# GTApprox: Surrogate modeling for industrial design

@article{Belyaev2016GTApproxSM, title={GTApprox: Surrogate modeling for industrial design}, author={Mikhail Belyaev and Evgeny Burnaev and Ermek Kapushev and Maxim Panov and Pavel V. Prikhodko and Dmitry P. Vetrov and Dmitry Yarotsky}, journal={Adv. Eng. Softw.}, year={2016}, volume={102}, pages={29-39} }

We describe GTApprox - a new tool for medium-scale surrogate modeling in industrial design. Compared to existing software, GTApprox brings several innovations: a few novel approximation algorithms, several advanced methods of automated model selection, novel options in the form of hints. We demonstrate the efficiency of GTApprox on a large collection of test problems. In addition, we describe several applications of GTApprox to real engineering problems.

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