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Deep Learning with Theano

You're reading from   Deep Learning with Theano Perform large-scale numerical and scientific computations efficiently

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Product type Paperback
Published in Jul 2017
Publisher Packt
ISBN-13 9781786465825
Length 300 pages
Edition 1st Edition
Tools
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Author (1):
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Christopher Bourez Christopher Bourez
Author Profile Icon Christopher Bourez
Christopher Bourez
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Table of Contents (15) Chapters Close

Preface 1. Theano Basics 2. Classifying Handwritten Digits with a Feedforward Network FREE CHAPTER 3. Encoding Word into Vector 4. Generating Text with a Recurrent Neural Net 5. Analyzing Sentiment with a Bidirectional LSTM 6. Locating with Spatial Transformer Networks 7. Classifying Images with Residual Networks 8. Translating and Explaining with Encoding – decoding Networks 9. Selecting Relevant Inputs or Memories with the Mechanism of Attention 10. Predicting Times Sequences with Advanced RNN 11. Learning from the Environment with Reinforcement 12. Learning Features with Unsupervised Generative Networks 13. Extending Deep Learning with Theano Index

Multi-GPU


Cifar and MNIST images are still small, below 35x35 pixels. Training on natural images requires the preservation of details in the images. So, for example, a good input size is 224x224, which is 40 times more. When image classification nets with such input size have a few hundred layers, GPU memory limits the batch size to a dozen images and so training a batch takes a long time.

To work in multi-GPU mode:

  1. The model parameters are in a shared variable, meaning shared between CPU / GPU 1 / GPU 2 / GPU 3 / GPU 4, as in single GPU mode.

  2. The batch is divided into four splits, and each split is sent to a different GPU for the computation. The network output is computed on the split, and the gradients retro-propagated to each weight. The GPU returns the gradient values for each weight.

  3. The gradients for each weight are fetched back from the multiple GPU to the CPU and stacked together. The stacked gradients represent the gradient of the full initial batch.

  4. The update rule applies to the batch...

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