期刊文献+

基于VMware vSphere私有云计算模式的数字化实验室建设 被引量:9

Construction of Digital Laboratory Based on VMware vSphere Private Cloud Computing Model
下载PDF
导出
摘要 传统实验室在建设中通常采用普通PC计算机或无盘工作站方式,此种方式造成系统容易遭受病毒、流氓软件攻击,导致系统垃圾软件增多,使系统性能降低、故障率提升等。为解决上述问题,本文基于私有云计算,通过层次化服务平台,进行实验室数字化建设研究。首先分析利用私有云计算模式进行实验室数字化建设的可行性,在此基础上,基于私有云计算模式,进行数字化实验室设计。最后,针对私有云计算采用的关键技术及措施进行研究。 Traditional laboratories usually use ordinary PC or diskless workstations. This approach makes the system be vulnera- ble to viruses, rogue software attact, which results in the increase of system garbage software, lower system performance, and higher failure rate. In order to solve the above problems, this paper studies the digital laboratory construction based on private cloud computing, through the hierarchical service platform. Firstly, this paper analyzes the feasibility of using the private cloud computing model to digitize the laboratory, then designs a digital laboratory based on the private cloud computing model, and finally, studies the key technologies and measures adopted in private cloud computing.
出处 《计算机与现代化》 2017年第7期124-126,共3页 Computer and Modernization
关键词 私有云计算 实验室 数字化建设 关键技术 private cloud computing laboratory digital construction key technology
  • 相关文献

参考文献14

二级参考文献92

  • 1陈真.云计算平台入侵检测系统的设计与实现[D].厦门:厦门大学,2012.
  • 2马晓吴.基于云计算的安全数据存储服务的研究与实现[D].上海:同济大学,2008.
  • 3KUNDRA V. Federal Cloud Computing Strategy [ EB/ OL]. [2011-02-01 ]. http://www, cio. gov/docu- ments/federal-eioud-computing-strategy, pdf.
  • 4MELL P, GRANCE T. The NIST Definition of Cloud Computing [J]. National Institute of Standards and Technology, 2009, 53(6): 50.
  • 5ERL T, PUTYINI R, MAHMOOD Z. Cloud Compu- ting: Concepts, Technology & Architecture [ M ]. Pearson Education, 2013.
  • 6XIAO Z, SONG W, CHEN Q. Dynamic Resource Allocation Using Virtual Machines for Cloud Computing Environment[J]. IEEE Trans on Parallel and Distrib- uted Systems, 2013, 24(6) : 1107-1117.
  • 7GHEMAWAT S, GOBIOFF H, LEUNG S T. The Google file system [ J ]. ACM SIGOPS Operating Sys- tems Review, ACM, 2003, 37 (5) : 29-43.
  • 8SHVACHKO K, KUANG H, RADIA S, et al. The Hadoop Distributed File System [ C ]// 2010 IEEE 26th Symposium on MSST, IEEE, 2010: 1-10.
  • 9CHANG F, DEAN J, GHEMAWAT S, et al. Big- table : A Distributed Storage System for Structured data [ J]. ACM Trans on Computer Systems (TOCS), 2008, 26(2) : 4.
  • 10DEAN J, GHEMAWAT S. MapReduce : Simplified Data Processing on Large Clusters [ J ]. Communica- tions of the ACM, 2008, 51 ( 1 ) : 107-113.

共引文献151

同被引文献49

引证文献9

二级引证文献24

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部