Applications that query into very large multi-dimensional datasets are becoming more common. Many self-describing scientific data file formats have also emerged, which have structural metadata to help navigate the multi-dimensional arrays that are stored in the files. The files may also contain application-specific semantic metadata. In this paper, we discuss efficient methods for performing searches for subsets of multi-dimensional data objects, using semantic information to build multi-dimensional indexes, and group data items into properly sized chunks to maximize disk I/O bandwidth. This work is the first step in the design and implementation of a generic indexing library that will work with various high-dimension scientifi...
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF....
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF....
Many modern database applications deal with large amounts of multidimensional data. Examples include...
Applications that query into very large multidimensional datasets are becoming more common. Many sel...
Applications that query into very large multidimensional datasets are becoming more common. Many sel...
Applications that query into very large multidimensional datasets are becoming more common. Many sel...
Scientific data analysis applications require large scale computing power to effectively service cli...
While file system metadata is well characterized by a variety of workload studies, scientific metada...
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...
International audienceWhile high-dimensional search-by-similarity techniques reached their maturity ...
The ability to extract information from collected data has always driven science. Today.s large comp...
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF...
Semantic caches allow queries into large datasets to leverage cached results either directly or thr...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF....
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF....
Many modern database applications deal with large amounts of multidimensional data. Examples include...
Applications that query into very large multidimensional datasets are becoming more common. Many sel...
Applications that query into very large multidimensional datasets are becoming more common. Many sel...
Applications that query into very large multidimensional datasets are becoming more common. Many sel...
Scientific data analysis applications require large scale computing power to effectively service cli...
While file system metadata is well characterized by a variety of workload studies, scientific metada...
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...
International audienceWhile high-dimensional search-by-similarity techniques reached their maturity ...
The ability to extract information from collected data has always driven science. Today.s large comp...
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF...
Semantic caches allow queries into large datasets to leverage cached results either directly or thr...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF....
Large scale scientific data is often stored in scientific data formats such as FITS, netCDF and HDF....
Many modern database applications deal with large amounts of multidimensional data. Examples include...