# How to return cost, grad as tuple for scipy's fmin_cg function

How can I make scipy's `fmin_cg` use one function that returns `cost` and `gradient` as a tuple? The problem with having `f` for cost and `fprime` for gradient, is that I might have to perform an operation twice (very costly) by which the `grad` and `cost` is calculated. Also, sharing the variables between them could be troublesome.

In Matlab however, `fmin_cg` works with one function that returns cost and gradient as tuple. I don't see why scipy's `fmin_cg` cannot provide such convenience.

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You can use `scipy.optimize.minimize` with `jac=True`. If that's not an option for some reason, then you can look at how it handles this situation:

``````class MemoizeJac(object):
""" Decorator that caches the value gradient of function each time it
is called. """
def __init__(self, fun):
self.fun = fun
self.jac = None
self.x = None

def __call__(self, x, *args):
self.x = numpy.asarray(x).copy()
fg = self.fun(x, *args)
self.jac = fg[1]
return fg[0]

def derivative(self, x, *args):
if self.jac is not None and numpy.alltrue(x == self.x):
return self.jac
else:
self(x, *args)
return self.jac
``````

This class wraps a function that returns function value and gradient, keeping a one-element cache and checks that to see if it already knows its result. Usage:

``````fmemo = MemoizeJac(f, fprime)
xopt = fmin_cg(fmemo, x0, fmemo.derivative)
``````

The strange thing about this code is that it assumes `f` is always called before `fprime` (but not every `f` call is followed by an `fprime` call). I'm not sure if `scipy.optimize` actually guarantees that, but the code can be easily adapted to not make that assumption, though. Robust version of the above (untested):

``````class MemoizeJac(object):
def __init__(self, fun):
self.fun = fun
self.value, self.jac = None, None
self.x = None

def _compute(self, x, *args):
self.x = numpy.asarray(x).copy()
self.value, self.jac = self.fun(x, *args)

def __call__(self, x, *args):
if self.value is not None and numpy.alltrue(x == self.x):
return self.value
else:
self._compute(x, *args)
return self.value

def derivative(self, x, *args):
if self.jac is not None and numpy.alltrue(x == self.x):
return self.jac
else:
self._compute(x, *args)
return self.jac
``````
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+1 Nice way of caching the last call's return! It wouldn't be too hard to overcome that last potential limitation (`f` called before `fprime`), right? –  Jaime Jul 2 '13 at 17:22
@Jaime: no, just repeat the trick used in `derivative`. See updated answer. –  larsmans Jul 2 '13 at 17:30
Waw, this is such an amazing solution, I just tested my code with something like `minimize(fun =self._cost_grad, x0=initial_theta, method='Newton-CG', options = {'maxiter' :20, 'disp':True}, jac =True,args=(X, n_features, n_samples)) `, and I got awesome results. The parameter `fun` expects a function that returns (cost, grad) as tuple, and `method` can be simply changed to perform `l_bfgs`, `bfgs`, `cg` or any optimizer out there in scipy. Thanks a million! I'm surprised this answer isn't prevalent. –  Issam Laradji Jul 2 '13 at 17:45
@IssamLaradji: well, the SciPy folks already solved the problem by the new `scipy.optimize.minimize` wrapper. –  larsmans Jul 2 '13 at 20:07