@misc{4a7a2aca3b6d46aba36b5d77ca09410b,
title = "Enabling Scale-Up Through Multi-Fidelity Adaptive Computing",
abstract = "We present ideas from our ongoing work in adaptive computing - an optimization framework that allows us to strategically deploy various fidelity level experiments and simulations to guide decision making. The framework aims to enable uncertainty quantified scale-up of simulations and experiments, which causes increased complexity. A key feature of the framework is the integration of user-specified local model trustworthiness estimates. Adaptive sampling strategies allow us to optimally exploit the multiple fidelity level information and trustworthiness measures to arrive at the best decisions within a highly limited budget of objective function evaluations.",
keywords = "adaptive sampling, derivative-free, multi-fidelity, optimization",
author = "Juliane Mueller and Hilary Egan and Kevin Griffin",
year = "2024",
language = "American English",
series = "Presented at the 2024 INFORMS Optimization Society (IOS) Conference, 22-24 March 2024, Houston, Texas",
type = "Other",
}