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@fairintelligence

Fair Intelligence

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Research Causality Academic

🚀 Building Trustworthy AI Through Rigorous Research

Developing theoretical foundations and practical algorithms for fair, interpretable, and causally-grounded machine learning systems.


🎯 Our Mission

We are an academic research organization dedicated to advancing the science of AI Fairness and Causal Machine Learning. Our work bridges theoretical foundations with practical implementations, ensuring AI systems are equitable, transparent, and grounded in causal understanding.

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Fairness Metrics
Novel metrics for measuring and ensuring algorithmic fairness

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Causal Discovery
Algorithms for learning causal structures from data

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Fair Treatment
Counterfactual fairness and causal interventions

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Interpretability
Explainable AI through causal reasoning


🔬 Research Areas

⚖️ Fairness 🔗 Causality 🔍 Explainable AI
Algorithmic bias detection & mitigation Causal discovery & inference Interpretable ML models
Fair representation learning Counterfactual reasoning Transparent decision-making

👥 Research Members

Alex
Alex

RMIT VXLab
Bowen
Bowen

RMIT Race
Cyrus
Cyrus

RMIT Race
Patrick
Patrick

RMIT Race
Thilina
Thilina

RMIT VXLab
Ziqi
Ziqi

RMIT
Jing
Jing

RMIT

💡 Core Principles

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Equity
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Rigor
🌐
Openness
🤝
Collaboration
🎯
Impact
Fair AI for all Scientific excellence Open science Community first Real-world change

Fair Intelligence • Advancing Trustworthy AI Through Fairness & Causality Research

🌟 Star our repositories to support open research in AI fairness! 🌟

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  1. acps acps Public

    Official code: Debiasing Large Language Models via Adaptive Causal Prompting with Sketch-of-Thought

    Jupyter Notebook

  2. wurun wurun Public

    wurun the Manna Fum tree

    Python

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