AI RESEARCH
LEAP: Trajectory-Level Evaluation of LLMs in Iterative Scientific Design
arXiv CS.AI
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ArXi:2605.15341v1 Announce Type: cross LLMs are increasingly deployed in autonomous laboratories, under the assumption that their domain priors and reasoning over iterative feedback let them converge on good designs in fewer iterations than feedback-only baselines. Current iterative scientific design benchmarks, however, score only outcome snapshots at fixed horizons. This leaves the learning trajectory unmeasured, even though the trajectory is what captures learning efficiency, where each iteration saved is a real saving in cost and time.