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Big Data and Information Analytics (BDIA)
 

Big data collection and analysis for manufacturing organisations
Pages: 127 - 139, Issue 2, April 2017

doi:10.3934/bdia.2017002      Abstract        References        Full text (403.1K)           Related Articles

Pankaj Sharma - Department of Mechanical Engineering, Hauz Khas, Indian Institute of Technology Delhi, New Delhi, 110016, India (email)
David Baglee - Faculty of Applied Science, Department of Computing, Engineering and Technology, Industry Centre, Hylton Riverside, Sunderland, United Kingdom (email)
Jaime Campos - Department of Informatics, Linnaeus University, SE-351 95 Växjö, Sweden (email)
Erkki Jantunen - VTT Technical Research Centre of Finland, P.O.Box 1000, FI-02044 VTT, Finland (email)

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