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  <title><![CDATA[Ph.D. Defense of Dissertation: Tongqing Qiu]]></title>
  <body><![CDATA[<p><strong>Title: Passive Measurement Studies of Large-scale IP Networks</strong></p><p><strong>Tongqing Qiu</strong></p>

















<p><strong>Committee:</strong></p><p>Dr. Jun Xu, College of Computing,&nbsp;Georgia Institute of
Technology&nbsp;(Advisor)<br />Dr.&nbsp;Mostafa H. Ammar, College of Computing,&nbsp;Georgia
Institute of Technology<br />Dr. Nick Feamster,&nbsp;College of Computing,&nbsp;Georgia
Institute of Technology<br />Dr. Xiaoli Ma,&nbsp;School of Electrical and Computer
Engineering,&nbsp;Georgia Institute of Technology<br />Dr. Jia Wang,&nbsp;AT&amp;T-Lab Research</p>

<p><strong>Abstract:</strong></p>



<p>Large-scale IP networks (e.g. backbone
network, commercial IPTV network) are designed with the goal of providing high
availability and low delay/loss while keeping operational complexity and cost
low. Meeting this goal requires network operators to perform a wide range of
measurement studies to understand network status and dynamics. Although a large
number of passive and active measurement tools and techniques are used, the
problem of building a comprehensive and integrated monitoring infrastructure to
address all ISP’s needs (ranging from performance monitoring, anomaly diagnosis
to network planning) is far from solved.</p><p>In this dissertation, we focus on the
passive measurement study using the following general method. We collect the
measurement data from distributed network elements, and apply advanced
statistical methods tailored to network domain to uncover meaningful
information from the data set. Our three studies fulfill three requirements of
network measurement respectively: performance monitoring, troubleshooting, and
network design and planning. First, we propose a novel methodology to infer the
delay distribution passively without any perturbation to real traffic. Second,
we design a system that can automatically transform and compress low-level syslog
messages into meaningful prioritized network events. It can provide critical
input to network troubleshooting and visualization. Finally, we analyze and
model user activities in an operational nation-wide IPTV network, and design a
workload generator which takes a small number of input parameters and generates
synthetic trace that mimic aggregated user behavior. The generator can estimate
the unicast and multicast traffic accurately, proving itself as a useful tool
in driving network design and planning study. We believe that our measurement
studies make a solid step towards building&nbsp;an ideal passive measurement
infrastructure.</p>]]></body>
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      <value><![CDATA[2011-05-04T14:00:00-04:00]]></value>
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