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New "50%" ARC result and current winners interviewed

Machine Learning Street Talk (MLST)

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Exploring Fluidity and Inductive Priors in Neural Networks

This chapter delves into the complexities of neural networks, highlighting their function as crystallized databases and examining generalization in deep learning. It also discusses inductive priors in transformers, the impact of data transformations on representation spaces, and the implications of active inference in measuring intelligence.

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