返回首页
苏宁会员
购物车 0
易付宝
手机苏宁

服务体验

店铺评分与同行业相比

用户评价:----

物流时效:----

售后服务:----

  • 服务承诺: 正品保障
  • 公司名称:
  • 所 在 地:

  • TensorFlow智能移动项目(影印版) (美)杰夫·唐(Jeff Tang) 著 专业科技 文轩网
  • 新华书店正版
    • 作者: (美)杰夫·唐(Jeff Tang)著
    • 出版社: 东南大学出版社
    • 出版时间:2019-03-01 00:00:00
    送至
  • 由""直接销售和发货,并提供售后服务
  • 加入购物车 购买电子书
    服务

    看了又看

    商品预定流程:

    查看大图
    /
    ×

    苏宁商家

    商家:
    文轩网图书旗舰店
    联系:
    • 商品

    • 服务

    • 物流

    搜索店内商品

    商品分类

         https://product.suning.com/0070067633/11555288247.html

     

    商品参数
    • 作者: (美)杰夫·唐(Jeff Tang)著
    • 出版社:东南大学出版社
    • 出版时间:2019-03-01 00:00:00
    • 版次:1
    • 印次:1
    • 印刷时间:2019-03-01
    • 字数:494千字
    • 页数:391
    • 开本:16开
    • 装帧:平装
    • ISBN:9787564182908
    • 国别/地区:中国
    • 版权提供:东南大学出版社

    TensorFlow智能移动项目(影印版)

    作  者:(美)杰夫·唐(Jeff Tang) 著
    定  价:98
    出 版 社:东南大学出版社
    出版日期:2019年03月01日
    页  数:391
    装  帧:平装
    ISBN:9787564182908
    主编推荐

    内容简介

    作为一名开发人员,您总是需要留心并做好准备以应对即将发生的事情,同时还要关注当前趋势。那么,有什么比学习现在和未来这两个世界的完美结合更好呢?人工智能(AI)被广泛认为是继移动之后的下一个大产业,而谷歌的TensorFlow是靠前的开源机器学习框架,也是人工智能很热门的分支。这本书涵盖了10多个完整的以TensorFlow为引擎、运行各种很酷的TensorFlow模型离线设备从头开始构建的IOS、Android和树莓派apps:从计算机视觉、语音和语言处理到生成对抗网络和AlphaZero之类的深度学习。您将学习如何使用或重新训练现有的TensorFlow模型,构建自己的模型,以及开发运行这些TensorFlow模型的智能移动apps。您将了解如何使用循序渐进的教程快速构建这样的app,以及如何利用大量来之不易的故障排除技巧来避免开发过程中的许多陷阱。

    作者简介

    精彩内容

    目录
    Preface
    Chapter 1: Getting Started with Mobile TensorFIow
    Setting up TensorFIow
    Setting up TensorFIow on MacOS
    Setting up TensorFIow on GPU-powered Ubuntu
    Setting up Xcode
    Setting up Android Studio
    TensorFIow Mobile vs TensorFIow Lite
    Running sample TensorFIow iOS apps
    Running sample TensorFIow Android apps
    Summary
    Chapter 2: Classifying Images with Transfer Learning
    Transfer learning - what and why
    Retraining using the Inception v3 model
    Retraining using MobileNet models
    Using the retrained models in the sample iOS app
    Using the retrained models in the sample Android app
    Adding TensorFIow to your own iOS app
    Adding TensorFIow to your Objective-C iOS app
    Adding TensorFIow to your Swift iOS app
    Adding TensorFIow to your own Android app
    Summary
    Chapter 3: Detecting Objects and Their Locations
    Object detection-a quick overview
    Setting up the TensorFIow Object Detection API
    Quick installation and example
    Using pre-trained models
    Retraining SSD-MobileNet and Faster RCNN models
    Using object detection models in iOS
    Building TensorFIow iOS libraries manually
    Using TensorFIow iOS libraries in an app
    Adding an object detection feature to an lOS app
    Using YOLO2-another object-detection model
    Summary
    Chapter 4: Transforming Pictures with Amazing Art Styles
    Neural Style Transfer - a quick overview
    Training fast neural-style transfer models
    Using fast neural-style transfer models in lOS
    Adding and testing with fast neural transfer models
    Looking back at the lOS code using fast neural transfer models
    Using fast neural-style transfer models in Android
    Using the TensorFIow Magenta multi-style model in lOS
    Using the TensorFIow Magenta multi-style model in Android
    Summary
    Chapter 5: Understanding Simple Speech Commands
    Speech recognition - a quick overview
    Training a simple commands recognition model
    Using a simple speech recognition model in Android
    Building a new app using the model
    Showing model-powered recognition results
    Using a simple speech recognition model in lOS with Objective-C
    Building a new app using the model
    Fixing model-loading errors with tf_op_files.txt
    Using a simple speech recognition model in lOS with Swift
    Summary
    Chapter 6: Describing Images in Natural Language
    Image captioning - how it works
    Training and freezing an image captioning model
    Training and testing caption generation
    Freezing the image captioning model
    Transforming and optimizing the image captioning model
    Fixing errors with transformed models
    Optimizing the transformed model
    Using the image captioning model in lOS
    Using the image captioning model in Android
    Summary
    Chapter 7: Recognizing Drawing with CNN and LSTM
    Drawing classification - how it works
    Training, predicting, and preparing the drawing classification model
    Training the drawing classification model
    Predicting with the drawing classification model
    Preparing the drawing classification model
    Using the drawing classification model in lOS
    Building custom TensorFIow library for lOS
    Developing an lOS app to use the model
    Using the drawing classification model in Android
    Building custom TensorFIow library for Android
    Developing an Android app to use the model
    Summary
    Chapter 8: Predicting Stock Price with RNN
    RNN and stock price prediction - what and how
    Using the TensorFIow RNN API for stock price prediction
    Training an RNN model in TensorFIow
    Testing the TensorFIow RNN model
    Using the Keras RNN LSTM API for stock price prediction
    Training an RNN model in Keras
    Testing the Keras RNN model
    Running the TensorFIow and Keras models on iOS
    Running the TensorFIow and Keras models on Android
    Summary
    Chapter 9: Generating and Enhancing Images with GAN
    GAN - what and why
    Building and training GAN models with TensorFIow
    Basic GAN model of generating handwritten digits
    Advanced GAN model of enhancing image resolution
    Using the GAN models in iOS
    Using the basic GAN model
    Using the advanced GAN model
    Using the GAN models in Android
    Using the basic GAN model
    Using the advanced GAN model
    Summary
    Chapter 10: Building an AlphaZero-like Mobile Game App
    AlphaZero - how does it work?
    Training and testing an AlphaZero-like model for Connect 4
    Training the model
    Testing the model
    Looking into the model-building code
    Freezing the model
    Using the model in iOS to play Connect 4
    Using the model in Android to play Connect 4
    Summary
    Chapter 11: Using TensorFIow Lite and Core ML on Mobile
    TensorFIow Lite - an overview
    Using TensorFIow Lite in iOS
    Running the example TensorFIow Lite iOS apps
    Using a prebuilt TensorFIow Lite model in iOS
    Using a retrained TensorFIow model for TensorFIow Lite in iOS
    Using a custom TensorFIow Lite model in iOS
    Using TensorFIow Lite in Android
    Core ML for iOS - an overview
    Using Core ML with Scikit-Learn machine learning
    Building and converting the Scikit Learn models
    Using the converted Core ML models in iOS
    Using Core ML with Keras and TensorFIow
    Summary
    Chapter 12: Developing TensorFIow Apps on Raspberry Pi
    Setting up Raspberry Pi and making it move
    Setting up Raspberry Pi
    Making Raspberry Pi move
    Setting up TensorFIow on Raspberry Pi
    Image recognition and text to speech
    Audio recognition and robot movement
    Reinforcement learning on Raspberry Pi
    Understanding the CartPole simulated environment
    Starting with basic intuitive policy
    Using neural networks to build a better policy
    Summary
    Final words
    Other Books You May Enjoy
    Index

    售后保障

    最近浏览

    猜你喜欢

    该商品在当前城市正在进行 促销

    注:参加抢购将不再享受其他优惠活动

    x
    您已成功将商品加入收藏夹

    查看我的收藏夹

    确定

    非常抱歉,您前期未参加预订活动,
    无法支付尾款哦!

    关闭

    抱歉,您暂无任性付资格

    此时为正式期SUPER会员专享抢购期,普通会员暂不可抢购