I am trying to read in data from a text file using numpy.loadtxt with the converters argument. I have a mixture of columns of ints and strings. The code is:

```
a,b,c,d,e = np.loadtxt(infile, delimiter = ',', usecols=(0,2,5,8,9), skiprows = 1,
unpack = True, converters = dict(zip((0,2,5,8,9), (int,float,float,int,int))))
```

The data are read in correctly and unpacked correctly, but all the variables (a,b,c,d, and e) end up as floats. Am I making a mistake in the converters syntax?

**Edit trying answer**
I tried using dtype = (int,float,float,int,int) as suggested by @joris as:

```
a,b,c,d,e = np.loadtxt(infile,delimiter = ',', usecols=(0,2,5,8,9), skiprows = 1, unpack = True, dtype = (int,float,float,int,int))
```

but I get the following error:

```
41 skiprows = 1,
42 unpack = True,
---> 43 dtype = (int,float,float,int,int))
44
45
/Library/Frameworks/Python.framework/Versions/2.7/lib/python2.7/site-packages/numpy/lib/npyio.pyc in loadtxt(fname, dtype, comments, delimiter, converters, skiprows, usecols, unpack)
665 try:
666 # Make sure we're dealing with a proper dtype
--> 667 dtype = np.dtype(dtype)
668 defconv = _getconv(dtype)
669
TypeError: data type not understood
WARNING: Failure executing file: <forward_NDMMF.py>
```

I am using numpy v. 1.5.1