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Companies like Car2Go and Uber should be able to reduce the number of vehicles they make available in a city by improving their demand forecasting techniques. Evidence for this was found in a new study by RSM PhD candidate Micha Kahlen. His model uses weather forecasts and city hotspots to make the use of car-sharing vehicles more efficient.
Companies like Car2Go and Uber should be able to reduce the number of vehicles they make available in a city by improving their demand forecasting techniques. Evidence for this was found in a new study by RSM PhD candidate Micha Kahlen. His model uses weather forecasts and city hotspots to make the use of car-sharing vehicles more efficient.