A data frame with `n` observations (rows, where `n` is the number of taxi trips) and 11 variables:
Trip_Distance_km
Trip distance in kilometers. This variable measures how far the taxi has traveled.
Time_of_Day
A categorization of the time of the day (e.g., 1 might represent morning, 2 afternoon, etc.). It can potentially affect pricing due to demand patterns.
Day_of_Week
The day of the week (0 - 6, where 0 could represent Sunday). Weekend vs. weekday trips might have different pricing considerations.
Passenger_Count
Number of passengers in the taxi. It could influence the pricing structure in some taxi systems.
Traffic_Conditions
A measure of traffic conditions (e.g., 1 for light traffic, 4 for heavy traffic). Traffic can impact trip duration and thus price.
Weather
A classification of weather conditions (e.g., 1 for clear, 3 for rainy). Weather might have an impact on demand and thus pricing.
Base_Fare
The base fare amount for the taxi trip. This is a fixed component of the price.
Per_Km_Rate
The rate charged per kilometer traveled.
Per_Minute_Rate
The rate charged per minute of the trip (usually applicable when the taxi is idling or in slow - moving traffic).
Trip_Duration_Minutes
The duration of the trip in minutes.
Trip_Price
The final price of the taxi trip.