AI RESEARCH

CSR: Infinite-Horizon Real-Time Policies with Massive Cached State Representations

arXiv CS.AI

ArXi:2605.07325v1 Announce Type: cross Deploying massive large language models (LLMs) as continuous cognitive engines for robotics is bottlenecked by the time-to-first-token (TTFT) latency required to process extensive state histories. Existing solutions like RAG or sliding windows compromise global context or incur prohibitive re-computation costs. We formalize the optimal task structure for minimizing latency and theoretically prove that prefix stability, incremental extensibility, and asynchronous state reconciliation are necessary conditions for real-time performance.