Download Think Stats: Exploratory Data Analysis
Download Think Stats: Exploratory Data Analysis
Feeling tired after doing some activities in holidays will certainly buy you to have leisure for some minutes. It will certainly also assist you to satisfy the fee time. When you could appreciate your time for relaxation as well as neglect the panorama around you, it is the best time to have additionally checking out. Yeah, reading book comes to be a really best idea to do today. But, do are you feel strange not to bring particular book?
Think Stats: Exploratory Data Analysis
Download Think Stats: Exploratory Data Analysis
Introducing a new hobby for other people may inspire them to join with you. Reading, as one of mutual hobby, is considered as the very easy hobby to do. But, many people are not interested in this hobby. Why? Boring is the reason of why. However, this feel actually can deal with the book and time of you reading. Yeah, one that we will refer to break the boredom in reading is choosing Think Stats: Exploratory Data Analysis as the reading material.
As one of guides that have been written, Think Stats: Exploratory Data Analysis will be simply various with the previous publication variation. It features the basic words that can be reviewed by all aspects. When you should recognize even more regarding the writer, you could check out the bibliography of the author. It will certainly help you to make sure about this book that you will obtain as not just recommendation but likewise as checking out source.
When speaking about the finished benefits of this publication, you can take the testimonial of this book. Numerous reviews show that the readers are so completely satisfied and surprised in Think Stats: Exploratory Data Analysis They will leave the good voices to vote that this is a very good book to read. When you are extremely interested of exactly what they have checked out, your turn is only by analysis. Yeah, reading this book will certainly be not any issues. You could get this book conveniently and read it in your only spare time.
By starting to read this publication immediately, you could easily locate properly making better high qualities. Use your downtime to read this publication; also by web pages you can take much more lessons and also motivations. It will certainly not restrict you in some events. It will free you to constantly be with this publication each time you will certainly review it. Think Stats: Exploratory Data Analysis is currently readily available right here and be the very first to obtain it currently.
About the Author
Allen Downey is an Associate Professor of Computer Science at the Olin College of Engineering. He has taught computer science at Wellesley College, Colby College and U.C. Berkeley. He has a Ph.D. in Computer Science from U.C. Berkeley and Master’s and Bachelor’s degrees from MIT.
Read more
Product details
Paperback: 226 pages
Publisher: O'Reilly Media; 2 edition (October 27, 2014)
Language: English
ISBN-10: 1491907339
ISBN-13: 978-1491907337
Product Dimensions:
7 x 0.5 x 9.2 inches
Shipping Weight: 13.4 ounces (View shipping rates and policies)
Average Customer Review:
3.7 out of 5 stars
33 customer reviews
Amazon Best Sellers Rank:
#196,171 in Books (See Top 100 in Books)
I love this book. Not only does it illustrate the concepts well, but it's well-written (funny even) and very concise and informative. I bought it to review stats concepts and see the python programming examples, but I think it could serve as a first/ introduction to stats book as well. The author has a wonderful ability to really distill information and teach via examples. This book served me well and I still use it as a reference all the time.
I really liked this book. The author did a really good job. It's a mixture of Python and statistics so some previous background in both will allowing you to benefit entirely from reading this book. Especially prior experience with Python will help you understand the code used by the author, as it is not a simple one. He often uses wrapper functions and class inheritance, so if this doesn't ring a bell, I suggest learning a bit of Python first. Otherwise you can skip the programming parts, but I think you will lose a large part of the book's value.Statistics here is more basic than Python code, for sure. But it does serve well as a introduction to statistical analysis. A software developer wanting to start learning statistics is probably a good candidate for this book. But not the other way around. After reading it I think I still prefer to use R to generate probability density plot, than Python.Anyway, it is almost a must read for anyone on their patch to data scientist career. It not long or super expensive, so if you are interested in stats and Python, just read it.
I didn't read the description carefully and didn't realize this was geared for Python programmers, which I'm not. While it seems to have a good discussion of statistical comments, the fact that all examples are in Python limits its usefulness to those not familiar with the language.
What I like about Think Stats is that it is direct and to the point. It includes a case study that runs through the book and works on data available online. It provides a great starting point for exploring once you see how the given examples work. Each chapter has a handful of exercises that can get you started if you aren't sure what to do next. Downey has an easy style of writing and finds the fine line between enough information and too many details. That said, this book might be a bit thin if you don't have any experience with statistics or have access to a mentor.Keeping in mind the that the book is a focused overview, it certainly supports the programmer who is looking for hands-on examples but I believe it also is useful for the non-programmer that needs a quick understanding of the core concepts. They may not be able to do the calculations but they will be able to participate in a conversation.As it's concise and has active examples, the book would be a great supporting text for a course that requires assumes some statistics experience but doesn't need the overhead of a full-blown stats book. As I have mentioned in other reviews, this book is a good addition to the O'Reilly collection of books on data mining - Segaran's Programming Collective Intelligence: Building Smart Web 2.0 Applications, Russell's Mining the Social Web: Analyzing Data from Facebook, Twitter, LinkedIn, and Other Social Media Sites, and Janert's Data Analysis with Open Source Tools.
This is such an awesome book. The code Downey includes with the book is worth the price of the book.
Very accessible presentation of stats fundamentals and how to apply them. The accompanying thinkstats2 and thinkplot libraries are a common go-to tool for my work.
I love this book because of the way it clarifies Bayesian statistics.Allen is an excellent teacher but I only give 4 stars because Think Stats is more of a guide book to the material on his websites rather than a self contained teaching volume.Professor Downey is very clear that without knowing Python you will struggle with the examples.You need to know Python or at least be able to read it or the examples will not make sense.
I should have stayed with the free version. Not much help as it is more a lay person's description of stats rather than a wealth of python thrown at stats.
Think Stats: Exploratory Data Analysis PDF
Think Stats: Exploratory Data Analysis EPub
Think Stats: Exploratory Data Analysis Doc
Think Stats: Exploratory Data Analysis iBooks
Think Stats: Exploratory Data Analysis rtf
Think Stats: Exploratory Data Analysis Mobipocket
Think Stats: Exploratory Data Analysis Kindle