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            課程目錄:Deep Learning AI Techniques for Executives, Developers and Managers培訓
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                      Deep Learning AI Techniques for Executives, Developers and Managers培訓

             

             

             

            Day-1:
            Basic Machine Learning
            Module-1
            Introduction:

            Exercise – Installing Python and NN Libraries
            Why machine learning?
            Brief history of machine learning
            The rise of deep learning
            Basic concepts in machine learning
            Visualizing a classification problem
            Decision boundaries and decision regions
            iPython notebooks
            Module-2
            Exercise – Decision Regions
            The artificial neuron
            The neural network, forward propagation and network layers
            Activation functions
            Exercise – Activation Functions
            Backpropagation of error
            Underfitting and overfitting
            Interpolation and smoothing
            Extrapolation and data abstraction
            Generalization in machine learning
            Module-3
            Exercise – Underfitting and Overfitting
            Training, testing, and validation sets
            Data bias and the negative example problem
            Bias/variance tradeoff
            Exercise – Datasets and Bias
            Module-4
            Overview of NN parameters and hyperparameters
            Logistic regression problems
            Cost functions
            Example – Regression
            Classical machine learning vs. deep learning
            Conclusion
            Day-2 : Convolutional Neural Networks (CNN)
            Module-5
            Introduction to CNN
            What are CNNs?
            Computer vision
            CNNs in everyday life
            Images – pixels, quantization of color & space, RGB
            Convolution equations and physical meaning, continuous vs. discrete
            Exercise – 1D Convolution
            Module-6
            Theoretical basis for filtering
            Signal as sum of sinusoids
            Frequency spectrum
            Bandpass filters
            Exercise – Frequency Filtering
            2D convolutional filters
            Padding and stride length
            Filter as bandpass
            Filter as template matching
            Exercise – Edge Detection
            Gabor filters for localized frequency analysis
            Exercise – Gabor Filters as Layer 1 Maps
            Module-7
            CNN architecture
            Convolutional layers
            Max pooling layers
            Downsampling layers
            Recursive data abstraction
            Example of recursive abstraction
            Module-8
            Exercise – Basic CNN Usage
            ImageNet dataset and the VGG-16 model
            Visualization of feature maps
            Visualization of feature meanings
            Exercise – Feature Maps and Feature Meanings
            Day-3 : Sequence Model
            Module-9
            What are sequence models?
            Why sequence models?
            Language modeling use case
            Sequences in time vs. sequences in space
            Module-10
            RNNs
            Recurrent architecture
            Backpropagation through time
            Vanishing gradients
            GRU
            LSTM
            Deep RNN
            Bidirectional RNN
            Exercise – Unidirectional vs. Bidirectional RNN
            Sampling sequences
            Sequence output prediction
            Exercise – Sequence Output Prediction
            RNNs on simple time varying signals
            Exercise – Basic Waveform Detection
            Module-11
            Natural Language Processing (NLP)
            Word embeddings
            Word vectors: word2vec
            Word vectors: GloVe
            Knowledge transfer and word embeddings
            Sentiment analysis
            Exercise – Sentiment Analysis
            Module-12
            Quantifying and removing bias
            Exercise – Removing Bias
            Audio data
            Beam search
            Attention model
            Speech recognition
            Trigger word Detection
            Exercise – Speech Recognition

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