cs.AI updates on arXiv.org 07月04日 12:08
Fast and Simplex: 2-Simplicial Attention in Triton
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本文探讨了2-简并Transformer在提高模型效率方面的潜力,通过在数学、编码、推理和逻辑任务上展示其优于标准Transformer的性能,证实了其在知识推理任务上的优势。

arXiv:2507.02754v1 Announce Type: cross Abstract: Recent work has shown that training loss scales as a power law with both model size and the number of tokens, and that achieving compute-optimal models requires scaling model size and token count together. However, these scaling laws assume an infinite supply of data and apply primarily in compute-bound settings. As modern large language models increasingly rely on massive internet-scale datasets, the assumption that they are compute-bound is becoming less valid. This shift highlights the need for architectures that prioritize token efficiency. In this work, we investigate the use of the 2-simplicial Transformer, an architecture that generalizes standard dot-product attention to trilinear functions through an efficient Triton kernel implementation. We demonstrate that the 2-simplicial Transformer achieves better token efficiency than standard Transformers: for a fixed token budget, similarly sized models outperform their dot-product counterparts on tasks involving mathematics, coding, reasoning, and logic. We quantify these gains by demonstrating that $2$-simplicial attention changes the exponent in the scaling laws for knowledge and reasoning tasks compared to dot product attention.

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2-简并Transformer 模型效率 知识推理
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