Skip to content

yugalk14/CMPE273-Project_Uber_Lyft

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

85 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

CMPE273-Project

Final Project CMPE273 class

Installation

  1. Clone it or download the file on your system.
  2. Install and import all project requirements as mentioned in requirements.txt file.
  3. Change the DB_PASSWORD as your database password in: Instance->config.py
  4. Make run.py as the starting point. You're good to go then.

Algorithm

  1. We've implemented our own version of algorithm from Travelling salseman probelm and Dijkstra's algorithm.
  2. We're calculating best route based on the price.
  3. Starting with comparing price of 1st value with each and every middle points, selecting the route which is taking the least cost.
  4. Then taking that travesed point and calculating with others in a loop and making our best optimized route in dynamic way.

Calculation

After finding optmized path

  1. We're calling uber and lyft API's to calculate price of available transport type like Uber X, Uber XL, Uber Select, Lyft, Lyft Plus etc.
  2. Implemented and transformed google maps path draw function, to draw our calculated optimized path and show it as result.

As this is our first iteration of delivery, we tried to do error handling. It might wont work for some extream cases, but we tried to do our best.

2. Trip Planner using Uber vs Lyft's Price Estimation

Requirement

  • Plan a trip which consists of a set of places and estimate the total cost between Uber and Lyft.
  • You need to store location details and price estimate data into a persistent DB.
  • FEEL FREE TO ADD ANY APIS THAT YOU NEED.

I. Location APIs

    1. Create Location: POST /locations

Call Google Map API to look up coordinates. http://maps.google.com/maps/api/geocode/json?address=1600+Amphitheatre+Parkway,+Mountain+View,+CA&sensor=false

Request

{
   "name" : "My Home",
   "address" : "123 Main St",
   "city" : "San Francisco",
   "state" : "CA",
   "zip" : "94113"
}

Response

{
   "id" : 12345,
   "name" : "My Home",
   "address" : "123 Main St",
   "city" : "San Francisco",
   "state" : "CA",
   "zip" : "94113",
   "coordinate" : {
      "lat" : 38.4220352,
      "lng" : -222.0841244
   }
}
    1. Get a location: GET /locations/12345

Response

{
   "id" : 12345,
   "name" : "My Home",
   "address" : "123 Main St",
   "city" : "San Francisco",
   "state" : "CA",
   "zip" : "94113",
   "coordinate" : {
      "lat" : 38.4220352,
      "lng" : -222.0841244
   }
}
    1. Update a location: PUT /locations/12345

Request

{
   "name" : "My New Home"
}
    1. Delete a location: DELETE /locations/12345

II. Trip Planner APIs

    1. Plan a trip: POST /trips

Request

{
    "start": "/locations/12345",
    "others" : [
        "/locations/1000",
        "/locations/1001",
        "/locations/1002",
    ],
    "end": "/locations/12345"
}

Response

{
    "id": 200000,
    "start": "/locations/12345",
    "best_route_by_costs" : [
        "/locations/1002",
        "/locations/1000",
        "/locations/1001",
    ],
    "providers" : [
        {
            "name" : "Uber",
            "total_costs_by_cheapest_car_type" : 125,
            "currency_code": "USD",
            "total_duration" : 640,
            "duration_unit": "minute",
            "total_distance" : 25.05,
            "distance_unit": "mile"
        },
        {
            "name" : "Lyft",
            "total_costs_by_cheapest_car_type" : 110,
            "currency_code": "USD",
            "total_duration" : 620,
            "duration_unit": "minute",
            "total_distance" : 25.05,
            "distance_unit": "mile"
        }
    ],
    "end": "/locations/12345"
}

Dependency

About

CMPE 273 Final Project based on price comparison trip planner

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 4

  •  
  •  
  •  
  •