
Python for Finance

The pandas
module is a powerful tool used to process various types of data, including economics, financial, and accounting data. If Python was installed on your machine via Anaconda, then the pandas
module was installed already. If you issue the following command without any error, it indicates that the pandas
module was installed:
>>>import pandas as pd
In the following example, we generate two time series starting from January 1, 2013. The names of those two time series (columns) are A
and B
:
import numpy as np import pandas as pd dates=pd.date_range('20160101',periods=5) np.random.seed(12345) x=pd.DataFrame(np.random.rand(5,2),index=dates,columns=('A','B'))
First, we import both NumPy and pandas
modules. The pd.date_range()
function is used to generate an index array. The x
variable is a pandas DataFrame with dates as its index. Later in this chapter, we will discuss the pd.DataFrame()
function. The columns()
function defines...
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