2010

Biostatistical Design and Analysis Using R - Murray Logan

2010
R
english

 R is a powerful and flexible statistical and graphical environment that is freely distributed under the GNU Public Licencea for all major computing platforms (Windows, MacOSX and Linux). This open source licence along with a relatively simple scripting syntax has promoted diverse and rapid evolution and contribution. As the broader scientific community continues to gain greater instruction and exposure to the overall project, the popularity of R as a teaching and research tool continues to accelerate.

 It is now widely acknowledged that R proficiency as a scientific skill set is becoming increasingly more desirable and useful throughout the scientific community. However, as with most open source developments, the emphasis of the R project remains on the expansive development of tools and features. Applied documentation still remains somewhat sparse and somewhat incomprehensible to the average biologist. Whilst there are a number of excellent texts on R emerging, the bulk of these texts are devoted to the R language itself. Any featured examples therein are used primarily for the purpose of illustrating the suite of commonly used R features and procedures, rather than to illustrate how R can be used to perform common biostatistical analyses.

 Coinciding with the increasing interest in R as both a learning and research tool for biostatistics, has been the success of a relatively new major biostatistics textbook (Quinn and Keough, 2002). This text provides detailed coverage of most of the major statistical concepts and tests that biologists are likely to encounter with an emphasis on the practical implementation of these concepts with real biological data. Undoubtedly, a large part of the appeal of this book is attributable to the extensive use of real biological examples to augment and reinforce the text. Furthermore, by concentrating on the information biologists need to implement their research, and avoiding the overuse of complex mathematical descriptions, the authors have appealed to those biologists who don’t require (or desire) a knowledge of performing or programming entire analyses from scratch. Such biologists tend to use statistical software that is already available and specifically desire information that will help them achieve reliable statistical and biological outcomes. Quinn and Keough (2002) also advocate a number of alternative texts that provide more detailed coverage of specific topics and that also adopt this real example approach.

Go to >

Delphi 2010 Handbook - Marco Cantù

2010
english

 The guide to what's new in Delphi 2010, from the best-selling author of the Mastering Delphi series and the Delphi 2007 and 2009 Handbooks. The book covers all the new features of Delphi 2010 for Win32, from Extended RTTI to new IDE features, from Windows 7 support to the improved DataSnap architecture. This is a brand new book, there is no overlapping material with the Delphi 2007 Handbook and Delphi 2009 Handbook (which you can consider buying along with this book in printed or electronic format). The Delphi 2010 Handbook is expected to have about 300 pages covering exclusively new Delphi 2010 features. There is no introduction material or anything like that. The book is for developers who use Delphi 2010.

Go to >