scipy.optimize.OptimizeResult¶
-
class
scipy.optimize.OptimizeResult[source]¶ Represents the optimization result.
Notes
There may be additional attributes not listed above depending of the specific solver. Since this class is essentially a subclass of dict with attribute accessors, one can see which attributes are available using the keys() method.
Attributes: - x : ndarray
The solution of the optimization.
- success : bool
Whether or not the optimizer exited successfully.
- status : int
Termination status of the optimizer. Its value depends on the underlying solver. Refer to message for details.
- message : str
Description of the cause of the termination.
- fun, jac, hess: ndarray
Values of objective function, its Jacobian and its Hessian (if available). The Hessians may be approximations, see the documentation of the function in question.
- hess_inv : object
Inverse of the objective function’s Hessian; may be an approximation. Not available for all solvers. The type of this attribute may be either np.ndarray or scipy.sparse.linalg.LinearOperator.
- nfev, njev, nhev : int
Number of evaluations of the objective functions and of its Jacobian and Hessian.
- nit : int
Number of iterations performed by the optimizer.
- maxcv : float
The maximum constraint violation.
Methods
clear(() -> None. Remove all items from D.)copy(() -> a shallow copy of D)fromkeys(…)v defaults to None. get((k[,d]) -> D[k] if k in D, …)has_key((k) -> True if D has a key k, else False)items(() -> list of D’s (key, value) pairs, …)iteritems(() -> an iterator over the (key, …)iterkeys(() -> an iterator over the keys of D)itervalues(…)keys(() -> list of D’s keys)pop((k[,d]) -> v, …)If key is not found, d is returned if given, otherwise KeyError is raised popitem(() -> (k, v), …)2-tuple; but raise KeyError if D is empty. setdefault((k[,d]) -> D.get(k,d), …)update(([E, …)If E present and has a .keys() method, does: for k in E: D[k] = E[k] values(() -> list of D’s values)viewitems(…)viewkeys(…)viewvalues(…)