Performance Evaluation of gcForest inferencing on multi-core CPU and FPGA

P. Manavar, Sharyu Vijay Mukhekar, M. Nambiar
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Abstract

Decision forests have proved to be useful in machine learning tasks. gcForest is a model that leverages ensembles of decision forests for classification. It combines several decision forests and by adding properties and layered architecture in such a way that it has been proven to give competitive results compared to convolutional neural networks. This paper analyzes the performance of a gcForest model trained on the MNIST digit classification data set on a multi-core CPU based system. Using a performance model-based approach it also presents an analysis of performance on a well-endowed FPGA accelerator card for the same model. It is concluded that the multi-core CPU system can deliver more throughput than the FPGA with batched workload, while the FPGA offers lower latency for a single inference. We also analyze the scalability of the gcForest model on the multi-core server system and with the help of experiments and models, uncover ways to improve the scalability.
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gcForest推理在多核CPU和FPGA上的性能评估
决策森林已被证明在机器学习任务中很有用。gcForest是一个利用决策森林集合进行分类的模型。它结合了几个决策森林,并通过添加属性和分层架构,这种方式已被证明可以提供与卷积神经网络相比具有竞争力的结果。本文分析了基于MNIST数字分类数据集训练的gcForest模型在多核CPU系统上的性能。使用基于性能模型的方法,本文还对相同模型的高性能FPGA加速卡进行了性能分析。结果表明,在处理批处理工作负载时,多核CPU系统比FPGA提供更高的吞吐量,而FPGA在单个推理时提供更低的延迟。本文还分析了gcForest模型在多核服务器系统上的可扩展性,并结合实验和模型,揭示了提高可扩展性的方法。
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