Dynamic VM Consolidation Enhancement for Designing and Evaluation of Energy Efficiency in Green Data Centers Using Regression Analysis

@article{Sajitha2018DynamicVC,
  title={Dynamic VM Consolidation Enhancement for Designing and Evaluation of Energy Efficiency in Green Data Centers Using Regression Analysis},
  author={A. V. Sajitha and A. C. Subhajini},
  journal={International journal of engineering and technology},
  year={2018},
  volume={7},
  pages={179}
}
Enhancement of dynamic Virtual Machines (VM) consolidation is an efficient means to improve the energy efficiency via effective resources utilization in Cloud data centers. In this paper, we propose an algorithm, Energy Conscious Greeny Cloud Dynamic Algorithm, which considers multiple factors such as CPU, memory and bandwidth utilization of the node for empowering VM consolidation by using regression analysis model. This algorithm is the combination of several adaptive algorithms such as… 

Figures and Tables from this paper

A Linear Regression-Based Resource Utilization Prediction Policy for Live Migration in Cloud Computing
TLDR
This paper proposes to extend the previous work of simulated annealing-based optimized load balancing by adding VM migration policy from one host to another on the basis of linear regression-based prediction policy for futuristic resource utilization using linear regression based on the history of the previous utilization of resources by each host.
Resource Utilization Prediction Model for Efficient Dynamic Virtual Machine Consolidation in Cloud
TLDR
The proposed prediction-based VM consolidation approach utilized a multi-resource utilization to predict the current and future CPU and memory utilization of active servers during allocation stage and was compared with the existing method that did not consider future utilization of resources.
Network-Conscious VM Placement for Energy Efficiency in Green Data Centres through Dynamic VM Consolidation
TLDR
An algorithm, Modified Energy Conscious Greeny Cloud Dynamic Algorithm (MECGCD), goes for preventing unnecessary traffics in a datacenter network, and excessive energy consumption (EC) started from wrong routing management and improper VM allocation.

References

SHOWING 1-10 OF 21 REFERENCES
Energy-Aware VM Consolidation in Cloud Data Centers Using Utilization Prediction Model
TLDR
The experimental results show, the proposed VM consolidation approach uses a regression-based model to approximate the future CPU and memory utilization of VMs and PMs provides substantial improvement over other heuristic and meta-heuristic algorithms in reducing the energy consumption, the number of VM migrations and thenumber of SLA violations.
Virtual Machine Consolidation with Multiple Usage Prediction for Energy-Efficient Cloud Data Centers
TLDR
A virtual machine consolidation algorithm with multiple usage prediction (VMCUP-M) to improve the energy efficiency of cloud data centers and reduces the number of migrations and the power consumption of the servers while complying with the service level agreement.
A Heuristic-Based Approach for Dynamic VMs Consolidation in Cloud Data Centers
TLDR
The fast best-fit decreasing algorithm for intelligent VMs allocating into hosts and dynamic utilization rate (DUR) algorithm for utilization space and VM migration are successfully proposed and show that it performs better than the current state-of-the-art approaches.
M-Convex VM Consolidation: Towards a Better VM Workload Consolidation
TLDR
This paper presents a framework that automates the VM consolidation process to improve the VMs and servers assignment whenever such improvement is possible and can achieve a balance among multiple administrative objectives (e.g., power cost, network cost) during theVM consolidation process.
An Energy-Efficient VM Prediction and Migration Framework for Overcommitted Clouds
TLDR
It is shown that the proposed framework outperforms existing overload avoidance techniques and prior VM migration strategies by reducing the number of unpredicted overloads, minimizing migration overhead, increasing resource utilization, and reducing cloud energy consumption.
Towards Robust Green Virtual Cloud Data Center Provisioning
TLDR
This paper proposes two effective, computation-efficient and energy-efficient embedding algorithms for virtual data center (VDC) embedding, which are being regarded as a promising technology to provide performance guarantee for cloud computing applications.
Proactive power and thermal aware optimizations for energy-efficient cloud computing
TLDR
The Cloud model is helping to reduce the static consumption from two perspectives based on virtual machine allocation and consolidation, and thermal-aware strategies help to reduce hot spots in the IT infrastructure by spreading the workload, so the set point room temperature can be increased resulting in cooling savings.
CloudSim: a toolkit for modeling and simulation of cloud computing environments and evaluation of resource provisioning algorithms
TLDR
The result of this case study proves that the federated Cloud computing model significantly improves the application QoS requirements under fluctuating resource and service demand patterns.
Using Virtual Machine Allocation Policies to Defend against Co-Resident Attacks in Cloud Computing
TLDR
This paper defines security metrics for assessing the attack, designs a new policy that not only mitigates the threat of attack, but also satisfies the requirements for workload balance and low power consumption, and implements, test, and proves the effectiveness of the policy on the popular open-source platform OpenStack.
...
...