modified: .env.example
modified: config.py modified: docker-compose.yml modified: requirements.txt modified: services/rag_service.py
This commit is contained in:
@@ -16,6 +16,8 @@ AI_PROVIDER=lmstudio
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# On Linux/Docker: use host.docker.internal to reach the host
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LM_STUDIO_URL=http://host.docker.internal:1234
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LM_STUDIO_MODEL=local-model
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# Model used for RAG embeddings — can be the same model or a dedicated embedding model
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LM_STUDIO_EMBEDDING_MODEL=local-model
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# OpenAI (only needed when AI_PROVIDER=openai)
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# OPENAI_API_KEY=sk-...
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11
config.py
11
config.py
@@ -8,16 +8,16 @@ BASE_DIR = os.path.abspath(os.path.dirname(__file__))
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class Config:
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SECRET_KEY = os.environ.get("SECRET_KEY", "change-me-in-production")
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SQLALCHEMY_DATABASE_URI = os.environ.get(
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"DATABASE_URI", f"sqlite:///{os.path.join(BASE_DIR, 'app.db')}"
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_db_uri = os.environ.get("DATABASE_URI", "")
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_default_uri = f"sqlite:///{os.path.join(BASE_DIR, 'app.db')}"
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# Fall back to SQLite if DATABASE_URI is empty or not a valid SQLAlchemy URL
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SQLALCHEMY_DATABASE_URI = (
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_db_uri if _db_uri and "://" in _db_uri else _default_uri
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)
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SQLALCHEMY_TRACK_MODIFICATIONS = False
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UPLOAD_FOLDER = os.environ.get("UPLOAD_FOLDER", os.path.join(BASE_DIR, "uploads"))
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VECTORDB_PATH = os.environ.get("VECTORDB_PATH", os.path.join(BASE_DIR, "vectordb"))
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TRANSFORMERS_CACHE = os.environ.get(
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"TRANSFORMERS_CACHE", os.path.join(BASE_DIR, ".cache")
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)
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ALLOWED_EXTENSIONS = {"pdf", "txt", "docx", "md"}
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MAX_CONTENT_LENGTH = 50 * 1024 * 1024 # 50 MB
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@@ -26,6 +26,7 @@ class Config:
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AI_PROVIDER = os.environ.get("AI_PROVIDER", "lmstudio")
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LM_STUDIO_URL = os.environ.get("LM_STUDIO_URL", "http://localhost:1234")
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LM_STUDIO_MODEL = os.environ.get("LM_STUDIO_MODEL", "local-model")
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LM_STUDIO_EMBEDDING_MODEL = os.environ.get("LM_STUDIO_EMBEDDING_MODEL", "local-model")
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OPENAI_API_KEY = os.environ.get("OPENAI_API_KEY", "")
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OPENAI_MODEL = os.environ.get("OPENAI_MODEL", "gpt-4o")
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@@ -9,7 +9,6 @@ services:
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volumes:
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- uploads:/app/uploads
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- vectordb:/app/vectordb
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- hf_cache:/app/.cache
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healthcheck:
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test: ["CMD", "python", "-c",
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"import urllib.request; urllib.request.urlopen('http://localhost:5000/auth/login')"]
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@@ -21,4 +20,3 @@ services:
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volumes:
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uploads:
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vectordb:
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hf_cache:
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@@ -9,7 +9,6 @@ python-docx==1.1.2
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markdown==3.6
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beautifulsoup4==4.12.3
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requests==2.32.3
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sentence-transformers==3.0.1
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chromadb==0.5.3
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openai==1.35.3
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gunicorn==22.0.0
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@@ -1,25 +1,31 @@
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"""
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RAG service using ChromaDB + sentence-transformers.
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RAG service using ChromaDB + LM Studio's /v1/embeddings endpoint.
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No local ML libraries (torch, sentence-transformers, onnxruntime) needed —
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embeddings are generated by the same LM Studio instance used for chat.
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Each chunk is stored with metadata: user_id, source_id, source_type (doc|url).
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"""
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import os
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import re
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from typing import Optional
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from chromadb import EmbeddingFunction, Documents, Embeddings
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from flask import current_app
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from openai import OpenAI
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_chroma_client = None
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_collection = None
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_embedder = None
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def _get_embedder():
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global _embedder
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if _embedder is None:
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from sentence_transformers import SentenceTransformer
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cache = current_app.config.get("TRANSFORMERS_CACHE", ".cache")
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_embedder = SentenceTransformer("all-MiniLM-L6-v2", cache_folder=cache)
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return _embedder
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class LMStudioEmbeddingFunction(EmbeddingFunction):
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"""ChromaDB-compatible embedding function that calls LM Studio's /v1/embeddings."""
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def __init__(self, base_url: str, model: str):
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self._client = OpenAI(base_url=f"{base_url}/v1", api_key="lm-studio")
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self._model = model
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def __call__(self, input: Documents) -> Embeddings:
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response = self._client.embeddings.create(model=self._model, input=input)
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return [item.embedding for item in response.data]
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def _get_collection():
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@@ -27,16 +33,18 @@ def _get_collection():
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if _collection is None:
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import chromadb
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path = current_app.config["VECTORDB_PATH"]
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base_url = current_app.config["LM_STUDIO_URL"]
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model = current_app.config["LM_STUDIO_EMBEDDING_MODEL"]
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_chroma_client = chromadb.PersistentClient(path=path)
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_collection = _chroma_client.get_or_create_collection(
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name="ki_context",
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embedding_function=LMStudioEmbeddingFunction(base_url, model),
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metadata={"hnsw:space": "cosine"},
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)
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return _collection
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def chunk_text(text: str, chunk_size: int, overlap: int) -> list[str]:
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"""Split text into overlapping word-based chunks."""
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words = text.split()
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chunks = []
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start = 0
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@@ -55,26 +63,22 @@ def index_source(
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chunk_size: int = 500,
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chunk_overlap: int = 50,
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):
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"""Chunk, embed and store text in ChromaDB. Replaces existing chunks for this source."""
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"""Chunk, embed via LM Studio and store in ChromaDB. Replaces existing chunks."""
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collection = _get_collection()
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embedder = _get_embedder()
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# Remove old chunks for this source first
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delete_source(user_id, source_id, source_type)
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chunks = chunk_text(text, chunk_size, chunk_overlap)
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if not chunks:
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return
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embeddings = embedder.encode(chunks, show_progress_bar=False).tolist()
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ids = [f"{source_type}_{source_id}_chunk_{i}" for i in range(len(chunks))]
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metadatas = [
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{"user_id": str(user_id), "source_id": str(source_id), "source_type": source_type}
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for _ in chunks
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]
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collection.add(documents=chunks, embeddings=embeddings, ids=ids, metadatas=metadatas)
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collection.add(documents=chunks, ids=ids, metadatas=metadatas)
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def delete_source(user_id: int, source_id: int, source_type: str):
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@@ -101,17 +105,9 @@ def similarity_search(
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source_type: Optional[str] = None,
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top_k: int = 5,
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) -> list[str]:
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"""
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Search for relevant chunks.
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Optionally filter by specific source_ids and/or source_type.
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Returns list of chunk texts.
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"""
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"""Search for relevant chunks via LM Studio embeddings."""
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collection = _get_collection()
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embedder = _get_embedder()
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query_embedding = embedder.encode([query], show_progress_bar=False).tolist()[0]
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# Build where filter
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conditions = [{"user_id": {"$eq": str(user_id)}}]
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if source_ids is not None and len(source_ids) > 0:
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@@ -126,7 +122,7 @@ def similarity_search(
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try:
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results = collection.query(
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query_embeddings=[query_embedding],
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query_texts=[query],
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n_results=top_k,
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where=where,
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)
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