722
Views
1
CrossRef citations to date
0
Altmetric
Research Article

Power-Aware Characteristics of Matrix Operations on Multicores

&
Pages 2102-2123 | Received 28 Jan 2021, Accepted 22 Oct 2021, Published online: 29 Dec 2021

References

  • Ashish, M., and N. Khare. 2015. Analysis of DVFS techniques for improving the GPU energy efficiency. Open Journal of Energy Efficiency 4 (4):77–86. doi:https://doi.org/10.4236/ojee.2015.44009.
  • Bishwajit, D., V. Adhinarayanan, and W. Feng. 2018. GPU power prediction via ensemble machine learning for DVFS space exploration. ACMDigital library ISBN: 978-1-4503-5761-6.
  • Chien, S. W. D.,Stefano Markidis, Vyacheslav Olshevsky, Yaroslav Bulatov, Erwin Laure, Jeffrey S. Vetter. 2019. An evaluation of tensorflow performance in HPC applications, arXiv:1903.04364v1 [cs.DC] March 11, 2019
  • Dong, L., S. Byna, and S. Chakradhar. 2011. Energy-Aware workload consolidation on GPU. IEEE 1530-2016/11 © 2011. doi:https://doi.org/10.1109/ICPPW.2011.25.
  • Hayri, A., G. Alptekin, J. P Gelas, and P. Ghodous. 2016. The impact of source code in software on power consumption. International Journal of Electronic Business Management, Electronic Business Management Society Taiwan, 14, pp.42–52. <hal-01496266>.
  • Hesham, H. M., A. S. Moussa., and I. Farag. 2017. Performance vs. Power and energy consumption: impact of coding style and compiler. (IJACSA) International Journal of Advanced Computer Science and Applications Volume 8 (Number 12).
  • Khaled, M. A., A. M. El-Hosseini, and A. H. Ali. 2015. Dynamic power management techniques in multi-core architectures: A survey study. Production and Hosting by Elsevier 2090–4479,Volume 8, Issue 3. Ain Shams University.
  • Leon, V., G. Lentaris, E. Petrongonas, D. Soudris, G. Furano, A. Tavoularis, and D. Moloney. 2021. Improving performance-power-programmability in space avionics with edge devices: VBN on Myriad2 SoC. ACM Transactions on Embedded Computing Systems (TECS) 20 (3):1–23. doi:https://doi.org/10.1145/3440885.
  • Leon, V., S. Mouselinos, K. Koliogeorgi, S. Xydis, D. Soudris, and K. Pekmestzi. 2020. A TensorFlow extension framework for optimized generation of hardware CNN inference engines. MDPI Technologies 8 (1):1–15. doi:https://doi.org/10.3390/technologies8010006.
  • Martin, A., P. Barham, et al., 2016. TensorFlow: A system for large-scale machine learning, OSDI’16 Proceedings of the 12th USENIX(Advanced Computing Systems Association)conference on Operating Systems Design and Implementation, Savannah, GA, USA, 265–83. ACM Digital library.
  • Martin, P. P., L. D. Giusti, and M. Naiouf. 2018, October. Are GPUs non-green computing devices? Journal of Computer Science & Technology Volume 18 , Number 2.
  • Matteo, C., L. Vanzolini, and C. Mucci. 2015, March. Power-aware job scheduling on heterogeneous multicore architectures. IEEE Transactions on Parallel and Distributed Systems 26 Issue 3, Page(s): 868 - 877.
  • Mike, Z., and Q. Huang. 2017. InterPSS: A new generation power system simulation engine. 2017 Link: https, ResearchGate.
  • Nvidia CUDA C Programming Guide, version 3.1. 2007. NVIDIA corporation. Link: http://developer.nvidia.com/object/cuda.html.
  • Nvidia CUDA Programming Guide, Nvidia, Santa Clara, CA, USA. 2011.
  • Peter Goldsborough, 2016, A Tour of TensorFlow, arXiv: 1610.01178v1 [cs.LG], October 1st. https://www.tensorflow.org/guide/gpuhttps://www.nvidia.org
  • Phuong, T. Y., L. D. Young., and L. J. Gun. 2017. Impacts of optimization strategies on performance, power/energy consumption of a GPU based parallel reduction. Journal of Central South University Springer 24:2624–37.
  • Robert, B., N. Imam., and T. Mintz. 2016, December. Understanding GPU power: A survey of profiling, modeling, and simulation methods. Journal, ACM Computing Surveys (CSUR) 49 (Issue 3). Article No. 41,pp 1–27.
  • Rui, P., M. Couto, J. Marco Couto, Rui Pereira, Francisco Ribeiro, Rui Rua, Jacome Cunha, Joao Paulo Fernandes. 2017. Energy efficiency across programming languages. Association for Computing Machinery, ACM ISBN 978-1-4503-5525-4/17/10. doi:https://doi.org/10.1145/3136014.3136031.
  • Sparsh, M., and S. Jeffrey. 2014, July. A survey of methods for analyzing and improving GPU energy efficiency. ACM Computing Surveys Volume 47, Issue 2. Article 19, Pages 1-23.
  • TOP500 Supercomputer Site. 2017. http://www.top500.org
  • Tyler, A., and G. Rong. 2016. Characterizing power and performance of GPU memory access. IEEE 978-1-5090-3856-5/16, 2016. Pages 46–53.
  • Velasco-Montero, D., J. Femández-Bemi, R. Carmona-Gálán, and A. Rodríguez-Vázquez. 2019. On the correlation of CNN performance and hardware metrics for visual inference on a low-cost CPU-based platform. International Conference on Systems, Signals and Image Processing (IWSSIP) 249–54. doi:https://doi.org/10.1109/IWSSIP.2019.8787329.
  • Xinxin, M., L. S. Yung, K. Zhao, and X. Chu. 2013. A measurement study of GPU DVFS on energy conservation. ACMDigital Library ISBN: 978-1-4503-2458-8.
  • Xinxin, M., Q. Wang, and X. Chu, 2016. A survey and measurement study of GPU DVFS on energy conservation, arXiv: 1610.01784v1 [cs.DC] 6.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.