Description: Gravitational clustering is a data analysis technique based on the analogy of gravitational forces to group similar data points. In this approach, each data point is considered as a body with mass, and the similarity between the data translates into a gravitational force acting between them. Data points that are more similar attract each other, forming groups or clusters. This method is distinguished by its ability to handle large volumes of data and its flexibility in defining the distance or similarity between points. As the data clusters, underlying patterns and structures can be identified that may not be evident at first glance. Gravitational clustering is particularly useful in contexts where the shape of clusters is not necessarily spherical, making it more versatile than other traditional clustering methods. Additionally, this technique can be applied in various fields, fostering the exploration and analysis of complex data.