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Main Authors: Xia, Tianhua, Zhang, Sai Qian
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2311.13290
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author Xia, Tianhua
Zhang, Sai Qian
author_facet Xia, Tianhua
Zhang, Sai Qian
contents The attention mechanism is a pivotal element within the transformer architecture, making a substantial contribution to its exceptional performance. Within this attention mechanism, Softmax is an imperative component that enables the model to assess the degree of correlation between various segments of the input. Yet, prior research has shown that Softmax operations can significantly increase processing latency and energy consumption in the transformer network due to their internal nonlinear operations and data dependencies. In this work, we proposed Hyft, a hardware efficient floating point Softmax accelerator for both training and inference. Hyft aims to reduce the implementation cost of different nonlinear arithmetic operations within softmax by adaptively converting intermediate results into the most suitable numeric format for each specific operation, leading to reconfigurable accelerator with hybrid numeric format. The evaluation results highlight that Hyft achieves a remarkable 10x reduction in hardware resource utilization and a 6x reduction in processing latency, all while maintaining a negligible impact on transformer accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2311_13290
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Hyft: A Reconfigurable Softmax Accelerator with Hybrid Numeric Format for both Training and Inference
Xia, Tianhua
Zhang, Sai Qian
Hardware Architecture
The attention mechanism is a pivotal element within the transformer architecture, making a substantial contribution to its exceptional performance. Within this attention mechanism, Softmax is an imperative component that enables the model to assess the degree of correlation between various segments of the input. Yet, prior research has shown that Softmax operations can significantly increase processing latency and energy consumption in the transformer network due to their internal nonlinear operations and data dependencies. In this work, we proposed Hyft, a hardware efficient floating point Softmax accelerator for both training and inference. Hyft aims to reduce the implementation cost of different nonlinear arithmetic operations within softmax by adaptively converting intermediate results into the most suitable numeric format for each specific operation, leading to reconfigurable accelerator with hybrid numeric format. The evaluation results highlight that Hyft achieves a remarkable 10x reduction in hardware resource utilization and a 6x reduction in processing latency, all while maintaining a negligible impact on transformer accuracy.
title Hyft: A Reconfigurable Softmax Accelerator with Hybrid Numeric Format for both Training and Inference
topic Hardware Architecture
url https://arxiv.org/abs/2311.13290