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
Python3
Now apply the
Python3 1==
Output :
If we look at the values in the dataframe, we can verify the result returned by the function. The function returned a pandas series object containing the index of maximum value in each column.
Example #2: Use
Python3
dataframe.idxmax() function returns index of first occurrence of maximum over requested axis. While finding the index of the maximum value across any index, all NA/null values are excluded.
Syntax: DataFrame.idxmax(axis=0, skipna=True) Parameters : axis : 0 or âindexâ for row-wise, 1 or âcolumnsâ for column-wise skipna : Exclude NA/null values. If an entire row/column is NA, the result will be NA Returns : idxmax : SeriesExample #1: Use
idxmax() function to function to find the index of the maximum value along the index axis.
# importing pandas as pd
import pandas as pd
# Creating the dataframe
df = pd.DataFrame({"A":[4, 5, 2, 6],
"B":[11, 2, 5, 8],
"C":[1, 8, 66, 4]})
# Print the dataframe
df
Now apply the idxmax() function along the index axis.
# applying idxmax() function.
df.idxmax(axis = 0)
If we look at the values in the dataframe, we can verify the result returned by the function. The function returned a pandas series object containing the index of maximum value in each column.
Example #2: Use idxmax() function to find the index of the maximum value along the column axis. The dataframe contains NA values.
# importing pandas as pd
import pandas as pd
# Creating the dataframe
df = pd.DataFrame({"A":[4, 5, 2, None],
"B":[11, 2, None, 8],
"C":[1, 8, 66, 4]})
# Skipna = True will skip all the Na values
# find maximum along column axis
df.idxmax(axis = 1, skipna = True)
Output :
The output is a pandas series containing the column label for each row which has the maximum value.
The output is a pandas series containing the column label for each row which has the maximum value.