Description
Spatio-Temporal Graph Data Analytics, Softcover reprint of the original 1st ed. 2017
Authors: Gunturi Venkata M. V., Shekhar Shashi
Language: EnglishSubjects for Spatio-Temporal Graph Data Analytics:
126.59 €
In Print (Delivery period: 15 days).
Add to cart the book of Gunturi Venkata M. V., Shekhar ShashiPublication date: 06-2019
100 p. · 15.5x23.5 cm · Paperback
126.59 €
In Print (Delivery period: 15 days).
Add to cart the print on demand of Gunturi Venkata M. V., Shekhar ShashiPublication date: 01-2018
Support: Print on demand
Description
/li>Contents
/li>Comment
/li>
This book highlights some of the unique aspects of spatio-temporal graph data from the perspectives of modeling and developing scalable algorithms. The authors discuss in the first part of this book, the semantic aspects of spatio-temporal graph data in two application domains, viz., urban transportation and social networks. Then the authors present representational models and data structures, which can effectively capture these semantics, while ensuring support for computationally scalable algorithms.
In the first part of the book, the authors describe algorithmic development issues in spatio-temporal graph data. These algorithms internally use the semantically rich data structures developed in the earlier part of this book. Finally, the authors introduce some upcoming spatio-temporal graph datasets, such as engine measurement data, and discuss some open research problems in the area.
This book will be useful as a secondary text for advanced-level students entering into relevant fields of computer science, such as transportation and urban planning. It may also be useful for researchers and practitioners in the field of navigational algorithms.
Describes a unique overarching model which can support a wide variety of spatio-temporal graph data
Covers A* and bi-directional search for determining fastest paths over spatio-temporal graphs
Introduces spatio-temporal graph datasets, such as engine measurement data
Applications from the research covered in this book (navigational algorithms), can be used for Uber service and Google's autonomous cars