Published June 12, 2025
| Version v2
Computational notebook
Open
Code for A gradient-based and determinant-free framework for fully Bayesian Gaussian process regression
Authors/Creators
Files
01 Small problem correctness.ipynb
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Additional details
Funding
- U.S. National Science Foundation
- Avoiding the determinant in Gaussian process regression ACCESS allocation MTH240042
Software
- Programming language
- Python , Jupyter Notebook