A. Massaro, A. Calicchio, Vincenzo Maritati, A. Galiano, V. Birardi, L. Pellicani, Maria Gutierrez Millan, Barbara Dalla Tezza, Mauro Bianchi, Guido Vertua, Antonello Puggioni
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The second part of the proposed study is related to the implementation of innovative algorithms based on a KNIME (Konstanz Information Miner) Gradient Boosted Trees workflow processing data of the communication system which travel into an Enterprise Service Bus (ESB) infrastructure. The goal of the paper is to prove that all the new KB collected into a Cassandra big data system could be processed through the ESB by predictive algorithms solving possible conflicts between hardware and software. The conflicts are due to the integration of different database technologies and data structures. In order to check the outputs of the Gradient Boosted Trees algorithm an experimental dataset suitable for machine learning testing has been tested. The test has been performed on a prototype network system modeling a part of the whole communication system. 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引用次数: 13
摘要
本文以一个案例进行分析。本案例研究是关于按照Frascati研究指南开发的工业通信系统的升级。行业知识库(KB)是通过不同的工具获得的,这些工具能够将不同格式和结构的数据和信息提供到连接到大数据的独特总线系统中。研究的最初部分侧重于战略工具的实施,这些工具能够升级知识库。本研究的第二部分涉及基于KNIME (Konstanz Information Miner)梯度提升树工作流的创新算法的实现,该工作流处理传输到企业服务总线(ESB)基础设施的通信系统数据。本文的目标是证明所有收集到Cassandra大数据系统中的新知识库都可以通过ESB进行处理,并通过预测算法解决硬件和软件之间可能存在的冲突。冲突是由于不同的数据库技术和数据结构的集成。为了检验梯度增强树算法的输出,对一个适合机器学习测试的实验数据集进行了测试。在一个原型网络系统上进行了测试,该系统是整个通信系统的一部分。本文展示了如何通过跟踪整个通信系统网络的完整设计和开发来验证工业研究,从而提高商业智能(BI)。
A Case Study of Innovation of an Information Communication System and Upgrade of the Knowledge Base in Industry by ESB, Artificial Intelligence, and Big Data System Integration
In this paper, a case study is analyzed. This case study is about an upgrade of an industry communication system developed by following Frascati research guidelines. The knowledge Base (KB) of the industry is gained by means of different tools that are able to provide data and information having different formats and structures into an unique bus system connected to a Big Data. The initial part of the research is focused on the implementation of strategic tools, which can able to upgrade the KB. The second part of the proposed study is related to the implementation of innovative algorithms based on a KNIME (Konstanz Information Miner) Gradient Boosted Trees workflow processing data of the communication system which travel into an Enterprise Service Bus (ESB) infrastructure. The goal of the paper is to prove that all the new KB collected into a Cassandra big data system could be processed through the ESB by predictive algorithms solving possible conflicts between hardware and software. The conflicts are due to the integration of different database technologies and data structures. In order to check the outputs of the Gradient Boosted Trees algorithm an experimental dataset suitable for machine learning testing has been tested. The test has been performed on a prototype network system modeling a part of the whole communication system. The paper shows how to validate industrial research by following a complete design and development of a whole communication system network improving business intelligence (BI).