Rapidly growing volume of spatial data has made it desirable to develop efficient techniques for managing large-scale spatial data. Traditional spatial data management techniques cannot meet requirements of efficiency and scalability for large-scale spatial data processing. In this dissertation, we have developed new data-parallel designs for large-scale spatial data management that can better utilize modern inexpensive commodity parallel and distributed platforms, including multi-core CPUs, many-core GPUs and computer clusters, to achieve both efficiency and scalability. After introducing background on spatial data management and modern parallel and distributed systems, we present our parallel designs for spatial indexing and spatial join ...
Spatial data management has been the focus of the database research community for over three decades...
The General Purpose computing on Graphics Processing Units (GPGPUs) techniques represent a significa...
Geo-Spatial computing and data analysis is the branch of computer science that deals with real world...
Rapidly growing volume of spatial data has made it desirable to develop efficient techniques for man...
Data collection is one of the most common practices in today’s world. The data collection rate has r...
The ubiquity of location-aware devices has resulted in a plethora of location-based services in whic...
The key advantages of a well-designed multidimensional database is its ability to allow as many user...
The rapid growth of spatial data volume and technological trends in storage capacity and processing ...
Abstract — Fast increasing volumes of spatial data has made it imperative to develop both scalable a...
abstract: Nearly 25 years ago, parallel computing techniques were first applied to vector spatial an...
Abstract—In recent years, spatial applications have become more and more important in both scientifi...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
Big data analytics has become not just a popular buzzword but also a strategic direction in informat...
abstract: The volume of available spatial data has increased tremendously. Such data includes but is...
The amount of available spatial data has significantly increased in the last years so that tradition...
Spatial data management has been the focus of the database research community for over three decades...
The General Purpose computing on Graphics Processing Units (GPGPUs) techniques represent a significa...
Geo-Spatial computing and data analysis is the branch of computer science that deals with real world...
Rapidly growing volume of spatial data has made it desirable to develop efficient techniques for man...
Data collection is one of the most common practices in today’s world. The data collection rate has r...
The ubiquity of location-aware devices has resulted in a plethora of location-based services in whic...
The key advantages of a well-designed multidimensional database is its ability to allow as many user...
The rapid growth of spatial data volume and technological trends in storage capacity and processing ...
Abstract — Fast increasing volumes of spatial data has made it imperative to develop both scalable a...
abstract: Nearly 25 years ago, parallel computing techniques were first applied to vector spatial an...
Abstract—In recent years, spatial applications have become more and more important in both scientifi...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
Big data analytics has become not just a popular buzzword but also a strategic direction in informat...
abstract: The volume of available spatial data has increased tremendously. Such data includes but is...
The amount of available spatial data has significantly increased in the last years so that tradition...
Spatial data management has been the focus of the database research community for over three decades...
The General Purpose computing on Graphics Processing Units (GPGPUs) techniques represent a significa...
Geo-Spatial computing and data analysis is the branch of computer science that deals with real world...