Accelerating Dynamic Software Analyses
Dynamic software analyses are powerful mechanisms for finding software errors. Unfortunately, their high performance overheads stymie their adoption. This talk discusses techniques for accelerating such tools in an effort to make them available to beta testers and end users.
One method of reducing these slowdowns, «on-demand analysis,» uses simple hardware features to inform an analysis tool that an interesting event has occurred. By disabling the tool during uninteresting periods, it is possible to significantly reduce that tool’s overall slowdown.
Another method is to sample the analyses, meaning individual users test a small portions of a program each execution. While, individually, they may miss errors, a large population will see many errors in aggregate. These users can report the potential software errors to developers, while collectively observing more program state space than any individual tester would ever see.
Speaker Bios
Joseph Greathouse is a PhD candidate in the Department of Electrical Engineering and Computer Science at the University of Michigan. His research focuses on architectural mechanisms that yield better, more correct, software and hardware. He received a BS in Computer Engineering from the University of Illinois at Urbana-Champaign.
- Séries:
- Microsoft Research Talks
- Date:
- Haut-parleurs:
- Joseph Greathouse
- Affiliation:
- University of Michigan
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Jeff Running
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Taille: Microsoft Research Talks
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