


Detailed steps to implement route planning and real-time traffic query functions using Python and Baidu Map API
Detailed steps for using Python and Baidu Map API to implement path planning and real-time traffic query functions
1. Introduction
With the development of cities, traffic is becoming increasingly congested, and people need to plan routes reasonably when traveling. Avoid congested road sections and also hope to obtain real-time traffic information. Baidu Maps provides a powerful route planning and real-time traffic query API, which we can call using the Python programming language to implement route planning and real-time traffic query functions. This article will introduce in detail how to use Python and Baidu Map API to implement these functions.
2. Preparation
First, we need to install the Python requests library and the developer key of Baidu Map API.
-
Install requests library
Open the command line terminal and execute the following command to install the requests library:pip install requests
Copy after login - Get the developer key of Baidu Map API
Visit Baidu Map Open Platform (http://lbsyun.baidu.com/), register and log in, create an application and obtain a developer key. Note that each account has a certain free request quota per day.
3. Path planning function
Import requests library and json library
import requests import json
Copy after loginDefine path planning function
def route_planning(origin, destination): url = "http://api.map.baidu.com/directionlite/v1/transit" params = { "origin": origin, "destination": destination, "ak": "your_api_key" } response = requests.get(url, params=params) result = json.loads(response.text) return result
Copy after loginNote, replace "your_api_key" with the developer key of the Baidu Map API you applied for.
Calling the path planning function
origin = "北京西站" destination = "北京南站" result = route_planning(origin, destination) print(result)
Copy after loginHere is an example of path planning from Beijing West Railway Station to Beijing South Railway Station.
4. Real-time traffic query function
Define real-time traffic query function
def realtime_traffic(city): url = "http://api.map.baidu.com/traffic/v1/bound" params = { "ak": "your_api_key", "bounds": "39.915,116.404,39.979,116.414", "city": city } response = requests.get(url, params=params) result = json.loads(response.text) return result
Copy after loginNote, replace "your_api_key" with The developer key of Baidu Map API that you applied for.
Calling the real-time traffic query function
city = "北京市" result = realtime_traffic(city) print(result)
Copy after loginHere is an example of querying real-time traffic conditions in Beijing.
5. Summary
The above are the detailed steps for using Python and Baidu Map API to implement path planning and real-time traffic query functions. We can easily implement these functions through Python's requests library and Baidu Map API calls. I hope this article can be helpful to everyone.
The above is the detailed content of Detailed steps to implement route planning and real-time traffic query functions using Python and Baidu Map API. For more information, please follow other related articles on the PHP Chinese website!

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