Writing Scientific Software: A Guide to Good Style (Paperback)
Suely Oliveira
- 出版商: Cambridge
- 出版日期: 2006-09-18
- 售價: $840
- 貴賓價: 9.8 折 $823
- 語言: 英文
- 頁數: 316
- 裝訂: Paperback
- ISBN: 0521675952
- ISBN-13: 9780521675956
無法訂購
買這商品的人也買了...
-
$1,200$948 -
$1,240$1,178 -
$290$226 -
$580$458 -
$4,800$4,560 -
$1,617Deep Learning (Hardcover)
-
$580$458
相關主題
商品描述
Description
The core of scientific computing is designing, writing, testing, debugging and modifying numerical software for application to a vast range of areas: from graphics, meteorology and chemistry to engineering, biology and finance. Scientists, engineers and computer scientists need to write good code, for speed, clarity, flexibility and ease of re-use. Oliveira and Stewart's style guide for numerical software points out good practices to follow, and pitfalls to avoid. By following their advice, readers will learn how to write efficient software, and how to test it for bugs, accuracy and performance. Techniques are explained with a variety of programming languages, and illustrated with two extensive design examples, one in Fortran 90 and one in C++: other examples in C, C++, Fortran 90 and Java are scattered throughout the book. This manual of scientific computing style will be an essential addition to the bookshelf and lab of everyone who writes numerical software.
• Gives tips, hints and guidelines for good style in C, C++, Fortran 90 and Java
• Covers important development tools such as profilers, version control and automated builds
• Describes template programming and techniques for high-performance software
Table of Contents
Part I. Numerical Software: 1. Why numerical software?; 2. Scientific computation and numerical analysis; 3. Priorities; 4. Famous disasters; 5. Exercises; Part II. Developing Software: 6. Basics of computer organization; 7. Software design; 8. Modularity and all that; 9. Data structures; 10. Design for testing and debugging; 11. Exercises; Part III. Efficiency in Time, Efficiency in Memory: 12. Be algorithm aware; 13. Computer architecture and efficiency; 14. Global vs. local optimization; 15. Grabbing memory when you need it; 16. Memory bugs and leaks; Part IV. Tools: 17. Sources of scientific software; 18. Unix tools; 19. Cubic spline function library; 20. Multigrid algorithms; Appendix A: review of vectors and matrices; Appendix B: trademarks; Bibliography; Index.