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- sidebar_position: 2
- slug: /construct_knowledge_graph
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- # Construct knowledge graph
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- Generate a knowledge graph for your knowledge base.
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- ---
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- To enhance multi-hop question-answering, RAGFlow adds a knowledge graph construction step between data extraction and indexing, as illustrated below. This step creates additional chunks from existing ones generated by your specified chunk method.
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- As of v0.16.0, RAGFlow supports constructing a knowledge graph on a knowledge base, allowing you to construct a *unified* graph across multiple files within your knowledge base. When a newly uploaded file starts parsing, the generated graph will automatically update.
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- :::danger WARNING
- Constructing a knowledge graph requires significant memory, computational resources, and tokens.
- :::
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- ## Scenarios
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- Knowledge graphs are especially useful for multi-hop question-answering involving *nested* logic. They outperform traditional extraction approaches when you are performing question answering on books or works with complex entities and relationships.
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- ## Prerequisites
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- The system's default chat model is used to generate knowledge graph. Before proceeding, ensure that you have a chat model properly configured:
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- ## Configurations
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- ### Entity types (*Required*)
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- The types of the entities to extract from your knowledge base. The default types are: **organization**, **person**, **event**, and **category**. Add or remove types to suit your specific knowledge base.
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- ### Method
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- The method to use to construct knowledge graph:
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- - **General**: Use prompts provided by [GraphRAG](https://github.com/microsoft/graphrag) to extract entities and relationships.
- - **Light**: (Default) Use prompts provided by [LightRAG](https://github.com/HKUDS/LightRAG) to extract entities and relationships. This option consumes fewer tokens, less memory, and fewer computational resources.
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- ### Entity resolution
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- Whether to enable entity resolution. You can think of this as an entity deduplication switch. When enabled, the LLM will combine similar entities - e.g., '2025' and 'the year of 2025', or 'IT' and 'Information Technology' - to construct a more effective graph.
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- - (Default) Disable entity resolution.
- - Enable entity resolution. This option consumes more tokens.
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- ### Community report generation
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- In a knowledge graph, a community is a cluster of entities linked by relationships. You can have the LLM generate an abstract for each community, known as a community report. See [here](https://www.microsoft.com/en-us/research/blog/graphrag-improving-global-search-via-dynamic-community-selection/) for more information. This indicates whether to generate community reports:
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- - Generate community reports. This option consumes more tokens.
- - (Default) Do not generate community reports.
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- ## Procedure
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- 1. On the **Configuration** page of your knowledge base, switch on **Extract knowledge graph** or adjust its settings as needed, and click **Save** to confirm your changes.
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- - *The default knowledge graph configurations for your knowledge base are now set and files uploaded from this point onward will automatically use these settings during parsing.*
- - *Files parsed before this update will retain their original knowledge graph settings.*
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- 2. The knowledge graph of your knowledge base does *not* automatically update *until* a newly uploaded file is parsed.
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- _A **Knowledge graph** entry appears under **Configuration** once a knowledge graph is created._
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- 3. Click **Knowledge graph** to view the details of the generated graph.
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- ## Frequently asked questions
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- ### Can I have different knowledge graph settings for different files in my knowledge base?
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- Yes, you can. Just one graph is generated per knowledge base. The smaller graphs of your files will be *combined* into one big, unified graph at the end of the graph extraction process.
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- ### Does the knowledge graph automatically update when I remove a related file?
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- Nope. The knowledge graph does *not* automatically update *until* a newly uploaded graph is parsed.
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- ### How to remove a generated knowledge graph?
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- To remove the generated knowledge graph, delete all related files in your knowledge base. Although the **Knowledge graph** entry will still be visible, the graph has actually been deleted.
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