feat: integrate nano-graphrag (#433)
* add nano graph-rag * ignore entities for relevant context reference * refactor and add local model as default nano-graphrag * feat: add kotaemon llm & embedding integration with nanographrag * fix: add env var for nano GraphRAG --------- Co-authored-by: Tadashi <tadashi@cinnamon.is>
This commit is contained in:
parent
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@ -19,6 +19,8 @@ COHERE_API_KEY=<COHERE_API_KEY>
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# settings for local models
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LOCAL_MODEL=llama3.1:8b
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LOCAL_MODEL_EMBEDDINGS=nomic-embed-text
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LOCAL_EMBEDDING_MODEL_DIM = 768
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LOCAL_EMBEDDING_MODEL_MAX_TOKENS = 8192
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# settings for GraphRAG
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GRAPHRAG_API_KEY=<YOUR_OPENAI_KEY>
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19
README.md
19
README.md
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@ -170,7 +170,22 @@ documents and developers who want to build their own RAG pipeline.
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### Setup GraphRAG
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> [!NOTE]
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> Currently GraphRAG feature only works with OpenAI or Ollama API.
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> Official MS GraphRAG indexing only works with OpenAI or Ollama API.
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> We recommend most users to use NanoGraphRAG implementation for straightforward integration with Kotaemon.
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<details>
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<summary>Setup Nano GRAPHRAG</summary>
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- Install nano-GraphRAG: `pip install nano-graphrag`
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- Launch Kotaemon with `USE_NANO_GRAPHRAG=true` environment variable.
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- Set your default LLM & Embedding models in Resources setting and it will be recognized automatically from NanoGraphRAG.
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</details>
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<details>
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<summary>Setup MS GRAPHRAG</summary>
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- **Non-Docker Installation**: If you are not using Docker, install GraphRAG with the following command:
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@ -181,6 +196,8 @@ documents and developers who want to build their own RAG pipeline.
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- **Setting Up API KEY**: To use the GraphRAG retriever feature, ensure you set the `GRAPHRAG_API_KEY` environment variable. You can do this directly in your environment or by adding it to a `.env` file.
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- **Using Local Models and Custom Settings**: If you want to use GraphRAG with local models (like `Ollama`) or customize the default LLM and other configurations, set the `USE_CUSTOMIZED_GRAPHRAG_SETTING` environment variable to true. Then, adjust your settings in the `settings.yaml.example` file.
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</details>
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### Setup Local Models (for local/private RAG)
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See [Local model setup](docs/local_model.md).
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@ -284,11 +284,43 @@ SETTINGS_REASONING = {
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},
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}
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USE_NANO_GRAPHRAG = config("USE_NANO_GRAPHRAG", default=False, cast=bool)
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GRAPHRAG_INDEX_TYPE = (
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"ktem.index.file.graph.GraphRAGIndex"
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if not USE_NANO_GRAPHRAG
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else "ktem.index.file.graph.NanoGraphRAGIndex"
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)
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KH_INDEX_TYPES = [
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"ktem.index.file.FileIndex",
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"ktem.index.file.graph.GraphRAGIndex",
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GRAPHRAG_INDEX_TYPE,
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]
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GRAPHRAG_INDEX = (
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{
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"name": "GraphRAG",
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"config": {
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"supported_file_types": (
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".png, .jpeg, .jpg, .tiff, .tif, .pdf, .xls, .xlsx, .doc, .docx, "
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".pptx, .csv, .html, .mhtml, .txt, .md, .zip"
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),
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"private": False,
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},
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"index_type": "ktem.index.file.graph.GraphRAGIndex",
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}
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if not USE_NANO_GRAPHRAG
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else {
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"name": "NanoGraphRAG",
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"config": {
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"supported_file_types": (
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".png, .jpeg, .jpg, .tiff, .tif, .pdf, .xls, .xlsx, .doc, .docx, "
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".pptx, .csv, .html, .mhtml, .txt, .md, .zip"
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),
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"private": False,
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},
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"index_type": "ktem.index.file.graph.NanoGraphRAGIndex",
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}
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)
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KH_INDICES = [
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{
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"name": "File",
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@ -301,15 +333,5 @@ KH_INDICES = [
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},
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"index_type": "ktem.index.file.FileIndex",
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},
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{
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"name": "GraphRAG",
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"config": {
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"supported_file_types": (
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".png, .jpeg, .jpg, .tiff, .tif, .pdf, .xls, .xlsx, .doc, .docx, "
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".pptx, .csv, .html, .mhtml, .txt, .md, .zip"
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),
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"private": False,
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},
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"index_type": "ktem.index.file.graph.GraphRAGIndex",
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},
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GRAPHRAG_INDEX,
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]
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@ -1,3 +1,4 @@
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from .graph_index import GraphRAGIndex
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from .nano_graph_index import NanoGraphRAGIndex
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__all__ = ["GraphRAGIndex"]
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__all__ = ["GraphRAGIndex", "NanoGraphRAGIndex"]
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26
libs/ktem/ktem/index/file/graph/nano_graph_index.py
Normal file
26
libs/ktem/ktem/index/file/graph/nano_graph_index.py
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@ -0,0 +1,26 @@
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from typing import Any
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from ..base import BaseFileIndexRetriever
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from .graph_index import GraphRAGIndex
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from .nano_pipelines import NanoGraphRAGIndexingPipeline, NanoGraphRAGRetrieverPipeline
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class NanoGraphRAGIndex(GraphRAGIndex):
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def _setup_indexing_cls(self):
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self._indexing_pipeline_cls = NanoGraphRAGIndexingPipeline
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def _setup_retriever_cls(self):
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self._retriever_pipeline_cls = [NanoGraphRAGRetrieverPipeline]
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def get_retriever_pipelines(
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self, settings: dict, user_id: int, selected: Any = None
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) -> list["BaseFileIndexRetriever"]:
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_, file_ids, _ = selected
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retrievers = [
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NanoGraphRAGRetrieverPipeline(
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file_ids=file_ids,
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Index=self._resources["Index"],
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)
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]
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return retrievers
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380
libs/ktem/ktem/index/file/graph/nano_pipelines.py
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380
libs/ktem/ktem/index/file/graph/nano_pipelines.py
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import asyncio
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import glob
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import logging
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import os
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import re
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from pathlib import Path
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from typing import Generator
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import numpy as np
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import pandas as pd
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from ktem.db.models import engine
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from ktem.embeddings.manager import embedding_models_manager as embeddings
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from ktem.llms.manager import llms
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from sqlalchemy.orm import Session
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from theflow.settings import settings
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from kotaemon.base import Document, Param, RetrievedDocument
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from kotaemon.base.schema import AIMessage, HumanMessage, SystemMessage
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from ..pipelines import BaseFileIndexRetriever
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from .pipelines import GraphRAGIndexingPipeline
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from .visualize import create_knowledge_graph, visualize_graph
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try:
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from nano_graphrag import GraphRAG, QueryParam
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from nano_graphrag._op import (
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_find_most_related_community_from_entities,
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_find_most_related_edges_from_entities,
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_find_most_related_text_unit_from_entities,
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)
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from nano_graphrag._utils import EmbeddingFunc
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from nano_graphrag.base import (
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BaseGraphStorage,
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BaseKVStorage,
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BaseVectorStorage,
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CommunitySchema,
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TextChunkSchema,
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)
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except ImportError:
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print(
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(
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"Nano-GraphRAG dependencies not installed. "
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"Try `pip install nano-graphrag` to install. "
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"Nano-GraphRAG retriever pipeline will not work properly."
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)
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)
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logging.getLogger("nano-graphrag").setLevel(logging.INFO)
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filestorage_path = Path(settings.KH_FILESTORAGE_PATH) / "nano_graphrag"
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filestorage_path.mkdir(parents=True, exist_ok=True)
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def get_llm_func(model):
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async def llm_func(
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prompt, system_prompt=None, history_messages=[], **kwargs
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) -> str:
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input_messages = [SystemMessage(text=system_prompt)] if system_prompt else []
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if history_messages:
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for msg in history_messages:
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if msg.get("role") == "user":
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input_messages.append(HumanMessage(text=msg["content"]))
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else:
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input_messages.append(AIMessage(text=msg["content"]))
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input_messages.append(HumanMessage(text=prompt))
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output = model(input_messages).text
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print("-" * 50)
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print(output, "\n", "-" * 50)
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return output
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return llm_func
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def get_embedding_func(model):
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async def embedding_func(texts: list[str]) -> np.ndarray:
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outputs = model(texts)
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embedding_outputs = np.array([doc.embedding for doc in outputs])
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return embedding_outputs
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return embedding_func
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def get_default_models_wrapper():
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# setup model functions
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default_embedding = embeddings.get_default()
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default_embedding_dim = len(default_embedding(["Hi"])[0].embedding)
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embedding_func = EmbeddingFunc(
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embedding_dim=default_embedding_dim,
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max_token_size=8192,
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func=get_embedding_func(default_embedding),
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)
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print("GraphRAG embedding dim", default_embedding_dim)
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default_llm = llms.get_default()
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llm_func = get_llm_func(default_llm)
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return llm_func, embedding_func, default_llm, default_embedding
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def prepare_graph_index_path(graph_id: str):
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root_path = Path(filestorage_path) / graph_id
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input_path = root_path / "input"
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return root_path, input_path
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def list_of_list_to_df(data: list[list]) -> pd.DataFrame:
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df = pd.DataFrame(data[1:], columns=data[0])
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return df
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def clean_quote(input: str) -> str:
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return re.sub(r"[\"']", "", input)
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async def nano_graph_rag_build_local_query_context(
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graph_func,
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query,
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query_param: QueryParam,
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):
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knowledge_graph_inst: BaseGraphStorage = graph_func.chunk_entity_relation_graph
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entities_vdb: BaseVectorStorage = graph_func.entities_vdb
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community_reports: BaseKVStorage[CommunitySchema] = graph_func.community_reports
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text_chunks_db: BaseKVStorage[TextChunkSchema] = graph_func.text_chunks
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results = await entities_vdb.query(query, top_k=query_param.top_k)
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if not len(results):
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raise ValueError("No results found")
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node_datas = await asyncio.gather(
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*[knowledge_graph_inst.get_node(r["entity_name"]) for r in results]
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)
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node_degrees = await asyncio.gather(
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*[knowledge_graph_inst.node_degree(r["entity_name"]) for r in results]
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)
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node_datas = [
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{**n, "entity_name": k["entity_name"], "rank": d}
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for k, n, d in zip(results, node_datas, node_degrees)
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if n is not None
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]
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use_communities = await _find_most_related_community_from_entities(
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node_datas, query_param, community_reports
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)
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use_text_units = await _find_most_related_text_unit_from_entities(
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node_datas, query_param, text_chunks_db, knowledge_graph_inst
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)
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use_relations = await _find_most_related_edges_from_entities(
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node_datas, query_param, knowledge_graph_inst
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)
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entites_section_list = [["id", "entity", "type", "description", "rank"]]
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for i, n in enumerate(node_datas):
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entites_section_list.append(
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[
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str(i),
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clean_quote(n["entity_name"]),
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n.get("entity_type", "UNKNOWN"),
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clean_quote(n.get("description", "UNKNOWN")),
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n["rank"],
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]
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)
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entities_df = list_of_list_to_df(entites_section_list)
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relations_section_list = [
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["id", "source", "target", "description", "weight", "rank"]
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]
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for i, e in enumerate(use_relations):
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relations_section_list.append(
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[
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str(i),
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clean_quote(e["src_tgt"][0]),
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clean_quote(e["src_tgt"][1]),
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clean_quote(e["description"]),
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e["weight"],
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e["rank"],
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]
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)
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relations_df = list_of_list_to_df(relations_section_list)
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communities_section_list = [["id", "content"]]
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for i, c in enumerate(use_communities):
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communities_section_list.append([str(i), c["report_string"]])
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communities_df = list_of_list_to_df(communities_section_list)
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text_units_section_list = [["id", "content"]]
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for i, t in enumerate(use_text_units):
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text_units_section_list.append([str(i), t["content"]])
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sources_df = list_of_list_to_df(text_units_section_list)
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return entities_df, relations_df, communities_df, sources_df
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def build_graphrag(working_dir, llm_func, embedding_func):
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graphrag_func = GraphRAG(
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working_dir=working_dir,
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best_model_func=llm_func,
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cheap_model_func=llm_func,
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embedding_func=embedding_func,
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embedding_func_max_async=4,
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)
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return graphrag_func
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class NanoGraphRAGIndexingPipeline(GraphRAGIndexingPipeline):
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"""GraphRAG specific indexing pipeline"""
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def call_graphrag_index(self, graph_id: str, docs: list[Document]):
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_, input_path = prepare_graph_index_path(graph_id)
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input_path.mkdir(parents=True, exist_ok=True)
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(
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llm_func,
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embedding_func,
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default_llm,
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default_embedding,
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) = get_default_models_wrapper()
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print(
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f"Indexing GraphRAG with LLM {default_llm} "
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f"and Embedding {default_embedding}..."
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)
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all_docs = [
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doc.text for doc in docs if doc.metadata.get("type", "text") == "text"
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]
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yield Document(
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channel="debug",
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text="[GraphRAG] Creating index... This can take a long time.",
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)
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# remove all .json files in the input_path directory (previous cache)
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json_files = glob.glob(f"{input_path}/*.json")
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for json_file in json_files:
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os.remove(json_file)
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# indexing
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graphrag_func = build_graphrag(
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input_path,
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llm_func=llm_func,
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embedding_func=embedding_func,
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)
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# output must be contain: Loaded graph from
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# ..input/graph_chunk_entity_relation.graphml with xxx nodes, xxx edges
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graphrag_func.insert(all_docs)
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yield Document(
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channel="debug",
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text="[GraphRAG] Indexing finished.",
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)
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def stream(
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self, file_paths: str | Path | list[str | Path], reindex: bool = False, **kwargs
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) -> Generator[
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Document, None, tuple[list[str | None], list[str | None], list[Document]]
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]:
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file_ids, errors, all_docs = yield from super().stream(
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file_paths, reindex=reindex, **kwargs
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)
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return file_ids, errors, all_docs
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class NanoGraphRAGRetrieverPipeline(BaseFileIndexRetriever):
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"""GraphRAG specific retriever pipeline"""
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Index = Param(help="The SQLAlchemy Index table")
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file_ids: list[str] = []
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def _build_graph_search(self):
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file_id = self.file_ids[0]
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# retrieve the graph_id from the index
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with Session(engine) as session:
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graph_id = (
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session.query(self.Index.target_id)
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.filter(self.Index.source_id == file_id)
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.filter(self.Index.relation_type == "graph")
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.first()
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)
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graph_id = graph_id[0] if graph_id else None
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assert graph_id, f"GraphRAG index not found for file_id: {file_id}"
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_, input_path = prepare_graph_index_path(graph_id)
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input_path.mkdir(parents=True, exist_ok=True)
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llm_func, embedding_func, _, _ = get_default_models_wrapper()
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graphrag_func = build_graphrag(
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input_path,
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llm_func=llm_func,
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embedding_func=embedding_func,
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)
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query_params = QueryParam(mode="local", only_need_context=True)
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return graphrag_func, query_params
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def _to_document(self, header: str, context_text: str) -> RetrievedDocument:
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return RetrievedDocument(
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text=context_text,
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metadata={
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"file_name": header,
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"type": "table",
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"llm_trulens_score": 1.0,
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},
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score=1.0,
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)
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def format_context_records(
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self, entities, relationships, reports, sources
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) -> list[RetrievedDocument]:
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docs = []
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context: str = ""
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# entities current parsing error
|
||||
header = "<b>Entities</b>\n"
|
||||
context = entities[["entity", "description"]].to_markdown(index=False)
|
||||
docs.append(self._to_document(header, context))
|
||||
|
||||
header = "\n<b>Relationships</b>\n"
|
||||
context = relationships[["source", "target", "description"]].to_markdown(
|
||||
index=False
|
||||
)
|
||||
docs.append(self._to_document(header, context))
|
||||
|
||||
header = "\n<b>Reports</b>\n"
|
||||
context = ""
|
||||
for _, row in reports.iterrows():
|
||||
title, content = row["id"], row["content"] # not contain title
|
||||
context += f"\n\n<h5>Report <b>{title}</b></h5>\n"
|
||||
context += content
|
||||
docs.append(self._to_document(header, context))
|
||||
|
||||
header = "\n<b>Sources</b>\n"
|
||||
context = ""
|
||||
for _, row in sources.iterrows():
|
||||
title, content = row["id"], row["content"]
|
||||
context += f"\n\n<h5>Source <b>#{title}</b></h5>\n"
|
||||
context += content
|
||||
docs.append(self._to_document(header, context))
|
||||
|
||||
return docs
|
||||
|
||||
def plot_graph(self, relationships):
|
||||
G = create_knowledge_graph(relationships)
|
||||
plot = visualize_graph(G)
|
||||
return plot
|
||||
|
||||
def run(
|
||||
self,
|
||||
text: str,
|
||||
) -> list[RetrievedDocument]:
|
||||
if not self.file_ids:
|
||||
return []
|
||||
|
||||
graphrag_func, query_params = self._build_graph_search()
|
||||
entities, relationships, reports, sources = asyncio.run(
|
||||
nano_graph_rag_build_local_query_context(graphrag_func, text, query_params)
|
||||
)
|
||||
|
||||
documents = self.format_context_records(
|
||||
entities, relationships, reports, sources
|
||||
)
|
||||
plot = self.plot_graph(relationships)
|
||||
|
||||
return documents + [
|
||||
RetrievedDocument(
|
||||
text="",
|
||||
metadata={
|
||||
"file_name": "GraphRAG",
|
||||
"type": "plot",
|
||||
"data": plot,
|
||||
},
|
||||
),
|
||||
]
|
|
@ -38,6 +38,7 @@ except ImportError:
|
|||
print(
|
||||
(
|
||||
"GraphRAG dependencies not installed. "
|
||||
"Try `pip install graphrag future` to install. "
|
||||
"GraphRAG retriever pipeline will not work properly."
|
||||
)
|
||||
)
|
||||
|
@ -97,7 +98,11 @@ class GraphRAGIndexingPipeline(IndexDocumentPipeline):
|
|||
|
||||
return root_path
|
||||
|
||||
def call_graphrag_index(self, input_path: str):
|
||||
def call_graphrag_index(self, graph_id: str, all_docs: list[Document]):
|
||||
# call GraphRAG index with docs and graph_id
|
||||
input_path = self.write_docs_to_files(graph_id, all_docs)
|
||||
input_path = str(input_path.absolute())
|
||||
|
||||
# Construct the command
|
||||
command = [
|
||||
"python",
|
||||
|
@ -147,8 +152,7 @@ class GraphRAGIndexingPipeline(IndexDocumentPipeline):
|
|||
# assign graph_id to file_ids
|
||||
graph_id = self.store_file_id_with_graph_id(file_ids)
|
||||
# call GraphRAG index with docs and graph_id
|
||||
graph_index_path = self.write_docs_to_files(graph_id, all_docs)
|
||||
yield from self.call_graphrag_index(str(graph_index_path.absolute()))
|
||||
yield from self.call_graphrag_index(graph_id, all_docs)
|
||||
|
||||
return file_ids, errors, all_docs
|
||||
|
||||
|
|
Loading…
Reference in New Issue
Block a user