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

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

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

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):
share|improve this answer
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
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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