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Big data and Smart data: two interdependent and synergistic digital policies within a virtuous data exploitation loop

Author

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  • Jean-Sébastien Lacam

    (ESSCA - Ecole Supérieure des Sciences Commerciales d'Angers, CleRMa - Clermont Recherche Management - ESC Clermont-Ferrand - École Supérieure de Commerce (ESC) - Clermont-Ferrand - UCA - Université Clermont Auvergne)

  • David Salvetat

    (ESSCA - Ecole Supérieure des Sciences Commerciales d'Angers)

Abstract

This research examines for the first time the relationship between Big data and Smart data among French automotive distributors. Many low-tech firms engage in these data policies to improve their decisions and performance through the predictive capacities of their data. A discussion emerges in the literature according to which an effective policy lies in the conversion of a mass of raw data into so-called intelligent data. In order to understand better this digital transition, we question the transformation of data policies practiced in low-tech firms through the founding model of 3Vs (Volume, Variety and Velocity of data). First of all, this empirical study of 112 French automotive distributors develops the existing literature by proposing an original and detailed typology of the data policies practiced (Low data, Big data and Smart data). Secondly, after specifying the elements of the differences between the quantitative nature of Big data and the qualitative nature of Smart data, our results reveal and analyse for the first time the existence of their synergistic relationship. Companies transform their Big data approach into Smart data when they move from massive exploitation to intelligent exploitation of their data. The phenomenon is part of a high-end loop data exploitation. Initially, the exploitation of intelligent data can only be done by extracting a sample from a large raw data pool previously made by a Big data policy. Secondly, the organization's raw data pool is in turn enriched by the repayment of contributions made by the Smart data approach. Thus, this study develops three important ways. First off, we identify, detail and compare the current data policies of a traditional industry. Secondly, we reveal and explain the evolution of digital practices within organizations that now combine both quantitative and qualitative data exploitation. Finally, our results guide decision-makers towards the synergistic and the legitimate association of different forms of data management for better performance.

Suggested Citation

  • Jean-Sébastien Lacam & David Salvetat, 2021. "Big data and Smart data: two interdependent and synergistic digital policies within a virtuous data exploitation loop," Post-Print hal-03434863, HAL.
  • Handle: RePEc:hal:journl:hal-03434863
    DOI: 10.1016/j.hitech.2021.100406
    Note: View the original document on HAL open archive server: https://hal.science/hal-03434863
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    References listed on IDEAS

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    1. Wang, Gang & Gunasekaran, Angappa & Ngai, Eric W.T. & Papadopoulos, Thanos, 2016. "Big data analytics in logistics and supply chain management: Certain investigations for research and applications," International Journal of Production Economics, Elsevier, vol. 176(C), pages 98-110.
    2. Frank Brulhart & Btissam Moncef, 2010. "L’impact des pratiques de Supply Chain Management sur la performance de l’entreprise," Revue Finance Contrôle Stratégie, revues.org, vol. 13(1), pages 33-66., March.
    3. Bag, Surajit & Pretorius, Jan Ham Christiaan & Gupta, Shivam & Dwivedi, Yogesh K., 2021. "Role of institutional pressures and resources in the adoption of big data analytics powered artificial intelligence, sustainable manufacturing practices and circular economy capabilities," Technological Forecasting and Social Change, Elsevier, vol. 163(C).
    4. Ritu Agarwal & Vasant Dhar, 2014. "Editorial —Big Data, Data Science, and Analytics: The Opportunity and Challenge for IS Research," Information Systems Research, INFORMS, vol. 25(3), pages 443-448, September.
    5. Claudio Vitari & Elisabetta Raguseo, 2016. "Big data value and financial performance: an empirical investigation [Digital data, dynamic capability and financial performance: an empirical investigation in the era of Big Data]," Post-Print halshs-01923271, HAL.
    6. Nicky J. Welton & Howard H. Z. Thom, 2015. "Value of Information," Medical Decision Making, , vol. 35(5), pages 564-566, July.
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    1. Marco Vacchi & Cristina Siligardi & Erika Iveth Cedillo-González & Anna Maria Ferrari & Davide Settembre-Blundo, 2021. "Industry 4.0 and Smart Data as Enablers of the Circular Economy in Manufacturing: Product Re-Engineering with Circular Eco-Design," Sustainability, MDPI, vol. 13(18), pages 1-20, September.

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    Keywords

    Big data; Smart data; volume; velocity; variety; automotive distribution;
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