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.

`f = open('/tmp/test3.csv', 'rb'); print(repr(f.read()))`

– unutbu Jan 23 '13 at 20:36