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	https://github.com/HKUDS/LightRAG/pull/864#issuecomment-2669705946 - Created two new example scripts demonstrating LightRAG integration with LlamaIndex: - `lightrag_llamaindex_direct_demo.py`: Direct OpenAI integration - `lightrag_llamaindex_litellm_demo.py`: LiteLLM proxy integration - Both examples showcase different search modes (naive, local, global, hybrid) - Includes configuration for working directory, models, and API settings - Demonstrates text insertion and querying using LightRAG with LlamaIndex - removed wrapper directory and references to it
		
			
				
	
	
		
			114 lines
		
	
	
		
			3.2 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			114 lines
		
	
	
		
			3.2 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
import os
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from lightrag import LightRAG, QueryParam
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from lightrag.llm.llama_index_impl import (
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    llama_index_complete_if_cache,
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    llama_index_embed,
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)
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from lightrag.utils import EmbeddingFunc
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from llama_index.llms.openai import OpenAI
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from llama_index.embeddings.openai import OpenAIEmbedding
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import asyncio
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# Configure working directory
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WORKING_DIR = "./index_default"
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print(f"WORKING_DIR: {WORKING_DIR}")
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# Model configuration
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LLM_MODEL = os.environ.get("LLM_MODEL", "gpt-4")
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print(f"LLM_MODEL: {LLM_MODEL}")
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EMBEDDING_MODEL = os.environ.get("EMBEDDING_MODEL", "text-embedding-3-large")
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print(f"EMBEDDING_MODEL: {EMBEDDING_MODEL}")
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EMBEDDING_MAX_TOKEN_SIZE = int(os.environ.get("EMBEDDING_MAX_TOKEN_SIZE", 8192))
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print(f"EMBEDDING_MAX_TOKEN_SIZE: {EMBEDDING_MAX_TOKEN_SIZE}")
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# OpenAI configuration
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OPENAI_API_KEY = os.environ.get("OPENAI_API_KEY", "your-api-key-here")
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if not os.path.exists(WORKING_DIR):
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    print(f"Creating working directory: {WORKING_DIR}")
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    os.mkdir(WORKING_DIR)
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# Initialize LLM function
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async def llm_model_func(prompt, system_prompt=None, history_messages=[], **kwargs):
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    try:
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        # Initialize OpenAI if not in kwargs
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        if "llm_instance" not in kwargs:
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            llm_instance = OpenAI(
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                model=LLM_MODEL,
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                api_key=OPENAI_API_KEY,
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                temperature=0.7,
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            )
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            kwargs["llm_instance"] = llm_instance
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        response = await llama_index_complete_if_cache(
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            kwargs["llm_instance"],
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            prompt,
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            system_prompt=system_prompt,
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            history_messages=history_messages,
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            **kwargs,
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        )
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        return response
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    except Exception as e:
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        print(f"LLM request failed: {str(e)}")
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        raise
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# Initialize embedding function
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async def embedding_func(texts):
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    try:
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        embed_model = OpenAIEmbedding(
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            model=EMBEDDING_MODEL,
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            api_key=OPENAI_API_KEY,
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        )
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        return await llama_index_embed(texts, embed_model=embed_model)
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    except Exception as e:
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        print(f"Embedding failed: {str(e)}")
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        raise
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# Get embedding dimension
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async def get_embedding_dim():
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    test_text = ["This is a test sentence."]
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    embedding = await embedding_func(test_text)
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    embedding_dim = embedding.shape[1]
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    print(f"embedding_dim={embedding_dim}")
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    return embedding_dim
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# Initialize RAG instance
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rag = LightRAG(
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    working_dir=WORKING_DIR,
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    llm_model_func=llm_model_func,
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    embedding_func=EmbeddingFunc(
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        embedding_dim=asyncio.run(get_embedding_dim()),
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        max_token_size=EMBEDDING_MAX_TOKEN_SIZE,
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        func=embedding_func,
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    ),
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)
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# Insert example text
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with open("./book.txt", "r", encoding="utf-8") as f:
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    rag.insert(f.read())
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# Test different query modes
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print("\nNaive Search:")
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print(
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    rag.query("What are the top themes in this story?", param=QueryParam(mode="naive"))
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)
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print("\nLocal Search:")
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print(
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    rag.query("What are the top themes in this story?", param=QueryParam(mode="local"))
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)
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print("\nGlobal Search:")
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print(
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    rag.query("What are the top themes in this story?", param=QueryParam(mode="global"))
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)
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print("\nHybrid Search:")
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print(
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    rag.query("What are the top themes in this story?", param=QueryParam(mode="hybrid"))
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)
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