxiv_org_abs_2505_19205
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle OptiMindTune: A Multi-Agent Framework for Intelligent Hyperparameter Optimization
Madiraju, Meher Bhaskar
Madiraju, Meher Sai Preetam
Machine Learning
Artificial Intelligence
Multiagent Systems
Hyperparameter optimization (HPO) is a critical yet challenging aspect of machine learning model development, significantly impacting model performance and generalization. Traditional HPO methods often struggle with high dimensionality, complex interdependencies, and computational expense. This paper introduces OptiMindTune, a novel multi-agent framework designed to intelligently and efficiently optimize hyperparameters. OptiMindTune leverages the collaborative intelligence of three specialized AI agents -- a Recommender Agent, an Evaluator Agent, and a Decision Agent -- each powered by Google's Gemini models. These agents address distinct facets of the HPO problem, from model selection and hyperparameter suggestion to robust evaluation and strategic decision-making. By fostering dynamic interactions and knowledge sharing, OptiMindTune aims to converge to optimal hyperparameter configurations more rapidly and robustly than existing single-agent or monolithic approaches. Our framework integrates principles from advanced large language models, and adaptive search to achieve scalable and intelligent AutoML. We posit that this multi-agent paradigm offers a promising avenue for tackling the increasing complexity of modern machine learning model tuning.
title OptiMindTune: A Multi-Agent Framework for Intelligent Hyperparameter Optimization
topic Machine Learning
Artificial Intelligence
Multiagent Systems
url https://arxiv.org/abs/2505.19205