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Sequential sampling for contour estimation with concurrent function evaluations. (English) Zbl 1274.62105

Summary: We demonstrate the use of multiple surrogates and kriging believer for parallelizing surrogate-based contour estimation. For the demonstration example, we reduce wall clock time with minimal penalty in number of simulations.

MSC:

62D05 Sampling theory, sample surveys
Full Text: DOI

References:

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