Sciweavers

CCGRID
2003
IEEE

Improving Access to Multi-dimensional Self-describing Scientific Dataset

14 years 3 months ago
Improving Access to Multi-dimensional Self-describing Scientific Dataset
Applications that query into very large multidimensional 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 multidimensional 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 scientific data file formats containing semantic information about the stored data. To validate the approach, we have implemented indexing structures for NASA remote sensing data stored in the HDF format with a specific schema (HDF-EOS), and show the performance improvemen...
Beomseok Nam, Alan Sussman
Added 23 Aug 2010
Updated 23 Aug 2010
Type Conference
Year 2003
Where CCGRID
Authors Beomseok Nam, Alan Sussman
Comments (0)