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On CPU Performance Optimization of Restricted Boltzmann Machine and Convolutional RBM

机译:约束Boltzmann机和卷积RBM的CPU性能优化研究。

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摘要

Although Graphics Processing Units (GPUs) seem to currently be the best platform to train machine learning models, most research laboratories are still only equipped with standard CPU systems. In this paper, we investigate multiple techniques to speedup the training of Restricted Boltzmann Machine (RBM) models and Convolutional RBM (CRBM) models on CPU with the Contrastive Divergence (CD) algorithm. Experimentally, we show that the proposed techniques can reduce the training time by up to 30 times for RBM and up to 12 times for CRBM, on a data set of handwritten digits.
机译:尽管图形处理单元(GPU)当前似乎是训练机器学习模型的最佳平台,但大多数研究实验室仍仅配备标准CPU系统。在本文中,我们研究了多种技术来利用对比散度(CD)算法在CPU上加快训练受限Boltzmann机器(RBM)模型和卷积RBM(CRBM)模型的速度。从实验上,我们表明,在手写数字数据集上,所提出的技术可以将RBM的训练时间减少多达30倍,将CRBM的训练时间减少多达12倍。

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  • 会议地点 Ulm(DE)
  • 作者单位

    University of Applied Science of Western Switzerland, Delemont, Switzerland,University of Fribourg, Pribourg, Switzerland;

    University of Applied Science of Western Switzerland, Delemont, Switzerland,University of Fribourg, Pribourg, Switzerland;

    University of Applied Science of Western Switzerland, Delemont, Switzerland,University of Fribourg, Pribourg, Switzerland;

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  • 正文语种 eng
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