Abstract
The capability to replicate the predictions by machine learning (ML) or artificial intelligence (AI) models and the results in scientific workflows that incorporate such ML/AI predictions is driven by a variety of factors. An uncertainty-aware metric that can quantitatively assess the reproducibility of the quantities of interest (QoI) would contribute to the trustworthiness of the results obtained from scientific workflows involving ML/AI models. In this article, we discuss how uncertainty quantification (UQ) in a Bayesian paradigm can provide a general and rigorous framework for quantifying the reproducibility of complex scientific workflows. Such frameworks have the potential to fill a critical gap that currently exists in ML/AI for scientific workflows, as they will enable researchers to determine the impact of ML/AI model prediction variability on the predictive outcomes of ML/AI-powered workflows. We expect that the envisioned framework will contribute to the design of more reproducible and trustworthy workflows for diverse scientific applications, and ultimately, accelerate scientific discoveries.
| Original language | English |
|---|---|
| Pages (from-to) | 1251-1258 |
| Number of pages | 8 |
| Journal | Digital Discovery |
| Volume | 2 |
| Issue number | 5 |
| DOIs | |
| State | Published - Aug 25 2023 |
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