Title
A self-tuning design methodology for power-efficient multi-core systems
Abstract
This article aims to achieve computational reliability and energy efficiency through codevelopment of algorithms, device, and circuit designs for application-specific, reconfigurable architectures. The new methodology characterizes aging-switching activity and aging-supply voltage relationships that are applicable for minimizing power consumption and task execution efficiency in order to achieve low bit energy ratio (BER). In addition, a new dynamic management algorithm (DMA) is proposed to alleviate device degradation and to extend system lifespan. In contrast to traditional workload balancing schemes in which cores are regarded as homogeneous, the new algorithm ranks cores as “highly competitive,” “less competitive,” and “not competitive” according to their various competitiveness. Core competitiveness is evaluated based upon their reliability, temperature, and timing requirements. Consequently, “competitive” cores will take charge of the majority of the tasks at relatively high voltage/frequency without violating power and timing budgets, while “not competitive” cores will have light workloads to ensure their reliability. The new approach combines intrinsic device characteristics (aging-switching activity and aging-supply voltage curves) into an integrated framework to achieve high reliability and low energy level with graceful degradation of system performance. Experimental results show that the proposed method has achieved up to 20% power reduction, with about 4% performance degradation (in terms of accomplished workload and system throughput), compared with traditional workload balancing methods. The new method also improves system mean-time-to-failure (MTTF) by up to 25%.
Year
DOI
Venue
2012
10.1145/2390191.2390195
ACM Trans. Design Autom. Electr. Syst.
Keywords
DocType
Volume
system lifespan,new methodology,high reliability,system mean-time-to-failure,new method,new algorithm,self-tuning design methodology,power-efficient multi-core system,computational reliability,new approach,traditional workload,new dynamic management algorithm,negative bias temperature instability
Journal
18
Issue
ISSN
Citations 
1
1084-4309
1
PageRank 
References 
Authors
0.38
19
7
Name
Order
Citations
PageRank
Jin Sun1405.97
Rui Zheng210616.04
Jyothi Velamala3534.83
Yu Cao42765245.91
Roman Lysecky560560.43
Karthik Shankar6549.46
Janet Roveda7145.96