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Surge Prediction

Why We Made This

Problem

  • Using ride-sharing apps can be unpredictably expensive.
  • Local environmental factors (Weather | Social & Sporting Events) cause demand for drivers, and fares increase to meet this demand.

Solution

  • Local events and weather predictions are compared in a logical way, to provide users with the likelyhood (%) of a fare surge for the next three hours.
  • Users are able to call a Lyft directly from the site.

How Does It Work?

Information Gathering

  • First, data is gathered from the following API
    • Weather Underground (Weather info: Percepitation, Incliment weather)
    • Google Maps && Places (Traffic Data)
    • Ticket Master (Event Start & End Times | Number of Events | 5 Mile Radius)
    • Lyft

Logic

  • Logic for % Chance of Fare Surge:
    • Current weather, and current + 2 hours
    • Local events beginning and ending within the hour, and the following two hours
    • Predicted likelyhood offare surge increases as incliment weather increases, or with presence of events. Both conditions occuring at the same time dramatically increase the likelyhood of a surge in pricing.

Tech Used

  • JavaScript / jQuery
  • Firebase (Data Storage)
  • Chart.js (Graphical Display of Prediciton)
  • Ajax

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