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#137 Causal AI & Generative Models, with Robert Ness

Learning Bayesian Statistics

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Causal Thinking in AI Deployment

This chapter explores the significance of causal thinking in the deployment of large language models, addressing the absence of embedded causal assumptions in current architectures. It discusses the use of causal inference techniques post-deployment while emphasizing the challenges of scalability and decision-making under uncertainty. Additionally, the chapter highlights resources for learning about causal AI and the future aspirations for enhancing reasoning capabilities in complex systems.

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