奥德赛:在一个美丽的新世界中建模隐私威胁

Rafa Gálvez, Seda Gurses
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引用次数: 17

摘要

在即将出台的《通用数据保护条例》(GDPR)中,隐私设计和隐私影响评估被赋予了比以往更加突出的作用。现在要求公司将隐私植入其技术产品的核心。最近,研究人员和行业参与者提出采用传统上用于安全工程的威胁建模方法,作为在工程系统过程中连接这两个GDPR要求的一种方法。然而,威胁建模通常假设瀑布流程和整体设计,这些假设随着敏捷方法和面向服务的体系结构的普及而被打破。此外,敏捷服务环境使解决某些隐私问题变得更容易,而使其他问题复杂化。到目前为止,在敏捷服务环境中为隐私应用威胁建模的挑战仍然没有得到充分的研究。本文旨在揭示和分析这一差距。具体来说,我们分析了软件工程实践的变化给传统的威胁建模活动带来的挑战和机遇;它们与不同隐私目标之间的关系;以及敏捷原则和服务属性对它们的影响。我们的结果表明,敏捷和服务都使应用程序的端到端分析变得更加困难。同时,前者允许更有效的通信和迭代过程,而后者允许任务的并行化和一些体系结构决策的文档化。此外,我们开辟了一条新的研究途径,将亚马逊Macie作为机器学习应用程序的一个例子,旨在为隐私威胁建模过程的可扩展性和可用性提供解决方案。
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The Odyssey: Modeling Privacy Threats in a Brave New World
In the upcoming General Data Protection Regulation (GDPR), privacy by design and privacy impact assessments are given an even more prominent role than before. It is now required that companies build privacy into the core of their technical products. Recently, researchers and industry players have proposed employing threat modeling methods, traditionally used in security engineering, as a way to bridge these two GDPR requirements in the process of engineering systems. Threat modeling, however, typically assumes a waterfall process and monolithic design, assumptions that are disrupted with the popularization of Agile methodologies and Service Oriented Architectures. Moreover, agile service environments make it easier to address some privacy problems, while complicating others. To date, the challenges of applying threat modeling for privacy in agile service environments remain understudied. This paper sets out to expose and analyze this gap. Specifically, we analyze what challenges and opportunities the shifts in software engineering practice introduce into traditional Threat Modeling activities; how they relate to the different Privacy Goals; and what Agile principles and Service properties have an impact on them. Our results show that both agile and services make the end-toend analysis of applications more difficult. At the same time, the former allows for more efficient communications and iterative progress, while the latter enables the parallelization of tasks and the documentation of some architecture decisions. Additionally, we open a new research avenue pointing to Amazon Macie as an example of Machine Learning applications that aim to provide a solution to the scalability and usability of Privacy Threat Modeling processes.
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