This document summarizes a research paper on predicting road traffic using machine learning. The paper aims to develop accurate prediction models using accident data to identify factors that contribute to accidents. This will help develop safety measures to prevent accidents. The paper reviews previous literature on identifying accident-prone locations and factors. It then describes the methodology used, which involves collecting accident data and dividing it into categories based on accident severity. Statistical analysis is performed on the data and results show predictions of accidents in urban, rural and other areas over time. The conclusions are that a broader analysis of more accident factors can improve predictions and help reduce accidents.