G, Bharanidharan. and Jayalakshmi, S. (2021) Predictive Scaling for Elastic Compute Resources on Public Cloud Utilizing Deep Learning based Long Short-term Memory. International Journal of Advanced Computer Science and Applications, 12 (10). ISSN 2158107X
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Abstract
The cloud resource usage has been increased exponentially because of adaptation of digitalization in government and corporate organization. This might increase the usage of cloud compute instances, resulting in massive consumption of energy from High performance Public Cloud Data Center servers. In cloud, there are some web applications which may experience diverse workloads at different timestamps that are essential for workload efficiency as well as feasibility of all extent. In cloud application, one of the major features is scalability in which most Cloud Service Providers (CSP) offer Infrastructure as a Service (IaaS) and have implemented autoscaling on the Virtual Machine (VM) levels. Auto-scaling is a cloud computing feature which has the ability in scaling the resources based on demand and it assists in providing better results for other features like high availability, fault tolerance, energy efficiency, cost management, etc. In the existing approach, the reactive scaling with fixed or smart static threshold do not
fulfill the requirement of application to run without hurdles during peak workloads, however this paper focuses on increasing the green tracing over cloud computing through proposed approach using predictive auto-scaling technique for reducing over-provisioning or under-provisioning of instances with history of traces. On the other hand, it offers right sized instances that fit the application to execute in satisfying the users through ondemand
with elasticity. This can be done using Deep Learning
based Time-Series LSTM Networks, wherein the virtual CPU
core instances can be accurately scaled using cool visualization insights after the model has been trained. Moreover, the LSTM accuracy result of prediction is also compared with Gated Recurrent Unit (GRU) to bring business intelligence through analytics with reduced energy, cost and environmental sustainability.
Item Type: | Article |
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Subjects: | Computer Applications > Cloud Computing |
Divisions: | Computer Applications |
Depositing User: | Mr IR Admin |
Date Deposited: | 06 Sep 2024 10:36 |
Last Modified: | 06 Sep 2024 10:36 |
URI: | https://ir.vistas.ac.in/id/eprint/5215 |