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基于MVVM模式的中国科技云门户管理系统的设计与实现

Frontiers of Data&Computing(2022)

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Abstract
[目的]中国科技云(CSTCloud)包含大量的异构资源,面向不同用户提供安全、按需、智能化的云服务,为保障中国科技云门户的服务质量,设计了基于MVVM(Model-View-ViewModel)模式的中国科技云门户管理系统.[方法]本系统依据MVVM模式,通过组件复用、RESTful(Representational State Transfer)、消息队列等技术简化开发、提升性能.[结果]中国科技云门户管理系统符合前后端分离的开发需求,同时能够满足云环境下后台管理人员的使用需求.[结论]本系统功能较全,使用方便.未来将依据微服务的增加进一步扩充系统,同时结合云资源管理的特殊性,不断提高系统安全性和服务质量,开发出更为完善的系统.
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  • Pretraining has recently greatly promoted the development of natural language processing (NLP)
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