Scientific formats for object-relational database systems

Author:

Cohen Shirley1,Hurley Patrick2,Schulz Karl W.2,Barth William L.2,Benton Brad3

Affiliation:

1. University of Pennsylvania

2. The University of Texas at Austin

3. IBM Corporation

Abstract

Commercial database management systems (DBMSs) have historically seen very limited use within the scientific computing community. One reason for this absence is that previous database systems lacked support for the extensible data structures and performance features required within a high-performance computing context. However, database vendors have recently enhanced the functionality of their systems by adding object extensions to the relational engine. In principle, these extensions allow for the representation of a rich collection of scientific datatypes and common statistical operations. Utilizing these new extensions, this paper presents a study of the suitability of incorporating two popular scientific formats, NetCDF and HDF, into an object-relational system. To assess the performance of the database approach, a series of solution variables from a regional weather forecast model are used to build representative small, medium and large databases. Common statistical operations and array element queries are then performed using the object-relational database, and the execution timings are compared against native NetCDF and HDF operations.

Publisher

Association for Computing Machinery (ACM)

Subject

Information Systems,Software

Reference12 articles.

1. Hierarchical Data Format (HDF): http://hdf.ncsa.uiuc.edu/hdf4.html Hierarchical Data Format (HDF): http://hdf.ncsa.uiuc.edu/hdf4.html

2. Network Common Data Form -- NetCDF is Not a Database Management System: http://my.unidata.ucar.edu/content/software/netcdf/docs/netcdf/Not-DBMS.html Network Common Data Form -- NetCDF is Not a Database Management System: http://my.unidata.ucar.edu/content/software/netcdf/docs/netcdf/Not-DBMS.html

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