A game theoretic approach to explain the output of any machine learning model.
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Updated
Nov 9, 2024 - Jupyter Notebook
A game theoretic approach to explain the output of any machine learning model.
A curated list of awesome open source libraries to deploy, monitor, version and scale your machine learning
Fit interpretable models. Explain blackbox machine learning.
🔅 Shapash: User-friendly Explainability and Interpretability to Develop Reliable and Transparent Machine Learning Models
[CVPR 2021] Official PyTorch implementation for Transformer Interpretability Beyond Attention Visualization, a novel method to visualize classifications by Transformer based networks.
Responsible AI Toolbox is a suite of tools providing model and data exploration and assessment user interfaces and libraries that enable a better understanding of AI systems. These interfaces and libraries empower developers and stakeholders of AI systems to develop and monitor AI more responsibly, and take better data-driven actions.
XAI - An eXplainability toolbox for machine learning
[ICCV 2021- Oral] Official PyTorch implementation for Generic Attention-model Explainability for Interpreting Bi-Modal and Encoder-Decoder Transformers, a novel method to visualize any Transformer-based network. Including examples for DETR, VQA.
Power Tools for AI Engineers With Deadlines
Visualization toolkit for neural networks in PyTorch! Demo -->
Papers about explainability of GNNs
Making decision trees competitive with neural networks on CIFAR10, CIFAR100, TinyImagenet200, Imagenet
Explainable AI framework for data scientists. Explain & debug any blackbox machine learning model with a single line of code. We are looking for co-authors to take this project forward. Reach out @ [email protected]
Official implementation of Score-CAM in PyTorch
CLIP Surgery for Better Explainability with Enhancement in Open-Vocabulary Tasks
Neural network visualization toolkit for tf.keras
💡 Adversarial attacks on explanations and how to defend them
CARLA: A Python Library to Benchmark Algorithmic Recourse and Counterfactual Explanation Algorithms
Training & evaluation library for text-based neural re-ranking and dense retrieval models built with PyTorch
For calculating global feature importance using Shapley values.
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