Consider the following example of numpy broadcasting:

```
import numpy as np
import theano
from theano import tensor as T
xval = np.array([[1, 2, 3], [4, 5, 6]])
bval = np.array([[10, 20, 30]])
print xval + bval
```

As expected, the vector `bval`

is added to each rows of the matrix `xval`

and the output is:

```
[[11 22 33]
[14 25 36]]
```

Trying to replicate the same behaviour in the git version of theano:

```
x = T.dmatrix('x')
b = theano.shared(bval)
z = x + b
f = theano.function([x], z)
print f(xval)
```

I get the following error:

```
ValueError: Input dimension mis-match. (input[0].shape[0] = 2, input[1].shape[0] = 1)
Apply node that caused the error: Elemwise{add,no_inplace}(x, <TensorType(int64, matrix)>)
Inputs types: [TensorType(float64, matrix), TensorType(int64, matrix)]
Inputs shapes: [(2, 3), (1, 3)]
Inputs strides: [(24, 8), (24, 8)]
Inputs scalar values: ['not scalar', 'not scalar']
```

I understand `Tensor`

objects such as `x`

have a `broadcastable`

attribute, but I can't find a way to 1) set this correctly for the `shared`

object or 2) have it correctly inferred. How can I re-implement numpy's behaviour in theano?