Here are some things that I noticed:

- Use
`t1.shape[0]`

instead of `np.shape(t1)[0]`

and in so on in other places.
- Don't use
`len`

as a variable because it is a built-in function in Python (not for speed, but for good practice). Use L or something like that.
- Don't pass two-element arrays to functions unless you really need to. Cython checks the buffer every time you do pass an array. So, when using
`diss2Partials(t[i], t[j])`

do `diss2Partials(t[i,0], t[i,1], t[j,0], t[j,1])`

instead and redefine `diss2Partials`

appropriately.
- Don't use
`abs`

, or at least not the Python one. It is having to convert your C double to a Python float, call the abs function, then convert back to a C double. It would probably be better to make an inlined function like you did with `float_min`

.
- Calling
`np.exp`

is doing a similar thing to using `abs`

. Change `np.exp`

to `exp`

and add `from libc.math cimport exp`

to your imports at the top.
- Get rid of the
`transpose`

function completely. The `np.dot`

is really slowing things down, but there really is no need for matrix multiplication here anyway. Rewrite your `dissTimbreScale`

function to create an empty matrix, say `t2`

. Before the current loop, set the second column of `t2`

to be equal to the second column of `t`

(using a loop preferably, but you could probably get away with a Numpy operation here). Then, inside of the current loop, put in a loop that sets the first column of `t2`

equal to the first column of `t`

times `s[i]`

. That's what your matrix multiplication was really doing. Then just pass `t2`

as the second parameter to `diss2Timbres`

instead of the one returned by the `transpose`

function.

Do 1-5 first because they are rather easy. Number 6 may take a little more time, effort and maybe experimentation, but I suspect that it may also give you a significant boost in speed.