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

Thanks

EDIT example of the source spreadsheet added

```
<bound method DataFrame.head of 0 1 2 3 4 5 6 7 8 9 \
0
1 some title
2 date 38477
3
4
5 cat1 cat2 cat3
6 a b c d e f
7
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
11
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
16
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
DataFrame'''
# 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
x=x.ix[r,c]
x=x.reindex()
return(x)
```

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