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Secure Deep Learning Engineering: A Road Towards Quality Assurance of Intelligent Systems

机译:安全的深度学习工程:智能系统质量保证的道路

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Over the past decades, deep learning (DL) systems have achieved tremendous success and gained great popularity in various applications, such as intelligent machines, image processing, speech processing, and medical diagnostics. Deep neural networks are the key driving force behind its recent success, but still seem to be a magic black box lacking interpretability and understanding. This brings up many open safety and security issues with enormous and urgent demands on rigorous methodologies and engineering practice for quality enhancement. A plethora of studies have shown that state-of-the-art DL systems suffer from defects and vulnerabilities that can lead to severe loss and tragedies, especially when applied to real-world safety-critical applications. In this paper, we perform a large-scale study and construct a paper repository of 223 relevant works to the quality assurance, security, and interpretation of deep learning. Based on this, we, from a software quality assurance perspective, pinpoint challenges and future opportunities to facilitate drawing the attention of the software engineering community towards addressing the pressing industrial demand of secure intelligent systems.
机译:在过去的几十年中,深入学习(DL)系统取得了巨大的成功,并在各种应用中获得了很大的普及,例如智能机器,图像处理,语音处理和医疗诊断。深度神经网络是其最近成功的关键推动力,但似乎似乎是缺乏可解释性和理解的魔法黑匣子。这带来了许多开放的安全和安全问题,对严格的方法以及质量增强的严格方法和工程实践有巨大和迫切要求。一定的研究表明,最先进的DL系统患有可能导致严重损失和悲伤的缺陷和脆弱性,特别是在应用于现实世界的安全关键型应用时。在本文中,我们进行了大规模的研究,并构建了223个相关工程的纸张存储库,以质量保证,安全和对深度学习的解释。基于此,我们从软件质量保证的角度来看,确定挑战和未来机会,以促进软件工程界的注意力解决安全智能系统的压制工业需求。

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