The default matrix multiplication is computed as

```
c[i,j] = sum(a[i,k] * b[k,j])
```

I am trying to use a custom formula instead of the dot product to get

```
c[i,j] = sum(a[i,k] == b[k,j])
```

Is there an efficient way to do this in numpy?

5

The default matrix multiplication is computed as

```
c[i,j] = sum(a[i,k] * b[k,j])
```

I am trying to use a custom formula instead of the dot product to get

```
c[i,j] = sum(a[i,k] == b[k,j])
```

Is there an efficient way to do this in numpy?

4

You could use broadcasting:

```
c = sum(a[...,np.newaxis]*b[np.newaxis,...],axis=1) # == np.dot(a,b)
c = sum(a[...,np.newaxis]==b[np.newaxis,...],axis=1)
```

I included the `newaxis`

in `b`

just make it clear how that array is expanded. There are other ways of adding dimensions to arrays (reshape, repeat, etc), but the effect is the same. Expand `a`

and `b`

to the same shape to do element by element multiplying (or ==), and then sum on the correct axis.