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            課程目錄:Deep Learning for Vision with Caffe培訓
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                     Deep Learning for Vision with Caffe培訓

             

             

             

             

            Installation
            Docker
            Ubuntu
            RHEL / CentOS / Fedora installation
            Windows
            Caffe Overview
            Nets, Layers, and Blobs: the anatomy of a Caffe model.
            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 – Caffe’s catalogue includes layers for state-of-the-art models.
            Interfaces: command line, Python, and MATLAB Caffe.
            Data: how to caffeinate data for model input.
            Caffeinated Convolution: how Caffe computes convolutions.
            New models and new code
            Detection with Fast R-CNN
            Sequences with LSTMs and Vision + Language with LRCN
            Pixelwise prediction with FCNs
            Framework design and future
            Examples:
            MNIST

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