You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
pyOpt is an object-oriented framework for formulating and solving
nonlinear constrained optimization problems.
Some of the features of pyOpt:
Object-oriented development maintains independence between
the optimization problem formulation and its solution by
different optimizers
Allows for easy integration of gradient-based, gradient-free,
and population-based optimization algorithms
Interfaces both open source as well as industrial optimizers
Ease the work required to do nested optimization and provides
automated solution refinement
On parallel systems it enables the use of optimizers when
running in a mpi parallel environment, allows for evaluation
of gradients in parallel, and can distribute function
evaluations for gradient-free optimizers
Optimization solution histories can be stored during the
optimization process. A partial history can also be used
to warm-restart the optimization
Distributed using the GNU Lesser General Public License (LGPL); see
the LICENSE file for details.
Please cite pyOpt and the authors of the respective optimization
algorithms in any publication for which you find it useful.
(This is not a legal requirement, just a polite request.)
Contact and Feedback
If you have questions, comments, problems, want to contribute to the
framework development, or want to report a bug, please contact the
main developers: