Data Science Landscape: Towards Research Standards and Protocols
The edited volume deals with different contours of data science with special reference to data management for the research innovation landscape. The data is becoming pervasive in all spheres of human, economic and development activity. In this context, it is important to take sk of what is being done in the data management area and begin to prioritize, consider and formulate adoption of a formal data management system including citation prools for use by research communities in different disciplines and also address various technical research issues. The volume, thus, focuses on some of these issues drawing typical examples from various domains. The idea of this work germinated from the two day workshop on “Big and Open Data – Evolving Data Science Standards and Citation Attribution Practices”, an international workshop, led by the ICSU-CODATA and attended by over 300 domain experts. The Workshop focused on two priority areas (i) Big and Open Data: Prioritizing, Addressing and Establishing Standards and Good Practices and (ii) Big and Open Data: Data Attribution and Citation Practices. This important international event was part of a worldwide initiative led by ICSU, and the CODATA-Data Citation Task Group.
1133106848
In all, there are 21 chapters (with 21st Chapter addressing four different core aspects) written by eminent researchers in the field which deal with key issues of S&T, institutional, financial, sustainability, legal, IPR, data prools, community norms and others, that need attention related to data management practices and prools, coordinate area activities, and promote common practices and standards of the research community globally. In addition to the aspects touched above, the national / international perspectives of data and its various contours have also been portrayed through case studies in this volume.
Data Science Landscape: Towards Research Standards and Protocols
The edited volume deals with different contours of data science with special reference to data management for the research innovation landscape. The data is becoming pervasive in all spheres of human, economic and development activity. In this context, it is important to take sk of what is being done in the data management area and begin to prioritize, consider and formulate adoption of a formal data management system including citation prools for use by research communities in different disciplines and also address various technical research issues. The volume, thus, focuses on some of these issues drawing typical examples from various domains. The idea of this work germinated from the two day workshop on “Big and Open Data – Evolving Data Science Standards and Citation Attribution Practices”, an international workshop, led by the ICSU-CODATA and attended by over 300 domain experts. The Workshop focused on two priority areas (i) Big and Open Data: Prioritizing, Addressing and Establishing Standards and Good Practices and (ii) Big and Open Data: Data Attribution and Citation Practices. This important international event was part of a worldwide initiative led by ICSU, and the CODATA-Data Citation Task Group.
In all, there are 21 chapters (with 21st Chapter addressing four different core aspects) written by eminent researchers in the field which deal with key issues of S&T, institutional, financial, sustainability, legal, IPR, data prools, community norms and others, that need attention related to data management practices and prools, coordinate area activities, and promote common practices and standards of the research community globally. In addition to the aspects touched above, the national / international perspectives of data and its various contours have also been portrayed through case studies in this volume.
109.99
In Stock
5
1

Data Science Landscape: Towards Research Standards and Protocols
339
Data Science Landscape: Towards Research Standards and Protocols
339Hardcover(1st ed. 2018)
$109.99
109.99
In Stock
Product Details
ISBN-13: | 9789811075148 |
---|---|
Publisher: | Springer Nature Singapore |
Publication date: | 03/03/2018 |
Series: | Studies in Big Data , #38 |
Edition description: | 1st ed. 2018 |
Pages: | 339 |
Product dimensions: | 6.10(w) x 9.25(h) x (d) |
About the Author
From the B&N Reads Blog