We use of random forest algorithm, which is an ML calculation, for the recognition of emotional well- being conditions. Emotional well-being problems present critical difficulties around the world, with early discovery being essential for successful mediation and treatment. Utilizing information from different sources, for example, online entertainment, electronic wellbeing records, and self-revealed studies. Random forest offers a powerful structure for prescient demonstrating. By breaking down an assorted arrangement of elements including etymological examples, conduct signals, and segment data, random forest can successfully order people into various psychological well-being classes like melancholy, uneasiness, and stress. The gathering idea of Arbitrary Woods empowers it to deal with complex connections inside the information, yielding solid forecasts even within sight of commotion and exceptions. Through thorough preparation and approval methodologies, we exhibit the adequacy of random forest in precisely recognizing people in danger of psychological wellness problems. This approach holds guarantees for versatile and available emotional wellness screening, empowering ideal mediations, and backing for those out of luck. As we dive further into the domain of ML applications in psychological well-being, random forest arises as a significant device for upgrading our comprehension and understanding of these circumstances.