Comments (1)
Thanks for the comment and the interest @alita-moore! Checking in derived products is one of these things we have a lot of internal discussions about.
The general paradigm of dual linkml yaml and pydantic is a standard one when we use our linkml.io framework. We love pydantic, but the yaml provides additional expressivity (for example, we have one source of truth for the schema, how to restrict enums/ontology terms on the terminal nodes).
Perhaps at some stage we will have things such that the pydantic is generated more dynamically but for now there is a lot of advantage like making things transparent for IDEs etc.
Glad you like the repo! 🙏
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