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- import asyncio
- import importlib
- import inspect
- import json
- import os
- from contextlib import asynccontextmanager
- from http import HTTPStatus
- from typing import AsyncGenerator, List, Optional, Tuple
- import fastapi
- import uvicorn
- from fastapi import APIRouter, Header, Request
- from fastapi.exceptions import RequestValidationError
- from fastapi.middleware.cors import CORSMiddleware
- from fastapi.responses import (HTMLResponse, JSONResponse, Response,
- StreamingResponse)
- from loguru import logger
- from prometheus_client import make_asgi_app
- import aphrodite
- import aphrodite.endpoints.openai.embeddings as OAIembeddings
- from aphrodite.common.logger import UVICORN_LOG_CONFIG
- from aphrodite.common.outputs import RequestOutput
- from aphrodite.common.sampling_params import _SAMPLING_EPS, SamplingParams
- from aphrodite.common.utils import random_uuid
- from aphrodite.endpoints.openai.args import make_arg_parser
- from aphrodite.endpoints.openai.protocol import (
- ChatCompletionRequest, CompletionRequest, EmbeddingsRequest,
- EmbeddingsResponse, ErrorResponse, KAIGenerationInputSchema, Prompt)
- from aphrodite.endpoints.openai.serving_chat import OpenAIServingChat
- from aphrodite.endpoints.openai.serving_completions import \
- OpenAIServingCompletion
- from aphrodite.engine.args_tools import AsyncEngineArgs
- from aphrodite.engine.async_aphrodite import AsyncAphrodite
- from aphrodite.transformers_utils.tokenizer import get_tokenizer
- from aphrodite.endpoints.openai.serving_engine import LoRA
- TIMEOUT_KEEP_ALIVE = 5 # seconds
- engine: Optional[AsyncAphrodite] = None
- engine_args: Optional[AsyncEngineArgs] = None
- openai_serving_chat: OpenAIServingChat = None
- openai_serving_completion: OpenAIServingCompletion = None
- router = APIRouter()
- kai_api = APIRouter()
- extra_api = APIRouter()
- kobold_lite_ui = ""
- sampler_json = ""
- gen_cache: dict = {}
- @asynccontextmanager
- async def lifespan(app: fastapi.FastAPI):
- async def _force_log():
- while True:
- await asyncio.sleep(10)
- await engine.do_log_stats()
- if not engine_args.disable_log_stats:
- asyncio.create_task(_force_log())
- yield
- # Add prometheus asgi middleware to route /metrics requests
- metrics_app = make_asgi_app()
- router.mount("/metrics", metrics_app)
- @router.get("/health")
- async def health() -> Response:
- """Health check."""
- await openai_serving_chat.engine.check_health()
- await openai_serving_completion.engine.check_health()
- return Response(status_code=200)
- @router.get("/v1/models")
- async def show_available_models(x_api_key: Optional[str] = Header(None)):
- models = await openai_serving_chat.show_available_models()
- return JSONResponse(content=models.model_dump())
- @router.post("/v1/tokenize")
- @router.post("/v1/token/encode")
- async def tokenize(request: Request,
- prompt: Prompt,
- x_api_key: Optional[str] = Header(None)):
- tokenized = await openai_serving_chat.tokenize(prompt)
- return JSONResponse(content=tokenized)
- @router.post("/v1/detokenize")
- @router.post("/v1/token/decode")
- async def detokenize(request: Request,
- token_ids: List[int],
- x_api_key: Optional[str] = Header(None)):
- detokenized = await openai_serving_chat.detokenize(token_ids)
- return JSONResponse(content=detokenized)
- @router.post("/v1/embeddings", response_model=EmbeddingsResponse)
- async def handle_embeddings(request: EmbeddingsRequest,
- x_api_key: Optional[str] = Header(None)):
- input = request.input
- if not input:
- raise JSONResponse(
- status_code=400,
- content={"error": "Missing required argument input"})
- model = request.model if request.model else None
- response = await OAIembeddings.embeddings(input, request.encoding_format,
- model)
- return JSONResponse(response)
- @router.get("/version", description="Fetch the Aphrodite Engine version.")
- async def show_version(x_api_key: Optional[str] = Header(None)):
- ver = {"version": aphrodite.__version__}
- return JSONResponse(content=ver)
- @router.get("/v1/samplers")
- async def show_samplers(x_api_key: Optional[str] = Header(None)):
- """Get the available samplers."""
- global sampler_json
- if not sampler_json:
- jsonpath = os.path.dirname(os.path.abspath(__file__))
- samplerpath = os.path.join(jsonpath, "./samplers.json")
- samplerpath = os.path.normpath(samplerpath) # Normalize the path
- if os.path.exists(samplerpath):
- with open(samplerpath, "r") as f:
- sampler_json = json.load(f)
- else:
- logger.error("Sampler JSON not found at " + samplerpath)
- return sampler_json
- @router.post("/v1/lora/load")
- async def load_lora(lora: LoRA, x_api_key: Optional[str] = Header(None)):
- openai_serving_chat.add_lora(lora)
- openai_serving_completion.add_lora(lora)
- if engine_args.enable_lora is False:
- logger.error("LoRA is not enabled in the engine. "
- "Please start the server with the "
- "--enable-lora flag.")
- return JSONResponse(content={"result": "success"})
- @router.delete("/v1/lora/unload")
- async def unload_lora(lora_name: str, x_api_key: Optional[str] = Header(None)):
- openai_serving_chat.remove_lora(lora_name)
- openai_serving_completion.remove_lora(lora_name)
- return JSONResponse(content={"result": "success"})
- @router.post("/v1/chat/completions")
- async def create_chat_completion(request: ChatCompletionRequest,
- raw_request: Request,
- x_api_key: Optional[str] = Header(None)):
- generator = await openai_serving_chat.create_chat_completion(
- request, raw_request)
- if isinstance(generator, ErrorResponse):
- return JSONResponse(content=generator.model_dump(),
- status_code=generator.code)
- if request.stream:
- return StreamingResponse(content=generator,
- media_type="text/event-stream")
- else:
- return JSONResponse(content=generator.model_dump())
- @router.post("/v1/completions")
- async def create_completion(request: CompletionRequest,
- raw_request: Request,
- x_api_key: Optional[str] = Header(None)):
- generator = await openai_serving_completion.create_completion(
- request, raw_request)
- if isinstance(generator, ErrorResponse):
- return JSONResponse(content=generator.model_dump(),
- status_code=generator.code)
- if request.stream:
- return StreamingResponse(content=generator,
- media_type="text/event-stream")
- else:
- return JSONResponse(content=generator.model_dump())
- # ============ KoboldAI API ============ #
- def _set_badwords(tokenizer, hf_config): # pylint: disable=redefined-outer-name
- # pylint: disable=global-variable-undefined
- global badwordsids
- if hf_config.bad_words_ids is not None:
- badwordsids = hf_config.bad_words_ids
- return
- badwordsids = [
- v for k, v in tokenizer.get_vocab().items()
- if any(c in str(k) for c in "[]")
- ]
- if tokenizer.pad_token_id in badwordsids:
- badwordsids.remove(tokenizer.pad_token_id)
- badwordsids.append(tokenizer.eos_token_id)
- def prepare_engine_payload(
- kai_payload: KAIGenerationInputSchema
- ) -> Tuple[SamplingParams, List[int]]:
- """Create SamplingParams and truncated input tokens for AsyncEngine"""
- if not kai_payload.genkey:
- kai_payload.genkey = f"kai-{random_uuid()}"
- # if kai_payload.max_context_length > engine_args.max_model_len:
- # raise ValueError(
- # f"max_context_length ({kai_payload.max_context_length}) "
- # "must be less than or equal to "
- # f"max_model_len ({engine_args.max_model_len})")
- kai_payload.top_k = kai_payload.top_k if kai_payload.top_k != 0.0 else -1
- kai_payload.tfs = max(_SAMPLING_EPS, kai_payload.tfs)
- if kai_payload.temperature < _SAMPLING_EPS:
- kai_payload.n = 1
- kai_payload.top_p = 1.0
- kai_payload.top_k = -1
- if kai_payload.dynatemp_range is not None:
- dynatemp_min = kai_payload.temperature - kai_payload.dynatemp_range
- dynatemp_max = kai_payload.temperature + kai_payload.dynatemp_range
- sampling_params = SamplingParams(
- n=kai_payload.n,
- best_of=kai_payload.n,
- repetition_penalty=kai_payload.rep_pen,
- temperature=kai_payload.temperature,
- dynatemp_min=dynatemp_min if kai_payload.dynatemp_range > 0 else 0.0,
- dynatemp_max=dynatemp_max if kai_payload.dynatemp_range > 0 else 0.0,
- dynatemp_exponent=kai_payload.dynatemp_exponent,
- smoothing_factor=kai_payload.smoothing_factor,
- smoothing_curve=kai_payload.smoothing_curve,
- tfs=kai_payload.tfs,
- top_p=kai_payload.top_p,
- top_k=kai_payload.top_k,
- top_a=kai_payload.top_a,
- min_p=kai_payload.min_p,
- typical_p=kai_payload.typical,
- eta_cutoff=kai_payload.eta_cutoff,
- epsilon_cutoff=kai_payload.eps_cutoff,
- mirostat_mode=kai_payload.mirostat,
- mirostat_tau=kai_payload.mirostat_tau,
- mirostat_eta=kai_payload.mirostat_eta,
- stop=kai_payload.stop_sequence,
- include_stop_str_in_output=kai_payload.include_stop_str_in_output,
- custom_token_bans=badwordsids
- if kai_payload.use_default_badwordsids else [],
- max_tokens=kai_payload.max_length,
- seed=kai_payload.sampler_seed,
- )
- max_input_tokens = max(
- 1, kai_payload.max_context_length - kai_payload.max_length)
- input_tokens = tokenizer(kai_payload.prompt).input_ids[-max_input_tokens:]
- return sampling_params, input_tokens
- @kai_api.post("/generate")
- async def generate(kai_payload: KAIGenerationInputSchema) -> JSONResponse:
- sampling_params, input_tokens = prepare_engine_payload(kai_payload)
- result_generator = engine.generate(None, sampling_params,
- kai_payload.genkey, input_tokens)
- final_res: RequestOutput = None
- previous_output = ""
- async for res in result_generator:
- final_res = res
- new_chunk = res.outputs[0].text[len(previous_output):]
- previous_output += new_chunk
- gen_cache[kai_payload.genkey] = previous_output
- assert final_res is not None
- del gen_cache[kai_payload.genkey]
- return JSONResponse(
- {"results": [{
- "text": output.text
- } for output in final_res.outputs]})
- @extra_api.post("/generate/stream")
- async def generate_stream(
- kai_payload: KAIGenerationInputSchema) -> StreamingResponse:
- sampling_params, input_tokens = prepare_engine_payload(kai_payload)
- results_generator = engine.generate(None, sampling_params,
- kai_payload.genkey, input_tokens)
- async def stream_kobold() -> AsyncGenerator[bytes, None]:
- previous_output = ""
- async for res in results_generator:
- new_chunk = res.outputs[0].text[len(previous_output):]
- previous_output += new_chunk
- yield b"event: message\n"
- yield f"data: {json.dumps({'token': new_chunk})}\n\n".encode()
- return StreamingResponse(stream_kobold(),
- headers={
- "Cache-Control": "no-cache",
- "Connection": "keep-alive",
- },
- media_type="text/event-stream")
- @extra_api.post("/generate/check")
- @extra_api.get("/generate/check")
- async def check_generation(request: Request):
- text = ""
- try:
- request_dict = await request.json()
- if "genkey" in request_dict and request_dict["genkey"] in gen_cache:
- text = gen_cache[request_dict["genkey"]]
- except json.JSONDecodeError:
- pass
- return JSONResponse({"results": [{"text": text}]})
- @extra_api.post("/abort")
- async def abort_generation(request: Request):
- try:
- request_dict = await request.json()
- if "genkey" in request_dict:
- await engine.abort(request_dict["genkey"])
- except json.JSONDecodeError:
- pass
- return JSONResponse({})
- @extra_api.post("/tokencount")
- async def count_tokens(request: Request):
- """Tokenize string and return token count"""
- request_dict = await request.json()
- tokenizer_result = await openai_serving_chat.tokenize(
- Prompt(**request_dict))
- return JSONResponse({"value": tokenizer_result["value"]})
- @kai_api.get("/info/version")
- async def get_version():
- """Impersonate KAI"""
- return JSONResponse({"result": "1.2.4"})
- @kai_api.get("/model")
- async def get_model():
- return JSONResponse({"result": f"aphrodite/{served_model}"})
- @kai_api.get("/config/soft_prompts_list")
- async def get_available_softprompts():
- """Stub for compatibility"""
- return JSONResponse({"values": []})
- @kai_api.get("/config/soft_prompt")
- async def get_current_softprompt():
- """Stub for compatibility"""
- return JSONResponse({"value": ""})
- @kai_api.put("/config/soft_prompt")
- async def set_current_softprompt():
- """Stub for compatibility"""
- return JSONResponse({})
- @kai_api.get("/config/max_length")
- async def get_max_length() -> JSONResponse:
- max_length = args.max_length
- return JSONResponse({"value": max_length})
- @kai_api.get("/config/max_context_length")
- @extra_api.get("/true_max_context_length")
- async def get_max_context_length() -> JSONResponse:
- max_context_length = engine_args.max_model_len
- return JSONResponse({"value": max_context_length})
- @extra_api.get("/preloadstory")
- async def get_preloaded_story() -> JSONResponse:
- """Stub for compatibility"""
- return JSONResponse({})
- @extra_api.get("/version")
- async def get_extra_version():
- """Impersonate KoboldCpp"""
- return JSONResponse({"result": "KoboldCpp", "version": "1.63"})
- @router.get("/")
- async def get_kobold_lite_ui():
- """Serves a cached copy of the Kobold Lite UI, loading it from disk
- on demand if needed."""
- global kobold_lite_ui
- if kobold_lite_ui == "":
- scriptpath = os.path.dirname(os.path.abspath(__file__))
- klitepath = os.path.join(scriptpath, "../kobold/klite.embd")
- klitepath = os.path.normpath(klitepath) # Normalize the path
- if os.path.exists(klitepath):
- with open(klitepath, "r") as f:
- kobold_lite_ui = f.read()
- else:
- logger.error("Kobold Lite UI not found at " + klitepath)
- return HTMLResponse(content=kobold_lite_ui)
- # ============ KoboldAI API ============ #
- def build_app(args):
- app = fastapi.FastAPI(lifespan=lifespan)
- app.include_router(router)
- app.root_path = args.root_path
- if args.launch_kobold_api:
- logger.warning("Launching Kobold API server in addition to OpenAI. "
- "Keep in mind that the Kobold API routes are NOT "
- "protected via the API key.")
- app.include_router(kai_api, prefix="/api/v1")
- app.include_router(kai_api,
- prefix="/api/latest",
- include_in_schema=False)
- app.include_router(extra_api, prefix="/api/extra")
- app.add_middleware(
- CORSMiddleware,
- allow_origins=args.allowed_origins,
- allow_credentials=args.allow_credentials,
- allow_methods=args.allowed_methods,
- allow_headers=args.allowed_headers,
- )
- @app.exception_handler(RequestValidationError)
- async def validation_exception_handler(_, exc):
- err = openai_serving_completion.create_error_response(message=str(exc))
- return JSONResponse(err.model_dump(),
- status_code=HTTPStatus.BAD_REQUEST)
- if token := os.environ.get("APHRODITE_API_KEY") or args.api_keys:
- admin_key = os.environ.get("APHRODITE_ADMIN_KEY") or args.admin_key
- if admin_key is None:
- logger.warning("Admin key not provided. Admin operations will "
- "be disabled.")
- @app.middleware("http")
- async def authentication(request: Request, call_next):
- excluded_paths = ["/api"]
- if any(
- request.url.path.startswith(path)
- for path in excluded_paths):
- return await call_next(request)
- if not request.url.path.startswith("/v1"):
- return await call_next(request)
- # Browsers may send OPTIONS requests to check CORS headers
- # before sending the actual request. We should allow these
- # requests to pass through without authentication.
- # See https://github.com/PygmalionAI/aphrodite-engine/issues/434
- if request.method == "OPTIONS":
- return await call_next(request)
- auth_header = request.headers.get("Authorization")
- api_key_header = request.headers.get("x-api-key")
- if request.url.path.startswith("/v1/lora"):
- if admin_key is not None and api_key_header == admin_key:
- return await call_next(request)
- return JSONResponse(content={"error": "Unauthorized"},
- status_code=401)
- if auth_header != "Bearer " + token and api_key_header != token:
- return JSONResponse(content={"error": "Unauthorized"},
- status_code=401)
- return await call_next(request)
- for middleware in args.middleware:
- module_path, object_name = middleware.rsplit(".", 1)
- imported = getattr(importlib.import_module(module_path), object_name)
- if inspect.isclass(imported):
- app.add_middleware(imported)
- elif inspect.iscoroutinefunction(imported):
- app.middleware("http")(imported)
- else:
- raise ValueError(f"Invalid middleware {middleware}. "
- f"Must be a function or a class.")
- return app
- def run_server(args):
- app = build_app(args)
- logger.debug(f"args: {args}")
- global engine, engine_args, openai_serving_chat, openai_serving_completion,\
- tokenizer, served_model
- if args.served_model_name is not None:
- served_model = args.served_model_name
- else:
- served_model = args.model
- engine_args = AsyncEngineArgs.from_cli_args(args)
- engine = AsyncAphrodite.from_engine_args(engine_args)
- tokenizer = get_tokenizer(
- engine_args.tokenizer,
- tokenizer_mode=engine_args.tokenizer_mode,
- trust_remote_code=engine_args.trust_remote_code,
- revision=engine_args.revision,
- )
- chat_template = args.chat_template
- if chat_template is None and tokenizer.chat_template is not None:
- chat_template = tokenizer.chat_template
- openai_serving_chat = OpenAIServingChat(engine, served_model,
- args.response_role,
- args.lora_modules,
- args.chat_template)
- openai_serving_completion = OpenAIServingCompletion(
- engine, served_model, args.lora_modules)
- engine_model_config = asyncio.run(engine.get_model_config())
- if args.launch_kobold_api:
- _set_badwords(tokenizer, engine_model_config.hf_config)
- try:
- uvicorn.run(app,
- host=args.host,
- port=args.port,
- log_level="info",
- timeout_keep_alive=TIMEOUT_KEEP_ALIVE,
- ssl_keyfile=args.ssl_keyfile,
- ssl_certfile=args.ssl_certfile,
- log_config=UVICORN_LOG_CONFIG)
- except KeyboardInterrupt:
- logger.info("API server stopped by user. Exiting.")
- except asyncio.exceptions.CancelledError:
- logger.info("API server stopped due to a cancelled request. Exiting.")
- if __name__ == "__main__":
- # NOTE:
- # This section should be in sync with aphrodite/endpoints/cli.py
- # for CLI entrypoints.
- parser = make_arg_parser()
- args = parser.parse_args()
- run_server(args)
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