Timeline
LLMs spontaneously develop human-like brain regions for language, math, physics, and social reasoning, as reported by @LiorOnAI.
Paper (2604.20065) argues LLM agents will reshape personalization, proposing 'governable personalization'.
Columbia professor publishes argument that LLMs are fundamentally limited for scientific discovery due to their interpolation-based architecture.
Research paper on SMTPO framework for conversational recommender systems posted to arXiv
New mechanistic studies confirm LLMs exhibit sycophancy as core reasoning behavior, not a superficial bug
Research shows LLMs can de-anonymize users from public data trails, breaking traditional anonymity assumptions
Researchers proposed training framework for formal counterexample generation in Lean 4, addressing neglected skill in mathematical AI.