DOIONLINE

DOIONLINE NO - IJACSCC-IRAJ-DOIONLINE-16659

Publish In
International Journal of Advances in Computer Science and Cloud Computing (IJACSCC)-IJACSCC
Journal Home
Volume Issue
Issue
Volume-7,Issue-1  ( May, 2019 )
Paper Title
Workload Multivariate Prediction By Vector Autoregressive and The Stacked Lstm Models
Author Name
Soukaina Ouhame, Youssef Hadi, Fettah Akhiat, El Hassan Elkafssaoui
Affilition
MISC Laboratory, Ibn Tofail University, Kenitra Morocco LAGA Laboratory, Ibn Tofail University, Kenitra Morocco IMEMA Laboratory, Ibn Tofail University, Kenitra Morocco
Pages
48-53
Abstract
In cloud computing services, Infrastructure as a service (IaaS) is a service model that provides virtual computing resources in the form of hardware, networking, and storage services to the end users as needed in an elastic manner. However, cloud-hosting platforms introduce several minutes delay in the hardware resource allocation. The obvious solution to this issue is to predict the future need of computing resources and allocate them before being requested. This paper represents a hybrid method for predicting multivariate workload based on the Vector Autoregressive (VAR) model and the Stacked Long Short Term Memory (LSTM) model. In the proposed method, two metrics are used: CPU and memory usage, the VAR model is used to filter the linear interdependencies among the multivariate time series, and the stacked LSTM model to capture nonlinear trends in the residuals computed from the VAR model. The proposed hybrid model is compared with other hybrid predictive models: the AR-MLP model, the RNN-GRU model and the ARIMA-LSTM model. Results of experiments show superior efficacy of the proposed method over the other hybrid models. Keywords- Cloud Computing, Multivariate Workload Prediction, Vector Autoregressive, VAR, Long Short Term Memory, Stacked LSTM.
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