Gridded geospatial remote sensing (satellite) data has traditionally been stored in file-based multidimensional arrays to preserve the locality of data. Measurements from locations that are physically next to each other on earth remain next to each other in the arrays. Maintaining this locality is useful when running calculations like reprojection, but unnecessary for many other calculations. This talk will go through a real world example of a tool redesign at the Goddard Earth Sciences Data and Information Services Center (GES DISC), showing the advantages of using the data frame model for calculating summary statistics, where measurement proximity is unimportant
This dataset contains a set of synthetic data that can be used to evaluate the efficiency of geosapt...
In this chapter, visualization is used to evaluate the performance of global-scale computational alg...
Abstract. Techniques for the analysis of spatial data have, to date, tended to ignore any effect cau...
© 2018 by the authors. Geographic data is growing in size and variety, which calls for big data mana...
Geographic data is growing in size and variety, which calls for big data management tools and analys...
With the increase in availability of space born data, analysing large amounts of high resolution dat...
The fundamental objective of geostatistical data analysis is to estimate the continuous spatial proc...
International audienceA method is proposed for increasing the spatial resolution of gridded data wit...
Geo-spatial data are information which can be pinpointed to spatially explicit locations on Earth. M...
This data is useful for benchmarking, comparing the performance of geospatial operations across arra...
Remote sensing satellites, together with aerial and terrestrial platforms (mobile and fixed), produc...
Borrowing from the tidy data principles developed for tabular datasets [Wickham, 2014](https://vita....
Owing to the rapid development of earth observation technology, the volume of spatial information is...
The purpose of the workshop was to invite statisticians, applied mathematicians, computer scientists...
Gridding in remote sensing must re-project observations from their original coordinate system based ...
This dataset contains a set of synthetic data that can be used to evaluate the efficiency of geosapt...
In this chapter, visualization is used to evaluate the performance of global-scale computational alg...
Abstract. Techniques for the analysis of spatial data have, to date, tended to ignore any effect cau...
© 2018 by the authors. Geographic data is growing in size and variety, which calls for big data mana...
Geographic data is growing in size and variety, which calls for big data management tools and analys...
With the increase in availability of space born data, analysing large amounts of high resolution dat...
The fundamental objective of geostatistical data analysis is to estimate the continuous spatial proc...
International audienceA method is proposed for increasing the spatial resolution of gridded data wit...
Geo-spatial data are information which can be pinpointed to spatially explicit locations on Earth. M...
This data is useful for benchmarking, comparing the performance of geospatial operations across arra...
Remote sensing satellites, together with aerial and terrestrial platforms (mobile and fixed), produc...
Borrowing from the tidy data principles developed for tabular datasets [Wickham, 2014](https://vita....
Owing to the rapid development of earth observation technology, the volume of spatial information is...
The purpose of the workshop was to invite statisticians, applied mathematicians, computer scientists...
Gridding in remote sensing must re-project observations from their original coordinate system based ...
This dataset contains a set of synthetic data that can be used to evaluate the efficiency of geosapt...
In this chapter, visualization is used to evaluate the performance of global-scale computational alg...
Abstract. Techniques for the analysis of spatial data have, to date, tended to ignore any effect cau...