Es un ejemplo donde estoy usando fit_transform Este es un método de StandardScaler el cuál pertenece a la librería de Scikit Learn:
import numpy as np
import pandas as pd
from sklearn.preprocessing import StandardScaler
from datetime import datetime
from dateutil import parser
df1 = pd.DataFrame(np.array(['01/02/2020',1,2,3,4,'03/02/2020',5,6,7,8,'02/02/2020',9,10,11,12,'04/02/2020',12,13,14,15]).reshape(4,5),columns=['Date', 'B', 'C', 'D','E'])
df = df1.sort_values(by='Date')
df2 = df.drop('B', axis=1)
df['Date'] = [parser.parse(x) for x in list(df['Date'])
df.index = df['Date']
df = df.drop('Date', axis=1)
ab = pd.to_numeric(df['D']).pct_change()
sc = StandardScaler()
ab2 = sc.fit_transform(ab.values.reshape(-1, 1))