Are you wondering whether to get into the ‘R’ bus or ‘python’ bus?

My suggestion is to you is “Why not get into the ‘R and Python’ train?”

The third edition of my book ‘Practical Machine Learning with R and Python Machine Learning in stereo’ is now available in both paperback ($12.99) andkindle($8.99/Rs449) versions. In the third edition all code sections have been re-formatted to use the fixed width font ‘Consolas’. This neatly organizes output which have columns like confusion matrix, dataframes etc to be columnar, making the code more readable. There is a science to formatting too!! which improves the look and feel. It is little wonder that Steve Jobs had a keen passion for calligraphy! Additionally some typos have been fixed.


My book ‘Practical Machine Learning in R and Python: Third edition’ on Amazon

In this book I implement some of the most common, but important Machine Learning algorithms in R and equivalent Python code.

1. Practical machine with R and Python: Third Edition Machine Learning in Stereo (Paperback-$12.99)

2. Practical machine with R and Python Third Edition Machine Learning in Stereo (Kindle- $8.99/Rs449)

This book is ideal both for beginners and the experts in R and/or Python. Those starting their journey into datascience and ML will find the first 3 chapters useful, as they touch upon the most important programming constructs in R and Python and also deal with equivalent statements in R and Python. Those who are expert in either of the languages, R or Python, will find the equivalent code ideal for brushing up on the other language. And finally,those who are proficient in both languages, can use the R and Python implementations to internalize the ML algorithms better.

Here is a look at the topics covered

Table of Contents

Preface …………………………………………………………………………….4

Introduction ………………………………………………………………………6

1. Essential R ………………………………………………………………… 8

2. Essential Python for Datascience ……………………………………………57

3. R vs Python …………………………………………………………………81

4. Regression of a continuous variable ……………………………………….101

5. Classification and Cross Validation ………………………………………..121

6. Regression techniques and regularization ………………………………….146

7. SVMs, Decision Trees and Validation curves ………………………………191

8. Splines, GAMs, Random Forests and Boosting ……………………………222

9. PCA, K-Means and Hierarchical Clustering ………………………………258

References ……………………………………………………………………..269

Pick up your copy today!!

Hope you have a great time learning as I did while implementing these algorithms!

本文开发(python)相关术语:python基础教程 python多线程 web开发工程师 软件开发工程师 软件开发流程

代码区博客精选文章
分页:12
转载请注明
本文标题:My book ‘Practical Machine Learning in R and Python: Third edition’ on Amazon
本站链接:https://www.codesec.net/view/628053.html


1.凡CodeSecTeam转载的文章,均出自其它媒体或其他官网介绍,目的在于传递更多的信息,并不代表本站赞同其观点和其真实性负责;
2.转载的文章仅代表原创作者观点,与本站无关。其原创性以及文中陈述文字和内容未经本站证实,本站对该文以及其中全部或者部分内容、文字的真实性、完整性、及时性,不作出任何保证或承若;
3.如本站转载稿涉及版权等问题,请作者及时联系本站,我们会及时处理。
登录后可拥有收藏文章、关注作者等权限...
技术大类 技术大类 | 开发(python) | 评论(0) | 阅读(53)