SandMLE generates micro-scale synthetic MLE environments from seed tasks to enable 13x faster on-policy RL training, delivering 20-67% gains over SFT on MLE-bench-lite and better generalization to new scaffolds.
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Synthetic Sandbox for Training Machine Learning Engineering Agents
SandMLE generates micro-scale synthetic MLE environments from seed tasks to enable 13x faster on-policy RL training, delivering 20-67% gains over SFT on MLE-bench-lite and better generalization to new scaffolds.