Deep Learning Frame Work:

Through a high-level programming interface, deep learning (DL) frameworks provide the building blocks for developing, training, and evaluating deep neural networks. To provide high speed, multi-GPU accelerated training, popular deep learning frameworks like MX Net, P Torch, Tensor Flow, and others rely on GPU-accelerated libraries like CUDNN, NCCL, and DALI.

  • GPU-Accelerated
  • Multi GPU-Accelerated
  • MX-Net
  • P Torch

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Deep Learning Frame Work: Conference Speakers

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