


How Can I Efficiently Convert JSON to CSV Using Python's Pandas Library?
Dec 10, 2024 pm 07:39 PMConverting JSON to CSV in Python
Converting JSON data to CSV in Python can be achieved using various approaches. However, the Pandas library offers an incredibly straightforward and efficient solution.
Using Pandas
With Pandas, the conversion process requires only two concise commands:
- df = pd.read_json(): This command reads the JSON data into a Pandas DataFrame, which is a tabular data structure.
- df.to_csv(): This command converts the DataFrame into a CSV file. The CSV file can be either returned as a string or directly written to a file. For additional options and settings, refer to the Pandas documentation for to_csv.
Example
Consider a JSON file with the following data:
[ { "pk": 22, "model": "auth.permission", "fields": { "codename": "add_logentry", "name": "Can add log entry", "content_type": 8 } }, { "pk": 23, "model": "auth.permission", "fields": { ... } }, ... ]
To convert this JSON data to a CSV file, you can use the following code:
import pandas as pd # Read the JSON file into a DataFrame df = pd.read_json('data.json') # Convert the DataFrame to a CSV file df.to_csv('data.csv')
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