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Performance Comparison of Bitcoin Prediction in Big Data Environment

机译:大数据环境中比特币预测的性能比较

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In today's world, everything is transforming to digital forms. These yield large amount of data. A good analysis of these data can lead to new knowledge about the present situation as well as the future insight. While many advantages could be obtained from these large data, the issue on how to run the Machine Learning on a large dataset as effective and efficient as possible remains an open problem. In this paper, data processing simulation using machine learning algorithm ofLinear Regression is conducted to learn from Bitcoin trading dataset. The simulation is carried out in Apache Spark cluster architecture and GPU. The running time and error of the algorithm implementation in both architectures are compared with each other. The simulation results show similar error performance between Apache Spark cluster and GPU. Yet, Apache Spark can run the simulation faster than GPU.
机译:在当今世界,一切都在转变为数字形式。这些产生大量数据。对这些数据进行良好的分析可以带来有关当前状况以及对未来的见识的新知识。尽管可以从这些大数据中获得许多优势,但是如何在尽可能大的数据集上运行机器学习的问题仍然是一个悬而未决的问题。本文采用线性回归的机器学习算法进行数据处理仿真,以从比特币交易数据集中学习。该模拟是在Apache Spark集群体系结构和GPU中进行的。将两种架构中算法实现的运行时间和错误进行了比较。仿真结果表明,Apache Spark集群和GPU之间的错误性能相似。但是,Apache Spark可以比GPU更快地运行模拟。

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