from __future__ import annotations from typing import TYPE_CHECKING, List import logging import json import commentjson as cjson import os import sys import requests import urllib3 import traceback from tqdm import tqdm import colorama from duckduckgo_search import ddg import asyncio import aiohttp from enum import Enum from .presets import * from .llama_func import * from .utils import * from . import shared from .config import retrieve_proxy class ModelType(Enum): Unknown = -1 OpenAI = 0 ChatGLM = 1 LLaMA = 2 XMBot = 3 @classmethod def get_type(cls, model_name: str): model_type = None model_name_lower = model_name.lower() if "gpt" in model_name_lower: model_type = ModelType.OpenAI elif "chatglm" in model_name_lower: model_type = ModelType.ChatGLM elif "llama" in model_name_lower or "alpaca" in model_name_lower: model_type = ModelType.LLaMA elif "xmbot" in model_name_lower: model_type = ModelType.XMBot else: model_type = ModelType.Unknown return model_type class BaseLLMModel: def __init__( self, model_name, system_prompt="", temperature=1.0, top_p=1.0, n_choices=1, stop=None, max_generation_token=None, presence_penalty=0, frequency_penalty=0, logit_bias=None, user="", ) -> None: self.history = [] self.all_token_counts = [] self.model_name = model_name self.model_type = ModelType.get_type(model_name) try: self.token_upper_limit = MODEL_TOKEN_LIMIT[model_name] except KeyError: self.token_upper_limit = DEFAULT_TOKEN_LIMIT self.interrupted = False self.system_prompt = system_prompt self.api_key = None self.need_api_key = False self.single_turn = False self.temperature = temperature self.top_p = top_p self.n_choices = n_choices self.stop_sequence = stop self.max_generation_token = None self.presence_penalty = presence_penalty self.frequency_penalty = frequency_penalty self.logit_bias = logit_bias self.user_identifier = user def get_answer_stream_iter(self): """stream predict, need to be implemented conversations are stored in self.history, with the most recent question, in OpenAI format should return a generator, each time give the next word (str) in the answer """ logging.warning("stream predict not implemented, using at once predict instead") response, _ = self.get_answer_at_once() yield response def get_answer_at_once(self): """predict at once, need to be implemented conversations are stored in self.history, with the most recent question, in OpenAI format Should return: the answer (str) total token count (int) """ logging.warning("at once predict not implemented, using stream predict instead") response_iter = self.get_answer_stream_iter() count = 0 for response in response_iter: count += 1 return response, sum(self.all_token_counts) + count def billing_info(self): """get billing infomation, inplement if needed""" logging.warning("billing info not implemented, using default") return BILLING_NOT_APPLICABLE_MSG def count_token(self, user_input): """get token count from input, implement if needed""" logging.warning("token count not implemented, using default") return len(user_input) def stream_next_chatbot(self, inputs, chatbot, fake_input=None, display_append=""): def get_return_value(): return chatbot, status_text status_text = i18n("开始实时传输回答……") if fake_input: chatbot.append((fake_input, "")) else: chatbot.append((inputs, "")) user_token_count = self.count_token(inputs) self.all_token_counts.append(user_token_count) logging.debug(f"输入token计数: {user_token_count}") stream_iter = self.get_answer_stream_iter() for partial_text in stream_iter: chatbot[-1] = (chatbot[-1][0], partial_text + display_append) self.all_token_counts[-1] += 1 status_text = self.token_message() yield get_return_value() if self.interrupted: self.recover() break self.history.append(construct_assistant(partial_text)) def next_chatbot_at_once(self, inputs, chatbot, fake_input=None, display_append=""): if fake_input: chatbot.append((fake_input, "")) else: chatbot.append((inputs, "")) if fake_input is not None: user_token_count = self.count_token(fake_input) else: user_token_count = self.count_token(inputs) self.all_token_counts.append(user_token_count) ai_reply, total_token_count = self.get_answer_at_once() self.history.append(construct_assistant(ai_reply)) if fake_input is not None: self.history[-2] = construct_user(fake_input) chatbot[-1] = (chatbot[-1][0], ai_reply + display_append) if fake_input is not None: self.all_token_counts[-1] += count_token(construct_assistant(ai_reply)) else: self.all_token_counts[-1] = total_token_count - sum(self.all_token_counts) status_text = self.token_message() return chatbot, status_text def handle_file_upload(self, files, chatbot): """if the model accepts multi modal input, implement this function""" status = gr.Markdown.update() if files: construct_index(self.api_key, file_src=files) status = "索引构建完成" return gr.Files.update(), chatbot, status def prepare_inputs(self, real_inputs, use_websearch, files, reply_language, chatbot): fake_inputs = None display_append = [] limited_context = False fake_inputs = real_inputs if files: from llama_index.indices.vector_store.base_query import GPTVectorStoreIndexQuery from llama_index.indices.query.schema import QueryBundle from langchain.embeddings.huggingface import HuggingFaceEmbeddings from langchain.chat_models import ChatOpenAI from llama_index import ( GPTSimpleVectorIndex, ServiceContext, LangchainEmbedding, OpenAIEmbedding, ) limited_context = True msg = "加载索引中……" logging.info(msg) # yield chatbot + [(inputs, "")], msg index = construct_index(self.api_key, file_src=files) assert index is not None, "获取索引失败" msg = "索引获取成功,生成回答中……" logging.info(msg) if local_embedding or self.model_type != ModelType.OpenAI: embed_model = LangchainEmbedding(HuggingFaceEmbeddings()) else: embed_model = OpenAIEmbedding() # yield chatbot + [(inputs, "")], msg with retrieve_proxy(): prompt_helper = PromptHelper( max_input_size=4096, num_output=5, max_chunk_overlap=20, chunk_size_limit=600, ) from llama_index import ServiceContext service_context = ServiceContext.from_defaults( prompt_helper=prompt_helper, embed_model=embed_model ) query_object = GPTVectorStoreIndexQuery( index.index_struct, service_context=service_context, similarity_top_k=5, vector_store=index._vector_store, docstore=index._docstore, ) query_bundle = QueryBundle(real_inputs) nodes = query_object.retrieve(query_bundle) reference_results = [n.node.text for n in nodes] reference_results = add_source_numbers(reference_results, use_source=False) display_append = add_details(reference_results) display_append = "\n\n" + "".join(display_append) real_inputs = ( replace_today(PROMPT_TEMPLATE) .replace("{query_str}", real_inputs) .replace("{context_str}", "\n\n".join(reference_results)) .replace("{reply_language}", reply_language) ) elif use_websearch: limited_context = True search_results = ddg(real_inputs, max_results=5) reference_results = [] for idx, result in enumerate(search_results): logging.debug(f"搜索结果{idx + 1}:{result}") domain_name = urllib3.util.parse_url(result["href"]).host reference_results.append([result["body"], result["href"]]) display_append.append( f"{idx+1}. [{domain_name}]({result['href']})\n" ) reference_results = add_source_numbers(reference_results) display_append = "\n\n" + "".join(display_append) real_inputs = ( replace_today(WEBSEARCH_PTOMPT_TEMPLATE) .replace("{query}", real_inputs) .replace("{web_results}", "\n\n".join(reference_results)) .replace("{reply_language}", reply_language) ) else: display_append = "" return limited_context, fake_inputs, display_append, real_inputs, chatbot def predict( self, inputs, chatbot, stream=False, use_websearch=False, files=None, reply_language="中文", should_check_token_count=True, ): # repetition_penalty, top_k status_text = "开始生成回答……" logging.info( "输入为:" + colorama.Fore.BLUE + f"{inputs}" + colorama.Style.RESET_ALL ) if should_check_token_count: yield chatbot + [(inputs, "")], status_text if reply_language == "跟随问题语言(不稳定)": reply_language = "the same language as the question, such as English, 中文, 日本語, Español, Français, or Deutsch." limited_context, fake_inputs, display_append, inputs, chatbot = self.prepare_inputs(real_inputs=inputs, use_websearch=use_websearch, files=files, reply_language=reply_language, chatbot=chatbot) yield chatbot + [(fake_inputs, "")], status_text if ( self.need_api_key and self.api_key is None and not shared.state.multi_api_key ): status_text = STANDARD_ERROR_MSG + NO_APIKEY_MSG logging.info(status_text) chatbot.append((inputs, "")) if len(self.history) == 0: self.history.append(construct_user(inputs)) self.history.append("") self.all_token_counts.append(0) else: self.history[-2] = construct_user(inputs) yield chatbot + [(inputs, "")], status_text return elif len(inputs.strip()) == 0: status_text = STANDARD_ERROR_MSG + NO_INPUT_MSG logging.info(status_text) yield chatbot + [(inputs, "")], status_text return if self.single_turn: self.history = [] self.all_token_counts = [] self.history.append(construct_user(inputs)) try: if stream: logging.debug("使用流式传输") iter = self.stream_next_chatbot( inputs, chatbot, fake_input=fake_inputs, display_append=display_append, ) for chatbot, status_text in iter: yield chatbot, status_text else: logging.debug("不使用流式传输") chatbot, status_text = self.next_chatbot_at_once( inputs, chatbot, fake_input=fake_inputs, display_append=display_append, ) yield chatbot, status_text except Exception as e: traceback.print_exc() status_text = STANDARD_ERROR_MSG + str(e) yield chatbot, status_text if len(self.history) > 1 and self.history[-1]["content"] != inputs: logging.info( "回答为:" + colorama.Fore.BLUE + f"{self.history[-1]['content']}" + colorama.Style.RESET_ALL ) if limited_context: # self.history = self.history[-4:] # self.all_token_counts = self.all_token_counts[-2:] self.history = [] self.all_token_counts = [] max_token = self.token_upper_limit - TOKEN_OFFSET if sum(self.all_token_counts) > max_token and should_check_token_count: count = 0 while ( sum(self.all_token_counts) > self.token_upper_limit * REDUCE_TOKEN_FACTOR and sum(self.all_token_counts) > 0 ): count += 1 del self.all_token_counts[0] del self.history[:2] logging.info(status_text) status_text = f"为了防止token超限,模型忘记了早期的 {count} 轮对话" yield chatbot, status_text def retry( self, chatbot, stream=False, use_websearch=False, files=None, reply_language="中文", ): logging.debug("重试中……") if len(self.history) > 0: inputs = self.history[-2]["content"] del self.history[-2:] self.all_token_counts.pop() elif len(chatbot) > 0: inputs = chatbot[-1][0] else: yield chatbot, f"{STANDARD_ERROR_MSG}上下文是空的" return iter = self.predict( inputs, chatbot, stream=stream, use_websearch=use_websearch, files=files, reply_language=reply_language, ) for x in iter: yield x logging.debug("重试完毕") # def reduce_token_size(self, chatbot): # logging.info("开始减少token数量……") # chatbot, status_text = self.next_chatbot_at_once( # summarize_prompt, # chatbot # ) # max_token_count = self.token_upper_limit * REDUCE_TOKEN_FACTOR # num_chat = find_n(self.all_token_counts, max_token_count) # logging.info(f"previous_token_count: {self.all_token_counts}, keeping {num_chat} chats") # chatbot = chatbot[:-1] # self.history = self.history[-2*num_chat:] if num_chat > 0 else [] # self.all_token_counts = self.all_token_counts[-num_chat:] if num_chat > 0 else [] # msg = f"保留了最近{num_chat}轮对话" # logging.info(msg) # logging.info("减少token数量完毕") # return chatbot, msg + "," + self.token_message(self.all_token_counts if len(self.all_token_counts) > 0 else [0]) def interrupt(self): self.interrupted = True def recover(self): self.interrupted = False def set_token_upper_limit(self, new_upper_limit): self.token_upper_limit = new_upper_limit print(f"token上限设置为{new_upper_limit}") def set_temperature(self, new_temperature): self.temperature = new_temperature def set_top_p(self, new_top_p): self.top_p = new_top_p def set_n_choices(self, new_n_choices): self.n_choices = new_n_choices def set_stop_sequence(self, new_stop_sequence: str): new_stop_sequence = new_stop_sequence.split(",") self.stop_sequence = new_stop_sequence def set_max_tokens(self, new_max_tokens): self.max_generation_token = new_max_tokens def set_presence_penalty(self, new_presence_penalty): self.presence_penalty = new_presence_penalty def set_frequency_penalty(self, new_frequency_penalty): self.frequency_penalty = new_frequency_penalty def set_logit_bias(self, logit_bias): logit_bias = logit_bias.split() bias_map = {} encoding = tiktoken.get_encoding("cl100k_base") for line in logit_bias: word, bias_amount = line.split(":") if word: for token in encoding.encode(word): bias_map[token] = float(bias_amount) self.logit_bias = bias_map def set_user_identifier(self, new_user_identifier): self.user_identifier = new_user_identifier def set_system_prompt(self, new_system_prompt): self.system_prompt = new_system_prompt def set_key(self, new_access_key): self.api_key = new_access_key.strip() msg = f"API密钥更改为了{hide_middle_chars(self.api_key)}" logging.info(msg) return new_access_key, msg def set_single_turn(self, new_single_turn): self.single_turn = new_single_turn def reset(self): self.history = [] self.all_token_counts = [] self.interrupted = False return [], self.token_message([0]) def delete_first_conversation(self): if self.history: del self.history[:2] del self.all_token_counts[0] return self.token_message() def delete_last_conversation(self, chatbot): if len(chatbot) > 0 and STANDARD_ERROR_MSG in chatbot[-1][1]: msg = "由于包含报错信息,只删除chatbot记录" chatbot.pop() return chatbot, self.history if len(self.history) > 0: self.history.pop() self.history.pop() if len(chatbot) > 0: msg = "删除了一组chatbot对话" chatbot.pop() if len(self.all_token_counts) > 0: msg = "删除了一组对话的token计数记录" self.all_token_counts.pop() msg = "删除了一组对话" return chatbot, msg def token_message(self, token_lst=None): if token_lst is None: token_lst = self.all_token_counts token_sum = 0 for i in range(len(token_lst)): token_sum += sum(token_lst[: i + 1]) return i18n("Token 计数: ") + f"{sum(token_lst)}" + i18n(",本次对话累计消耗了 ") + f"{token_sum} tokens" def save_chat_history(self, filename, chatbot, user_name): if filename == "": return if not filename.endswith(".json"): filename += ".json" return save_file(filename, self.system_prompt, self.history, chatbot, user_name) def export_markdown(self, filename, chatbot, user_name): if filename == "": return if not filename.endswith(".md"): filename += ".md" return save_file(filename, self.system_prompt, self.history, chatbot, user_name) def load_chat_history(self, filename, chatbot, user_name): logging.debug(f"{user_name} 加载对话历史中……") if type(filename) != str: filename = filename.name try: with open(os.path.join(HISTORY_DIR, user_name, filename), "r") as f: json_s = json.load(f) try: if type(json_s["history"][0]) == str: logging.info("历史记录格式为旧版,正在转换……") new_history = [] for index, item in enumerate(json_s["history"]): if index % 2 == 0: new_history.append(construct_user(item)) else: new_history.append(construct_assistant(item)) json_s["history"] = new_history logging.info(new_history) except: # 没有对话历史 pass logging.debug(f"{user_name} 加载对话历史完毕") self.history = json_s["history"] return filename, json_s["system"], json_s["chatbot"] except FileNotFoundError: logging.warning(f"{user_name} 没有找到对话历史文件,不执行任何操作") return filename, self.system_prompt, chatbot