Logforum
Wyższa Szkoła Logistyki
1895-2038
1734-459X
Impacts of big data analytics and absorptive capacity on sustainable supply chain innovation: a conceptual framework
ORIGINAL_ARTICLE
151-161
en
2018
14
2
Lineth
Rodriguez
Catherine Da
Cunha
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absorptive capacity, sustainable supply chain innovation, big data, predictive analytics
10.17270/J.LOG.267
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Anna
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Waldemar
Osmólski
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supply chain efficiency, dispersed supply chain, decision making process
10.17270/J.LOG.255
Proposal for new automation architecture solutions for Industry 4.0
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The efficiency of products classification methods and classification criteria
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