- New Algorithm: Nelder Mead with box constraint handling in the design space - New Performance indicator: Karush Kuhn Tucker Proximity Measure (KKTPM) - Added Tutorial: Equality constraint handling through customized repair - Added Tutorial: Subset selection through GAs - Added Tutorial: How to use custom variables - Bugfix: No pf given for problem, no feasible solutions found
0.3.1
- Merging pymop into pymoo - all test problems are included - Improved Getting Started Guide - Added Visualization - Added Decision Making - Added GD+ and IGD+ - New Termination Criteria “x_tol” and “f_tol” - Added Mixed Variable Operators and Tutorial - Refactored Float to Integer Operators - Fixed NSGA-III Normalization Variable Swap - Fixed casting issue with latest NumPy version for integer operators - Removed the dependency of Cython for installation (.c files are delivered now)
0.3.0
- New documentation and webpage (https://pymoo.org) - Improved version of Differential Evolution (jitter, dither) - New crossovers (UX, HUX, ...) - R-NSGA-II Implementation added
0.2.5
0.2.1
0.2.0
First release of this optimization framework that is stored online.