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  <title><![CDATA[Ph.D. Defense of Dissertation: Paul Bryan]]></title>
  <body><![CDATA[<p><strong>Ph.D. Defense of Dissertation<br /></strong></p><p>Title: <strong>Accelerating Microarchitectural Simulation via Statistical Sampling Principles</strong><br /><br />Paul D. Bryan<br />College of Computing<br />Georgia Institute of Technology<br />&nbsp;<br /><br />Date: Friday, October 12, 2012<br />Time: 8am – 11am<br />Location: Klaus 3402<br />&nbsp;<br /><br /><strong>Committee:</strong></p><ul><li>Prof. Thomas M. Conte (Advisor, Colleges of Computing &amp; Engineering)</li><li>Prof. Milos Prvulovic (College of Computing)</li><li>Prof. George Riley (College of Engineering)</li><li>Prof. Sudhakar Yalamanchili (College of Engineering)</li><li>Dr. Gabe Loh (Principal Researcher, AMD Research)</li></ul><p>&nbsp;<br /><strong>Abstract:</strong><br />The design and evaluation of computer systems relies heavily upon simulation.&nbsp; Simulation is also a major bottleneck in the iterative design process.&nbsp; Applications that may be executed natively on physical systems in a matter of minutes may take weeks or months to simulate.&nbsp; As designs incorporate increasingly higher numbers of processor cores, it is expected that the times required to simulate future systems will become an even greater issue.&nbsp;&nbsp; Simulation exhibits a tradeoff between speed and accuracy. By basing experimental procedures upon known statistical methods, the simulation of systems may be dramatically accelerated while retaining reliable methods to estimate error.<br />&nbsp;<br />This thesis focuses on the acceleration of simulation through statistical processes.&nbsp; The first two techniques discussed in this thesis focus on accelerating single-threaded simulation via cluster sampling.&nbsp; Cluster sampling extracts multiple groups of contiguous population elements to form a sample.&nbsp; This thesis introduces techniques to reduce sampling and non-sampling bias components, which must be reduced for sample measurements to be reliable.&nbsp; Non-sampling bias is reduced through the Reverse State Reconstruction algorithm, which removes ineffectual instructions from the skipped instruction stream between simulated clusters.&nbsp; Sampling bias is reduced via the Single Pass Sampling Regimen Design Process, which guides the user towards selected representative sampling regimens. Unfortunately, the extension of cluster sampling to include multi-threaded architectures is non-trivial and raises many interesting challenges.&nbsp; Overcoming these challenges will be discussed.&nbsp; This thesis also introduces thread skew, a useful metric that quantitatively measures the non-sampling bias associated with divergent thread progressions at the beginning of a sampling unit.&nbsp; Finally, the Barrier Interval Simulation method is discussed as a technique to dramatically decrease the simulation times of certain classes of multi-threaded programs.&nbsp; It segments a program into discrete intervals, separated by barriers, which are leveraged to avoid many of the challenges that prevent multi-threaded sampling.</p>]]></body>
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      <value><![CDATA[<p><a href="mailto:paul.bryan@gatech.edu">Paul D. Bryan</a></p>]]></value>
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