12min chapter

Machine Learning Street Talk (MLST) cover image

New "50%" ARC result and current winners interviewed

Machine Learning Street Talk (MLST)

CHAPTER

Reasoning and Inductive Priors in Language Models

Exploring the role of reasoning in language models and machine learning, this chapter discusses reasoning in data generation, inductive priors in language models, permutation symmetry transformations in transformers, and hybrid approaches with different symmetries. It also touches on challenges in implicit versus post hoc reasoning for model intelligence, active inference to deal with real-world complexity, and the importance of reasoning in the moment for model improvement. Interviews with ARC Challenge winners further highlight insights into data generation, language model fine-tuning, and the importance of data density in deep learning models.

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