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Exploiting Posit Arithmetic for Deep Neural Networks in Autonomous Driving Applications

机译:在自动驾驶应用中利用深度神经网络的正算法

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This paper discusses the introduction of an integrated Posit Processing Unit (PPU) as an alternative to Floating-point Processing Unit (FPU) for Deep Neural Networks (DNNs) in automotive applications. Autonomous Driving tasks are increasingly depending on DNNs. For example, the detection of obstacles by means of object classification needs to be performed in real-time without involving remote computing. To speed up the inference phase of DNNs the CPUs on-board the vehicle should be equipped with co-processors, such as GPUs, which embed specific optimization for DNN tasks. In this work, we review an alternative arithmetic that could be used within the co-processor. We argue that a new representation for floating point numbers called Posit is particularly advantageous, allowing for a better trade-off between computation accuracy and implementation complexity. We conclude that implementing a PPU within the co-processor is a promising way to speed up the DNN inference phase.
机译:本文讨论了集成的Posit处理单元(PPU)的引入,以替代汽车应用中的深度神经网络(DNN)的浮点处理单元(FPU)。自动驾驶任务越来越依赖于DNN。例如,需要通过对象分类实时检测障碍物,而无需进行远程计算。为了加快DNN的推理阶段,车辆上的CPU应该配备协处理器,例如GPU,它们为DNN任务嵌入了特定的优化。在这项工作中,我们回顾了可以在协处理器中使用的替代算法。我们认为,称为Posit的浮点数的新表示形式特别有利,它可以在计算精度和实现复杂性之间取得更好的折衷。我们得出结论,在协处理器中实现PPU是加快DNN推理阶段的一种有前途的方法。

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