Spatial big data is considered an essential trend in future scientific and business applications. Indeed, research instruments, medical devices, and social networks generate hundreds of petabytes of spatial data per year. However, many authors have pointed out that the lack of specialized frameworks for multidimensional Big Data is limiting possible applications and precluding many scientific breakthroughs. Paramount in achieving High-Performance Data Analytics is to optimize and reduce the I/O operations required to analyze large data sets. To do so, we need to organize and index the data according to its multidimensional attributes. At the same time, to enable fast and interactive exploratory analysis, it is vital to generate approximate ...
Scalable spatial query processing relies on effective spatial data partitioning for query paralleliz...
The widespread of geospatial services produces massive volumes of spatial data. Cloud computing is a...
textIn the last decade, the relational data model has been extended in numerous ways, including geo...
Spatial big data is considered an essential trend in future scientific and business applications. In...
Spatial big data is considered an essential trend in future scientific and business applications. In...
The ability to extract information from collected data has always driven science. Today.s large comp...
Spatial Big Data is considered an essential trend in future scientific and business applications. In...
In this chapter, we explore ways to answer queries on large multi-dimensional data efficiently. Giv...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
The data used by today’s scientific applications are often very high in dimensionality and staggerin...
The BigDataGrapes (BDG) platform aspires to provide components that go beyond the state-of-the-art o...
The widespread use of mobile devices and the real time availability of user-location information is ...
Scientific datasets are often stored on distributed archival storage systems, because geographically...
Spatial queries are widely used in many data mining and analytics applications. However, a huge and ...
Scalable spatial query processing relies on effective spatial data partitioning for query paralleliz...
The widespread of geospatial services produces massive volumes of spatial data. Cloud computing is a...
textIn the last decade, the relational data model has been extended in numerous ways, including geo...
Spatial big data is considered an essential trend in future scientific and business applications. In...
Spatial big data is considered an essential trend in future scientific and business applications. In...
The ability to extract information from collected data has always driven science. Today.s large comp...
Spatial Big Data is considered an essential trend in future scientific and business applications. In...
In this chapter, we explore ways to answer queries on large multi-dimensional data efficiently. Giv...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
The data used by today’s scientific applications are often very high in dimensionality and staggerin...
The BigDataGrapes (BDG) platform aspires to provide components that go beyond the state-of-the-art o...
The widespread use of mobile devices and the real time availability of user-location information is ...
Scientific datasets are often stored on distributed archival storage systems, because geographically...
Spatial queries are widely used in many data mining and analytics applications. However, a huge and ...
Scalable spatial query processing relies on effective spatial data partitioning for query paralleliz...
The widespread of geospatial services produces massive volumes of spatial data. Cloud computing is a...
textIn the last decade, the relational data model has been extended in numerous ways, including geo...