Exploration of Security Vulnerability Mining and Protection Technologies for Cloud Computing Platforms
Keywords:
Cloud computing platform, Security vulnerabilities, Vulnerability mining, Security protection, Technical explorationAbstract
Cloud computing platforms are a crucial part of modern information technology, and the security of cloud computing platforms is increasingly receiving widespread attention. The article aims to explore security vulnerability mining and protection technologies for cloud computing platforms, in order to promote their safe and stable operation. Firstly, research and summarize the basic concepts of cloud computing platforms, security challenges, and security vulnerability classification, and propose relevant security protection strategies. Then, a deep analysis of the significance of security vulnerability mining is conducted, introducing the methods and tools of vulnerability mining, discussing the process and practices of vulnerability mining, and providing countermeasures for the challenges faced in the mining process. In addition, the paper systematically discusses the key technologies, implementation strategies, and effectiveness evaluation methods for cloud computing platform security protection. The conclusion drawn from this study is that strengthening the mining and protection of security vulnerabilities in cloud computing platforms is the key to ensuring the safe and smooth operation of the platform, and can also provide useful references for research and practice in related fields.
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