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I have a large .txt with data in bad formats. I would like to remove some rows and convert rest of data to float numbers. I would like to remove rows with 'X' or 'XX', The rest I should convert to float, number like 4;00.1 should be converted to 4.001 The file looks like this sample:

0,1,10/09/2012,3:01,4;09.1,5,6,7,8,9,10,11
1,-0.581586,11/09/2012,-1:93,0;20.3,739705,,0.892921,5,,6,7
2,XX,10/09/2012,3:04,4;76.0,0.183095,-0.057214,-0.504856,NaN,0.183095,12
3,-0.256051,10/09/2012,9:65,1;54.9,483293,0.504967,0.074442,-1.716287,7,0.504967,0.504967
4,-0.728092,11/09/2012,0:78,1;53.4,232247,4.556,0.328062,1.382914,NaN,4.556,4
5,4,11/09/2012,NaN,NaN,6.0008,NaN,NaN,NaN,6.000800,6.000000,6.000800
6,X,11/09/2012,X,X,5,X,8,2,1,17.000000,33.000000
7,,11/09/2012,,,,,,6.000000,5.000000,2.000000,2.000000
8,4,11/09/2012,7:98,3;04.5,5,6,3,7.000000,3.000000,3.000000,2
9,6,11/09/2012,2:21,4;67.2,5,2,2,7,3,8.000000,4.000000

I read it to DataFrame and choose rows

from pandas import *
from csv import *
fileName = '~/data.txt'
colName = ['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h', 'i', 'j', 'k', 'l']
df = DataFrame(read_csv(fileName, names=colName))
print df[df['b'].isin(['X','XX',None,'NaN'])].to_string()

An output from last last line gives me only:

>>> print df[df['b'].isin(['X','XX',None,'NaN'])].to_string()
    b           c     d       e         f          g         h   i         j   k   l
a                                                                                   
2  XX  10/09/2012  3:04  4;76.0  0.183095  -0.057214 -0.504856 NaN  0.183095  12 NaN
6   X  11/09/2012     X       X  5.000000          X  8.000000   2  1.000000  17  33

Does not pick up row 7, and I would like to go through all df not only one column (original file is very large).

At the moment for conversion I use as below, but need remove unwanted rows first to apply it to all df.

convert1 = lambda x : x.replace('.', '')
convert2 = lambda x : float(x.replace(';', '.'))
newNumber = convert2(convert1(df['e'][0])) 

After choosing rows I would like to remove them from df, I try df.pop() but it works only for column not for rows. I try to name rows but don't luck. In this particular .txt I should finish with a new df from rows [0,3,8,9] with column 'c' as a date format, 'd' as a time format and the rest as the float. I try to figure it out for quite a while now, but do not know where to move, is it possible in pandas (probably should be) or do I need to change to ndarray or anything else? Thanks for your advise

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As I am a new user, I would like to know what is wrong with this question that it is down voted? –  tomasz74 Sep 23 '12 at 18:01
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1 Answer

up vote 6 down vote accepted

The problem with your original filter is it checks for 'NaN' rather than numpy.nan, which is what empty strings are parsed as by default. If you want to filter all the columns so you only get rows where no element is 'X' or 'XX', do something like this:

In [45]: names = ['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h', 'i', 'j', 'k', 'l']

In [46]: df = pd.read_csv(StringIO(data), header=None, names=names)

In [47]: mask = df.applymap(lambda x: x in ['X', 'XX', None, np.nan])

In [48]: df[-mask.any(axis=1)]
Out[48]: 
<class 'pandas.core.frame.DataFrame'>
Int64Index: 5 entries, 0 to 9
Data columns:
a    5  non-null values
b    5  non-null values
c    5  non-null values
d    5  non-null values
e    5  non-null values
f    5  non-null values
g    5  non-null values
h    5  non-null values
i    5  non-null values
j    4  non-null values
k    5  non-null values
l    5  non-null values
dtypes: float64(6), int64(1), object(5)
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Great. Thanks a lot –  tomasz74 Sep 23 '12 at 1:43
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