Article ID: | iaor200913 |
Country: | United States |
Volume: | 34 |
Issue: | 4 |
Start Page Number: | 677 |
End Page Number: | 706 |
Publication Date: | Oct 2004 |
Journal: | Decision Sciences |
Authors: | March Salvatore T., Johansson Jesper M., Naumann J. David |
Keywords: | decision theory, information |
The design of responsive distributed database systems is a key concern for information systems managers. In high bandwidth networks latency and local processing are the most significant factors in query and update response time. Parallel processing can be used to minimize their effects, particularly if it is considered at design time. It is the judicious replication and placement of data within a network that enable parallelism to be effectively used. However, latency and parallel processing have largely been ignored in previous distributed database design approaches. We present a comprehensive approach to distributed database design that develops efficient combinations of data allocation and query processing strategies that take full advantage of parallelism. We use a genetic algorithm to enable the simultaneous optimization of data allocation and query processing strategies.