# Eliminating rows with a specific value in a column using Python

How could I delete the rows which have '0' as a value on 5th column? Or even better, Can we choose the range (ie. remove the rows which have values between -50 and 30 on 5th column)?

data looks like this:

`````` 0  4028.44  4544434.50    -6.76  -117.00  0.0002   0.12
0  4028.50  3455014.50    -5.86  0        0.0003   0.39
0  7028.56  4523434.50    -4.95  -137.00  0.0005   0.25
0  8828.62  4543414.50    -3.05  0        0.0021   0.61
0  4028.44  4544434.50    -6.76  -107.00  0.0002   0.12
0  4028.50  3455014.50    -5.86  -11.00   0.0003   0.39
0  7028.56  4523434.50    -4.95  -127.00  0.0005   0.25
0  8828.62  4543414.50    -3.05  0        0.0021   0.61
``````
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`operator.itemgetter(4)`... then compare it. –  JBernardo Aug 9 '11 at 1:15
@Chad: Did you get this working yet? –  Johnsyweb Aug 11 '11 at 22:41

## 3 Answers

``````goodrows = [row for row in data if row.split()[4] != '0']
``````

or

``````goodrows = [row for row in data if not (-50 <= float(row.split()[4]) <= 30)]
``````

Edit:

If your data is actually in a NumPy array, which your comment seems to indicate even if your post didn't:

``````goodrows = [row for row in data if row[4] != 0]
``````

or

``````goodrows = [row for row in data if not (-50 <= row[4] <= 30)]
``````

should work. There is definitely a NumPy internal way to do this though.

-
I've just tested this to see if they are identical: they're not. `int(row.split()[4])` `raise`s when it encounters `-117.00`. That may explain the -1... –  Johnsyweb Aug 9 '11 at 1:27
@Johnsyweb absolutely right, good catch. +1 to your answer. Note: I was not one of the downvoters. –  agf Aug 9 '11 at 1:32
I get 'AttributeError: 'numpy.ndarray' object has no attribute 'split'' error with this one too. –  Chad Aug 9 '11 at 15:33
Ok, if it's already in an array, not in a list of strings in a file, just do `row[4]`. See my edit. Next time, make sure to say in your question if the data is in a numPy array. We all assumed it was in a file in the format you posted. –  agf Aug 9 '11 at 15:44

you can use numpy to do this quickly:

``````data="""
0  4028.44  4544434.50    -6.76  -117.00  0.0002   0.12
0  4028.50  3455014.50    -5.86  0        0.0003   0.39
0  7028.56  4523434.50    -4.95  -137.00  0.0005   0.25
0  8828.62  4543414.50    -3.05  0        0.0021   0.61
0  4028.44  4544434.50    -6.76  -107.00  0.0002   0.12
0  4028.50  3455014.50    -5.86  -11.00   0.0003   0.39
0  7028.56  4523434.50    -4.95  -127.00  0.0005   0.25
0  8828.62  4543414.50    -3.05  0        0.0021   0.61
"""
from StringIO import StringIO
import numpy as np
d = np.loadtxt(StringIO(data)) # load the text in to a 2d numpy array

print d[d[:,4]!=0]  # choose column 5 != 0
print d[(d[:,4]>=50)|(d[:,4]<=-30)] # choose column 5 >=50 or <=-30
``````
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I don't know if numpy is the right tool as it's not on std library... A list comprehension seems better –  JBernardo Aug 9 '11 at 1:33
I got this error: File "<stdin>", line 1, in <module> File "/Library/Frameworks/Python.framework/Versions/7.1/lib/python2.7/site-packages/n‌​umpy/lib/npyio.py", line 796, in loadtxt items = [conv(val) for (conv, val) in zip(converters, vals)] ValueError: could not convert string to float: [[ –  Chad Aug 9 '11 at 15:34
the program above can only convert numbers split by space. From the error message, it seems that you are trying some other data format. –  HYRY Aug 9 '11 at 21:33

Assuming your data is in a plain text file like this:

``````\$ cat data.txt
0  4028.44  4544434.50    -6.76  -117.00  0.0002   0.12
0  4028.50  3455014.50    -5.86  0        0.0003   0.39
0  7028.56  4523434.50    -4.95  -137.00  0.0005   0.25
0  8828.62  4543414.50    -3.05  0        0.0021   0.61
0  4028.44  4544434.50    -6.76  -107.00  0.0002   0.12
0  4028.50  3455014.50    -5.86  -11.00   0.0003   0.39
0  7028.56  4523434.50    -4.95  -127.00  0.0005   0.25
0  8828.62  4543414.50    -3.05  0        0.0021   0.61
``````

And you are not using any external libraries. The following will read the data into a `list` of `string`s, omiting the undesirable lines. You can feed these lines into any other function you choose. I call `print` merely to demonstrate. N.B: The fifth column has index '4', since `list` indices are zero-based.

``````\$ cat data.py
#!/usr/bin/env python

print "1. Delete the rows which have '0' as a value on 5th column:"

def zero_in_fifth(row):
return row.split()[4] == '0'

required_rows = [row for row in open('./data.txt') if not zero_in_fifth(row)]
print ''.join(required_rows)

print '2. Choose the range (i.e. remove the rows which have values between -50 and 30 on 5th column):'

def should_ignore(row):
return -50 <= float(row.split()[4]) <= 30

required_rows = [row for row in open('./data.txt') if not should_ignore(row)]
print ''.join(required_rows)
``````

When you run this you will get:

``````\$ python data.py
1. Delete the rows which have '0' as a value on 5th column:
0  4028.44  4544434.50    -6.76  -117.00  0.0002   0.12
0  7028.56  4523434.50    -4.95  -137.00  0.0005   0.25
0  4028.44  4544434.50    -6.76  -107.00  0.0002   0.12
0  4028.50  3455014.50    -5.86  -11.00   0.0003   0.39
0  7028.56  4523434.50    -4.95  -127.00  0.0005   0.25

2. Choose the range (i.e. remove the rows which have values between -50 and 30 on 5th column):
0  4028.44  4544434.50    -6.76  -117.00  0.0002   0.12
0  7028.56  4523434.50    -4.95  -137.00  0.0005   0.25
0  4028.44  4544434.50    -6.76  -107.00  0.0002   0.12
0  7028.56  4523434.50    -4.95  -127.00  0.0005   0.25
``````
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Don't you think `lambda`s are overkill for this? –  agf Aug 9 '11 at 0:51
What's the point of naming a lamda function? That's just wrong. Just use the `def` keyword. –  JBernardo Aug 9 '11 at 1:18
As said above, that's not the place to use `lambda`s. Wrong in many levels. Try reading that... –  user780363 Aug 9 '11 at 1:29
+1 for the fix and to equate downvoters. BTW i didn't downvoted... –  JBernardo Aug 9 '11 at 1:40
@Johnsyweb: I loaded the data from a text file via pylab.loadtxt and try your code but I got the same error with the same line. what am I missing here? –  Chad Aug 9 '11 at 15:29