基于HLS的群体智能驱动的优化硬件IP核,用于基于线性回归的机器学习

A. Sengupta, Rahul Chaurasia, Mahendra Rathor
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引用次数: 0

摘要

线性回归(LR)作为机器学习(ML)的基本模型之一,在基于许多数据点的训练阶段会产生大量的数据处理。考虑到LR模型的计算密集型性质,优化的专用硬件IP核设计可能非常有效。本文提出了以下新颖之处:(a)使用高层次综合(high - level synthesis, HLS)优化了基于线性回归的机器学习模型的硬件IP核心设计。更具体地说,本文介绍了用于计算LR - ML中最优偏差和截距以及成本函数的硬件IP的独立应用特定数据路径架构;(b)从相应的数学基础推导出基于LR的ML模型的依赖图,优化了基于LR的ML模型的硬件IP核设计;(c)基于LR的优化ML硬件IP核的寄存器传输电平(RTL)设计,使用HLS计算成本函数;(d)利用多层树高变换(THT)和基于群智能的建筑探索优化HLS设计的线性回归IP核心设计。
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HLS‐based swarm intelligence driven optimized hardware IP core for linear regression‐based machine learning
Linear Regression (LR), as one of the essential Machine Learning (ML) models, incurs massive data crunching during the training phase based on many data points. Considering the computationally intensive nature in the LR models, an optimized dedicated hardware IP core design can be very effective. This paper proposes the following novelties: (a) an optimized hardware IP core design of linear regression‐based machine learning model using high‐level synthesis (HLS). More specifically, independent application specific datapath architectures of hardware IP for computing optimal bias and intercepts and cost function in LR‐ML are presented here; (b) an optimized hardware IP core design of LR based ML model by deducing dependency graph from its corresponding mathematical foundation; (c) register transfer level (RTL) design, using HLS, of the optimized LR based ML hardware IP core for computing cost function; (d) linear regression IP core design using multi‐layered tree‐height transformation (THT) and swarm intelligence based architectural exploration for optimized HLS design.
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