Let’s take a look at what interesting functions we can achieve with no more than 10 lines of code.
QR code is also called two-dimensional barcode. The common two-dimensional code is QR Code. The full name of QR is Quick Response. It is a super popular mobile device in recent years. A popular coding method, and generating a QR code is also very simple. In Python, we can generate a QR code through the MyQR module. To generate a QR code, we only need 2 lines of code. We first install the MyQR module. Here we choose domestic source download:
pip install qrcode
After the installation is completed, we can start writing code:
import qrcode text = input(输入文字或URL:) # 设置URL必须添加http:// img =qrcode.make(text) img.save() #保存图片至本地目录,可以设定路径 img.show()
After we execute the code, a QR code will be generated under the project. Of course, we can also enrich the QR code:
Let’s install the MyQR module first
pip installmyqr
def gakki_code(): version, level, qr_name = myqr.run( words=https://520mg.com/it/#/main/2, # 可以是字符串,也可以是网址(前面要加http(s)://) version=1,# 设置容错率为最高 level='H', # 控制纠错水平,范围是L、M、Q、H,从左到右依次升高 picture=gakki.gif, # 将二维码和图片合成 colorized=True,# 彩色二维码 contrast=1.0, # 用以调节图片的对比度,1.0 表示原始图片,更小的值表示更低对比度,更大反之。默认为1.0 brightness=1.0, # 用来调节图片的亮度,其余用法和取值同上 save_name=gakki_code.gif, # 保存文件的名字,格式可以是jpg,png,bmp,gif save_dir=os.getcwd()# 控制位置 ) gakki_code()
The rendering is as follows:
##In addition, MyQR also supports dynamic picture. 2. Generate word cloudWord cloud is also called word cloud. It is a visual prominent presentation of "keywords" that appear frequently in text data, forming a rendering of keywords. A cloud-like color picture is formed, so that the main meaning of the text data can be understood at a glance. But as an old coder, I still like to use code to generate my own word cloud. Is it complicated? Will it take a long time? Many texts have introduced various methods, but in fact only 10 lines of python code are needed. Install the necessary libraries firstpip install wordcloud pip install jieba pip install matplotlib
import matplotlib.pyplot as plt from wordcloud import WordCloud import jieba text_from_file_with_apath = open('/Users/hecom/23tips.txt').read() wordlist_after_jieba = jieba.cut(text_from_file_with_apath, cut_all = True) wl_space_split =.join(wordlist_after_jieba) my_wordcloud = WordCloud().generate(wl_space_split) plt.imshow(my_wordcloud) plt.axis(off) plt.show()
python -m pip install paddlepaddle -i https://mirror.baidu.com/pypi/simple
pip install -i https://mirror.baidu.com/pypi/simple paddlehub
import os, paddlehub as hub humanseg = hub.Module(name='deeplabv3p_xception65_humanseg')# 加载模型 path = 'D:/CodeField/Workplace/PythonWorkplace/GrapImage/'# 文件目录 files = [path + i for i in os.listdir(path)]# 获取文件列表 results = humanseg.segmentation(data={'image':files})# 抠图
import paddlehub as hub senta = hub.Module(name='senta_lstm')# 加载模型 sentence = [# 准备要识别的语句 '你真美', '你真丑', '我好难过', '我不开心', '这个游戏好好玩', '什么垃圾游戏', ] results = senta.sentiment_classify(data={text:sentence})# 情绪识别 # 输出识别结果 for result in results: print(result)
{'text': '你真美', 'sentiment_label': 1, 'sentiment_key': 'positive', 'positive_probs': 0.9602, 'negative_probs': 0.0398} {'text': '你真丑', 'sentiment_label': 0, 'sentiment_key': 'negative', 'positive_probs': 0.0033, 'negative_probs': 0.9967} {'text': '我好难过', 'sentiment_label': 1, 'sentiment_key': 'positive', 'positive_probs': 0.5324, 'negative_probs': 0.4676} {'text': '我不开心', 'sentiment_label': 0, 'sentiment_key': 'negative', 'positive_probs': 0.1936, 'negative_probs': 0.8064} {'text': '这个游戏好好玩', 'sentiment_label': 1, 'sentiment_key': 'positive', 'positive_probs': 0.9933, 'negative_probs': 0.0067} {'text': '什么垃圾游戏', 'sentiment_label': 0, 'sentiment_key': 'negative', 'positive_probs': 0.0108, 'negative_probs': 0.9892}
import paddlehub as hub # 加载模型 module = hub.Module(name='pyramidbox_lite_mobile_mask') # 图片列表 image_list = ['face.jpg'] # 获取图片字典 input_dict = {'image':image_list} # 检测是否带了口罩 module.face_detection(data=input_dict)
pip install -i https://pypi.tuna.tsinghua.edu.cn/simple/ pynput
from pynput import mouse # 创建一个鼠标 m_mouse = mouse.Controller() # 输出鼠标位置 print(m_mouse.position)
import time from pynput import mouse, keyboard time.sleep(5) m_mouse = mouse.Controller()# 创建一个鼠标 m_keyboard = keyboard.Controller()# 创建一个键盘 m_mouse.position = (850, 670) # 将鼠标移动到指定位置 m_mouse.click(mouse.Button.left) # 点击鼠标左键 while(True): m_keyboard.type('你好')# 打字 m_keyboard.press(keyboard.Key.enter)# 按下enter m_keyboard.release(keyboard.Key.enter)# 松开enter time.sleep(0.5)# 等待 0.5秒
import pytesseract from PIL import Image img = Image.open('text.jpg') text = pytesseract.image_to_string(img) print(text)
其中text就是识别出来的文本。如果对准确率不满意的话,还可以使用百度的通用文字接口。
从一些小例子入门感觉效率很高。
import random print(1-100数字猜谜游戏!) num = random.randint(1,100) guess =guess i = 0 while guess != num: i += 1 guess = int(input(请输入你猜的数字:)) if guess == num: print(恭喜,你猜对了!) elif guess < num: print(你猜的数小了...) else: print(你猜的数大了...) print(你总共猜了%d %i + 次)
猜数小案例当着练练手。
以上代码,大家可以敲一下非常有趣,也很适合小白入手。
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