Download Data Analysis with Open Source Tools, by Philipp K. Janert
When somebody must visit the book establishments, search store by store, rack by shelf, it is extremely problematic. This is why we offer the book compilations in this site. It will ease you to search guide Data Analysis With Open Source Tools, By Philipp K. Janert as you like. By searching the title, author, or writers of guide you want, you can discover them quickly. Around the house, office, or perhaps in your means can be all best area within internet links. If you intend to download and install the Data Analysis With Open Source Tools, By Philipp K. Janert, it is quite simple after that, considering that currently we proffer the link to purchase and also make bargains to download and install Data Analysis With Open Source Tools, By Philipp K. Janert So simple!
Data Analysis with Open Source Tools, by Philipp K. Janert
Download Data Analysis with Open Source Tools, by Philipp K. Janert
Exactly how if there is a website that allows you to look for referred book Data Analysis With Open Source Tools, By Philipp K. Janert from all around the globe publisher? Instantly, the website will certainly be astonishing completed. Many book collections can be found. All will be so simple without complicated thing to relocate from site to website to get the book Data Analysis With Open Source Tools, By Philipp K. Janert desired. This is the website that will certainly offer you those expectations. By following this website you could acquire great deals numbers of book Data Analysis With Open Source Tools, By Philipp K. Janert compilations from variants sorts of author as well as publisher popular in this globe. Guide such as Data Analysis With Open Source Tools, By Philipp K. Janert and also others can be gotten by clicking great on web link download.
This Data Analysis With Open Source Tools, By Philipp K. Janert is quite appropriate for you as newbie user. The visitors will certainly always begin their reading routine with the favourite style. They could not consider the writer as well as author that produce guide. This is why, this book Data Analysis With Open Source Tools, By Philipp K. Janert is actually best to read. Nonetheless, the principle that is given in this book Data Analysis With Open Source Tools, By Philipp K. Janert will certainly reveal you several things. You could begin to like also reviewing until the end of guide Data Analysis With Open Source Tools, By Philipp K. Janert.
Furthermore, we will certainly share you the book Data Analysis With Open Source Tools, By Philipp K. Janert in soft documents kinds. It will not disrupt you making heavy of you bag. You require only computer gadget or device. The web link that we provide in this website is available to click and then download this Data Analysis With Open Source Tools, By Philipp K. Janert You know, having soft data of a book Data Analysis With Open Source Tools, By Philipp K. Janert to be in your device can make alleviate the viewers. So through this, be an excellent visitor now!
Simply connect to the net to gain this book Data Analysis With Open Source Tools, By Philipp K. Janert This is why we indicate you to make use of as well as use the established modern technology. Reviewing book doesn't indicate to bring the printed Data Analysis With Open Source Tools, By Philipp K. Janert Established modern technology has permitted you to read just the soft data of guide Data Analysis With Open Source Tools, By Philipp K. Janert It is exact same. You may not should go and get traditionally in looking guide Data Analysis With Open Source Tools, By Philipp K. Janert You may not have enough time to spend, may you? This is why we provide you the most effective method to get the book Data Analysis With Open Source Tools, By Philipp K. Janert currently!
These days it seems like everyone is collecting data. But all of that data is just raw information -- to make that information meaningful, it has to be organized, filtered, and analyzed. Anyone can apply data analysis tools and get results, but without the right approach those results may be useless.
Author Philipp Janert teaches you how to think about data: how to effectively approach data analysis problems, and how to extract all of the available information from your data. Janert covers univariate data, data in multiple dimensions, time series data, graphical techniques, data mining, machine learning, and many other topics. He also reveals how seat-of-the-pants knowledge can lead you to the best approach right from the start, and how to assess results to determine if they're meaningful.
- Sales Rank: #97302 in Books
- Published on: 2010-11-28
- Released on: 2010-11-25
- Original language: English
- Number of items: 1
- Dimensions: 9.19" h x 1.40" w x 7.00" l, 1.85 pounds
- Binding: Paperback
- 540 pages
About the Author
After previous careers in physics and softwaredevelopment, Philipp K. Janert currentlyprovides consulting services for data analysis,algorithm development, and mathematical modeling.He has worked for small start-ups and in largecorporate environments, both in the U.S. andoverseas. He prefers simple solutions that workto complicated ones that don't, and thinks thatpurpose is more important than process. Philippis the author of "Gnuplot in Action - UnderstandingData with Graphs" (Manning Publications), and haswritten for the O'Reilly Network, IBM developerWorks,and IEEE Software. He is named inventor on a handfulof patents, and is an occasional contributor to CPAN.He holds a Ph.D. in theoretical physics from theUniversity of Washington. Visit his company websiteat www.principal-value.com.
Most helpful customer reviews
211 of 236 people found the following review helpful.
It falls short of initial expectations
By J. Felipe Ortega Soto
This book is aimed at offering a practical, hands-on introduction to data analysis for pragmatic readers without strong scientific or statistical background. Some basic programming experience is required. The author provides many personal (and sometimes useful) comments about different tools and procedures in data analysis.
However, a careful reading reveals many problems, specially an obscure presentation of key concepts. In my opinion, the target audience for this book would be people without previous contact with data analysis. Hence the importance of presenting its core elements correctly. Otherwise, it's useless for them.
In particular:
- Few pages are actually dedicated to present open source tools supporting the different graphs and techniques included in the book. From the title, I expected a more complete tour through available open source tools for data analysis.
- No clues about how to obtain most of the graphs and results presented in the book. No related data sets are available for download, either. A book like this is useless if we cannot learn how to replicate all the examples.
- The formula of the variance for a sample is just wrong. One must divide by n-1 and not n; see "Applied Statistics and Probability for Engineers" (Montgomery and Runger 2006).
- The author presents one of the most obscure explanations for the median I've ever come across. Recurring to an RFC (RFC 2330) to explain such a simple concept is really awkward.
- In chapter 3 and Appendix B, natural logarithms (base e) are presented in the text, while graphs plot powers of 10. Definitely, not the right way to transmit correct concepts and methods.
- I concur with a previous review in that "Workshop" sections just present an ultra-short overview of some open source tools. A quick search in your favourite engine will display much more informative introductions (even quick start guides).
- Today, effective data analysis heavily depends on using the best possible implementation. While I might find educational to learn some of this implementations, in a real situation it is much better to rely on precise implementations of algorithms already available (e.g. libraries in GNU R).
All in all, I still recommend "R in a Nutshell" for a gentle introduction to data analysis with an open source tool (GNU R). It also has some inaccuracies and typos, but at least it's much more informative and clear. Besides, it does include an R package with all datasets and examples, ready to be installed and explored.
44 of 46 people found the following review helpful.
Full of insight, light on details
By Code Monkey
This book covers such a wide range of topics that it necessarily skims over all of them but it always hits all the major points that an introductory survey should. Each chapter has a straight forward tone, strikes the right balance between developing mathematical rigor and developing an intuitive understanding of data , and undeniably passes on the lessons of hard earned, real world experience. But a reader who is actually working on a real data problem will almost certainly come to the realization that the understanding gained is somewhat superficial - that it's going to take a lot more heavy reading (probably of books, papers, and software tools recommended in this book) to get any real work done!
The single biggest problem with this book is its misleading title. This book is not going to teach you how to use open source software to analyze data. There is only minimal information about how one would actually use the software tools being discussed. What you get is a brief commentary about what the author thinks each software package is good for. It's the same story as with the mathematical details: you will not find them here, but this book will give you an excellent idea of what to look for. So in the end it does leave you feeling just a little bit cheated, even though all the advice you got seems extremely well informed.
What this book does astonishingly well is communicate an attitude to data analysis that most textbooks (and nearly all the college courses I took) seem to miss. Nearly every chapter is a stream of stunningly insightful observations on how to approach data, without the mathematical detail that overwhelms most practicing programmers. I would recommend it to any reader who understands that truly useful insights are hard to come by, but detailed algorithms and formulae are easily found in the Internet Age. I wish the book were a few hundred pages shorter, that it corrected a few sloppy mistakes (like confusing revenue and profit), but I'm certainly glad I read it.
50 of 53 people found the following review helpful.
Good, not great. Prerequisites and chapter organization issues.
By Jack Sparrow
The book is very good for the intermediate-to-advanced data analysts. Beginners beware: there are some important prerequisites that are not obvious before you buy it, and there are some organization problems.
First, the prerequisites. "I strongly recommend that you make it a habit to avoid all statistical language"..."Once we start talking about standard deviations, the clarity is gone." These are two sentences in the same passage from the Preface. The rest of that passage is similar. However, even the first chapters make heavy use of statistical language. Moreover, they assume that you already know statistics to the level of density estimation, noise, splines, and regression. Page 21 even features a footnote about the Fourier transform and Fourier convolution theorem. Clearly this book is not for the statistically-shy or for mathematically-shy in general, no matter what the Preface suggests. You also need to know Python and R.
Second, the chapter organization problems. There's a mismatch between the first part of each chapter, which introduces concepts and techniques, and the Workshop part of the same chapter, which uses software. I was expecting the Workshop to illustrate the implementation of the same concepts and techniques. It's not really so. The Workshop introduces Python and R facilities at a different (lower) speed than the rest of the chapter. One could even wonder why the Workshop is in the same chapter. I'd rather that each chapter consisted of a few detailed case studies that first introduce concepts and techniques and then illustrate them with software libraries.
Data Analysis with Open Source Tools, by Philipp K. Janert PDF
Data Analysis with Open Source Tools, by Philipp K. Janert EPub
Data Analysis with Open Source Tools, by Philipp K. Janert Doc
Data Analysis with Open Source Tools, by Philipp K. Janert iBooks
Data Analysis with Open Source Tools, by Philipp K. Janert rtf
Data Analysis with Open Source Tools, by Philipp K. Janert Mobipocket
Data Analysis with Open Source Tools, by Philipp K. Janert Kindle
Tidak ada komentar:
Posting Komentar