# scipy.optimize show all iteration input and output values

I am using `scipy.optimize.minimize` to find the optimum value from a function. Here is the simplest example, using the built-in Rosenbrock function:

``````>>> from scipy.optimize import minimize, rosen
>>> x0 = [1.3, 0.7, 0.8, 1.9, 1.2]
>>> # Minimize returns a scipy.optimize.OptimizeResult object...
>>> res = minimize(rosen, x0, method='Nelder-Mead')
>>> print res
status: 0
nfev: 243
success: True
fun: 6.6174817088845322e-05
x: array([ 0.99910115,  0.99820923,  0.99646346,  0.99297555,  0.98600385])
message: 'Optimization terminated successfully.'
nit: 141
``````

`x` is just the final, optimum input vector. ​Can I get a list for all iterations (i.e. an objective function with corresponding input vector) from the returned `scipy.optimize.OptimizeResult` object?

• stackoverflow.com/questions/16739065/…
– cel
Commented Dec 15, 2015 at 10:10
• @cel Good answer, but the print command in the callbackF() function is re-evaluating the rosen() objective function. In this case it would be OK, but for an expensive objective it would be unacceptable to calculate the result a second time just to see it's value! Is there a way to get the result directly from the callback? Commented Dec 15, 2015 at 10:26
• Usually you do not need any of those intermediate results. computing/storing them would just slow the algorithm down a lot. Fast algorithms cannot give you that kind of information for the sake of performance.
– cel
Commented Dec 15, 2015 at 10:32
• @cel OK well in most situations where the objective is expensive, say an engineering simulation, the speed of the algorithm is negligible compared to the simulation time. So I am not interested in the optimization algorithm being fast, I am only interested in it deciding which input vector to use for the next iteration. And I want all of the information at the end of the run without having to re-run those same simulations again! I don't want intermediate results, I just want them all at the end! Commented Dec 15, 2015 at 10:41
• Somewhat of a kludge, but you could incorporate it in to your function to minimize - either print out at each call (console of file), or append data from each call on to a (global) list to be perused later. It is kind of neat to see (once or twice) how the algorithm goes about its business. Commented Dec 15, 2015 at 14:48

Yes, you could add the optional argument `'return_all'`.

Example:

``````from scipy.optimize import minimize

def f(params):
x1, x2 = params
f = 4 * ((x1**2+(10-x2)**2)**0.5 - 10)**2 \
+ (1/2)*((x1**2+(10+x2)**2)**0.5-10)**2 \
-5*(x1+x2)
return f

x0 = [-4, 4]

res = minimize(f, x0, method='CG', options={'return_all':True})

# This example returns all iteration.
``````
• Note: the options does not works for all optimization method. For example, the methaheuristic `differential_evolution` does not have this argument. Commented Feb 12, 2023 at 21:45