5 common Python pitfalls for data preparation

Joseph Gordon-Levitt
Release: 2024-10-29 10:06:36
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Python is a powerful language for data preparation, but there are some common mistakes or pitfalls folks may encounter. In this blog post, I'll discuss five of the most common issues folks encounter when using Python for data preparation.

5 common Python pitfalls for data preparation

1. Considering missing values (`NaN`) as false.

False, None, and 0 (of any numeric type) all evaluate to False.

This set of objects and values are known as “falsy” and will evaluate to false. NaN or missing values are not falsy and therefore will not evaluate to false. This can cause much confusion and unexpected behavior by many operations.

2. Attempting to compare missing values

It seems simple enough that NaN == NaN will return true. Both values "look" the same.

However, as it's impossible to know if the two missing values are the same, this operation will always return false.

3. Thinking that all() only returns true when all elements are true.

The all() method returns true if all elements of the iterable are true (or if the iterable is empty). 

Don't think of it as “Return true if all the elements of the iterable are true,” but instead “Return true if there are no false elements in the iterable.”

When the iterable is empty, there can be no false elements within it, meaning all([]) evaluates to True.

4. Converting to bool values

Pandas follows the numpy convention of raising an error when you try to convert something to a bool. This happens in an if or when using the Boolean operations, and, or, or not.

It is not clear what the result should be. Should it be True because it is not zero-length? False because there are False values?

It is unclear, so instead, Pandas raises a ValueError

ValueError: The truth value of a Series is ambiguous. 

Use a.empty, a.bool() a.item(),a.any() or a.all().

5. Understanding the results of the isin() operation.

The isin() operation returns a Boolean series showing whether each element in the Series is exactly contained in the passed sequence of values.

 s = pd.Series(['dog', 'cat', 'fish'])
>>> s.isin(['bird'])
0    False
1    False
2    False
dtype: bool
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Note that 'bird' does not exist in the series.

>>> s.isin(['bird', 'cat'])
0    False
1     True
2    False
dtype: bool
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Note 'cat' does exist in the 2nd value of the series.

Learn more about using Python for data preparation

Python is a powerful language, but confusion can arise around missing and boolean values. Keep in mind that missing values are considered false and they cannot be compared. 

When using the all() method, remember that it returns true when there are no false values in the iterable.  If all values are missing, like in the case of an empty array, all() also returns true as missing values are not considered false. 

If you receive a ValueError when attempting to convert to bool values, be sure to take the helpful advice and use one of the suggested methods.

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source:pluralsight.com
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