


How to use Python and Baidu Map API to obtain real-time data on urban traffic congestion?
How to use Python and Baidu Map API to obtain real-time data on urban traffic congestion?
Introduction:
In daily life, we often encounter traffic jams, so understanding the real-time traffic conditions in the city is very important for our travels. Fortunately, Baidu Maps provides a set of APIs to help us obtain real-time data on urban traffic congestion. This article will introduce how to use Python and Baidu Map API to obtain real-time data on urban traffic congestion, and provide corresponding code examples.
Step 1: Apply for a Baidu Map developer account and obtain an API key
First, we need to register a Baidu Map developer account and create an application. Then, obtain the API key from the application management page. The API key is our certificate for using Baidu Map API, so please keep this key properly.
Step 2: Install Baidu Map API library
We use Python language to write code to obtain urban traffic congestion, so we need to install the corresponding Baidu Map API library. You can install the Baidu Map API library by running the following command on the command line:
pip install baidu-map
Step 3: Write code to obtain traffic congestion
The following is a simple Python code example for obtaining a certain Real-time data on urban traffic congestion:
from baidumap.api import TrafficInfo # 替换成你自己的百度地图API密钥 ak = "Your API Key" # 创建TrafficInfo对象 traffic_info = TrafficInfo(ak) # 获取城市交通拥堵情况的实时数据 city = "北京" result = traffic_info.get(city) # 打印交通拥堵情况 print(result)
In the above code, we first imported the TrafficInfo
class and set the ak
variable we applied from Baidu Maps Get the API key. Then, we created a TrafficInfo
object and called the get
method to obtain real-time traffic congestion data in a certain city. Finally, print out the returned data.
Step 4: Parse the returned data The data returned by the get
method is a string in JSON format. We can use the json
library to parse this character string and extract the data we need. The following is a simple code example for parsing real-time data on traffic congestion and extracting congested section information:
import json # 解析JSON字符串 data = json.loads(result) # 提取拥堵路段信息 congestions = data["roads"] # 打印拥堵路段信息 for congestion in congestions: print(congestion["name"], congestion["status"], congestion["direction"])
In the above code, we first use json.loads
Method parses the returned JSON string into a Python dictionary object. Then, we obtain the congested road section information by accessing the corresponding key name in the dictionary. Finally, we use a loop to print out the name, congestion status, and driving direction of each congested road segment.
Conclusion:
Using Python and Baidu Map API, we can easily obtain real-time data on urban traffic congestion. We only need to register a Baidu Maps developer account, obtain an API key, and use the corresponding Python library to request and parse data. Through these real-time data, we can better plan travel routes, avoid congested sections, and improve travel efficiency. Hope the content of this article is helpful to you!
The above is the detailed content of How to use Python and Baidu Map API to obtain real-time data on urban traffic congestion?. For more information, please follow other related articles on the PHP Chinese website!

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