Magellan Final Report - Office of Science - U.S. Department of Energy
Magellan Final Report - Office of Science - U.S. Department of Energy
Magellan Final Report - Office of Science - U.S. Department of Energy
Create successful ePaper yourself
Turn your PDF publications into a flip-book with our unique Google optimized e-Paper software.
<strong>Magellan</strong> <strong>Final</strong> <strong>Report</strong><br />
[48] J. Jenkins, P. Balaji, J. Dinan, N. F. Samatova, and R. Thakur. Enabling Fast, Non-contiguous GPU<br />
Data Movement in Hybrid MPI+GPU Environments. In In submission.<br />
[49] G. Juve and E. Deelman. Scientific workflows and clouds. Crossroads, 16:14–18, March 2010.<br />
[50] A. Kalyanaraman, W. R. Cannon, B. Latt, and D. J. Baxter. Mapreduce implementation <strong>of</strong> a hybrid<br />
spectral library-database search method for large-scale peptide identification. Bioinformatics, 2011.<br />
[51] K. Keahey. Cloud Computing for <strong>Science</strong>. In Proceedings <strong>of</strong> the 21st International Conference on<br />
Scientific and Statistical Database Management, page 478. Springer-Verlag, 2009.<br />
[52] K. Keahey, R. Figueiredo, J. Fortes, T. Freeman, and M. Tsugawa. <strong>Science</strong> clouds: Early experiences<br />
in cloud computing for scientific applications. Cloud Computing and Applications, 2008, 2008.<br />
[53] K. Keahey, T. Freeman, J. Lauret, and D. Olson. Virtual workspaces for scientific applications. In<br />
Journal <strong>of</strong> Physics: Conference Series, volume 78, page 012038. Institute <strong>of</strong> Physics Publishing, 2007.<br />
[54] J. G. Koomey. Growth in Data Center Electricity use 2005 to 2010. Technical report, Stanford University,<br />
2011.<br />
[55] W. Kramer, J. Shalf, and E. Strohmaier. The NERSC Sustained System Performance (SSP) Metric.<br />
2005.<br />
[56] J. Lauret, M. Walker, S. Goasguen, and L. Hajdu. From Grid to cloud, the STAR experience. SciDAC<br />
2010 Proceedings, 2010.<br />
[57] W. W. Lee. Gyrokinetic particle simulation model. J. Comp. Phys., 72, 1987.<br />
[58] J. Li, D. Agarwal, M. Humphrey, C. van Ingen, K. Jackson, and Y. Ryu. e<strong>Science</strong> in the Cloud: A<br />
MODIS Satellite Data Reprojection and Reduction Pipeline in the Windows Azure Platform. In IPDPS,<br />
2010.<br />
[59] H. Liu and D. Orban. Cloud mapreduce: A mapreduce implementation on top <strong>of</strong> a cloud operating<br />
system. In Proceedings <strong>of</strong> the 2011 11th IEEE/ACM International Symposium on Cluster, Cloud and<br />
Grid Computing, CCGRID ’11, pages 464–474, Washington, DC, USA, 2011. IEEE Computer Society.<br />
[60] Mellanox unstructured data accelarator (uda). http://www.mellanox.com/content/pages.phppg=<br />
hadoop.<br />
[61] Milc website. http://physics.indiana.edu/~sg/milc.html.<br />
[62] J. Napper and P. Bientinesi. Can cloud computing reach the top500 In Proceedings <strong>of</strong> the combined<br />
workshops on UnConventional high performance computing workshop plus memory access workshop,<br />
pages 17–20. ACM, 2009.<br />
[63] Nist cloud. http://csrc.nist.gov/groups/SNS/cloud-computing/.<br />
[64] L. Oliker, A. Canning, J. Carter, J. Shalf, and S. Ethier. Scientific computations on modern parallel<br />
vector systems. In Proc. SC04: International Conference for High Performance Computing, Networking,<br />
Storage and Analysis, Pittsburgh, PA, Nov 6-12, 2004.<br />
[65] F. T. C. on a Cloud Computing Cluster: Using Parallel Virtualization for Large-Scale Climate Simulation<br />
Analysis. Daren Hasenkamp and Alex Sim and Michael Wehner and Kesheng Wu. In 2nd IEEE<br />
International Conference on Cloud Computing Technology and <strong>Science</strong>, 2010.<br />
[66] S. Ostermann, A. Iosup, N. Yigitbasi, R. Prodan, T. Fahringer, and D. Epema. An early performance<br />
analysis <strong>of</strong> cloud computing services for scientific computing. Delft University <strong>of</strong> Technology, Tech. Rep,<br />
2008.<br />
136