TY - GEN
T1 - Parallel hierarchical cross entropy optimization for on-chip decap budgeting
AU - Zhao, Xueqian
AU - Guo, Yonghe
AU - Feng, Zhuo
AU - Hu, Shiyan
PY - 2010
Y1 - 2010
N2 - Decoupling capacitor (decap) placement has been widely adopted as an effective way to suppress dynamic power supply noise. Traditional decap budgeting algorithms usually explore the sensitivity-based nonlinear optimizations or conjugate gradient methods, which can be prohibitively expensive for large-scale decap budgeting problems. We present a hierarchical cross entropy (CE) optimization technique for solving the decap budgeting problem. CE is an advanced optimization framework which explores the power of rare-event probability theory and importance sampling. To achieve high efficiency, a sensitivity-guided cross entropy (SCE) algorithm is proposed which integrates CE with a partitioningbased sampling strategy to effectively reduce the dimensionality in solving the large scale decap budgeting problems. Extensive experiments on industrial power grid benchmarks show that the proposed SCE method converges 2X faster than the prior methods and 10X faster than the standard CE method, while gaining up to 25% improvement on power grid supply noise. Importantly, the proposed SCE algorithm is parallel-friendly since the simulation samples of each SCE iteration can be independently obtained in parallel. We obtain up to 1.9X speedup when running the SCE decap budgeting algorithm on a dual-core-dual-GPU system.
AB - Decoupling capacitor (decap) placement has been widely adopted as an effective way to suppress dynamic power supply noise. Traditional decap budgeting algorithms usually explore the sensitivity-based nonlinear optimizations or conjugate gradient methods, which can be prohibitively expensive for large-scale decap budgeting problems. We present a hierarchical cross entropy (CE) optimization technique for solving the decap budgeting problem. CE is an advanced optimization framework which explores the power of rare-event probability theory and importance sampling. To achieve high efficiency, a sensitivity-guided cross entropy (SCE) algorithm is proposed which integrates CE with a partitioningbased sampling strategy to effectively reduce the dimensionality in solving the large scale decap budgeting problems. Extensive experiments on industrial power grid benchmarks show that the proposed SCE method converges 2X faster than the prior methods and 10X faster than the standard CE method, while gaining up to 25% improvement on power grid supply noise. Importantly, the proposed SCE algorithm is parallel-friendly since the simulation samples of each SCE iteration can be independently obtained in parallel. We obtain up to 1.9X speedup when running the SCE decap budgeting algorithm on a dual-core-dual-GPU system.
KW - Cross-Entropy
KW - Decoupling Capacitor
KW - Parallel Computing
UR - http://www.scopus.com/inward/record.url?scp=77956210668&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=77956210668&partnerID=8YFLogxK
U2 - 10.1145/1837274.1837485
DO - 10.1145/1837274.1837485
M3 - Conference contribution
AN - SCOPUS:77956210668
SN - 9781450300025
T3 - Proceedings - Design Automation Conference
SP - 843
EP - 848
BT - Proceedings of the 47th Design Automation Conference, DAC '10
T2 - 47th Design Automation Conference, DAC '10
Y2 - 13 June 2010 through 18 June 2010
ER -