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Project Description

The minfx project is a Python package for numerical optimization. It provides a large collection of standard minimization algorithms, including the line search methods (steepest descent, back-and-forth coordinate descent, quasi-Newton BFGS, Newton, and Newton-CG), the trust-region methods (Cauchy point, dogleg, CG-Steihaug, and exact trust region), the conjugate gradient methods (Fletcher-Reeves, Polak-Ribiere, Polak-Ribiere +, and Hestenes-Stiefel), the miscellaneous methods (Grid search, Simplex, and Levenberg-Marquardt), and the augmented function constraint algorithms (logarithmic barrier and method of multipliers).

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2008-09-28 20:48 Back to release list
1.0.1

This release involves the inevitable switch from
Numeric python to numpy, a few improvements in how
missing gradients and models with no parameters
are handled, and a switch from GPLv2 to GPLv3.
Tags: Minor feature enhancements

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