面向大数据机器学习的领域特定语言初探

I. Portugal, P. Alencar, D. Cowan
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引用次数: 20

摘要

通常被称为大数据的数据的激增给传统的数据捕获、存储、分析和可视化方法带来了问题,从而开辟了新的研究领域。机器学习算法是大数据分析中使用的一个领域。然而,由于大数据带来的挑战,这些算法需要针对特定的应用进行调整和优化。软件工程师做出的一个重要决定是选择在实现这些算法时使用的语言。本文献调查确定并描述了用于大数据机器学习的特定领域语言和框架,旨在帮助软件工程师做出更明智的选择,并为初学者提供该领域使用的主要语言的概述。这是第一个旨在更好地理解机器学习领域特定语言如何被用作大数据研究工具的调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Preliminary Survey on Domain-Specific Languages for Machine Learning in Big Data
The proliferation of data often called Big Data has created problems with traditional approaches to data capture, storage, analysis and visualization, thus opening up new areas of research. Machine Learning algorithms are one area that has been used in Big Data for analysis. However, because of the challenges Big Data imposes, these algorithms need to be adapted and optimized to specific applications. One important decision made by software engineers is the choice of the language that is used in the implementation of these algorithms. This literature survey identifies and describes domain-specific languages and frameworks used for Machine Learning in Big Data with the intention of assisting software engineers in making more informed choices and providing beginners with an overview of the main languages used in this domain. This is the first survey that aims at better understanding how domain-specific languages for Machine Learning are used as a tool for research in Big Data.
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