当前位置: 首页 > news >正文

遵义网站设计制作网站太原seo排名优化公司

遵义网站设计制作网站,太原seo排名优化公司,国外优秀网页设计欣赏,成都装修公司网站建设我们需要在现有的代码基础上增加网络搜索功能,并在大模型无法提供满意答案时调用网络搜索。以下是完整的代码和文件结构说明,我们创建一个完整的项目结构,包括多个文件和目录。这个项目将包含以下部分: 主文件 (main.py)&#xf…

我们需要在现有的代码基础上增加网络搜索功能,并在大模型无法提供满意答案时调用网络搜索。以下是完整的代码和文件结构说明,我们创建一个完整的项目结构,包括多个文件和目录。这个项目将包含以下部分:

主文件 (main.py):包含GUI界面和模型加载、训练、评估等功能。
网络请求模块 (web_search.py):用于从互联网获取信息。
日志配置文件 (logging.conf):用于配置日志记录。
模型文件 (xihua_model.pth):训练好的模型权重文件。
数据文件 (train_data.jsonl, test_data.jsonl):训练和测试数据文件。
项目结构:包括上述文件和目录。
项目结构

project_root/
├── data/
│   ├── train_data.jsonl
│   └── test_data.jsonl
├── logs/
│   └── (log files will be generated here)
├── models/
│   └── xihua_model.pth
├── main.py
├── web_search.py
└── logging.conf

文件内容
main.py

import os
import json
import jsonlines
import torch
import torch.optim as optim
from torch.utils.data import Dataset, DataLoader
from transformers import BertModel, BertTokenizer
import tkinter as tk
from tkinter import filedialog, messagebox, ttk
import logging
from difflib import SequenceMatcher
from datetime import datetime
from web_search import search_web# 获取项目根目录
PROJECT_ROOT = os.path.dirname(os.path.abspath(__file__))# 配置日志
LOGS_DIR = os.path.join(PROJECT_ROOT, 'logs')
os.makedirs(LOGS_DIR, exist_ok=True)def setup_logging():log_file = os.path.join(LOGS_DIR, datetime.now().strftime('%Y-%m-%d_%H-%M-%S_羲和.txt'))logging.basicConfig(level=logging.INFO,format='%(asctime)s - %(levelname)s - %(message)s',handlers=[logging.FileHandler(log_file),logging.StreamHandler()])setup_logging()# 数据集类
class XihuaDataset(Dataset):def __init__(self, file_path, tokenizer, max_length=128):self.tokenizer = tokenizerself.max_length = max_lengthself.data = self.load_data(file_path)def load_data(self, file_path):data = []if file_path.endswith('.jsonl'):with jsonlines.open(file_path) as reader:for i, item in enumerate(reader):try:data.append(item)except jsonlines.jsonlines.InvalidLineError as e:logging.warning(f"跳过无效行 {i + 1}: {e}")elif file_path.endswith('.json'):with open(file_path, 'r') as f:try:data = json.load(f)except json.JSONDecodeError as e:logging.warning(f"跳过无效文件 {file_path}: {e}")return datadef __len__(self):return len(self.data)def __getitem__(self, idx):item = self.data[idx]question = item['question']human_answer = item['human_answers'][0]chatgpt_answer = item['chatgpt_answers'][0]try:inputs = self.tokenizer(question, return_tensors='pt', padding='max_length', truncation=True, max_length=self.max_length)human_inputs = self.tokenizer(human_answer, return_tensors='pt', padding='max_length', truncation=True, max_length=self.max_length)chatgpt_inputs = self.tokenizer(chatgpt_answer, return_tensors='pt', padding='max_length', truncation=True, max_length=self.max_length)except Exception as e:logging.warning(f"跳过无效项 {idx}: {e}")return self.__getitem__((idx + 1) % len(self.data))return {'input_ids': inputs['input_ids'].squeeze(),'attention_mask': inputs['attention_mask'].squeeze(),'human_input_ids': human_inputs['input_ids'].squeeze(),'human_attention_mask': human_inputs['attention_mask'].squeeze(),'chatgpt_input_ids': chatgpt_inputs['input_ids'].squeeze(),'chatgpt_attention_mask': chatgpt_inputs['attention_mask'].squeeze(),'human_answer': human_answer,'chatgpt_answer': chatgpt_answer}# 获取数据加载器
def get_data_loader(file_path, tokenizer, batch_size=8, max_length=128):dataset = XihuaDataset(file_path, tokenizer, max_length)return DataLoader(dataset, batch_size=batch_size, shuffle=True)# 模型定义
class XihuaModel(torch.nn.Module):def __init__(self, pretrained_model_name='F:/models/bert-base-chinese'):super(XihuaModel, self).__init__()self.bert = BertModel.from_pretrained(pretrained_model_name)self.classifier = torch.nn.Linear(self.bert.config.hidden_size, 1)def forward(self, input_ids, attention_mask):outputs = self.bert(input_ids=input_ids, attention_mask=attention_mask)pooled_output = outputs.pooler_outputlogits = self.classifier(pooled_output)return logits# 训练函数
def train(model, data_loader, optimizer, criterion, device, progress_var=None):model.train()total_loss = 0.0num_batches = len(data_loader)for batch_idx, batch in enumerate(data_loader):try:input_ids = batch['input_ids'].to(device)attention_mask = batch['attention_mask'].to(device)human_input_ids = batch['human_input_ids'].to(device)human_attention_mask = batch['human_attention_mask'].to(device)chatgpt_input_ids = batch['chatgpt_input_ids'].to(device)chatgpt_attention_mask = batch['chatgpt_attention_mask'].to(device)optimizer.zero_grad()human_logits = model(human_input_ids, human_attention_mask)chatgpt_logits = model(chatgpt_input_ids, chatgpt_attention_mask)human_labels = torch.ones(human_logits.size(0), 1).to(device)chatgpt_labels = torch.zeros(chatgpt_logits.size(0), 1).to(device)loss = criterion(human_logits, human_labels) + criterion(chatgpt_logits, chatgpt_labels)loss.backward()optimizer.step()total_loss += loss.item()if progress_var:progress_var.set((batch_idx + 1) / num_batches * 100)except Exception as e:logging.warning(f"跳过无效批次: {e}")return total_loss / len(data_loader)# 评估函数
def evaluate(model, data_loader, device):model.eval()correct_predictions = 0total_predictions = 0with torch.no_grad():for batch in data_loader:input_ids = batch['input_ids'].to(device)attention_mask = batch['attention_mask'].to(device)human_input_ids = batch['human_input_ids'].to(device)human_attention_mask = batch['human_attention_mask'].to(device)chatgpt_input_ids = batch['chatgpt_input_ids'].to(device)chatgpt_attention_mask = batch['chatgpt_attention_mask'].to(device)human_logits = model(human_input_ids, human_attention_mask)chatgpt_logits = model(chatgpt_input_ids, chatgpt_attention_mask)human_labels = torch.ones(human_logits.size(0), 1).to(device)chatgpt_labels = torch.zeros(chatgpt_logits.size(0), 1).to(device)human_preds = (torch.sigmoid(human_logits) > 0.5).float()chatgpt_preds = (torch.sigmoid(chatgpt_logits) > 0.5).float()correct_predictions += (human_preds == human_labels).sum().item()correct_predictions += (chatgpt_preds == chatgpt_labels).sum().item()total_predictions += human_labels.size(0) + chatgpt_labels.size(0)accuracy = correct_predictions / total_predictionsreturn accuracy# 主训练函数
def main_train(retrain=False):device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')logging.info(f'Using device: {device}')tokenizer = BertTokenizer.from_pretrained('F:/models/bert-base-chinese')model = XihuaModel(pretrained_model_name='F:/models/bert-base-chinese').to(device)if retrain:model_path = os.path.join(PROJECT_ROOT, 'models/xihua_model.pth')if os.path.exists(model_path):model.load_state_dict(torch.load(model_path, map_location=device))logging.info("加载现有模型")else:logging.info("没有找到现有模型,将使用预训练模型")optimizer = optim.Adam(model.parameters(), lr=1e-5)criterion = torch.nn.BCEWithLogitsLoss()train_data_loader = get_data_loader(os.path.join(PROJECT_ROOT, 'data/train_data.jsonl'), tokenizer, batch_size=8, max_length=128)num_epochs = 30for epoch in range(num_epochs):train_loss = train(model, train_data_loader, optimizer, criterion, device)logging.info(f'Epoch [{epoch+1}/{num_epochs}], Loss: {train_loss:.8f}')torch.save(model.state_dict(), os.path.join(PROJECT_ROOT, 'models/xihua_model.pth'))logging.info("模型训练完成并保存")# GUI界面
class XihuaChatbotGUI:def __init__(self, root):self.root = rootself.root.title("羲和聊天机器人")self.tokenizer = BertTokenizer.from_pretrained('F:/models/bert-base-chinese')self.device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')self.model = XihuaModel(pretrained_model_name='F:/models/bert-base-chinese').to(self.device)self.load_model()self.model.eval()# 加载训练数据集以便在获取答案时使用self.data = self.load_data(os.path.join(PROJECT_ROOT, 'data/train_data.jsonl'))# 历史记录self.history = []self.create_widgets()def create_widgets(self):# 顶部框架top_frame = tk.Frame(self.root)top_frame.pack(pady=10)self.question_label = tk.Label(top_frame, text="问题:", font=("Arial", 12))self.question_label.grid(row=0, column=0, padx=10)self.question_entry = tk.Entry(top_frame, width=50, font=("Arial", 12))self.question_entry.grid(row=0, column=1, padx=10)self.answer_button = tk.Button(top_frame, text="获取回答", command=self.get_answer, font=("Arial", 12))self.answer_button.grid(row=0, column=2, padx=10)# 中部框架middle_frame = tk.Frame(self.root)middle_frame.pack(pady=10)self.answer_label = tk.Label(middle_frame, text="回答:", font=("Arial", 12))self.answer_label.grid(row=0, column=0, padx=10)self.answer_text = tk.Text(middle_frame, height=10, width=70, font=("Arial", 12))self.answer_text.grid(row=1, column=0, padx=10)# 底部框架bottom_frame = tk.Frame(self.root)bottom_frame.pack(pady=10)self.correct_button = tk.Button(bottom_frame, text="准确", command=self.mark_correct, font=("Arial", 12))self.correct_button.grid(row=0, column=0, padx=10)self.incorrect_button = tk.Button(bottom_frame, text="不准确", command=self.mark_incorrect, font=("Arial", 12))self.incorrect_button.grid(row=0, column=1, padx=10)self.train_button = tk.Button(bottom_frame, text="训练模型", command=self.train_model, font=("Arial", 12))self.train_button.grid(row=0, column=2, padx=10)self.retrain_button = tk.Button(bottom_frame, text="重新训练模型", command=lambda: self.train_model(retrain=True), font=("Arial", 12))self.retrain_button.grid(row=0, column=3, padx=10)self.progress_var = tk.DoubleVar()self.progress_bar = ttk.Progressbar(bottom_frame, variable=self.progress_var, maximum=100, length=200)self.progress_bar.grid(row=1, column=0, columnspan=4, pady=10)self.log_text = tk.Text(bottom_frame, height=10, width=70, font=("Arial", 12))self.log_text.grid(row=2, column=0, columnspan=4, pady=10)self.evaluate_button = tk.Button(bottom_frame, text="评估模型", command=self.evaluate_model, font=("Arial", 12))self.evaluate_button.grid(row=3, column=0, padx=10, pady=10)self.history_button = tk.Button(bottom_frame, text="查看历史记录", command=self.view_history, font=("Arial", 12))self.history_button.grid(row=3, column=1, padx=10, pady=10)self.save_history_button = tk.Button(bottom_frame, text="保存历史记录", command=self.save_history, font=("Arial", 12))self.save_history_button.grid(row=3, column=2, padx=10, pady=10)def get_answer(self):question = self.question_entry.get()if not question:messagebox.showwarning("输入错误", "请输入问题")returninputs = self.tokenizer(question, return_tensors='pt', padding='max_length', truncation=True, max_length=128)with torch.no_grad():input_ids = inputs['input_ids'].to(self.device)attention_mask = inputs['attention_mask'].to(self.device)logits = self.model(input_ids, attention_mask)if logits.item() > 0:answer_type = "羲和回答"else:answer_type = "零回答"specific_answer = self.get_specific_answer(question, answer_type)if specific_answer == "这个我也不清楚,你问问零吧":specific_answer = search_web(question)self.answer_text.delete(1.0, tk.END)self.answer_text.insert(tk.END, f"{answer_type}\n{specific_answer}")# 添加到历史记录self.history.append({'question': question,'answer_type': answer_type,'specific_answer': specific_answer,'accuracy': None  # 初始状态为未评价})def get_specific_answer(self, question, answer_type):# 使用模糊匹配查找最相似的问题best_match = Nonebest_ratio = 0.0for item in self.data:ratio = SequenceMatcher(None, question, item['question']).ratio()if ratio > best_ratio:best_ratio = ratiobest_match = itemif best_match:if answer_type == "羲和回答":return best_match['human_answers'][0]else:return best_match['chatgpt_answers'][0]return "这个我也不清楚,你问问零吧"def load_data(self, file_path):data = []if file_path.endswith('.jsonl'):with jsonlines.open(file_path) as reader:for i, item in enumerate(reader):try:data.append(item)except jsonlines.jsonlines.InvalidLineError as e:logging.warning(f"跳过无效行 {i + 1}: {e}")elif file_path.endswith('.json'):with open(file_path, 'r') as f:try:data = json.load(f)except json.JSONDecodeError as e:logging.warning(f"跳过无效文件 {file_path}: {e}")return datadef load_model(self):model_path = os.path.join(PROJECT_ROOT, 'models/xihua_model.pth')if os.path.exists(model_path):self.model.load_state_dict(torch.load(model_path, map_location=self.device))logging.info("加载现有模型")else:logging.info("没有找到现有模型,将使用预训练模型")def train_model(self, retrain=False):file_path = filedialog.askopenfilename(filetypes=[("JSONL files", "*.jsonl"), ("JSON files", "*.json")])if not file_path:messagebox.showwarning("文件选择错误", "请选择一个有效的数据文件")returntry:dataset = XihuaDataset(file_path, self.tokenizer)data_loader = DataLoader(dataset, batch_size=8, shuffle=True)# 加载已训练的模型权重if retrain:self.model.load_state_dict(torch.load(os.path.join(PROJECT_ROOT, 'models/xihua_model.pth'), map_location=self.device))self.model.to(self.device)self.model.train()optimizer = torch.optim.Adam(self.model.parameters(), lr=1e-5)criterion = torch.nn.BCEWithLogitsLoss()num_epochs = 30for epoch in range(num_epochs):train_loss = train(self.model, data_loader, optimizer, criterion, self.device, self.progress_var)logging.info(f'Epoch [{epoch+1}/{num_epochs}], Loss: {train_loss:.4f}')self.log_text.insert(tk.END, f'Epoch [{epoch+1}/{num_epochs}], Loss: {train_loss:.4f}\n')self.log_text.see(tk.END)torch.save(self.model.state_dict(), os.path.join(PROJECT_ROOT, 'models/xihua_model.pth'))logging.info("模型训练完成并保存")self.log_text.insert(tk.END, "模型训练完成并保存\n")self.log_text.see(tk.END)messagebox.showinfo("训练完成", "模型训练完成并保存")except Exception as e:logging.error(f"模型训练失败: {e}")self.log_text.insert(tk.END, f"模型训练失败: {e}\n")self.log_text.see(tk.END)messagebox.showerror("训练失败", f"模型训练失败: {e}")def evaluate_model(self):test_data_loader = get_data_loader(os.path.join(PROJECT_ROOT, 'data/test_data.jsonl'), self.tokenizer, batch_size=8, max_length=128)accuracy = evaluate(self.model, test_data_loader, self.device)logging.info(f"模型评估准确率: {accuracy:.4f}")self.log_text.insert(tk.END, f"模型评估准确率: {accuracy:.4f}\n")self.log_text.see(tk.END)messagebox.showinfo("评估结果", f"模型评估准确率: {accuracy:.4f}")def mark_correct(self):if self.history:self.history[-1]['accuracy'] = Truemessagebox.showinfo("评价成功", "您认为这次回答是准确的")def mark_incorrect(self):if self.history:self.history[-1]['accuracy'] = Falsemessagebox.showinfo("评价成功", "您认为这次回答是不准确的")def view_history(self):history_window = tk.Toplevel(self.root)history_window.title("历史记录")history_text = tk.Text(history_window, height=20, width=80, font=("Arial", 12))history_text.pack(padx=10, pady=10)for entry in self.history:history_text.insert(tk.END, f"问题: {entry['question']}\n")history_text.insert(tk.END, f"回答类型: {entry['answer_type']}\n")history_text.insert(tk.END, f"具体回答: {entry['specific_answer']}\n")if entry['accuracy'] is None:history_text.insert(tk.END, "评价: 未评价\n")elif entry['accuracy']:history_text.insert(tk.END, "评价: 准确\n")else:history_text.insert(tk.END, "评价: 不准确\n")history_text.insert(tk.END, "-" * 50 + "\n")def save_history(self):file_path = filedialog.asksaveasfilename(defaultextension=".json", filetypes=[("JSON files", "*.json")])if not file_path:returnwith open(file_path, 'w') as f:json.dump(self.history, f, ensure_ascii=False, indent=4)messagebox.showinfo("保存成功", "历史记录已保存到文件")# 主函数
if __name__ == "__main__":# 启动GUIroot = tk.Tk()app = XihuaChatbotGUI(root)root.mainloop()

web_search.py

import requests
from bs4 import BeautifulSoupdef search_web(query):url = f"https://www.baidu.com/s?wd={query}"headers = {'User-Agent': 'Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/58.0.3029.110 Safari/537.3'}response = requests.get(url, headers=headers)soup = BeautifulSoup(response.text, 'html.parser')results = []for result in soup.find_all('div', class_='c-container'):title = result.find('h3').get_text()snippet = result.find('div', class_='c-abstract')if snippet:snippet = snippet.get_text()results.append(f"{title}\n{snippet}\n")if results:return '\n'.join(results[:3])  # 返回前三个结果else:return "没有找到相关信息"

logging.conf

[loggers]
keys=root[handlers]
keys=consoleHandler,fileHandler[formatters]
keys=simpleFormatter[logger_root]
level=INFO
handlers=consoleHandler,fileHandler[handler_consoleHandler]
class=StreamHandler
level=INFO
formatter=simpleFormatter
args=(sys.stdout,)[handler_fileHandler]
class=FileHandler
level=INFO
formatter=simpleFormatter
args=('logs/羲和.log', 'a')[formatter_simpleFormatter]
format=%(asctime)s - %(levelname)s - %(message)s
datefmt=%Y-%m-%d %H:%M:%S

目录结构

project_root/
├── data/
│   ├── train_data.jsonl
│   └── test_data.jsonl
├── logs/
│   └── (log files will be generated here)
├── models/
│   └── xihua_model.pth
├── main.py
├── web_search.py
└── logging.conf

说明
main.py:主文件,包含GUI界面和模型加载、训练、评估等功能。
web_search.py:用于从百度搜索信息的模块。
logging.conf:日志配置文件,用于配置日志记录。
data/:存放训练和测试数据文件。
logs/:存放日志文件。
models/:存放训练好的模型权重文件。
通过以上结构和代码,你可以实现一个具有GUI界面的聊天机器人,该机器人可以在本地使用训练好的模型回答问题,如果模型中没有相关内容,则会联网搜索并返回相关信息。

http://www.hkea.cn/news/181545/

相关文章:

  • 临海市住房与城乡建设规划局 网站目前最新的营销模式有哪些
  • 高校建设网站的特色如何建立一个网站
  • 公司做网站域名归谁搜索引擎营销策划方案
  • 怎么做外贸个人网站seo综合查询工具可以查看哪些数据
  • 黑客网站盗qq百度seo公司整站优化
  • 网页设计代码不能运行seo的中文名是什么
  • 灵溪网站建设外贸网站谷歌seo
  • 网站开发系统设计产品推销
  • 不用代码做网站 知乎百度引流推广怎么收费
  • 怎么看网站后台什么语言做的产品全网营销推广
  • 可以做宣传图的网站网络销售管理条例
  • 做书籍封皮的网站制作网站平台
  • 1网站建设公司长沙网站到首页排名
  • 域名还在备案可以做网站吗seo培训班
  • 前程无忧网宁波网站建设类岗位北京网站快速排名优化
  • 如何优化网站内部链接站长工具站长之家
  • 阿里云网站建设的实训报告免费的自媒体一键发布平台
  • 关于加强网站建设的意见企业获客方式
  • 帮企业建设网站保密合同优化设计电子课本
  • 金山石化网站建设广告电话
  • 网站开发 前景网络推广代理
  • 温州整站推广咨询seo网站推广专员
  • 企业营销型网站团队百度seo排名优化教程
  • 安徽平台网站建设哪里好网络策划与营销
  • 做网站接广告赚钱么凡科建站和华为云哪个好
  • 成都网站建设科技公seo营销外包公司
  • 重庆有哪些做网站 小程序的百度搜索引擎的特点
  • 仁怀哪里可以做网站自动秒收录网
  • 重庆市建设局网站推广软件一键发送
  • 合肥网络推广网络运营网站seo诊断分析和优化方案