This project is a bike sharing demand prediction which predicts the demand of bikes sharing per day and hour.
Bike sharing systems are a new generation of traditional bike rentals where whole process from membership, rental and return back has become automatic. Through these systems, user is able to easily rent a bike from a particular position and return back at another position.
Currently, there are about over 500 bike-sharing programs around the world which is composed of over 500 thousands bicycles. Today, there exists great interest in these systems to overcome traffic, environmental and health issues.
Apart from interesting real world applications of bike sharing systems, the characteristics of data being generated by these systems make them attractive for the research. Opposed to other transport services such as bus or subway, the duration of travel, departure and arrival position is explicitly recorded in these systems.
This feature turns bike sharing system into a virtual sensor network that can be used for sensing mobility in the city. Hence, it is expected that most of important events in the city could be detected via monitoring these data.
Streamlit App : https://share.streamlit.io/prathimacode-hub/bike-sharing-demand-prediction/main/main.py
We had used Rangom Forest Regressor to predict due to it's optimized accuracy.