代码如下
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import matplotlib.pyplot as plt import numpy as np def test4(): names = [ '电影1' , '电影2' , '电影3' ] real_num1 = [ 7548 , 4013 , 1673 ] real_num2 = [ 5453 , 1840 , 1080 ] real_num3 = [ 4348 , 2345 , 1890 ] x = np.arange( len (names)) # 绘制柱形图 width = 0.3 plt.bar(x, real_num1, alpha = 0.5 , width = width, label = names[ 0 ]) plt.bar([i + width for i in x], real_num2, alpha = 0.5 , width = width, label = names[ 1 ]) plt.bar([i + 2 * width for i in x], real_num3, alpha = 0.5 , width = width, label = names[ 2 ]) # 正常显示中文 plt.rcParams[ "font.sans-serif" ] = [ "SimHei" ] # 设置x坐标轴的值 x_label = [ "第{}天" . format (i + 1 ) for i in x] # 让x坐标轴显示在中间 plt.xticks([i + width for i in x], x_label) # 添加ylabel plt.ylabel( "票房数" ) # 添加图例 plt.legend() # 添加标题 plt.title( "3天3部电影票房数" ) plt.show() test4() |
结果显示:
代码如下
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from mpl_toolkits.mplot3d import Axes3Dimport matplotlib.pyplot as pltimport numpy as np def test5(): # ax.plot_surface(X, Y, Z, rstride=1, cstride=1, cmap='rainbow') #绘面 # 绘制3D曲面图 fig = plt.figure() ax = Axes3D(fig) # -4 到4 [-4, 4),步长为0.25 X = np.arange( - 4 , 4 , 0.25 ) Y = np.arange( - 4 , 4 , 0.25 ) # meshgrid方法,你只需要构造一个表示x轴上的坐标的向量和一个表示y轴上的坐标的向量;然后作为参数给到meshgrid(),该函数就会返回相应维度的两个矩阵; X, Y = np.meshgrid(X, Y) R = np.sqrt(X * * 2 + Y * * 2 ) Z = np.sin(R) ax.plot_surface(X, Y, Z, rstride = 1 , cstride = 1 , cmap = "rainbow" ) plt.show() |
结果如下:
代码如下
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import matplotlib.pyplot as plt import numpy as np def test6(): # 绘制三维散点图 # ax.scatter(x[1000:4000],y[1000:4000],z[1000:4000],c='r') #绘点 data = np.random.randint( 0 , 255 , size = [ 40 , 40 , 40 ]) x, y, z = data[ 0 ], data[ 1 ], data[ 2 ] # 创建一个三维的绘图工程 ax = plt.subplot( 111 , projection = "3d" ) # 将数据点分成三部分画,在颜色上有区分度 ax.scatter(x[: 10 ], y[: 10 ], z[: 10 ], c = 'y' ) # 绘制数据点 ax.scatter(x[ 10 : 20 ], y[ 10 : 20 ], z[ 10 : 20 ], c = 'r' ) ax.scatter(x[ 30 : 40 ], y[ 30 : 40 ], z[ 30 : 40 ], c = 'g' ) # 坐标轴 ax.set_zlabel( "Z" ) ax.set_ylabel( "Y" ) ax.set_xlabel( "X" ) plt.show() |
效果如下:
以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持服务器之家。
原文链接:https://www.cnblogs.com/zhouzetian/p/12698465.html