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I have a large dataframe in pandas that apart from the column used as index is supposed to have only numeric values:

df = pandas.DataFrame({"item": ["a", "b", "c", "d", "e"], "a": [1,2,3,"bad",5], "b":[0.1,0.2,0.3,0.4,0.5]})
df = df.set_index("item")

How can I find the row of the dataframe df that has a non-numeric value in it? In this example it's the fourth row in the dataframe, which has the string "bad" in the a column. How can this row be found programmatically? thanks.

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2 Answers 2

up vote 6 down vote accepted

You could use np.isreal to check the type of each element (applymap applies a function to each element in the DataFrame):

In [11]: df.applymap(np.isreal)
Out[11]:
          a     b
item
a      True  True
b      True  True
c      True  True
d     False  True
e      True  True

If all in the row are True then they are all numeric:

In [12]: df.applymap(np.isreal).all(1)
Out[12]:
item
a        True
b        True
c        True
d       False
e        True
dtype: bool

So to get the subDataFrame of rouges, (Note: the negation, ~, of the above finds the ones which have at least one rogue non-numeric):

In [13]: df[~df.applymap(np.isreal).all(1)]
Out[13]:
        a    b
item
d     bad  0.4

You could also find the location of the first offender you could use argmin:

In [14]: np.argmin(df.applymap(np.isreal).all(1))
Out[14]: 'd'

As @CTZhu points out, it may be slightly faster to check whether it's an instance of either int or float (there is some additional overhead with np.isreal):

df.applymap(lambda x: isinstance(x, (int, float)))
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Great! Only that df.applymap(lambda x: isinstance(x, (int, float))) will be about 18% faster. Using lambda with build in method is sometimes reasonably fast. –  CT Zhu Feb 14 at 6:28
    
@CTZhu Good point. I guess that's not soo suprising (since np.isreal does some other stuff too e.g. dealing with arrays not just single values). –  Andy Hayden Feb 14 at 6:30

Sorry about the confusion, this should be the correct approach. Do you want only to capture 'bad' only, not things like 'good'; Or just any non-numerical values?

In[15]:
np.where(np.any(np.isnan(df.convert_objects(convert_numeric=True)), axis=1))
Out[15]:
(array([3]),)
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This will pick up 'bad', but won't pick up a rogue string number, though, because the conversion will succeed.. –  DSM Feb 14 at 5:26
    
Or get into problems with coded strings representing valid numbers, like 'over_the_chart', representing the maximum allowed value for that variable. Probably not a safe way. I would rather approach the problem from the way to build the dataframe in the real world case. –  CT Zhu Feb 14 at 5:30
    
This depends whether you consider "4" bad or not, my gut feeling would be yes :S –  Andy Hayden Feb 14 at 6:16

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