pozapas/awesome-causal-ai
A meticulously curated collection of cutting-edge research, frameworks, and methodologies in Causal Artificial Intelligence.
This collection helps researchers and practitioners explore Causal AI, which goes beyond predicting 'what will happen' to understand 'what if we DO something?' It compiles cutting-edge research papers, open-source frameworks, and educational materials. The goal is to provide a comprehensive resource for anyone looking to apply causal reasoning to solve real-world problems in domains like healthcare, business strategy, and policy making.
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Use this if you need to understand the underlying 'why' behind observed data and want to make informed decisions that actively shape outcomes rather than just predicting them.
Not ideal if you are only interested in traditional predictive modeling without needing to uncover causal relationships or evaluate the impact of interventions.
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Sep 08, 2025
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