期刊文献+

基于大数据的API接口运维自感知监控方法研究

Research on API Interface Operation and Maintenance Self Sensing Monitoring Method Based on Big Data
下载PDF
导出
摘要 近年来,我国的大数据技术快速发展,在大数据技术的引导下,计算机技术也逐渐实现了智能化。在智能化、信息化时代,数据的产生需要依托智能计算机的精准运算,云计算技术能对网络上的海量数据进行精准定位和分析处理,从众多无用的数据中筛选出有价值的信息,并将其返回数据库。这些有价值的信息和内容是支撑时代发展的基础。大数据平台信息搜集的重点在于海量信息的存储,筛选后的信息对各行各业的发展有利有弊。对于目前的网络平台而言,大数据运维自感知监控技术既是挑战也是机遇。 In recent years,China’s big data technology has developed rapidly.Under the guidance of big data technology,computer technology has gradually realized intelligence.In the intelligent and information age,the generation of data needs to rely on the precise calculation of intelligent computers.Cloud computing technology can accurately locate and analyze massive data on the network,screen out valuable information from many useless data,and return it to the database.These valuable information and content are the basis for supporting the development of the times.The focus of information collection on big data platforms is mass information storage,and the screened information has advantages and disadvantages for the development of all walks of life.Big data operation and maintenance self-aware monitoring technology is both a challenge and an opportunity for the current network platform.
作者 林素标 LIN Subiao(China Mobile Communications Group Guangdong Co.,Ltd.,Guangzhou 510623,China)
出处 《移动信息》 2023年第9期191-193,共3页 MOBILE INFORMATION
关键词 大数据 API接口 运维 自感知监控 Big data API interface Operation and maintenance Self sensing monitoring
  • 相关文献

参考文献5

二级参考文献42

  • 1满相忠,李娅.个性化定制模式的发展趋势[J].企业改革与管理,2007(2):24-25. 被引量:8
  • 2Apache官方主页[DB/OL].http://Hadoop.apache.org/.
  • 3White T.Hadoop权威指南(第二版)[M].北京:清华大学出版社,2011:43—44.
  • 4http://epaper.gmw.cn/gmrb/htmI/2012-12/14/nw. D1100- 00gmrb_20121214_2-05. htm.
  • 5http://www.ycwb.com/ePaper/ycwb/htmI/2012-12/15/co- ntent_36546. htm? div=-1.
  • 6White T. Hadoop , The definitive guide[M]. Zhou Min-qi , Wang Xiao-ling ,J in Che-qing , et al , translation. Beijing: Tsinghua University Press. 2011. (in Chinese).
  • 7http://www.nature.com/news/specials/bigdata/index.ht- ml.
  • 8Segaran T. Hammerbacher 1. Beautiful data:The stories be?hind elegant data solutions[M]. California: OReilly Media. 2009.
  • 9Hey T. Tansley S. Tolle K. The fourth paradigm: Data-in?tensive scientic discovery[M]. Washington: Microsoft Re?search. 2009.
  • 10http://news. sohu. com/20070202/n247993796. shtrnl.

共引文献133

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