scipy.optimize.fmin_bfgs single function computes both f and fprime

I'm using `scipy.optimize.fmin_bfgs(f, init_theta, fprime)` to minimize `f`, which has gradient `fprime`. I compute `f` and `fprime` in a single function because most of the computation is the same so there's no need to do it twice.

Is there any way to call `fmin_bfgs()` specifying a single function that returns both `f` and `fprime`?

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If you're trying to save on computation time rather than just combine the calculation of `f` and `f'` for code convenience, it seems like you need an extra wrapper around your function to cache values, since `fmin_bfgs` doesn't seem to allow you to pass such a function (unlike some other optimization functions).

Here's one way to do that, maintaining the 10 most recently evaluated points in a little cache. (I'm not sure whether calls to this function need to be thread-safe: probably not, but if so, you'll probably need to add some locking in here, I guess.)

``````def func_wrapper(f, cache_size=10):
evals = {}
last_points = collections.deque()

def get(pt, which):
s = pt.tostring() # get binary string of numpy array, to make it hashable
if s not in evals:
evals[s] = f(pt)
last_points.append(s)
if len(last_points) >= cache_size:
del evals[last_points.popleft()]
return evals[s][which]

return functools.partial(get, which=0), functools.partial(get, which=1)
``````

If we then do

``````>>> def f(x):
...    print "evaluating", x
...    return (x-3)**2, 2*(x-3)

>>> f_, fprime = func_wrapper(f)

>>> optimize.fmin_bfgs(f_, 1000, fprime)
evaluating [ 994.93480441]
evaluating [ 974.67402207]
evaluating [ 893.63089268]
evaluating [ 665.93446894]
evaluating [ 126.99931561]
evaluating [ 3.]
Optimization terminated successfully.
Current function value: 0.000000
Iterations: 4
Function evaluations: 7
array([ 3.])
``````

we can see that we don't repeat any evaluations.

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Nice implementation! I thought of trying to use this strategy, but I was not sure how to make an array hashable. Also, I was hoping that there was a feature already built into scipy.optimize to handle this. Apparently, others have requested the feature because it's supposed to be part of scipy 0.11, which is not yet released. Thank you for providing this design pattern! – user1389890 May 23 '12 at 13:41

Suppose you have a Python function `f(x)` that returns both the function value and the gradient:

``````In [20]: def f(x):
....:     return (x-3)**2, 2*(x-3)
``````

Then just pass the outputs separately like so:

``````In [21]: optimize.fmin_bfgs(lambda x: f(x)[0], 1000, lambda x: f(x)[1])
Optimization terminated successfully.
Current function value: 0.000000
Iterations: 4
Function evaluations: 7
That's fine. `lambda x: f(x)[0]` is a `callable`. That's all that `fmin_bfgs` needs. It doesn't care about the internals of that callable. – Steve Tjoa May 23 '12 at 3:39
Oh I see. I interpreted that point as `f` contains computation common to both the function and the gradient, not that `fmin_bfgs` repeats computation. – Steve Tjoa May 23 '12 at 3:42