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I have a pandas DataFrame, created this way:

import pandas as pd
wb = pd.io.parsers.ExcelFile('/path/to/data.xlsx')
df = wb.parse(wb.sheet_names[0])

The resulting dataframe has about a dozen columns, all having exactly the same length (about 150K).

For most columns, the following operation is nearly instantaneous

aset = set(df.acolumn)

But for some columns, the same operation, e.g.

aset = set(df.weirdcolumn)

takes > 10 minutes! (Or rather, the operation fails to complete before the 10-minute timeout period expires.) Same number of elements!

Stranger still:

In [106]: set([type(c) for c in df.weirdcolumn])
Out[106]: set([numpy.float64])

In [107]: df.weirdcolumn.value_counts()
Out[107]: []

It appears that the content of the column is all nans

In [118]: all(np.isnan(df.weirdcolumn.values))
Out[118]: True

But this does not explain the slowdown mentioned before, because the following operation takes only a couple of seconds:

In [121]: set([np.nan for _ in range(len(data))])
Out[121]: set([nan])

I have run out of ways to find out the cause of the massive slowdown mentioned above. Suggestions welcome.

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1 Answer 1

up vote 4 down vote accepted

One weird thing about nans is that they don't compare as equal. This means that "different" nan objects will be inserted separately for sets:

>>> float('nan') == float('nan')
False
>>> float('nan') is float('nan')
False
>>> len(set([float('nan') for _ in range(1000)]))
1000

This doesn't happen for your test of np.nan, because it's the same object over and over:

>>> np.nan == np.nan
False
>>> np.nan is np.nan
True
>>> len(set([np.nan for _ in range(1000)]))
1

This is probably your problem; you're making a 150,000 element set where every single element has the exact same hash (hash(float('nan')) == 0). This means that an inserting a new nan into a set that already has n nans takes at least O(n) time, so building a set of N nans takes at least O(N^2) time. 150k^2 is...big.

So yeah, nans suck. You could work around this by doing something like

nan_idx = np.isnan(df.weirdcolumn)
s = set(df.weirdcolumn[~nan_idx])
if np.any(nan_idx):
    s.add(np.nan)
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4  
How peculiar. This would kill your performance. Since each nan would hash to the same value, this is the absolute worst case scenario for collision resolution in the hash table. I wonder if something like this could be exploited in python for nasty purposes ... –  mgilson Feb 13 '13 at 4:17
    
It's a little weird that np.nan doesn't get repeated in the set. According to the glossary index for hashable, in order for an object to be hashable, all that is checked is __eq__ (or __cmp__) and __hash__. –  mgilson Feb 13 '13 at 4:24
    
The docs say: "For container types such as list, tuple, set, frozenset, dict, or collections.deque, the expression x in y is equivalent to any(x is e or x == e for e in y)." Presumably it checks is to shortcut the == test, since for most anything except nan a is b implies a == b, but that seems to be part of the semantics for the case when they're not. –  Dougal Feb 13 '13 at 4:26
    
See also stackoverflow.com/questions/9904699/… (where @MarkDickinson linked to the relevant quote), gossamer-threads.com/lists/python/python/922088, and bugs.python.org/issue11945. –  Dougal Feb 13 '13 at 4:28
1  
Interesting. That line isn't in the 2.7 docs which is what I usually peruse. –  mgilson Feb 13 '13 at 4:29

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