# -*- coding:utf-8 -*- from __future__ import annotations import urllib3 import openai from tqdm import tqdm from duckduckgo_search import ddg from llama_func import * from bin_public.utils.utils import * from bin_public.utils.utils_db import * # logging.basicConfig(level=logging.INFO, format="%(asctime)s [%(levelname)s] [%(filename)s:%(lineno)d] %(message)s") if TYPE_CHECKING: from typing import TypedDict class DataframeData(TypedDict): headers: List[str] data: List[List[str | int | bool]] initial_prompt = "You are a helpful assistant." API_URL = "https://api.openai.com/v1/chat/completions" HISTORY_DIR = "history" TEMPLATES_DIR = r"/templates" def get_response( openai_api_key, system_prompt, history, temperature, top_p, stream, selected_model ): headers = { "Content-Type": "application/json", "Authorization": f"Bearer {openai_api_key}", } history = [construct_system(system_prompt), *history] payload = { "model": selected_model, "messages": history, # [{"role": "user", "content": f"{inputs}"}], "temperature": temperature, # 1.0, "top_p": top_p, # 1.0, "n": 1, "stream": stream, "presence_penalty": 0, "frequency_penalty": 0, } if stream: timeout = timeout_streaming else: timeout = timeout_all # 获取环境变量中的代理设置 http_proxy = os.environ.get("HTTP_PROXY") or os.environ.get("http_proxy") https_proxy = os.environ.get("HTTPS_PROXY") or os.environ.get("https_proxy") # 如果存在代理设置,使用它们 proxies = {} if http_proxy: logging.info(f"Using HTTP proxy: {http_proxy}") proxies["http"] = http_proxy if https_proxy: logging.info(f"Using HTTPS proxy: {https_proxy}") proxies["https"] = https_proxy # 如果有代理,使用代理发送请求,否则使用默认设置发送请求 if proxies: response = requests.post( API_URL, headers=headers, json=payload, stream=True, timeout=timeout, proxies=proxies, ) else: response = requests.post( API_URL, headers=headers, json=payload, stream=True, timeout=timeout, ) return response def stream_predict( openai_api_key, system_prompt, history, inputs, chatbot, all_token_counts, top_p, temperature, selected_model, fake_input=None, display_append="" ): def get_return_value(): return chatbot, history, status_text, all_token_counts logging.info("实时回答模式") partial_words = "" counter = 0 status_text = "开始实时传输回答……" history.append(construct_user(inputs)) history.append(construct_assistant("")) if fake_input: chatbot.append((fake_input, "")) else: chatbot.append((inputs, "")) user_token_count = 0 if len(all_token_counts) == 0: system_prompt_token_count = count_token(construct_system(system_prompt)) user_token_count = ( count_token(construct_user(inputs)) + system_prompt_token_count ) else: user_token_count = count_token(construct_user(inputs)) all_token_counts.append(user_token_count) logging.info(f"输入token计数: {user_token_count}") yield get_return_value() try: response = get_response( openai_api_key, system_prompt, history, temperature, top_p, True, selected_model, ) except requests.exceptions.ConnectTimeout: status_text = ( standard_error_msg + connection_timeout_prompt + error_retrieve_prompt ) yield get_return_value() return except requests.exceptions.ReadTimeout: status_text = standard_error_msg + read_timeout_prompt + error_retrieve_prompt yield get_return_value() return yield get_return_value() error_json_str = "" for chunk in tqdm(response.iter_lines()): if counter == 0: counter += 1 continue counter += 1 # check whether each line is non-empty if chunk: chunk = chunk.decode() chunklength = len(chunk) try: chunk = json.loads(chunk[6:]) except json.JSONDecodeError: logging.info(chunk) error_json_str += chunk status_text = f"JSON解析错误。请重置对话。收到的内容: {error_json_str}" yield get_return_value() continue # decode each line as response data is in bytes if chunklength > 6 and "delta" in chunk["choices"][0]: finish_reason = chunk["choices"][0]["finish_reason"] status_text = construct_token_message( sum(all_token_counts), stream=True ) if finish_reason == "stop": yield get_return_value() break try: partial_words = ( partial_words + chunk["choices"][0]["delta"]["content"] ) except KeyError: status_text = ( standard_error_msg + "API回复中找不到内容。很可能是Token计数达到上限了。请重置对话。当前Token计数: " + str(sum(all_token_counts)) ) yield get_return_value() break history[-1] = construct_assistant(partial_words) chatbot[-1] = (chatbot[-1][0], partial_words+display_append) all_token_counts[-1] += 1 yield get_return_value() def predict_all( openai_api_key, system_prompt, history, inputs, chatbot, all_token_counts, top_p, temperature, selected_model, fake_input=None, display_append="" ): logging.info("一次性回答模式") history.append(construct_user(inputs)) history.append(construct_assistant("")) if fake_input: chatbot.append((fake_input, "")) else: chatbot.append((inputs, "")) all_token_counts.append(count_token(construct_user(inputs))) try: response = get_response( openai_api_key, system_prompt, history, temperature, top_p, False, selected_model, ) except requests.exceptions.ConnectTimeout: status_text = ( standard_error_msg + connection_timeout_prompt + error_retrieve_prompt ) return chatbot, history, status_text, all_token_counts except requests.exceptions.ProxyError: status_text = standard_error_msg + proxy_error_prompt + error_retrieve_prompt return chatbot, history, status_text, all_token_counts except requests.exceptions.SSLError: status_text = standard_error_msg + ssl_error_prompt + error_retrieve_prompt return chatbot, history, status_text, all_token_counts response = json.loads(response.text) content = response["choices"][0]["message"]["content"] history[-1] = construct_assistant(content) chatbot[-1] = (chatbot[-1][0], content+display_append) total_token_count = response["usage"]["total_tokens"] all_token_counts[-1] = total_token_count - sum(all_token_counts) status_text = construct_token_message(total_token_count) return chatbot, history, status_text, all_token_counts def predict( openai_api_key, invite_code, system_prompt, history, inputs, chatbot, all_token_counts, top_p, temperature, stream=False, selected_model=MODELS[0], use_websearch=False, files = None, should_check_token_count=True, ): # repetition_penalty, top_k logging.info("输入为:" + colorama.Fore.BLUE + f"{inputs}" + colorama.Style.RESET_ALL) if files: msg = "构建索引中……(这可能需要比较久的时间)" logging.info(msg) yield chatbot, history, msg, all_token_counts index = construct_index(openai_api_key, file_src=files) msg = "索引构建完成,获取回答中……" yield chatbot, history, msg, all_token_counts history, chatbot, status_text = chat_ai(openai_api_key, index, inputs, history, chatbot) yield chatbot, history, status_text, all_token_counts return old_inputs = "" link_references = [] if use_websearch: search_results = ddg(inputs, max_results=5) old_inputs = inputs web_results = [] for idx, result in enumerate(search_results): logging.info(f"搜索结果{idx + 1}:{result}") domain_name = urllib3.util.parse_url(result["href"]).host web_results.append(f'[{idx+1}]"{result["body"]}"\nURL: {result["href"]}') link_references.append(f"[{idx+1}]: [{domain_name}]({result['href']})") inputs = ( replace_today(WEBSEARCH_PTOMPT_TEMPLATE) .replace("{query}", inputs) .replace("{web_results}", "\n\n".join(web_results)) ) if len(openai_api_key) != 51: status_text = standard_error_msg + no_apikey_msg logging.info(status_text) chatbot.append((inputs, "")) if len(history) == 0: history.append(construct_user(inputs)) history.append("") all_token_counts.append(0) else: history[-2] = construct_user(inputs) yield chatbot, history, status_text, all_token_counts return yield chatbot, history, "开始生成回答……", all_token_counts if stream: logging.info("使用流式传输") iter = stream_predict( openai_api_key, system_prompt, history, inputs, chatbot, all_token_counts, top_p, temperature, selected_model, fake_input=old_inputs ) for chatbot, history, status_text, all_token_counts in iter: yield chatbot, history, status_text, all_token_counts else: logging.info("不使用流式传输") chatbot, history, status_text, all_token_counts = predict_all( openai_api_key, system_prompt, history, inputs, chatbot, all_token_counts, top_p, temperature, selected_model, fake_input=old_inputs ) yield chatbot, history, status_text, all_token_counts logging.info(f"传输完毕。当前token计数为{all_token_counts}") if len(history) > 1 and history[-1]['content'] != inputs: # logging.info("回答为:" +colorama.Fore.BLUE + f"{history[-1]['content']}" + colorama.Style.RESET_ALL) try: token = all_token_counts[-1] except: token = 0 holo_query_insert_chat_message(invite_code, inputs, history[-1]['content'], token, history) if use_websearch: search_results = ddg(inputs, max_results=5) old_inputs = inputs web_results = [] for idx, result in enumerate(search_results): logging.info(f"搜索结果{idx + 1}:{result}") domain_name = urllib3.util.parse_url(result["href"]).host web_results.append(f'[{idx + 1}]"{result["body"]}"\nURL: {result["href"]}') link_references.append(f"{idx + 1}. [{domain_name}]({result['href']})\n") link_references = "\n\n" + "".join(link_references) inputs = ( replace_today(WEBSEARCH_PTOMPT_TEMPLATE) .replace("{query}", inputs) .replace("{web_results}", "\n\n".join(web_results)) ) else: link_references = "" if stream: max_token = max_token_streaming else: max_token = max_token_all if sum(all_token_counts) > max_token and should_check_token_count: status_text = f"精简token中{all_token_counts}/{max_token}" logging.info(status_text) yield chatbot, history, status_text, all_token_counts iter = reduce_token_size( openai_api_key, invite_code, system_prompt, history, chatbot, all_token_counts, top_p, temperature, stream=False, selected_model=selected_model, hidden=True, ) for chatbot, history, status_text, all_token_counts in iter: status_text = f"Token 达到上限,已自动降低Token计数至 {status_text}" yield chatbot, history, status_text, all_token_counts def retry( openai_api_key, invite_code, system_prompt, history, chatbot, token_count, top_p, temperature, stream=False, selected_model=MODELS[0], ): logging.info("重试中……") if len(history) == 0: yield chatbot, history, f"{standard_error_msg}上下文是空的", token_count return history.pop() inputs = history.pop()["content"] token_count.pop() iter = predict( openai_api_key, invite_code, system_prompt, history, inputs, chatbot, token_count, top_p, temperature, stream=stream, selected_model=selected_model, ) logging.info("重试完毕") for x in iter: yield x def reduce_token_size( openai_api_key, invite_code, system_prompt, history, chatbot, token_count, top_p, temperature, stream=False, selected_model=MODELS[0], hidden=False, ): logging.info("开始减少token数量……") iter = predict( openai_api_key, invite_code, system_prompt, history, summarize_prompt, chatbot, token_count, top_p, temperature, stream=stream, selected_model=selected_model, should_check_token_count=False, ) logging.info(f"chatbot: {chatbot}") for chatbot, history, status_text, previous_token_count in iter: history = history[-2:] token_count = previous_token_count[-1:] if hidden: chatbot.pop() yield chatbot, history, construct_token_message( sum(token_count), stream=stream ), token_count logging.info("减少token数量完毕") def predict_davinci(api_key, input, temperature, history=None): if history is None: history = [] s = list(sum(history, ())) s.append(input) openai.api_key = api_key response = openai.Completion.create( engine="text-davinci-003", prompt=s, temperature=temperature, max_tokens=2048, ) return response.choices[0].text