OR-Agent: Bridging Evolutionary Search and Structured Research for Automated Algorithm Discovery
Qi Liu, Ruochen Hao, Can Li, Wanjing Ma

TL;DR
OR-Agent is a multi-agent framework that combines evolutionary search and structured hypothesis management to automate scientific discovery in complex experimental environments, outperforming traditional methods.
Contribution
It introduces a novel structured research workflow with hierarchical reflection mechanisms, unifying evolutionary and systematic exploration for automated scientific discovery.
Findings
Outperforms strong evolutionary baselines on optimization benchmarks
Provides a general, extensible framework for AI-assisted discovery
Demonstrates effectiveness in simulation-based driving scenarios
Abstract
Automating scientific discovery in complex, experiment-driven domains requires more than iterative mutation of programs; it demands structured hypothesis management, environment interaction, and principled reflection. We present OR-Agent, a configurable multi-agent research framework designed for automated exploration in rich experimental environments. OR-Agent organizes research as a structured tree-based workflow that explicitly models branching hypothesis generation and systematic backtracking, enabling controlled management of research trajectories beyond simple mutation-crossover loops. At its core, we introduce an evolutionary-systematic ideation mechanism that unifies evolutionary selection of research starting points, comprehensive research plan generation, and coordinated exploration within a research tree. We introduce a hierarchical optimization-inspired reflection system in…
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Taxonomy
TopicsScientific Computing and Data Management · Machine Learning and Data Classification · Machine Learning in Materials Science
