I have a function that has a bunch of parameters. Rather than setting all of the parameters manually, I want to perform a grid search. I have a list of possible values for each parameter. For every possible combination of parameters, I want to run my function which reports the performance of my algorithm on those parameters. I want to store the results of this in a many-dimensional matrix, so that afterwords I can just find the index of the maximum performance, which would in turn give me the best parameters. Here is how the code is written now:

```
param1_list = [p11, p12, p13,...]
param2_list = [p21, p22, p23,...] # not necessarily the same number of values
...
results_size = (len(param1_list), len(param2_list),...)
results = np.zeros(results_size, dtype = np.float)
for param1_idx in range(len(param1_list)):
for param2_idx in range(len(param2_list)):
...
param1 = param1_list[param1_idx]
param2 = param2_list[param2_idx]
...
results[param1_idx, param2_idx, ...] = my_func(param1, param2, ...)
max_index = np.argmax(results) # indices of best parameters!
```

I want to keep the first part, where I define the lists as-is, since I want to easily be able to manipulate the values over which I search.

I also want to end up with the results matrix as is, since I will be visualizing how changing different parameters affects the performance of the algorithm.

The bit in the middle, though, is quite repetitive and bulky (especially because I have lots of parameters, and I might want to add or remove parameters), and I feel like there should be a more succinct/elegant way to initialize the results matrix, iterate over all of the indices, and set the appropriate parameters.

So, is there?

`itertools.product`

– ev-br Nov 14 '12 at 0:11