""" LightRAG FastAPI Server """ from fastapi import FastAPI, Depends, HTTPException, Request from fastapi.exceptions import RequestValidationError from fastapi.responses import JSONResponse, FileResponse, HTMLResponse, Response from fastapi.openapi.docs import ( get_swagger_ui_html, get_swagger_ui_oauth2_redirect_html, ) import json import os import re import logging import logging.config import sys import textwrap import uvicorn import pipmaster as pm from typing import Any from fastapi.staticfiles import StaticFiles from fastapi.responses import RedirectResponse from pathlib import Path from ascii_colors import ASCIIColors from fastapi.middleware.cors import CORSMiddleware from contextlib import asynccontextmanager from dotenv import load_dotenv from lightrag.api.utils_api import ( get_combined_auth_dependency, display_splash_screen, check_env_file, ) from .config import ( global_args, update_uvicorn_mode_config, get_default_host, resolve_asymmetric_embedding_opt_in, PREFIX_ASYMMETRIC_EMBEDDING_BINDINGS, ) from lightrag.utils import get_env_value from lightrag import LightRAG, ROLES, RoleLLMConfig, __version__ as core_version from lightrag.api import __api_version__ from lightrag.utils import EmbeddingFunc from lightrag.constants import ( DEFAULT_LOG_MAX_BYTES, DEFAULT_LOG_BACKUP_COUNT, DEFAULT_LOG_FILENAME, ) from lightrag.api.routers.document_routes import ( DocumentManager, create_document_routes, ) from lightrag.parser.routing import ( parser_rules_from_env, validate_parser_routing_config, ) from lightrag.parser.external.mineru.cache import MinerUParserOptions from lightrag.api.routers.query_routes import create_query_routes from lightrag.api.routers.graph_routes import create_graph_routes from lightrag.api.routers.ollama_api import OllamaAPI from lightrag.utils import logger, set_verbose_debug from lightrag.kg.shared_storage import ( get_namespace_data, get_default_workspace, # set_default_workspace, cleanup_keyed_lock, finalize_share_data, ) from fastapi.security import OAuth2PasswordRequestForm from lightrag.api.auth import auth_handler # use the .env that is inside the current folder # allows to use different .env file for each lightrag instance # the OS environment variables take precedence over the .env file load_dotenv(dotenv_path=".env", override=False) webui_title = os.getenv("WEBUI_TITLE") webui_description = os.getenv("WEBUI_DESCRIPTION") # Global authentication configuration auth_configured = bool(auth_handler.accounts) def _inject_swagger_theme(html: str, theme: str) -> str: if theme not in {"dark", "light"}: theme = "auto" # The script resolves dark / light / (auto + prefers-color-scheme) into a # single boolean attribute `data-lightrag-docs-dark` on . CSS below # only matches when that attribute is present, so light/auto-light paths # leave Swagger UI's default palette untouched. theme_snippet = textwrap.dedent( f""" """ ).strip() needle = "" if needle not in html: logger.warning( "Swagger UI HTML missing tag; theme patch was skipped. " "FastAPI's swagger template may have changed." ) return html return html.replace(needle, f"{theme_snippet}\n{needle}", 1) # Fixed WebUI mount path. Used as `app.mount(WEBUI_PATH, ...)` and as the # in-app component of `webuiPrefix` injected into window.__LIGHTRAG_CONFIG__ # (which the browser sees as `LIGHTRAG_API_PREFIX + WEBUI_PATH + "/"`). # Not user-configurable: a single mount path simplifies the operator surface # and matches how LightRAG is deployed in practice. See # docs/MultiSiteDeployment.md. WEBUI_PATH = "/webui" def _normalize_api_prefix(value: str | None) -> str: """Canonicalize an API prefix before handing it to FastAPI's ``root_path``. Strips surrounding whitespace, ensures a leading slash, drops a trailing slash, and treats empty/"/" as "no prefix". Raw CLI/env input like ``"site01"`` or ``"/site01/"`` would otherwise feed an invalid form to FastAPI and to the WebUI prefix injection. """ if value is None: return "" value = value.strip() if not value or value == "/": return "" if not value.startswith("/"): value = "/" + value return value.rstrip("/") class _RootPathNormalizationMiddleware: """Make Mount sub-apps work when the reverse proxy strips the API prefix. When ``LIGHTRAG_API_PREFIX=/site01`` and nginx strips ``/site01`` before forwarding, the backend sees ``scope["path"]="/webui/"`` while FastAPI's ``__call__`` sets ``scope["root_path"]="/site01"``. Starlette's outer Mount.matches still hits via ``get_route_path`` 's fallback branch (path not starting with root_path is returned unchanged), but it mutates the child scope to ``root_path="/site01/webui"`` without touching ``scope["path"]``. The inner ``StaticFiles.get_path`` then sees a non-overlapping pair and falls through to a literal ``webui`` filename lookup → 404 on the actual file system. Prepending ``root_path`` to a non-prefixed ``scope["path"]`` restores the canonical ASGI form (path always contains root_path), matching what a verbatim-forwarding proxy produces natively. Plain Routes are unaffected because their handlers do not redo nested ``get_route_path`` resolution. See docs/MultiSiteDeployment.md for the deployment modes this enables. """ def __init__(self, app): self.app = app async def __call__(self, scope, receive, send): if scope.get("type") in ("http", "websocket"): root_path = scope.get("root_path", "") path = scope.get("path", "") if root_path and not path.startswith(root_path): scope = {**scope, "path": root_path + path} raw_path = scope.get("raw_path") if isinstance(raw_path, (bytes, bytearray)): scope["raw_path"] = root_path.encode("ascii") + bytes(raw_path) await self.app(scope, receive, send) def _clean_workspace_value(value: Any) -> str | None: if value is None: return None text = str(value).strip() return text or None def _get_storage_workspace(storage: Any) -> str | None: if storage is None: return None effective_workspace = _clean_workspace_value( getattr(storage, "effective_workspace", None) ) if effective_workspace: return effective_workspace final_namespace = _clean_workspace_value(getattr(storage, "final_namespace", None)) namespace = _clean_workspace_value(getattr(storage, "namespace", None)) if final_namespace and namespace: suffix = f"_{namespace}" if final_namespace.endswith(suffix): workspace = final_namespace[: -len(suffix)] if workspace: return workspace return _clean_workspace_value(getattr(storage, "workspace", None)) def _get_storage_workspaces(rag: Any) -> dict[str, str | None]: return { "kv_storage": _get_storage_workspace(getattr(rag, "full_docs", None)), "doc_status_storage": _get_storage_workspace(getattr(rag, "doc_status", None)), "graph_storage": _get_storage_workspace( getattr(rag, "chunk_entity_relation_graph", None) ), "vector_storage": _get_storage_workspace(getattr(rag, "entities_vdb", None)), } def _build_mineru_status() -> dict[str, Any]: """Snapshot MinerU-related env vars for the /health endpoint. Reads env directly (no MinerURawClient instantiation — that has side effects like token validation). Reuses MinerUParserOptions to share defaulting logic with the actual parser path. """ api_mode_raw = os.getenv("MINERU_API_MODE", "").strip().lower() api_mode: str | None = api_mode_raw or None endpoint = "" if api_mode == "official": endpoint = os.getenv("MINERU_OFFICIAL_ENDPOINT", "").strip() elif api_mode == "local": endpoint = os.getenv("MINERU_LOCAL_ENDPOINT", "").strip() options: dict[str, Any] = {} if api_mode in ("official", "local"): try: opts = MinerUParserOptions.from_env(api_mode=api_mode) except Exception: opts = None if opts is not None: options = { "language": opts.language, "enable_table": opts.enable_table, "enable_formula": opts.enable_formula, } if opts.api_mode == "official": options["model_version"] = opts.model_version options["is_ocr"] = opts.is_ocr else: options["local_backend"] = opts.local_backend options["local_parse_method"] = opts.local_parse_method options["local_image_analysis"] = opts.local_image_analysis return {"endpoint": endpoint, "api_mode": api_mode, "options": options} def _build_docling_status() -> dict[str, Any]: """Snapshot Docling-related env vars for the /health endpoint.""" endpoint = os.getenv("DOCLING_ENDPOINT", "").strip() if not endpoint: return {"endpoint": "", "options": {}} return { "endpoint": endpoint, "options": { "do_ocr": get_env_value("DOCLING_DO_OCR", True, bool), "force_ocr": get_env_value("DOCLING_FORCE_OCR", True, bool), "ocr_engine": os.getenv("DOCLING_OCR_ENGINE", "auto").strip() or "auto", "ocr_lang": os.getenv("DOCLING_OCR_LANG", "").strip(), "do_formula_enrichment": get_env_value( "DOCLING_DO_FORMULA_ENRICHMENT", False, bool ), }, } class LLMConfigCache: """Smart LLM and Embedding configuration cache class""" def __init__(self, args): self.args = args # Initialize configurations based on binding conditions self.openai_llm_options = None self.gemini_llm_options = None self.gemini_embedding_options = None self.ollama_llm_options = None self.ollama_embedding_options = None self.bedrock_llm_options = None # Only initialize and log OpenAI options when using OpenAI-related bindings if args.llm_binding in ["openai", "azure_openai"]: from lightrag.llm.binding_options import OpenAILLMOptions self.openai_llm_options = OpenAILLMOptions.options_dict(args) logger.info(f"OpenAI LLM Options: {self.openai_llm_options}") if args.llm_binding == "gemini": from lightrag.llm.binding_options import GeminiLLMOptions self.gemini_llm_options = GeminiLLMOptions.options_dict(args) logger.info(f"Gemini LLM Options: {self.gemini_llm_options}") if args.llm_binding == "bedrock": from lightrag.llm.binding_options import BedrockLLMOptions self.bedrock_llm_options = BedrockLLMOptions.options_dict(args) logger.info(f"Bedrock LLM Options: {self.bedrock_llm_options}") # Only initialize and log Ollama LLM options when using Ollama LLM binding if args.llm_binding == "ollama": try: from lightrag.llm.binding_options import OllamaLLMOptions self.ollama_llm_options = OllamaLLMOptions.options_dict(args) logger.info(f"Ollama LLM Options: {self.ollama_llm_options}") except ImportError: logger.warning( "OllamaLLMOptions not available, using default configuration" ) self.ollama_llm_options = {} # Only initialize and log Ollama Embedding options when using Ollama Embedding binding if args.embedding_binding == "ollama": try: from lightrag.llm.binding_options import OllamaEmbeddingOptions self.ollama_embedding_options = OllamaEmbeddingOptions.options_dict( args ) logger.info( f"Ollama Embedding Options: {self.ollama_embedding_options}" ) except ImportError: logger.warning( "OllamaEmbeddingOptions not available, using default configuration" ) self.ollama_embedding_options = {} # Only initialize and log Gemini Embedding options when using Gemini Embedding binding if args.embedding_binding == "gemini": try: from lightrag.llm.binding_options import GeminiEmbeddingOptions self.gemini_embedding_options = GeminiEmbeddingOptions.options_dict( args ) logger.info( f"Gemini Embedding Options: {self.gemini_embedding_options}" ) except ImportError: logger.warning( "GeminiEmbeddingOptions not available, using default configuration" ) self.gemini_embedding_options = {} _PROVIDER_LOG_LABELS = { "azure_openai": "Azure OpenAI", "bedrock": "Bedrock", "gemini": "Gemini", "lollms": "Lollms", "ollama": "Ollama", "openai": "OpenAI", } def _provider_log_label(binding: Any) -> str: binding_name = str(binding) return _PROVIDER_LOG_LABELS.get( binding_name, binding_name.replace("_", " ").title() ) def _log_role_provider_options(rag: Any) -> None: """Log sanitized provider options for every role LLM.""" try: role_configs = rag.get_llm_role_config() except Exception as e: logger.warning(f"Failed to read role LLM configuration for logging: {e}") return logger.info("Role LLM Option:") for spec in ROLES: role_config = role_configs.get(spec.name) if not isinstance(role_config, dict): continue metadata = role_config.get("metadata") or {} binding = role_config.get("binding") or metadata.get("binding") if not binding: continue provider_options = metadata.get("provider_options") or {} logger.info( " - %s: %s %s", spec.name, _provider_log_label(binding), provider_options, ) def check_frontend_build(): """Check if frontend is built and optionally check if source is up-to-date Returns: tuple: (assets_exist: bool, is_outdated: bool) - assets_exist: True if WebUI build files exist - is_outdated: True if source is newer than build (only in dev environment) """ webui_dir = Path(__file__).parent / "webui" index_html = webui_dir / "index.html" # 1. Check if build files exist if not index_html.exists(): ASCIIColors.yellow("\n" + "=" * 80) ASCIIColors.yellow("WARNING: Frontend Not Built") ASCIIColors.yellow("=" * 80) ASCIIColors.yellow("The WebUI frontend has not been built yet.") ASCIIColors.yellow("The API server will start without the WebUI interface.") ASCIIColors.yellow( "\nTo enable WebUI, build the frontend using these commands:\n" ) ASCIIColors.cyan(" cd lightrag_webui") ASCIIColors.cyan(" bun install --frozen-lockfile") ASCIIColors.cyan(" bun run build") ASCIIColors.cyan(" cd ..") ASCIIColors.yellow("\nThen restart the service.\n") ASCIIColors.cyan( "Note: Make sure you have Bun installed. Visit https://bun.sh for installation." ) ASCIIColors.yellow("=" * 80 + "\n") return (False, False) # Assets don't exist, not outdated # 2. Check if this is a development environment (source directory exists) try: source_dir = Path(__file__).parent.parent.parent / "lightrag_webui" src_dir = source_dir / "src" # Determine if this is a development environment: source directory exists and contains src directory if not source_dir.exists() or not src_dir.exists(): # Production environment, skip source code check logger.debug( "Production environment detected, skipping source freshness check" ) return (True, False) # Assets exist, not outdated (prod environment) # Development environment, perform source code timestamp check logger.debug("Development environment detected, checking source freshness") # Source code file extensions (files to check) source_extensions = { ".ts", ".tsx", ".js", ".jsx", ".mjs", ".cjs", # TypeScript/JavaScript ".css", ".scss", ".sass", ".less", # Style files ".json", ".jsonc", # Configuration/data files ".html", ".htm", # Template files ".md", ".mdx", # Markdown } # Key configuration files (in lightrag_webui root directory) key_files = [ source_dir / "package.json", source_dir / "bun.lock", source_dir / "vite.config.ts", source_dir / "tsconfig.json", source_dir / "tailraid.config.js", source_dir / "index.html", ] # Get the latest modification time of source code latest_source_time = 0 # Check source code files in src directory for file_path in src_dir.rglob("*"): if file_path.is_file(): # Only check source code files, ignore temporary files and logs if file_path.suffix.lower() in source_extensions: mtime = file_path.stat().st_mtime latest_source_time = max(latest_source_time, mtime) # Check key configuration files for key_file in key_files: if key_file.exists(): mtime = key_file.stat().st_mtime latest_source_time = max(latest_source_time, mtime) # Get build time build_time = index_html.stat().st_mtime # Compare timestamps (5 second tolerance to avoid file system time precision issues) if latest_source_time > build_time + 5: ASCIIColors.yellow("\n" + "=" * 80) ASCIIColors.yellow("WARNING: Frontend Source Code Has Been Updated") ASCIIColors.yellow("=" * 80) ASCIIColors.yellow( "The frontend source code is newer than the current build." ) ASCIIColors.yellow( "This might happen after 'git pull' or manual code changes.\n" ) ASCIIColors.cyan( "Recommended: Rebuild the frontend to use the latest changes:" ) ASCIIColors.cyan(" cd lightrag_webui") ASCIIColors.cyan(" bun install --frozen-lockfile") ASCIIColors.cyan(" bun run build") ASCIIColors.cyan(" cd ..") ASCIIColors.yellow("\nThe server will continue with the current build.") ASCIIColors.yellow("=" * 80 + "\n") return (True, True) # Assets exist, outdated else: logger.info("Frontend build is up-to-date") return (True, False) # Assets exist, up-to-date except Exception as e: # If check fails, log warning but don't affect startup logger.warning(f"Failed to check frontend source freshness: {e}") return (True, False) # Assume assets exist and up-to-date on error def create_app(args): # Check frontend build first and get status webui_assets_exist, is_frontend_outdated = check_frontend_build() # Create unified API version display with warning symbol if frontend is outdated api_version_display = ( f"{__api_version__}⚠️" if is_frontend_outdated else __api_version__ ) # Setup logging logger.setLevel(args.log_level) set_verbose_debug(args.verbose) validate_parser_routing_config() # Create configuration cache (this will output configuration logs) config_cache = LLMConfigCache(args) # Verify that bindings are correctly setup if args.llm_binding not in [ "lollms", "ollama", "openai", "azure_openai", "bedrock", "gemini", ]: raise Exception("llm binding not supported") if args.embedding_binding not in [ "lollms", "ollama", "openai", "azure_openai", "bedrock", "jina", "gemini", "voyageai", ]: raise Exception(f"embedding binding '{args.embedding_binding}' not supported") # Set default hosts if not provided if args.llm_binding_host is None: args.llm_binding_host = get_default_host(args.llm_binding) if args.embedding_binding_host is None: args.embedding_binding_host = get_default_host(args.embedding_binding) # Add SSL validation if args.ssl: if not args.ssl_certfile or not args.ssl_keyfile: raise Exception( "SSL certificate and key files must be provided when SSL is enabled" ) if not os.path.exists(args.ssl_certfile): raise Exception(f"SSL certificate file not found: {args.ssl_certfile}") if not os.path.exists(args.ssl_keyfile): raise Exception(f"SSL key file not found: {args.ssl_keyfile}") # Check if API key is provided either through env var or args api_key = os.getenv("LIGHTRAG_API_KEY") or args.key # Initialize document manager with workspace support for data isolation doc_manager = DocumentManager(args.input_dir, workspace=args.workspace) @asynccontextmanager async def lifespan(app: FastAPI): """Lifespan context manager for startup and shutdown events""" # Store background tasks app.state.background_tasks = set() try: # Initialize database connections # Note: initialize_storages() now auto-initializes pipeline_status for rag.workspace await rag.initialize_storages() # Data migration regardless of storage implementation await rag.check_and_migrate_data() ASCIIColors.green("\nServer is ready to accept connections! 🚀\n") yield finally: # Clean up database connections await rag.finalize_storages() if "LIGHTRAG_GUNICORN_MODE" not in os.environ: # Only perform cleanup in Uvicorn single-process mode logger.debug("Unvicorn Mode: finalizing shared storage...") finalize_share_data() else: # In Gunicorn mode with preload_app=True, cleanup is handled by on_exit hooks logger.debug( "Gunicorn Mode: postpone shared storage finalization to master process" ) base_description = ( "Providing API for LightRAG core, Web UI and Ollama Model Emulation" ) swagger_description = ( base_description + (" (API-Key Enabled)" if api_key else "") + "\n\n[View ReDoc documentation](/redoc)" ) # The WebUI mount path is fixed at "/webui" — see # docs/MultiSiteDeployment.md for the rationale. api_prefix = _normalize_api_prefix(getattr(args, "api_prefix", None)) webui_path = WEBUI_PATH app_kwargs = { "title": "LightRAG Server API", "description": swagger_description, "version": __api_version__, "openapi_url": "/openapi.json", "docs_url": None, # custom endpoint for offline Swagger support "redoc_url": "/redoc", "root_path": api_prefix if api_prefix else None, "lifespan": lifespan, } # Configure Swagger UI parameters # Enable persistAuthorization and tryItOutEnabled for better user experience app_kwargs["swagger_ui_parameters"] = { "persistAuthorization": True, "tryItOutEnabled": True, } app = FastAPI(**app_kwargs) # Add custom validation error handler for /query/data endpoint @app.exception_handler(RequestValidationError) async def validation_exception_handler( request: Request, exc: RequestValidationError ): # Check if this is a request to /query/data endpoint if request.url.path.endswith("/query/data"): # Extract error details error_details = [] for error in exc.errors(): field_path = " -> ".join(str(loc) for loc in error["loc"]) error_details.append(f"{field_path}: {error['msg']}") error_message = "; ".join(error_details) # Return in the expected format for /query/data return JSONResponse( status_code=400, content={ "status": "failure", "message": f"Validation error: {error_message}", "data": {}, "metadata": {}, }, ) else: # For other endpoints, return the default FastAPI validation error return JSONResponse(status_code=422, content={"detail": exc.errors()}) def get_cors_origins(): """Get allowed origins from global_args Returns a list of allowed origins, defaults to ["*"] if not set """ origins_str = global_args.cors_origins if origins_str == "*": return ["*"] return [origin.strip() for origin in origins_str.split(",")] # Normalize scope["path"] for proxy-strip deployments so the WebUI # Mount (and any other Mount) routes correctly. Added before CORS so it # runs first in the middleware stack — see _RootPathNormalizationMiddleware # docstring. if api_prefix: app.add_middleware(_RootPathNormalizationMiddleware) # Add CORS middleware app.add_middleware( CORSMiddleware, allow_origins=get_cors_origins(), allow_credentials=True, allow_methods=["*"], allow_headers=["*"], expose_headers=[ "X-New-Token" ], # Expose token renewal header for cross-origin requests ) # Create combined auth dependency for all endpoints combined_auth = get_combined_auth_dependency(api_key) def get_workspace_from_request(request: Request) -> str | None: """ Extract workspace from HTTP request header or use default. This enables multi-workspace API support by checking the custom 'LIGHTRAG-WORKSPACE' header. If not present, falls back to the server's default workspace configuration. Args: request: FastAPI Request object Returns: Workspace identifier (may be empty string for global namespace) """ # Check custom header first workspace = request.headers.get("LIGHTRAG-WORKSPACE", "").strip() if not workspace: workspace = None else: sanitized = re.sub(r"[^a-zA-Z0-9_]", "_", workspace) if sanitized != workspace: logger.warning( f"Workspace header '{workspace}' contains invalid characters. " f"Sanitized to '{sanitized}'." ) workspace = sanitized return workspace # Create working directory if it doesn't exist Path(args.working_dir).mkdir(parents=True, exist_ok=True) def create_optimized_openai_llm_func( config_cache: LLMConfigCache, args, llm_timeout: int ): """Create optimized OpenAI LLM function with pre-processed configuration""" async def optimized_openai_alike_model_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: from lightrag.llm.openai import openai_complete_if_cache if history_messages is None: history_messages = [] # Use pre-processed configuration to avoid repeated parsing. # response_format and legacy keyword_extraction/entity_extraction # flags flow through **kwargs; openai_complete_if_cache handles # the deprecation shim for the legacy booleans. kwargs["timeout"] = llm_timeout if config_cache.openai_llm_options: kwargs.update(config_cache.openai_llm_options) return await openai_complete_if_cache( args.llm_model, prompt, system_prompt=system_prompt, history_messages=history_messages, base_url=args.llm_binding_host, api_key=args.llm_binding_api_key, **kwargs, ) return optimized_openai_alike_model_complete def create_optimized_azure_openai_llm_func( config_cache: LLMConfigCache, args, llm_timeout: int ): """Create optimized Azure OpenAI LLM function with pre-processed configuration""" async def optimized_azure_openai_model_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: from lightrag.llm.azure_openai import azure_openai_complete_if_cache if history_messages is None: history_messages = [] # response_format and legacy extraction booleans flow through kwargs # to azure_openai_complete_if_cache, which handles deprecation shims. kwargs["timeout"] = llm_timeout if config_cache.openai_llm_options: kwargs.update(config_cache.openai_llm_options) return await azure_openai_complete_if_cache( args.llm_model, prompt, system_prompt=system_prompt, history_messages=history_messages, base_url=args.llm_binding_host, api_key=os.getenv("AZURE_OPENAI_API_KEY", args.llm_binding_api_key), api_version=os.getenv("AZURE_OPENAI_API_VERSION", "2024-08-01-preview"), **kwargs, ) return optimized_azure_openai_model_complete def create_optimized_gemini_llm_func( config_cache: LLMConfigCache, args, llm_timeout: int ): """Create optimized Gemini LLM function with cached configuration""" async def optimized_gemini_model_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: from lightrag.llm.gemini import gemini_complete_if_cache if history_messages is None: history_messages = [] # response_format and legacy extraction booleans flow through kwargs # to gemini_complete_if_cache, which handles deprecation shims. kwargs["timeout"] = llm_timeout if ( config_cache.gemini_llm_options is not None and "generation_config" not in kwargs ): kwargs["generation_config"] = dict(config_cache.gemini_llm_options) return await gemini_complete_if_cache( args.llm_model, prompt, system_prompt=system_prompt, history_messages=history_messages, api_key=args.llm_binding_api_key, base_url=args.llm_binding_host, **kwargs, ) return optimized_gemini_model_complete def create_llm_model_func(binding: str): """ Create LLM model function based on binding type. Uses optimized functions for OpenAI bindings and lazy import for others. """ try: if binding == "lollms": from lightrag.llm.lollms import lollms_model_complete return lollms_model_complete elif binding == "ollama": from lightrag.llm.ollama import ollama_model_complete return ollama_model_complete elif binding == "bedrock": return bedrock_model_complete # Already defined locally elif binding == "azure_openai": # Use optimized function with pre-processed configuration return create_optimized_azure_openai_llm_func( config_cache, args, llm_timeout ) elif binding == "gemini": return create_optimized_gemini_llm_func(config_cache, args, llm_timeout) else: # openai and compatible # Use optimized function with pre-processed configuration return create_optimized_openai_llm_func(config_cache, args, llm_timeout) except ImportError as e: raise Exception(f"Failed to import {binding} LLM binding: {e}") def create_llm_model_kwargs(binding: str, args, llm_timeout: int) -> dict: """ Create LLM model kwargs based on binding type. Uses lazy import for binding-specific options. """ if binding in ["lollms", "ollama"]: try: from lightrag.llm.binding_options import OllamaLLMOptions return { "host": args.llm_binding_host, "timeout": llm_timeout, "options": OllamaLLMOptions.options_dict(args), "api_key": args.llm_binding_api_key, } except ImportError as e: raise Exception(f"Failed to import {binding} options: {e}") return {} def resolve_role_llm_settings( role: str, override_meta: dict | None = None ) -> dict[str, Any]: attr = role.lower() override_meta = override_meta or {} role_binding = ( override_meta.get("binding") or getattr(args, f"{attr}_llm_binding", None) or args.llm_binding ) role_model = ( override_meta.get("model") or getattr(args, f"{attr}_llm_model", None) or args.llm_model ) role_host = ( override_meta.get("host") or getattr(args, f"{attr}_llm_binding_host", None) or args.llm_binding_host ) explicit_role_apikey = override_meta.get("api_key") or getattr( args, f"{attr}_llm_binding_api_key", None ) if role_binding == "bedrock": if explicit_role_apikey: raise ValueError( f"Bedrock role '{role}' does not support role-specific " "LLM_BINDING_API_KEY; use role-specific SigV4 AWS_* " "variables or process-level AWS_BEARER_TOKEN_BEDROCK." ) role_apikey = None else: role_apikey = explicit_role_apikey or args.llm_binding_api_key role_timeout = ( override_meta.get("timeout") or getattr(args, f"{attr}_llm_timeout", None) or llm_timeout ) role_max_async = override_meta.get("max_async") if role_max_async is None: role_max_async = getattr(args, f"{attr}_llm_max_async", None) is_cross_provider = role_binding != args.llm_binding role_provider_options = override_meta.get("provider_options") if role_provider_options is None: if role_binding in ["openai", "azure_openai"]: from lightrag.llm.binding_options import OpenAILLMOptions role_provider_options = OpenAILLMOptions.options_dict_for_role( args, role, is_cross_provider ) elif role_binding == "gemini": from lightrag.llm.binding_options import GeminiLLMOptions role_provider_options = GeminiLLMOptions.options_dict_for_role( args, role, is_cross_provider ) elif role_binding in ["lollms", "ollama"]: from lightrag.llm.binding_options import OllamaLLMOptions role_provider_options = OllamaLLMOptions.options_dict_for_role( args, role, is_cross_provider ) elif role_binding == "bedrock": from lightrag.llm.binding_options import BedrockLLMOptions role_provider_options = BedrockLLMOptions.options_dict_for_role( args, role, is_cross_provider ) else: role_provider_options = {} bedrock_aws_options = {} if role_binding == "bedrock": override_bedrock_aws_options = override_meta.get("bedrock_aws_options", {}) bedrock_aws_options = { "aws_region": override_meta.get("aws_region") or override_bedrock_aws_options.get("aws_region") or getattr(args, f"{attr}_aws_region", None) or getattr(args, "aws_region", None), "aws_access_key_id": override_meta.get("aws_access_key_id") or override_bedrock_aws_options.get("aws_access_key_id") or getattr(args, f"{attr}_aws_access_key_id", None) or getattr(args, "aws_access_key_id", None), "aws_secret_access_key": override_meta.get("aws_secret_access_key") or override_bedrock_aws_options.get("aws_secret_access_key") or getattr(args, f"{attr}_aws_secret_access_key", None) or getattr(args, "aws_secret_access_key", None), "aws_session_token": override_meta.get("aws_session_token") or override_bedrock_aws_options.get("aws_session_token") or getattr(args, f"{attr}_aws_session_token", None) or getattr(args, "aws_session_token", None), } return { "binding": role_binding, "model": role_model, "host": role_host, "api_key": role_apikey, "timeout": role_timeout, "max_async": role_max_async, "provider_options": role_provider_options, "is_cross_provider": is_cross_provider, "bedrock_aws_options": bedrock_aws_options, } def create_role_llm_func(role: str, override_meta: dict | None = None): """Create an independent raw LLM function for a role.""" settings = resolve_role_llm_settings(role, override_meta) role_binding = settings["binding"] role_model = settings["model"] role_host = settings["host"] role_apikey = settings["api_key"] role_timeout = settings["timeout"] role_provider_options = settings["provider_options"] bedrock_aws_options = settings["bedrock_aws_options"] try: if role_binding == "ollama": from lightrag.llm.ollama import _ollama_model_if_cache async def role_ollama_complete( prompt, system_prompt=None, history_messages=None, enable_cot: bool = False, **kwargs, ): # response_format and legacy extraction booleans flow # through kwargs to _ollama_model_if_cache, which handles # the deprecation shim and emits a single warning. if history_messages is None: history_messages = [] if role_provider_options: kwargs.setdefault("options", dict(role_provider_options)) return await _ollama_model_if_cache( role_model, prompt, system_prompt=system_prompt, history_messages=history_messages, enable_cot=enable_cot, host=role_host, timeout=role_timeout, api_key=role_apikey, **kwargs, ) return role_ollama_complete if role_binding == "lollms": from lightrag.llm.lollms import lollms_model_if_cache async def role_lollms_complete( prompt, system_prompt=None, history_messages=None, enable_cot: bool = False, **kwargs, ): # response_format and legacy extraction booleans flow # through kwargs to lollms_model_if_cache, which drops # them and emits deprecation warnings when booleans are set. if history_messages is None: history_messages = [] if role_provider_options: kwargs = {**role_provider_options, **kwargs} return await lollms_model_if_cache( role_model, prompt, system_prompt=system_prompt, history_messages=history_messages, enable_cot=enable_cot, base_url=role_host, api_key=role_apikey, timeout=role_timeout, **kwargs, ) return role_lollms_complete if role_binding == "bedrock": from lightrag.llm.bedrock import bedrock_complete_if_cache async def role_bedrock_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: if history_messages is None: history_messages = [] if role_provider_options: kwargs = {**role_provider_options, **kwargs} return await bedrock_complete_if_cache( role_model, prompt, system_prompt=system_prompt, history_messages=history_messages, endpoint_url=role_host, **bedrock_aws_options, **kwargs, ) return role_bedrock_complete if role_binding == "azure_openai": from lightrag.llm.azure_openai import azure_openai_complete_if_cache async def role_azure_openai_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: if history_messages is None: history_messages = [] kwargs["timeout"] = role_timeout if role_provider_options: kwargs.update(role_provider_options) return await azure_openai_complete_if_cache( role_model, prompt, system_prompt=system_prompt, history_messages=history_messages, base_url=role_host, api_key=role_apikey or os.getenv("AZURE_OPENAI_API_KEY"), api_version=os.getenv( "AZURE_OPENAI_API_VERSION", "2024-08-01-preview" ), **kwargs, ) return role_azure_openai_complete if role_binding == "gemini": from lightrag.llm.gemini import gemini_complete_if_cache async def role_gemini_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: if history_messages is None: history_messages = [] kwargs["timeout"] = role_timeout if role_provider_options and "generation_config" not in kwargs: kwargs["generation_config"] = dict(role_provider_options) return await gemini_complete_if_cache( role_model, prompt, system_prompt=system_prompt, history_messages=history_messages, api_key=role_apikey, base_url=role_host, **kwargs, ) return role_gemini_complete from lightrag.llm.openai import openai_complete_if_cache async def role_openai_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: if history_messages is None: history_messages = [] kwargs["timeout"] = role_timeout if role_provider_options: kwargs.update(role_provider_options) return await openai_complete_if_cache( role_model, prompt, system_prompt=system_prompt, history_messages=history_messages, base_url=role_host, api_key=role_apikey, **kwargs, ) return role_openai_complete except ImportError as e: raise Exception(f"Failed to create LLM for role '{role}': {e}") def create_role_llm_model_kwargs( role: str, override_meta: dict | None = None ) -> dict[str, Any] | None: """Create role-specific kwargs for runtime wrapper injection. Role functions built above already encapsulate provider host/model/api_key/options, so we intentionally return an empty dict here to prevent base kwargs inheritance from polluting cross-provider role calls. """ _ = role _ = override_meta return {} def create_optimized_embedding_function( config_cache: LLMConfigCache, binding, model, host, api_key, args, document_prefix=None, query_prefix=None, ) -> EmbeddingFunc: """ Create optimized embedding function and return an EmbeddingFunc instance with proper max_token_size inheritance from provider defaults. This function: 1. Imports the provider embedding function 2. Extracts max_token_size and embedding_dim from provider if it's an EmbeddingFunc 3. Creates an optimized wrapper that calls the underlying function directly (avoiding double-wrapping) 4. Returns a properly configured EmbeddingFunc instance Configuration Rules: - When EMBEDDING_MODEL is not set: Uses provider's default model and dimension (e.g., jina-embeddings-v4 with 2048 dims, text-embedding-3-small with 1536 dims) - When EMBEDDING_MODEL is set to a custom model: User MUST also set EMBEDDING_DIM to match the custom model's dimension (e.g., for jina-embeddings-v3, set EMBEDDING_DIM=1024) Note: The embedding_dim parameter is automatically injected by EmbeddingFunc wrapper when send_dimensions=True (enabled for Jina and Gemini bindings). This wrapper calls the underlying provider function directly (.func) to avoid double-wrapping, so we must explicitly pass embedding_dim to the provider's underlying function. """ # Step 1: Import provider function and extract default attributes provider_func = None provider_max_token_size = None provider_embedding_dim = None provider_supports_asymmetric = False try: if binding == "openai": from lightrag.llm.openai import openai_embed provider_func = openai_embed elif binding == "ollama": from lightrag.llm.ollama import ollama_embed provider_func = ollama_embed elif binding == "gemini": from lightrag.llm.gemini import gemini_embed provider_func = gemini_embed elif binding == "jina": from lightrag.llm.jina import jina_embed provider_func = jina_embed elif binding == "azure_openai": from lightrag.llm.azure_openai import azure_openai_embed provider_func = azure_openai_embed elif binding == "bedrock": from lightrag.llm.bedrock import bedrock_embed provider_func = bedrock_embed elif binding == "lollms": from lightrag.llm.lollms import lollms_embed provider_func = lollms_embed elif binding == "voyageai": from lightrag.llm.voyageai import voyageai_embed provider_func = voyageai_embed # Extract attributes if provider is an EmbeddingFunc if provider_func and isinstance(provider_func, EmbeddingFunc): provider_max_token_size = provider_func.max_token_size provider_embedding_dim = provider_func.embedding_dim provider_supports_asymmetric = provider_func.supports_asymmetric logger.debug( f"Extracted from {binding} provider: " f"max_token_size={provider_max_token_size}, " f"embedding_dim={provider_embedding_dim}, " f"supports_asymmetric={provider_supports_asymmetric}" ) except ImportError as e: logger.warning(f"Could not import provider function for {binding}: {e}") # Step 2: Apply priority (user config > provider default) # For max_token_size: explicit env var > provider default > None final_max_token_size = args.embedding_token_limit or provider_max_token_size # For embedding_dim: user config (always has value) takes priority # Only use provider default if user config is explicitly None (which shouldn't happen) final_embedding_dim = ( args.embedding_dim if args.embedding_dim else provider_embedding_dim ) # Asymmetric embedding is explicit opt-in only. Provider-specific # validation decides whether task parameters or prefixes are required. asymmetric_opt_in = resolve_asymmetric_embedding_opt_in( binding=binding, embedding_asymmetric=args.embedding_asymmetric, embedding_asymmetric_configured=args.embedding_asymmetric_configured, query_prefix=query_prefix, document_prefix=document_prefix, query_prefix_configured=args.embedding_query_prefix_configured, document_prefix_configured=args.embedding_document_prefix_configured, ) # Step 3: Create optimized embedding function (calls underlying function directly) # Note: When model is None, each binding will use its own default model async def optimized_embedding_function( texts, embedding_dim=None, context="document" ): try: if binding == "lollms": from lightrag.llm.lollms import lollms_embed # Get real function, skip EmbeddingFunc wrapper if present actual_func = ( lollms_embed.func if isinstance(lollms_embed, EmbeddingFunc) else lollms_embed ) # lollms embed_model is not used (server uses configured vectorizer) # Only pass base_url and api_key return await actual_func(texts, base_url=host, api_key=api_key) elif binding == "ollama": from lightrag.llm.ollama import ollama_embed # Get real function, skip EmbeddingFunc wrapper if present actual_func = ( ollama_embed.func if isinstance(ollama_embed, EmbeddingFunc) else ollama_embed ) # Use pre-processed configuration if available if config_cache.ollama_embedding_options is not None: ollama_options = config_cache.ollama_embedding_options else: from lightrag.llm.binding_options import OllamaEmbeddingOptions ollama_options = OllamaEmbeddingOptions.options_dict(args) # Pass embed_model only if provided, let function use its default (bge-m3:latest) kwargs = { "texts": texts, "host": host, "api_key": api_key, "options": ollama_options, } if provider_supports_asymmetric and asymmetric_opt_in: kwargs["context"] = context if query_prefix: kwargs["query_prefix"] = query_prefix if document_prefix: kwargs["document_prefix"] = document_prefix if model: kwargs["embed_model"] = model return await actual_func(**kwargs) elif binding == "azure_openai": from lightrag.llm.azure_openai import azure_openai_embed actual_func = ( azure_openai_embed.func if isinstance(azure_openai_embed, EmbeddingFunc) else azure_openai_embed ) # Pass model only if provided, let function use its default otherwise kwargs = { "texts": texts, "api_key": api_key, "embedding_dim": embedding_dim, } if model: kwargs["model"] = model if provider_supports_asymmetric and asymmetric_opt_in: kwargs["context"] = context if query_prefix: kwargs["query_prefix"] = query_prefix if document_prefix: kwargs["document_prefix"] = document_prefix return await actual_func(**kwargs) elif binding == "bedrock": from lightrag.llm.bedrock import bedrock_embed actual_func = ( bedrock_embed.func if isinstance(bedrock_embed, EmbeddingFunc) else bedrock_embed ) # Pass model only if provided, let function use its default otherwise kwargs = { "texts": texts, "aws_region": getattr(args, "aws_region", None), "aws_access_key_id": getattr(args, "aws_access_key_id", None), "aws_secret_access_key": getattr( args, "aws_secret_access_key", None ), "aws_session_token": getattr(args, "aws_session_token", None), } if host is not None: kwargs["endpoint_url"] = host if model: kwargs["model"] = model return await actual_func(**kwargs) elif binding == "jina": from lightrag.llm.jina import jina_embed actual_func = ( jina_embed.func if isinstance(jina_embed, EmbeddingFunc) else jina_embed ) # Pass model only if provided, let function use its default (jina-embeddings-v4) kwargs = { "texts": texts, "embedding_dim": embedding_dim, "base_url": host, "api_key": api_key, } if model: kwargs["model"] = model if provider_supports_asymmetric and asymmetric_opt_in: kwargs["context"] = context kwargs["task"] = None return await actual_func(**kwargs) elif binding == "gemini": from lightrag.llm.gemini import gemini_embed actual_func = ( gemini_embed.func if isinstance(gemini_embed, EmbeddingFunc) else gemini_embed ) # Use pre-processed configuration if available if config_cache.gemini_embedding_options is not None: gemini_options = config_cache.gemini_embedding_options else: from lightrag.llm.binding_options import GeminiEmbeddingOptions gemini_options = GeminiEmbeddingOptions.options_dict(args) # Pass model only if provided, let function use its default (gemini-embedding-001) kwargs = { "texts": texts, "base_url": host, "api_key": api_key, "embedding_dim": embedding_dim, } if model: kwargs["model"] = model task_type = gemini_options.get("task_type") if task_type is not None: kwargs["task_type"] = task_type if provider_supports_asymmetric and asymmetric_opt_in: kwargs["context"] = context return await actual_func(**kwargs) elif binding == "voyageai": from lightrag.llm.voyageai import voyageai_embed actual_func = ( voyageai_embed.func if isinstance(voyageai_embed, EmbeddingFunc) else voyageai_embed ) kwargs = { "texts": texts, "api_key": api_key, "embedding_dim": embedding_dim, } if model: kwargs["model"] = model if provider_supports_asymmetric and asymmetric_opt_in: kwargs["context"] = context return await actual_func(**kwargs) else: # openai and compatible from lightrag.llm.openai import openai_embed actual_func = ( openai_embed.func if isinstance(openai_embed, EmbeddingFunc) else openai_embed ) # Pass model only if provided, let function use its default (text-embedding-3-small) kwargs = { "texts": texts, "base_url": host, "api_key": api_key, "embedding_dim": embedding_dim, } if model: kwargs["model"] = model if provider_supports_asymmetric and asymmetric_opt_in: kwargs["context"] = context if query_prefix: kwargs["query_prefix"] = query_prefix if document_prefix: kwargs["document_prefix"] = document_prefix return await actual_func(**kwargs) except ImportError as e: raise Exception(f"Failed to import {binding} embedding: {e}") # Step 4: Wrap in EmbeddingFunc and return embedding_func_instance = EmbeddingFunc( embedding_dim=final_embedding_dim, func=optimized_embedding_function, max_token_size=final_max_token_size, send_dimensions=False, # Will be set later based on binding requirements model_name=model, supports_asymmetric=provider_supports_asymmetric and asymmetric_opt_in, ) # Log final embedding configuration. Only include prefix info when # prefixes will actually be applied (prefix-based asymmetric mode). prefix_info = "" if ( asymmetric_opt_in and binding in PREFIX_ASYMMETRIC_EMBEDDING_BINDINGS and (document_prefix or query_prefix) ): prefix_info = f" document_prefix={repr(document_prefix)} query_prefix={repr(query_prefix)}" logger.info( f"Embedding config: binding={binding} model={model} " f"embedding_dim={final_embedding_dim} max_token_size={final_max_token_size}{prefix_info}" ) return embedding_func_instance llm_timeout = args.llm_timeout embedding_timeout = args.embedding_timeout async def bedrock_model_complete( prompt, system_prompt=None, history_messages=None, **kwargs, ) -> str: # Lazy import from lightrag.llm.bedrock import bedrock_complete_if_cache if history_messages is None: history_messages = [] # Bedrock Converse API has no JSON mode; response_format and the legacy # extraction booleans flow through kwargs to bedrock_complete_if_cache, # which drops them and emits deprecation warnings when booleans are set. if config_cache.bedrock_llm_options: kwargs = {**config_cache.bedrock_llm_options, **kwargs} return await bedrock_complete_if_cache( args.llm_model, prompt, system_prompt=system_prompt, history_messages=history_messages, endpoint_url=args.llm_binding_host, aws_region=getattr(args, "aws_region", None), aws_access_key_id=getattr(args, "aws_access_key_id", None), aws_secret_access_key=getattr(args, "aws_secret_access_key", None), aws_session_token=getattr(args, "aws_session_token", None), **kwargs, ) # Create embedding function with optimized configuration and max_token_size inheritance import inspect # Create the EmbeddingFunc instance (now returns complete EmbeddingFunc with max_token_size) embedding_func = create_optimized_embedding_function( config_cache=config_cache, binding=args.embedding_binding, model=args.embedding_model, host=args.embedding_binding_host, api_key=None if args.embedding_binding == "bedrock" else args.embedding_binding_api_key, args=args, document_prefix=args.embedding_document_prefix, query_prefix=args.embedding_query_prefix, ) # Get embedding_send_dim from centralized configuration embedding_send_dim = args.embedding_send_dim # Check if the underlying function signature has embedding_dim parameter sig = inspect.signature(embedding_func.func) has_embedding_dim_param = "embedding_dim" in sig.parameters # Determine send_dimensions value based on binding type # Jina and Gemini REQUIRE dimension parameter (forced to True) # OpenAI and others: controlled by EMBEDDING_SEND_DIM environment variable if args.embedding_binding in ["jina", "gemini"]: # Jina and Gemini APIs require dimension parameter - always send it send_dimensions = has_embedding_dim_param dimension_control = f"forced by {args.embedding_binding.title()} API" else: # For OpenAI and other bindings, respect EMBEDDING_SEND_DIM setting send_dimensions = embedding_send_dim and has_embedding_dim_param if send_dimensions or not embedding_send_dim: dimension_control = "by env var" else: dimension_control = "by not hasparam" # Set send_dimensions on the EmbeddingFunc instance embedding_func.send_dimensions = send_dimensions logger.info( f"Send embedding dimension: {send_dimensions} {dimension_control} " f"(dimensions={embedding_func.embedding_dim}, has_param={has_embedding_dim_param}, " f"binding={args.embedding_binding})" ) # Log max_token_size source if embedding_func.max_token_size: source = ( "env variable" if args.embedding_token_limit else f"{args.embedding_binding} provider default" ) logger.info( f"Embedding max_token_size: {embedding_func.max_token_size} (from {source})" ) else: logger.info( "Embedding max_token_size: None (Embedding token limit is disabled)." ) # Configure rerank function based on args.rerank_bindingparameter rerank_model_func = None if args.rerank_binding != "null": from lightrag.rerank import cohere_rerank, jina_rerank, ali_rerank # Map rerank binding to corresponding function rerank_functions = { "cohere": cohere_rerank, "jina": jina_rerank, "aliyun": ali_rerank, } # Select the appropriate rerank function based on binding selected_rerank_func = rerank_functions.get(args.rerank_binding) if not selected_rerank_func: logger.error(f"Unsupported rerank binding: {args.rerank_binding}") raise ValueError(f"Unsupported rerank binding: {args.rerank_binding}") # Get default values from selected_rerank_func if args values are None if args.rerank_model is None or args.rerank_binding_host is None: sig = inspect.signature(selected_rerank_func) # Set default model if args.rerank_model is None if args.rerank_model is None and "model" in sig.parameters: default_model = sig.parameters["model"].default if default_model != inspect.Parameter.empty: args.rerank_model = default_model # Set default base_url if args.rerank_binding_host is None if args.rerank_binding_host is None and "base_url" in sig.parameters: default_base_url = sig.parameters["base_url"].default if default_base_url != inspect.Parameter.empty: args.rerank_binding_host = default_base_url async def server_rerank_func( query: str, documents: list, top_n: int = None, extra_body: dict = None ): """Server rerank function with configuration from environment variables""" # Prepare kwargs for rerank function kwargs = { "query": query, "documents": documents, "top_n": top_n, "api_key": args.rerank_binding_api_key, "model": args.rerank_model, "base_url": args.rerank_binding_host, } # Add Cohere-specific parameters if using cohere binding if args.rerank_binding == "cohere": # Enable chunking if configured (useful for models with token limits like ColBERT) kwargs["enable_chunking"] = ( os.getenv("RERANK_ENABLE_CHUNKING", "false").lower() == "true" ) kwargs["max_tokens_per_doc"] = int( os.getenv("RERANK_MAX_TOKENS_PER_DOC", "4096") ) return await selected_rerank_func(**kwargs, extra_body=extra_body) rerank_model_func = server_rerank_func logger.info( f"Reranking is enabled: {args.rerank_model or 'default model'} using {args.rerank_binding} provider" ) else: logger.info("Reranking is disabled") # Create ollama_server_infos from command line arguments from lightrag.api.config import OllamaServerInfos ollama_server_infos = OllamaServerInfos( name=args.simulated_model_name, tag=args.simulated_model_tag ) # LightRAG.__post_init__ normalizes addon_params and backfills env-based defaults # (SUMMARY_LANGUAGE, ENTITY_TYPE_PROMPT_FILE, ...), so we only need to pass the # API-level overrides here. addon_params = { "language": args.summary_language, } role_llm_configs = { spec.name: { **resolve_role_llm_settings(spec.name), "func": create_role_llm_func(spec.name), "kwargs": create_role_llm_model_kwargs(spec.name), } for spec in ROLES } # Initialize RAG with unified configuration try: rag = LightRAG( working_dir=args.working_dir, workspace=args.workspace, llm_model_func=create_llm_model_func(args.llm_binding), llm_model_name=args.llm_model, llm_model_max_async=args.max_async, summary_max_tokens=args.summary_max_tokens, summary_context_size=args.summary_context_size, chunk_token_size=int(args.chunk_size), chunk_overlap_token_size=int(args.chunk_overlap_size), llm_model_kwargs=create_llm_model_kwargs( args.llm_binding, args, llm_timeout ), embedding_func=embedding_func, default_llm_timeout=llm_timeout, default_embedding_timeout=embedding_timeout, kv_storage=args.kv_storage, graph_storage=args.graph_storage, vector_storage=args.vector_storage, doc_status_storage=args.doc_status_storage, vector_db_storage_cls_kwargs={ "cosine_better_than_threshold": args.cosine_threshold }, enable_llm_cache_for_entity_extract=args.enable_llm_cache_for_extract, enable_llm_cache=args.enable_llm_cache, vlm_process_enable=args.vlm_process_enable, rerank_model_func=rerank_model_func, rerank_model_max_async=args.rerank_max_async, default_rerank_timeout=args.rerank_timeout, max_parallel_insert=args.max_parallel_insert, max_graph_nodes=args.max_graph_nodes, addon_params=addon_params, ollama_server_infos=ollama_server_infos, role_llm_configs={ spec.name: RoleLLMConfig( func=role_llm_configs[spec.name]["func"], kwargs=role_llm_configs[spec.name]["kwargs"], max_async=role_llm_configs[spec.name]["max_async"], timeout=role_llm_configs[spec.name]["timeout"], metadata={ "base_binding": args.llm_binding, "binding": role_llm_configs[spec.name]["binding"], "model": role_llm_configs[spec.name]["model"], "host": role_llm_configs[spec.name]["host"], "api_key": role_llm_configs[spec.name]["api_key"], "provider_options": role_llm_configs[spec.name][ "provider_options" ], "bedrock_aws_options": role_llm_configs[spec.name][ "bedrock_aws_options" ], "is_cross_provider": role_llm_configs[spec.name][ "is_cross_provider" ], }, ) for spec in ROLES }, ) except Exception as e: logger.error(f"Failed to initialize LightRAG: {e}") raise _log_role_provider_options(rag) rag.register_role_llm_builder( lambda role, meta: ( create_role_llm_func(role, meta), create_role_llm_model_kwargs(role, meta), ) ) # Add routes # root_path is set on the app for reverse proxy support; # routes stay at their natural paths and are prefixed by the proxy or uvicorn --root-path app.include_router(create_document_routes(rag, doc_manager, api_key)) app.include_router(create_query_routes(rag, api_key, args.top_k)) app.include_router(create_graph_routes(rag, api_key)) # Add Ollama API routes ollama_api = OllamaAPI(rag, top_k=args.top_k, api_key=api_key) app.include_router(ollama_api.router, prefix="/api") # Custom Swagger UI endpoint for offline support @app.get("/docs", include_in_schema=False) async def custom_swagger_ui_html(request: Request): """Custom Swagger UI HTML with local static files""" response = get_swagger_ui_html( openapi_url=app.openapi_url, title=app.title + " - Swagger UI", oauth2_redirect_url="/docs/oauth2-redirect", swagger_js_url="/static/swagger-ui/swagger-ui-bundle.js", swagger_css_url="/static/swagger-ui/swagger-ui.css", swagger_favicon_url="/static/swagger-ui/favicon-32x32.png", swagger_ui_parameters=app.swagger_ui_parameters, ) html = response.body.decode("utf-8") html = _inject_swagger_theme( html, request.query_params.get("theme", "auto").lower() ) return HTMLResponse(content=html) @app.get("/docs/oauth2-redirect", include_in_schema=False) async def swagger_ui_redirect(): """OAuth2 redirect for Swagger UI""" return get_swagger_ui_oauth2_redirect_html() @app.get("/") async def redirect_to_webui(request: Request): """Redirect root path based on WebUI availability. Prepend the ASGI root_path so that, behind a reverse proxy, the absolute redirect target keeps the configured prefix instead of bypassing it. """ root = request.scope.get("root_path", "") if webui_assets_exist: return RedirectResponse(url=f"{root}{webui_path}/") else: return RedirectResponse(url=f"{root}/docs") @app.get("/auth-status") async def get_auth_status(): """Get authentication status and guest token if auth is not configured""" if not auth_handler.accounts: # Authentication not configured, return guest token guest_token = auth_handler.create_token( username="guest", role="guest", metadata={"auth_mode": "disabled"} ) return { "auth_configured": False, "access_token": guest_token, "token_type": "bearer", "auth_mode": "disabled", "message": "Authentication is disabled. Using guest access.", "core_version": core_version, "api_version": api_version_display, "webui_title": webui_title, "webui_description": webui_description, } return { "auth_configured": True, "auth_mode": "enabled", "core_version": core_version, "api_version": api_version_display, "webui_title": webui_title, "webui_description": webui_description, } @app.post("/login") async def login(form_data: OAuth2PasswordRequestForm = Depends()): if not auth_handler.accounts: # Authentication not configured, return guest token guest_token = auth_handler.create_token( username="guest", role="guest", metadata={"auth_mode": "disabled"} ) return { "access_token": guest_token, "token_type": "bearer", "auth_mode": "disabled", "message": "Authentication is disabled. Using guest access.", "core_version": core_version, "api_version": api_version_display, "webui_title": webui_title, "webui_description": webui_description, } username = form_data.username if not auth_handler.verify_password(username, form_data.password): raise HTTPException(status_code=401, detail="Incorrect credentials") # Regular user login user_token = auth_handler.create_token( username=username, role="user", metadata={"auth_mode": "enabled"} ) return { "access_token": user_token, "token_type": "bearer", "auth_mode": "enabled", "core_version": core_version, "api_version": api_version_display, "webui_title": webui_title, "webui_description": webui_description, } @app.get( "/health", dependencies=[Depends(combined_auth)], summary="Get system health and configuration status", description="Returns comprehensive system status including WebUI availability, configuration, and operational metrics", response_description="System health status with configuration details", responses={ 200: { "description": "Successful response with system status", "content": { "application/json": { "example": { "status": "healthy", "webui_available": True, "working_directory": "/path/to/working/dir", "input_directory": "/path/to/input/dir", "configuration": { "llm_binding": "openai", "llm_model": "gpt-4", "embedding_binding": "openai", "embedding_model": "text-embedding-ada-002", "workspace": "default", "storage_workspaces": { "kv_storage": "default", "doc_status_storage": "default", "graph_storage": "default", "vector_storage": "default", }, "parser_routing": "pdf:mineru", "mineru": { "endpoint": "http://localhost:8080", "api_mode": "local", "options": { "language": "ch", "enable_table": True, "enable_formula": True, "local_backend": "pipeline", "local_parse_method": "auto", "local_image_analysis": False, }, }, "docling": { "endpoint": "", "options": {}, }, }, "auth_mode": "enabled", "pipeline_busy": False, "core_version": "0.0.1", "api_version": "0.0.1", } } }, } }, ) async def get_status(request: Request): """Get current system status including WebUI availability""" try: workspace = get_workspace_from_request(request) default_workspace = get_default_workspace() if workspace is None: workspace = default_workspace pipeline_status = await get_namespace_data( "pipeline_status", workspace=workspace ) pipeline_busy = bool(pipeline_status.get("busy", False)) pipeline_scanning = bool(pipeline_status.get("scanning", False)) pipeline_destructive_busy = bool( pipeline_status.get("destructive_busy", False) ) pipeline_pending_enqueues = int( pipeline_status.get("pending_enqueues", 0) or 0 ) pipeline_active = ( pipeline_busy or pipeline_scanning or pipeline_destructive_busy or pipeline_pending_enqueues > 0 ) if not auth_configured: auth_mode = "disabled" else: auth_mode = "enabled" # Cleanup expired keyed locks and get status keyed_lock_info = cleanup_keyed_lock() return { "status": "healthy", "webui_available": webui_assets_exist, "working_directory": str(args.working_dir), "input_directory": str(args.input_dir), "configuration": { # LLM configuration binding/host address (if applicable)/model (if applicable) "llm_binding": args.llm_binding, "llm_binding_host": args.llm_binding_host, "llm_model": args.llm_model, # embedding model configuration binding/host address (if applicable)/model (if applicable) "embedding_binding": args.embedding_binding, "embedding_binding_host": args.embedding_binding_host, "embedding_model": args.embedding_model, "summary_max_tokens": args.summary_max_tokens, "summary_context_size": args.summary_context_size, "kv_storage": args.kv_storage, "doc_status_storage": args.doc_status_storage, "graph_storage": args.graph_storage, "vector_storage": args.vector_storage, "enable_llm_cache_for_extract": args.enable_llm_cache_for_extract, "enable_llm_cache": args.enable_llm_cache, "vlm_process_enable": args.vlm_process_enable, "workspace": default_workspace, "storage_workspaces": _get_storage_workspaces(rag), "max_graph_nodes": args.max_graph_nodes, # Rerank configuration "enable_rerank": rerank_model_func is not None, "rerank_binding": args.rerank_binding, "rerank_model": args.rerank_model if rerank_model_func else None, "rerank_binding_host": args.rerank_binding_host if rerank_model_func else None, "rerank_max_async": args.rerank_max_async, "rerank_timeout": args.rerank_timeout, # Environment variable status (requested configuration) "summary_language": args.summary_language, "force_llm_summary_on_merge": args.force_llm_summary_on_merge, "max_parallel_insert": args.max_parallel_insert, "cosine_threshold": args.cosine_threshold, "min_rerank_score": args.min_rerank_score, "related_chunk_number": args.related_chunk_number, "max_async": args.max_async, "llm_timeout": args.llm_timeout, "embedding_func_max_async": args.embedding_func_max_async, "embedding_batch_num": args.embedding_batch_num, "embedding_timeout": args.embedding_timeout, "role_llm_config": rag.get_llm_role_config(), # Parser routing snapshot — surfaced in the WebUI status card "parser_routing": parser_rules_from_env(), "mineru": _build_mineru_status(), "docling": _build_docling_status(), }, "auth_mode": auth_mode, "pipeline_busy": pipeline_busy, "pipeline_active": pipeline_active, "pipeline_scanning": pipeline_scanning, "pipeline_destructive_busy": pipeline_destructive_busy, "pipeline_pending_enqueues": pipeline_pending_enqueues, "keyed_locks": keyed_lock_info, "llm_queue_status": await rag.get_llm_queue_status(include_base=True), "embedding_queue_status": await rag.get_embedding_queue_status(), "rerank_queue_status": await rag.get_rerank_queue_status(), "core_version": core_version, "api_version": api_version_display, "webui_title": webui_title, "webui_description": webui_description, } except Exception as e: logger.error(f"Error getting health status: {str(e)}") raise HTTPException(status_code=500, detail=str(e)) # Pre-render the runtime-config " sequence from # breaking out of the inline script (defense-in-depth — values come from # admin config, not user input). _runtime_config_payload = json.dumps( { "apiPrefix": api_prefix, "webuiPrefix": f"{api_prefix}{webui_path}/", } ).replace("window.__LIGHTRAG_CONFIG__ = {_runtime_config_payload};" ) # Custom StaticFiles class for smart caching + runtime config injection class SmartStaticFiles(StaticFiles): # Renamed from NoCacheStaticFiles # Replaced in index.html on every request. Keep in sync with # lightrag_webui/index.html. RUNTIME_CONFIG_PLACEHOLDER = b"" async def get_response(self, path: str, scope): response = await super().get_response(path, scope) # `path` is empty when accessing the mount root (StaticFiles # rewrites it to index.html internally) — match on media_type # too so we still inject in that case. is_html = ( path.endswith(".html") or path == "" or path.endswith("/") or getattr(response, "media_type", None) == "text/html" ) if ( is_html and getattr(response, "status_code", 0) == 200 and isinstance(response, FileResponse) ): response = self._inject_runtime_config(response) if is_html: response.headers["Cache-Control"] = ( "no-cache, no-store, must-revalidate" ) response.headers["Pragma"] = "no-cache" response.headers["Expires"] = "0" elif ( "/assets/" in path ): # Assets (JS, CSS, images, fonts) generated by Vite with hash in filename response.headers["Cache-Control"] = ( "public, max-age=31536000, immutable" ) # Add other rules here if needed for non-HTML, non-asset files # Ensure correct Content-Type if path.endswith(".js"): response.headers["Content-Type"] = "application/javascript" elif path.endswith(".css"): response.headers["Content-Type"] = "text/css" return response def _inject_runtime_config(self, response: FileResponse) -> Response: """Replace the runtime-config placeholder in index.html. Returns the original FileResponse if the placeholder is absent (older build, or a non-index HTML file) — avoids breaking previously-working bundles during upgrades. """ try: content = Path(response.path).read_bytes() except OSError as e: logger.warning( "Could not read %s for runtime config injection: %s", response.path, e, ) return response if self.RUNTIME_CONFIG_PLACEHOLDER not in content: return response new_content = content.replace( self.RUNTIME_CONFIG_PLACEHOLDER, runtime_config_script.encode("utf-8"), ) return Response(content=new_content, media_type="text/html") # Mount Swagger UI static files for offline support swagger_static_dir = Path(__file__).parent / "static" / "swagger-ui" if swagger_static_dir.exists(): app.mount( "/static/swagger-ui", StaticFiles(directory=swagger_static_dir), name="swagger-ui-static", ) # Conditionally mount WebUI only if assets exist if webui_assets_exist: static_dir = Path(__file__).parent / "webui" static_dir.mkdir(exist_ok=True) app.mount( webui_path, SmartStaticFiles( directory=static_dir, html=True, check_dir=True ), # Use SmartStaticFiles name="webui", ) logger.info(f"WebUI assets mounted at {webui_path}") else: logger.info("WebUI assets not available, WebUI route not mounted") # Add redirect for WebUI path when assets are not available @app.get(webui_path) @app.get(f"{webui_path}/") async def webui_redirect_to_docs(request: Request): """Redirect WebUI path to /docs when WebUI is not available.""" root = request.scope.get("root_path", "") return RedirectResponse(url=f"{root}/docs") return app def get_application(args=None): """Factory function for creating the FastAPI application""" if args is None: args = global_args return create_app(args) def configure_logging(): """Configure logging for uvicorn startup""" # Reset any existing handlers to ensure clean configuration for logger_name in ["uvicorn", "uvicorn.access", "uvicorn.error", "lightrag"]: logger = logging.getLogger(logger_name) logger.handlers = [] logger.filters = [] # Get log directory path from environment variable log_dir = os.getenv("LOG_DIR", os.getcwd()) log_file_path = os.path.abspath(os.path.join(log_dir, DEFAULT_LOG_FILENAME)) print(f"\nLightRAG log file: {log_file_path}\n") os.makedirs(os.path.dirname(log_dir), exist_ok=True) # Get log file max size and backup count from environment variables log_max_bytes = get_env_value("LOG_MAX_BYTES", DEFAULT_LOG_MAX_BYTES, int) log_backup_count = get_env_value("LOG_BACKUP_COUNT", DEFAULT_LOG_BACKUP_COUNT, int) logging.config.dictConfig( { "version": 1, "disable_existing_loggers": False, "formatters": { "default": { "format": "%(levelname)s: %(message)s", }, "detailed": { "format": "%(asctime)s - %(name)s - %(levelname)s - %(message)s", }, }, "handlers": { "console": { "formatter": "default", "class": "logging.StreamHandler", "stream": "ext://sys.stderr", }, "file": { "formatter": "detailed", "class": "logging.handlers.RotatingFileHandler", "filename": log_file_path, "maxBytes": log_max_bytes, "backupCount": log_backup_count, "encoding": "utf-8", }, }, "loggers": { # Configure all uvicorn related loggers "uvicorn": { "handlers": ["console", "file"], "level": "INFO", "propagate": False, }, "uvicorn.access": { "handlers": ["console", "file"], "level": "INFO", "propagate": False, "filters": ["path_filter"], }, "uvicorn.error": { "handlers": ["console", "file"], "level": "INFO", "propagate": False, }, "lightrag": { "handlers": ["console", "file"], "level": "INFO", "propagate": False, "filters": ["path_filter"], }, }, "filters": { "path_filter": { "()": "lightrag.utils.LightragPathFilter", }, }, } ) def check_and_install_dependencies(): """Check and install required dependencies""" required_packages = [ "uvicorn", "tiktoken", "fastapi", # Add other required packages here ] for package in required_packages: if not pm.is_installed(package): print(f"Installing {package}...") pm.install(package) print(f"{package} installed successfully") def main(): # On Windows, ProactorEventLoop (default since Python 3.8) has known # race conditions with uvicorn's socket binding that can cause the server # to report it's running while the port is never actually bound. # Using SelectorEventLoop resolves this issue. # See: https://github.com/HKUDS/LightRAG/issues/2438 if sys.platform == "win32": import asyncio asyncio.set_event_loop_policy(asyncio.WindowsSelectorEventLoopPolicy()) # Explicitly initialize configuration for clarity # (The proxy will auto-initialize anyway, but this makes intent clear) from .config import initialize_config initialize_config() # Check if running under Gunicorn if "GUNICORN_CMD_ARGS" in os.environ: # If started with Gunicorn, return directly as Gunicorn will call get_application print("Running under Gunicorn - worker management handled by Gunicorn") return # Check .env file if not check_env_file(): sys.exit(1) # Check and install dependencies check_and_install_dependencies() from multiprocessing import freeze_support freeze_support() # Configure logging before parsing args configure_logging() update_uvicorn_mode_config() display_splash_screen(global_args) # Note: Signal handlers are NOT registered here because: # - Uvicorn has built-in signal handling that properly calls lifespan shutdown # - Custom signal handlers can interfere with uvicorn's graceful shutdown # - Cleanup is handled by the lifespan context manager's finally block # Create application instance directly instead of using factory function app = create_app(global_args) # Start Uvicorn in single process mode. Do not pass root_path here; # the prefix lives only on FastAPI's app.root_path. See # docs/MultiSiteDeployment.md. uvicorn_config = { "app": app, # Pass application instance directly instead of string path "host": global_args.host, "port": global_args.port, "log_config": None, # Disable default config } if global_args.ssl: uvicorn_config.update( { "ssl_certfile": global_args.ssl_certfile, "ssl_keyfile": global_args.ssl_keyfile, } ) print( f"Starting Uvicorn server in single-process mode on {global_args.host}:{global_args.port}" ) uvicorn.run(**uvicorn_config) if __name__ == "__main__": main()