import json import logging import mimetypes import os import shutil import socket import urllib.parse import uuid from datetime import datetime from pathlib import Path from typing import Iterator, Optional, Sequence, Union import requests import validators from fastapi import Depends, FastAPI, File, Form, HTTPException, UploadFile, status from fastapi.middleware.cors import CORSMiddleware from pydantic import BaseModel from open_webui.apps.rag.search.main import SearchResult from open_webui.apps.rag.search.brave import search_brave from open_webui.apps.rag.search.duckduckgo import search_duckduckgo from open_webui.apps.rag.search.google_pse import search_google_pse from open_webui.apps.rag.search.jina_search import search_jina from open_webui.apps.rag.search.searchapi import search_searchapi from open_webui.apps.rag.search.searxng import search_searxng from open_webui.apps.rag.search.serper import search_serper from open_webui.apps.rag.search.serply import search_serply from open_webui.apps.rag.search.serpstack import search_serpstack from open_webui.apps.rag.search.tavily import search_tavily from open_webui.apps.rag.utils import ( get_embedding_function, get_model_path, query_collection, query_collection_with_hybrid_search, query_doc, query_doc_with_hybrid_search, ) from open_webui.apps.webui.models.documents import DocumentForm, Documents from open_webui.apps.webui.models.files import Files from open_webui.config import ( BRAVE_SEARCH_API_KEY, CHUNK_OVERLAP, CHUNK_SIZE, CONTENT_EXTRACTION_ENGINE, CORS_ALLOW_ORIGIN, DOCS_DIR, ENABLE_RAG_HYBRID_SEARCH, ENABLE_RAG_LOCAL_WEB_FETCH, ENABLE_RAG_WEB_LOADER_SSL_VERIFICATION, ENABLE_RAG_WEB_SEARCH, ENV, GOOGLE_PSE_API_KEY, GOOGLE_PSE_ENGINE_ID, PDF_EXTRACT_IMAGES, RAG_EMBEDDING_ENGINE, RAG_EMBEDDING_MODEL, RAG_EMBEDDING_MODEL_AUTO_UPDATE, RAG_EMBEDDING_MODEL_TRUST_REMOTE_CODE, RAG_EMBEDDING_OPENAI_BATCH_SIZE, RAG_FILE_MAX_COUNT, RAG_FILE_MAX_SIZE, RAG_OPENAI_API_BASE_URL, RAG_OPENAI_API_KEY, RAG_RELEVANCE_THRESHOLD, RAG_RERANKING_MODEL, RAG_RERANKING_MODEL_AUTO_UPDATE, RAG_RERANKING_MODEL_TRUST_REMOTE_CODE, RAG_TEMPLATE, RAG_TOP_K, RAG_WEB_SEARCH_CONCURRENT_REQUESTS, RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, RAG_WEB_SEARCH_ENGINE, RAG_WEB_SEARCH_RESULT_COUNT, SEARCHAPI_API_KEY, SEARCHAPI_ENGINE, SEARXNG_QUERY_URL, SERPER_API_KEY, SERPLY_API_KEY, SERPSTACK_API_KEY, SERPSTACK_HTTPS, TAVILY_API_KEY, TIKA_SERVER_URL, UPLOAD_DIR, YOUTUBE_LOADER_LANGUAGE, AppConfig, ) from open_webui.constants import ERROR_MESSAGES from open_webui.env import SRC_LOG_LEVELS, DEVICE_TYPE from open_webui.utils.misc import ( calculate_sha256, calculate_sha256_string, extract_folders_after_data_docs, sanitize_filename, ) from open_webui.utils.utils import get_admin_user, get_verified_user from open_webui.apps.rag.vector.connector import VECTOR_DB_CLIENT from langchain.text_splitter import RecursiveCharacterTextSplitter from langchain_community.document_loaders import ( BSHTMLLoader, CSVLoader, Docx2txtLoader, OutlookMessageLoader, PyPDFLoader, TextLoader, UnstructuredEPubLoader, UnstructuredExcelLoader, UnstructuredMarkdownLoader, UnstructuredPowerPointLoader, UnstructuredRSTLoader, UnstructuredXMLLoader, WebBaseLoader, YoutubeLoader, ) from langchain_core.documents import Document log = logging.getLogger(__name__) log.setLevel(SRC_LOG_LEVELS["RAG"]) app = FastAPI() app.state.config = AppConfig() app.state.config.TOP_K = RAG_TOP_K app.state.config.RELEVANCE_THRESHOLD = RAG_RELEVANCE_THRESHOLD app.state.config.FILE_MAX_SIZE = RAG_FILE_MAX_SIZE app.state.config.FILE_MAX_COUNT = RAG_FILE_MAX_COUNT app.state.config.ENABLE_RAG_HYBRID_SEARCH = ENABLE_RAG_HYBRID_SEARCH app.state.config.ENABLE_RAG_WEB_LOADER_SSL_VERIFICATION = ( ENABLE_RAG_WEB_LOADER_SSL_VERIFICATION ) app.state.config.CONTENT_EXTRACTION_ENGINE = CONTENT_EXTRACTION_ENGINE app.state.config.TIKA_SERVER_URL = TIKA_SERVER_URL app.state.config.CHUNK_SIZE = CHUNK_SIZE app.state.config.CHUNK_OVERLAP = CHUNK_OVERLAP app.state.config.RAG_EMBEDDING_ENGINE = RAG_EMBEDDING_ENGINE app.state.config.RAG_EMBEDDING_MODEL = RAG_EMBEDDING_MODEL app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE = RAG_EMBEDDING_OPENAI_BATCH_SIZE app.state.config.RAG_RERANKING_MODEL = RAG_RERANKING_MODEL app.state.config.RAG_TEMPLATE = RAG_TEMPLATE app.state.config.OPENAI_API_BASE_URL = RAG_OPENAI_API_BASE_URL app.state.config.OPENAI_API_KEY = RAG_OPENAI_API_KEY app.state.config.PDF_EXTRACT_IMAGES = PDF_EXTRACT_IMAGES app.state.config.YOUTUBE_LOADER_LANGUAGE = YOUTUBE_LOADER_LANGUAGE app.state.YOUTUBE_LOADER_TRANSLATION = None app.state.config.ENABLE_RAG_WEB_SEARCH = ENABLE_RAG_WEB_SEARCH app.state.config.RAG_WEB_SEARCH_ENGINE = RAG_WEB_SEARCH_ENGINE app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST = RAG_WEB_SEARCH_DOMAIN_FILTER_LIST app.state.config.SEARXNG_QUERY_URL = SEARXNG_QUERY_URL app.state.config.GOOGLE_PSE_API_KEY = GOOGLE_PSE_API_KEY app.state.config.GOOGLE_PSE_ENGINE_ID = GOOGLE_PSE_ENGINE_ID app.state.config.BRAVE_SEARCH_API_KEY = BRAVE_SEARCH_API_KEY app.state.config.SERPSTACK_API_KEY = SERPSTACK_API_KEY app.state.config.SERPSTACK_HTTPS = SERPSTACK_HTTPS app.state.config.SERPER_API_KEY = SERPER_API_KEY app.state.config.SERPLY_API_KEY = SERPLY_API_KEY app.state.config.TAVILY_API_KEY = TAVILY_API_KEY app.state.config.SEARCHAPI_API_KEY = SEARCHAPI_API_KEY app.state.config.SEARCHAPI_ENGINE = SEARCHAPI_ENGINE app.state.config.RAG_WEB_SEARCH_RESULT_COUNT = RAG_WEB_SEARCH_RESULT_COUNT app.state.config.RAG_WEB_SEARCH_CONCURRENT_REQUESTS = RAG_WEB_SEARCH_CONCURRENT_REQUESTS def update_embedding_model( embedding_model: str, update_model: bool = False, ): if embedding_model and app.state.config.RAG_EMBEDDING_ENGINE == "": import sentence_transformers app.state.sentence_transformer_ef = sentence_transformers.SentenceTransformer( get_model_path(embedding_model, update_model), device=DEVICE_TYPE, trust_remote_code=RAG_EMBEDDING_MODEL_TRUST_REMOTE_CODE, ) else: app.state.sentence_transformer_ef = None def update_reranking_model( reranking_model: str, update_model: bool = False, ): if reranking_model: import sentence_transformers app.state.sentence_transformer_rf = sentence_transformers.CrossEncoder( get_model_path(reranking_model, update_model), device=DEVICE_TYPE, trust_remote_code=RAG_RERANKING_MODEL_TRUST_REMOTE_CODE, ) else: app.state.sentence_transformer_rf = None update_embedding_model( app.state.config.RAG_EMBEDDING_MODEL, RAG_EMBEDDING_MODEL_AUTO_UPDATE, ) update_reranking_model( app.state.config.RAG_RERANKING_MODEL, RAG_RERANKING_MODEL_AUTO_UPDATE, ) app.state.EMBEDDING_FUNCTION = get_embedding_function( app.state.config.RAG_EMBEDDING_ENGINE, app.state.config.RAG_EMBEDDING_MODEL, app.state.sentence_transformer_ef, app.state.config.OPENAI_API_KEY, app.state.config.OPENAI_API_BASE_URL, app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE, ) app.add_middleware( CORSMiddleware, allow_origins=CORS_ALLOW_ORIGIN, allow_credentials=True, allow_methods=["*"], allow_headers=["*"], ) class CollectionNameForm(BaseModel): collection_name: Optional[str] = "test" class UrlForm(CollectionNameForm): url: str class SearchForm(CollectionNameForm): query: str @app.get("/") async def get_status(): return { "status": True, "chunk_size": app.state.config.CHUNK_SIZE, "chunk_overlap": app.state.config.CHUNK_OVERLAP, "template": app.state.config.RAG_TEMPLATE, "embedding_engine": app.state.config.RAG_EMBEDDING_ENGINE, "embedding_model": app.state.config.RAG_EMBEDDING_MODEL, "reranking_model": app.state.config.RAG_RERANKING_MODEL, "openai_batch_size": app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE, } @app.get("/embedding") async def get_embedding_config(user=Depends(get_admin_user)): return { "status": True, "embedding_engine": app.state.config.RAG_EMBEDDING_ENGINE, "embedding_model": app.state.config.RAG_EMBEDDING_MODEL, "openai_config": { "url": app.state.config.OPENAI_API_BASE_URL, "key": app.state.config.OPENAI_API_KEY, "batch_size": app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE, }, } @app.get("/reranking") async def get_reraanking_config(user=Depends(get_admin_user)): return { "status": True, "reranking_model": app.state.config.RAG_RERANKING_MODEL, } class OpenAIConfigForm(BaseModel): url: str key: str batch_size: Optional[int] = None class EmbeddingModelUpdateForm(BaseModel): openai_config: Optional[OpenAIConfigForm] = None embedding_engine: str embedding_model: str @app.post("/embedding/update") async def update_embedding_config( form_data: EmbeddingModelUpdateForm, user=Depends(get_admin_user) ): log.info( f"Updating embedding model: {app.state.config.RAG_EMBEDDING_MODEL} to {form_data.embedding_model}" ) try: app.state.config.RAG_EMBEDDING_ENGINE = form_data.embedding_engine app.state.config.RAG_EMBEDDING_MODEL = form_data.embedding_model if app.state.config.RAG_EMBEDDING_ENGINE in ["ollama", "openai"]: if form_data.openai_config is not None: app.state.config.OPENAI_API_BASE_URL = form_data.openai_config.url app.state.config.OPENAI_API_KEY = form_data.openai_config.key app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE = ( form_data.openai_config.batch_size if form_data.openai_config.batch_size else 1 ) update_embedding_model(app.state.config.RAG_EMBEDDING_MODEL) app.state.EMBEDDING_FUNCTION = get_embedding_function( app.state.config.RAG_EMBEDDING_ENGINE, app.state.config.RAG_EMBEDDING_MODEL, app.state.sentence_transformer_ef, app.state.config.OPENAI_API_KEY, app.state.config.OPENAI_API_BASE_URL, app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE, ) return { "status": True, "embedding_engine": app.state.config.RAG_EMBEDDING_ENGINE, "embedding_model": app.state.config.RAG_EMBEDDING_MODEL, "openai_config": { "url": app.state.config.OPENAI_API_BASE_URL, "key": app.state.config.OPENAI_API_KEY, "batch_size": app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE, }, } except Exception as e: log.exception(f"Problem updating embedding model: {e}") raise HTTPException( status_code=status.HTTP_500_INTERNAL_SERVER_ERROR, detail=ERROR_MESSAGES.DEFAULT(e), ) class RerankingModelUpdateForm(BaseModel): reranking_model: str @app.post("/reranking/update") async def update_reranking_config( form_data: RerankingModelUpdateForm, user=Depends(get_admin_user) ): log.info( f"Updating reranking model: {app.state.config.RAG_RERANKING_MODEL} to {form_data.reranking_model}" ) try: app.state.config.RAG_RERANKING_MODEL = form_data.reranking_model update_reranking_model(app.state.config.RAG_RERANKING_MODEL, True) return { "status": True, "reranking_model": app.state.config.RAG_RERANKING_MODEL, } except Exception as e: log.exception(f"Problem updating reranking model: {e}") raise HTTPException( status_code=status.HTTP_500_INTERNAL_SERVER_ERROR, detail=ERROR_MESSAGES.DEFAULT(e), ) @app.get("/config") async def get_rag_config(user=Depends(get_admin_user)): return { "status": True, "pdf_extract_images": app.state.config.PDF_EXTRACT_IMAGES, "file": { "max_size": app.state.config.FILE_MAX_SIZE, "max_count": app.state.config.FILE_MAX_COUNT, }, "content_extraction": { "engine": app.state.config.CONTENT_EXTRACTION_ENGINE, "tika_server_url": app.state.config.TIKA_SERVER_URL, }, "chunk": { "chunk_size": app.state.config.CHUNK_SIZE, "chunk_overlap": app.state.config.CHUNK_OVERLAP, }, "youtube": { "language": app.state.config.YOUTUBE_LOADER_LANGUAGE, "translation": app.state.YOUTUBE_LOADER_TRANSLATION, }, "web": { "ssl_verification": app.state.config.ENABLE_RAG_WEB_LOADER_SSL_VERIFICATION, "search": { "enabled": app.state.config.ENABLE_RAG_WEB_SEARCH, "engine": app.state.config.RAG_WEB_SEARCH_ENGINE, "searxng_query_url": app.state.config.SEARXNG_QUERY_URL, "google_pse_api_key": app.state.config.GOOGLE_PSE_API_KEY, "google_pse_engine_id": app.state.config.GOOGLE_PSE_ENGINE_ID, "brave_search_api_key": app.state.config.BRAVE_SEARCH_API_KEY, "serpstack_api_key": app.state.config.SERPSTACK_API_KEY, "serpstack_https": app.state.config.SERPSTACK_HTTPS, "serper_api_key": app.state.config.SERPER_API_KEY, "serply_api_key": app.state.config.SERPLY_API_KEY, "tavily_api_key": app.state.config.TAVILY_API_KEY, "searchapi_api_key": app.state.config.SEARCHAPI_API_KEY, "seaarchapi_engine": app.state.config.SEARCHAPI_ENGINE, "result_count": app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, "concurrent_requests": app.state.config.RAG_WEB_SEARCH_CONCURRENT_REQUESTS, }, }, } class FileConfig(BaseModel): max_size: Optional[int] = None max_count: Optional[int] = None class ContentExtractionConfig(BaseModel): engine: str = "" tika_server_url: Optional[str] = None class ChunkParamUpdateForm(BaseModel): chunk_size: int chunk_overlap: int class YoutubeLoaderConfig(BaseModel): language: list[str] translation: Optional[str] = None class WebSearchConfig(BaseModel): enabled: bool engine: Optional[str] = None searxng_query_url: Optional[str] = None google_pse_api_key: Optional[str] = None google_pse_engine_id: Optional[str] = None brave_search_api_key: Optional[str] = None serpstack_api_key: Optional[str] = None serpstack_https: Optional[bool] = None serper_api_key: Optional[str] = None serply_api_key: Optional[str] = None tavily_api_key: Optional[str] = None searchapi_api_key: Optional[str] = None searchapi_engine: Optional[str] = None result_count: Optional[int] = None concurrent_requests: Optional[int] = None class WebConfig(BaseModel): search: WebSearchConfig web_loader_ssl_verification: Optional[bool] = None class ConfigUpdateForm(BaseModel): pdf_extract_images: Optional[bool] = None file: Optional[FileConfig] = None content_extraction: Optional[ContentExtractionConfig] = None chunk: Optional[ChunkParamUpdateForm] = None youtube: Optional[YoutubeLoaderConfig] = None web: Optional[WebConfig] = None @app.post("/config/update") async def update_rag_config(form_data: ConfigUpdateForm, user=Depends(get_admin_user)): app.state.config.PDF_EXTRACT_IMAGES = ( form_data.pdf_extract_images if form_data.pdf_extract_images is not None else app.state.config.PDF_EXTRACT_IMAGES ) if form_data.file is not None: app.state.config.FILE_MAX_SIZE = form_data.file.max_size app.state.config.FILE_MAX_COUNT = form_data.file.max_count if form_data.content_extraction is not None: log.info(f"Updating text settings: {form_data.content_extraction}") app.state.config.CONTENT_EXTRACTION_ENGINE = form_data.content_extraction.engine app.state.config.TIKA_SERVER_URL = form_data.content_extraction.tika_server_url if form_data.chunk is not None: app.state.config.CHUNK_SIZE = form_data.chunk.chunk_size app.state.config.CHUNK_OVERLAP = form_data.chunk.chunk_overlap if form_data.youtube is not None: app.state.config.YOUTUBE_LOADER_LANGUAGE = form_data.youtube.language app.state.YOUTUBE_LOADER_TRANSLATION = form_data.youtube.translation if form_data.web is not None: app.state.config.ENABLE_RAG_WEB_LOADER_SSL_VERIFICATION = ( form_data.web.web_loader_ssl_verification ) app.state.config.ENABLE_RAG_WEB_SEARCH = form_data.web.search.enabled app.state.config.RAG_WEB_SEARCH_ENGINE = form_data.web.search.engine app.state.config.SEARXNG_QUERY_URL = form_data.web.search.searxng_query_url app.state.config.GOOGLE_PSE_API_KEY = form_data.web.search.google_pse_api_key app.state.config.GOOGLE_PSE_ENGINE_ID = ( form_data.web.search.google_pse_engine_id ) app.state.config.BRAVE_SEARCH_API_KEY = ( form_data.web.search.brave_search_api_key ) app.state.config.SERPSTACK_API_KEY = form_data.web.search.serpstack_api_key app.state.config.SERPSTACK_HTTPS = form_data.web.search.serpstack_https app.state.config.SERPER_API_KEY = form_data.web.search.serper_api_key app.state.config.SERPLY_API_KEY = form_data.web.search.serply_api_key app.state.config.TAVILY_API_KEY = form_data.web.search.tavily_api_key app.state.config.SEARCHAPI_API_KEY = form_data.web.search.searchapi_api_key app.state.config.SEARCHAPI_ENGINE = form_data.web.search.searchapi_engine app.state.config.RAG_WEB_SEARCH_RESULT_COUNT = form_data.web.search.result_count app.state.config.RAG_WEB_SEARCH_CONCURRENT_REQUESTS = ( form_data.web.search.concurrent_requests ) return { "status": True, "pdf_extract_images": app.state.config.PDF_EXTRACT_IMAGES, "file": { "max_size": app.state.config.FILE_MAX_SIZE, "max_count": app.state.config.FILE_MAX_COUNT, }, "content_extraction": { "engine": app.state.config.CONTENT_EXTRACTION_ENGINE, "tika_server_url": app.state.config.TIKA_SERVER_URL, }, "chunk": { "chunk_size": app.state.config.CHUNK_SIZE, "chunk_overlap": app.state.config.CHUNK_OVERLAP, }, "youtube": { "language": app.state.config.YOUTUBE_LOADER_LANGUAGE, "translation": app.state.YOUTUBE_LOADER_TRANSLATION, }, "web": { "ssl_verification": app.state.config.ENABLE_RAG_WEB_LOADER_SSL_VERIFICATION, "search": { "enabled": app.state.config.ENABLE_RAG_WEB_SEARCH, "engine": app.state.config.RAG_WEB_SEARCH_ENGINE, "searxng_query_url": app.state.config.SEARXNG_QUERY_URL, "google_pse_api_key": app.state.config.GOOGLE_PSE_API_KEY, "google_pse_engine_id": app.state.config.GOOGLE_PSE_ENGINE_ID, "brave_search_api_key": app.state.config.BRAVE_SEARCH_API_KEY, "serpstack_api_key": app.state.config.SERPSTACK_API_KEY, "serpstack_https": app.state.config.SERPSTACK_HTTPS, "serper_api_key": app.state.config.SERPER_API_KEY, "serply_api_key": app.state.config.SERPLY_API_KEY, "serachapi_api_key": app.state.config.SEARCHAPI_API_KEY, "searchapi_engine": app.state.config.SEARCHAPI_ENGINE, "tavily_api_key": app.state.config.TAVILY_API_KEY, "result_count": app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, "concurrent_requests": app.state.config.RAG_WEB_SEARCH_CONCURRENT_REQUESTS, }, }, } @app.get("/template") async def get_rag_template(user=Depends(get_verified_user)): return { "status": True, "template": app.state.config.RAG_TEMPLATE, } @app.get("/query/settings") async def get_query_settings(user=Depends(get_admin_user)): return { "status": True, "template": app.state.config.RAG_TEMPLATE, "k": app.state.config.TOP_K, "r": app.state.config.RELEVANCE_THRESHOLD, "hybrid": app.state.config.ENABLE_RAG_HYBRID_SEARCH, } class QuerySettingsForm(BaseModel): k: Optional[int] = None r: Optional[float] = None template: Optional[str] = None hybrid: Optional[bool] = None @app.post("/query/settings/update") async def update_query_settings( form_data: QuerySettingsForm, user=Depends(get_admin_user) ): app.state.config.RAG_TEMPLATE = ( form_data.template if form_data.template else RAG_TEMPLATE ) app.state.config.TOP_K = form_data.k if form_data.k else 4 app.state.config.RELEVANCE_THRESHOLD = form_data.r if form_data.r else 0.0 app.state.config.ENABLE_RAG_HYBRID_SEARCH = ( form_data.hybrid if form_data.hybrid else False ) return { "status": True, "template": app.state.config.RAG_TEMPLATE, "k": app.state.config.TOP_K, "r": app.state.config.RELEVANCE_THRESHOLD, "hybrid": app.state.config.ENABLE_RAG_HYBRID_SEARCH, } class QueryDocForm(BaseModel): collection_name: str query: str k: Optional[int] = None r: Optional[float] = None hybrid: Optional[bool] = None @app.post("/query/doc") def query_doc_handler( form_data: QueryDocForm, user=Depends(get_verified_user), ): try: if app.state.config.ENABLE_RAG_HYBRID_SEARCH: return query_doc_with_hybrid_search( collection_name=form_data.collection_name, query=form_data.query, embedding_function=app.state.EMBEDDING_FUNCTION, k=form_data.k if form_data.k else app.state.config.TOP_K, reranking_function=app.state.sentence_transformer_rf, r=( form_data.r if form_data.r else app.state.config.RELEVANCE_THRESHOLD ), ) else: return query_doc( collection_name=form_data.collection_name, query=form_data.query, embedding_function=app.state.EMBEDDING_FUNCTION, k=form_data.k if form_data.k else app.state.config.TOP_K, ) except Exception as e: log.exception(e) raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.DEFAULT(e), ) class QueryCollectionsForm(BaseModel): collection_names: list[str] query: str k: Optional[int] = None r: Optional[float] = None hybrid: Optional[bool] = None @app.post("/query/collection") def query_collection_handler( form_data: QueryCollectionsForm, user=Depends(get_verified_user), ): try: if app.state.config.ENABLE_RAG_HYBRID_SEARCH: return query_collection_with_hybrid_search( collection_names=form_data.collection_names, query=form_data.query, embedding_function=app.state.EMBEDDING_FUNCTION, k=form_data.k if form_data.k else app.state.config.TOP_K, reranking_function=app.state.sentence_transformer_rf, r=( form_data.r if form_data.r else app.state.config.RELEVANCE_THRESHOLD ), ) else: return query_collection( collection_names=form_data.collection_names, query=form_data.query, embedding_function=app.state.EMBEDDING_FUNCTION, k=form_data.k if form_data.k else app.state.config.TOP_K, ) except Exception as e: log.exception(e) raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.DEFAULT(e), ) @app.post("/youtube") def store_youtube_video(form_data: UrlForm, user=Depends(get_verified_user)): try: loader = YoutubeLoader.from_youtube_url( form_data.url, add_video_info=True, language=app.state.config.YOUTUBE_LOADER_LANGUAGE, translation=app.state.YOUTUBE_LOADER_TRANSLATION, ) data = loader.load() collection_name = form_data.collection_name if collection_name == "": collection_name = calculate_sha256_string(form_data.url)[:63] store_data_in_vector_db(data, collection_name, overwrite=True) return { "status": True, "collection_name": collection_name, "filename": form_data.url, } except Exception as e: log.exception(e) raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.DEFAULT(e), ) @app.post("/web") def store_web(form_data: UrlForm, user=Depends(get_verified_user)): # "https://www.gutenberg.org/files/1727/1727-h/1727-h.htm" try: loader = get_web_loader( form_data.url, verify_ssl=app.state.config.ENABLE_RAG_WEB_LOADER_SSL_VERIFICATION, ) data = loader.load() collection_name = form_data.collection_name if collection_name == "": collection_name = calculate_sha256_string(form_data.url)[:63] store_data_in_vector_db(data, collection_name, overwrite=True) return { "status": True, "collection_name": collection_name, "filename": form_data.url, } except Exception as e: log.exception(e) raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.DEFAULT(e), ) def get_web_loader(url: Union[str, Sequence[str]], verify_ssl: bool = True): # Check if the URL is valid if not validate_url(url): raise ValueError(ERROR_MESSAGES.INVALID_URL) return SafeWebBaseLoader( url, verify_ssl=verify_ssl, requests_per_second=RAG_WEB_SEARCH_CONCURRENT_REQUESTS, continue_on_failure=True, ) def validate_url(url: Union[str, Sequence[str]]): if isinstance(url, str): if isinstance(validators.url(url), validators.ValidationError): raise ValueError(ERROR_MESSAGES.INVALID_URL) if not ENABLE_RAG_LOCAL_WEB_FETCH: # Local web fetch is disabled, filter out any URLs that resolve to private IP addresses parsed_url = urllib.parse.urlparse(url) # Get IPv4 and IPv6 addresses ipv4_addresses, ipv6_addresses = resolve_hostname(parsed_url.hostname) # Check if any of the resolved addresses are private # This is technically still vulnerable to DNS rebinding attacks, as we don't control WebBaseLoader for ip in ipv4_addresses: if validators.ipv4(ip, private=True): raise ValueError(ERROR_MESSAGES.INVALID_URL) for ip in ipv6_addresses: if validators.ipv6(ip, private=True): raise ValueError(ERROR_MESSAGES.INVALID_URL) return True elif isinstance(url, Sequence): return all(validate_url(u) for u in url) else: return False def resolve_hostname(hostname): # Get address information addr_info = socket.getaddrinfo(hostname, None) # Extract IP addresses from address information ipv4_addresses = [info[4][0] for info in addr_info if info[0] == socket.AF_INET] ipv6_addresses = [info[4][0] for info in addr_info if info[0] == socket.AF_INET6] return ipv4_addresses, ipv6_addresses def search_web(engine: str, query: str) -> list[SearchResult]: """Search the web using a search engine and return the results as a list of SearchResult objects. Will look for a search engine API key in environment variables in the following order: - SEARXNG_QUERY_URL - GOOGLE_PSE_API_KEY + GOOGLE_PSE_ENGINE_ID - BRAVE_SEARCH_API_KEY - SERPSTACK_API_KEY - SERPER_API_KEY - SERPLY_API_KEY - TAVILY_API_KEY - SEARCHAPI_API_KEY + SEARCHAPI_ENGINE (by default `google`) Args: query (str): The query to search for """ # TODO: add playwright to search the web if engine == "searxng": if app.state.config.SEARXNG_QUERY_URL: return search_searxng( app.state.config.SEARXNG_QUERY_URL, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, ) else: raise Exception("No SEARXNG_QUERY_URL found in environment variables") elif engine == "google_pse": if ( app.state.config.GOOGLE_PSE_API_KEY and app.state.config.GOOGLE_PSE_ENGINE_ID ): return search_google_pse( app.state.config.GOOGLE_PSE_API_KEY, app.state.config.GOOGLE_PSE_ENGINE_ID, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, ) else: raise Exception( "No GOOGLE_PSE_API_KEY or GOOGLE_PSE_ENGINE_ID found in environment variables" ) elif engine == "brave": if app.state.config.BRAVE_SEARCH_API_KEY: return search_brave( app.state.config.BRAVE_SEARCH_API_KEY, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, ) else: raise Exception("No BRAVE_SEARCH_API_KEY found in environment variables") elif engine == "serpstack": if app.state.config.SERPSTACK_API_KEY: return search_serpstack( app.state.config.SERPSTACK_API_KEY, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, https_enabled=app.state.config.SERPSTACK_HTTPS, ) else: raise Exception("No SERPSTACK_API_KEY found in environment variables") elif engine == "serper": if app.state.config.SERPER_API_KEY: return search_serper( app.state.config.SERPER_API_KEY, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, ) else: raise Exception("No SERPER_API_KEY found in environment variables") elif engine == "serply": if app.state.config.SERPLY_API_KEY: return search_serply( app.state.config.SERPLY_API_KEY, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, ) else: raise Exception("No SERPLY_API_KEY found in environment variables") elif engine == "duckduckgo": return search_duckduckgo( query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, ) elif engine == "tavily": if app.state.config.TAVILY_API_KEY: return search_tavily( app.state.config.TAVILY_API_KEY, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, ) else: raise Exception("No TAVILY_API_KEY found in environment variables") elif engine == "searchapi": if app.state.config.SEARCHAPI_API_KEY: return search_searchapi( app.state.config.SEARCHAPI_API_KEY, app.state.config.SEARCHAPI_ENGINE, query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT, app.state.config.RAG_WEB_SEARCH_DOMAIN_FILTER_LIST, ) else: raise Exception("No SEARCHAPI_API_KEY found in environment variables") elif engine == "jina": return search_jina(query, app.state.config.RAG_WEB_SEARCH_RESULT_COUNT) else: raise Exception("No search engine API key found in environment variables") @app.post("/web/search") def store_web_search(form_data: SearchForm, user=Depends(get_verified_user)): try: logging.info( f"trying to web search with {app.state.config.RAG_WEB_SEARCH_ENGINE, form_data.query}" ) web_results = search_web( app.state.config.RAG_WEB_SEARCH_ENGINE, form_data.query ) except Exception as e: log.exception(e) print(e) raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.WEB_SEARCH_ERROR(e), ) try: urls = [result.link for result in web_results] loader = get_web_loader(urls) data = loader.load() collection_name = form_data.collection_name if collection_name == "": collection_name = calculate_sha256_string(form_data.query)[:63] store_data_in_vector_db(data, collection_name, overwrite=True) return { "status": True, "collection_name": collection_name, "filenames": urls, } except Exception as e: log.exception(e) raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.DEFAULT(e), ) def store_data_in_vector_db( data, collection_name, metadata: Optional[dict] = None, overwrite: bool = False ) -> bool: text_splitter = RecursiveCharacterTextSplitter( chunk_size=app.state.config.CHUNK_SIZE, chunk_overlap=app.state.config.CHUNK_OVERLAP, add_start_index=True, ) docs = text_splitter.split_documents(data) if len(docs) > 0: log.info(f"store_data_in_vector_db {docs}") return store_docs_in_vector_db(docs, collection_name, metadata, overwrite), None else: raise ValueError(ERROR_MESSAGES.EMPTY_CONTENT) def store_text_in_vector_db( text, metadata, collection_name, overwrite: bool = False ) -> bool: text_splitter = RecursiveCharacterTextSplitter( chunk_size=app.state.config.CHUNK_SIZE, chunk_overlap=app.state.config.CHUNK_OVERLAP, add_start_index=True, ) docs = text_splitter.create_documents([text], metadatas=[metadata]) return store_docs_in_vector_db(docs, collection_name, overwrite=overwrite) def store_docs_in_vector_db( docs, collection_name, metadata: Optional[dict] = None, overwrite: bool = False ) -> bool: log.info(f"store_docs_in_vector_db {docs} {collection_name}") texts = [doc.page_content for doc in docs] metadatas = [{**doc.metadata, **(metadata if metadata else {})} for doc in docs] # ChromaDB does not like datetime formats # for meta-data so convert them to string. for metadata in metadatas: for key, value in metadata.items(): if isinstance(value, datetime): metadata[key] = str(value) try: if overwrite: if VECTOR_DB_CLIENT.has_collection(collection_name=collection_name): log.info(f"deleting existing collection {collection_name}") VECTOR_DB_CLIENT.delete_collection(collection_name=collection_name) embedding_function = get_embedding_function( app.state.config.RAG_EMBEDDING_ENGINE, app.state.config.RAG_EMBEDDING_MODEL, app.state.sentence_transformer_ef, app.state.config.OPENAI_API_KEY, app.state.config.OPENAI_API_BASE_URL, app.state.config.RAG_EMBEDDING_OPENAI_BATCH_SIZE, ) VECTOR_DB_CLIENT.insert( collection_name=collection_name, items=[ { "id": str(uuid.uuid4()), "text": text, "vector": embedding_function(text.replace("\n", " ")), "metadata": metadatas[idx], } for idx, text in enumerate(texts) ], ) return True except Exception as e: if e.__class__.__name__ == "UniqueConstraintError": return True log.exception(e) return False class TikaLoader: def __init__(self, file_path, mime_type=None): self.file_path = file_path self.mime_type = mime_type def load(self) -> list[Document]: with open(self.file_path, "rb") as f: data = f.read() if self.mime_type is not None: headers = {"Content-Type": self.mime_type} else: headers = {} endpoint = app.state.config.TIKA_SERVER_URL if not endpoint.endswith("/"): endpoint += "/" endpoint += "tika/text" r = requests.put(endpoint, data=data, headers=headers) if r.ok: raw_metadata = r.json() text = raw_metadata.get("X-TIKA:content", "") if "Content-Type" in raw_metadata: headers["Content-Type"] = raw_metadata["Content-Type"] log.info("Tika extracted text: %s", text) return [Document(page_content=text, metadata=headers)] else: raise Exception(f"Error calling Tika: {r.reason}") def get_loader(filename: str, file_content_type: str, file_path: str): file_ext = filename.split(".")[-1].lower() known_type = True known_source_ext = [ "go", "py", "java", "sh", "bat", "ps1", "cmd", "js", "ts", "css", "cpp", "hpp", "h", "c", "cs", "sql", "log", "ini", "pl", "pm", "r", "dart", "dockerfile", "env", "php", "hs", "hsc", "lua", "nginxconf", "conf", "m", "mm", "plsql", "perl", "rb", "rs", "db2", "scala", "bash", "swift", "vue", "svelte", "msg", "ex", "exs", "erl", "tsx", "jsx", "hs", "lhs", ] if ( app.state.config.CONTENT_EXTRACTION_ENGINE == "tika" and app.state.config.TIKA_SERVER_URL ): if file_ext in known_source_ext or ( file_content_type and file_content_type.find("text/") >= 0 ): loader = TextLoader(file_path, autodetect_encoding=True) else: loader = TikaLoader(file_path, file_content_type) else: if file_ext == "pdf": loader = PyPDFLoader( file_path, extract_images=app.state.config.PDF_EXTRACT_IMAGES ) elif file_ext == "csv": loader = CSVLoader(file_path) elif file_ext == "rst": loader = UnstructuredRSTLoader(file_path, mode="elements") elif file_ext == "xml": loader = UnstructuredXMLLoader(file_path) elif file_ext in ["htm", "html"]: loader = BSHTMLLoader(file_path, open_encoding="unicode_escape") elif file_ext == "md": loader = UnstructuredMarkdownLoader(file_path) elif file_content_type == "application/epub+zip": loader = UnstructuredEPubLoader(file_path) elif ( file_content_type == "application/vnd.openxmlformats-officedocument.wordprocessingml.document" or file_ext in ["doc", "docx"] ): loader = Docx2txtLoader(file_path) elif file_content_type in [ "application/vnd.ms-excel", "application/vnd.openxmlformats-officedocument.spreadsheetml.sheet", ] or file_ext in ["xls", "xlsx"]: loader = UnstructuredExcelLoader(file_path) elif file_content_type in [ "application/vnd.ms-powerpoint", "application/vnd.openxmlformats-officedocument.presentationml.presentation", ] or file_ext in ["ppt", "pptx"]: loader = UnstructuredPowerPointLoader(file_path) elif file_ext == "msg": loader = OutlookMessageLoader(file_path) elif file_ext in known_source_ext or ( file_content_type and file_content_type.find("text/") >= 0 ): loader = TextLoader(file_path, autodetect_encoding=True) else: loader = TextLoader(file_path, autodetect_encoding=True) known_type = False return loader, known_type @app.post("/doc") def store_doc( collection_name: Optional[str] = Form(None), file: UploadFile = File(...), user=Depends(get_verified_user), ): # "https://www.gutenberg.org/files/1727/1727-h/1727-h.htm" log.info(f"file.content_type: {file.content_type}") try: unsanitized_filename = file.filename filename = os.path.basename(unsanitized_filename) file_path = f"{UPLOAD_DIR}/{filename}" contents = file.file.read() with open(file_path, "wb") as f: f.write(contents) f.close() f = open(file_path, "rb") if collection_name is None: collection_name = calculate_sha256(f)[:63] f.close() loader, known_type = get_loader(filename, file.content_type, file_path) data = loader.load() try: result = store_data_in_vector_db(data, collection_name) if result: return { "status": True, "collection_name": collection_name, "filename": filename, "known_type": known_type, } except Exception as e: raise HTTPException( status_code=status.HTTP_500_INTERNAL_SERVER_ERROR, detail=e, ) except Exception as e: log.exception(e) if "No pandoc was found" in str(e): raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.PANDOC_NOT_INSTALLED, ) else: raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.DEFAULT(e), ) class ProcessDocForm(BaseModel): file_id: str collection_name: Optional[str] = None @app.post("/process/doc") def process_doc( form_data: ProcessDocForm, user=Depends(get_verified_user), ): try: file = Files.get_file_by_id(form_data.file_id) file_path = file.meta.get("path", f"{UPLOAD_DIR}/{file.filename}") f = open(file_path, "rb") collection_name = form_data.collection_name if collection_name is None: collection_name = calculate_sha256(f)[:63] f.close() loader, known_type = get_loader( file.filename, file.meta.get("content_type"), file_path ) data = loader.load() try: result = store_data_in_vector_db( data, collection_name, { "file_id": form_data.file_id, "name": file.meta.get("name", file.filename), }, ) if result: return { "status": True, "collection_name": collection_name, "known_type": known_type, "filename": file.meta.get("name", file.filename), } except Exception as e: raise HTTPException( status_code=status.HTTP_500_INTERNAL_SERVER_ERROR, detail=e, ) except Exception as e: log.exception(e) if "No pandoc was found" in str(e): raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.PANDOC_NOT_INSTALLED, ) else: raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=ERROR_MESSAGES.DEFAULT(e), ) class TextRAGForm(BaseModel): name: str content: str collection_name: Optional[str] = None @app.post("/text") def store_text( form_data: TextRAGForm, user=Depends(get_verified_user), ): collection_name = form_data.collection_name if collection_name is None: collection_name = calculate_sha256_string(form_data.content) result = store_text_in_vector_db( form_data.content, metadata={"name": form_data.name, "created_by": user.id}, collection_name=collection_name, ) if result: return {"status": True, "collection_name": collection_name} else: raise HTTPException( status_code=status.HTTP_500_INTERNAL_SERVER_ERROR, detail=ERROR_MESSAGES.DEFAULT(), ) @app.get("/scan") def scan_docs_dir(user=Depends(get_admin_user)): for path in Path(DOCS_DIR).rglob("./**/*"): try: if path.is_file() and not path.name.startswith("."): tags = extract_folders_after_data_docs(path) filename = path.name file_content_type = mimetypes.guess_type(path) f = open(path, "rb") collection_name = calculate_sha256(f)[:63] f.close() loader, known_type = get_loader( filename, file_content_type[0], str(path) ) data = loader.load() try: result = store_data_in_vector_db(data, collection_name) if result: sanitized_filename = sanitize_filename(filename) doc = Documents.get_doc_by_name(sanitized_filename) if doc is None: doc = Documents.insert_new_doc( user.id, DocumentForm( **{ "name": sanitized_filename, "title": filename, "collection_name": collection_name, "filename": filename, "content": ( json.dumps( { "tags": list( map( lambda name: {"name": name}, tags, ) ) } ) if len(tags) else "{}" ), } ), ) except Exception as e: log.exception(e) pass except Exception as e: log.exception(e) return True @app.post("/reset/db") def reset_vector_db(user=Depends(get_admin_user)): VECTOR_DB_CLIENT.reset() @app.post("/reset/uploads") def reset_upload_dir(user=Depends(get_admin_user)) -> bool: folder = f"{UPLOAD_DIR}" try: # Check if the directory exists if os.path.exists(folder): # Iterate over all the files and directories in the specified directory for filename in os.listdir(folder): file_path = os.path.join(folder, filename) try: if os.path.isfile(file_path) or os.path.islink(file_path): os.unlink(file_path) # Remove the file or link elif os.path.isdir(file_path): shutil.rmtree(file_path) # Remove the directory except Exception as e: print(f"Failed to delete {file_path}. Reason: {e}") else: print(f"The directory {folder} does not exist") except Exception as e: print(f"Failed to process the directory {folder}. Reason: {e}") return True @app.post("/reset") def reset(user=Depends(get_admin_user)) -> bool: folder = f"{UPLOAD_DIR}" for filename in os.listdir(folder): file_path = os.path.join(folder, filename) try: if os.path.isfile(file_path) or os.path.islink(file_path): os.unlink(file_path) elif os.path.isdir(file_path): shutil.rmtree(file_path) except Exception as e: log.error("Failed to delete %s. Reason: %s" % (file_path, e)) try: VECTOR_DB_CLIENT.reset() except Exception as e: log.exception(e) return True class SafeWebBaseLoader(WebBaseLoader): """WebBaseLoader with enhanced error handling for URLs.""" def lazy_load(self) -> Iterator[Document]: """Lazy load text from the url(s) in web_path with error handling.""" for path in self.web_paths: try: soup = self._scrape(path, bs_kwargs=self.bs_kwargs) text = soup.get_text(**self.bs_get_text_kwargs) # Build metadata metadata = {"source": path} if title := soup.find("title"): metadata["title"] = title.get_text() if description := soup.find("meta", attrs={"name": "description"}): metadata["description"] = description.get( "content", "No description found." ) if html := soup.find("html"): metadata["language"] = html.get("lang", "No language found.") yield Document(page_content=text, metadata=metadata) except Exception as e: # Log the error and continue with the next URL log.error(f"Error loading {path}: {e}") if ENV == "dev": @app.get("/ef") async def get_embeddings(): return {"result": app.state.EMBEDDING_FUNCTION("hello world")} @app.get("/ef/{text}") async def get_embeddings_text(text: str): return {"result": app.state.EMBEDDING_FUNCTION(text)}