


How to Create a Text Progress Bar in Your Terminal Using Python?
Dec 02, 2024 pm 05:26 PMText Progress Bar in Terminal with Block Characters
Introduction
Creating a progress bar in the terminal can greatly enhance the user experience by providing a visual representation of a task's progress. However, maintaining the integrity of previous console output while updating the progress bar can be a challenge. This article explores how to create a progress bar in Python while preserving prior text.
Solution: Custom Progress Bar Function
Here's a reusable progress bar function that addresses the problem:
def printProgressBar(iteration, total, prefix='', suffix='', decimals=1, length=100, fill='█', printEnd='\r'): percent = ("{0:." + str(decimals) + "f}").format(100 * (iteration / float(total))) filledLength = int(length * iteration // total) bar = fill * filledLength + '-' * (length - filledLength) print(f'\r{prefix} |{bar}| {percent}% {suffix}', end=printEnd) if iteration == total: print()
Function Parameters:
Parameter | Description |
---|---|
iteration | Current iteration of the loop |
total | Total number of iterations |
prefix | Prefix text before the progress bar |
suffix | Suffix text after the progress bar |
decimals | Number of decimal places for percentage |
length | Width of the progress bar |
fill | Character used to fill the progress bar |
printEnd | End of line character (e.g., 'r') |
Usage:
To use the progress bar, call the function within a loop:
total_items = 100 for item in range(total_items): # Do your processing here... printProgressBar(item + 1, total_items)
Single-Call Version:
For a simplified use case, consider this single-call version of the progress bar:
def progressBar(iterable, prefix='', suffix='', decimals=1, length=100, fill='█', printEnd='\r'): total = len(iterable) def printProgressBar(iteration): percent = ("{0:." + str(decimals) + "f}").format(100 * (iteration / float(total))) filledLength = int(length * iteration // total) bar = fill * filledLength + '-' * (length - filledLength) print(f'\r{prefix} |{bar}| {percent}% {suffix}', end=printEnd) printProgressBar(0) for i, item in enumerate(iterable): yield item printProgressBar(i + 1) print() for item in progressBar(range(100)): # Do your processing here...
This version requires no initial call to set the progress bar at 0% and accepts iterables as input.
Python 2 Compatibility:
For Python 2 compatibility, use the following code instead of Python 3 string formatting:
print('\r%s |%s| %s%% %s' % (prefix, bar, percent, suffix), end=printEnd)
Conclusion:
By leveraging the provided functions, you can effortlessly integrate a text progress bar into your console applications while avoiding the erasure of prior text. The customizable parameters allow for a tailored progress bar appearance that fits your specific requirements.
The above is the detailed content of How to Create a Text Progress Bar in Your Terminal Using Python?. For more information, please follow other related articles on the PHP Chinese website!

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