DocumentCode :
169692
Title :
Prediction and control of bursty cloud workloads: A fractal framework
Author :
Ghorbani, Mohammadmersad ; Yanzhi Wang ; Yuankun Xue ; Pedram, Massoud ; Bogdan, Paul
Author_Institution :
Electr. Eng. Dept., Univ. of Southern California, Los Angeles, CA, USA
fYear :
2014
fDate :
12-17 Oct. 2014
Firstpage :
1
Lastpage :
9
Abstract :
Cloud Computing is a promising approach to handle the growing needs for computation and storage in an efficient and cost-effective manner. Towards this end, characterizing workloads in the cloud infrastructure (e.g., a data center) is essential for performing cloud optimizations such as resource provisioning and energy minimization. However, there is a huge gap between the characteristics of actual workloads (e.g., they tend to be bursty and exhibit fractal behavior) and existing cloud optimization algorithms, which tend to rely on simplistic assumptions about the workloads. To close this gap, based on fractional calculus concepts, we present a fractal model to account for the complex dynamics of cloud computing workloads (i.e., the number of request arrivals or CPU/memory usage during each time interval). More precisely, we introduce a fractal operator to account for the time-varying fractal properties of the cloud workloads. In addition, we present an efficient (online) parameter estimation algorithm, an accurate forecasting strategy, and a novel fractal-based model predictive control approach for optimizing the CPU utilization, and hence, the overall energy consumption in the system while satisfying networked architecture performance constraints like queue capacities. We demonstrate advantages of our fractal model in forecasting the complex cloud computing dynamics over conventional (non-fractal) models by using real-world cloud (Google) traces. Unlike non-fractal models, which have very poor prediction capabilities under bursty workload conditions, our fractal model can accurately predict bursty request processes, which is crucial for cloud computing workload forecasting. Finally, experimental results demonstrate that the fractal model based optimization outperforms the non-fractal based ones in terms of minimizing the resource utilization by an average of 30%.
Keywords :
cloud computing; fractals; parameter estimation; power aware computing; predictive control; resource allocation; CPU utilization; CPU-memory usage; Google; bursty request processes; bursty workload conditions; cloud computing workload control; cloud computing workload forecasting; cloud computing workload prediction; cloud infrastructure; cloud optimization algorithms; complex cloud computing dynamics forecasting; energy consumption; energy minimization; forecasting strategy; fractal behavior; fractal framework; fractal model based optimization; fractal operator; fractal-based model predictive control approach; fractional calculus concepts; networked architecture performance constraints; nonfractal models; parameter estimation algorithm; queue capacities; real-world cloud traces; resource provisioning; resource utilization; time-varying fractal properties; Cloud computing; Computational modeling; Fractals; Mathematical model; Optimization; Predictive models; Servers; Algorithms; Design; Management; Theory;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Hardware/Software Codesign and System Synthesis (CODES+ISSS), 2014 International Conference on
Conference_Location :
New Delhi
Type :
conf
DOI :
10.1145/2656075.2656095
Filename :
6971828
Link To Document :
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