Parallel protein folding with STAPL Conference Paper uri icon

abstract

  • AbstractThe proteinfolding problem is a study of how a protein dynamically folds to its socalled native statean energetically stable, threedimensional conformation. Understanding this process is of great practical importance since some devastating diseases such as Alzheimer's and bovine spongiform encephalopathy (Mad Cow) are associated with the misfolding of proteins. We have developed a new computational technique for studying protein folding that is based on probabilistic roadmap methods for motion planning. Our technique yields an approximate map of a protein's potential energy landscape that contains thousands of feasible folding pathways. We have validated our method against known experimental results. Other simulation techniques, such as molecular dynamics or Monte Carlo methods, require many orders of magnitude more time to produce a single, partial trajectory. In this paper we report on our experiences parallelizing our method using STAPL (Standard Template Adaptive Parallel Library) that is being developed in the Parasol Lab at Texas A&M. An efficient parallel version will enable us to study larger proteins with increased accuracy. We demonstrate how STAPL enables portable efficiency across multiple platforms, ranging from small Linux clusters to massively parallel machines such as IBM's BlueGene/L, without user code modification. Copyright 2005 John Wiley & Sons, Ltd.

published proceedings

  • CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE

author list (cited authors)

  • Thomas, S., Tanase, G., Dale, L. K., Moreira, J. M., Rauchwerger, L., & Amato, N. M.

citation count

  • 5

complete list of authors

  • Thomas, S||Tanase, G||Dale, LK||Moreira, JM||Rauchwerger, L||Amato, NM

publication date

  • December 2005

publisher