Gregorio, J; Duncan, P; Alsuleman, M; Chrubasik, M; Cieszynski, B; Desai, V; Hippolyte, J-L; Krishnadas, P; Lines, K; Miller, R; Peric, N; Whelan, H (2026) Data Quality Good Practice Guide. NPL Report. MS 63
Preview |
Text (NPL Report MS 63)
MS63.pdf - Published Version Download (4MB) | Preview |
Abstract
Data quality underpins effective decision-making across multiple domains of application. As organisations increasingly rely on digital systems, from analytical pipelines and digital twins to regulatory reporting platforms, the consequences of poor-quality data become more pronounced. This guide provides good practice guidance for understanding and assessing data quality, grounded in established international standards and informed by practical applications across diverse domains.
| Item Type: | Report/Guide (NPL Report) |
|---|---|
| NPL Report No.: | MS 63 |
| Keywords: | data quality; data model; data quality dimensions; data traceability; confidence in data; data metrology; data uncertainty; data structures; big data; IoT; data quality frameworks; data management; data regulations; data governance; TDQM; ISO 8000; ISO 25012; DAMA DMBoK; ALCOA+ |
| Subjects: | Mathematics and Scientific Computing > Modelling |
| Divisions: | Data Science |
| Identification number/DOI: | 10.47120/npl.MS63 |
| Last Modified: | 20 Mar 2026 13:19 |
| URI: | https://eprintspublications.npl.co.uk/id/eprint/10337 |
![]() |
Tools
Tools