看这优美的舞姿


import matplotlib.animation as anianimator = ani.FuncAnimation(fig, chartfunc, interval = 100)从中我们可以看到 FuncAnimation 的几个输入:
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fig 是用来 「绘制图表」的 figure 对象;
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chartfunc 是一个以数字为输入的函数,其含义为时间序列上的时间;
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interval 这个更好理解,是帧之间的间隔延迟,以毫秒为单位,默认值为 200。
import matplotlib.animation as aniimport matplotlib.pyplot as pltimport numpy as npimport pandas as pdurl = 'https://raw.githubusercontent.com/CSSEGISandData/COVID-19/master/csse_covid_19_data/csse_covid_19_time_series/time_series_covid19_deaths_global.csv'df = pd.read_csv(url, delimiter=',', header='infer')df_interest = df.loc[ df['Country/Region'].isin(['United Kingdom', 'US', 'Italy', 'Germany']) & df['Province/State'].isna()]df_interest.rename( index=lambda x: df_interest.at[x, 'Country/Region'], inplace=True)df1 = df_interest.transpose()df1 = df1.drop(['Province/State', 'Country/Region', 'Lat', 'Long'])df1 = df1.loc[(df1 != 0).any(1)]df1.index = pd.to_datetime(df1.index)绘制三种常见动态图表绘制动态线型图

import numpy as npimport matplotlib.pyplot as pltcolor = ['red', 'green', 'blue', 'orange']fig = plt.figure()plt.xticks(rotation=45, ha="right", rotation_mode="anchor") #rotate the x-axis valuesplt.subplots_adjust(bottom = 0.2, top = 0.9) #ensuring the dates (on the x-axis) fit in the screenplt.ylabel('No of Deaths')plt.xlabel('Dates')
接下来设置 curve 函数,进而使用 .FuncAnimation 让它动起来:def buildmebarchart(i=int): plt.legend(df1.columns) p = plt.plot(df1[:i].index, df1[:i].values) #note it only returns the dataset, up to the point i for i in range(0,4): p[i].set_color(color[i]) #set the colour of each curveimport matplotlib.animation as anianimator = ani.FuncAnimation(fig, buildmebarchart, interval = 100)plt.show()动态饼状图

import numpy as npimport matplotlib.pyplot as pltfig,ax = plt.subplots()explode=[0.01,0.01,0.01,0.01] #pop out each slice from the piedef getmepie(i):def absolute_value(val): #turn % back to a number a = np.round(val/100.*df1.head(i).max().sum(), 0) return int(a)ax.clear()plot = df1.head(i).max().plot.pie(y=df1.columns,autopct=absolute_value, label='',explode = explode, shadow = True)plot.set_title('Total Number of Deaths\n' + str(df1.index[min( i, len(df1.index)-1 )].strftime('%y-%m-%d')), fontsize=12)import matplotlib.animation as anianimator = ani.FuncAnimation(fig, getmepie, interval = 200)plt.show()
主要区别在于,动态饼状图的代码每次循环都会返回一组数值,但在线型图中返回的是我们所在点之前的整个时间序列。返回时间序列通过 df1.head(i) 来实现,而. max()则保证了我们仅获得最新的数据,因为流行病导致死亡的总数只有两种变化:维持现有数量或持续上升。df1.head(i).max()动态条形图创建动态条形图的难度与上述两个案例并无太大差别。在这个案例中,作者定义了水平和垂直两种条形图,读者可以根据自己的实际需求来选择图表类型并定义变量栏。
fig = plt.figure()bar = ''def buildmebarchart(i=int): iv = min(i, len(df1.index)-1) #the loop iterates an extra one time, which causes the dataframes to go out of bounds. This was the easiest (most lazy) way to solve this :) objects = df1.max().index y_pos = np.arange(len(objects)) performance = df1.iloc[[iv]].values.tolist()[0] if bar == 'vertical': plt.bar(y_pos, performance, align='center', color=['red', 'green', 'blue', 'orange']) plt.xticks(y_pos, objects) plt.ylabel('Deaths') plt.xlabel('Countries') plt.title('Deaths per Country \n' + str(df1.index[iv].strftime('%y-%m-%d'))) else: plt.barh(y_pos, performance, align='center', color=['red', 'green', 'blue', 'orange']) plt.yticks(y_pos, objects) plt.xlabel('Deaths') plt.ylabel('Countries')animator = ani.FuncAnimation(fig, buildmebarchart, interval=100)plt.show()
在制作完成后,存储这些动态图就非常简单了,可直接使用以下代码:animator.save(r'C:\temp\myfirstAnimation.gif')感兴趣的读者如想获得详细信息可参考:https://matplotlib.org/3.1.1/api/animation_api.html。

















