VPN-Based Approaches to Computer Network Information Security: Methods and Applications
Keywords:
Virtual private network, Network technology, Information security, Computer networkAbstract
With the continuous development of China's social economy, the pace of scientific and technological advancement has been steadily accelerating. Internet technology and computer technology have experienced rapid expansion within this developmental trajectory. However, as the information age progresses, the issue of information security within internet technology has grown increasingly critical. Within the internet domain, users' online information faces numerous threats, making the preservation of information security an essential imperative. This paper discusses the application of Virtual Private Network (VPN) technology in computer network information security, providing an overview of VPN technology with the aim of offering valuable insights and assistance to relevant technical personnel.
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