Deep neural networks for predicting task time series in cloud computing systems
Document Type
Conference Proceeding
Publication Date
5-1-2019
Abstract
A large number of cloud services provided by cloud data centers have become the most important part of Internet services. In spite of numerous benefits, cloud providers face some challenging issues in accurate large-scale task time series prediction. Such prediction benefits providers since appropriate resource provisioning can be performed to ensure the full satisfaction of their service-level agreements with users without wasting computing and networking resources. In this work, we first perform a logarithmic operation before task sequence smoothing to reduce the standard deviation. Then, the method of a Savitzky-Golay (S-G) filter is chosen to eliminate the extreme points and noise interference in the original sequence. Next, this work proposes an integrated prediction method that combines the S-G filter with Long Short-Term Memory network models to predict task time series at the next time slot. We further adopt a gradient clipping method to eliminate the gradient exploding problem. Furthermore, in the process of model training, we choose optimizer Adam to achieve the best results. Experimental results demonstrate that it achieves better prediction results than some commonly-used prediction methods.
Identifier
85068768916 (Scopus)
ISBN
[9781728100838]
Publication Title
Proceedings of the 2019 IEEE 16th International Conference on Networking Sensing and Control Icnsc 2019
External Full Text Location
https://doi.org/10.1109/ICNSC.2019.8743188
First Page
86
Last Page
91
Grant
61703011
Fund Ref
National Natural Science Foundation of China
Recommended Citation
Bi, Jing; Li, Shuang; Yuan, Haitao; Zhao, Ziyan; and Liu, Haoyue, "Deep neural networks for predicting task time series in cloud computing systems" (2019). Faculty Publications. 7619.
https://digitalcommons.njit.edu/fac_pubs/7619
