Bültmann & Gerriets
Data Provenance and Data Management in eScience
von Qing Liu, Quan Bai, John Taylor, Darrell Williamson
Verlag: Springer Berlin Heidelberg
Reihe: Studies in Computational Intelligence Nr. 426
Gebundene Ausgabe
ISBN: 978-3-642-29930-8
Auflage: 2013
Erschienen am 04.08.2012
Sprache: Englisch
Format: 241 mm [H] x 160 mm [B] x 14 mm [T]
Gewicht: 465 Gramm
Umfang: 196 Seiten

Preis: 106,99 €
keine Versandkosten (Inland)


Dieser Titel wird erst bei Bestellung gedruckt. Eintreffen bei uns daher ca. am 12. November.

Der Versand innerhalb der Stadt erfolgt in Regel am gleichen Tag.
Der Versand nach außerhalb dauert mit Post/DHL meistens 1-2 Tage.

klimaneutral
Der Verlag produziert nach eigener Angabe noch nicht klimaneutral bzw. kompensiert die CO2-Emissionen aus der Produktion nicht. Daher übernehmen wir diese Kompensation durch finanzielle Förderung entsprechender Projekte. Mehr Details finden Sie in unserer Klimabilanz.
Inhaltsverzeichnis
Klappentext

Provenance Model for Randomized Controlled Trials.- Evaluating Workflow Trust Using Hidden Markov Modeling and Provenance Data.- Unmanaged Workflows: Their Provenance and Use.- Sketching Distributed Data Provenance.- A Mobile Cloud with Trusted Data Provenance Services for Bioinformatics Research.- Data Provenance and Management in Radio Astronomy: A Stream Computing Approach.- Using Provenance to Support Good Laboratory Practice in Grid Environments.



eScience allows scientific research to be carried out in highly distributed environments. The complex nature of the interactions in an eScience infrastructure, which often involves a range of instruments, data, models, application, people and computational facilities, suggests there is a need for data provenance and data management (DPDM). The W3C Provenance Working Group defines the provenance of a resource as a ¿record that describes entities and processes involved in producing and delivering or otherwise influencing that resource¿. It has been widely recognised that provenance is a critical issue to enable sharing, trust, authentication and reproducibility of eScience process.
 Data Provenance and Data Management in eScience identifies the gaps between DPDM foundations and their practice within eScience domains including clinical trials, bioinformatics and radio astronomy. The book covers important aspects of fundamental research in DPDM including provenance representation and querying. It also explores topics that go beyond the fundamentals including applications. This book is a unique reference for DPDM with broad appeal to anyone interested in the practical issues of DPDM in eScience domains.


andere Formate
weitere Titel der Reihe