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I am trying to use np.genfromtxt to load a data that looks something like this into a matrix:

0.79  0.10  0.91   -0.17 0.10  0.33  -0.90 0.10  -0.19 -0.00 0.10  -0.99 -0.06 0.10  -0.42 -0.66 0.10  -0.79 0.21  0.10  0.93  0.79  0.10  0.91  -0.72 0.10  0.25  0.64  0.10  -0.27 -0.36 0.10  -0.66 -0.52 0.10  0.92  -0.39 0.10  0.43  0.63  0.10  0.25  -0.58 0.10  -0.03 0.59  0.10  0.02  -0.69 0.10  0.79  0.30  0.10  0.09  0.70  0.10  0.67  -0.04 0.10  -0.65 -0.07 0.10  0.70  -0.06 0.10  0.08  7  566 112 32 163 615 424 543 424 422 490 47 499 595 94 515 163 535 
 0.79  0.10  0.91   -0.17 0.10  0.33  -0.90 0.10  -0.19 -0.00 0.10  -0.99 -0.06 0.10  -0.42 -0.66 0.10  -0.79 0.21  0.10  0.93  0.79  0.10  0.91  -0.72 0.10  0.25  0.64  0.10  -0.27 -0.36 0.10  -0.66 -0.52 0.10  0.92  -0.39 0.10  0.43  0.63  0.10  0.25  -0.58 0.10  -0.03 0.59  0.10  0.02  -0.69 0.10  0.79  0.30  0.10  0.09  0.70  0.10  0.67  -0.04 0.10  -0.65 -0.07 0.10  0.70  -0.06 0.10  0.08  263 112 32 30 163 366 543 457 424 422 556 55 355 485 112 515 163 509 112 535 
 0.79  0.10  0.91   -0.17 0.10  0.33  -0.90 0.10  -0.19 -0.00 0.10  -0.99 -0.06 0.10  -0.42 -0.66 0.10  -0.79 0.21  0.10  0.93  0.79  0.10  0.91  -0.72 0.10  0.25  0.64  0.10  -0.27 -0.36 0.10  -0.66 -0.52 0.10  0.92  -0.39 0.10  0.43  0.63  0.10  0.25  -0.58 0.10  -0.03 0.59  0.10  0.02  -0.69 0.10  0.79  0.30  0.10  0.09  0.70  0.10  0.67  -0.04 0.10  -0.65 -0.07 0.10  0.70  -0.06 0.10  0.08  311 112 32 543 457 77 639 355 412 422 509 112 535 163 77 125 30 412 422 556 55 355 485 112 515 

Suppose I want to import data into a matrix of size (4, 5). If not all rows have 5 columns, when it imports the matrix it should replace those columns without 5 rows with "". For example, if the data were simpler, it would look like this:

1,2,3,4,5
6,7,8,9,10
11,12,13,14,15
16,"","","",""

Thus, I want the number of columns to be imported to match that of the max row column count, and if a row doesn't have that many columns, it will fill it with "". I am reading from a file called "data.txt".

This is what I have tried so far:

trainData = np.genfromtxt('data.txt', usecols = range(0, 5), invalid_raise=False, missing_values = "", filling_values="")

However, it gives errors saying:

Line #4 (got 1 columns instead of 5)

How can I solve this?

Thanks!

  • You need to fill in the extra delimiters, '16, , , ,'. genfromtxt cannot do that for you. – hpaulj Sep 29 '17 at 4:55
  • How do I do that then? Can I parse the file manually and add them in somehow to generate the same matrix? – hockeybro Sep 29 '17 at 4:56
  • With standard file read and edit methods.; genfromtxt accepts input from anything that can feed it lines. – hpaulj Sep 29 '17 at 4:58
  • What do you mean by standard file read and edit methods. I don't understand, should I read the file line by line and then when doing that fill in the "", and then pass list of strings that to genfromtxt? – hockeybro Sep 29 '17 at 5:00
  • Please help, I am unable to figure this out still. – hockeybro Sep 29 '17 at 5:39
1

Pandas has more robust readers and you can use the DataFrame methods to handle the missing values.

You'll have to figure out how many columns to use first:

columns = max(len(l.split()) for l in open('data.txt'))

To read the file:

import pandas
df = pandas.read_table('data.txt', 
                       delim_whitespace=True, 
                       header=None, 
                       usecols=range(columns), 
                       engine='python')

To convert to a numpy array:

import numpy
a = numpy.array(df)

This will fill in NaNs in the blank positions. You can use .fillna() to get other values for blanks.

filled = numpy.array(df.fillna(999))
| improve this answer | |
  • Unfortunately, this doesn't work. I tried df = pandas.read_csv(train_file, delim_whitespace=True, header=None) and I get an error saying Error tokenizing data. C error: Expected 81 fields in line 4, saw 91. I don't get why it is a struggle to do this in python, in Julia I can just do readdlm – hockeybro Sep 29 '17 at 15:26
  • I tested on the data you posted. Perhaps post your actual data file and I can check how to fix it. – chthonicdaemon Sep 29 '17 at 15:30
  • I think the problem is in the last part, which is integers. Is there some way to manually parse this and create a matrix of both floats and integers, where the integer part (which seems to be the part where data is missing) is filled with "" if it doesn't exist? – hockeybro Sep 29 '17 at 16:20
  • Using the python engine works fine as long as you know how many columns to use. I've edited the answer. – chthonicdaemon Sep 29 '17 at 16:34
  • Your edit doesn't work, because the shape of the data frame is (1719, 84), instead of (11800×145). It seems like it has omitted columns that do not have length of 84. However, the value of columns is correct. Any ideas? – hockeybro Sep 29 '17 at 20:25
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You need to modify the filling_values argument to np.nan (which is considered of type float so you won't have the string conversion issue) and specify the delimiter to be comma since by default genfromtxt expects only white space as delimiters:

trainData = np.genfromtxt('data.txt', usecols = range(0, 5), invalid_raise=False, missing_values = "", filling_values=np.nan, delimiter=',')
| improve this answer | |
  • This doesn't work, gives the same bug as before: Line #1 (got 130 columns instead of 146) and so on. – hockeybro Sep 29 '17 at 21:48
  • it works for the example you provided. How does your data look like? Actually using just np.genfromtxt('data.txt', delimiter=',') works for me. What versions of numpy/python you are using? – Gerges Sep 29 '17 at 22:00
  • I am using python 3. Are you sure it works on the data I posted in the top of my question? Not the one with 5 columns, but the one with 3 rows. Doesn't work for me. And this command seems to add in some random data with 'nan' in the middle of the data columns. – hockeybro Sep 29 '17 at 22:41
  • Sorry my bad, I misunderstood your question. Try @chthonicdaemon answer again with df = pandas.read_csv(train_file, delim_whitespace=True, header=None, usecols=range(91)) and it should work, since pandas fills missing values with nan automatically. Its important to use the argument usecols=range(91), so you must know # of cols. Otherwise try this answer – Gerges Sep 29 '17 at 22:56
  • Are you sure it should be usecols=range(91)? Because that gives an error: ValueError: Usecols do not match names. – hockeybro Sep 29 '17 at 23:08
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I managed to figure out a solution.

df = pandas.DataFrame([line.strip().split() for line in open('data.txt', 'r')])
data = np.array(df)
| improve this answer | |
  • This will give you an array of strings. If that't not what you want you can use data = np.array(df.astype('float64')). – chthonicdaemon Sep 30 '17 at 3:51
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With the copy-n-paste of the 3 big lines, this pandas reader works:

In [149]: pd.read_csv(BytesIO(txt), delim_whitespace=True,header=None,error_bad_
     ...: lines=False,names=list(range(91)))
Out[149]: 
     0    1     2     3    4     5    6    7     8    9   ...     81   82  \
0  0.79  0.1  0.91 -0.17  0.1  0.33 -0.9  0.1 -0.19 -0.0  ...    515  163   
1  0.79  0.1  0.91 -0.17  0.1  0.33 -0.9  0.1 -0.19 -0.0  ...    515  163   
2  0.79  0.1  0.91 -0.17  0.1  0.33 -0.9  0.1 -0.19 -0.0  ...    125   30   

    83     84     85    86     87     88     89     90  
0  535    NaN    NaN   NaN    NaN    NaN    NaN    NaN  
1  509  112.0  535.0   NaN    NaN    NaN    NaN    NaN  
2  412  422.0  556.0  55.0  355.0  485.0  112.0  515.0  

_.values to get the array.

The key is specifying a big enough names list. Pandas can fill incomplete lines, while genfromtxt requires explicit delimiters.

| improve this answer | |

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