Abstract

The escalating number of cybersecurity threats poses significant challenges for ensuring the security of networked systems. Intrusion Detection Systems (IDS) play a vital role in detecting and preventing malicious activities. This paper focuses on the implementation of an AI-driven IDS using Python and Light Connect Object (LCO) to enhance the detection capabilities and improve the overall security of networked systems. By integrating AI techniques into the IDS framework, we aim to effectively identify both known and unknown attacks. The proposed system is evaluated using real- world network traffic data, and its performance is measured using metrics such as detection accuracy and false positive rate. The results demonstrate the effectiveness and practicality of the AI-driven IDS in enhancing network security

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