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            課程目錄:Deep Learning for Vision培訓
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            Deep Learning vs Machine Learning vs Other Methods
            When Deep Learning is suitable
            Limits of Deep Learning
            Comparing accuracy and cost of different methods
            Methods Overview
            Nets and Layers
            Forward / Backward: the essential computations of layered compositional models.
            Loss: the task to be learned is defined by the loss.
            Solver: the solver coordinates model optimization.
            Layer Catalogue: the layer is the fundamental unit of modeling and computation
            Convolution?
            Methods and models
            Backprop, modular models
            Logsum module
            RBF Net
            MAP/MLE loss
            Parameter Space Transforms
            Convolutional Module
            Gradient-Based Learning
            Energy for inference,
            Objective for learning
            PCA; NLL:
            Latent Variable Models
            Probabilistic LVM
            Loss Function
            Detection with Fast R-CNN
            Sequences with LSTMs and Vision + Language with LRCN
            Pixelwise prediction with FCNs
            Framework design and future
            Tools
            Caffe
            Tensorflow
            R
            Matlab
            Others...

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