深度学习的低精度策略:一个高能物理生成对抗网络用例

F. Rehm, S. Vallecorsa, V. Saletore, Hans Pabst, Adel Chaibi, V. Codreanu, K. Borras, D. Krücker
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引用次数: 12

摘要

通过取代传统的蒙特卡罗模拟,深度学习正在进入高能物理领域。然而,深度学习仍然需要大量的计算资源。使深度学习更有效的一种有前途的方法是量化神经网络的参数以降低精度。低精度计算在现代深度学习中得到了广泛的应用,其结果是降低了执行推理时间,减少了内存占用和内存带宽。本文分析了低精度推理对复杂深度生成对抗网络模型的影响。我们正在处理的用例是基于加速器的高能物理中亚原子粒子相互作用的量热计探测器模拟。我们采用英特尔低精度优化工具(iLoT)进行量化,并将结果与TensorFlow Lite的量化模型进行比较。在性能基准测试中,与初始的、未量化的模型相比,我们在英特尔硬件上获得了1.73倍的加速提升。使用不同的物理启发的自开发指标,我们验证了量化的iLoT模型与TensorFlow Lite模型相比,显示出更低的物理精度损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduced Precision Strategies for Deep Learning: A High Energy Physics Generative Adversarial Network Use Case
Deep learning is finding its way into high energy physics by replacing traditional Monte Carlo simulations. However, deep learning still requires an excessive amount of computational resources. A promising approach to make deep learning more efficient is to quantize the parameters of the neural networks to reduced precision. Reduced precision computing is extensively used in modern deep learning and results to lower execution inference time, smaller memory footprint and less memory bandwidth. In this paper we analyse the effects of low precision inference on a complex deep generative adversarial network model. The use case which we are addressing is calorimeter detector simulations of subatomic particle interactions in accelerator based high energy physics. We employ the novel Intel low precision optimization tool (iLoT) for quantization and compare the results to the quantized model from TensorFlow Lite. In the performance benchmark we gain a speed-up of 1.73x on Intel hardware for the quantized iLoT model compared to the initial, not quantized, model. With different physics-inspired self-developed metrics, we validate that the quantized iLoT model shows a lower loss of physical accuracy in comparison to the TensorFlow Lite model.
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