KG_RAG
K
KG RAG
Overview :
KG-RAG is a task-agnostic framework that combines the explicit knowledge from a knowledge graph with the implicit knowledge of a large language model. Here, we utilize a massive biomedical knowledge graph SPOKE as the provider of biomedical context. A key feature of KG-RAG is its ability to extract 'prompt-relevant context' from the SPOKE knowledge graph, defined as the minimal context required to respond to a user prompt.
Target Users :
Processes knowledge-intensive natural language processing tasks, such as question answering, summarization, and text generation.
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Use Cases
Given the prompt 'What is the function of gene P53', retrieve P53-related knowledge from the knowledge graph and return text explaining the function of the P53 gene.
Given a drug name prompt, retrieve knowledge from the knowledge graph regarding the drug's mechanism of action and generate a summary of its effects.
Given a symptom description prompt, retrieve relevant entities and relations from the knowledge graph related to the symptom and generate a diagnosis report.
Features
Extracts knowledge graph context relevant to the prompt
Empowers general-purpose language models by incorporating domain-specific context
Supports GPT and Llama models
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