19

I kept getting ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all(). when trying boolean tests with pandas. Not understanding what it said, I decided to try to figure it out.

However, I am totally confused at this point.

Here I create a dataframe of two variables, with a single data point shared between them (3):

In [75]:

import pandas as pd

df = pd.DataFrame()

df['x'] = [1,2,3]
df['y'] = [3,4,5]

Now I try all(is x less than y), which I translate to "are all the values of x less than y", and I get an answer that doesn't make sense.

In [79]:

if all(df['x'] < df['y']):
    print('True')
else:
    print('False')
True

Next I try any(is x less than y), which I translate to "is any value of x less than y", and I get another answer that doesn't make sense.

In [77]:

if any(df['x'] < df['y']):
    print('True')
else:
    print('False')
False

In short: what does any() and all() actually do?

9
  • 3
    Take a look at just df['x'] < df['y']. It does an elementwise comparison; i.e it is the Series [df['x'][0] < df['y'][0], df['x'][1] < df['y'][1], etc]. Then all(df['x'] < df['y']) is True because all the elements in that Series are True. Jan 6, 2015 at 3:34
  • 1
    I can't reproduce the bug you observe. For me, if any(df['x'] < df['y']): print('True') does emit True. You may be doing something strange in intermediate statements; try print(df['x'],df['y'],df['x']<df['y']) at "the moment of truth" and tell us what you see! Jan 6, 2015 at 3:36
  • 1
    Can you post some example code that produces your original 'The truth value of a Series is ambiguous' error? I think you're getting confused between the builtin any() and all() functions and the a.any(), a.all() methods of Numpy arrays/Python series.
    – Marius
    Jan 6, 2015 at 4:12
  • 1
    By the way a more pythonic way of your if's would be to do something like print any(df['x'] < df['y']).
    – rustil
    Jan 6, 2015 at 14:27
  • 1
    Here the the code that produces the original error: if df['x'] < df['y']: print('True') else: print('False')
    – Anton
    Jan 6, 2015 at 15:39

2 Answers 2

12

Pandas suggests you to use Series methods any() and all(), not Python in-build functions.

I don't quite understand the source of the strange output you have (I get True in both cases in Python 2.7 and Pandas 0.17.0). But try the following, it should work. This uses Series.any() and Series.all() methods.

import pandas as pd

df = pd.DataFrame()

df['x'] = [1,2,3]
df['y'] = [3,4,5]

print (df['x'] < df['y']).all() # more pythonic way of
print (df['x'] < df['y']).any() # doing the same thing

This should print:

True
True
1
  • 1
    AttributeError Traceback (most recent call last) <ipython-input-318-991ef83ffb5f> in <module> 5 6 #print (df['x'] < df['y']).all() # more pythonic way of ----> 7 print (df['x'] < df['y']).any() # doing the same thing AttributeError: 'NoneType' object has no attribute 'any'
    – user6882757
    Dec 23, 2019 at 5:50
0

To compare two pd.DataFrame objects for both content and structure equality you can use:

import pandas as pd

def are_df_equal(df: pd.DataFrame, df2: pd.DataFrame) -> bool:
    return df.equals(df2) and (df.all() == df2.all()).all()

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