# speeding up numpy.dot inside list comprehension

I have a numpy script that is currently running quite slowly. spends the vast majority of it's time performing the following operation inside a loop:

``````terms=zip(Coeff_3,Coeff_2,Curl_x,Curl_y,Curl_z,Ex,Ey,Ez_av)
res=[np.dot(C2,array([C_x,C_y,C_z]))+np.dot(C3,array([ex,ey,ez])) for (C3,C2,C_x,C_y,C_z,ex,ey,ez) in terms]
res=array(res)

Ex[1:Nx-1]=res[1:Nx-1,0]
Ey[1:Nx-1]=res[1:Nx-1,1]
``````

It's the list comprehension that is really slowing this code down. In this case, Coeff_3, and Coeff_2 are length 1000 lists whose elements are 3x3 numpy matricies, and Ex,Ey,Ez, Curl_x, etc are all length 1000 numpy arrays. I realize it might be faster if i did things like setting a single 3x1000 E vector, but i have to perform a significant amount of averaging of different E vectors between step, which would make things very unwieldy.

Curiously however, i perform this operation twice per loop (once for Ex,Ey, once for Ez), and performing the same operation for the Ez's takes almost twice as long:

``````terms2=zip(Coeff_3,Coeff_2,Curl_x,Curl_y,Curl_z,Ex_av,Ey_av,Ez)
res2=array([np.dot(C2,array([C_x,C_y,C_z]))+np.dot(C3,array([ex,ey,ez])) for (C3,C2,C_x,C_y,C_z,ex,ey,ez) in terms2])
``````

Anyone have any idea what's happening? Forgive me if it's anything obvious, i'm very new to python.

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You should write the list comprehension as an array operation –  Miguel de Val-Borro Feb 3 at 23:16
How so? I'm not really sure how to do it/ –  Mdupont Feb 3 at 23:31
If you can rewrite this operation using n-dimensional tensors and einstein summation notation it will be trivial to vectorize the operation in numpy. At the very least please write the dimension of each object. For example "Coeff_3" appears to be of shape (1000,3,3). –  Ophion Feb 3 at 23:40

As pointed out in previous comments, use array operations. `np.hstack()`, `np.vstack()`, `np.outer()` and `np.inner()` are useful here. You're code could become something like this (not sure about your dimensions):
`````` Cxyz = np.vstack((Curl_x,Curl_y,Curl_z))