期刊文献+

跨平台信息系统数据迁移技术研究与应用 被引量:3

Research and Application of Data Migration Technology for Cross-Platform Information Systems
在线阅读 下载PDF
导出
摘要 结合最新时代背景,本文深入探讨了跨平台信息系统数据迁移中的技术难点,如数据兼容性、完整性、安全性以及性能问题等,并结合现实企业数据迁移的实际案例,提出有效的解决方案和最佳实践策略。同时论述了如何利用最新的云计算技术与大数据技术来优化数据迁移流程,提高数据迁移效率,提升数据迁移质量。本文还重点阐述了基于DataX的数据迁移平台的开发与应用,介绍了数据迁移平台面对现代技术在简化复杂迁移任务中具有的独特优势,不仅使数据迁移更加高效准确和稳定,还为企业提供了丰富的日志信息和性能指标,帮助企业管理者进行辅助分析和决策。展望未来,我们将继续深入优化数据迁移平台,以期为企业在数据迁移过程中提供更加全面的指导和参考。 In combination with the latest era background,this article will deeply explore the technical difficulties in data migration of cross-platform information systems,such as data compatibility,data integrity,security,and performance issues.It will also propose effective solutions and best practice strategies based on practical cases of enterprise data migration.The article further introduces how to leverage the latest cloud computing and big data technologies to optimize the data migration process,improve data migration efficiency,and enhance data migration quality.This article focuses on the development and application of a data migration platform based on DataX,presenting the unique advantages of this platform in simplifying complex migration tasks with modern technology.It not only makes data migration more efficient,accurate,and stable but also provides enterprises with rich log information and performance indicators to assist managers in analysis and decision-making.In the future,we will continue to deepen and optimize the data migration platform,aiming to provide comprehensive guidance and reference for enterprises during the data migration process.
作者 胡庆 任仕辉 HU Qing;REN Shi-hui(North China Municipal Engineering Design&Research Institute CO.,Ltd.,Tianjin 300074,China)
出处 《电子技术与软件工程》 2024年第4期8-13,共6页 ELECTRONIC TECHNOLOGY & SOFTWARE ENGINEERING
关键词 数据迁移 跨平台 DataX 数据安全 data migration cross-platform DataX data security
  • 相关文献

参考文献5

二级参考文献30

  • 1阎逸飞,王智立,邱雪松,王嘉潞.Spark环境下基于数据倾斜模型的Shuffle分区优化方案[J].北京邮电大学学报,2020(2):116-121. 被引量:5
  • 2刘正伟,文中领,张海涛.云计算和云数据管理技术[J].计算机研究与发展,2012,49(S1):26-31. 被引量:171
  • 3C.J.Date.数据库系统导论[M].北京:机械工业出版社,2000..
  • 4Labrinidis A,Jagadish H V.Challenges and Opportunities with Big Data[J].Proceedings of the VLDB Endowment,2012,5(12):2032-2033.
  • 5Abirami S P,Shalini R.Linear Scheduling Strategy for Resource Allocation in Cloud Environment[J].Journal on Cloud Computing:Services and Architecture,2012,2(1):9-17.
  • 6Dean J,Ghemawat S.MapReduce:Simplified Data Processing on Large Clusters[J].Communications of the ACM,2008,51(1):107-113.
  • 7Venugopal S,Buyya R.An SCP-based Heuristic Approach for Scheduling Distributed Data-intensive Application on Global Grids[J].Journal of Parallel and Distributed Computing,2008,68(4):471-487.
  • 8Yuan Dong,Yang Yun,Liu Xiao,et al.A Data Placement Strategy in Scientific Cloud Workflows[J].Future Generation Computer Systems,2010,26(8):1200-1214.
  • 9Mc Cormick W T,Sehweitzer P J,White T W.Problem Decomposition and Data Reorganization by a Clustering Technique[J].Operations Research,1972,20(5):993-1009.
  • 10郑湃,崔立真,王海洋,徐猛.云计算环境下面向数据密集型应用的数据布局策略与方法[J].计算机学报,2010,33(8):1472-1480. 被引量:121

共引文献28

同被引文献32

引证文献3

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