import base64 import inspect import json import logging import mimetypes import os import shutil import sys import time import uuid import asyncio from contextlib import asynccontextmanager from typing import Optional import aiohttp import requests from open_webui.apps.ollama.main import ( app as ollama_app, get_all_models as get_ollama_models, generate_chat_completion as generate_ollama_chat_completion, generate_openai_chat_completion as generate_ollama_openai_chat_completion, GenerateChatCompletionForm, ) from open_webui.apps.openai.main import ( app as openai_app, generate_chat_completion as generate_openai_chat_completion, get_all_models as get_openai_models, ) from open_webui.apps.retrieval.main import app as retrieval_app from open_webui.apps.retrieval.utils import get_rag_context, rag_template from open_webui.apps.socket.main import ( app as socket_app, periodic_usage_pool_cleanup, get_event_call, get_event_emitter, ) from open_webui.apps.webui.main import ( app as webui_app, generate_function_chat_completion, get_pipe_models, ) from open_webui.apps.webui.internal.db import Session from open_webui.apps.webui.models.auths import Auths from open_webui.apps.webui.models.functions import Functions from open_webui.apps.webui.models.models import Models from open_webui.apps.webui.models.users import UserModel, Users from open_webui.apps.webui.utils import load_function_module_by_id from open_webui.apps.audio.main import app as audio_app from open_webui.apps.images.main import app as images_app from authlib.integrations.starlette_client import OAuth from authlib.oidc.core import UserInfo from open_webui.config import ( CACHE_DIR, CORS_ALLOW_ORIGIN, DEFAULT_LOCALE, ENABLE_ADMIN_CHAT_ACCESS, ENABLE_ADMIN_EXPORT, ENABLE_MODEL_FILTER, ENABLE_OAUTH_SIGNUP, ENABLE_OLLAMA_API, ENABLE_OPENAI_API, ENV, FRONTEND_BUILD_DIR, MODEL_FILTER_LIST, OAUTH_MERGE_ACCOUNTS_BY_EMAIL, OAUTH_PROVIDERS, ENABLE_SEARCH_QUERY, SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE, STATIC_DIR, TASK_MODEL, TASK_MODEL_EXTERNAL, TITLE_GENERATION_PROMPT_TEMPLATE, TAGS_GENERATION_PROMPT_TEMPLATE, TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE, WEBHOOK_URL, WEBUI_AUTH, WEBUI_NAME, AppConfig, run_migrations, reset_config, ) from open_webui.constants import ERROR_MESSAGES, TASKS, WEBHOOK_MESSAGES from open_webui.env import ( CHANGELOG, GLOBAL_LOG_LEVEL, SAFE_MODE, SRC_LOG_LEVELS, VERSION, WEBUI_BUILD_HASH, WEBUI_SECRET_KEY, WEBUI_SESSION_COOKIE_SAME_SITE, WEBUI_SESSION_COOKIE_SECURE, WEBUI_URL, RESET_CONFIG_ON_START, OFFLINE_MODE, ) from fastapi import ( Depends, FastAPI, File, Form, HTTPException, Request, UploadFile, status, ) from fastapi.middleware.cors import CORSMiddleware from fastapi.responses import JSONResponse from fastapi.staticfiles import StaticFiles from pydantic import BaseModel from sqlalchemy import text from starlette.exceptions import HTTPException as StarletteHTTPException from starlette.middleware.base import BaseHTTPMiddleware from starlette.middleware.sessions import SessionMiddleware from starlette.responses import RedirectResponse, Response, StreamingResponse from open_webui.utils.security_headers import SecurityHeadersMiddleware from open_webui.utils.misc import ( add_or_update_system_message, get_last_user_message, parse_duration, prepend_to_first_user_message_content, ) from open_webui.utils.task import ( moa_response_generation_template, tags_generation_template, search_query_generation_template, title_generation_template, tools_function_calling_generation_template, ) from open_webui.utils.tools import get_tools from open_webui.utils.utils import ( create_token, decode_token, get_admin_user, get_current_user, get_http_authorization_cred, get_password_hash, get_verified_user, ) from open_webui.utils.webhook import post_webhook from open_webui.utils.payload import convert_payload_openai_to_ollama from open_webui.utils.response import ( convert_response_ollama_to_openai, convert_streaming_response_ollama_to_openai, ) if SAFE_MODE: print("SAFE MODE ENABLED") Functions.deactivate_all_functions() logging.basicConfig(stream=sys.stdout, level=GLOBAL_LOG_LEVEL) log = logging.getLogger(__name__) log.setLevel(SRC_LOG_LEVELS["MAIN"]) class SPAStaticFiles(StaticFiles): async def get_response(self, path: str, scope): try: return await super().get_response(path, scope) except (HTTPException, StarletteHTTPException) as ex: if ex.status_code == 404: return await super().get_response("index.html", scope) else: raise ex print( rf""" ___ __ __ _ _ _ ___ / _ \ _ __ ___ _ __ \ \ / /__| |__ | | | |_ _| | | | | '_ \ / _ \ '_ \ \ \ /\ / / _ \ '_ \| | | || | | |_| | |_) | __/ | | | \ V V / __/ |_) | |_| || | \___/| .__/ \___|_| |_| \_/\_/ \___|_.__/ \___/|___| |_| v{VERSION} - building the best open-source AI user interface. {f"Commit: {WEBUI_BUILD_HASH}" if WEBUI_BUILD_HASH != "dev-build" else ""} https://github.com/open-webui/open-webui """ ) @asynccontextmanager async def lifespan(app: FastAPI): if RESET_CONFIG_ON_START: reset_config() asyncio.create_task(periodic_usage_pool_cleanup()) yield app = FastAPI( docs_url="/docs" if ENV == "dev" else None, redoc_url=None, lifespan=lifespan ) app.state.config = AppConfig() app.state.config.ENABLE_OPENAI_API = ENABLE_OPENAI_API app.state.config.ENABLE_OLLAMA_API = ENABLE_OLLAMA_API app.state.config.ENABLE_MODEL_FILTER = ENABLE_MODEL_FILTER app.state.config.MODEL_FILTER_LIST = MODEL_FILTER_LIST app.state.config.WEBHOOK_URL = WEBHOOK_URL app.state.config.TASK_MODEL = TASK_MODEL app.state.config.TASK_MODEL_EXTERNAL = TASK_MODEL_EXTERNAL app.state.config.TITLE_GENERATION_PROMPT_TEMPLATE = TITLE_GENERATION_PROMPT_TEMPLATE app.state.config.TAGS_GENERATION_PROMPT_TEMPLATE = TAGS_GENERATION_PROMPT_TEMPLATE app.state.config.SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE = ( SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE ) app.state.config.ENABLE_SEARCH_QUERY = ENABLE_SEARCH_QUERY app.state.config.TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE = ( TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE ) app.state.MODELS = {} ################################## # # ChatCompletion Middleware # ################################## def get_task_model_id(default_model_id): # Set the task model task_model_id = default_model_id # Check if the user has a custom task model and use that model if app.state.MODELS[task_model_id]["owned_by"] == "ollama": if ( app.state.config.TASK_MODEL and app.state.config.TASK_MODEL in app.state.MODELS ): task_model_id = app.state.config.TASK_MODEL else: if ( app.state.config.TASK_MODEL_EXTERNAL and app.state.config.TASK_MODEL_EXTERNAL in app.state.MODELS ): task_model_id = app.state.config.TASK_MODEL_EXTERNAL return task_model_id def get_filter_function_ids(model): def get_priority(function_id): function = Functions.get_function_by_id(function_id) if function is not None and hasattr(function, "valves"): # TODO: Fix FunctionModel return (function.valves if function.valves else {}).get("priority", 0) return 0 filter_ids = [function.id for function in Functions.get_global_filter_functions()] if "info" in model and "meta" in model["info"]: filter_ids.extend(model["info"]["meta"].get("filterIds", [])) filter_ids = list(set(filter_ids)) enabled_filter_ids = [ function.id for function in Functions.get_functions_by_type("filter", active_only=True) ] filter_ids = [ filter_id for filter_id in filter_ids if filter_id in enabled_filter_ids ] filter_ids.sort(key=get_priority) return filter_ids async def chat_completion_filter_functions_handler(body, model, extra_params): skip_files = None filter_ids = get_filter_function_ids(model) for filter_id in filter_ids: filter = Functions.get_function_by_id(filter_id) if not filter: continue if filter_id in webui_app.state.FUNCTIONS: function_module = webui_app.state.FUNCTIONS[filter_id] else: function_module, _, _ = load_function_module_by_id(filter_id) webui_app.state.FUNCTIONS[filter_id] = function_module # Check if the function has a file_handler variable if hasattr(function_module, "file_handler"): skip_files = function_module.file_handler if hasattr(function_module, "valves") and hasattr(function_module, "Valves"): valves = Functions.get_function_valves_by_id(filter_id) function_module.valves = function_module.Valves( **(valves if valves else {}) ) if not hasattr(function_module, "inlet"): continue try: inlet = function_module.inlet # Get the signature of the function sig = inspect.signature(inlet) params = {"body": body} | { k: v for k, v in { **extra_params, "__model__": model, "__id__": filter_id, }.items() if k in sig.parameters } if "__user__" in params and hasattr(function_module, "UserValves"): try: params["__user__"]["valves"] = function_module.UserValves( **Functions.get_user_valves_by_id_and_user_id( filter_id, params["__user__"]["id"] ) ) except Exception as e: print(e) if inspect.iscoroutinefunction(inlet): body = await inlet(**params) else: body = inlet(**params) except Exception as e: print(f"Error: {e}") raise e if skip_files and "files" in body.get("metadata", {}): del body["metadata"]["files"] return body, {} def get_tools_function_calling_payload(messages, task_model_id, content): user_message = get_last_user_message(messages) history = "\n".join( f"{message['role'].upper()}: \"\"\"{message['content']}\"\"\"" for message in messages[::-1][:4] ) prompt = f"History:\n{history}\nQuery: {user_message}" return { "model": task_model_id, "messages": [ {"role": "system", "content": content}, {"role": "user", "content": f"Query: {prompt}"}, ], "stream": False, "metadata": {"task": str(TASKS.FUNCTION_CALLING)}, } async def get_content_from_response(response) -> Optional[str]: content = None if hasattr(response, "body_iterator"): async for chunk in response.body_iterator: data = json.loads(chunk.decode("utf-8")) content = data["choices"][0]["message"]["content"] # Cleanup any remaining background tasks if necessary if response.background is not None: await response.background() else: content = response["choices"][0]["message"]["content"] return content async def chat_completion_tools_handler( body: dict, user: UserModel, extra_params: dict ) -> tuple[dict, dict]: # If tool_ids field is present, call the functions metadata = body.get("metadata", {}) tool_ids = metadata.get("tool_ids", None) log.debug(f"{tool_ids=}") if not tool_ids: return body, {} skip_files = False contexts = [] citations = [] task_model_id = get_task_model_id(body["model"]) tools = get_tools( webui_app, tool_ids, user, { **extra_params, "__model__": app.state.MODELS[task_model_id], "__messages__": body["messages"], "__files__": metadata.get("files", []), }, ) log.info(f"{tools=}") specs = [tool["spec"] for tool in tools.values()] tools_specs = json.dumps(specs) if app.state.config.TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE != "": template = app.state.config.TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE else: template = """Available Tools: {{TOOLS}}\nReturn an empty string if no tools match the query. If a function tool matches, construct and return a JSON object in the format {\"name\": \"functionName\", \"parameters\": {\"requiredFunctionParamKey\": \"requiredFunctionParamValue\"}} using the appropriate tool and its parameters. Only return the object and limit the response to the JSON object without additional text.""" tools_function_calling_prompt = tools_function_calling_generation_template( template, tools_specs ) log.info(f"{tools_function_calling_prompt=}") payload = get_tools_function_calling_payload( body["messages"], task_model_id, tools_function_calling_prompt ) try: payload = filter_pipeline(payload, user) except Exception as e: raise e try: response = await generate_chat_completions(form_data=payload, user=user) log.debug(f"{response=}") content = await get_content_from_response(response) log.debug(f"{content=}") if not content: return body, {} try: content = content[content.find("{") : content.rfind("}") + 1] if not content: raise Exception("No JSON object found in the response") result = json.loads(content) tool_function_name = result.get("name", None) if tool_function_name not in tools: return body, {} tool_function_params = result.get("parameters", {}) try: tool_output = await tools[tool_function_name]["callable"]( **tool_function_params ) except Exception as e: tool_output = str(e) if tools[tool_function_name]["citation"]: citations.append( { "source": { "name": f"TOOL:{tools[tool_function_name]['toolkit_id']}/{tool_function_name}" }, "document": [tool_output], "metadata": [{"source": tool_function_name}], } ) if tools[tool_function_name]["file_handler"]: skip_files = True if isinstance(tool_output, str): contexts.append(tool_output) except Exception as e: log.exception(f"Error: {e}") content = None except Exception as e: log.exception(f"Error: {e}") content = None log.debug(f"tool_contexts: {contexts}") if skip_files and "files" in body.get("metadata", {}): del body["metadata"]["files"] return body, {"contexts": contexts, "citations": citations} async def chat_completion_files_handler(body) -> tuple[dict, dict[str, list]]: contexts = [] citations = [] if files := body.get("metadata", {}).get("files", None): contexts, citations = get_rag_context( files=files, messages=body["messages"], embedding_function=retrieval_app.state.EMBEDDING_FUNCTION, k=retrieval_app.state.config.TOP_K, reranking_function=retrieval_app.state.sentence_transformer_rf, r=retrieval_app.state.config.RELEVANCE_THRESHOLD, hybrid_search=retrieval_app.state.config.ENABLE_RAG_HYBRID_SEARCH, ) log.debug(f"rag_contexts: {contexts}, citations: {citations}") return body, {"contexts": contexts, "citations": citations} def is_chat_completion_request(request): return request.method == "POST" and any( endpoint in request.url.path for endpoint in ["/ollama/api/chat", "/chat/completions"] ) async def get_body_and_model_and_user(request): # Read the original request body body = await request.body() body_str = body.decode("utf-8") body = json.loads(body_str) if body_str else {} model_id = body["model"] if model_id not in app.state.MODELS: raise Exception("Model not found") model = app.state.MODELS[model_id] user = get_current_user( request, get_http_authorization_cred(request.headers.get("Authorization")), ) return body, model, user class ChatCompletionMiddleware(BaseHTTPMiddleware): async def dispatch(self, request: Request, call_next): if not is_chat_completion_request(request): return await call_next(request) log.debug(f"request.url.path: {request.url.path}") try: body, model, user = await get_body_and_model_and_user(request) except Exception as e: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) metadata = { "chat_id": body.pop("chat_id", None), "message_id": body.pop("id", None), "session_id": body.pop("session_id", None), "tool_ids": body.get("tool_ids", None), "files": body.get("files", None), } body["metadata"] = metadata extra_params = { "__event_emitter__": get_event_emitter(metadata), "__event_call__": get_event_call(metadata), "__user__": { "id": user.id, "email": user.email, "name": user.name, "role": user.role, }, } # Initialize data_items to store additional data to be sent to the client # Initialize contexts and citation data_items = [] contexts = [] citations = [] try: body, flags = await chat_completion_filter_functions_handler( body, model, extra_params ) except Exception as e: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) metadata = { **metadata, "tool_ids": body.pop("tool_ids", None), "files": body.pop("files", None), } body["metadata"] = metadata try: body, flags = await chat_completion_tools_handler(body, user, extra_params) contexts.extend(flags.get("contexts", [])) citations.extend(flags.get("citations", [])) except Exception as e: log.exception(e) try: body, flags = await chat_completion_files_handler(body) contexts.extend(flags.get("contexts", [])) citations.extend(flags.get("citations", [])) except Exception as e: log.exception(e) # If context is not empty, insert it into the messages if len(contexts) > 0: context_string = "/n".join(contexts).strip() prompt = get_last_user_message(body["messages"]) if prompt is None: raise Exception("No user message found") if ( retrieval_app.state.config.RELEVANCE_THRESHOLD == 0 and context_string.strip() == "" ): log.debug( f"With a 0 relevancy threshold for RAG, the context cannot be empty" ) # Workaround for Ollama 2.0+ system prompt issue # TODO: replace with add_or_update_system_message if model["owned_by"] == "ollama": body["messages"] = prepend_to_first_user_message_content( rag_template( retrieval_app.state.config.RAG_TEMPLATE, context_string, prompt ), body["messages"], ) else: body["messages"] = add_or_update_system_message( rag_template( retrieval_app.state.config.RAG_TEMPLATE, context_string, prompt ), body["messages"], ) # If there are citations, add them to the data_items if len(citations) > 0: data_items.append({"citations": citations}) modified_body_bytes = json.dumps(body).encode("utf-8") # Replace the request body with the modified one request._body = modified_body_bytes # Set custom header to ensure content-length matches new body length request.headers.__dict__["_list"] = [ (b"content-length", str(len(modified_body_bytes)).encode("utf-8")), *[(k, v) for k, v in request.headers.raw if k.lower() != b"content-length"], ] response = await call_next(request) if not isinstance(response, StreamingResponse): return response content_type = response.headers["Content-Type"] is_openai = "text/event-stream" in content_type is_ollama = "application/x-ndjson" in content_type if not is_openai and not is_ollama: return response def wrap_item(item): return f"data: {item}\n\n" if is_openai else f"{item}\n" async def stream_wrapper(original_generator, data_items): for item in data_items: yield wrap_item(json.dumps(item)) async for data in original_generator: yield data return StreamingResponse( stream_wrapper(response.body_iterator, data_items), headers=dict(response.headers), ) async def _receive(self, body: bytes): return {"type": "http.request", "body": body, "more_body": False} app.add_middleware(ChatCompletionMiddleware) ################################## # # Pipeline Middleware # ################################## def get_sorted_filters(model_id): filters = [ model for model in app.state.MODELS.values() if "pipeline" in model and "type" in model["pipeline"] and model["pipeline"]["type"] == "filter" and ( model["pipeline"]["pipelines"] == ["*"] or any( model_id == target_model_id for target_model_id in model["pipeline"]["pipelines"] ) ) ] sorted_filters = sorted(filters, key=lambda x: x["pipeline"]["priority"]) return sorted_filters def filter_pipeline(payload, user): user = {"id": user.id, "email": user.email, "name": user.name, "role": user.role} model_id = payload["model"] sorted_filters = get_sorted_filters(model_id) model = app.state.MODELS[model_id] if "pipeline" in model: sorted_filters.append(model) for filter in sorted_filters: r = None try: urlIdx = filter["urlIdx"] url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] if key == "": continue headers = {"Authorization": f"Bearer {key}"} r = requests.post( f"{url}/{filter['id']}/filter/inlet", headers=headers, json={ "user": user, "body": payload, }, ) r.raise_for_status() payload = r.json() except Exception as e: # Handle connection error here print(f"Connection error: {e}") if r is not None: res = r.json() if "detail" in res: raise Exception(r.status_code, res["detail"]) return payload class PipelineMiddleware(BaseHTTPMiddleware): async def dispatch(self, request: Request, call_next): if not is_chat_completion_request(request): return await call_next(request) log.debug(f"request.url.path: {request.url.path}") # Read the original request body body = await request.body() # Decode body to string body_str = body.decode("utf-8") # Parse string to JSON data = json.loads(body_str) if body_str else {} try: user = get_current_user( request, get_http_authorization_cred(request.headers["Authorization"]), ) except KeyError as e: if len(e.args) > 1: return JSONResponse( status_code=e.args[0], content={"detail": e.args[1]}, ) else: return JSONResponse( status_code=status.HTTP_401_UNAUTHORIZED, content={"detail": "Not authenticated"}, ) try: data = filter_pipeline(data, user) except Exception as e: if len(e.args) > 1: return JSONResponse( status_code=e.args[0], content={"detail": e.args[1]}, ) else: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) modified_body_bytes = json.dumps(data).encode("utf-8") # Replace the request body with the modified one request._body = modified_body_bytes # Set custom header to ensure content-length matches new body length request.headers.__dict__["_list"] = [ (b"content-length", str(len(modified_body_bytes)).encode("utf-8")), *[(k, v) for k, v in request.headers.raw if k.lower() != b"content-length"], ] response = await call_next(request) return response async def _receive(self, body: bytes): return {"type": "http.request", "body": body, "more_body": False} app.add_middleware(PipelineMiddleware) from urllib.parse import urlencode, parse_qs, urlparse class RedirectMiddleware(BaseHTTPMiddleware): async def dispatch(self, request: Request, call_next): # Check if the request is a GET request if request.method == "GET": path = request.url.path query_params = dict(parse_qs(urlparse(str(request.url)).query)) # Check for the specific watch path and the presence of 'v' parameter if path.endswith("/watch") and "v" in query_params: video_id = query_params["v"][0] # Extract the first 'v' parameter encoded_video_id = urlencode({"youtube": video_id}) redirect_url = f"/?{encoded_video_id}" return RedirectResponse(url=redirect_url) # Proceed with the normal flow of other requests response = await call_next(request) return response # Add the middleware to the app app.add_middleware(RedirectMiddleware) app.add_middleware( CORSMiddleware, allow_origins=CORS_ALLOW_ORIGIN, allow_credentials=True, allow_methods=["*"], allow_headers=["*"], ) app.add_middleware(SecurityHeadersMiddleware) @app.middleware("http") async def commit_session_after_request(request: Request, call_next): response = await call_next(request) log.debug("Commit session after request") Session.commit() return response @app.middleware("http") async def check_url(request: Request, call_next): if len(app.state.MODELS) == 0: await get_all_models() else: pass start_time = int(time.time()) response = await call_next(request) process_time = int(time.time()) - start_time response.headers["X-Process-Time"] = str(process_time) return response @app.middleware("http") async def update_embedding_function(request: Request, call_next): response = await call_next(request) if "/embedding/update" in request.url.path: webui_app.state.EMBEDDING_FUNCTION = retrieval_app.state.EMBEDDING_FUNCTION return response @app.middleware("http") async def inspect_websocket(request: Request, call_next): if ( "/ws/socket.io" in request.url.path and request.query_params.get("transport") == "websocket" ): upgrade = (request.headers.get("Upgrade") or "").lower() connection = (request.headers.get("Connection") or "").lower().split(",") # Check that there's the correct headers for an upgrade, else reject the connection # This is to work around this upstream issue: https://github.com/miguelgrinberg/python-engineio/issues/367 if upgrade != "websocket" or "upgrade" not in connection: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": "Invalid WebSocket upgrade request"}, ) return await call_next(request) app.mount("/ws", socket_app) app.mount("/ollama", ollama_app) app.mount("/openai", openai_app) app.mount("/images/api/v1", images_app) app.mount("/audio/api/v1", audio_app) app.mount("/retrieval/api/v1", retrieval_app) app.mount("/api/v1", webui_app) webui_app.state.EMBEDDING_FUNCTION = retrieval_app.state.EMBEDDING_FUNCTION async def get_all_models(): # TODO: Optimize this function pipe_models = [] openai_models = [] ollama_models = [] pipe_models = await get_pipe_models() if app.state.config.ENABLE_OPENAI_API: openai_models = await get_openai_models() openai_models = openai_models["data"] if app.state.config.ENABLE_OLLAMA_API: ollama_models = await get_ollama_models() ollama_models = [ { "id": model["model"], "name": model["name"], "object": "model", "created": int(time.time()), "owned_by": "ollama", "ollama": model, } for model in ollama_models["models"] ] models = pipe_models + openai_models + ollama_models global_action_ids = [ function.id for function in Functions.get_global_action_functions() ] enabled_action_ids = [ function.id for function in Functions.get_functions_by_type("action", active_only=True) ] custom_models = Models.get_all_models() for custom_model in custom_models: if custom_model.base_model_id is None: for model in models: if ( custom_model.id == model["id"] or custom_model.id == model["id"].split(":")[0] ): model["name"] = custom_model.name model["info"] = custom_model.model_dump() action_ids = [] if "info" in model and "meta" in model["info"]: action_ids.extend(model["info"]["meta"].get("actionIds", [])) model["action_ids"] = action_ids else: owned_by = "openai" pipe = None action_ids = [] for model in models: if ( custom_model.base_model_id == model["id"] or custom_model.base_model_id == model["id"].split(":")[0] ): owned_by = model["owned_by"] if "pipe" in model: pipe = model["pipe"] break if custom_model.meta: meta = custom_model.meta.model_dump() if "actionIds" in meta: action_ids.extend(meta["actionIds"]) models.append( { "id": custom_model.id, "name": custom_model.name, "object": "model", "created": custom_model.created_at, "owned_by": owned_by, "info": custom_model.model_dump(), "preset": True, **({"pipe": pipe} if pipe is not None else {}), "action_ids": action_ids, } ) for model in models: action_ids = [] if "action_ids" in model: action_ids = model["action_ids"] del model["action_ids"] action_ids = action_ids + global_action_ids action_ids = list(set(action_ids)) action_ids = [ action_id for action_id in action_ids if action_id in enabled_action_ids ] model["actions"] = [] for action_id in action_ids: action = Functions.get_function_by_id(action_id) if action is None: raise Exception(f"Action not found: {action_id}") if action_id in webui_app.state.FUNCTIONS: function_module = webui_app.state.FUNCTIONS[action_id] else: function_module, _, _ = load_function_module_by_id(action_id) webui_app.state.FUNCTIONS[action_id] = function_module __webui__ = False if hasattr(function_module, "__webui__"): __webui__ = function_module.__webui__ if hasattr(function_module, "actions"): actions = function_module.actions model["actions"].extend( [ { "id": f"{action_id}.{_action['id']}", "name": _action.get( "name", f"{action.name} ({_action['id']})" ), "description": action.meta.description, "icon_url": _action.get( "icon_url", action.meta.manifest.get("icon_url", None) ), **({"__webui__": __webui__} if __webui__ else {}), } for _action in actions ] ) else: model["actions"].append( { "id": action_id, "name": action.name, "description": action.meta.description, "icon_url": action.meta.manifest.get("icon_url", None), **({"__webui__": __webui__} if __webui__ else {}), } ) app.state.MODELS = {model["id"]: model for model in models} webui_app.state.MODELS = app.state.MODELS return models @app.get("/api/models") async def get_models(user=Depends(get_verified_user)): models = await get_all_models() # Filter out filter pipelines models = [ model for model in models if "pipeline" not in model or model["pipeline"].get("type", None) != "filter" ] if app.state.config.ENABLE_MODEL_FILTER: if user.role == "user": models = list( filter( lambda model: model["id"] in app.state.config.MODEL_FILTER_LIST, models, ) ) return {"data": models} return {"data": models} @app.post("/api/chat/completions") async def generate_chat_completions(form_data: dict, user=Depends(get_verified_user)): model_id = form_data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) if app.state.config.ENABLE_MODEL_FILTER: if user.role == "user" and model_id not in app.state.config.MODEL_FILTER_LIST: raise HTTPException( status_code=status.HTTP_403_FORBIDDEN, detail="Model not found", ) model = app.state.MODELS[model_id] if model.get("pipe"): return await generate_function_chat_completion(form_data, user=user) if model["owned_by"] == "ollama": # Using /ollama/api/chat endpoint form_data = convert_payload_openai_to_ollama(form_data) form_data = GenerateChatCompletionForm(**form_data) response = await generate_ollama_chat_completion(form_data=form_data, user=user) if form_data.stream: response.headers["content-type"] = "text/event-stream" return StreamingResponse( convert_streaming_response_ollama_to_openai(response), headers=dict(response.headers), ) else: return convert_response_ollama_to_openai(response) else: return await generate_openai_chat_completion(form_data, user=user) @app.post("/api/chat/completed") async def chat_completed(form_data: dict, user=Depends(get_verified_user)): data = form_data model_id = data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) model = app.state.MODELS[model_id] sorted_filters = get_sorted_filters(model_id) if "pipeline" in model: sorted_filters = [model] + sorted_filters for filter in sorted_filters: r = None try: urlIdx = filter["urlIdx"] url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] if key != "": headers = {"Authorization": f"Bearer {key}"} r = requests.post( f"{url}/{filter['id']}/filter/outlet", headers=headers, json={ "user": { "id": user.id, "name": user.name, "email": user.email, "role": user.role, }, "body": data, }, ) r.raise_for_status() data = r.json() except Exception as e: # Handle connection error here print(f"Connection error: {e}") if r is not None: try: res = r.json() if "detail" in res: return JSONResponse( status_code=r.status_code, content=res, ) except Exception: pass else: pass __event_emitter__ = get_event_emitter( { "chat_id": data["chat_id"], "message_id": data["id"], "session_id": data["session_id"], } ) __event_call__ = get_event_call( { "chat_id": data["chat_id"], "message_id": data["id"], "session_id": data["session_id"], } ) def get_priority(function_id): function = Functions.get_function_by_id(function_id) if function is not None and hasattr(function, "valves"): # TODO: Fix FunctionModel to include vavles return (function.valves if function.valves else {}).get("priority", 0) return 0 filter_ids = [function.id for function in Functions.get_global_filter_functions()] if "info" in model and "meta" in model["info"]: filter_ids.extend(model["info"]["meta"].get("filterIds", [])) filter_ids = list(set(filter_ids)) enabled_filter_ids = [ function.id for function in Functions.get_functions_by_type("filter", active_only=True) ] filter_ids = [ filter_id for filter_id in filter_ids if filter_id in enabled_filter_ids ] # Sort filter_ids by priority, using the get_priority function filter_ids.sort(key=get_priority) for filter_id in filter_ids: filter = Functions.get_function_by_id(filter_id) if not filter: continue if filter_id in webui_app.state.FUNCTIONS: function_module = webui_app.state.FUNCTIONS[filter_id] else: function_module, _, _ = load_function_module_by_id(filter_id) webui_app.state.FUNCTIONS[filter_id] = function_module if hasattr(function_module, "valves") and hasattr(function_module, "Valves"): valves = Functions.get_function_valves_by_id(filter_id) function_module.valves = function_module.Valves( **(valves if valves else {}) ) if not hasattr(function_module, "outlet"): continue try: outlet = function_module.outlet # Get the signature of the function sig = inspect.signature(outlet) params = {"body": data} # Extra parameters to be passed to the function extra_params = { "__model__": model, "__id__": filter_id, "__event_emitter__": __event_emitter__, "__event_call__": __event_call__, } # Add extra params in contained in function signature for key, value in extra_params.items(): if key in sig.parameters: params[key] = value if "__user__" in sig.parameters: __user__ = { "id": user.id, "email": user.email, "name": user.name, "role": user.role, } try: if hasattr(function_module, "UserValves"): __user__["valves"] = function_module.UserValves( **Functions.get_user_valves_by_id_and_user_id( filter_id, user.id ) ) except Exception as e: print(e) params = {**params, "__user__": __user__} if inspect.iscoroutinefunction(outlet): data = await outlet(**params) else: data = outlet(**params) except Exception as e: print(f"Error: {e}") return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) return data @app.post("/api/chat/actions/{action_id}") async def chat_action(action_id: str, form_data: dict, user=Depends(get_verified_user)): if "." in action_id: action_id, sub_action_id = action_id.split(".") else: sub_action_id = None action = Functions.get_function_by_id(action_id) if not action: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Action not found", ) data = form_data model_id = data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) model = app.state.MODELS[model_id] __event_emitter__ = get_event_emitter( { "chat_id": data["chat_id"], "message_id": data["id"], "session_id": data["session_id"], } ) __event_call__ = get_event_call( { "chat_id": data["chat_id"], "message_id": data["id"], "session_id": data["session_id"], } ) if action_id in webui_app.state.FUNCTIONS: function_module = webui_app.state.FUNCTIONS[action_id] else: function_module, _, _ = load_function_module_by_id(action_id) webui_app.state.FUNCTIONS[action_id] = function_module if hasattr(function_module, "valves") and hasattr(function_module, "Valves"): valves = Functions.get_function_valves_by_id(action_id) function_module.valves = function_module.Valves(**(valves if valves else {})) if hasattr(function_module, "action"): try: action = function_module.action # Get the signature of the function sig = inspect.signature(action) params = {"body": data} # Extra parameters to be passed to the function extra_params = { "__model__": model, "__id__": sub_action_id if sub_action_id is not None else action_id, "__event_emitter__": __event_emitter__, "__event_call__": __event_call__, } # Add extra params in contained in function signature for key, value in extra_params.items(): if key in sig.parameters: params[key] = value if "__user__" in sig.parameters: __user__ = { "id": user.id, "email": user.email, "name": user.name, "role": user.role, } try: if hasattr(function_module, "UserValves"): __user__["valves"] = function_module.UserValves( **Functions.get_user_valves_by_id_and_user_id( action_id, user.id ) ) except Exception as e: print(e) params = {**params, "__user__": __user__} if inspect.iscoroutinefunction(action): data = await action(**params) else: data = action(**params) except Exception as e: print(f"Error: {e}") return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) return data ################################## # # Task Endpoints # ################################## # TODO: Refactor task API endpoints below into a separate file @app.get("/api/task/config") async def get_task_config(user=Depends(get_verified_user)): return { "TASK_MODEL": app.state.config.TASK_MODEL, "TASK_MODEL_EXTERNAL": app.state.config.TASK_MODEL_EXTERNAL, "TITLE_GENERATION_PROMPT_TEMPLATE": app.state.config.TITLE_GENERATION_PROMPT_TEMPLATE, "TAGS_GENERATION_PROMPT_TEMPLATE": app.state.config.TAGS_GENERATION_PROMPT_TEMPLATE, "ENABLE_SEARCH_QUERY": app.state.config.ENABLE_SEARCH_QUERY, "SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE": app.state.config.SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE, "TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE": app.state.config.TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE, } class TaskConfigForm(BaseModel): TASK_MODEL: Optional[str] TASK_MODEL_EXTERNAL: Optional[str] TITLE_GENERATION_PROMPT_TEMPLATE: str TAGS_GENERATION_PROMPT_TEMPLATE: str SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE: str ENABLE_SEARCH_QUERY: bool TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE: str @app.post("/api/task/config/update") async def update_task_config(form_data: TaskConfigForm, user=Depends(get_admin_user)): app.state.config.TASK_MODEL = form_data.TASK_MODEL app.state.config.TASK_MODEL_EXTERNAL = form_data.TASK_MODEL_EXTERNAL app.state.config.TITLE_GENERATION_PROMPT_TEMPLATE = ( form_data.TITLE_GENERATION_PROMPT_TEMPLATE ) app.state.config.TAGS_GENERATION_PROMPT_TEMPLATE = ( form_data.TAGS_GENERATION_PROMPT_TEMPLATE ) app.state.config.SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE = ( form_data.SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE ) app.state.config.ENABLE_SEARCH_QUERY = form_data.ENABLE_SEARCH_QUERY app.state.config.TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE = ( form_data.TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE ) return { "TASK_MODEL": app.state.config.TASK_MODEL, "TASK_MODEL_EXTERNAL": app.state.config.TASK_MODEL_EXTERNAL, "TITLE_GENERATION_PROMPT_TEMPLATE": app.state.config.TITLE_GENERATION_PROMPT_TEMPLATE, "TAGS_GENERATION_PROMPT_TEMPLATE": app.state.config.TAGS_GENERATION_PROMPT_TEMPLATE, "SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE": app.state.config.SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE, "ENABLE_SEARCH_QUERY": app.state.config.ENABLE_SEARCH_QUERY, "TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE": app.state.config.TOOLS_FUNCTION_CALLING_PROMPT_TEMPLATE, } @app.post("/api/task/title/completions") async def generate_title(form_data: dict, user=Depends(get_verified_user)): print("generate_title") model_id = form_data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) # Check if the user has a custom task model # If the user has a custom task model, use that model task_model_id = get_task_model_id(model_id) print(task_model_id) model = app.state.MODELS[task_model_id] if app.state.config.TITLE_GENERATION_PROMPT_TEMPLATE != "": template = app.state.config.TITLE_GENERATION_PROMPT_TEMPLATE else: template = """Create a concise, 3-5 word title with an emoji as a title for the prompt in the given language. Suitable Emojis for the summary can be used to enhance understanding but avoid quotation marks or special formatting. RESPOND ONLY WITH THE TITLE TEXT. Examples of titles: 📉 Stock Market Trends 🍪 Perfect Chocolate Chip Recipe Evolution of Music Streaming Remote Work Productivity Tips Artificial Intelligence in Healthcare 🎮 Video Game Development Insights Prompt: {{prompt:middletruncate:8000}}""" content = title_generation_template( template, form_data["prompt"], { "name": user.name, "location": user.info.get("location") if user.info else None, }, ) payload = { "model": task_model_id, "messages": [{"role": "user", "content": content}], "stream": False, **( {"max_tokens": 50} if app.state.MODELS[task_model_id]["owned_by"] == "ollama" else { "max_completion_tokens": 50, } ), "chat_id": form_data.get("chat_id", None), "metadata": {"task": str(TASKS.TITLE_GENERATION), "task_body": form_data}, } log.debug(payload) # Handle pipeline filters try: payload = filter_pipeline(payload, user) except Exception as e: if len(e.args) > 1: return JSONResponse( status_code=e.args[0], content={"detail": e.args[1]}, ) else: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) if "chat_id" in payload: del payload["chat_id"] return await generate_chat_completions(form_data=payload, user=user) @app.post("/api/task/tags/completions") async def generate_chat_tags(form_data: dict, user=Depends(get_verified_user)): print("generate_chat_tags") model_id = form_data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) # Check if the user has a custom task model # If the user has a custom task model, use that model task_model_id = get_task_model_id(model_id) print(task_model_id) template = """### Task: Generate 1-3 broad tags categorizing the main themes of the chat history. ### Guidelines: - Start with high-level domains (e.g. Science, Technology, Philosophy, Arts, Politics, Business, Health, Sports, Entertainment, Education) - Only add more specific subdomains if they are strongly represented throughout the conversation - If content is too short (less than 3 messages) or too diverse, use only ["General"] - Use the chat's primary language; default to English if multilingual - Prioritize accuracy over specificity ### Output: JSON format: { "tags": ["tag1", "tag2", "tag3"] } ### Chat History: {{MESSAGES:END:6}} """ content = tags_generation_template( template, form_data["messages"], {"name": user.name} ) print("content", content) payload = { "model": task_model_id, "messages": [{"role": "user", "content": content}], "stream": False, "metadata": {"task": str(TASKS.TAGS_GENERATION), "task_body": form_data}, } log.debug(payload) # Handle pipeline filters try: payload = filter_pipeline(payload, user) except Exception as e: if len(e.args) > 1: return JSONResponse( status_code=e.args[0], content={"detail": e.args[1]}, ) else: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) if "chat_id" in payload: del payload["chat_id"] return await generate_chat_completions(form_data=payload, user=user) @app.post("/api/task/query/completions") async def generate_search_query(form_data: dict, user=Depends(get_verified_user)): print("generate_search_query") if not app.state.config.ENABLE_SEARCH_QUERY: raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail=f"Search query generation is disabled", ) model_id = form_data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) # Check if the user has a custom task model # If the user has a custom task model, use that model task_model_id = get_task_model_id(model_id) print(task_model_id) model = app.state.MODELS[task_model_id] if app.state.config.SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE != "": template = app.state.config.SEARCH_QUERY_GENERATION_PROMPT_TEMPLATE else: template = """Given the user's message and interaction history, decide if a web search is necessary. You must be concise and exclusively provide a search query if one is necessary. Refrain from verbose responses or any additional commentary. Prefer suggesting a search if uncertain to provide comprehensive or updated information. If a search isn't needed at all, respond with an empty string. Default to a search query when in doubt. Today's date is {{CURRENT_DATE}}. User Message: {{prompt:end:4000}} Interaction History: {{MESSAGES:END:6}} Search Query:""" content = search_query_generation_template( template, form_data["messages"], {"name": user.name} ) print("content", content) payload = { "model": task_model_id, "messages": [{"role": "user", "content": content}], "stream": False, **( {"max_tokens": 30} if app.state.MODELS[task_model_id]["owned_by"] == "ollama" else { "max_completion_tokens": 30, } ), "metadata": {"task": str(TASKS.QUERY_GENERATION), "task_body": form_data}, } log.debug(payload) # Handle pipeline filters try: payload = filter_pipeline(payload, user) except Exception as e: if len(e.args) > 1: return JSONResponse( status_code=e.args[0], content={"detail": e.args[1]}, ) else: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) if "chat_id" in payload: del payload["chat_id"] return await generate_chat_completions(form_data=payload, user=user) @app.post("/api/task/emoji/completions") async def generate_emoji(form_data: dict, user=Depends(get_verified_user)): print("generate_emoji") model_id = form_data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) # Check if the user has a custom task model # If the user has a custom task model, use that model task_model_id = get_task_model_id(model_id) print(task_model_id) model = app.state.MODELS[task_model_id] template = ''' Your task is to reflect the speaker's likely facial expression through a fitting emoji. Interpret emotions from the message and reflect their facial expression using fitting, diverse emojis (e.g., 😊, 😢, 😡, 😱). Message: """{{prompt}}""" ''' content = title_generation_template( template, form_data["prompt"], { "name": user.name, "location": user.info.get("location") if user.info else None, }, ) payload = { "model": task_model_id, "messages": [{"role": "user", "content": content}], "stream": False, **( {"max_tokens": 4} if app.state.MODELS[task_model_id]["owned_by"] == "ollama" else { "max_completion_tokens": 4, } ), "chat_id": form_data.get("chat_id", None), "metadata": {"task": str(TASKS.EMOJI_GENERATION), "task_body": form_data}, } log.debug(payload) # Handle pipeline filters try: payload = filter_pipeline(payload, user) except Exception as e: if len(e.args) > 1: return JSONResponse( status_code=e.args[0], content={"detail": e.args[1]}, ) else: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) if "chat_id" in payload: del payload["chat_id"] return await generate_chat_completions(form_data=payload, user=user) @app.post("/api/task/moa/completions") async def generate_moa_response(form_data: dict, user=Depends(get_verified_user)): print("generate_moa_response") model_id = form_data["model"] if model_id not in app.state.MODELS: raise HTTPException( status_code=status.HTTP_404_NOT_FOUND, detail="Model not found", ) # Check if the user has a custom task model # If the user has a custom task model, use that model task_model_id = get_task_model_id(model_id) print(task_model_id) model = app.state.MODELS[task_model_id] template = """You have been provided with a set of responses from various models to the latest user query: "{{prompt}}" Your task is to synthesize these responses into a single, high-quality response. It is crucial to critically evaluate the information provided in these responses, recognizing that some of it may be biased or incorrect. Your response should not simply replicate the given answers but should offer a refined, accurate, and comprehensive reply to the instruction. Ensure your response is well-structured, coherent, and adheres to the highest standards of accuracy and reliability. Responses from models: {{responses}}""" content = moa_response_generation_template( template, form_data["prompt"], form_data["responses"], ) payload = { "model": task_model_id, "messages": [{"role": "user", "content": content}], "stream": form_data.get("stream", False), "chat_id": form_data.get("chat_id", None), "metadata": { "task": str(TASKS.MOA_RESPONSE_GENERATION), "task_body": form_data, }, } log.debug(payload) try: payload = filter_pipeline(payload, user) except Exception as e: if len(e.args) > 1: return JSONResponse( status_code=e.args[0], content={"detail": e.args[1]}, ) else: return JSONResponse( status_code=status.HTTP_400_BAD_REQUEST, content={"detail": str(e)}, ) if "chat_id" in payload: del payload["chat_id"] return await generate_chat_completions(form_data=payload, user=user) ################################## # # Pipelines Endpoints # ################################## # TODO: Refactor pipelines API endpoints below into a separate file @app.get("/api/pipelines/list") async def get_pipelines_list(user=Depends(get_admin_user)): responses = await get_openai_models(raw=True) print(responses) urlIdxs = [ idx for idx, response in enumerate(responses) if response is not None and "pipelines" in response ] return { "data": [ { "url": openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx], "idx": urlIdx, } for urlIdx in urlIdxs ] } @app.post("/api/pipelines/upload") async def upload_pipeline( urlIdx: int = Form(...), file: UploadFile = File(...), user=Depends(get_admin_user) ): print("upload_pipeline", urlIdx, file.filename) # Check if the uploaded file is a python file if not (file.filename and file.filename.endswith(".py")): raise HTTPException( status_code=status.HTTP_400_BAD_REQUEST, detail="Only Python (.py) files are allowed.", ) upload_folder = f"{CACHE_DIR}/pipelines" os.makedirs(upload_folder, exist_ok=True) file_path = os.path.join(upload_folder, file.filename) r = None try: # Save the uploaded file with open(file_path, "wb") as buffer: shutil.copyfileobj(file.file, buffer) url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] headers = {"Authorization": f"Bearer {key}"} with open(file_path, "rb") as f: files = {"file": f} r = requests.post(f"{url}/pipelines/upload", headers=headers, files=files) r.raise_for_status() data = r.json() return {**data} except Exception as e: # Handle connection error here print(f"Connection error: {e}") detail = "Pipeline not found" status_code = status.HTTP_404_NOT_FOUND if r is not None: status_code = r.status_code try: res = r.json() if "detail" in res: detail = res["detail"] except Exception: pass raise HTTPException( status_code=status_code, detail=detail, ) finally: # Ensure the file is deleted after the upload is completed or on failure if os.path.exists(file_path): os.remove(file_path) class AddPipelineForm(BaseModel): url: str urlIdx: int @app.post("/api/pipelines/add") async def add_pipeline(form_data: AddPipelineForm, user=Depends(get_admin_user)): r = None try: urlIdx = form_data.urlIdx url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] headers = {"Authorization": f"Bearer {key}"} r = requests.post( f"{url}/pipelines/add", headers=headers, json={"url": form_data.url} ) r.raise_for_status() data = r.json() return {**data} except Exception as e: # Handle connection error here print(f"Connection error: {e}") detail = "Pipeline not found" if r is not None: try: res = r.json() if "detail" in res: detail = res["detail"] except Exception: pass raise HTTPException( status_code=(r.status_code if r is not None else status.HTTP_404_NOT_FOUND), detail=detail, ) class DeletePipelineForm(BaseModel): id: str urlIdx: int @app.delete("/api/pipelines/delete") async def delete_pipeline(form_data: DeletePipelineForm, user=Depends(get_admin_user)): r = None try: urlIdx = form_data.urlIdx url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] headers = {"Authorization": f"Bearer {key}"} r = requests.delete( f"{url}/pipelines/delete", headers=headers, json={"id": form_data.id} ) r.raise_for_status() data = r.json() return {**data} except Exception as e: # Handle connection error here print(f"Connection error: {e}") detail = "Pipeline not found" if r is not None: try: res = r.json() if "detail" in res: detail = res["detail"] except Exception: pass raise HTTPException( status_code=(r.status_code if r is not None else status.HTTP_404_NOT_FOUND), detail=detail, ) @app.get("/api/pipelines") async def get_pipelines(urlIdx: Optional[int] = None, user=Depends(get_admin_user)): r = None try: url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] headers = {"Authorization": f"Bearer {key}"} r = requests.get(f"{url}/pipelines", headers=headers) r.raise_for_status() data = r.json() return {**data} except Exception as e: # Handle connection error here print(f"Connection error: {e}") detail = "Pipeline not found" if r is not None: try: res = r.json() if "detail" in res: detail = res["detail"] except Exception: pass raise HTTPException( status_code=(r.status_code if r is not None else status.HTTP_404_NOT_FOUND), detail=detail, ) @app.get("/api/pipelines/{pipeline_id}/valves") async def get_pipeline_valves( urlIdx: Optional[int], pipeline_id: str, user=Depends(get_admin_user), ): r = None try: url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] headers = {"Authorization": f"Bearer {key}"} r = requests.get(f"{url}/{pipeline_id}/valves", headers=headers) r.raise_for_status() data = r.json() return {**data} except Exception as e: # Handle connection error here print(f"Connection error: {e}") detail = "Pipeline not found" if r is not None: try: res = r.json() if "detail" in res: detail = res["detail"] except Exception: pass raise HTTPException( status_code=(r.status_code if r is not None else status.HTTP_404_NOT_FOUND), detail=detail, ) @app.get("/api/pipelines/{pipeline_id}/valves/spec") async def get_pipeline_valves_spec( urlIdx: Optional[int], pipeline_id: str, user=Depends(get_admin_user), ): r = None try: url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] headers = {"Authorization": f"Bearer {key}"} r = requests.get(f"{url}/{pipeline_id}/valves/spec", headers=headers) r.raise_for_status() data = r.json() return {**data} except Exception as e: # Handle connection error here print(f"Connection error: {e}") detail = "Pipeline not found" if r is not None: try: res = r.json() if "detail" in res: detail = res["detail"] except Exception: pass raise HTTPException( status_code=(r.status_code if r is not None else status.HTTP_404_NOT_FOUND), detail=detail, ) @app.post("/api/pipelines/{pipeline_id}/valves/update") async def update_pipeline_valves( urlIdx: Optional[int], pipeline_id: str, form_data: dict, user=Depends(get_admin_user), ): r = None try: url = openai_app.state.config.OPENAI_API_BASE_URLS[urlIdx] key = openai_app.state.config.OPENAI_API_KEYS[urlIdx] headers = {"Authorization": f"Bearer {key}"} r = requests.post( f"{url}/{pipeline_id}/valves/update", headers=headers, json={**form_data}, ) r.raise_for_status() data = r.json() return {**data} except Exception as e: # Handle connection error here print(f"Connection error: {e}") detail = "Pipeline not found" if r is not None: try: res = r.json() if "detail" in res: detail = res["detail"] except Exception: pass raise HTTPException( status_code=(r.status_code if r is not None else status.HTTP_404_NOT_FOUND), detail=detail, ) ################################## # # Config Endpoints # ################################## @app.get("/api/config") async def get_app_config(request: Request): user = None if "token" in request.cookies: token = request.cookies.get("token") data = decode_token(token) if data is not None and "id" in data: user = Users.get_user_by_id(data["id"]) return { "status": True, "name": WEBUI_NAME, "version": VERSION, "default_locale": str(DEFAULT_LOCALE), "oauth": { "providers": { name: config.get("name", name) for name, config in OAUTH_PROVIDERS.items() } }, "features": { "auth": WEBUI_AUTH, "auth_trusted_header": bool(webui_app.state.AUTH_TRUSTED_EMAIL_HEADER), "enable_signup": webui_app.state.config.ENABLE_SIGNUP, "enable_login_form": webui_app.state.config.ENABLE_LOGIN_FORM, **( { "enable_web_search": retrieval_app.state.config.ENABLE_RAG_WEB_SEARCH, "enable_image_generation": images_app.state.config.ENABLED, "enable_community_sharing": webui_app.state.config.ENABLE_COMMUNITY_SHARING, "enable_message_rating": webui_app.state.config.ENABLE_MESSAGE_RATING, "enable_admin_export": ENABLE_ADMIN_EXPORT, "enable_admin_chat_access": ENABLE_ADMIN_CHAT_ACCESS, } if user is not None else {} ), }, **( { "default_models": webui_app.state.config.DEFAULT_MODELS, "default_prompt_suggestions": webui_app.state.config.DEFAULT_PROMPT_SUGGESTIONS, "audio": { "tts": { "engine": audio_app.state.config.TTS_ENGINE, "voice": audio_app.state.config.TTS_VOICE, "split_on": audio_app.state.config.TTS_SPLIT_ON, }, "stt": { "engine": audio_app.state.config.STT_ENGINE, }, }, "file": { "max_size": retrieval_app.state.config.FILE_MAX_SIZE, "max_count": retrieval_app.state.config.FILE_MAX_COUNT, }, "permissions": {**webui_app.state.config.USER_PERMISSIONS}, } if user is not None else {} ), } @app.get("/api/config/model/filter") async def get_model_filter_config(user=Depends(get_admin_user)): return { "enabled": app.state.config.ENABLE_MODEL_FILTER, "models": app.state.config.MODEL_FILTER_LIST, } class ModelFilterConfigForm(BaseModel): enabled: bool models: list[str] @app.post("/api/config/model/filter") async def update_model_filter_config( form_data: ModelFilterConfigForm, user=Depends(get_admin_user) ): app.state.config.ENABLE_MODEL_FILTER = form_data.enabled app.state.config.MODEL_FILTER_LIST = form_data.models return { "enabled": app.state.config.ENABLE_MODEL_FILTER, "models": app.state.config.MODEL_FILTER_LIST, } # TODO: webhook endpoint should be under config endpoints @app.get("/api/webhook") async def get_webhook_url(user=Depends(get_admin_user)): return { "url": app.state.config.WEBHOOK_URL, } class UrlForm(BaseModel): url: str @app.post("/api/webhook") async def update_webhook_url(form_data: UrlForm, user=Depends(get_admin_user)): app.state.config.WEBHOOK_URL = form_data.url webui_app.state.WEBHOOK_URL = app.state.config.WEBHOOK_URL return {"url": app.state.config.WEBHOOK_URL} @app.get("/api/version") async def get_app_version(): return { "version": VERSION, } @app.get("/api/changelog") async def get_app_changelog(): return {key: CHANGELOG[key] for idx, key in enumerate(CHANGELOG) if idx < 5} @app.get("/api/version/updates") async def get_app_latest_release_version(): if OFFLINE_MODE: log.debug( f"Offline mode is enabled, returning current version as latest version" ) return {"current": VERSION, "latest": VERSION} try: timeout = aiohttp.ClientTimeout(total=1) async with aiohttp.ClientSession(timeout=timeout, trust_env=True) as session: async with session.get( "https://api.github.com/repos/open-webui/open-webui/releases/latest" ) as response: response.raise_for_status() data = await response.json() latest_version = data["tag_name"] return {"current": VERSION, "latest": latest_version[1:]} except Exception as e: log.debug(e) return {"current": VERSION, "latest": VERSION} ############################ # OAuth Login & Callback ############################ oauth = OAuth() for provider_name, provider_config in OAUTH_PROVIDERS.items(): oauth.register( name=provider_name, client_id=provider_config["client_id"], client_secret=provider_config["client_secret"], server_metadata_url=provider_config["server_metadata_url"], client_kwargs={ "scope": provider_config["scope"], }, redirect_uri=provider_config["redirect_uri"], ) # SessionMiddleware is used by authlib for oauth if len(OAUTH_PROVIDERS) > 0: app.add_middleware( SessionMiddleware, secret_key=WEBUI_SECRET_KEY, session_cookie="oui-session", same_site=WEBUI_SESSION_COOKIE_SAME_SITE, https_only=WEBUI_SESSION_COOKIE_SECURE, ) @app.get("/oauth/{provider}/login") async def oauth_login(provider: str, request: Request): if provider not in OAUTH_PROVIDERS: raise HTTPException(404) # If the provider has a custom redirect URL, use that, otherwise automatically generate one redirect_uri = OAUTH_PROVIDERS[provider].get("redirect_uri") or request.url_for( "oauth_callback", provider=provider ) client = oauth.create_client(provider) if client is None: raise HTTPException(404) return await client.authorize_redirect(request, redirect_uri) # OAuth login logic is as follows: # 1. Attempt to find a user with matching subject ID, tied to the provider # 2. If OAUTH_MERGE_ACCOUNTS_BY_EMAIL is true, find a user with the email address provided via OAuth # - This is considered insecure in general, as OAuth providers do not always verify email addresses # 3. If there is no user, and ENABLE_OAUTH_SIGNUP is true, create a user # - Email addresses are considered unique, so we fail registration if the email address is already taken @app.get("/oauth/{provider}/callback") async def oauth_callback(provider: str, request: Request, response: Response): if provider not in OAUTH_PROVIDERS: raise HTTPException(404) client = oauth.create_client(provider) try: token = await client.authorize_access_token(request) except Exception as e: log.warning(f"OAuth callback error: {e}") raise HTTPException(400, detail=ERROR_MESSAGES.INVALID_CRED) user_data: UserInfo = token["userinfo"] sub = user_data.get("sub") if not sub: log.warning(f"OAuth callback failed, sub is missing: {user_data}") raise HTTPException(400, detail=ERROR_MESSAGES.INVALID_CRED) provider_sub = f"{provider}@{sub}" email_claim = webui_app.state.config.OAUTH_EMAIL_CLAIM email = user_data.get(email_claim, "").lower() # We currently mandate that email addresses are provided if not email: log.warning(f"OAuth callback failed, email is missing: {user_data}") raise HTTPException(400, detail=ERROR_MESSAGES.INVALID_CRED) # Check if the user exists user = Users.get_user_by_oauth_sub(provider_sub) if not user: # If the user does not exist, check if merging is enabled if OAUTH_MERGE_ACCOUNTS_BY_EMAIL.value: # Check if the user exists by email user = Users.get_user_by_email(email) if user: # Update the user with the new oauth sub Users.update_user_oauth_sub_by_id(user.id, provider_sub) if not user: # If the user does not exist, check if signups are enabled if ENABLE_OAUTH_SIGNUP.value: # Check if an existing user with the same email already exists existing_user = Users.get_user_by_email(user_data.get("email", "").lower()) if existing_user: raise HTTPException(400, detail=ERROR_MESSAGES.EMAIL_TAKEN) picture_claim = webui_app.state.config.OAUTH_PICTURE_CLAIM picture_url = user_data.get(picture_claim, "") if picture_url: # Download the profile image into a base64 string try: async with aiohttp.ClientSession() as session: async with session.get(picture_url) as resp: picture = await resp.read() base64_encoded_picture = base64.b64encode(picture).decode( "utf-8" ) guessed_mime_type = mimetypes.guess_type(picture_url)[0] if guessed_mime_type is None: # assume JPG, browsers are tolerant enough of image formats guessed_mime_type = "image/jpeg" picture_url = f"data:{guessed_mime_type};base64,{base64_encoded_picture}" except Exception as e: log.error(f"Error downloading profile image '{picture_url}': {e}") picture_url = "" if not picture_url: picture_url = "/user.png" username_claim = webui_app.state.config.OAUTH_USERNAME_CLAIM role = ( "admin" if Users.get_num_users() == 0 else webui_app.state.config.DEFAULT_USER_ROLE ) user = Auths.insert_new_auth( email=email, password=get_password_hash( str(uuid.uuid4()) ), # Random password, not used name=user_data.get(username_claim, "User"), profile_image_url=picture_url, role=role, oauth_sub=provider_sub, ) if webui_app.state.config.WEBHOOK_URL: post_webhook( webui_app.state.config.WEBHOOK_URL, WEBHOOK_MESSAGES.USER_SIGNUP(user.name), { "action": "signup", "message": WEBHOOK_MESSAGES.USER_SIGNUP(user.name), "user": user.model_dump_json(exclude_none=True), }, ) else: raise HTTPException( status.HTTP_403_FORBIDDEN, detail=ERROR_MESSAGES.ACCESS_PROHIBITED ) jwt_token = create_token( data={"id": user.id}, expires_delta=parse_duration(webui_app.state.config.JWT_EXPIRES_IN), ) # Set the cookie token response.set_cookie( key="token", value=jwt_token, httponly=True, # Ensures the cookie is not accessible via JavaScript samesite=WEBUI_SESSION_COOKIE_SAME_SITE, secure=WEBUI_SESSION_COOKIE_SECURE, ) # Redirect back to the frontend with the JWT token redirect_url = f"{request.base_url}auth#token={jwt_token}" return RedirectResponse(url=redirect_url) @app.get("/manifest.json") async def get_manifest_json(): return { "name": WEBUI_NAME, "short_name": WEBUI_NAME, "description": "Open WebUI is an open, extensible, user-friendly interface for AI that adapts to your workflow.", "start_url": "/", "display": "standalone", "background_color": "#343541", "orientation": "any", "icons": [ { "src": "/static/logo.png", "type": "image/png", "sizes": "500x500", "purpose": "any", }, { "src": "/static/logo.png", "type": "image/png", "sizes": "500x500", "purpose": "maskable", }, ], } @app.get("/opensearch.xml") async def get_opensearch_xml(): xml_content = rf""" {WEBUI_NAME} Search {WEBUI_NAME} UTF-8 {WEBUI_URL}/static/favicon.png {WEBUI_URL} """ return Response(content=xml_content, media_type="application/xml") @app.get("/health") async def healthcheck(): return {"status": True} @app.get("/health/db") async def healthcheck_with_db(): Session.execute(text("SELECT 1;")).all() return {"status": True} app.mount("/static", StaticFiles(directory=STATIC_DIR), name="static") app.mount("/cache", StaticFiles(directory=CACHE_DIR), name="cache") if os.path.exists(FRONTEND_BUILD_DIR): mimetypes.add_type("text/javascript", ".js") app.mount( "/", SPAStaticFiles(directory=FRONTEND_BUILD_DIR, html=True), name="spa-static-files", ) else: log.warning( f"Frontend build directory not found at '{FRONTEND_BUILD_DIR}'. Serving API only." )