基于开放神经网络格式的机器学习模型转换与推理

Seon-Min Kim, Byunghyun Han, Junyeong Heo
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引用次数: 0

摘要

近年来,随着学术兴趣的增加,人工智能技术已被引入各个领域,各种机器学习模型已在各种框架下运行。然而,这些框架具有不同的数据格式,缺乏互操作性,为了克服这一问题,提出了开放神经网络交换格式ONNX。在本文中,我们描述了如何将多个机器学习模型转换为ONNX,并提出了可以确定集成ONNX格式的机器学习技术的算法和推理系统。此外,我们比较了ONNX转换前后模型的推理结果,表明ONNX转换之间的学习结果没有损失或性能下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Transformation and Inference of Machine Learning using Open Neural Network Format
Recently artificial intelligence technology has been introduced in various fields and various machine learning models have been operated in various frameworks as academic interest has increased. However, these frameworks have different data formats, which lack interoperability, and to overcome this, the open neural network exchange format, ONNX, has been proposed. In this paper we describe how to transform multiple machine learning models to ONNX, and propose algorithms and inference systems that can determine machine learning techniques in an integrated ONNX format. Furthermore we compare the inference results of the models before and after the ONNX transformation, showing that there is no loss or performance degradation of the learning results between the ONNX transformation.
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