Generative Artificial Intelligence Delegation Taxonomy
github.com/panbibliotekar/gaidet-declarationThe Generative Artificial Intelligence Delegation Taxonomy (GAIDeT) assigns identifiers to contributor roles as an extension to the Contributor Roles Taxonomy (CRediT) to support promoting transparency and accountability in academic publishing when AI contribtors are involved in research. It is operationalized in the [GAIDeT Declaration Generator](https://panbibliotekar.github.io/gaidet-declaration/), an interactive tool for researchers to disclose the delegation of tasks to generative AI (GAI) tools in accordance with the GAIDeT taxonomy.
Sourced from
- Bioregistry — gaidet
- GitHub — github.com/panbibliotekar/gaidet-declaration
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