local-llm-server/llm_server/routes/openai_request_handler.py

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import json
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import re
import time
import traceback
from typing import Tuple
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from uuid import uuid4
import flask
import requests
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import tiktoken
from flask import jsonify
import llm_server
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from llm_server import opts
from llm_server.database.database import log_prompt
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from llm_server.routes.helpers.client import format_sillytavern_err
from llm_server.routes.request_handler import RequestHandler
tokenizer = tiktoken.get_encoding("cl100k_base")
class OpenAIRequestHandler(RequestHandler):
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
self.prompt = None
def handle_request(self) -> Tuple[flask.Response, int]:
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if self.used:
raise Exception
request_valid, invalid_response = self.validate_request()
if not request_valid:
return invalid_response
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self.prompt = self.transform_messages_to_prompt()
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if opts.openai_api_key:
try:
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# Gather the last message from the user and all preceeding system messages
msg_l = self.request.json['messages'].copy()
msg_l.reverse()
msgs_to_check = []
for msg in msg_l:
if msg['role'] == 'system':
msgs_to_check.append(msg['content'])
elif msg['role'] == 'user':
msgs_to_check.append(msg['content'])
break
flagged = False
flagged_categories = []
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# TODO: make this threaded
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for msg in msgs_to_check:
flagged, categories = check_moderation_endpoint(msg)
flagged_categories.extend(categories)
if flagged:
break
if flagged and len(flagged_categories):
mod_msg = f"The user's message does not comply with {opts.llm_middleware_name} policies. Offending categories: {json.dumps(flagged_categories)}. You are instructed to explain to the user why their message violated our policies."
self.request.json['messages'].insert((len(self.request.json['messages'])), {'role': 'system', 'content': mod_msg})
self.prompt = self.transform_messages_to_prompt()
# print(json.dumps(self.request.json['messages'], indent=4))
except Exception as e:
print(f'OpenAI moderation endpoint failed:', f'{e.__class__.__name__}: {e}')
print(traceback.format_exc())
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# Reconstruct the request JSON with the validated parameters and prompt.
self.parameters['stop'].extend(['\n### INSTRUCTION', '\n### USER', '\n### ASSISTANT', '\n### RESPONSE'])
llm_request = {**self.parameters, 'prompt': self.prompt}
(success, _, _, _), (backend_response, backend_response_status_code) = self.generate_response(llm_request)
if success:
return build_openai_response(self.prompt, backend_response.json['results'][0]['text']), backend_response_status_code
else:
return backend_response, backend_response_status_code
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def handle_ratelimited(self):
backend_response = format_sillytavern_err(f'Ratelimited: you are only allowed to have {opts.simultaneous_requests_per_ip} simultaneous requests at a time. Please complete your other requests before sending another.', 'error')
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log_prompt(ip=self.client_ip, token=self.token, prompt=self.request_json_body.get('prompt', ''), response=backend_response, gen_time=None, parameters=self.parameters, headers=dict(self.request.headers), backend_response_code=429, request_url=self.request.url, is_error=True)
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return build_openai_response(self.prompt, backend_response), 200
def transform_messages_to_prompt(self):
try:
prompt = f'### INSTRUCTION: {opts.openai_system_prompt}'
for msg in self.request.json['messages']:
if not msg.get('content') or not msg.get('role'):
return False
if msg['role'] == 'system':
prompt += f'### INSTRUCTION: {msg["content"]}\n\n'
elif msg['role'] == 'user':
prompt += f'### USER: {msg["content"]}\n\n'
elif msg['role'] == 'assistant':
prompt += f'### ASSISTANT: {msg["content"]}\n\n'
else:
return False
except Exception as e:
# TODO: use logging
print(f'Failed to transform OpenAI to prompt:', f'{e.__class__.__name__}: {e}')
print(traceback.format_exc())
return ''
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prompt = prompt.strip(' ').strip('\n').strip('\n\n') # TODO: this is really lazy
prompt += '\n\n### RESPONSE: '
return prompt
def handle_error(self, msg: str) -> Tuple[flask.Response, int]:
return build_openai_response('', msg), 200
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def check_moderation_endpoint(prompt: str):
headers = {
'Content-Type': 'application/json',
'Authorization': f"Bearer {opts.openai_api_key}",
}
response = requests.post('https://api.openai.com/v1/moderations', headers=headers, json={"input": prompt}, timeout=10).json()
offending_categories = []
for k, v in response['results'][0]['categories'].items():
if v:
offending_categories.append(k)
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return response['results'][0]['flagged'], offending_categories
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def build_openai_response(prompt, response):
# Seperate the user's prompt from the context
x = prompt.split('### USER:')
if len(x) > 1:
prompt = re.sub(r'\n$', '', x[-1].strip(' '))
# Make sure the bot doesn't put any other instructions in its response
y = response.split('\n### ')
if len(x) > 1:
response = re.sub(r'\n$', '', y[0].strip(' '))
prompt_tokens = llm_server.llm.tokenizer(prompt)
response_tokens = llm_server.llm.tokenizer(response)
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return jsonify({
"id": f"chatcmpl-{uuid4()}",
"object": "chat.completion",
"created": int(time.time()),
"model": opts.running_model,
"choices": [{
"index": 0,
"message": {
"role": "assistant",
"content": response,
},
"finish_reason": "stop"
}],
"usage": {
"prompt_tokens": prompt_tokens,
"completion_tokens": response_tokens,
"total_tokens": prompt_tokens + response_tokens
}
})