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from __future__ import annotations |
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import logging |
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import os |
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import colorama |
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import commentjson as cjson |
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from modules import config |
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from ..index_func import * |
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from ..presets import * |
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from ..utils import * |
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from .base_model import BaseLLMModel, ModelType |
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def get_model( |
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model_name, |
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lora_model_path=None, |
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access_key=None, |
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temperature=None, |
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top_p=None, |
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system_prompt=None, |
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user_name="", |
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original_model = None |
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) -> BaseLLMModel: |
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msg = i18n("模型设置为了:") + f" {model_name}" |
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model_type = ModelType.get_type(model_name) |
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lora_selector_visibility = False |
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lora_choices = ["No LoRA"] |
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dont_change_lora_selector = False |
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if model_type != ModelType.OpenAI: |
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config.local_embedding = True |
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model = original_model |
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chatbot = gr.Chatbot.update(label=model_name) |
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try: |
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if model_type == ModelType.OpenAI: |
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logging.info(f"正在加载OpenAI模型: {model_name}") |
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from .OpenAI import OpenAIClient |
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access_key = os.environ.get("OPENAI_API_KEY", access_key) |
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model = OpenAIClient( |
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model_name=model_name, |
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api_key=access_key, |
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system_prompt=system_prompt, |
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temperature=temperature, |
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top_p=top_p, |
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user_name=user_name, |
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) |
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elif model_type == ModelType.OpenAIInstruct: |
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logging.info(f"正在加载OpenAI Instruct模型: {model_name}") |
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from .OpenAIInstruct import OpenAI_Instruct_Client |
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access_key = os.environ.get("OPENAI_API_KEY", access_key) |
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model = OpenAI_Instruct_Client( |
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model_name, api_key=access_key, user_name=user_name) |
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elif model_type == ModelType.OpenAIVision: |
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logging.info(f"正在加载OpenAI Vision模型: {model_name}") |
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from .OpenAIVision import OpenAIVisionClient |
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access_key = os.environ.get("OPENAI_API_KEY", access_key) |
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model = OpenAIVisionClient( |
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model_name, api_key=access_key, user_name=user_name) |
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elif model_type == ModelType.ChatGLM: |
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logging.info(f"正在加载ChatGLM模型: {model_name}") |
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from .ChatGLM import ChatGLM_Client |
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model = ChatGLM_Client(model_name, user_name=user_name) |
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elif model_type == ModelType.LLaMA and lora_model_path == "": |
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msg = f"现在请为 {model_name} 选择LoRA模型" |
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logging.info(msg) |
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lora_selector_visibility = True |
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if os.path.isdir("lora"): |
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lora_choices = ["No LoRA"] + get_file_names_by_pinyin("lora", filetypes=[""]) |
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elif model_type == ModelType.LLaMA and lora_model_path != "": |
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logging.info(f"正在加载LLaMA模型: {model_name} + {lora_model_path}") |
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from .LLaMA import LLaMA_Client |
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dont_change_lora_selector = True |
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if lora_model_path == "No LoRA": |
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lora_model_path = None |
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msg += " + No LoRA" |
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else: |
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msg += f" + {lora_model_path}" |
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model = LLaMA_Client( |
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model_name, lora_model_path, user_name=user_name) |
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elif model_type == ModelType.XMChat: |
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from .XMChat import XMChat |
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if os.environ.get("XMCHAT_API_KEY") != "": |
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access_key = os.environ.get("XMCHAT_API_KEY") |
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model = XMChat(api_key=access_key, user_name=user_name) |
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elif model_type == ModelType.StableLM: |
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from .StableLM import StableLM_Client |
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model = StableLM_Client(model_name, user_name=user_name) |
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elif model_type == ModelType.MOSS: |
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from .MOSS import MOSS_Client |
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model = MOSS_Client(model_name, user_name=user_name) |
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elif model_type == ModelType.YuanAI: |
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from .inspurai import Yuan_Client |
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model = Yuan_Client(model_name, api_key=access_key, |
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user_name=user_name, system_prompt=system_prompt) |
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elif model_type == ModelType.Minimax: |
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from .minimax import MiniMax_Client |
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if os.environ.get("MINIMAX_API_KEY") != "": |
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access_key = os.environ.get("MINIMAX_API_KEY") |
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model = MiniMax_Client( |
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model_name, api_key=access_key, user_name=user_name, system_prompt=system_prompt) |
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elif model_type == ModelType.ChuanhuAgent: |
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from .ChuanhuAgent import ChuanhuAgent_Client |
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model = ChuanhuAgent_Client(model_name, access_key, user_name=user_name) |
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msg = i18n("启用的工具:") + ", ".join([i.name for i in model.tools]) |
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elif model_type == ModelType.GooglePaLM: |
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from .GooglePaLM import Google_PaLM_Client |
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access_key = os.environ.get("GOOGLE_PALM_API_KEY", access_key) |
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model = Google_PaLM_Client( |
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model_name, access_key, user_name=user_name) |
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elif model_type == ModelType.LangchainChat: |
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from .Azure import Azure_OpenAI_Client |
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model = Azure_OpenAI_Client(model_name, user_name=user_name) |
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elif model_type == ModelType.Midjourney: |
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from .midjourney import Midjourney_Client |
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mj_proxy_api_secret = os.getenv("MIDJOURNEY_PROXY_API_SECRET") |
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model = Midjourney_Client( |
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model_name, mj_proxy_api_secret, user_name=user_name) |
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elif model_type == ModelType.Spark: |
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from .spark import Spark_Client |
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model = Spark_Client(model_name, os.getenv("SPARK_APPID"), os.getenv( |
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"SPARK_API_KEY"), os.getenv("SPARK_API_SECRET"), user_name=user_name) |
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elif model_type == ModelType.Claude: |
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from .Claude import Claude_Client |
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model = Claude_Client(model_name="claude-2", api_secret=os.getenv("CLAUDE_API_SECRET")) |
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elif model_type == ModelType.Qwen: |
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from .Qwen import Qwen_Client |
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model = Qwen_Client(model_name, user_name=user_name) |
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elif model_type == ModelType.Unknown: |
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raise ValueError(f"未知模型: {model_name}") |
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logging.info(msg) |
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except Exception as e: |
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import traceback |
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traceback.print_exc() |
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msg = f"{STANDARD_ERROR_MSG}: {e}" |
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presudo_key = hide_middle_chars(access_key) |
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if original_model is not None and model is not None: |
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model.history = original_model.history |
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model.history_file_path = original_model.history_file_path |
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if dont_change_lora_selector: |
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return model, msg, chatbot, gr.update(), access_key, presudo_key |
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else: |
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return model, msg, chatbot, gr.Dropdown.update(choices=lora_choices, visible=lora_selector_visibility), access_key, presudo_key |
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if __name__ == "__main__": |
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with open("config.json", "r", encoding="utf-8") as f: |
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openai_api_key = cjson.load(f)["openai_api_key"] |
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logging.basicConfig(level=logging.DEBUG) |
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client = get_model(model_name="chatglm-6b-int4") |
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chatbot = [] |
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stream = False |
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logging.info(colorama.Back.GREEN + "测试账单功能" + colorama.Back.RESET) |
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logging.info(client.billing_info()) |
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logging.info(colorama.Back.GREEN + "测试问答" + colorama.Back.RESET) |
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question = "巴黎是中国的首都吗?" |
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for i in client.predict(inputs=question, chatbot=chatbot, stream=stream): |
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logging.info(i) |
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logging.info(f"测试问答后history : {client.history}") |
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logging.info(colorama.Back.GREEN + "测试记忆力" + colorama.Back.RESET) |
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question = "我刚刚问了你什么问题?" |
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for i in client.predict(inputs=question, chatbot=chatbot, stream=stream): |
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logging.info(i) |
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logging.info(f"测试记忆力后history : {client.history}") |
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logging.info(colorama.Back.GREEN + "测试重试功能" + colorama.Back.RESET) |
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for i in client.retry(chatbot=chatbot, stream=stream): |
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logging.info(i) |
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logging.info(f"重试后history : {client.history}") |
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