论文标题
HLS4ML物理应用的FPGA上的超低潜伏期复发性神经网络推断
Ultra-low latency recurrent neural network inference on FPGAs for physics applications with hls4ml
论文作者
论文摘要
复发性神经网络已被证明是高能量物理中许多任务的有效架构,因此已被广泛采用。但是,由于在现场可编程栅极阵列(FPGA)上实现经常性体系结构的困难,它们在低延迟环境中的使用受到了限制。在本文中,我们介绍了HLS4ML框架内两种类型的复发神经网络层 - 长期短期内存和封闭式复发单元。我们证明,我们的实施能够为小型和大型模型生产有效的设计,并且可以自定义以满足推理潜伏期和FPGA资源的特定设计要求。我们显示了多个神经网络的性能和合成设计,其中许多是专门针对CERN大型强子对撞机的喷气识别任务的培训。
Recurrent neural networks have been shown to be effective architectures for many tasks in high energy physics, and thus have been widely adopted. Their use in low-latency environments has, however, been limited as a result of the difficulties of implementing recurrent architectures on field-programmable gate arrays (FPGAs). In this paper we present an implementation of two types of recurrent neural network layers -- long short-term memory and gated recurrent unit -- within the hls4ml framework. We demonstrate that our implementation is capable of producing effective designs for both small and large models, and can be customized to meet specific design requirements for inference latencies and FPGA resources. We show the performance and synthesized designs for multiple neural networks, many of which are trained specifically for jet identification tasks at the CERN Large Hadron Collider.