I'm confused about the difference between Pandas Series objects when using
reindex_like and related features. For example, consider the following Series objects:
>>> import numpy >>> import pandas >>> series = pandas.Series([1, 2, 3]) >>> x = pandas.Series([True]).reindex_like(series).fillna(True) >>> y = pandas.Series(True, index=series.index) >>> x 0 True 1 True 2 True >>> y 0 True 1 True 2 True
On the surface
y appear to be identical in their contents and indexing. However, they must be different in some way because one of them causes an error when using
numpy.logical_and() and the other does not.
>>> numpy.logical_and(series, y) 0 True 1 True 2 True >>> numpy.logical_and(series, x) Traceback (most recent call last): File "<ipython-input-10-e2050a2015bf>", line 1, in <module> numpy.logical_and(series, x) AttributeError: logical_and
numpy.logical() and complaining about here? I don't see the difference between the two series,
y. However, there must be some subtle difference.
The Pandas documentation says the Series object is a valid argument to "most NumPy functions." Clearly this is true somewhat in this case. Apparently the creation mechanism makes
x unusable to this particular numpy function.
As a side-note, which of the two creation mechanisms,
reindex_like() and the
index argument are more efficient and idiomatic for this scenario? Maybe there is another/better way I haven't considered also.