Uncertainty Toolbox: a Python toolbox for predictive uncertainty quantification, calibration, metrics, and visualization
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Updated
Jul 9, 2024 - Python
Uncertainty Toolbox: a Python toolbox for predictive uncertainty quantification, calibration, metrics, and visualization
Natural Gradient Boosting for Probabilistic Prediction
A Library for Uncertainty Quantification.
Lightweight, useful implementation of conformal prediction on real data.
Curated list of open source tooling for data-centric AI on unstructured data.
Awesome-LLM-Robustness: a curated list of Uncertainty, Reliability and Robustness in Large Language Models
Literature survey, paper reviews, experimental setups and a collection of implementations for baselines methods for predictive uncertainty estimation in deep learning models.
This repository contains a collection of surveys, datasets, papers, and codes, for predictive uncertainty estimation in deep learning models.
An extension of XGBoost to probabilistic modelling
A library for Bayesian neural network layers and uncertainty estimation in Deep Learning extending the core of PyTorch
A professionally curated list of awesome Conformal Prediction videos, tutorials, books, papers, PhD and MSc theses, articles and open-source libraries.
A generic Mixture Density Networks (MDN) implementation for distribution and uncertainty estimation by using Keras (TensorFlow)
👋 Puncc is a python library for predictive uncertainty quantification using conformal prediction.
An extension of LightGBM to probabilistic modelling
CVPR 2020 - On the uncertainty of self-supervised monocular depth estimation
[ICCV 2021 Oral] Estimating and Exploiting the Aleatoric Uncertainty in Surface Normal Estimation
[CVPR 2022 Oral] Multi-View Depth Estimation by Fusing Single-View Depth Probability with Multi-View Geometry
Quantile Regression Forests compatible with scikit-learn.
Code for the Neural Processes website and replication of 4 papers on NPs. Pytorch implementation.
Various Conformal Prediction methods implemented from scratch in pure NumPy for an educational purpose.
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