The scalability of large language models for long-context reasoning is severely constrained by the linear growth of their Transformer key-value cache, which incurs significant memory and computational costs. We posit that as a model generates reasoning tokens, the informational value of past generated tokens diminishes, creating an opportunity for compression. In this work, we propose to periodically compress the generation KV cache with a learned, special-purpose token and evict compressed entries. We train the model to perform this compression via a modified joint distillation and reinforcement learning (RL) framework. Our training method minimizes overhead over the conventional RL process, as it leverages RL outputs for distillation. Empirically, our method achieves a superior memory-accuracy Pareto frontier compared to both the model without cache compression and training-free compression techniques.
@article{arxiv.2510.13797,
title = {Breadcrumbs Reasoning: Memory-Efficient Reasoning with Compression Beacons},
author = {Giovanni Monea and Yair Feldman and Shankar Padmanabhan and Kianté Brantley and Yoav Artzi},
journal= {arXiv preprint arXiv:2510.13797},
year = {2025}
}