Computing and Information Systems - Research Publications

Permanent URI for this collection

Search Results

Now showing 1 - 5 of 5
  • Item
    Thumbnail Image
    Aneka: Next-generation enterprise grid platform for e-Science and e-Business applications
    Chu, X ; Nadiminti, K ; Jin, C ; Venugopal, S ; Buyya, R ; Fox, G ; Chiu, K ; Buyya, R (IEEE COMPUTER SOC, 2007)
  • Item
    Thumbnail Image
    A toolkit for modelling and simulating data Grids: an extension to GridSim
    Sulistio, A ; Cibej, U ; Venugopal, S ; Robic, B ; Buyya, R (WILEY, 2008-09-10)
  • Item
    Thumbnail Image
    InterGrid:: a case for internetworking islands of Grids
    de Assuncao, MD ; Buyya, R ; Venugopal, S (WILEY, 2008-06-10)
  • Item
    Thumbnail Image
    A grid service broker for scheduling e-Science applications on global data grids
    Venugopal, S ; Buyya, R ; Winton, L (John Wiley & Sons, 2006)
    The next generation of scientific experiments and studies, popularly called e-Science, is carried out by large collaborations of researchers distributed around the world engaged in the analysis of huge collections of data generated by scientific instruments. Grid computing has emerged as an enabler for e-Science as it permits the creation of virtual organizations that bring together communities with common objectives. Within a community, data collections are stored or replicated on distributed resources to enhance storage capability or the efficiency of access. In such an environment, scientists need to have the ability to carry out their studies by transparently accessing distributed data and computational resources. In this paper, we propose and develop a Grid broker that mediates access to distributed resources by: (a) discovering suitable data and computational resources sources for a given analysis scenario; (b) optimally mapping analysis jobs to resources; (c) deploying and monitoring job execution on selected resources; (d) accessing data from local or remote data sources during job execution; and (e) collating and presenting results. The broker supports a declarative and dynamic parametric programming model for creating Grid applications. We have used this model in Grid-enabling a high-energy physics analysis application (the Belle Analysis Software Framework). The broker has been used in deploying Belle experimental data analysis jobs on a Grid testbed, called the Belle Analysis Data Grid, having resources distributed across Australia interconnected through GrangeNet.
  • Item
    Thumbnail Image
    Neuroscience instrumentation and distributed analysis of brain activity data: A case for eScience on global Grids
    Buyya, R ; Date, S ; Mizuno-Matsumoto, Y ; Venugopal, S ; Abramson, D (John Wiley & Sons, 2005)
    The distribution of knowledge (by scientists) and data sources (advanced scientific instruments), and the need for large-scale computational resources for analyzing massive scientific data are two major problems commonly observed in scientific disciplines. 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. The results of economic-based scheduling of analysis jobs for three different optimizations scenarios on the world-wide Grid testbed resources are presented along with their graphical visualization.