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I don't know how to pass additional arguments through the minimize function to the constraint dictionary. I can successfully pass additional arguments to the objective function.

Documentation on minimize function is here: http://docs.scipy.org/doc/scipy/reference/generated/scipy.optimize.minimize.html#scipy.optimize.minimize

The constraints argument is a dict that has a field 'args', where args is a sequence. I'm sure this is where I need to pass in the additional arguments but I don't know the syntax. The closest I have got is below:

from scipy.optimize import minimize
def f_to_min (x, p):
    return (p[0]*x[0]*x[0]+p[1]*x[1]*x[1]+p[2])

f_to_min([1,2],[1,1,1]) # test function to minimize

p=[] # define additional args to be passed to objective function
f_to_min_cons=({'type': 'ineq', 'fun': lambda x, p : x[0]+p[0], 'args': (p,)}) # define constraint

minimize(f_to_min, [1,2], args=(p0,), method='SLSQP', constraints=f_to_min_cons)

I get the following error

IndexError                                Traceback (most recent call last)
<ipython-input-19-571500063c9e> in <module>()
      1 p0=np.array([1,1,1])
----> 2 minimize(f_to_min, [1,2], args=(p0,), method='SLSQP', constraints=f_to_min_cons)

C:\Python27\lib\site-packages\scipy\optimize\_minimize.pyc in minimize(fun, x0, args,     method, jac, hess, hessp, bounds, constraints, tol, callback, options)
    356     elif meth == 'slsqp':
    357         return _minimize_slsqp(fun, x0, args, jac, bounds,
--> 358                                constraints, **options)
    359     else:
    360         raise ValueError('Unknown solver %s' % method)

C:\Python27\lib\site-packages\scipy\optimize\slsqp.pyc in _minimize_slsqp(func, x0,     args, jac, bounds, constraints, maxiter, ftol, iprint, disp, eps, **unknown_options)
    298     # meq, mieq: number of equality and inequality constraints
    299     meq = sum(map(len, [atleast_1d(c['fun'](x, *c['args'])) for c in     cons['eq']]))
--> 300     mieq = sum(map(len, [atleast_1d(c['fun'](x, *c['args'])) for c in     cons['ineq']]))
    301     # m = The total number of constraints
    302     m = meq + mieq

<ipython-input-18-163ef1a4f6fb> in <lambda>(x, p)
----> 1 f_to_min_cons=({'type': 'ineq', 'fun': lambda x, p : x[0]+p[0], 'args': (p,)})

IndexError: list index out of range

I'm accessing the first element of the additional parameter so I shouldn't have an out of range error.

If you remove the constraints=f_to_min_cons argument from the minimize function then the code above works.

share|improve this question
I have scipy 0.9 on this PC, so there is no minimize and I cannot test it. But you have a p = [] in your code, hence the index out of range when you try to get p[0]. Change your f_to_min_cons definition so that it has 'args' : (p0,) and you should be on your way. –  Jaime Mar 1 '13 at 4:56
In addition to what @Jaime said already: there seems to be a syntax error in the code from the question: check the closing curly bracket before the 'args' argument. –  Zhenya Mar 1 '13 at 9:50
Thanks for your comments. Yes, this does work. However, if I understand you correctly, I believe that p0 is not being passed through the minimize function to the constraint dictionary. i.e. If I were to change the minimize argument 'args'=(p0,) to 'args'=(p1,) then p1 would be used in the objective function, f_to_min, but p0 would be used in the the constraint dictionary. –  user2121724 Mar 1 '13 at 22:10
Yes, you're right about the syntax error. I must have edited the post here by hand instead of copy-pasting from the Python code. Have updated. –  user2121724 Mar 1 '13 at 22:13
Yes, that's exactly what I think is happening, which is also consistent with the c['fun'](x, *c['args']) in your error message: the args of minimize are not passed on to the constraint 'fun'. –  Jaime Mar 2 '13 at 5:05

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