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TensorFlow for Image Recognition培訓(xùn)

 
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上課地點(diǎn):【上?!浚和瑵?jì)大學(xué)(滬西)/新城金郡商務(wù)樓(11號(hào)線白銀路站) 【深圳分部】:電影大廈(地鐵一號(hào)線大劇院站)/深圳大學(xué)成教院 【北京分部】:北京中山學(xué)院/福鑫大樓 【南京分部】:金港大廈(和燕路) 【武漢分部】:佳源大廈(高新二路) 【成都分部】:領(lǐng)館區(qū)1號(hào)(中和大道) 【沈陽(yáng)分部】:沈陽(yáng)理工大學(xué)/六宅臻品 【鄭州分部】:鄭州大學(xué)/錦華大廈 【石家莊分部】:河北科技大學(xué)/瑞景大廈 【廣州分部】:廣糧大廈 【西安分部】:協(xié)同大廈
最近開(kāi)課時(shí)間(周末班/連續(xù)班/晚班):2019年1月26日
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課程大綱
 

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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