Patent
Cloud computing-based two-level optimal scheduling management platform for virtual machine
Xiang Hongxian
- 12 Oct 2016
4
TL;DR: In this article, a cloud computing-based two-level optimal scheduling management platform for virtual machines is presented, where the first-level scheduling optimization module and the second-level optimization optimization module are introduced based on the traditional cloud computing based twolevel scheduling model.
read more
Abstract: The invention provides a cloud computing-based two-level optimal scheduling management platform for a virtual machine. The platform comprises a cloud computing platform portal, a first-level scheduling module, a second-level scheduling module, a first-level scheduling optimization module, a second-level scheduling optimization module and a physical resource distribution module. According to the cloud computing-based two-level optimal scheduling management platform for the virtual machine disclosed by the invention, the first-level scheduling optimization module and the second-level scheduling optimization module are introduced based on the traditional cloud computing-based two-level scheduling model; different bionic intelligence algorithms are adopted in the two-level scheduling optimization modules; resource scheduling distribution of the first-level scheduling module and the second-level scheduling module is optimized; the globally optimal static and dynamic solution is provided for load balancing of a cloud virtual machine; an optimal scheduling scheme can be obtained; the migration resource cost of the virtual machine is effectively reduced; the utilization efficiency of cloud computing resources is increased; and simultaneously, the service quality of users is improved.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Patent
Load balancing system and method of cloud computing server cluster
Jiang Yi,Li Yongjun,Zhang Yi,Zhou Bangyu,Tan Miaomiao +4 more
- 31 May 2017
TL;DR: In this article, a load balancing system and method of a cloud computing server cluster is presented, where a double-layer resource allocation strategy is adopted, and the method specifically comprises the following steps: during user login, a login module, a monitoring module and an allocation module in a management server collaboratively work to allocate the double layer resource allocation to a certain GPU computing server.
7
Patent
Intelligent monitoring-management method and system of large-scale distributed system
Zeng Lingfang,Cheng Wen,Li Chunyan,Xu Jie,Deng Shijun,Cai Ran,Sang Dazou,Wang Fang,Feng Dan +8 more
- 05 Apr 2019
TL;DR: In this paper, an intelligent monitoring-management method and system of a large-scale distributed system is described. But the method is limited to a single task, and the task is scheduled according to the QoS regulation parameter.
2
Patent
Short message channel parameter configuration method and device
Bian Wei,Sun Zhenjiang,Ke Jincan,Chen Yu +3 more
- 06 Jul 2018
TL;DR: In this article, a short message channel parameter configuration method and a device are presented, which comprises the steps of obtaining feature data of a short-message channel which makes a request fora configuration parameter; obtaining a shortmessage channel configuration parameter which corresponds to the obtained feature data and is allocated to the short-messenger channel through an intelligent channel parameter model.
1
Patent
Virtual machine scheduling method and device and electronic device
Liu Wenyi,Li Tianyu,Fang Xiaorong,Song Yihui,Qian Sishu +4 more
- 16 Apr 2019
TL;DR: In this paper, the authors proposed a virtual machine scheduling method and device, and an electronic device consisting of a DQN network and a pre-acquired environment data through feature extraction.
References
Patent
Cloud computing dynamic resource scheduling system and method
Luo Guangchun,Tian Ling,Ke Qin,Liu Guisong,Zhang Jiao +4 more
- 24 Sep 2014
TL;DR: In this paper, a cloud computing dynamic resource scheduling method based on the feedback and a prediction mechanism is proposed, which aims to overcome the defects of the cloud computing resource distribution and scheduling technique in the prior art, and can achieve balance use of various computer resources in cloud computing environment, obtain satisfactory load balance under small pay expenses and improve comprehensive efficiency of system scheduling.
46
Patent
Load balancing realization method in cloud computing environment
Changguo Wu,Liulei Zhou +1 more
- 01 Aug 2012
TL;DR: In this paper, a load balancing realization method in a cloud computing environment is presented, where a front-end logic layer, a rear-end data processing layer and a data persisting layer are divided, and large-scale visit and mass data are correspondingly optimized in the processing of each layer.
11
Patent
Hybrid intelligent optimization method
Cheng Chunling,Yin Xiaolong,Zhang Dengyin,Fu Xiong,Hua Yuming +4 more
- 23 Jul 2014
TL;DR: In this article, a hybrid intelligent optimization method is proposed to combine a genetic optimization algorithm and a bacterial foraging optimization algorithm, which organically converges towards the optimal solution by combining the breadth searching capacity of the GA algorithm and serves as an initial bacterial population in the posterior BFO algorithm.
10
Patent
Storage resource optimized scheduling and discovering algorithm
Yu Hui,Guo Feng,Li Xinhu,Liu Junpeng,Liu Zhengwei +4 more
- 19 Mar 2014
TL;DR: In this paper, a storage resource optimized scheduling and discovering algorithm is proposed to ensure the efficient and reasonable utilization of data center physical resource, which has the advantages of good stability, strong practicality and easy popularization.
3
SLA-Aware Virtual Resource Management for Cloud Infrastructures
Hien Nguyen Van,Frédéric Dang Tran,Jean-Marc Menaud +2 more
- 11 Oct 2009
TL;DR: An autonomic resource manager is proposed to control the virtualized environment which decouples the provisioning of resources from the dynamic placement of virtual machines and aims to optimize a global utility function which integrates both the degree of SLA fulfillment and the operating costs.