Auto-filling the GDPR readiness checklist by querying the compliance graph. Underlying technologies are RDF/OWL/SPARQL for the creation and querying of the compliance graph.

Harshvardhan Pandit 2401d108cb added GDPR readiness checklist HTML 6 years ago
demo 2401d108cb added GDPR readiness checklist HTML 6 years ago
sparql d78b661c9c dashboard commit 6 years ago
.gitignore d78b661c9c dashboard commit 6 years ago
LICENSE 12a739df34 Initial commit 6 years ago
README.md 326be7b005 added notes, acknowledgement, license 6 years ago
inferred.owl 2401d108cb added GDPR readiness checklist HTML 6 years ago
remove_owl_data.py d78b661c9c dashboard commit 6 years ago
removed.ttl 2401d108cb added GDPR readiness checklist HTML 6 years ago
shoppingapp.owl d78b661c9c dashboard commit 6 years ago

README.md

GDPR-readiness-checklist-usecase

Available Online

The Data Protection Commissioner of Ireland (DPC Ireland) has put forth a GDPR readiness checklist (GDPR-RC) [1] that consists of a spreadsheet meant to be filled to assess and help in GDPR readiness. This research aims to demonstrate how this information can be (semi-)automatically filled based on querying a compliance graph containing the required information. The research is primarily focused on provenance information (metadata), and uses the GDPR-RC as a demonstrative use-case of compliance-graph querying. Metadata is stored as RDF/OWL using the previously published GDPRov [2] and GDPRtEXT [3] vocabularies. Querying is done using SPARQL. The development environment for this work is primarily Protege, with the webapp using flask+rdflib.

[1] http://gdprandyou.ie/

[2] http://openscience.adaptcentre.ie/projects/CDMM/GDPRov/

[3] http://openscience.adaptcentre.ie/projects/GDPRtEXT/