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Time series-based workload prediction using the statistical hybrid model for the cloud environment
in
Artificial neural networks
/ Autoregressive models
/ Central processing units
/ Cloud computing
/ Computer centers
/ CPUs
/ Customer services
/ Forecasting
/ History
/ Neural networks
/ Pattern recognition
/ Provisioning
/ Quality of service
/ Resource allocation
/ Resource management
/ Resource utilization
/ Sales forecasting
/ Statistical analysis
/ Statistical prediction
/ Time series
/ Workloads
2023
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Time series-based workload prediction using the statistical hybrid model for the cloud environment
by
in
Artificial neural networks
/ Autoregressive models
/ Central processing units
/ Cloud computing
/ Computer centers
/ CPUs
/ Customer services
/ Forecasting
/ History
/ Neural networks
/ Pattern recognition
/ Provisioning
/ Quality of service
/ Resource allocation
/ Resource management
/ Resource utilization
/ Sales forecasting
/ Statistical analysis
/ Statistical prediction
/ Time series
/ Workloads
2023
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Do you wish to request the book?
Time series-based workload prediction using the statistical hybrid model for the cloud environment
in
Artificial neural networks
/ Autoregressive models
/ Central processing units
/ Cloud computing
/ Computer centers
/ CPUs
/ Customer services
/ Forecasting
/ History
/ Neural networks
/ Pattern recognition
/ Provisioning
/ Quality of service
/ Resource allocation
/ Resource management
/ Resource utilization
/ Sales forecasting
/ Statistical analysis
/ Statistical prediction
/ Time series
/ Workloads
2023
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Time series-based workload prediction using the statistical hybrid model for the cloud environment
Journal Article
Time series-based workload prediction using the statistical hybrid model for the cloud environment
2023
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Overview
Resource management is addressed using infrastructure as a service. On demand, the resource management module effectively manages available resources. Resource management in cloud resource provisioning is aided by the prediction of central processing unit (CPU) and memory utilization. Using a hybrid ARIMA–ANN model, this study forecasts future CPU and memory utilization. The range of values discovered is utilized to make predictions, which is useful for resource management. In the cloud traces, the ARIMA model detects linear components in the CPU and memory utilization patterns. For recognizing and magnifying nonlinear components in the traces, the artificial neural network (ANN) leverages the residuals derived from the ARIMA model. The resource utilization patterns are predicted using a combination of linear and nonlinear components. From the predicted and previous history values, the Savitzky–Golay filter finds a range of forecast values. Point value forecasting may not be the best method for predicting multi-step resource utilization in a cloud setting. The forecasting error can be decreased by introducing a range of values, and we employ as reported by Engelbrecht HA and van Greunen M (in: Network and Service Management (CNSM), 2015 11th International Conference, 2015) OER (over estimation rate) and UER (under estimation rate) to cope with the error produced by over or under estimation of CPU and memory utilization. The prediction accuracy is tested using statistical-based analysis using Google's 29-day trail and BitBrain (BB).
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