前言
今天给大家分享一个比较有意思的Python应用,使用Tkinter开发了一款上课点名程序,此程序可以用于点名、抽奖…代码不到200行,程序简单又实用,分享给到大家~
开发工具
Python版本: 3.8
相关模块:
Tkinter模块
PIL模块
环境搭建
安装Python并添加到环境变量,pip安装需要的相关模块即可。
界面预览
1.启动
启动
双击打开后,进入软件主界面,所有功能一目了然。程序会自动识别软件目录下的names.txt,将里面的名字导入。
2.开始点名-顺序点名
顺序点名
选择顺序点名后,点击开始,屏幕上就开始滚动出现人名,人名出现的概率是相同的,点击停止,人名就停止滚动,点名结束。
3.开始点名-随机点名
随机点名
点击随机点名,程序就会进行随机点名,人名出现的概率是随机的。
4.手动加载人名单
手动加载人名单
可以自己手动选择人名单,前提是人名单格式为txt,且每个名字占一行。
5.开始点名-顺序点名-Pyqt5版本
顺序点名-Pyqt5版本
用Pyqt5也写了一个版本,实现逻辑与TK版本相同,界面可能更好看了一些,但是文件大了许多,大家可以在后面总结部分自取。
三.思路分析
1.整体实现思路
整体实现思路
2.点名实现思路
点名实现思路
四.代码实现
point_names-GUI.py(主程序GUI)
import randomimport reimport timeimport threadingfrom tkinter import *from tkinter import ttkfrom base64 import b64decodefrom PIL import Image,ImageTkfrom tkinter import messageboxfrom tkinter.filedialog import askopenfilename""""2021-11-10点名/抽奖程序主要亮点:1.两种模式:①顺序点名②随机点名2.自动识别人名单3.支持手动导入人名单4.人名单导入校验5.人名显示位置自动矫正6.最多显示五个大字"""imgs=['./point_name.png']class APP:def __init__(self):self.root = Tk()self.running_flag=False #开始标志self.time_span=0.05 #名字显示间隔self.root.title('Point_name-V1.0')width = 680height = 350left = (self.root.winfo_screenwidth() - width) / 2top = (self.root.winfo_screenheight() - height) / 2self.root.geometry("%dx%d+%d+%d" % (width, height, left, top))self.root.resizable(0,0)self.create_widget()self.set_widget()self.place_widget()self.root.mainloop()def create_widget(self):self.label_show_name_var=StringVar()self.label_show_name=ttk.Label(self.root,textvariable=self.label_show_name_var,font=('Arial', 100,"bold"),foreground = '#1E90FF')self.btn_start=ttk.Button(self.root,text="开始",)self.btn_load_names=ttk.Button(self.root,text="手动加载人名单",)self.lf1=ttk.Labelframe(self.root,text="点名方式")self.radioBtn_var=IntVar()self.radioBtn_var.set(1)self.radioBtn_sequence=ttk.Radiobutton(self.lf1,text="顺序点名",variable=self.radioBtn_var, value=1)self.radioBtn_random=ttk.Radiobutton(self.lf1,text="随机点名",variable=self.radioBtn_var, value=2)self.label_show_name_num=ttk.Label(self.root,font=('Arial', 20),foreground = '#FF7F50')paned = PanedWindow(self.root)self.img = imgsimg_=b'iVBORw0KGgoAAAANSUhEUgAAALQAAAB4CAIAAADUhU+qAAAACXBIWXMAAAsTAAALEwEAmpwYAAAgAElEQVR4nO196XNbx5Vvd9+LfSU2EgD3fRNJbZRkyVJseY9sP7scOy+ZTCqpVKXm8/wp+TA1X2amJjWZSXksy1Ik27IsWXIsRpK1kCIpLgBJkAAXrMQO3K3fh0O0rkBKkaonzvO *** 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0FFa6lUgPYHYNyeOXPm+PHjDQ2NP/3p/21pacGVRmGUUlmRyuXihfPnT548KYiiJMuE48CbhTFRFAVRm *** 84TRUoRhKCDjursigaMMEraSQYoIRogBnrFS2tpRkpNIzvqfsY/uCQ02KohSLxWw2C+WNqFJUyAqUFUVWqKzICrjFRkZGYH9oaPh0b48eqVgqrK6unjt3ThCFjU3/FBlTTAiliAIaONAzMKaKQplOitBdpRepvKWVD4 *** jVajN+hz+QL6XqgVDyRekqVn/Qz3pQ2GQZWyUM7msphgm92m0fIKVWRZ3ghzKAj0BJD+iqIIolgWBKvNZnfUEI5QpFBEMMZwGCYYEwVhiRIZUyQpgkJFTBBVkILljZCKBhENorKMiCwjUZAo+MEQYlFacJZTvKFXQEiQEEJ4LTEYdbwWK1SQZFGSZXiXeznH9wM2/w8z07TIub6ABQAAAABJRU5ErkJggg=='the_img = b64decode(img_) #将图片硬编码到GUIpaned.image = ImageTk.PhotoImage(data=the_img)self._img = Label(self.root, image=paned.image,background='black')def set_widget(self):default_name_="会是谁?"self.label_show_name_var.set(default_name_)self.label_show_name_adjust(default_name_)self.btn_start.config(command=lambda :self.thread_it(self.start_point_name))self.btn_load_names.config(command=self.load_names)init_names=self.load_names_txt("./names.txt")self.root.protocol('WM_DELETe_WINDOW',self.quit_window)self.root.bind('
',self.quit_window)if init_names:self.default_names=init_names #1.文件存在但是无内容。2.文件不存在self.label_show_name_num.config(text=f"一共加载了{len(self.default_names)}个姓名")else:self.btn_start.config(state=DISABLED)self.label_show_name_num.config(text=f"请先手动导入人名单!")def place_widget(self):self.lf1.place(x=300,y=160,width=250,height=50)self.radioBtn_sequence.place(x=20,y=0)self.radioBtn_random.place(x=150,y=0)self.btn_start.place(x=300,y=220,width=100,height=30)self.btn_load_names.place(x=450,y=220,width=100,height=30)self._img.place(x=90, y=165, height=120, width=180)self.label_show_name_num.place(x=300,y=260)def label_show_name_adjust(self,the_name):if len (the_name)==1:self.label_show_name.place(x=280, y=10)elif len(the_name) == 2:self.label_show_name.place(x=180, y=10)elif len(the_name) == 3:self.label_show_name.place(x=120, y=10)elif len(the_name) == 4:self.label_show_name.place(x=80, y=10)else:self.label_show_name.place(x=0, y=10)def start_point_name(self):"""启动之前进行判断,获取点名模式:return:"""if len(self.default_names)==1:messagebox.showinfo("提示",'人名单就一个人,不用选了!')self.label_show_name_var.set(self.default_names[0])self.label_show_name_adjust(self.default_names[0])returnif self.btn_start["text"]=="开始":self.btn_load_names.config(state=DISABLED)self.running_flag=Trueif isinstance(self.default_names,list):self.btn_start.config(text="就你了")if self.radioBtn_var.get()==1:mode="sequence"elif self.radioBtn_var.get()==2:mode="random"else:passself.thread_it(self.point_name_begin(mode))else:messagebox.showwarning("警告","请先导入人名单!")else:self.running_flag=Falseself.btn_load_names.config(state=NORMAL)self.btn_start.config(text="开始")def point_name_begin(self,mode):"""开始点名,点名主函数:param mode::return:"""if mode == "sequence":if self.running_flag:self.always_ergodic()elif mode=="random":while True:if self.running_flag:random_choice_name=random.choice(self.default_names)self.label_show_name_var.set(random_choice_name)self.label_show_name_adjust(random_choice_name)time.sleep(self.time_span)else:breakdef always_ergodic(self):"""一直遍历此列表,使用死循环会造成线程阻塞:return:"""for i in self.default_names:if self.running_flag:self.label_show_name_var.set(i)self.label_show_name_adjust(i)time.sleep(self.time_span)if i==self.default_names[-1]:self.always_ergodic()else:breakdef load_names(self):"""手动加载txt格式人名单:return:"""filename = askopenfilename(filetypes = [('文本文件', '.TXT'), ],title = "选择一个文本文件",initialdir="./")if filename:names=self.load_names_txt(filename)if names:self.default_names=namesno_Chinese_name_num=len([n for n in names if not self.load_name_check(n)])if no_Chinese_name_num==0:passelse:messagebox.showwarning("请注意",f'导入名单有{no_Chinese_name_num}个不是中文名字')self.label_show_name_num.config(text=f"一共加载了{len(self.default_names)}个姓名")default_name_ = "会是谁?"self.label_show_name_var.set(default_name_)self.label_show_name_adjust(default_name_)self.btn_start.config(state=NORMAL)else:messagebox.showwarning("警告","导入失败,请检查!")def load_names_txt(self,txt_file):"""读取txt格式的人名单:param txt_file::return:"""try:with open(txt_file,'r',encoding="utf-8")as f:names=[name.strip() for name in f.readlines()]if len(names)==0:return Falseelse:return namesexcept:return Falsedef load_name_check(self,name):"""对txt文本中的人名进行校验中文汉字->True非中文汉字->False:param name::return:"""regex = r'[u4e00-u9fa5]+'if re.match(regex,name):return Trueelse:return Falsedef thread_it(self,func,*args):t=threading.Thread(target=func,args=args)t.setDaemon(True)t.start()def quit_window(self,*args):"""程序退出触发此函数:param args::return:"""ret=messagebox.askyesno('退出','确定要退出?')if ret:self.root.destroy()if __name__ == '__main__':a=APP()
最后
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