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Machine learning for large scale manufacturing data with limited information

机译:信息有限的大规模制造数据的机器学习

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Improving the efficiency of the production plants has always been focus of manufacturing industry. Recently the utilization of data analytics tool is dramatically increased since these methods bring new insights into already existing data. Nevertheless, manufacturing industry in general is still reluctant to make the data available to researcher due to privacy issues. One such example is the challenge sponsored by Bosch and run by kaggle.com, where anonymized data was made available to data scientist with very limited description. In this work, we present our solution to the Bosch assembly line performance challenge, specifically in respect to dealing with raw big data without detailed explanation. The data science methods applied were used to successfully predict internal failures along the assembly lines, although no details of the structure and line description was available.
机译:提高生产设备的效率一直是制造业关注的焦点。最近,由于这些方法为现有数据带来了新见解,因此数据分析工具的利用率得到了极大提高。然而,由于隐私问题,制造业总体上仍然不愿意将数据提供给研究人员。一个这样的例子就是由博世(Bosch)发起,由kaggle.com运营的挑战,其中匿名数据提供给数据科学家的描述非常有限。在这项工作中,我们提出了针对博世装配线性能挑战的解决方案,特别是在处理原始大数据方面,没有详细说明。尽管没有详细的结构和生产线描述,但使用的数据科学方法已成功地预测了装配线内部的故障。

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