Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Column y below should be ['Reg', 'Reg', 'Swp', 'Swp']

In [1]: pd.read_csv('/tmp/test3.csv')  
Out[1]:  
x,y  
 ^@^@^@,Reg  
 ^@^@^@,Reg  
I,Swp  
I,Swp  

In [2]: ! cat /tmp/test3.csv  
     x    y  
0  
1  NaN  NaN  
2    I  Swp  
3    I  Swp    

In [3]: f = open('/tmp/test3.csv', 'rb'); print(repr(f.read()))  
'x,y\n \x00\x00\x00,Reg\n \x00\x00\x00,Reg\nI,Swp\nI,Swp\n'
share|improve this question
    
Please show f = open('/tmp/test3.csv', 'rb'); print(repr(f.read())) – unutbu Jan 23 '13 at 20:36
    
Updated question to show data – user1827356 Jan 23 '13 at 20:42
    
posted as issue on github. – Andy Hayden Jan 23 '13 at 21:46
up vote 5 down vote accepted

Yes, I could reproduce the problem, but don't know how to fix it with pd.read_csv. Here is a workaround:

In [46]: import numpy as np
In [47]: arr = np.genfromtxt('test3.csv', delimiter = ',', 
                             dtype = None, names = True)

In [48]: df = pd.DataFrame(arr)

In [49]: df
Out[49]: 
   x    y
0     Reg
1     Reg
2  I  Swp
3  I  Swp

Note that with names = True the first valid line of the csv is interpreted as column names (and therefore does not affect the dtype of the values on the subsequent lines.) Thus, if the csv file contains numerical data such as

In [22]: with open('/tmp/test.csv','r') as f:
   ....:     print(repr(f.read()))
   ....:     
'x,y,z\n \x00\x00\x00,Reg,1\n \x00\x00\x00,Reg,2\nI,Swp,3\nI,Swp,4\n'

Then genfromtxt will assign a numerical dtype to the third column (<i4 in this case).

In [19]: arr = np.genfromtxt('/tmp/test.csv', delimiter = ',', dtype = None, names = True)

In [20]: arr
Out[20]: 
array([('', 'Reg', 1), ('', 'Reg', 2), ('I', 'Swp', 3), ('I', 'Swp', 4)], 
      dtype=[('x', '|S3'), ('y', '|S3'), ('z', '<i4')])

However, if the numerical data is intermingled with bytes such as '\x00' then genfromtxt will be unable to recognize this column as numerical and will therefore resort to assigning a string dtype. Nevertheless, you can force the dtype of the columns by manually assigning the dtype parameter. For example,

In [11]: arr = np.genfromtxt('/tmp/test.csv', delimiter = ',', dtype = [('x', '|i4'), ('y', '|S3')], names = True)

sets the first column x to have dtype |i4 (4-byte integers) and the second column y to have dtype |S3 (3-byte string). See this doc page for more information on available dtypes.

share|improve this answer
    
Works for my requriements. Thx – user1827356 Jan 23 '13 at 21:16
    
@user1827356: Yes, my mistake. By neglecting to provide names = True, genfromtext was reading the first line of the csv as data, not as column names. Since the first line contained strings, the dtype was being set to strings, despite the subsequent lines containing numerical data. I've updated my answer to show how names = True and/or dtype can be used to set the columns to appropriate types. – unutbu Jan 24 '13 at 22:43

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.