Published Dec 23, 2022
#92 - SARA HOOKER - Fairness, Interpretability, Language Models
Sara Hooker delves into the frontier of AI ethics, highlighting challenges in ensuring fairness and addressing bias in machine learning models. The discussion encapsulates the complexity of language models, emphasizing interpretability, adaptive computation, and the importance of aligning AI systems with human values.

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