dataprimarily
Dataprimarily is a neologism used in data science and artificial intelligence to describe an approach or stance that places data quality, coverage, and governance at the center of system design. In this usage, the performance and reliability of a model are seen as primarily determined by the data it is trained on and the processes used to curate, label, and audit that data, rather than by algorithmic novelty alone.
Practices associated with a dataprimarily approach include systematic data curation, bias mitigation, comprehensive data labeling standards,
Dataprimarily is closely related to the broader concept of data-centric AI, which contrasts with model-centric perspectives
Potential criticisms note that overemphasizing data without appropriate modeling considerations can overlook algorithmic advances or fail