Abstract
The distribution of knowledge (by scientists) and data sources (advanced
scientific instruments), and the need of large-scale computational resources for
analyzing massive scientific data are two major problems commonly observed in
scientific disciplines. The two popular scientific disciplines of this nature
are brain science and high-energy physics. The analysis of brain activity data
gathered from the MEG (Magnetoencephalography) instrument is an important
research topic in medical science since it helps doctors in identifying symptoms
of diseases. The data needs to be analyzed exhaustively to efficiently diagnose
and analyze brain functions and requires access to large-scale computational
resources. The potential platform for solving such resource intensive
applications is the Grid. This paper presents the design and development of MEG
data analysis system by leveraging Grid technologies, primarily Nimrod-G,
Gridbus, and Globus. It describes the composition of the neuroscience (brain
activity analysis) application as parameter-sweep application and its on-demand
deployment on Global Grids for distributed execution.