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Title of
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Analytical
and Experimental Methods for High-Performance Network Testing
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Speaker |
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Nageswara
S. V. Rao
Computer Science and Mathematics Division
Oak Ridge National Laboratory, Oak Ridge, TN 37831, USA
Nageswara
S. V. Rao is currently a Corporate Fellow in Computer Science
and Mathematics Division, Oak Ridge National Laboratory, where
he joined in 1993. He has been on assignment at Missile Defense
Agency as the Technical Director of C2BMC Knowledge Center
during 2008-2010. He received B.Tech from National Institute
of Technology, Warangal, India in Electronics and Communications
Engineering in 1982, M.E. in Computer Science and Automation
from Indian Institute of Science, Bangalore, India in 1984,
and PhD in Computer Science from Louisiana State University
in 1988. He published more than 300 technical conference and
journal papers in the areas of sensor networks, information
fusion and high-performance networking. He is a Fellow of
IEEE, and received 2005 IEEE Technical Achievement Award for
his contributions to information fusion area. His research
projects have been funded by multiple federal agencies including
National Science Foundation, Department of Energy, Department
of Defense, and Defense Advanced Research Projects Agency.
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Abstract
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There
has been an increasing number of large-scale science and commercial
applications that produce large amounts of data, in the range
of petabytes to exabytes, which has to be transported over
wide-area networks. Such data transport capability requires
high-performance protocols together with complex end systems
and network connections. A systematic analysis and comparison
of such data transport methods involves the generation of
the throughput profiles from measurements collected over connections
of different lengths. For such testing, the connections provided
by production networks and testbeds are limited by the infrastructures,
which are typically quite expensive. On the other hand, network
emulators provide connections of arbitrary lengths at much
lower costs, but their measurements only approximate those
on physical connections. We present a differential regression
method to estimate the differences between the performance
profiles of physical and emulated connections, and then to
estimate ``physical'' profiles from emulated measurements.
This method is more general and enables: (i) an objective
comparison of profiles of different connection modalities,
including emulated and physical connections, and (ii) estimation
of a profile of one modality from measurements of a different
modality by applying a differential regression function. This
method is based on statistical finite sample theory and exploits
the monotonicity of parameters to provide distribution-free
probabilistic guarantees on error bounds. We present an efficient
polynomial-time dynamic programming algorithm to compute the
underlying differential regression function. We provide a
systematic analysis of long-haul InfiniBand and TCP throughput
measurements over dedicated 10Gbps connections of several
thousands of miles. These results establish the closeness
of throughput profiles generated over plain, encrypted, physical
and emulated connections. In particular, our results show
that robust physical throughput profiles can be derived using
much less expensive emulations, thereby leading to significant
savings in cost and effort.
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