mirror of
https://github.com/oobabooga/text-generation-webui.git
synced 2024-11-25 01:09:22 +01:00
333 lines
12 KiB
Python
333 lines
12 KiB
Python
import json
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import os
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import traceback
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from http.server import BaseHTTPRequestHandler, ThreadingHTTPServer
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from threading import Thread
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import extensions.openai.completions as OAIcompletions
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import extensions.openai.edits as OAIedits
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import extensions.openai.embeddings as OAIembeddings
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import extensions.openai.images as OAIimages
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import extensions.openai.models as OAImodels
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import extensions.openai.moderations as OAImoderations
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from extensions.openai.defaults import clamp, default, get_default_req_params
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from extensions.openai.errors import (
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InvalidRequestError,
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OpenAIError,
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ServiceUnavailableError
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)
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from extensions.openai.tokens import token_count, token_decode, token_encode
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from extensions.openai.utils import debug_msg
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from modules import shared
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import cgi
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import speech_recognition as sr
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from pydub import AudioSegment
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params = {
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'port': int(os.environ.get('OPENEDAI_PORT')) if 'OPENEDAI_PORT' in os.environ else 5001,
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}
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class Handler(BaseHTTPRequestHandler):
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def send_access_control_headers(self):
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self.send_header("Access-Control-Allow-Origin", "*")
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self.send_header("Access-Control-Allow-Credentials", "true")
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self.send_header(
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"Access-Control-Allow-Methods",
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"GET,HEAD,OPTIONS,POST,PUT"
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)
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self.send_header(
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"Access-Control-Allow-Headers",
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"Origin, Accept, X-Requested-With, Content-Type, "
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"Access-Control-Request-Method, Access-Control-Request-Headers, "
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"Authorization"
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)
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def do_OPTIONS(self):
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self.send_response(200)
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self.send_access_control_headers()
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self.send_header('Content-Type', 'application/json')
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self.end_headers()
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self.wfile.write("OK".encode('utf-8'))
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def start_sse(self):
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self.send_response(200)
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self.send_access_control_headers()
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self.send_header('Content-Type', 'text/event-stream')
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self.send_header('Cache-Control', 'no-cache')
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# self.send_header('Connection', 'keep-alive')
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self.end_headers()
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def send_sse(self, chunk: dict):
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response = 'data: ' + json.dumps(chunk) + '\r\n\r\n'
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debug_msg(response[:-4])
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self.wfile.write(response.encode('utf-8'))
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def end_sse(self):
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response = 'data: [DONE]\r\n\r\n'
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debug_msg(response[:-4])
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self.wfile.write(response.encode('utf-8'))
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def return_json(self, ret: dict, code: int = 200, no_debug=False):
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self.send_response(code)
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self.send_access_control_headers()
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self.send_header('Content-Type', 'application/json')
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response = json.dumps(ret)
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r_utf8 = response.encode('utf-8')
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self.send_header('Content-Length', str(len(r_utf8)))
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self.end_headers()
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self.wfile.write(r_utf8)
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if not no_debug:
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debug_msg(r_utf8)
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def openai_error(self, message, code=500, error_type='APIError', param='', internal_message=''):
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error_resp = {
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'error': {
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'message': message,
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'code': code,
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'type': error_type,
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'param': param,
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}
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}
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if internal_message:
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print(error_type, message)
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print(internal_message)
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# error_resp['internal_message'] = internal_message
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self.return_json(error_resp, code)
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def openai_error_handler(func):
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def wrapper(self):
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try:
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func(self)
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except InvalidRequestError as e:
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self.openai_error(e.message, e.code, e.__class__.__name__, e.param, internal_message=e.internal_message)
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except OpenAIError as e:
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self.openai_error(e.message, e.code, e.__class__.__name__, internal_message=e.internal_message)
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except Exception as e:
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self.openai_error(repr(e), 500, 'OpenAIError', internal_message=traceback.format_exc())
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return wrapper
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@openai_error_handler
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def do_GET(self):
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debug_msg(self.requestline)
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debug_msg(self.headers)
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if self.path.startswith('/v1/engines') or self.path.startswith('/v1/models'):
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is_legacy = 'engines' in self.path
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is_list = self.path in ['/v1/engines', '/v1/models']
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if is_legacy and not is_list:
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model_name = self.path[self.path.find('/v1/engines/') + len('/v1/engines/'):]
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resp = OAImodels.load_model(model_name)
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elif is_list:
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resp = OAImodels.list_models(is_legacy)
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else:
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model_name = self.path[len('/v1/models/'):]
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resp = OAImodels.model_info(model_name)
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self.return_json(resp)
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elif '/billing/usage' in self.path:
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# Ex. /v1/dashboard/billing/usage?start_date=2023-05-01&end_date=2023-05-31
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self.return_json({"total_usage": 0}, no_debug=True)
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else:
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self.send_error(404)
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@openai_error_handler
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def do_POST(self):
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if '/v1/audio/transcriptions' in self.path:
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r = sr.Recognizer()
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# Parse the form data
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form = cgi.FieldStorage(
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fp=self.rfile,
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headers=self.headers,
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environ={'REQUEST_METHOD': 'POST', 'CONTENT_TYPE': self.headers['Content-Type']}
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)
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audio_file = form['file'].file
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audio_data = AudioSegment.from_file(audio_file)
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# Convert AudioSegment to raw data
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raw_data = audio_data.raw_data
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# Create AudioData object
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audio_data = sr.AudioData(raw_data, audio_data.frame_rate, audio_data.sample_width)
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whipser_language = form.getvalue('language', None)
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whipser_model = form.getvalue('model', 'tiny') # Use the model from the form data if it exists, otherwise default to tiny
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transcription = {"text": ""}
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try:
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transcription["text"] = r.recognize_whisper(audio_data, language=whipser_language, model=whipser_model)
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except sr.UnknownValueError:
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print("Whisper could not understand audio")
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transcription["text"] = "Whisper could not understand audio UnknownValueError"
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except sr.RequestError as e:
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print("Could not request results from Whisper", e)
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transcription["text"] = "Whisper could not understand audio RequestError"
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self.return_json(transcription, no_debug=True)
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return
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debug_msg(self.requestline)
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debug_msg(self.headers)
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content_length = self.headers.get('Content-Length')
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transfer_encoding = self.headers.get('Transfer-Encoding')
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if content_length:
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body = json.loads(self.rfile.read(int(content_length)).decode('utf-8'))
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elif transfer_encoding == 'chunked':
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chunks = []
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while True:
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chunk_size = int(self.rfile.readline(), 16) # Read the chunk size
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if chunk_size == 0:
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break # End of chunks
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chunks.append(self.rfile.read(chunk_size))
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self.rfile.readline() # Consume the trailing newline after each chunk
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body = json.loads(b''.join(chunks).decode('utf-8'))
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else:
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self.send_response(400, "Bad Request: Either Content-Length or Transfer-Encoding header expected.")
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self.end_headers()
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return
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debug_msg(body)
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if '/completions' in self.path or '/generate' in self.path:
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if not shared.model:
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raise ServiceUnavailableError("No model loaded.")
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is_legacy = '/generate' in self.path
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is_streaming = body.get('stream', False)
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if is_streaming:
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self.start_sse()
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response = []
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if 'chat' in self.path:
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response = OAIcompletions.stream_chat_completions(body, is_legacy=is_legacy)
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else:
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response = OAIcompletions.stream_completions(body, is_legacy=is_legacy)
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for resp in response:
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self.send_sse(resp)
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self.end_sse()
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else:
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response = ''
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if 'chat' in self.path:
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response = OAIcompletions.chat_completions(body, is_legacy=is_legacy)
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else:
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response = OAIcompletions.completions(body, is_legacy=is_legacy)
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self.return_json(response)
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elif '/edits' in self.path:
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# deprecated
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if not shared.model:
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raise ServiceUnavailableError("No model loaded.")
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req_params = get_default_req_params()
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instruction = body['instruction']
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input = body.get('input', '')
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temperature = clamp(default(body, 'temperature', req_params['temperature']), 0.001, 1.999) # fixup absolute 0.0
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top_p = clamp(default(body, 'top_p', req_params['top_p']), 0.001, 1.0)
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response = OAIedits.edits(instruction, input, temperature, top_p)
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self.return_json(response)
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elif '/images/generations' in self.path:
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if 'SD_WEBUI_URL' not in os.environ:
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raise ServiceUnavailableError("Stable Diffusion not available. SD_WEBUI_URL not set.")
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prompt = body['prompt']
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size = default(body, 'size', '1024x1024')
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response_format = default(body, 'response_format', 'url') # or b64_json
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n = default(body, 'n', 1) # ignore the batch limits of max 10
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response = OAIimages.generations(prompt=prompt, size=size, response_format=response_format, n=n)
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self.return_json(response, no_debug=True)
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elif '/embeddings' in self.path:
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encoding_format = body.get('encoding_format', '')
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input = body.get('input', body.get('text', ''))
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if not input:
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raise InvalidRequestError("Missing required argument input", params='input')
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if type(input) is str:
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input = [input]
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response = OAIembeddings.embeddings(input, encoding_format)
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self.return_json(response, no_debug=True)
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elif '/moderations' in self.path:
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input = body['input']
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if not input:
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raise InvalidRequestError("Missing required argument input", params='input')
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response = OAImoderations.moderations(input)
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self.return_json(response, no_debug=True)
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elif self.path == '/api/v1/token-count':
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# NOT STANDARD. lifted from the api extension, but it's still very useful to calculate tokenized length client side.
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response = token_count(body['prompt'])
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self.return_json(response, no_debug=True)
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elif self.path == '/api/v1/token/encode':
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# NOT STANDARD. needed to support logit_bias, logprobs and token arrays for native models
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encoding_format = body.get('encoding_format', '')
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response = token_encode(body['input'], encoding_format)
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self.return_json(response, no_debug=True)
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elif self.path == '/api/v1/token/decode':
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# NOT STANDARD. needed to support logit_bias, logprobs and token arrays for native models
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encoding_format = body.get('encoding_format', '')
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response = token_decode(body['input'], encoding_format)
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self.return_json(response, no_debug=True)
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else:
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self.send_error(404)
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def run_server():
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server_addr = ('0.0.0.0' if shared.args.listen else '127.0.0.1', params['port'])
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server = ThreadingHTTPServer(server_addr, Handler)
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if shared.args.share:
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try:
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from flask_cloudflared import _run_cloudflared
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public_url = _run_cloudflared(params['port'], params['port'] + 1)
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print(f'OpenAI compatible API ready at: OPENAI_API_BASE={public_url}/v1')
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except ImportError:
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print('You should install flask_cloudflared manually')
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else:
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print(f'OpenAI compatible API ready at: OPENAI_API_BASE=http://{server_addr[0]}:{server_addr[1]}/v1')
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server.serve_forever()
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def setup():
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Thread(target=run_server, daemon=True).start()
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