Auditable and reusable crosswalks for fast, scaled integration of scattered tabular data (2409.01517v1)
Abstract: This paper presents an open-source curatorial toolkit intended to produce well-structured and interoperable data. Curation is divided into discrete components, with a schema-centric focus for auditable restructuring of complex and scattered tabular data to conform to a destination schema. Task separation allows development of software and analysis without source data being present. Transformations are captured as high-level sequential scripts describing schema-to-schema mappings, reducing complexity and resource requirements. Ultimately, data are transformed, but the objective is that any data meeting a schema definition can be restructured using a crosswalk. The toolkit is available both as a Python package, and as a 'no-code' visual web application. A visual example is presented, derived from a longitudinal study where scattered source data from hundreds of local councils are integrated into a single database.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.