Learning GenAI via SOTA Papers
Title: Memory-Efficient Looped Transformer: Decoupling Compute from Memory in Looped Language Models Source: http://arxiv.org/abs/2605.07721v1 Summary: This paper introduces a novel architectural primitive that decouples reasoning depth from memory consumption in looped language models, enabling constant-memory iterative reasoning. By sharing a single KV cache across loops via a learnable gating mechanism, it provides a foundational efficiency breakthrough for models performing multi-step computation in embedding space.
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