Topological data analysis (TDA) is a powerful tool used to extract meaningful properties from the topological structure of data, enabling the discovery of complex relationships and patterns within datasets. It provides a unique perspective by focusing on the shape and structure of data rather than traditional statistical methods. In our research, we aim to explore the impact of stochastic processes on TDA. Specifically, we investigate how introducing stochastic calculations can enhance the analysis of topological features, offering a more nuanced understanding of the data. Stochastic processes account for randomness and variability, which are inherent in many real-world datasets. By integrating these processes into TDA, we can uncover more precise relationships between data points and obtain deeper insights into the underlying topological structures. Our work highlights the advantages of this approach, particularly in improving the robustness and accuracy of TDA in the presence of noise and variability. The results of this research have the potential to broaden the applicability of TDA in fields such as biology, neuroscience, and machine learning, where complex data structures are common, and stochastic behavior often plays a critical role in shaping the data’s characteristics.