用于SaaS云服务的hdft++混合数据流跟踪

Alexander Fromm, Vladislav Stepa
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引用次数: 4

摘要

基于SaaS的云计算承诺向云消费者提供专用的和专门的本地计算资源和按使用付费的计算资源。然而,这些好处与数据机密性问题相交换:一旦数据被传输到云服务,云消费者就失去了对其数据的控制,并且仍然不确定他们的数据如何在服务内部处理和传播。为了消除这些担忧,我们提供了hdft++,这是一种混合数据流跟踪方法,用于筛选数据如何在云服务中传播。例如,通过这种方式,云服务消费者可以获得有价值的详细信息,以审计其驻留在云中的数据。我们的方法是创新的,因为我们将静态计算的信息流分析结果与动态运行时数据流跟踪机制结合起来,只监视SaaS服务中与数据流实际相关的那些程序位置。我们的评估结果表明,我们的解决方案在收集运行时信息的同时,对受检查的服务施加的性能开销比相关工作更少,或者至少相当。此外,由于我们只跟踪服务级别的数据流,我们可以通过设计在性能开销和被监视服务的可移植性之间实现更好的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HDFT++ Hybrid Data Flow Tracking for SaaS Cloud Services
SaaS based cloud computing promises to provide dedicated and specialized computational resources on-premise and on a pay-per-use base to cloud consumers. These benefits, however, are traded with data confidentiality concerns: once data is transmitted to a cloud service, cloud consumers loose control over their data and remain in uncertainty about how their data is processed and disseminated inside the service. To counteract those concerns, we provide HDFT++, a hybrid data flow tracking approach to screen how data disseminate inside a cloud service. That way for instance, cloud service consumers are provided with valuable and detailed information to audit their cloud-resident data. Our approach is innovative, as we combine statically computed information flow analysis results with dynamic run-time data flow tracking mechanisms to monitor only those program locations inside a SaaS service that are actually relevant for a flow of data. Our evaluation results show, that our solution, while collecting run-time information, imposes less or at least equivalent performance overhead on the service under scrutiny than related work. Moreover, as we only track the flow of data at the service level, we could achieve by design a better balance between performance overhead and portability of the monitored service.
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