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Nanosecond machine learning regression with deep boosted decision trees in FPGA for high energy physics

机译:Nanosecond machine learning regression with deep boosted decision trees in FPGA for high energy physics

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We present a novel application of the machine learning / artificial intelligence method called boosted decision trees to estimate physical quantities on field programmable gate arrays (FPGA). The software package fwXmachina features a new architecture called parallel decision paths that allows for deep decision trees with arbitrary number of input variables. It also features a newoptimization scheme to use different numbers of bits for each input variable, which produces optimal physics results and ultraefficient FPGA resource utilization. Problems in high energy physics of proton collisions at the Large Hadron Collider (LHC) are considered. Estimation of missing transverse momentum (E_T~(miss)) at the first level trigger system at the High LuminosityLHC(HL-LHC) experiments, with a simplified detector modeled by Delphes, is used to benchmark and characterize the firmware performance. The firmware implementation with a maximum depth of up to 10 using eight input variables of 16-bit precision gives a latency value of O(10) ns, independent of the clock speed, and O(0.1)% of the available FPGA resources without using digital signal processors.
机译:我们提出一个新的应用程序的机器学习/人工智能方法提高了决策树来估计物理数量在现场可编程门阵列(FPGA)。一个叫做并行决策路径的新架构这允许深决策树任意数量的输入变量。功能newoptimization计划使用为每个输入不同数量的比特变量,并产生最佳的物理结果和ultraefficient FPGA资源利用率。高能物理问题的质子在大型强子对撞机(LHC)碰撞考虑。动量(E_T ~(小姐))在第一电平触发系统在高LuminosityLHC (HL-LHC)实验中,用简化的探测器建模德尔菲,用于基准和描述固件的性能。实现最大深度为10使用8个输入变量的16位精度给出了O(10)的延迟值ns,独立的时钟速度,O(0.1) %的可用不使用数字信号FPGA资源处理器。

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