Harmonizing Compliance: Coordinating Automated Verification Processes within Cloud-based AI/ML Workflows

Sohana Akter
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Abstract

The significance of ensuring security and upholding data privacy within cloud-based workflows is widely recognized in research domains. This importance is particularly evident in contexts such as safeguarding patients' private data managed within cloud-deployed workflows, where maintaining confidentiality is paramount, alongside ensuring secure communication among involved stakeholders. In response to these imperatives, our paper presents an architecture and formal model designed to enforce security measures within cloud workflow orchestration. Central to our proposed architecture is the emphasis on continuous monitoring of cloud resources, workflow tasks, and data streams to detect and preempt anomalies in workflow orchestration processes. To accomplish this, we advocate for a multi-modal approach that integrates deep learning, one-class classification, and clustering techniques. In essence, our proposed architecture offers a comprehensive solution for enforcing security within cloud workflow orchestration, harnessing advanced methodologies like deep learning for anomaly detection and prediction. This approach is particularly pertinent in critical sectors such as healthcare, especially during unprecedented events like the COVID-19 pandemic.
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统一合规性:在基于云的 AI/ML 工作流程中协调自动验证流程
在基于云的工作流程中确保安全和维护数据隐私的重要性已在研究领域得到广泛认可。这种重要性在保护云工作流中管理的患者私人数据等情况下尤为明显,在这些情况下,保密性至关重要,同时还要确保相关利益方之间的安全通信。针对这些必要条件,我们的论文提出了一种架构和形式模型,旨在在云工作流协调中执行安全措施。我们提出的架构的核心是强调对云资源、工作流任务和数据流进行持续监控,以检测和预防工作流协调流程中的异常情况。为了实现这一目标,我们主张采用多模式方法,将深度学习、单类分类和聚类技术整合在一起。从本质上讲,我们提出的架构为在云工作流协调中执行安全提供了全面的解决方案,利用了深度学习等先进方法来进行异常检测和预测。这种方法尤其适用于医疗保健等关键领域,特别是在 COVID-19 大流行等前所未有的事件中。
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