Table of Contents
How do I handle CSV file operations in Python?
Reading a CSV File
Writing a CSV File
Example: Reading and Writing a CSV File
Using Pandas for CSV Handling
Common CSV File Endings
Working with CSV Data
Alternatives to CSV
Home Backend Development Python Tutorial How to Efficiently Read and Write CSV Files in Python?

How to Efficiently Read and Write CSV Files in Python?

Dec 24, 2024 pm 07:00 PM

How to Efficiently Read and Write CSV Files in Python?

How do I handle CSV file operations in Python?

CSV (Comma Separated Values) files are a common method for storing tabular data in a text file. Python has a standard library that supports both reading and writing CSV files.

Reading a CSV File

To read a CSV file into a list of tuples, you can use the csv module as follows:

import csv

with open('myfile.csv', 'r') as f:
    reader = csv.reader(f)
    data = [row for row in reader]
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Writing a CSV File

To write a list of tuples to a CSV file, you can use the csv module as follows:

import csv

with open('myfile.csv', 'w') as f:
    writer = csv.writer(f)
    writer.writerows(data)
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Example: Reading and Writing a CSV File

Here is an example that shows how to read and write a CSV file:

import csv

# Define the CSV data
data = [
    (1, 'A towel', 1.0),
    (42, 'it says', 2.0),
    (1337, 'is about the most', -1),
    (0, 'massively useful thing', 123),
    (-2, 'an interstellar hitchhiker can have.', 3)
]

# Write the data to a CSV file
with open('myfile.csv', 'w') as f:
    writer = csv.writer(f)
    writer.writerows(data)

# Read the data from the CSV file
with open('myfile.csv', 'r') as f:
    reader = csv.reader(f)
    data_read = [row for row in reader]

# Print the data
print(data_read)
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Using Pandas for CSV Handling

Pandas is a popular Python library for data analysis that provides a convenient way to handle CSV files. You can use Pandas to read a CSV file into a DataFrame, which you can then manipulate and save as a CSV file.

import pandas as pd

# Read the CSV file into a DataFrame
df = pd.read_csv('myfile.csv', index_col=0)

# Make some changes to the DataFrame
df['Amount'] *= 2

# Write the DataFrame to a new CSV file
df.to_csv('new_myfile.csv')
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Common CSV File Endings

The most common file ending for CSV files is .csv. Other less common endings include .txt and .dat.

Working with CSV Data

Once you have read a CSV file into a list of tuples, a list of dicts, or a Pandas DataFrame, you can work with the data using standard Python methods. For example, you can loop over the data, access individual values, or perform calculations on the data.

Alternatives to CSV

In addition to CSV, there are other data formats that you can use in Python. Some common alternatives include:

  • JSON: A popular format for storing data in a human-readable format.
  • YAML: A format that is similar to JSON but is more verbose and human-readable.
  • Pickle: A Python-specific format that can serialize any Python object.
  • MessagePack: A binary format that is more compact than JSON or YAML.

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