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?

`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.`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!`'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.`print any(df['x'] < df['y'])`

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