网络安全漏洞和通过云安全工具进行补救

Fnu Jimmy
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引用次数: 0

摘要

互联网的使用激增,促使个人和企业在网上而非实体空间进行大量交易。COVID-19 的流行进一步推动了这一趋势。因此,随着云计算、物联网 (IoT)、社交媒体、无线通信和加密货币等数字技术的广泛应用,传统形式的犯罪已转移到数字领域,从而加剧了网络空间的安全问题。值得注意的是,网络犯罪分子已开始提供网络攻击服务,将攻击自动化以扩大其影响。这些攻击者利用硬件、软件和通信层的漏洞,实施各种形式的网络攻击,包括分布式拒绝服务(DDoS)、网络钓鱼、中间人、密码、远程、权限升级和恶意软件攻击。这些攻击的复杂性使得防火墙、入侵检测系统、防病毒软件和访问控制列表等传统保护系统无法有效检测。因此,当务之急是制定创新、务实的解决方案来挫败网络攻击。本文阐明了网络攻击背后的主要驱动因素,调查了最近的攻击实例、模式和检测方法,并探讨了先发制人地识别和缓解攻击的当代技术和非技术策略。利用机器学习、深度学习、云平台、大数据分析和区块链等尖端技术,有望应对当前和未来的网络威胁。这些技术干预可以帮助进行恶意软件检测、入侵检测、垃圾邮件过滤、DNS 攻击分类、欺诈检测、隐蔽渠道识别和高级持续性威胁识别。不过,必须承认的是,一些有前景的解决方案,特别是机器学习和深度学习,很容易受到规避技术的影响,因此在制定针对复杂网络攻击的防御措施时必须慎重考虑。
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Cyber security Vulnerabilities and Remediation Through Cloud Security Tools
The proliferation of internet usage has surged dramatically, prompting individuals and businesses to conduct myriad transactions online rather than in physical spaces. The onset of the COVID-19 pandemic has further propelled this trend. Consequently, traditional forms of crime have migrated to the digital realm alongside the widespread adoption of digital technologies such as cloud computing, the Internet of Things (IoT), social media, wireless communication, and crypto currencies, amplifying security concerns in cyberspace. Notably, cybercriminals have begun offering cyber attacks as a service, automating attacks to magnify their impact. These attackers exploit vulnerabilities across hardware, software, and communication layers, perpetrating various forms of cyber attacks including distributed denial of service (DDoS), phishing, man-in-the-middle, password, remote, privilege escalation, and malware attacks. The sophistication of these attacks renders conventional protection systems, such as firewalls, intrusion detection systems, antivirus software, and access control lists, ineffective in detection. Consequently, there is an urgent imperative to devise innovative and pragmatic solutions to thwart cyber attacks. This paper elucidates the primary drivers behind cyber attacks, surveys recent attack instances, patterns, and detection methodologies, and explores contemporary technical and non-technical strategies for preemptively identifying and mitigating attacks. Leveraging cutting-edge technologies like machine learning, deep learning, cloud platforms, big data analytics, and blockchain holds promise in combating present and future cyber threats. These technological interventions can aid in malware detection, intrusion detection, spam filtering, DNS attack classification, fraud detection, identification of covert channels, and discernment of advanced persistent threats. Nonetheless, it's crucial to acknowledge that some promising solutions, notably machine learning and deep learning, are susceptible to evasion techniques, necessitating careful consideration when formulating defenses against sophisticated cyber attacks.
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