Compare with the Traditional Heterogeneous Solution: Accelerate Neural Network Algorithm through Heterogeneous Integrated CPU+NPU Chip on Server

Xiancheng Lin, Xiangyu Zhou, Rongkai Liu, Xiang Gao
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Abstract

The increasing popularity of artificial intelligence (AI) requires the ability to process intensive data and efficient heterogeneous computing power. As a result, a heterogeneous integration scheme involving both central processing units (CPUs) and neural processing units (NPUs) has become increasingly prevalent in various edge terminals, such as mobile phones. Compared with traditional separated heterogeneous solutions, the integration scheme can effectively reduce the distance and number of data transmissions, thereby accelerating deep neural network (DNN) models and improving energy efficiency. Due to the low power requirements of cloud computing, heterogeneous integration solutions are beginning to be used in the design of processor architectures for servers. The TF16110 integrates NPUs into server CPUs, creating an efficient parallel computing solution for servers that lack GPUs or other AI acceleration devices. In this paper, we evaluate and analyze commonly used DNN models. Compared with NVIDIA’s TX2 GPU, the heterogeneous integrated CPU+NPU design can provide similar computational power and achieve 5x higher energy efficiency and 10x cost-effectiveness under the premise of ensuring accuracy
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与传统异构解决方案的比较:通过服务器上异构集成CPU+NPU芯片加速神经网络算法
人工智能(AI)的日益普及需要处理密集数据的能力和高效的异构计算能力。因此,涉及中央处理器(cpu)和神经处理单元(npu)的异构集成方案在各种边缘终端(如手机)中越来越普遍。与传统的分离异构解决方案相比,集成方案可以有效地减少数据传输的距离和次数,从而加快深度神经网络(DNN)模型的速度,提高能效。由于云计算的低功耗要求,异构集成解决方案开始用于服务器处理器架构的设计。TF16110将npu集成到服务器cpu中,为没有gpu或其他AI加速设备的服务器提供高效的并行计算解决方案。在本文中,我们评估和分析了常用的深度神经网络模型。与NVIDIA的TX2 GPU相比,异构集成的CPU+NPU设计可以提供类似的计算能力,并在保证精度的前提下实现5倍的能效和10倍的成本效益
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