结合机器学习的自主系统的软件和系统可靠性工程

Aiden Gula, Christian Ellis, Saikath Bhattacharya, L. Fiondella
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引用次数: 5

摘要

人工智能和机器学习作为自主系统的推动者已经引起了人们的极大兴趣。然而,这些技术容易受到各种故障和对抗性攻击的影响,这表明需要正式的可靠性和弹性工程方法。由于机器学习不是万能的,而且私营行业、基础设施管理和防御系统经常受到外部攻击,评估这些技术可能无意中引入的可能的故障和相应的后果是至关重要的。本文旨在弥合传统方法和新兴方法之间的差距,以支持包含机器学习的自主系统的工程。为此,我们试图将系统和可靠性工程以及软件测试等已建立领域的方法与机器学习算法的设计和测试的最新趋势相结合。拟议的方法应为各组织提供额外的结构,以理解和分配其风险缓解工作,以解决由于这些不太了解的技术而不可避免地产生的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Software and System Reliability Engineering for Autonomous Systems Incorporating Machine Learning
Artificial intelligence and machine learning have attracted significant interest as enablers of autonomous systems. However, these techniques are susceptible to a variety of failures as well as adversarial attacks, suggesting the need for formal reliability and resilience engineering methods. Tempered by the knowledge that machine learning is not a panacea and that private industry, infrastructure management, and defense systems are regularly subject to external attack, it is essential to assess the possible failures and corresponding consequences that these technologies may inadvertently introduce. This paper seeks to bridge the gap between traditional and emerging methods to support the engineering of autonomous systems incorporating machine learning. Toward this end we seek to synthesize methods from established fields such as system and reliability engineering as well as software testing with recent trends in the design and test of machine learning algorithms. The proposed approach should provide organizations with additional structure to comprehend and allocate their risk mitigation efforts in order to address issues that will inevitably arise from these less well understood technologies.
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