python 画基金涨幅图

 
import numpy as np
import pandas as pd
import seaborn as sns
import matplotlib.pyplot as plt

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def showZhangFu(data):
  data = data[-250:]
  data = np.array(data).cumsum()
  
  df = pd.DataFrame(dict(time=np.arange(len(data)),
                        value=data))
  g = sns.relplot(x="time", y="value", kind="line", data=df)
  g.figure.autofmt_xdate()
  plt.show()

showZhangFu(data)

 

中欧基金近一年涨幅

 

posted @ 2021-08-19 01:02  Please Call me 小强  阅读(408)  评论(0编辑  收藏  举报