| Literature DB >> 33897083 |
Mujahid Mohiuddin Babu1, Mahfuzur Rahman2, Ashraful Alam3, Bidit Lal Dey4.
Abstract
Although innovation from analytics is surging in the manufacturing sector, the understanding of the data-driven innovation (DDI) process remains a challenge. Drawing on a systematic literature review, thematic analysis and qualitative interview findings, this study presents a seven-step process to understand DDI in the context of the UK manufacturing sector. The findings discuss the significance of critical seven-step in DDI, ranging from conceptualisation to commercialisation of innovative data products. The results reveal that the steps in DDI are sequential, but they are all interlinked. The proposed seven-step DDI process with solid evidence from the UK manufacturing and research implications based on dynamic capability theory, institutional theory and TOE framework establish the building blocks for future studies and industry practice.Entities:
Keywords: Big data analytics; Data governance; Data products; Data-driven innovation (DDI)
Year: 2021 PMID: 33897083 PMCID: PMC8058601 DOI: 10.1007/s10479-021-04077-1
Source DB: PubMed Journal: Ann Oper Res ISSN: 0254-5330 Impact factor: 4.854
Fig. 1Conceptual framework of how DDI
| Count (n = 23) | Count (n = 23) | ||
|---|---|---|---|
| 35–40 years | 12 | Male | 19 |
| 41–45 years | 3 | Female | 4 |
| 46–50 years | 5 | ||
| Over 50 years | 3 | Below 6 years | 3 |
| 6–10 years | 8 | ||
| Construction equipment | 2 | 11–15 years | 8 |
| Aerospace | 2 | Over 15 years | 4 |
| Automotive | 4 | ||
| Electronics and electrical | 2 | Postgraduate | 18 |
| Chemical | 1 | Doctorate | 5 |
| Textile | 4 | ||
| Manufacturing consultancy | 2 | Manager | 7 |
| Pharmaceutical | 1 | Middle management level | 11 |
| Information technology | 2 | Senior Management level | 5 |
| Food and beverages | 1 | ||
| Industrial engineering | 2 |
| Research themes | Theory driven | Data driven |
|---|---|---|
| Technology in manufacturing innovation | Manufacturing and operational technologies for innovation | AI, BDA, IoT, computer-based software and applications for managing volume of data, data sharing services |
| Role of BDA in facilitating data driven innovation | Steps of DDI process: Conceptualization, refinement, application, Feedback | Pre-conceptualization, dynamic capability |
| Challenges and outcome of BDA in manufacturing system | Infrastructural, Management and Resources | Resources availability, Skilled people, Management Policy, Integration of organization’s view, Automation, Operational Efficiency, innovative outcomes and environmental issues |