Abstract
The exponential growth of digital technologies has brought about a surge in the complexity and frequency of cyber-attacks, necessitating robust cyber security measures. This study introduces an innovative approach to cyber security data analysis by leveraging Convolutional Neural Network (CNN) technology. The primary objective is to explore the potential of CNNs in accurately and efficiently detecting and classifying cyber security threats. Synthetic data was generated as a preliminary proof of concept, representing cyber security incidents as feature vectors. The study uses Convolutional Neural Networks (CNNs) as the primary machine learning and deep learning technique. The CNN architecture was thoughtfully designed with multiple convolutional and pooling layers to effectively capture intricate patterns and relationships within the data. Experimental results demonstrate the CNN's remarkable capabilities in handling cyber security data, achieving substantial accuracy in identifying and categorizing cyber threats, thereby enhancing cyber security defenses. The research emphasizes the significance of integrating deep learning techniques to complement traditional cyber security approaches. While the study acknowledges certain limitations, such as the absence of real-world data, future research could involve incorporating diverse datasets to further validate the CNN's effectiveness in practical cyber security scenarios. This research establishes a foundation for employing CNN-based data analytics in cyber security, contributing to proactive threat detection and fortification against evolving cyber-attacks. The insights gained pave the way for sophisticated applications and methodologies to safeguard critical infrastructures and sensitive information amidst relentless cyber threats.