While LLMs can be trained for various domains, they may still require domain-specific data to overcome generic generalization strategies.
Effective solutions with LLMs rely on understanding ontology and entity definitions, enabling the capture of specific entities and properties.
Data annotation and enrichment are crucial steps in making LLMs more generic, but these processes require significant effort and resources.
The importance of domain knowledge is highlighted when training LLMs with a specific objective, necessitating the narrowing down of knowledge graphs for accurate answers.
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