Generative AI: A New Challenge for Cybersecurity

Mingzheng Wang
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Abstract

The rapid development of Generative Artificial Intelligence (GAI) technology has shown tremendous potential in various fields, such as image generation, text generation, and video generation, and it has been widely applied in various industries. However, GAI also brings new risks and challenges to cybersecurity. This paper analyzes the application status of GAI technology in the field of cybersecurity and discusses the risks and challenges it brings, including data security risks, scientific and technological ethics and moral challenges, Artificial Intelligence (AI) fraud, and threats from cyberattacks. On this basis, this paper proposes some countermeasures to maintain cybersecurity and address the threats posed by GAI, including: establishing and improving standards and specifications for AI technology to ensure its security and reliability; developing AI-based cybersecurity defense technologies to enhance cybersecurity defense capabilities; improving the AI literacy of the whole society to help the public understand and use AI technology correctly. From the perspective of GAI technology background, this paper systematically analyzes its impact on cybersecurity and proposes some targeted countermeasures and suggestions, possessing certain theoretical and practical significance.
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生成式人工智能:网络安全面临的新挑战
生成式人工智能(GAI)技术的飞速发展在图像生成、文本生成、视频生成等多个领域展现出巨大潜力,并已广泛应用于各行各业。然而,GAI 也给网络安全带来了新的风险和挑战。本文分析了GAI技术在网络安全领域的应用现状,探讨了其带来的风险与挑战,包括数据安全风险、科技伦理与道德挑战、人工智能(AI)欺诈、网络攻击威胁等。在此基础上,本文提出了维护网络安全、应对GAI威胁的一些对策,包括:建立和完善人工智能技术的标准和规范,确保其安全可靠;发展基于人工智能的网络安全防御技术,提升网络安全防御能力;提高全社会的人工智能素养,帮助公众正确认识和使用人工智能技术。本文从GAI技术背景出发,系统分析了其对网络安全的影响,并有针对性地提出了一些对策和建议,具有一定的理论和现实意义。
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