I am trying to optimize a function f(g(k), h(k)), over a list of parameters denoted by k. And there is an inequality constraint over some of the k and equality constraint g(k). I tried both scipy optimize.minimize and optimize.fmin_slsqp, however what it seems to do is change the values of all the parameters in list k one by one and then do some iterations and then just exit the process with Singular matrix C in LSQ subproblem (Exit mode 6). I have no idea why it's not working. Please note I'm not providing the gradient of the constraints, in fact I've a constraint that g(k).imag = 0 (which is non-differentiable). I tried removing that and it no longer gives me the error. Can some one please explain these behaviors.


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