Open In App

Python | Pandas PeriodIndex.freqstr

Last Updated : 20 Aug, 2021
Improve
Improve
Like Article
Like
Save
Share
Report

Python is a great language for doing data analysis, primarily because of the fantastic ecosystem of data-centric python packages. Pandas is one of those packages and makes importing and analyzing data much easier.

Pandas PeriodIndex.freqstr attribute return the frequency object as a string if its set, otherwise the function return None for the given PeriodIndex object.

Syntax : PeriodIndex.freqstr

Parameters : None

Return : frequency as a string
 

Example #1: Use PeriodIndex.freqstr attribute to find the time series frequency applied on the given PeriodIndex object. 

Python3




# importing pandas as pd
import pandas as pd
 
# Create the PeriodIndex object
pidx = pd.PeriodIndex(start ='2005-12-21 08:45 ',
              end ='2005-12-21 11:55', freq ='H')
 
# Print the PeriodIndex object
print(pidx)


Output : 

Now we will use the PeriodIndex.freqstr attribute to find the time series frequency of the given object.

Python3




# return the frequency object as a string
pidx.freqstr


Output : 

As we can see in the output, the PeriodIndex.freqstr attribute has returned ‘H’ indicating that hourly frequency is applied on the given PeriodIndex object. 
  
Example #2: Use PeriodIndex.freqstr attribute to find the time series frequency of the given PeriodIndex object.

Python3




# importing pandas as pd
import pandas as pd
 
# Create the PeriodIndex object
pidx = pd.PeriodIndex(start ='2011-02-1 ',
             end ='2011-08-14', freq ='M')
 
# Print the PeriodIndex object
print(pidx)


Output : 

Now we will use the PeriodIndex.freqstr attribute to find the time series frequency of the given object.

Python3




# return the frequency object as a string
pidx.freqstr


Output : 

As we can see in the output, the PeriodIndex.freqstr attribute has returned ‘M’ indicating that monthly frequency is applied on the given PeriodIndex object.
 



Like Article
Suggest improvement
Share your thoughts in the comments

Similar Reads