【发布时间】:2021-05-12 12:06:05
【问题描述】:
我希望通过 for 循环优化函数所花费的时间。下面的代码适用于较小的数据帧,但对于较大的数据帧,它需要的时间太长。该函数基于使用其他列值和参数的计算有效地创建一个新列。该计算还考虑其中一列的前一行值的值。我读到最有效的方法是使用 Pandas 向量化,但是当我的 for 循环考虑 1 列的前一行值以在当前行上填充新列时,我很难理解如何实现这一点。我是一个完全的新手,但是环顾四周,找不到任何适合这个特定问题的东西,虽然我是从一个相对无知的位置搜索的,所以可能错过了一些东西。
函数如下,我也创建了一个测试数据框和随机参数。如果有人能指出我正确的方向以缩短处理时间,那就太好了。提前致谢。
def MODE_Gain (Data, rated, MODELim1, MODEin, Normalin,NormalLim600,NormalLim1):
print('Calculating Gains')
df = Data
df.fillna(0, inplace=True)
df['MODE'] = ""
df['Nominal'] = ""
df.iloc[0, df.columns.get_loc('MODE')] = 0
for i in range(1, (len(df.index))):
print('Computing Status{i}/{r}'.format(i=i, r=len(df.index)))
if ((df['MODE'].loc[i-1] == 1) & (df['A'].loc[i] > Normalin)) :
df['MODE'].loc[i] = 1
elif (((df['MODE'].loc[i-1] == 0) & (df['A'].loc[i] > NormalLim600))|((df['B'].loc[i] > NormalLim1) & (df['B'].loc[i] < MODELim1 ))):
df['MODE'].loc[i] = 1
else:
df['MODE'].loc[i] = 0
df[''] = (df['C']/6)
for i in range(len(df.index)):
print('Computing MODE Gains {i}/{r}'.format(i=i, r=len(df.index)))
if ((df['A'].loc[i] > MODEin) & (df['A'].loc[i] < NormalLim600)&(df['B'].loc[i] < NormalLim1)) :
df['Nominal'].loc[i] = rated/6
else:
df['Nominal'].loc[i] = 0
df["Upgrade"] = df[""] - df["Nominal"]
return df
A = np.random.randint(0,28,size=(8000))
B = np.random.randint(0,45,size=(8000))
C = np.random.randint(0,2300,size=(8000))
df = pd.DataFrame()
df['A'] = pd.Series(A)
df['B'] = pd.Series(B)
df['C'] = pd.Series(C)
MODELim600 = 32
MODELim30 = 28
MODELim1 = 39
MODEin = 23
Normalin = 20
NormalLim600 = 25
NormalLim1 = 32
rated = 2150
finaldf = MODE_Gain(df, rated, MODELim1, MODEin, Normalin,NormalLim600,NormalLim1)
【问题讨论】:
标签: python pandas dataframe for-loop vectorization