期刊文献+

大数据在“智慧校园”中的价值研究 被引量:15

Value Research of Big Data in “Smart Campus”
下载PDF
导出
摘要 随着"智慧"理念研究的深入,"智慧校园"正成为教育行业信息化建设的方向。物联网和云计算等新技术的应用使得结构化数据管理方式已无法充分体现数据价值。"大数据"作为一种新的数据管理技术,对结构化、半结构化和非结构化数据实施深度挖掘并形成智能决策依据具有较强的优势。尽管当前"大数据"技术发展还处于基础阶段,但从其定义、特性以及当前的应用领域可以看出它在"智慧校园"建设中的潜在价值。大数据将"智慧校园"建设理念提升到了一个新的高度。 With the deep research on the idea of "wisdom" ," smart campus" is the direction of information construction of education in- dustry. The structured data management method could not fully reflect data value with applications of new technologies, such as interuet of things and cloud computing. "Big data", as a new data management technology, has a cutting edge in the deep digging of the structure- d,semi-structured and unstructured data and forms the basis of intelligent decision-making. Although the development of "big data" technology is at the basic stage,we can find its potential value in the construction of "smart campus" from its definition,characteristics and its current application fields. "Big data" raises the construction concept of "smart campus" to a new higher level.
作者 姚琪
出处 《南京工业职业技术学院学报》 2013年第4期36-38,共3页 Journal of Nanjing Institute of Industry Technology
关键词 大数据 智慧校园 数据 物联网 云计算 Big Data smart campus data internet of things cloud computing
  • 相关文献

参考文献7

  • 1Manyika J,Chui M,Brown B,etal.Big data:The next frontier for innovation,competition,and productivity[R/OL].[2012-10-02].http://www.mckinsey.com/Insights/MGI/Research/TechnologyandInnovation/Big data:The next frontier for innovation.
  • 2李奕.计算革命与数据价值-2012第二届中国计算机技术大会专题报道[N].中国计算机报,2012-10-15(016).
  • 3徐子沛大数据:正在到来的数据革命,以及它如何改变政府、商业与我们的生活[M].桂林:广西师范大学出版社,2012.
  • 4孟小峰,慈祥.大数据管理:概念、技术与挑战[J].计算机研究与发展,2013,50(1):146-169. 被引量:2374
  • 5赵春雷,乔治.纳汉.“大数据”时代的计算机信息处理技术[J].世界科学,2012(2):30-31. 被引量:97
  • 6王珊,王会举,覃雄派,周烜.架构大数据:挑战、现状与展望[J].计算机学报,2011,34(10):1741-1752. 被引量:615
  • 7金良编译.大数据时代降临[N].纽约时报,2012-02-12.

二级参考文献209

  • 1[OL].<http://hadoop.apache.org.>.
  • 2WinterCorp: 2005 TopTen Program Summary. http:// www. wintercorp, com/WhitePapers/WC TopTenWP. pdf.
  • 3TDWI Checklist Report: Big Data Analytics. http://tdwi. org/research/2010/08/Big-Data-Analytics, aspx.
  • 4Chaudhuri S, Dayal U. An overview of data warehousing and OLAP technology. SIGMOD Rec, 1997,26(1): 65-74.
  • 5Madden S, DeWitt D J, Stonebraker M. Database parallelism choices greatly impact scalability. DatabaseColumn Blog. http://www, databasecolumn, com/2007/10/database-parallelism-choices, html.
  • 6Dean J, Ghemawat S. MapReduce: Simplified data processing on large clusters//Proceedings of the 6th Symposium on Operating System Design and Implementation (OSDI ' 04). San Francisco, California, USA, 2004: 137-150.
  • 7DeWitt D J, Gerber R H, Graefe G, Heytens M L, Kumar K B, Muralikrishna M. GAMMA--A high performance dataflow database machine//Proceedings of the 12th International Conference on Very Large Data Bases (VLDB' 86). Kyoto, Japan, 1986:228-237.
  • 8Fushimi S, Kitsuregawa M, Tanaka H. An overview of the system software of a parallel relational database machine// Proceedings of the 12th International Conference on Very Large DataBases(VLDB'86). Kyoto, Japan, 1986:209-219.
  • 9Brewer E A. Towards robust distributed systems//Proceedings of the 19th Annual ACM Symposium on Principles of Distributed Computing (PODC' 00). Portland, Oregon, USA, 2000:7.
  • 10http: //www. dbms2, com/2008/08/26/known-applications of mapreduce/.

共引文献2882

同被引文献35

引证文献15

二级引证文献93

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