If I have numpy arrays `A`

and `B`

, then I can compute the trace of their matrix product with:

```
tr = numpy.linalg.trace(A.dot(B))
```

However, the matrix multiplication `A.dot(B)`

unnecessarily computes all of the off-diagonal entries in the matrix product, when only the diagonal elements are used in the trace. Instead, I could do something like:

```
tr = 0.0
for i in range(n):
tr += A[i, :].dot(B[:, i])
```

but this performs the loop in Python code and isn't as obvious as `numpy.linalg.trace`

.

Is there a better way to compute the trace of a matrix product of numpy arrays? What is the fastest or most idiomatic way to do this?