JMLR

Lightning UQ Box: Uncertainty Quantification for Neural Networks

Authors
Nils Lehmann Nina Maria Gottschling Jakob Gawlikowski Adam J. Stewart Stefan Depeweg Eric Nalisnick
Research Topics
Machine Learning
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Jul 15, 2025
Abstract

Although neural networks have shown impressive results in a multitude of application domains, the "black box" nature of deep learning and lack of confidence estimates have led to scepticism, especially in domains like medicine and physics where such estimates are critical. Research on uncertainty quantification (UQ) has helped elucidate the reliability of these models, but existing implementations of these UQ methods are sparse and difficult to reuse. To this end, we introduce Lightning UQ Box, a PyTorch-based Python library for deep learning-based UQ methods powered by PyTorch Lightning. Lightning UQ Box supports classification, regression, semantic segmentation, and pixelwise regression applications, and UQ methods from a variety of theoretical motivations. With this library, we provide an entry point for practitioners new to UQ, as well as easy-to-use components and tools for scalable deep learning applications.

Author Details
Nils Lehmann
Author
Nina Maria Gottschling
Author
Jakob Gawlikowski
Author
Adam J. Stewart
Author
Stefan Depeweg
Author
Eric Nalisnick
Author
Research Topics & Keywords
Machine Learning
Research Area
Citation Information
APA Format
Nils Lehmann , Nina Maria Gottschling , Jakob Gawlikowski , Adam J. Stewart , Stefan Depeweg & Eric Nalisnick . Lightning UQ Box: Uncertainty Quantification for Neural Networks. Journal of Machine Learning Research .
BibTeX Format
@article{JMLR:v26:24-2110,
  author  = {Nils Lehmann and Nina Maria Gottschling and Jakob Gawlikowski and Adam J. Stewart and Stefan Depeweg and Eric Nalisnick},
  title   = {Lightning UQ Box: Uncertainty Quantification for Neural Networks},
  journal = {Journal of Machine Learning Research},
  year    = {2025},
  volume  = {26},
  number  = {54},
  pages   = {1--7},
  url     = {http://jmlr.org/papers/v26/24-2110.html}
}
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