Skip to content
/ pyOpt Public
forked from hschilling/pyOpt

This is a fork of pyOpt. It includes bug fixes so that pyOpt can do unconstrained optimization when using the COBYLA, CONMIN and SNOPT

License

Notifications You must be signed in to change notification settings

swryan/pyOpt

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

1 Commit
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

pyOpt - PYthon OPTimization Framework
=====================================
Copyright (c) 2008-2013, pyOpt Developers


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
    
see the QUICKGUIDE file for further details.


Licensing
---------
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:
    
    * Dr. Ruben E. Perez (Ruben.Perez@rmc.ca)
    * Peter W. Jansen (Peter.Jansen@rmc.ca)

About

This is a fork of pyOpt. It includes bug fixes so that pyOpt can do unconstrained optimization when using the COBYLA, CONMIN and SNOPT

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Fortran 66.7%
  • Python 30.6%
  • C 2.7%