Robust Machine Learning Systems: Reliability and Security for Deep Neural Networks

Muhammad Abdullah Hanif, Faiq Khalid, Rachmad Vidya Wicaksana Putra, Semeen Rehman, M. Shafique
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引用次数: 51

Abstract

Machine learning is commonly being used in almost all the areas that involve advanced data analytics and intelligent control. From applications like Natural Language Processing (NLP) to autonomous driving are based upon machine learning algorithms. An increasing trend is observed in the use of Deep Neural Networks (DNNs) for such applications. While the slight inaccuracy in applications like NLP does not have any severe consequences, it is not the same for other safety-critical applications, like autonomous driving and smart healthcare, where a small error can lead to catastrophic effects. Apart from high-accuracy DNN algorithms, there is a significant need for robust machine learning systems and hardware architectures that can generate reliable and trustworthy results in the presence of hardware-level faults while also preserving security and privacy. This paper provides an overview of the challenges being faced in ensuring reliable and secure execution of DNNs. To address the challenges, we present several techniques for analyzing and mitigating the reliability and security threats in machine learning systems.
鲁棒机器学习系统:深度神经网络的可靠性和安全性
机器学习通常被用于几乎所有涉及高级数据分析和智能控制的领域。从自然语言处理(NLP)到自动驾驶等应用都是基于机器学习算法。在这些应用中使用深度神经网络(dnn)的趋势越来越明显。虽然像NLP这样的应用程序中的轻微不准确不会产生任何严重后果,但对于其他安全关键应用程序(如自动驾驶和智能医疗保健)就不一样了,在这些应用程序中,一个小错误就可能导致灾难性的影响。除了高精度的深度神经网络算法外,还需要强大的机器学习系统和硬件架构,这些系统和硬件架构可以在存在硬件级故障的情况下生成可靠和值得信赖的结果,同时保持安全性和隐私性。本文概述了确保dnn可靠和安全执行所面临的挑战。为了解决这些挑战,我们提出了几种技术来分析和减轻机器学习系统中的可靠性和安全性威胁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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