MolMem achieves 90% success on single-property molecular optimization tasks (1.5x over best baseline) and 52% on multi-property tasks with only 500 oracle calls via static exemplar memory and evolving skill memory in agentic RL.
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MolMem: Memory-Augmented Agentic Reinforcement Learning for Sample-Efficient Molecular Optimization
MolMem achieves 90% success on single-property molecular optimization tasks (1.5x over best baseline) and 52% on multi-property tasks with only 500 oracle calls via static exemplar memory and evolving skill memory in agentic RL.