I have a pandas Series object containing boolean values. How can I get a series containing the logical NOT of each value?

For example, consider a series containing:


The series I'd like to get would contain:


This seems like it should be reasonably simple, but apparently I've misplaced my mojo =(

  • 1
    It is important that the data does not contain object types for the answers below to work, so use: ~ df.astype('bool') – LearnOPhile Sep 11 '17 at 13:01
  • I've written about all of the logical operators in this post. The post also includes alternatives. – cs95 Jan 25 at 3:07

To invert a boolean Series, use ~s:

In [7]: s = pd.Series([True, True, False, True])

In [8]: ~s
0    False
1    False
2     True
3    False
dtype: bool

Using Python2.7, NumPy 1.8.0, Pandas 0.13.1:

In [119]: s = pd.Series([True, True, False, True]*10000)

In [10]:  %timeit np.invert(s)
10000 loops, best of 3: 91.8 µs per loop

In [11]: %timeit ~s
10000 loops, best of 3: 73.5 µs per loop

In [12]: %timeit (-s)
10000 loops, best of 3: 73.5 µs per loop

As of Pandas 0.13.0, Series are no longer subclasses of numpy.ndarray; they are now subclasses of pd.NDFrame. This might have something to do with why np.invert(s) is no longer as fast as ~s or -s.

Caveat: timeit results may vary depending on many factors including hardware, compiler, OS, Python, NumPy and Pandas versions.

  • Duly noted. Other than being much slower, what's the difference between the tilde and - ? – blz Apr 14 '13 at 12:38
  • Wierd, I actually tested the tilde as it was mentioned in the documentation, but it didn't perform the same as np.invert :S – root Apr 14 '13 at 13:11
  • @blz: At least on my Ubuntu machine, running NumPy 1.6.2, the performance of np.invert(s), ~s and -s are all the same. – unutbu Apr 14 '13 at 13:47
  • @root: I'm not sure why there is such a great discrepancy in our timeit results, but it certainly can happen. What OS and version of NumPy are you using? – unutbu Apr 14 '13 at 13:49
  • Also on Ubuntu, but using NumPy 1.7.0...(np.bitwise_not(s) performs the same as np.inverse). – root Apr 14 '13 at 13:50

@unutbu's answer is spot on, just wanted to add a warning that your mask needs to be dtype bool, not 'object'. Ie your mask can't have ever had any nan's. See here - even if your mask is nan-free now, it will remain 'object' type.

The inverse of an 'object' series won't throw an error, instead you'll get a garbage mask of ints that won't work as you expect.

In[1]: df = pd.DataFrame({'A':[True, False, np.nan], 'B':[True, False, True]})
In[2]: df.dropna(inplace=True)
In[3]: df['A']
0    True
1   False
Name: A, dtype object
In[4]: ~df['A']
0   -2
0   -1
Name: A, dtype object

After speaking with colleagues about this one I have an explanation: It looks like pandas is reverting to the bitwise operator:

In [1]: ~True
Out[1]: -2

I just give it a shot:

In [9]: s = Series([True, True, True, False])

In [10]: s
0     True
1     True
2     True
3    False

In [11]: -s
0    False
1    False
2    False
3     True
  • I literally tried every operator other than -! I'll keep this in mind for next time. – blz Apr 14 '13 at 11:15

You can also use numpy.invert:

In [1]: import numpy as np

In [2]: import pandas as pd

In [3]: s = pd.Series([True, True, False, True])

In [4]: np.invert(s)
0    False
1    False
2     True
3    False

EDIT: The difference in performance appears on Ubuntu 12.04, Python 2.7, NumPy 1.7.0 - doesn't seem to exist using NumPy 1.6.2 though:

In [5]: %timeit (-s)
10000 loops, best of 3: 26.8 us per loop

In [6]: %timeit np.invert(s)
100000 loops, best of 3: 7.85 us per loop

In [7]: %timeit ~s
10000 loops, best of 3: 27.3 us per loop
  • Very cool! Thanks for the benchmarks! – blz Apr 14 '13 at 11:00
  • it may not be correct on a different platform. Win 7, python 3.6.3 numpy 1.13.3, pandas 0.20.3, (-s) will be the fastest, (~s) is the second, and np.invert(s) is the slowest one – gaozhidf Apr 8 '18 at 1:25

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