基于FPGA的深度学习预测过程加速器

Qi Yu, Chao Wang, Xiang Ma, Xi Li, Xuehai Zhou
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引用次数: 54

摘要

最近,机器学习在应用程序和云服务中得到了广泛的应用。而深度学习作为机器学习的新兴领域,在解决复杂学习问题方面表现出了出色的能力。为了给用户更好的体验,深度学习应用的高性能实现显得非常重要。FPGA作为一种常用的算法加速手段,具有高性能、低功耗、体积小等特点。与Core 2 CPU 2.3GHz相比,我们的加速器可以取得很好的效果。
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A Deep Learning Prediction Process Accelerator Based FPGA
Recently, machine learning is widely used in applications and cloud services. And as the emerging field of machine learning, deep learning shows excellent ability in solving complex learning problems. To give users better experience, high performance implementations of deep learning applications seem very important. As a common means to accelerate algorithms, FPGA has high performance, low power consumption, small size and other characteristics. So we use FPGA to design a deep learning accelerator, the accelerator focuses on the implementation of the prediction process, data access optimization and pipeline structure. Compared with Core 2 CPU 2.3GHz, our accelerator can achieve promising result.
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