


How Can I Efficiently Calculate the Arithmetic Mean of a List in Python?
Finding the Arithmetic Mean of a List in Python: Tips and Best Practices
Calculating the average of a list is a fundamental task in data analysis and can be easily accomplished using Python's standard library. Here's a comprehensive guide to finding the arithmetic mean, also known as the average, of a list in Python:
Python 3.8 :
- For optimal numerical stability when dealing with floating-point numbers, use the statistics.fmean function.
Python 3.4 :
- While still providing numerical stability for floats, statistics.mean is a slightly slower option than fmean.
For Older Versions of Python 3 and Python 2:
-
Calculate the mean using the following formulas:
- Python 3: sum(xs) / len(xs)
- Python 2: sum(xs) / float(len(xs)) (convert len to a float to ensure float division)
Example:
Consider the list [15, 18, 2, 36, 12, 78, 5, 6, 9]:
import statistics mean = statistics.mean([15, 18, 2, 36, 12, 78, 5, 6, 9]) print(mean) # 20.11111111111111
By using the appropriate functions and techniques, you can efficiently and accurately find the mean of a list in Python, ensuring the stability and accuracy of your results.
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