LGOct 16, 2025

First Attentions Last: Better Exploiting First Attentions for Efficient Transformer Training

arXiv:2510.14614v1h-index: 7
Originality Incremental advance
AI Analysis

This addresses efficiency bottlenecks for researchers and practitioners training large transformers, though it is incremental as it builds on existing transformer designs.

The paper tackles the communication overhead in training billion-scale transformers by proposing FAL, an efficient architecture that bypasses MHA-MLP connections, reducing multi-GPU training time by up to 44% and improving perplexity compared to baseline GPT.

As training billion-scale transformers becomes increasingly common, employing multiple distributed GPUs along with parallel training methods has become a standard practice. However, existing transformer designs suffer from significant communication overhead, especially in Tensor Parallelism (TP), where each block's MHA-MLP connection requires an all-reduce communication. Through our investigation, we show that the MHA-MLP connections can be bypassed for efficiency, while the attention output of the first layer can serve as an alternative signal for the bypassed connection. Motivated by the observations, we propose FAL (First Attentions Last), an efficient transformer architecture that redirects the first MHA output to the MLP inputs of the following layers, eliminating the per-block MHA-MLP connections. This removes the all-reduce communication and enables parallel execution of MHA and MLP on a single GPU. We also introduce FAL+, which adds the normalized first attention output to the MHA outputs of the following layers to augment the MLP input for the model quality. Our evaluation shows that FAL reduces multi-GPU training time by up to 44%, improves single-GPU throughput by up to 1.18x, and achieves better perplexity compared to the baseline GPT. FAL+ achieves even lower perplexity without increasing the training time than the baseline.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes