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 Timestamp.floor()
function return a new Timestamp floored to this resolution. The function takes the desired time series frequency as an input.
Syntax : Timestamp.floor()
Parameters :
freq : a freq string indicating the flooring resolutionReturn : Timestamp
Example #1: Use Timestamp.floor()
function to floor the given Timestamp object to Daily time series frequency.
# importing pandas as pd import pandas as pd # Create the Timestamp object ts = pd.Timestamp(year = 2011 , month = 11 , day = 21 , hour = 10 , second = 49 , tz = 'US/Central' ) # Print the Timestamp object print (ts) |
Output :
Now we will use the Timestamp.floor()
function to floor the ts object to Daily frequency.
# floor the given object to daily frequency ts.floor(freq = 'D' ) |
Output :
As we can see in the output, the Timestamp.floor()
function has floored the time series frequency of the given Timestamp object to the input frequency.
Example #2: Use Timestamp.floor()
function to floor the given Timestamp object to minutely time series frequency.
# importing pandas as pd import pandas as pd # Create the Timestamp object ts = pd.Timestamp(year = 2009 , month = 5 , day = 31 , hour = 4 , second = 49 , tz = 'Europe/Berlin' ) # Print the Timestamp object print (ts) |
Output :
Now we will use the Timestamp.floor()
function to floor the ts object to minutely frequency.
# floor the given object to minutely frequency ts.floor(freq = 'T' ) |
Output :
As we can see in the output, the Timestamp.floor()
function has floored the time series frequency of the given Timestamp object to the input frequency.