Kindle 端末は必要ありません。無料 Kindle アプリのいずれかをダウンロードすると、スマートフォン、タブレットPCで Kindle 本をお読みいただけます。

  • Apple
  • Android
  • Windows Phone
  • Android

無料アプリを入手するには、Eメールアドレスを入力してください。

Kindle 価格: ¥ 1,943

¥ 1,657の割引 (46%)

ポイント : 194pt (9%)

これらのプロモーションはこの商品に適用されます:

Kindle または他の端末に配信

Kindle または他の端末に配信

[Silva, Francisco Javier Blanco]のLearning SciPy for Numerical and Scientific Computing
Kindle App Ad

Learning SciPy for Numerical and Scientific Computing Kindle版


その他(2)の形式およびエディションを表示する 他のフォーマットおよびエディションを非表示にする
Amazon 価格
新品 中古品
Kindle版
"もう一度試してください。"
¥ 1,943
【買取サービス】 Amazonアカウントを使用して簡単お申し込み。売りたいと思った時に、宅配買取もしくは出張買取を選択してご利用いただけます。 今すぐチェック。


商品の説明

内容紹介

In Detail

It's essential to incorporate workflow data and code from various sources in order to create fast and effective algorithms to solve complex problems in science and engineering. Data is coming at us faster, dirtier, and at an ever increasing rate. There is no need to employ difficult-to-maintain code, or expensive mathematical engines to solve your numerical computations anymore. SciPy guarantees fast, accurate, and easy-to-code solutions to your numerical and scientific computing applications.

"Learning SciPy for Numerical and Scientific Computing" unveils secrets to some of the most critical mathematical and scientific computing problems and will play an instrumental role in supporting your research. The book will teach you how to quickly and efficiently use different modules and routines from the SciPy library to cover the vast scope of numerical mathematics with its simplistic practical approach that's easy to follow.

The book starts with a brief description of the SciPy libraries, showing practical demonstrations for acquiring and installing them on your system. This is followed by the second chapter which is a fun and fast-paced primer to array creation, manipulation, and problem-solving based on these techniques.

The rest of the chapters describe the use of all different modules and routines from the SciPy libraries, through the scope of different branches of numerical mathematics. Each big field is represented: numerical analysis, linear algebra, statistics, signal processing, and computational geometry. And for each of these fields all possibilities are illustrated with clear syntax, and plenty of examples. The book then presents combinations of all these techniques to the solution of research problems in real-life scenarios for different sciences or engineering — from image compression, biological classification of species, control theory, design of wings, to structural analysis of oxides.

Approach

A step-by-step practical tutorial with plenty of examples on research-based problems from various areas of science, that prove how simple, yet effective, it is to provide solutions based on SciPy.

Who this book is for

This book is targeted at anyone with basic knowledge of Python, a somewhat advanced command of mathematics/physics, and an interest in engineering or scientific applications---this is broadly what we refer to as scientific computing.

This book will be of critical importance to programmers and scientists who have basic Python knowledge and would like to be able to do scientific and numerical computations with SciPy.

著者について

Francisco J. Blanco-Silva

The owner of a scientific consulting company—Tizona Scientific Solutions—and adjunct faculty in the Department of Mathematics of the University of South Carolina, Dr. Blanco-Silva obtained his formal training as an applied mathematician at Purdue University. He enjoys problem solving, learning, and teaching. An avid programmer and blogger, when it comes to writing he relishes finding that common denominator among his passions and skills, and making it available to everyone.

He coauthored Chapter 5 of the book Modeling Nanoscale Imaging in Electron Microscopy, Springer by Peter Binev, Wolfgang Dahmen, and Thomas Vogt.


登録情報

  • フォーマット: Kindle版
  • ファイルサイズ: 3686 KB
  • 紙の本の長さ: 150 ページ
  • 出版社: Packt Publishing (2013/2/22)
  • 販売: Amazon Services International, Inc.
  • 言語: 英語
  • ISBN-10: 1782161635
  • ISBN-13: 978-1782161639
  • ASIN: B00BAOC2KG
  • Text-to-Speech(テキスト読み上げ機能): 有効
  • X-Ray:
  • Word Wise: 有効にされていません
  • おすすめ度: この商品の最初のレビューを書き込んでください。
  • Amazon 売れ筋ランキング:
  • さらに安い価格について知らせる

カスタマーレビュー

Amazon.co.jp にはまだカスタマーレビューはありません
星5つ
星4つ
星3つ
星2つ
星1つ

Amazon.com で最も参考になったカスタマーレビュー (beta) (「Early Reviewer Program」のレビューが含まれている場合があります)

Amazon.com: 5つ星のうち 3.3 11 件のカスタマーレビュー
15 人中、13人の方が、「このレビューが参考になった」と投票しています。
5つ星のうち 1.0 Very bad quality! 2014/2/5
投稿者 James Leibert - (Amazon.com)
形式: ペーパーバック Amazonで購入
OK, this is in principle not a bad tour of some key SciPy functionality, but there are some serious problems with this book.

I'm writing this review after spending 3 hours with this book. I am so angry that I felt I needed to let other people know.

There are two major errors in the first two pieces of code in the book. If you are new to SciPy, as I was, that means wasting 2 hours ploughing through the SciPy online documentation to figure out the correct code (it is not easy!). Since the main reason for buying the book is that the online documentation makes absolutely no sense to newcomers, it rather defeats the purpose of the book.

So, being a good citizen, I did what was requested at the front of the book and attempted to submit an errata form with the correct code, or at least see what others had submitted, but the site has been abandoned by its owner.

I recommend you never buy a book from PACKT publishing, it is a complete rip off.

As to finding a good introduction to SciPy online or elsewhere, good luck, I'm still looking.
5つ星のうち 4.0 Four Stars 2015/6/14
投稿者 James Brownlow - (Amazon.com)
形式: Kindle版 Amazonで購入
short book, I picked up a couple of tips for python. Not an exhaustive study by any means.
5 人中、2人の方が、「このレビューが参考になった」と投票しています。
5つ星のうち 1.0 Where is the code for this book? 2014/1/17
投稿者 Customer in NY - (Amazon.com)
形式: ペーパーバック Amazonで購入
I will update this review based on the book's quality soon. However, I am disappointed that I am unable to download the code. If anyone knows the link pls post. Thanks folks.

EDIT: Publisher did get back to me. This is a quote: "Unfortunately we do not have code files for the book "Learning SciPy for Numerical and Scientific Computing" as of now. As soon as the author updates the code files you can download it from our website."

Dear authors,
Pls provide example source code. For me, having example code that accompanies the book is a key feature. Thanks ...
11 人中、11人の方が、「このレビューが参考になった」と投票しています。
5つ星のうち 5.0 Great for scientists, engineers, programmers and data analysts 2013/4/28
投稿者 Parsa - (Amazon.com)
形式: ペーパーバック
This is a fantastic book for scientists, engineers, applied mathematicians, statisticians, programmers, and data analysts who have computation problems in mind and are looking to use an open-source programming language with plenty of modules to solve them. Python is my favorite high-level language because it's intuitive, very easy to install (if you own a Mac then you already have it!) and it has so many useful functions in the various module libraries.

My favorite thing about it this book is that when a module is introduced, the author gives a list of many relevant functions when appropriate. For example, when he introduces the linear algebra module (scipy.linalg) in Chapter 3, he goes through many of the matrix creation and operations functions that I didn't even know existed, and I'm an intermediate-level Python/NumPy user. He discusses solving large linear systems, eigenvalue problems, and FIVE different matrix decompositions as well as the corresponding module functions for each type of problem. This book is worth the price for Chapter 3 alone.

But thankfully, it goes on to discuss solving various common ODEs, optimization, the Runge-Kutta method, and numerical integration. And that's just Chapter 4. Again, the important detail here is how the author links each topic and problem to the corresponding SciPy module and relevant functions that do the vast majority of the work for you. He also shows how to use matplotlib for graphical purposes when a problem calls for it. Chapter 5 is about signal processing, which I didn't really understand but I think the gist of it is how to extrapolate from incomplete data and how to separate the signal from the noise.

I'm currently working as a data miner, which is the topic of Chapter 6. This is a nice introduction to the data analysis modules for SciPy: scipy.stats, scipy.spatial, and scipy.cluster. The data analysis examples were good, and the breakdown of hierarchical clustering was excellent, but I wished the chapter was a little longer. It is a great complement to McKinney's book on using Python for data analysis, which I also own.

All in all, I strongly recommend this book to anyone who has a computational problem to solve.
8 人中、8人の方が、「このレビューが参考になった」と投票しています。
5つ星のうち 4.0 Great book for learning SciPy 2013/5/21
投稿者 Scott MacLachlan - (Amazon.com)
形式: ペーパーバック
Learning SciPy for Numerical and Scientific Computing is a great reference book for mathematicians, scientists, engineers, and programmers looking to expand their computational toolbox. While matlab-based prototyping has, for many years, been the unchallenged standard in the development of computational algorithms, the development of the NumPy and SciPy packages in the last decade offers another option. This book focuses on introducing the syntax and capabilities of the combination of NumPy, SciPy, and matplotlib for standard problems in scientific computing. The book is built around numerous examples, with clearly explained source code and motivating discussions. While the material covered spans the range of a good numerical analysis textbook (linear algebra, interpolation, rootfinding, integration, ODEs, signal processing, data mining, computational geometry), the focus of this book is much more on the use of SciPy for these tasks than the development of the mathematics behind them or their use in large-scale simulations. Thus, the book is the perfect introduction to python's scientific computing abilities for a programmer already versed in numerical analysis and familiar with another programming language.
これらのレビューは参考になりましたか? ご意見はクチコミでお聞かせください。
click to open popover