Read Online and Download Ebook Practical Statistics for Data Scientists: 50 Essential Concepts
This is an extremely affordable book that should be read. The following may use you the means to get this publication. It is really relieve. When the other individuals need to walk and also go outdoors to get guide in guide store, you can simply be by seeing this site. There is offered web link that you could locate. It will assist you to go to the book web page and also get the Practical Statistics For Data Scientists: 50 Essential Concepts Performed with the download and get this publication, begin to check out.
Practical Statistics for Data Scientists: 50 Essential Concepts
The first thing to see the collection is considering just what book to read. When you are here and visiting this internet collection, we will recommend you several advised books for you. The books that is truly suitable with your life and also responsibilities. Practical Statistics For Data Scientists: 50 Essential Concepts is among the optional publication catalogues that can be most wanted.
A book is much pertaining to checking out tasks. Book will be absolutely nothing when none reviews it. Reviewing will not be completed when the book is one of the subjects. However, in this contemporary age, the existence of book is expanding sophisticatedly. Many resources make the both book in published and soft file. Having the soft documents of publication will relieve you to make actual to review it. It can be conserved in your various tool, computer system, CD, laptop computer, even the gizmo that you always bring everywhere. It is why; we show you the soft file of Practical Statistics For Data Scientists: 50 Essential Concepts as one of issue to check out.
Publication has the brand-new details and lesson every time you review it. By checking out the content of this publication, even couple of, you can obtain just what makes you feel pleased. Yeah, the discussion of the expertise by reading it might be so tiny, however the impact will be so fantastic. You can take it extra times to recognize more about this book. When you have actually finished material of Practical Statistics For Data Scientists: 50 Essential Concepts, you can really understand how value of a publication, whatever the book is
To make sure, lots of people also have actually downloaded the soft file of Practical Statistics For Data Scientists: 50 Essential Concepts though this website. Only by clicking web link that is supplied, you can go directly to guide. Once more, this book will certainly be actually vital for you to read, even they are easy, and also they will lead you to be the far better life. So, just what do you think about this updated book collection? Let's examine it now as well as get ready to make this publication as definitely your collection as well as analysis materials. Think it!
Product details
Paperback: 318 pages
Publisher: O'Reilly Media; 1 edition (May 28, 2017)
Language: English
ISBN-10: 1491952962
ISBN-13: 978-1491952962
Product Dimensions:
6.8 x 0.5 x 9 inches
Shipping Weight: 1.2 pounds (View shipping rates and policies)
Average Customer Review:
4.1 out of 5 stars
53 customer reviews
Amazon Best Sellers Rank:
#5,899 in Books (See Top 100 in Books)
A reasonable survey of core statistical methods, not super-clear, plus a slapdash review of a few machine-learning models, with very little explanation.Pros: * Decent review of core concepts * Good coverage of importance of distinguishing between sample and population statistics * Better discussion of bootstrapping than I've seen anywhere else * Good ideas on dealing with non-normal data and avoiding the assumption that all data is normally distributedCons * Assumes that you know R. Lots of code, no explanations of the code. * Inconsistent level of detail and depth. Detailed coverage of mean, range, quartile, but rampant hand-waving when you get to bagging and boosting * Many of the math explanations are unclear or incomplete. The authors make you do a lot of work to figure things out and you will need external resources * The last part of the book is a thin and purely practical survey of ML models. You don't get much understanding of how or why things work.
Excellent introductory text for a comprehensive overview of statistics! The github repository augments the content very well and provides added value for the statistical topics covered in the book. Both of the Bruce brothers are statistical gurus and this fact is evident in the writing, which is both informative and witty. Peter is the president of Statistics.com and is well-versed in providing statistical instruction to students of all ages and levels. He is also a proponent of resampling and one of the developers of the excellent Resampling Stats software package for Excel.It is true that the textbook does not provide in-depth coverage for all topics, but I don't think that was the intent of the authors. However, the text DOES provide an excellent introduction to topics relevant to students and data scientists. After reading the text and working through the examples, you will be equipped to further your knowledge in whichever topic you require for you data analysis task.Highly recommended!
I love this book as a reference. Clear, efficient but detailed explanations. It is not designed as a textbook but as a reference. When I wonder "what is that test used for again?" or "what was that formula?" this is the first thing I reach for. Sure, Google has become universal for that too, but I like having a single hard copy reference that I can get to know and that becomes a trustworthy old friend. This book is taking on that role for me.
First of all, this book is not for you if you want a deep and thorough explanation of statistical concepts. It serves a completely different purpose: to familiarize a reader with high-level concepts; to enable them to continue their statistics education elsewhere.I found this book a very engaging read: it sets itself apart from other books on statistics in clearly telling which concepts are not-so-relevant for the modern computerized explorative analysis toolset. Many concepts that are presented in classic books on the subjects are rooted in 20s and 30s where computing power wasn't available and researches resorted to various pre-calculated distributions and formulas to do their work. A modern data-scientist's approach would eschew some of the old ways and instead rely on randomization, resampling and computing power.This book not only tells what something is, but also why it is that way and if a concept is still relevant today.I can recommend this book if your statistics knowledge is spotty or ephemeral, it serves its purpose well and doesn't bog down the reader with (sometimes) unnecessary mathematical concepts to demonstrate an idea.Why the four stars:1. Lack of examples in programming languages.2. Complete lack of exercises (at least 1-2 exercises are necessary).3. All scarce examples that are available are in R. No Python. :(
This book is well written and packs a substantial amount of information into a small number of pages. It is best used to get a survey and overview of many of the facets of the domain of data science. This book will not teach you anything in enough depth to actually execute it well — it will teach you just enough to be dangerous and not realize when you've gone off the rails. I recommend it for managers who may never go into technical depth, for people considering whether or not they are interested in data science, or as a preview book to create a framework from which to hang more detailed understanding. Although this is an introductory book, it assumes you can already program in R. If you can't, either accept that you won't be able to follow the specifics of the examples, or read The Art of R Programming and/or R for Data Science.I dislike that the authors make a number of categorical statements of the form "Data Scientists do this" or "Data Scientists don't need that". I disagree with many of these assertions and I think they have taken a definition of "data science" which is narrower than the prevailing consensus in the industry.This book has some errors (see, for example, the confusion matrix on page 196) but overall the accuracy is above average relative to recent norms.As other reviewers have noted, the author's github repository for the book is currently empty. If that's important to you, check it under "andrewgbruce" on github and make sure it's been updated before you buy the book.
Practical Statistics for Data Scientists: 50 Essential Concepts PDF
Practical Statistics for Data Scientists: 50 Essential Concepts EPub
Practical Statistics for Data Scientists: 50 Essential Concepts Doc
Practical Statistics for Data Scientists: 50 Essential Concepts iBooks
Practical Statistics for Data Scientists: 50 Essential Concepts rtf
Practical Statistics for Data Scientists: 50 Essential Concepts Mobipocket
Practical Statistics for Data Scientists: 50 Essential Concepts Kindle