If I run the following code with python 3.5

```
import numpy as np
import time
import theano
A = np.random.rand(1000,10000).astype(theano.config.floatX)
B = np.random.rand(10000,1000).astype(theano.config.floatX)
np_start = time.time()
AB = A.dot(B)
np_end = time.time()
X,Y = theano.tensor.matrices('XY')
mf = theano.function([X,Y],X.dot(Y))
t_start = time.time()
tAB = mf(A,B)
t_end = time.time()
print ("NP time: %f[s], theano time: %f[s] **(times should be close when run
on CPU!)**" %(np_end-np_start, t_end-t_start))
print ("Result difference: %f" % (np.abs(AB-tAB).max(), ))
```

I get the output

```
NP time: 0.161123[s], theano time: 0.167119[s] (times should be close when
run on CPU!)
Result difference: 0.000000
```

it says if the times are close, it means that I am running on my CPU.

How can I run this code on my GPU?

**NOTE:**

- I have a workstation with Nvidia Quadro k4200.
- I have installed Cuda toolkit
- I have successfully worked an cuda vectorAdd sample project on VS2012.