I. Introduction
The growing number of cyber threats makes it necessary to use innovative security protocols in order to protect networks from possible vulnerabilities. The purpose of this research is to offer an ensemble learning-based strategy to identifying and combating fraudulent data inside network environments. An effective defensive system against a wide variety of assaults is the goal of the algorithm, which does this by combining a number of different machine learning models.