ROOT — A C++ framework for petabyte data storage, statistical analysis and visualization
✍ Scribed by I. Antcheva; M. Ballintijn; B. Bellenot; M. Biskup; R. Brun; N. Buncic; Ph. Canal; D. Casadei; O. Couet; V. Fine; L. Franco; G. Ganis; A. Gheata; D. Gonzalez Maline; M. Goto; J. Iwaszkiewicz; A. Kreshuk; D. Marcos Segura; R. Maunder; L. Moneta; A. Naumann; E. Offermann; V. Onuchin; S. Panacek; F. Rademakers; P. Russo; M. Tadel
- Book ID
- 108107699
- Publisher
- Elsevier Science
- Year
- 2011
- Tongue
- English
- Weight
- 96 KB
- Volume
- 182
- Category
- Article
- ISSN
- 0010-4655
No coin nor oath required. For personal study only.
📜 SIMILAR VOLUMES
Sources of data errors in the analysis of large frameworks are listed. Outputs of various forms for error detection are discussed; emphasis is given to the advantages of graphical output. For further error detection, a few procedures that can be included in computer programs are listed.
The Harmonised Monitoring Scheme (HMS) records are the best long-term data sets for river water quality in Britain. A simple framework for statistical analysis of these data is developed which copes with the many observations below the limits of detection of the laboratory analytical methods used to
In recent years, more and more large, population-level databases have become available for clinical research. The size and complexity of these databases often present a methodological challenge for investigators. We propose that a “protocol” may facilitate the research process using these databases.