npogeant/flight-delay
A Machine Learning Pipeline built with MLflow, Prefect, BentoML, Streamlit and Evidently.
This project helps airline operations managers and travel analysts predict whether a specific flight will be delayed in the US. You input details like the day of the week, airline, origin airport, departure time, and air time, and it tells you if the flight is likely to be delayed. It’s designed for professionals who need to continuously monitor and retrain a flight delay prediction model.
No commits in the last 6 months.
Use this if you need a reliable and continuously updated system to predict US flight delays based on historical Bureau of Transportation Statistics data.
Not ideal if you need to predict precise delay durations rather than just a 'delayed' or 'on-time' classification, or if your focus is on international flights.
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Last pushed
Aug 13, 2022
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