AI RESEARCH

ReasonOps: Operator Segmentation for LLM Reasoning Traces

arXiv CS.AI

ArXi:2605.29192v1 Announce Type: new Chain-of-thought traces from large reasoning models can span tens of thousands of tokens, yet we lack a vocabulary for describing their internal structure. Previous methods developed to analyze chain-of-thought traces are either too rigid or not expressive enough, failing to capture features across domains and models. To remedy this, we develop ReasonOps, an unsupervised, expressive method for annotating chain-of-thought traces, providing succinct universal operators.