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Hi I'm trying to use pandas to tidy up a DataFrame. It is imported from a spreadsheet and has some empty rows and columns.

I thought I could use

df.apply(numpy.nonzero(),axis=1) and df.apply(numpy.nonzero(),axis=0) to get the indices of the non-zero columns so that I could remove there inverses from the DataFrame.That gives me a list of tuples I'm not clear how to get at.

numpy.nonzero(df) produces an array of all the non-zero values but I'm not sure how to feed that value into an all() function.

My question is what would be the best and quickest way of removing those index rows and columns from a DataFrame that are all empty (or all have a value such as N/A)s


EDIT example of the source spreadsheet added

<bound method DataFrame.head of             0         1         2  3         4         5  6         7         8  9   \
1   some title                                                                        
2         date     38477                                                              
5                   cat1                   cat2                   cat3                
6                      a         b            c         d            e         f      
8            Z  167.9404  151.1389      346.197  434.3589     336.7873  80.52901      
9            X   220.683   56.0029     73.73679  428.8939     483.7445  251.1877      
10           C  433.0189  390.1931     251.6636  418.6703     12.21859   113.093      
12           V  226.0135  418.1141     310.2038  153.9018     425.7491  73.08073      
13           W   295.146  173.2747     2.187459  401.6453     51.47293   175.387      
14           S  306.9325  157.2772     464.1394   216.248     478.3903   173.948      
15           A  19.86611  73.11554      320.078  199.7598     467.8272  234.0331      
17           F   225.511  20.97305     425.8834  190.1625     123.9103  116.3803      
18           R  130.4728  96.08118     428.2007  22.46184     26.34678  359.5625      
19           E  239.1516  439.7733     197.7023  121.6911     195.0169  264.5553      
20           W  227.1557  471.8341     165.3779  151.7552     314.7827  367.0868      

this is the def I'm using at the moment but it feels very clunky

def nulls(x):
    ''' the NULS section to clear all nulls from the 
    # Empty Rows
    nr = [i for i in x.index if all(str(k) in '' for k in x.ix[i])]
    # Non Empty Rows
    r = [i for i in x.index if i not in nr]
    # Empty columns
    nc = [j for j in range(x.shape[1]) if all(str(k) in '' for k in x[j])]
    # Non Empty Columns
    c = [j for j in range(x.shape[1]) if j not in nc]
    # Subset the non-empties
share|improve this question
Your example dataframe is not great. It'd be much more helpful if you posted something that we could run (i.e., a 3 column, 3 row dataframe) and could manipulate. Plus, it would clarify what you are looking for. – Jeff Tratner May 26 '13 at 3:43

2 Answers 2

up vote 4 down vote accepted

dropna(how='all') is what you are looking for (generally), but you need to load in your dataframe in such a way that empty cells are treated as NaN instead of empty string. That said, you have a few options here.

If you are sure that everything you want to drop is either the literal empty string ('', None, np.NaN, or 0) and that you don't want to keep 0, then you can just fill the NaN and convert to boolean and check whether the sum is 0. You can tweak depending on how you want to drop.

indexer = df.fillna(False).astype(bool)
drop_columns = indexer.sum(0) == 0
keep_rows = indexer.sum(1) != 0

new_df = df.drop(df.columns[drop_columns], axis=1)[keep_rows]

However, if you need to check for whitespace, or want to exclude the literal zero, then you should use applymap with a function (mostly based on this StackOverflow answer on dropping None/empty/whitespace columns) and then do the same thing as above.

def is_blank(x):
    return x is None or pd.isnull(x) or bool(str(x).strip())

indexer = df.applymap(is_blank)

Personally though, I suggest you add '' to na_values when you load your dataset.

Brief explanation of fillna() and astype()

fillna() lets you "fill" NA values with some other value. Here, we fill with False (because bool(float('nan')) evaluates to True), but you can fill with any value or with a variety of different methods. astype converts the array from one type to another. So putting astype(bool) means that it converts the entire array to either True or False (which are equivalent to 1 and 0 respectively) and then you can just sum to find the number of True values in a row or column.

share|improve this answer
Thanks @JeffTratner, that works brilliantly. Would you mind explaining what the df.fillna is doing? I understand (I think) the df.fillna(False) but what is the astype(bool) doing? How does it know what to treat as an NA? Thanks – Tahnoon Pasha May 26 '13 at 6:44
@TahnoonPasha updated the question with some explanation. Best thing to do would be to read the pandas docs for more. – Jeff Tratner May 26 '13 at 14:21

Have you tried DataFrame.dropna()? This won't deal with the zeroes but gets rid of NaN columns and rows.

share|improve this answer
thanks @kdamica that will work for the latter, but I actually have a more pressing need to get rid of the zeros. – Tahnoon Pasha May 26 '13 at 2:57
Are the cells you want to remove empty or do they contain the value 0? – kdamica May 26 '13 at 3:07
Hi @kdamica they are empty – Tahnoon Pasha May 26 '13 at 6:17
I think they'll be imported as NaNs, then, so dropna() might do the trick. Have you tried it? – kdamica May 26 '13 at 23:07
Hi @kdamica, sorry for the slow reply. I tried it and it doesnt work. The blanks are imported as '' – Tahnoon Pasha May 27 '13 at 13:52

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