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            課程目錄:Neural computing – Data science培訓
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                      Neural computing – Data science培訓

             

             

             

            Overview of neural networks and deep learning
            The concept of Machine Learning (ML)
            Why we need neural networks and deep learning?
            Selecting networks to different problems and data types
            Learning and validating neural networks
            Comparing logistic regression to neural network
            Neural network
            Biological inspirations to Neural network
            Neural Networks– Neuron, Perceptron and MLP(Multilayer Perceptron model)
            Learning MLP – backpropagation algorithm
            Activation functions – linear, sigmoid, Tanh, Softmax
            Loss functions appropriate to forecasting and classification
            Parameters – learning rate, regularization, momentum
            Building Neural Networks in Python
            Evaluating performance of neural networks in Python
            Basics of Deep Networks
            What is deep learning?
            Architecture of Deep Networks– Parameters, Layers, Activation Functions, Loss functions, Solvers
            Restricted Boltzman Machines (RBMs)
            Autoencoders
            Deep Networks Architectures
            Deep Belief Networks(DBN) – architecture, application
            Autoencoders
            Restricted Boltzmann Machines
            Convolutional Neural Network
            Recursive Neural Network
            Recurrent Neural Network
            Overview of libraries and interfaces available in Python
            Caffee
            Theano
            Tensorflow
            Keras
            Mxnet
            Choosing appropriate library to problem
            Building deep networks in Python
            Choosing appropriate architecture to given problem
            Hybrid deep networks
            Learning network – appropriate library, architecture definition
            Tuning network – initialization, activation functions, loss functions, optimization method
            Avoiding overfitting – detecting overfitting problems in deep networks, regularization
            Evaluating deep networks
            Case studies in Python
            Image recognition – CNN
            Detecting anomalies with Autoencoders
            Forecasting time series with RNN
            Dimensionality reduction with Autoencoder
            Classification with RBM

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