masterhood13 / dota2predictor
Dota 2 Match Result Predictor Telegram Bot Overview This project is a Telegram bot that leverages a XGBoost neural network model to predict the outcomes of Dota 2 matches. The bot provides users with real-time predictions based on current match data, making it a useful tool for Dota 2 enthusiasts and analysts.
☆13Updated last week
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