A collection of Artelys Kalis examples with Jupyter Notebook
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Updated
Feb 22, 2018 - Jupyter Notebook
A collection of Artelys Kalis examples with Jupyter Notebook
A set of Jupyter notebooks that investigate and compare the performance of several numerical optimization techniques, both unconstrained (univariate search, Powell's method and Gradient Descent (fixed step and optimal step)) and constrained (Exterior Penalty method).
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