The open-sourced Python toolbox for backdoor attacks and defenses.
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Updated
Jul 30, 2024 - Python
The open-sourced Python toolbox for backdoor attacks and defenses.
[ICML 2024] TrustLLM: Trustworthiness in Large Language Models
Open-source framework for uncertainty and deep learning models in PyTorch 🌱
[ICML2022 Long Talk] Official Pytorch implementation of "To Smooth or Not? When Label Smoothing Meets Noisy Labels"
Neural Network Verification Software Tool
A project to add scalable state-of-the-art out-of-distribution detection (open set recognition) support by changing two lines of code! Perform efficient inferences (i.e., do not increase inference time) and detection without classification accuracy drop, hyperparameter tuning, or collecting additional data.
[ICCV2021 Oral] Fooling LiDAR by Attacking GPS Trajectory
Papers and online resources related to machine learning fairness
PyTorch package to train and audit ML models for Individual Fairness
A project to improve out-of-distribution detection (open set recognition) and uncertainty estimation by changing a few lines of code in your project! Perform efficient inferences (i.e., do not increase inference time) without repetitive model training, hyperparameter tuning, or collecting additional data.
SyReNN: Symbolic Representations for Neural Networks
Privacy-Preserving Machine Learning (PPML) Tutorial
Framework for Adversarial Malware Evaluation.
a tool for comparing the predictions of any text classifiers
A list of research papers of explainable machine learning.
Trustworthy AI method based on Dempster-Shafer theory - application to fetal brain 3D T2w MRI segmentation
[Findings of EMNLP 2022] Holistic Sentence Embeddings for Better Out-of-Distribution Detection
MERLIN is a global, model-agnostic, contrastive explainer for any tabular or text classifier. It provides contrastive explanations of how the behaviour of two machine learning models differs.
Morphence: An implementation of a moving target defense against adversarial example attacks demonstrated for image classification models trained on MNIST and CIFAR10.
A project to train your model from scratch or fine-tune a pretrained model using the losses provided in this library to improve out-of-distribution detection and uncertainty estimation performances. Calibrate your model to produce enhanced uncertainty estimations. Detect out-of-distribution data using the defined score type and threshold.
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