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interpretml
interpret-core

Fit interpretable models. Explain blackbox machine learning.

957K 7K 783
interpretml
interpret

Fit interpretable models. Explain blackbox machine learning.

387K 7K 783
jacobgil
grad-cam

Advanced AI Explainability for computer vision. Support for CNNs, Vision Transformers, Classification, Object detection, Segmentation, Image similarity and more.

80K 13K 2K
interpretml
dice-ml

Generate Diverse Counterfactual Explanations for any machine learning model.

48K 2K 228
oegedijk
explainerdashboard

Quickly build Explainable AI dashboards that show the inner workings of so-called "blackbox" machine learning models.

47K 2K 345
ModelOriented
dalex

moDel Agnostic Language for Exploration and eXplanation

36K 1K 170
SeldonIO
alibi

Algorithms for explaining machine learning models

30K 3K 264
eliranwong
agentmake

AgentMake AI: a kit for developing agentic AI applications that support 24 AI backends and and work with 7 agentic components, such as tools and agents. (Developer: Eliran Wong) Supported backends: anthropic, azure, azure_any, cohere, custom, deepseek, genai, github, github_any, googleai, groq, llamacpp, mistral, ollama, openai, vertexai, xai

22K 30 8
crillab
pyxai

PyXAI (Python eXplainable AI) is a Python library (version 3.6 or later) allowing to bring formal explanations suited to (regression or classification) tree-based ML models (Decision Trees, Random Forests, Boosted Trees, ...).

12K 39 4
keisen
tf-keras-vis

Neural network visualization toolkit for tf.keras

8K 338 47
givasile
effector

Effector - a Python package for global and regional effect methods

8K 119 2
eliranwong
toolmate

ToolMate AI, developed by Eliran Wong, is a cutting-edge AI companion that seamlessly integrates agents, tools, and plugins to excel in conversations, generative work, and task execution. Supports custom workflow and plugins to automate multi-step actions.

6K 178 23
chr5tphr
zennit

Zennit is a high-level framework in Python using PyTorch for explaining/exploring neural networks using attribution methods like LRP.

4K 243 35
adrianstando
edgaro

Explainable imbalanceD learninG compARatOr

4K 2 1
understandable-machine-intelligence-lab
quantus

Quantus is an eXplainable AI toolkit for responsible evaluation of neural network explanations

3K 661 89
proxyml
proxyml

Privacy-preserving model explainability

3K 1 0
csinva
imodelsx

Interpret text data with LLMs (sklearn compatible).

3K 175 27
eliranwong
toolmate-lite

ToolMate AI, developed by Eliran Wong, is a cutting-edge AI companion that seamlessly integrates agents, tools, and plugins to excel in conversations, generative work, and task execution. Supports custom workflow and plugins to automate multi-step actions.

3K 178 23
eliranwong
toolmate-android

ToolMate AI, developed by Eliran Wong, is a cutting-edge AI companion that seamlessly integrates agents, tools, and plugins to excel in conversations, generative work, and task execution. Supports custom workflow and plugins to automate multi-step actions.

3K 178 23
Trusted-AI
aix360

Interpretability and explainability of data and machine learning models

2K 2K 328
crillab
pyxai-experimental

PyXAI (Python eXplainable AI) is a Python library (version 3.6 or later) allowing to bring formal explanations suited to (regression or classification) tree-based ML models (Decision Trees, Random Forests, Boosted Trees, ...).

2K 39 4
s-nagaev
chibi-bot

Your Digital Companion. Self-hosted Telegram bot orchestrating multiple AI providers (OpenAI, Anthropic, Google, xAI, DeepSeek, Mistral, Alibaba, MiniMax) with autonomous agent capabilities, MCP integrations, and async task execution. Not a tool. A partner.

2K 49 11
FOR-sight-ai
interpreto

🪄 Interpreto is an interpretability toolbox for LLMs

2K 178 4
sergioburdisso
pyss3

A Python library for Interpretable Machine Learning in Text Classification using the SS3 model, with easy-to-use visualization tools for Explainable AI :octocat:

1K 348 44
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