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Fudan University and the Shanghai Artificial Intelligence Laboratory have developed DOLPHIN, a closed-loop auto-research framework covering the entire scientific research process. Experiments proceed iteratively, with results categorized as improvements, maintenance, or declines. improvement over baseline models.
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