Raymond F. Boyce, Donald D. Chamberlin, et al.
CACM
This paper describes the implementation of an online feedback-directed optimization system. The system is fully automatic; it requires no prior (offline) profiling run. It uses a previously developed low-overhead instrumentation sampling framework to collect control flow graph edge profiles. This profile information is used to drive several traditional optimizations, as well as a novel algorithm for performing feedback-directed control flow graph node splitting. We empirically evaluate this system and demonstrate improvements in peak performance of up to 17% while keeping overhead low, with no individual execution being degraded by more than 2% because of instrumentation.
Raymond F. Boyce, Donald D. Chamberlin, et al.
CACM
Nanda Kambhatla
ACL 2004
B. Wagle
EJOR
Sabine Deligne, Ellen Eide, et al.
INTERSPEECH - Eurospeech 2001