Deep Learning Under Siege: Identifying Security Vulnerabilities and Risk Mitigation Strategies

Jamal Al-Karaki, Muhammad Al-Zafar Khan, Mostafa Mohamad, Dababrata Chowdhury
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Abstract

With the rise in the wholesale adoption of Deep Learning (DL) models in nearly all aspects of society, a unique set of challenges is imposed. Primarily centered around the architectures of these models, these risks pose a significant challenge, and addressing these challenges is key to their successful implementation and usage in the future. In this research, we present the security challenges associated with the current DL models deployed into production, as well as anticipate the challenges of future DL technologies based on the advancements in computing, AI, and hardware technologies. In addition, we propose risk mitigation techniques to inhibit these challenges and provide metrical evaluations to measure the effectiveness of these metrics.
被围攻的深度学习:识别安全漏洞和风险缓解策略
随着深度学习(DL)模型在社会各领域的广泛应用,一系列独特的挑战也随之而来。这些风险主要集中在这些模型的架构上,构成了重大挑战,而应对这些挑战是未来成功实施和使用这些模型的关键。在本研究中,我们介绍了与当前已投入生产的数字线路模型相关的安全挑战,并基于计算、人工智能和硬件技术的进步,预测了未来数字线路技术的挑战。此外,我们还提出了抑制这些挑战的风险缓解技术,并提供了衡量这些指标有效性的度量评估。
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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