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《Efficient Deep Learning Book》[EDL] Chapter 7 - Automationevolutionary approaches which are based on biological mechanisms like mutation and natural selection. The promotion of better performing trials to the next iteration (round) can be viewed as selection or survival0 码力 | 33 页 | 2.48 MB | 1 年前3
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