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            課程目錄:TensorFlow for Image Recognition培訓
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                      TensorFlow for Image Recognition培訓

             

             

             

            Machine Learning and Recursive Neural Networks (RNN) basics

            NN and RNN
            Backpropagation
            Long short-term memory (LSTM)
            TensorFlow Basics

            Creation, Initializing, Saving, and Restoring TensorFlow variables
            Feeding, Reading and Preloading TensorFlow Data
            How to use TensorFlow infrastructure to train models at scale
            Visualizing and Evaluating models with TensorBoard
            TensorFlow Mechanics 101

            Tutorial Files
            Prepare the Data
            Download
            Inputs and Placeholders
            Build the Graph
            Inference
            Loss
            Training
            Train the Model
            The Graph
            The Session
            Train Loop
            Evaluate the Model
            Build the Eval Graph
            Eval Output
            Advanced Usage

            Threading and Queues
            Distributed TensorFlow
            Writing Documentation and Sharing your Model
            Customizing Data Readers
            Using GPUs1
            Manipulating TensorFlow Model Files
            TensorFlow Serving

            Introduction
            Basic Serving Tutorial
            Advanced Serving Tutorial
            Serving Inception Model Tutorial
            Convolutional Neural Networks

            Overview
            Goals
            Highlights of the Tutorial
            Model Architecture
            Code Organization
            CIFAR-10 Model
            Model Inputs
            Model Prediction
            Model Training
            Launching and Training the Model
            Evaluating a Model
            Training a Model Using Multiple GPU Cards1
            Placing Variables and Operations on Devices
            Launching and Training the Model on Multiple GPU cards
            Deep Learning for MNIST

            Setup
            Load MNIST Data
            Start TensorFlow InteractiveSession
            Build a Softmax Regression Model
            Placeholders
            Variables
            Predicted Class and Cost Function
            Train the Model
            Evaluate the Model
            Build a Multilayer Convolutional Network
            Weight Initialization
            Convolution and Pooling
            First Convolutional Layer
            Second Convolutional Layer
            Densely Connected Layer
            Readout Layer
            Train and Evaluate the Model
            Image Recognition

            Inception-v3
            C++
            Java
            1 Topics related to the use of GPUs are not available as a part of a remote course. They can be delivered during classroom-based courses, but only by prior agreement, and only if both the trainer and all participants have laptops with supported NVIDIA GPUs, with 64-bit Linux installed (not provided by NobleProg). NobleProg cannot guarantee the availability of trainers with the required hardware.

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