PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual Machines in Cloud Data Centers under Quality of Service Constraints

Por um escritor misterioso
Last updated 22 dezembro 2024
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
This work proposes a novel approach that for any known stationary workload and a given state configuration optimally solves the problem of host overload detection by maximizing the mean intermigration time under the specified QoS goal based on a Markov chain model. Dynamic consolidation of virtual machines (VMs) is an effective way to improve the utilization of resources and energy efficiency in cloud data centers. Determining when it is best to reallocate VMs from an overloaded host is an aspect of dynamic VM consolidation that directly influences the resource utilization and quality of service (QoS) delivered by the system. The influence on the QoS is explained by the fact that server overloads cause resource shortages and performance degradation of applications. Current solutions to the problem of host overload detection are generally heuristic based, or rely on statistical analysis of historical data. The limitations of these approaches are that they lead to suboptimal results and do not allow explicit specification of a QoS goal. We propose a novel approach that for any known stationary workload and a given state configuration optimally solves the problem of host overload detection by maximizing the mean intermigration time under the specified QoS goal based on a Markov chain model. We heuristically adapt the algorithm to handle unknown nonstationary workloads using the Multisize Sliding Window workload estimation technique. Through simulations with workload traces from more than a thousand PlanetLab VMs, we show that our approach outperforms the best benchmark algorithm and provides approximately 88 percent of the performance of the optimal offline algorithm.
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
PDF] Dynamic Consolidation of Virtual Machines In Cloud Data
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
GitHub - beloglazov/tpds-2013-workload: The workload traces used
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
ETAS: Energy and thermal‐aware dynamic virtual machine
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
PDF) Reduction of Power Consumption in Cloud Data Centers via
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
PDF) An Approach for Energy Efficient Dynamic Virtual Machine
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
Sustainable expert virtual machine migration in dynamic clouds
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
PDF) A Virtual Machine Consolidation Algorithm Based on Dynamic
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
PDF) Virtual Machine Consolidation with Minimization of Migration
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
A survey on virtual machine migration and server consolidation
PDF] Managing Overloaded Hosts for Dynamic Consolidation of Virtual  Machines in Cloud Data Centers under Quality of Service Constraints
Randomized routing of virtual machines in IaaS data centers [PeerJ]

© 2014-2024 faktorgumruk.com. All rights reserved.