Towards Virtual Machine Energy-Aware Cost Prediction in Clouds
نویسندگان
چکیده
Pricing mechanisms employed by different service providers significantly influence the role of cloud computing within the IT industry. With the increasing cost of electricity, Cloud providers consider power consumption as one of the major cost factors to be maintained within their infrastructures. Consequently, modelling a new pricing mechanism that allow Cloud providers to determine the potential cost of resource usage and power consumption has attracted the attention of many researchers. Furthermore, predicting the future cost of Cloud services can help the service providers to offer the suitable services to the customers that meet their requirements. This paper introduces an Energy-Aware Cost Prediction Framework to estimate the total cost of Virtual Machines (VMs) by considering the resource usage and power consumption. The VMs’ workload is firstly predicted based on an Autoregressive Integrated Moving Average (ARIMA) model. The power consumption is then predicted using regression models. The comparison between the predicted and actual results obtained in a real Cloud testbed shows that this framework is capable of predicting the workload, power consumption and total cost for different VMs with good prediction accuracy, e.g. with 0.06 absolute percentage error for the predicted total cost of the VM.
منابع مشابه
Communication-Aware Traffic Stream Optimization for Virtual Machine Placement in Cloud Datacenters with VL2 Topology
By pervasiveness of cloud computing, a colossal amount of applications from gigantic organizations increasingly tend to rely on cloud services. These demands caused a great number of applications in form of couple of virtual machines (VMs) requests to be executed on data centers’ servers. Some of applications are as big as not possible to be processed upon a single VM. Also, there exists severa...
متن کاملReleasing Cloud Databases for the Chains of Performance Prediction Models
The onset of cloud computing has brought about computing power that can be provisioned and released on-demand. This capability has drastically increased the complexity of workload and resource management for database applications. Existing solutions rely on query latency prediction models, which are notoriously inaccurate in cloud environments. We argue for a substantial shift away from query p...
متن کاملDecentralized, Energy-Efficient, Low Latency and Less Homogeneous Settings based Workload Management in Enterprise Clouds
The main objective of this paper is to present a decentralized approach towards energy-efficient and scalable management of virtual machine (VM) cases that are provisioned by large, enterprise clouds. In this proposed approach, the computation information’s of the data centre are successfully organized into a hypercube constitution. The hypercube flawlessly scales up and down as resources are e...
متن کاملEfficient autonomic cloud computing using online discrete event simulation
Interest is growing in open source tools that let organizations build IaaS clouds using their own internal infrastructures, alone or in conjunction with external ones. A key component in such private/hybrid clouds is virtual infrastructure management, i.e., the dynamic orchestration of virtual machines, based on the understanding and prediction of performance at scale, with uncertain workloads ...
متن کاملResearch on Energy - aware Virtual Machine Scheduling in Cloud Environment ⋆
Nowadays, there are lots of problems in Cloud data center such as high energy consumption and low efficiency. We model a cloud environment with physical hosts and virtual machines, and design an Energy-Aware Virtual Machine Scheduling strategy (EAVMS) to reduce energy consumption and improve utilization rate by integrating system resource such as computing, storage and bandwidth resources. Expe...
متن کامل