Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering,Computer Science Applications
Reference30 articles.
1. Ahmadvand, H., Foroutan, F., & Fathy, M. (2021). DV-DVFS: Merging data variety and DVFS technique to manage the energy consumption of big data processing. Journal of Big Data, 8, 45. https://doi.org/10.1186/s40537-021-00437-7
2. Nejat, M., Manivannam, M., & Perices, M. (2020). Perstenstrom, “Coordinated management of DVFS and cache partitioning under QoS contraints to save energy in multi-core systems.” Journal of Parallel Computing, 144, 246–259.
3. Hassan, H. A., Salem, S. A., & Saad, E. M. (2020). ”A smart energy and reliability aware scheduling algorithm for workflow execution in DVFS-enabled cloud environment. Future Generation Computer Systems, 112, 431–448.
4. Ahmadvand, H., Goudarzi, M., & Foroutan, F. (2019). Gapprox: Using Gallup approach for approximation in big data processing. J Big Data, 6, 20. https://doi.org/10.1186/s40537-019-0185-4
5. Stavarindes, G. L., & Karatza, H. D. (2019). An energy-efficient, Qos aware and cost-effective scheduling approach for real-time workflow applications in cloud computing systems utilizing DVFS and approximate computations. Future Generation Computer Systems, 96, 216–226.