| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178 |
- """
- LightRAG Demo with PostgreSQL + Google Gemini
- This example demonstrates how to use LightRAG with:
- - Google Gemini (LLM + Embeddings)
- - PostgreSQL-backed storages for:
- - Vector storage
- - Graph storage
- - KV storage
- - Document status storage
- Prerequisites:
- 1. PostgreSQL database running and accessible
- 2. Required tables will be auto-created by LightRAG
- 3. Set environment variables (example .env):
- POSTGRES_HOST=localhost
- POSTGRES_PORT=5432
- POSTGRES_USER=admin
- POSTGRES_PASSWORD=admin
- POSTGRES_DATABASE=ai
- LIGHTRAG_KV_STORAGE=PGKVStorage
- LIGHTRAG_DOC_STATUS_STORAGE=PGDocStatusStorage
- LIGHTRAG_GRAPH_STORAGE=PGGraphStorage
- LIGHTRAG_VECTOR_STORAGE=PGVectorStorage
- GEMINI_API_KEY=your-api-key
- 4. Prepare a text file to index (default: Data/book-small.txt)
- Usage:
- python examples/lightrag_postgres_demo.py
- """
- import os
- import asyncio
- import numpy as np
- from lightrag import LightRAG, QueryParam
- from lightrag.llm.gemini import gemini_model_complete, gemini_embed
- from lightrag.utils import setup_logger, wrap_embedding_func_with_attrs
- # --------------------------------------------------
- # Logger
- # --------------------------------------------------
- setup_logger("lightrag", level="INFO")
- # --------------------------------------------------
- # Config
- # --------------------------------------------------
- WORKING_DIR = "./rag_storage"
- BOOK_FILE = "Data/book.txt"
- if not os.path.exists(WORKING_DIR):
- os.mkdir(WORKING_DIR)
- GEMINI_API_KEY = os.getenv("GEMINI_API_KEY")
- if not GEMINI_API_KEY:
- raise ValueError("GEMINI_API_KEY environment variable is not set")
- # --------------------------------------------------
- # LLM function (Gemini)
- # --------------------------------------------------
- async def llm_model_func(
- prompt,
- system_prompt=None,
- history_messages=[],
- keyword_extraction=False,
- **kwargs,
- ) -> str:
- return await gemini_model_complete(
- prompt,
- system_prompt=system_prompt,
- history_messages=history_messages,
- api_key=GEMINI_API_KEY,
- model_name="gemini-2.0-flash",
- **kwargs,
- )
- # --------------------------------------------------
- # Embedding function (Gemini)
- # --------------------------------------------------
- @wrap_embedding_func_with_attrs(
- embedding_dim=768,
- max_token_size=2048,
- model_name="models/text-embedding-004",
- )
- async def embedding_func(texts: list[str]) -> np.ndarray:
- return await gemini_embed.func(
- texts,
- api_key=GEMINI_API_KEY,
- model="models/text-embedding-004",
- )
- # --------------------------------------------------
- # Initialize RAG with PostgreSQL storages
- # --------------------------------------------------
- async def initialize_rag() -> LightRAG:
- rag = LightRAG(
- working_dir=WORKING_DIR,
- llm_model_name="gemini-2.0-flash",
- llm_model_func=llm_model_func,
- embedding_func=embedding_func,
- # Performance tuning
- embedding_func_max_async=4,
- embedding_batch_num=8,
- llm_model_max_async=2,
- # Chunking
- chunk_token_size=1200,
- chunk_overlap_token_size=100,
- # PostgreSQL-backed storages
- graph_storage="PGGraphStorage",
- vector_storage="PGVectorStorage",
- doc_status_storage="PGDocStatusStorage",
- kv_storage="PGKVStorage",
- )
- # REQUIRED: initialize all storage backends
- await rag.initialize_storages()
- return rag
- # --------------------------------------------------
- # Main
- # --------------------------------------------------
- async def main():
- rag = None
- try:
- print("Initializing LightRAG with PostgreSQL + Gemini...")
- rag = await initialize_rag()
- if not os.path.exists(BOOK_FILE):
- raise FileNotFoundError(
- f"'{BOOK_FILE}' not found. Please provide a text file to index."
- )
- print(f"\nReading document: {BOOK_FILE}")
- with open(BOOK_FILE, "r", encoding="utf-8") as f:
- content = f.read()
- print(f"Loaded document ({len(content)} characters)")
- print("\nInserting document into LightRAG (this may take some time)...")
- await rag.ainsert(content)
- print("Document indexed successfully!")
- print("\n" + "=" * 60)
- print("Running sample queries")
- print("=" * 60)
- query = "What are the top themes in this document?"
- for mode in ["naive", "local", "global", "hybrid"]:
- print(f"\n[{mode.upper()} MODE]")
- result = await rag.aquery(query, param=QueryParam(mode=mode))
- print(result[:400] + "..." if len(result) > 400 else result)
- print("\nRAG system is ready for use!")
- except Exception as e:
- print("An error occurred:", e)
- import traceback
- traceback.print_exc()
- finally:
- if rag is not None:
- await rag.finalize_storages()
- if __name__ == "__main__":
- asyncio.run(main())
|