A curated list of awesome responsible machine learning resources.
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Updated
Mar 16, 2026
A curated list of awesome responsible machine learning resources.
Open-source framework for uncertainty and deep learning models in PyTorch 🌱
Analyzing and scoring reasoning traces of LLMs
Open-source agentic schema CLI. Optimised for claude code, gemini, codex and co-pilot. Skills included.
Open-source agentic schema for reliable data outputs. Query data through MCP and via our SDK. Create apps, embed data or just simply explore through your preferred agent.
Open Symbolic AI Core Repository
TRIAGE: Characterizing and auditing training data for improved regression (NeurIPS 2023)
Official code for AAAI2025 paper "Mining In-distribution Attributes in Outliers for Out-of-distribution Detection"
Repository for the Reliable and Trustworthy AI course offered in Fall 2022 at ETH Zürich: implementation of DeepPoly, Robustness Analyzer for Deep Neural Networks
Reliable and Trustworthy Intelligence AI notebooks from ETH Zurich course taught by Prof. Dr. Martin Vechev
Implementation of a custom DeepPoly abstract domain transformer for Sigmoid Parabola-Unit activation function using PyTorch
Official source codes for implementing "Design of reliable technology valuation model with calibrated machine learning of patent indicators"
Repository for the Reliable and Trustworthy AI project offered in Fall 2021 at ETH Zürich
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