wangjiezju1988/kgqa
1.4亿通用知识图谱问答
This project provides a comprehensive guide to building a platform that can answer questions using a vast knowledge graph. It takes unstructured data with entities, attributes, and relationships as input, processes it into a structured graph database, and outputs direct answers to user queries. This is ideal for anyone who needs to quickly extract specific information from a large collection of general knowledge.
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Use this if you want to create a system that can understand natural language questions and provide precise answers from a large dataset of facts and relationships.
Not ideal if your data is highly specialized or proprietary and not suitable for a general-purpose knowledge graph.
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Aug 10, 2020
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