ISCAS OpenIR  > 基础软件国家工程研究中心
云计算环境中基于访问量和依赖性评价的数据分配算法
Alternative Titledata allocation algorithm based on visit capacity and dependency evaluation in cloud
孙熙领; 陈超; 丁治明; 许佳捷; 袁栋
2012
Source计算机科学
ISSN1002-137X
Volume39Issue:5Pages:141-146,171
English Abstract大量的大规模密集型数据需要存储在多个数据存储中心,而应用越来越广泛的云计算环境很好地解决了大规模密集型数据在分配中遇到的规模性问题。但是,云计算环境中多数据存储中心的数据分配会带来数据存储中心之间数据量的传输,从而导致数据访问效率低下。同时,单位时间上数据访问量的不平衡性会引起数据存储中心的访问瓶颈。以大规模密集型数据中的数据流为建模对象,提出了一种数据分配算法,它在保证数据存储中心负载平衡的基础上兼顾了密集型数据之间的依赖性。实验表明,相比于同类的数据分配算法,所提算法具有更好的综合表现,特别是在保证数据存储中心的负载平衡方面,效果突出。
AbstractA huge number of large-scale intensive data have to be stored in distributed data centers.Nowadays,under the cloud environment,large-scale data storage can be better supported.However,a challenging issue is that the transmission of intensive data between cloud data centers may cause low efficiency of data access.Also,the bottleneck of access on data center may be derived from the imbalanced capacity of data visit in unit interval.We first proposed a model based on data flow between large-scale intensive data.Afterwards,a data allocation algorithm was presented to guarantee the load balance of data centers while considering dependencies between intensive data.Extensive experiments confirm that our solution has better performances than conventional approaches particularly in load balance.
KeywordData Allocation Cloud Computing Large-scale Intensive Data Load Balance Data Dependency
Department中国科学院软件研究所;澳大利亚斯文本科技大学信息传播技术学院;
SubjectComputer Science (Provided By Thomson Reuters)
Language中文
Content Type期刊论文
URIhttp://ir.iscas.ac.cn/handle/311060/14608
Collection基础软件国家工程研究中心
Recommended Citation
GB/T 7714
孙熙领,陈超,丁治明,等. 云计算环境中基于访问量和依赖性评价的数据分配算法[J]. 计算机科学,2012,39(5):141-146,171.
APA 孙熙领,陈超,丁治明,许佳捷,&袁栋.(2012).云计算环境中基于访问量和依赖性评价的数据分配算法.计算机科学,39(5),141-146,171.
MLA 孙熙领,et al."云计算环境中基于访问量和依赖性评价的数据分配算法".计算机科学 39.5(2012):141-146,171.
Files in This Item:
File Name/Size DocType Version Access License
云计算环境中基于访问量和依赖性评价的数据(652KB) 开放获取LicenseApplication Full Text
Related Services
Recommend this item
Bookmark
Usage statistics
Export to Endnote
Google Scholar
Similar articles in Google Scholar
[孙熙领]'s Articles
[陈超]'s Articles
[丁治明]'s Articles
Baidu academic
Similar articles in Baidu academic
[孙熙领]'s Articles
[陈超]'s Articles
[丁治明]'s Articles
Bing Scholar
Similar articles in Bing Scholar
[孙熙领]'s Articles
[陈超]'s Articles
[丁治明]'s Articles
Terms of Use
No data!
Social Bookmark/Share
All comments (0)
No comment.
 

Items in the repository are protected by copyright, with all rights reserved, unless otherwise indicated.