没有合适的资源?快使用搜索试试~ 我知道了~
Machine Learning with TensorFlow MEAP v10
需积分: 0 0 下载量 114 浏览量
2019-01-28
09:11:06
上传
评论
收藏 4.89MB PDF 举报
温馨提示
试读
244页
Machine Learning with TensorFlow MEAP v10。插图挺有趣,写得深入浅出,适合快速入门学习。
资源推荐
资源详情
资源评论
MEAP Edition
Manning Early Access Program
Machine Learning with TensorFlow
Version 10
Copyright 2017 Manning Publications
For more information on this and other Manning titles go to
www.manning.com
©Manning Publications Co. We welcome reader comments about anything in the manuscript - other than typos and
other simple mistakes. These will be cleaned up during production of the book by copyeditors and proofreaders.
https://forums.manning.com/forums/machine-learning-with-tensorflow
Licensed to Shashank Nainwal <hybridboy11@gmail.com>
welcome
Dear fellow early adopters, curious readers, and puzzled newcomers,
Thank you all for every bit of communication with me, whether it be through the official
book forums, through email, on GitHub, or even on Reddit. I’ve listened carefully to your
questions, suggestions, and concerns, regardless of whether or not I’ve replied to you (and I
do apologize for not replying to you).
In the latest edition, I am proud to announce a beautiful makeover of every chapter. The
text is greatly improved and slowed down to better cover complex matters, especially the
areas where you requested more explanation. Most figures and mathematical equations have
been updated to look crisp and professional. The code is now updated to TensorFlow v1.0, and
it is also available on GitHub at
https://github.com/BinRoot/TensorFlow-Book/
. Also, the
chapters are rearranged to better deliver the right skills at the right time, if the book were
read in order.
Thank you for investing in the MEAP edition of Machine Learning with TensorFlow. You’re
one of the first to dive into this introductory book about cutting-edge machine learning
techniques using the hottest technology (spoiler alert: I’m talking about TensorFlow). You’re a
brave one, dear reader. And for that, I reward you generously with the following.
You’re about to learn machine learning from scratch, both the theory and how to easily
implement it. As long as you roughly understand object-oriented programming and know how
to use Python, this book will teach you everything you need to know to start solving your own
big-data problems, whether it be for work or research.
TensorFlow was released just over a year ago by some company that specializes in search
engine technology. Okay, I’m being a little facetious; well-known researchers at Google
engineered this library. But with such prowess comes intimidating documentation and
assumed knowledge. Fortunately for you, this book is down-to-earth and greets you with open
arms.
Each chapter zooms into a prominent example of machine learning, such as classification,
regression, anomaly detection, clustering, and many modern neural networks. Cover them all
to master the basics, or cater it to your needs by skipping around.
Keep me updated on typos, mistakes, and improvements because this book is undergoing
heavy development. It’s like living in a house that’s still actively under construction; at least
you won’t have to pay rent. But on a serious note, your feedback along the way will be
appreciated.
With gratitude,
—Nishant Shukla
©Manning Publications Co. We welcome reader comments about anything in the manuscript - other than typos and
other simple mistakes. These will be cleaned up during production of the book by copyeditors and proofreaders.
https://forums.manning.com/forums/machine-learning-with-tensorflow
Licensed to Shashank Nainwal <hybridboy11@gmail.com>
brief contents
PART 1 MY MACHINE LEARNING RIG
1 A machine learning odyssey
2 TensorFlow essentials
PART 2 CORE LEARNING ALGORITHMS
3 Linear regression and beyond
4 A gentle introduction to classification
5 Automatically clustering data
6 Hidden Markov models
PART 3 THE NEURAL NETWORK PARADIGM
7 A peek into autoencoders
8 Reinforcement learning
9 Convolutional neural networks
10 Recurrent neural networks
11 Sequence-to-sequence models for chatbots
12 Utility landscape
APPENDIX
A Installation
©Manning Publications Co. We welcome reader comments about anything in the manuscript - other than typos and
other simple mistakes. These will be cleaned up during production of the book by copyeditors and proofreaders.
https://forums.manning.com/forums/machine-learning-with-tensorflow
Licensed to Shashank Nainwal <hybridboy11@gmail.com>
1
A machine-learning odyssey
This chapter covers
• Machine learning fundamentals
• Data representation, features, and vector norms
• Existing machine learning tools
• Why TensorFlow
Have you ever wondered if t here are lim it s t o what com puter program s can solve?
Nowadays, com put ers appear t o do a lot m ore than sim ply unravel m athem at ical equations. I n
the last half- cent ury, program m ing has becom e t he ult im at e tool t o autom ate t asks and save
tim e, but how m uch can we autom at e, and how do we go about doing so?
1
Licensed to Shashank Nainwal <hybridboy11@gmail.com>
剩余243页未读,继续阅读
资源评论
神功智能
- 粉丝: 10
- 资源: 8
上传资源 快速赚钱
- 我的内容管理 展开
- 我的资源 快来上传第一个资源
- 我的收益 登录查看自己的收益
- 我的积分 登录查看自己的积分
- 我的C币 登录后查看C币余额
- 我的收藏
- 我的下载
- 下载帮助
最新资源
- 计算给定时间序列的平均值、方差、概率分布(大致的分布)、自协方差函数.zip
- 基于spring boot上的注解缓存,自带轻量级缓存管理页面.zip
- 基于pytorch实现的时间序列预测训练框架,各个部分模块化,方便修改模型.zip
- 多元预测模型在混沌时间序列上的应用.zip
- 多个测序Seq格式序列文件转fasta格式并汇总为一个文件,方便序列比对分析.zip
- 此项目是对时间序列分析内容的梳理,包括时间序列中的数据分析以及常用模型等 项目整体以实战为主.zip
- 尝试用于分析基于时间序列的日志分析.zip
- 本工具箱是一个基于MATLAB自带的Deep Learning Toolbox开发的LSTM深度学习预测时间序列的工具箱.zip
- python时间序列分析.zip
- C结构体与 JSON 快速互转库,快速实现C结构体的序列化及反序列化.zip
资源上传下载、课程学习等过程中有任何疑问或建议,欢迎提出宝贵意见哦~我们会及时处理!
点击此处反馈
安全验证
文档复制为VIP权益,开通VIP直接复制
信息提交成功