The question of how to deal with mixed data from `genfromtxt`

comes up often. People expect a 2d array, and instead get a 1d that they can't index by column. That's because they get a structured array - with different dtype for each column.

All the examples in the `genfromtxt`

doc show this:

```
>>> s = StringIO("1,1.3,abcde")
>>> data = np.genfromtxt(s, dtype=[('myint','i8'),('myfloat','f8'),
... ('mystring','S5')], delimiter=",")
>>> data
array((1, 1.3, 'abcde'),
dtype=[('myint', '<i8'), ('myfloat', '<f8'), ('mystring', '|S5')])
```

But let me demonstrate how to access this kind of data

```
In [361]: txt=b"""A, 1,2,3
...: B,4,5,6
...: """
In [362]: data=np.genfromtxt(txt.splitlines(),delimiter=',',dtype=('S1,int,float,int'))
In [363]: data
Out[363]:
array([(b'A', 1, 2.0, 3), (b'B', 4, 5.0, 6)],
dtype=[('f0', 'S1'), ('f1', '<i4'), ('f2', '<f8'), ('f3', '<i4')])
```

So my array has 2 records (check the shape), which are displayed as tuples in a list.

You access `fields`

by name, not by column number (do I need to add a structured array documentation link?)

```
In [364]: data['f0']
Out[364]:
array([b'A', b'B'],
dtype='|S1')
In [365]: data['f1']
Out[365]: array([1, 4])
```

In a case like this might be more useful if I choose a `dtype`

with 'subarrays'. This a more advanced dtype topic

```
In [367]: data=np.genfromtxt(txt.splitlines(),delimiter=',',dtype=('S1,(3)float'))
In [368]: data
Out[368]:
array([(b'A', [1.0, 2.0, 3.0]), (b'B', [4.0, 5.0, 6.0])],
dtype=[('f0', 'S1'), ('f1', '<f8', (3,))])
In [369]: data['f1']
Out[369]:
array([[ 1., 2., 3.],
[ 4., 5., 6.]])
```

The character column is still loaded as `S1`

, but the numbers are now in a 3 column array. Note that they are all float (or int).

```
In [371]: from scipy import stats
In [372]: stats.describe(data['f1'])
Out[372]: DescribeResult(nobs=2,
minmax=(array([ 1., 2., 3.]), array([ 4., 5., 6.])),
mean=array([ 2.5, 3.5, 4.5]),
variance=array([ 4.5, 4.5, 4.5]),
skewness=array([ 0., 0., 0.]),
kurtosis=array([-2., -2., -2.]))
```

`dtype`

's in your array. Especially a string would be problematic to describe statistically. Perhaps you could just loop over each of your columns, and describe the columns separately? – M.T Jul 26 '16 at 7:39`stats.describe(dataset[2])`

but it yields the same error as in my OP. – beta Jul 26 '16 at 7:40`stats.describe(dataset[2].astype(float))`

? – M.T Jul 26 '16 at 7:44`pandas`

which is much more powerful for such kind of thing. – Holt Jul 26 '16 at 7:45