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BAYESIAN OPTIMIZATION OF SPARSITY RATIOS IN MODEL COMPRESSION

机译:模型压缩中稀疏比稀稀率的优化

摘要

One embodiment of a method includes determining, by a Bayesian optimizer, a first sparsity ratio associated with a limit on an accuracy loss caused by compressing the machine learning model. The method further includes selecting, by the Bayesian optimizer, a second sparsity ratio that optimizes a predefined objective function for the machine learning model within a search space bounded by the first sparsity ratio. The method further includes generating a compressed version of the machine learning model having the second sparsity ratio.
机译:一种方法的一个实施例包括通过贝叶斯优化器确定与通过压缩机器学习模型引起的精度损耗的限制相关联的第一稀疏比。该方法还包括由贝叶斯优化器选择第二稀疏比,该第二稀疏比在由第一稀疏比界限的搜索空间内优化用于机器学习模型的预定义目标函数。该方法还包括生成具有第二稀疏比的机器学习模型的压缩版本。

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