To buy the newest edition of this book, please search "Machine Learning Absolute Beginners Third Edition" on Amazon. The product page you are currently viewing is for the First Edition of the book. Ready to spin up a virtual GPU instance and smash through petabytes of data? Want to add 'Machine Learning' to your LinkedIn profile?Well, hold on there...Before you embark on your epic journey into the world of machine learning, there is some basic theory to march through first.However, rather than spend $30-$50 USD on a dense long textbook, you may want to read this book first. As a clear and concise alternative to a textbook, this short book offers a practical and high-level introduction to the practical components and statistical concepts found in machine learning. Machine Learning for Absolute Beginners has been written and designed for absolute beginners. This means plain-English explanations and no coding experience required. Where core algorithms are introduced, clear explanations and visual examples are added to make it easy and engaging to follow along at home.This title opens with a general introduction to machine learning from a macro level. The second half of the book is more practical and dives into introducing statistical concepts and specific algorithms applied in machine learning, including their pros and cons. At the end of the book, I share insights and advice on further learning and careers in this space. If you have passed the 'beginner' stage in your study of machine learning and are ready to tackle deep learning and Scikit-learn, you would be well served with a long-format textbook. If, however, you are yet to reach that Lion King moment - as a fully grown Simba looking over the Pride Lands of Africa - then this is the book to gently hoist you up and offer you a clear lay of the land.In this step-by-step guide you will • The very basics of Machine Learning that all beginners need to master• Decision Trees for visually mapping and classifying decision processes• Regression Analysis to create trend lines and predict trends• Data Reduction to cut through the noise• k-means and k-nearest Neighbor (k-nn) Clustering to discover new data groups• Introduction to Deep Learning/Neural Networks•Bias/Variance to optimize your machine learning model• Create your first machine learning model to predict video game sales using Python• Careers in the fieldPlease also note that under Amazon’s Kindle Book Lending program, you can lend this e-book to friends and family for a duration of 14 days (If you want to learn more, please go ahead and send a free sample to your device or check out Amazon's handy 'Look Inside' feature.
A bit too brief and unstructured. You get a a quick overview of machine learning, big data, data analysis etc, but not more than what can be gathered from various online articles. I guess I feel the book lacks a bit of focus as it concludes with a career guide, which seems out of place compared to the rest. An clearer introduction/purpose with the book would have been good, but still a decent place to start, although further resources/references and an overview of the literature is missing.
I have been bouncing around this ebook for some time trying to absorb as much as possible, and it's helped me to understand machine learning a lot. The author is good about guiding the reader towards other relevant peripheral knowledge. I recommwnd this to beginners as a good place to start, but for me, it's keeper as referrence material.
A good book to pick, if you are looking for an introduction into the world of Machine Learning. But the second half of the book tends to get a bit too technical for the uninitiated. Overall, a good read. 3.5 stars!
First of all, this book is not just for absolute beginners. Often when I am taking a class that is going deep into a technique or algorithm, I get to the point where I cannot pick up my head and see why I am doing something, or where it fits in the machine learning lifecycle. Further, I come across a term that I know, but can't recall its purpose. This is great for that, and I think it should be in the library of everyone studying data science. It is a very short, to-the-point read that can also serve as a reference.
Excellent introduction to machine learning in which the author describes what machine learning is, techniques and algorithms, and future of & resources for machine learning learners.
The book is meant to provide an overview for the “absolute beginner” so that he understands what machine learning is all about. The author provides simple examples for each algorithm/technique to help explain it, but by no means he’s trying to teach the reader everything about that algorithm/technique. So this book is a good starting book for the topic prior to going further to read and study specialized books.
Absoulutely great. I'd recommend definitely for a first approach and as introductory text for any AI/DL training / education. I think I am going to use it as consult book and even I might buy it in paper after having bought it on Kindle.
If you are starting from scratch, as I am, this book is a great starting point. It introduces basic and important concepts and give you an idea where to go from there.
This book does a good job explaining difficult concepts and its target audience is the absolute novice. It is an intro to an intro on machine learning (pun intended). If you have a general understanding of how ML works, this book is likely going to be of little value to you.
While the author’s use of plain language was definitely the way to go, the reason for the three star rating is due to lack of organization. To elaborate, the book is structured in an all-over-the-place manner (touches on ML, data mining, data science, careers) and I can see one getting confused. The last section on careers seems totally out of place and a poor choice for a culmination. Overall, it could be improved if the author executed on the main goal of the book and structured the book’s content and chapters in such a way as to achieve building reader’s knowledge chapter by chapter in a structured and consistent manner.
Machine Learning For Absolute Beginners is poorly written and sloppily put together. While there is some valuable knowledge to be acquired, it is not well presented and explained. As a data scientist might say: the data in this book is very noisy.
The book cannot decide whether it wants to be a step-by-step guide or a reference text and, as a result, its structure and content make little sense. The author opens by describing a "toolset" framework for approaching ML and then proceeds to take up most of the middle part of the book discussing the theory behind various algorithm categories. (For some reason, a chapter about Bias & Variance is wedged into that section.) Then, the last part of the book gets suddenly very technical by providing a code sample in Python that uses a few of the techniques described previously. It would have been much better, in my opinion, if such code samples accompanied every chapter to showcase how each algorithm is used in practice.
Machine Learning is covered very unevenly. Most of the time, the author over-explains basic concepts and dives into very low level details, e.g. a mathematical formula, almost as if he tries to prove his credentials. At other times however, he glosses over some advanced topics with barely any explanation. Those passages read like Wikipedia articles and make me wish there were hyperlinks I could click on. Footnotes are used sparingly and are themselves badly written too: some refer to books or papers, while others are on obvious points that don't need clarification.
To be entirely fair, I finished Machine Learning For Absolute Beginners having learned some new things. But I can't say that this book is good value for money. There are much better resources online.
Great book to start with machine learning! The author has provided an easy to understand overview of the ‘machine learning toolbox’. If you are interested in the field of A.I./machine learning but feel overwhelmed by the information available on this topic on internet, then this is the book to read. I quite liked the way the author started the book with first explaining differences amongst various data subfields- data mining, machine learning et cetera.
The only thing I miss in the book is a kind of visual summaries to give a one glance snap shot of topics explained.
the book is very good at the start and the end, but the middle section of the book is very poorly written with a lot of unnecessary complex algorithms.
This serves the purpose if intention is only overview of topics. If one reads this with expectation with an expectation of learning whole machine learning then they will be disappointed. I think book should be titled as "Machine learning Overview".
Anyways, some basic knowledge/information is provided in this book. Those who have not googled much would benefit from it. Basic information are useful for answering in interview [although its in limited amount]. But still its okay book.
Read this one, if you just decided to start with machine learning study or searching for difference between big data, data mining, machine learning, AI, neural network etc. Yes, book is unstructured, written like topics /paragraphs.
Suddenly you will feel its over. I mean one should expect concrete information . I felt like ordering a pizza , it was good, I can feel the taste and smell. But as soon as I ate first bite, its over. :)
O introducere de mică anvergură în ”Machine Learning”, care oferă câteva raze de lumină ce pătrund voalul de ignoranță în ceea ce privește subiectul. Cartea este bine structurată și ajută cititorul să înțeleagă de ce anume se ocupă ”Machine Learning”, prin ce se diferențează de AI și ”data mining”, care sunt instrumentele necesare cu care acesta trebuie să se înarmeze și câțiva algoritmi folosiți.
În general, stilul este unul clar, iar autorul încearcă să folosească un limbaj cât mai simplu și analogii care să sporească înțelegerea. Totuși pe alocuri există idei destul de încărcate și am simțit că lipsa unei baze teoretice nu mi-a permis să le înțeleg cu adevărat.
Partea de programare dă impresia a fi accesibilă, căci există multe librării care pun la dispoziție algoritmii și metodele necesare, dar pentru a calibra modelul cred că e nevoie de mai multă intuiție matematică. Cu toate acestea, cartea a făcut domeniul să pară abordabil și chiar interesant.
The book does it's best not to overwhelm the beginners at the same time, it doesn't disappoint as well by being shallow. The use cases are interesting, the methods & the mathematical means to derive the results aligned to the problem statement are well introduced. Short, good & helpful stuff for someone in the phases of building their passion for the field of data science. Don't get me wrong - keeping aside the fact that it is extremely well paying venture, but the it is worth the pursuit for only those who do intend to get intimate with bigger problems at a data level, discover insights we never knew and ultimately create an impact. In this scenario, one can become a useful data professional regardless of the fact that they never had the relevant background.
This is a very good, concise and to the point introduction to machine learning. Please note that when the author says it in the title, "Machine Learning for Absolute Beginners", he means it.
This is NOT going to give you insight into algorithms neither even is it going to briefly cover any practical aspects of those, but it WILL tell you what Machine Learning is, and what should/should not you expect before delving into the vast world of machine learning.
A short and easy to read book, really intended only for those for know nothing about ML to get an overview of what ML does, and a general idea of the different algorithms used.
While most of the information in the book could probably be gotten online from blog posts, it was nice to have a curated selection in one place.
As I was the target audience, I enjoyed and benefitted from this book, but if you already have some idea of what ML is, this book may be too simple for you.
Great book to enter the world of machine learning. Not only does the book explain the economic and social benefits of data science but it goes into the technicalities of regression analysis. Also has a small chapter on career pathways. Definitely an exciting and up-to-date intro to the next possible revolution in human history. Also a very short read and can be completed in less than 3 hours
Brief and healthy introduction to Machine Learning
I was hearing a lot about Machine Learning , AI , Data science, Bayes algorithm, Regression algorithm etc and to my surprise this book covers all of these topics with enough details such that I can now make further conscious details as how to proceed further.
The book is short but I think that's it's strong suit. I suspect it's usefulness will wear off as this information becomes more foundational knowledge through my research into ML but as a beginner in the field, I find that having an easy to navigate reference book for the algorithms I need to learn to become an ML expert is very useful.
Might be too simple for the particular person who has already had the interests in Machine Learning (I mean, at least, they work in some related things). Yet, the author is very succesful to explain abstract concepts by friendly examples. Even if the explanation is simple, they catch the most essential cores of machine learning concepts. Highly recommend if you are truly absolute beginners
I got hooked on this book in a matter of minutes, the preface is very interesting however at times it felt unstructured but that is beside the point. It is a very Interesting book, I cannot believe it took me 1 and a half days to finish reading it. It has the theory without the scary maths formulas. Great for beginners.
It's my first book to read and complete in the Machine Learning track and it's really a very good book for any beginner who wants to conquer this field and gain knowledge about it. I recommend having some programming basics like dealing with python for full benefit. Thanks for Oliver Theobald you helped me build my first machine learning model in my career and I hope it won't be the last one.
great entry point into learning. wording could have been simpler and it could have used more images. would have gotten the edition with pictures but couldnt find it for free online. if you do get this book, what helped me was looking up the confusing terms on Google Images. still don't understand what exactly "weight" is
I suppose you can never hit perfection when it comes to such a variable topic like machine learning. Oliver Theobald did the job in getting across the basic concepts. Taking notes throughout reading this book and coming up my own explanations helped me further understand complicated concepts here.
A crash course book on the methods of machine learning. It was a quick intro to the topic and despite being from 2017, it is still a good foundation. With so many modern tools that are plug and plug it is worth the quick read to understand the fundamentals. I am not sure it needed the python code at the end but it was handy for people looking to get deep into the technical side.
This is a good and quick read into the popular algos in Data Science. As the title suggests, it is a good intro and offers several resources to dive into the world of Data Science.
The book is just as described, for absolute beginners, I think it has a bit deeper vision or some examples, quizzes, or exercises to help the reader reinforce the idea.