Skip to main content

Best Books for Machine Learning and Artificial Intelligence

Here you will get list of best books for Machine Learning and Artificial Intelligence that are useful for beginners and intermediates.

Hope you all are doing good. We are again here in front you all with another successive post on Machine Learning. We almost have covered the theoretical portion of the course and will be doing the hands-on practical soon. We all know that there are plenty of resources on the internet that we can use to study and learn almost anything. But again availability of the contents in such a humongous amount haunts the learners that where to start their journey and very often a learner ends up confused and irritated. Great scholars suggest reading books, ain’t they? So why don’t we take the easier path? While the internet is full of plenty of choices that seem very confusing for a novice, we would suggest to start the journey with conventional steps, of course books.

Again you guys do not really worry or need to wander here and there in search of books neither you have to ask someone else’s suggestion for what book to have. Here we have complied a list of some useful books that will give a kick-start to your effort towards data sciences and analytics also on the other hand are interesting to read. Moreover keeping in mind our readers convenience, we’ve also provided the links from where you can order books of your choice without even stepping out of the comfort of your home.  So without talking much let’s get started and step toward the list we have compiled for you.

Best Books for Machine Learning (ML)

The Elements of Statistical Learning

The Elements of Statistical Learning

As the name itself suggests, this book aims at explaining the algorithms of machine learning mathematically with a tint of statistics. The three authors are Trevor Hastie, Robert Tibshirani and Jerome Friedman has emphasized on explaining the logic behind the machine learning algorithms with the help of mathematical derivations.

Note: If you have a good grasp of linear algebra, we would suggest to go with this book.

Python Machine Learning by Example

Python Machine Learning by Example

Instead you can buy this book written by Yuxi (Hayden) Liu. With this book you will be able to learn the fundamentals of machine learning and would be able to build your own intelligent applications.

Note: Please note there is no pre-requisite to start with this book. Even a person with zero knowledge about machine learning can easily get a grasp over the course.

Learning from Data

Learning from Data

This very books provide a simplified understanding of the complex areas of machine learning. Instead of lengthy explanations, small and to-the point explanation is being provided by Yaser Abu Mostafa, Malik Magdon Ismail and Hsuan-Tien Lin. We would suggest this book as a good means to learn and apply the principles of machine learning for the beginners.

Moreover in addition to the book reading you can also refer to online tutorials by Yaser Abu Mostafa.

Programming Collective Intelligence

Programming Collective Intelligence

This book popularly known as PCI in the world of machine learning is said to have all that requires to start learning machine learning. It is believed that this book was written long before the evolution of machine learning as we see it today, but to our surprise, the topics and chapters discussed entirely relate to the version of machine learning we have today.

We strongly recommend this book to every aspiring data scientist, ml enthusiast and even folks who are into machine learning since quite a few time. We bet you won’t regret giving this book a try.

Machine Learning by Tom Mitchell

Machine Learning by Tom M. Mitchell

After reading the book mentioned just above, we would recommend you to give this too a try. Tom has tried to make his readers understand the concept of machine learning with the help of pseudocodes and case studies. You will also find some interesting basic examples to understand the algorithms with ease.

Best Books for Artificial Intelligence (AI)

Artificial Intelligence: A Modern Approach

Artificial Intelligence A Modern Approach

This book is considered as the holy book for understanding the immense field of AI. Peter Norvig and Stuart Russell worked together to make this art happen. This book is suited to the people new to AI. Not only this provides an overview about AI but also covers some advanced topics like search algorithms, working with logic, machine learning, language processing, etc.

Paradigm of Artificial Intelligence Programming

Paradigms of Artificial Intelligence Programming

This book too is written by Peter Norvig. This book primarily aims at teaching its readers the common lisp techniques to build robust AI systems. Instead of just teaching theory, in this book Norvig has put more emphasis on the practical part to let his readers develop programs and systems at their own. If a personnel want to make his/her career in the AI domain, this book is worth giving a shot.

Artificial Intelligence for Humans

Artificial Intelligence for Humans

Jeff Heaton, the author of this book aims to teach his readers the basic AI algorithms like clustering, error calculation, linear regression, etc. This book is well equipped with good examples and relevant test cases. Moreover this book demands good grasp on mathematics in order to understand the equations described.

A First Course in Artificial Intelligence

A First Course in Artificial Intelligence

This book is an introductory step towards AI and written by Deepak Khemani. This book is written in such a manner that a person from non-programming background can also understand the concepts easily. Although the advanced topics are not explained into depth, but the overall structure of the book is acceptable. The books explains the classical methods and the updated concepts as well.

Any doubts or suggestions are welcomed in the comment section below. Also let us know if there is any other best books for machine learning and artificial intelligence you have read and is worth mentioning in the list.

The post Best Books for Machine Learning and Artificial Intelligence appeared first on The Crazy Programmer.



from The Crazy Programmer https://www.thecrazyprogrammer.com/2018/03/best-books-for-machine-learning-and-artificial-intelligence.html

Comments

Popular posts from this blog

dotnet sdk list and dotnet sdk latest

Can someone make .NET Core better with a simple global command? Fanie Reynders did and he did it in a simple and elegant way. I'm envious, in fact, because I spec'ed this exact thing out in a meeting a few months ago but I could have just done it like he did and I would have used fewer keystrokes! Last year when .NET Core was just getting started, there was a "DNVM" helper command that you could use to simplify dealing with multiple versions of the .NET SDK on one machine. Later, rather than 'switching global SDK versions,' switching was simplified to be handled on a folder by folder basis. That meant that if you had a project in a folder with no global.json that pinned the SDK version, your project would use the latest installed version. If you liked, you could create a global.json file and pin your project's folder to a specific version. Great, but I would constantly have to google to remember the format for the global.json file, and I'd constan

R vs Python for Machine Learning

There are so many things to learn before to choose which language is good for Machine Learning. We will discuss each and everything about R as well as Python and the situation or problem in which situation we have to use which language. Let’s start Python and R are the two most Commonly used Programming Languages for Machine Learning and because of the popularity of both the languages Novice or you can say fresher are getting confused, whether they should choose R or Python language to commence their career in the Machine learning domain. Don’t worry guys through this article we will discuss R vs Python for Machine Learning. So, without exaggerating this article let’s get started. We will start it from the very Basics things or definitions. R vs Python for Machine Learning Introduction R is a programming language made by statisticians and data miners for statistical analysis and graphics supported by R foundation for statistical computing. R also provides high-quality graphics and

Top Tips For PCB Design Layout

Are you thinking about designing a printed circuit board? PCBs are quite complicated, and you need to make sure that the layout that you choose is going to operate as well as you want it to. For this reason, we have put together some top tips for PCB design layout. Keep reading if you would like to find out more about this. Leave Enough Space One of the most important design tips for PCB layout is that you need to make sure that you are leaving enough space between the components. While many people might think that packing components closely is the best route to take, this can cause problems further down the line. This is why we suggest leaving extra space for the wires that will spread. This way, you’ll have the perfect PCB design layout. Print Out Your Layout Struggling to find out if your components sizes match? Our next tip is to print out your layout and compare the printed version to your actual components. Datasheets can sometimes come with errors, so it doesn’t hurt to do