Pandas series is a One-dimensional ndarray with axis labels. The labels need not be unique but must be a hashable type. The object supports both integer- and label-based indexing and provides a host of methods for performing operations involving the index.
Pandas Series.apply()
function invoke the passed function on each element of the given series object.
Syntax: Series.apply(func, convert_dtype=True, args=(), **kwds)
Parameter :
func : Python function or NumPy ufunc to apply.
convert_dtype : Try to find better dtype for elementwise function results.
args : Positional arguments passed to func after the series value.
**kwds : Additional keyword arguments passed to func.Returns : Series
Example #1: Use Series.apply()
function to change the city name to ‘Montreal’ if the city is ‘Rio’.
# importing pandas as pd import pandas as pd # Creating the Series sr = pd.Series([ 'New York' , 'Chicago' , 'Toronto' , 'Lisbon' , 'Rio' ]) # Create the Index index_ = [ 'City 1' , 'City 2' , 'City 3' , 'City 4' , 'City 5' ] # set the index sr.index = index_ # Print the series print (sr) |
Output :
City 1 New York City 2 Chicago City 3 Toronto City 4 Lisbon City 5 Rio dtype: object
Now we will use Series.apply()
function to change the city name to ‘Montreal’ if the city is ‘Rio’.
# change 'Rio' to 'Montreal' # we have used a lambda function result = sr. apply ( lambda x : 'Montreal' if x = = 'Rio' else x ) # Print the result print (result) |
Output :
City 1 New York City 2 Chicago City 3 Toronto City 4 Lisbon City 5 Montreal dtype: object
As we can see in the output, the Series.apply()
function has successfully changed the name of the city to ‘Montreal’.
Example #2 : Use Series.apply()
function to return True if the value in the given series object is greater than 30 else return False.
# importing pandas as pd import pandas as pd # Creating the Series sr = pd.Series([ 11 , 21 , 8 , 18 , 65 , 18 , 32 , 10 , 5 , 32 , None ]) # Create the Index # apply yearly frequency index_ = pd.date_range( '2010-10-09 08:45' , periods = 11 , freq = 'Y' ) # set the index sr.index = index_ # Print the series print (sr) |
Output :
2010-12-31 08:45:00 11.0 2011-12-31 08:45:00 21.0 2012-12-31 08:45:00 8.0 2013-12-31 08:45:00 18.0 2014-12-31 08:45:00 65.0 2015-12-31 08:45:00 18.0 2016-12-31 08:45:00 32.0 2017-12-31 08:45:00 10.0 2018-12-31 08:45:00 5.0 2019-12-31 08:45:00 32.0 2020-12-31 08:45:00 NaN Freq: A-DEC, dtype: float64
Now we will use Series.apply()
function to return True if a value in the given series object is greater than 30 else return False.
# return True if greater than 30 # else return False result = sr. apply ( lambda x : True if x> 30 else False ) # Print the result print (result) |
Output :
2010-12-31 08:45:00 False 2011-12-31 08:45:00 False 2012-12-31 08:45:00 False 2013-12-31 08:45:00 False 2014-12-31 08:45:00 True 2015-12-31 08:45:00 False 2016-12-31 08:45:00 True 2017-12-31 08:45:00 False 2018-12-31 08:45:00 False 2019-12-31 08:45:00 True 2020-12-31 08:45:00 False Freq: A-DEC, dtype: bool
As we can see in the output, the Series.apply()
function has successfully returned the numpy array representation of the given series object.