Using Pandas Multiindex with quantities fails with 'Categorical levels must be unique'

Using pandas MultiIndex with indices having quantities fails in some cases. Let me show you an example:

import quantities as pq
import pandas as pd

i = np.arange(10) * pq.J
j = np.array([1 for _ in xrange(10)]) * pq.K

pd.MultiIndex.from_tuples(zip(i, j), names=['Energy', 'Temperature'])


This fails with the following traceback

---------------------------------------------------------------------------
ValueError                                Traceback (most recent call last)
<ipython-input-86-c2d09517b80e> in <module>()
5 j = np.array([1 for _ in xrange(10)]) * pq.K
6
----> 7 pd.MultiIndex.from_tuples(zip(i, j), names=['Energy', 'Temperature'])

C:\Python27\lib\site-packages\pandas\core\index.pyc in from_tuples(cls, tuples, sortorder, names)
1685
1686         return MultiIndex.from_arrays(arrays, sortorder=sortorder,
-> 1687                                       names=names)
1688
1689     @property

C:\Python27\lib\site-packages\pandas\core\index.pyc in from_arrays(cls, arrays, sortorder, names)
1646             return Index(arrays[0], name=name)
1647
-> 1648         cats = [Categorical.from_array(arr) for arr in arrays]
1649         levels = [c.levels for c in cats]
1650         labels = [c.labels for c in cats]

C:\Python27\lib\site-packages\pandas\core\categorical.pyc in from_array(cls, data)
59
60         return Categorical(labels, levels,
---> 61                            name=getattr(data, 'name', None))
62
63     _levels = None

C:\Python27\lib\site-packages\pandas\core\categorical.pyc in __init__(self, labels, levels, name)
45     def __init__(self, labels, levels, name=None):
46         self.labels = labels
---> 47         self.levels = levels
48         self.name = name
49

C:\Python27\lib\site-packages\pandas\core\categorical.pyc in _set_levels(self, levels)
68         levels = _ensure_index(levels)
69         if not levels.is_unique:
---> 70             raise ValueError('Categorical levels must be unique')
71         self._levels = levels
72

ValueError: Categorical levels must be unique


If I remove the units, it works just fine.

i = np.arange(10)
j = np.array([1 for _ in xrange(10)])

pd.MultiIndex.from_tuples(zip(i, j), names=['Energy', 'Temperature'])


If I keep the units, but use a unique item for j, it works as well.

i = np.arange(10) * pq.J
j = np.arange(10) * pq.K

pd.MultiIndex.from_tuples(zip(i, j), names=['Energy', 'Temperature'])


This is of course no option since the indices come from a measurement. I'd really like to keep the units, but since I'm not familiar with pandas internals I don't know how to fix this.

Versions

I'm using pandas version 0.10.1 and quantities 0.10.1 in python 2.7.

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I'm not able to reproduce the exception on version 0.10.0. Which release was this seen on? –  Garrett Feb 19 '13 at 3:44
@crewbum Updated with version info. –  P3trus Feb 19 '13 at 12:55

I was able to reproduce this error, but it is intermittent on Linux, failing every few invocations of pd.MultiIndex.from_tuples(...).

I believe the error is due to quantity objects violating the Python equality-hashing invariant of a==b implies hash(a)==hash(b) (sources: http://bugs.python.org/issue13707#msg150596, https://groups.google.com/forum/#!msg/sympy/pJ2jg2csKgU/0nn21xqZEmwJ).

An example of bad hashing behavior.

In [5]: (1 * pq.K) == (1 * pq.K)
Out[5]: True

In [6]: hash(1 * pq.K) == hash(1 * pq.K)
Out[6]: False


Based on this behavior, I believe this is a quantities issue, which leads to an illegal internal state in pandas.

IMO, the cleanest solution would be for quantity objects to return a consistent hash based on the current value, much like this (rejected) pull request to add a __hash__() function on quantity objects: https://github.com/python-quantities/python-quantities/pull/29.
Either that, or throw an error on an attempt to hash, if it wants to behave like a mutable object.

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But how does it work when the quantity is ommited? Does pandas use the hash function? I thought numpy arrays raise a TypeError: unhashable type: 'numpy.ndarray' when one tries to hash them. –  P3trus Feb 22 '13 at 7:47
Yes, pandas uses hash. When quantity is omitted, pandas sees an array of int objects, which adhere to the equality-hash rule mentioned. It seems that even though quantity is a subclass of ndarray it does not raise a TypeError when hashed. –  Garrett Feb 22 '13 at 15:57
Would converting the quantity to a string, i.e., zip(map(str, i), map(str,j)), be an acceptable workaround? –  Garrett Feb 23 '13 at 3:49