I have a class like:

```
class MyClass:
def __init__( self, params):
self.A = params[0]
self.B = params[1]
self.C = params[2]
```

and a numpy array built from instances of this class:

```
import numpy as np
ArrayA = np.empty((3,4),dtype = object)
for ii in range(3):
for jj in range(4):
ArrayA[ii,jj] = MyClass(np.random.rand(3))
```

I want to retrieve "MyClass.B" for ArrayA where "MyClass.A" is minimum, so I did:

```
WhereMin = np.where(ArrayA[:,:].A)
MinB = ArrayA[WhereMin].B
```

but that does not work. Any ideas?

**EDIT:**
When I run the above code I get the following error:

```
----> WhereMin = np.nanmin(ArrayA[:,:].A)
AttributeError: 'numpy.ndarray' object has no attribute 'A'
```

When I would expect to get an array of indices to use in "MinB".

**Possible Solution**
I found a possible solution to my problem:

```
Min = np.nanmin([[x.A for x in XX] for XX in ArrayA])
XXX = [[x for x in XX if x.A == Min] for XX in ArrayA]
MinB = [XX for XX in XXX if XX != [] ][0][0].B
```

Might not be too elegant, but does the job. Thank you all!

`(3,4,3)`

. Where the first two dimensions correspond to your original`np.empty(3,4)`

array and the last dimension contains your`np.random.rand(3)`

. This can be created simply as`ArrayA = np.random.rand(3,4,3)`

and then the operation`np.where(ArrayA[:,:].A)`

would just be`np.where(ArrayA[:,:,0]`

. – Ophion Apr 19 '14 at 20:49