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      課程目錄:Advanced Deep Learning with Keras and Python培訓
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               Advanced Deep Learning with Keras and Python培訓

       

       

       

      Introduction

      Keras and Deep Learning Frameworks

      TensorFlow and Theano back-ends
      Keras vs Tensorflow
      Data and Machine Learning

      Tabular data, visual data, unstructured data, etc.
      Unsupervised learning, supervised learning, reinforcement learning, etc.
      Preparing the Development Environment

      Installing and configuring Anaconda
      Installing Keras with a TensorFlow back-end
      Neural Networks in Keras

      Using Keras functional API to build a network
      Pre-processing and fitting data
      Defining a Keras model
      Mutiple Input and Output Networks

      Building two input-networks
      Representing high-cardinality data
      Merging layers
      Extending the two input-network
      Building neural networks with multiple outputs
      Solving multiple problems simultaneously
      Training and Pre-Training

      Training models
      Saving and loading models
      Using ResNet50 on models
      TensorBoard

      Exporting Keras logs
      Visualizing a computational graph and training progress
      Google Cloud

      Exporting models
      Uploading Keras models
      Using a model in Google Cloud
      Summary and Conclusion

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