Here is a summary of the valid solutions provided by all users, for data frames indexed by integer and string.
df.iloc
, df.loc
and df.at
work for both type of data frames, df.iloc
only works with row/column integer indices, df.loc
and df.at
supports for setting values using column names and/or integer indices.
When the specified index does not exist, both df.loc
and df.at
would append the newly inserted rows/columns to the existing data frame, but df.iloc
would raise "IndexError: positional indexers are out-of-bounds"
. A working example tested in Python 2.7 and 3.7 is as follows:
import numpy as np, pandas as pd
df1 = pd.DataFrame(index=np.arange(3), columns=['x','y','z'])
df1['x'] = ['A','B','C']
df1.at[2,'y'] = 400
# rows/columns specified does not exist, appends new rows/columns to existing data frame
df1.at['D','w'] = 9000
df1.loc['E','q'] = 499
# using df[<some_column_name>] == <condition> to retrieve target rows
df1.at[df1['x']=='B', 'y'] = 10000
df1.loc[df1['x']=='B', ['z','w']] = 10000
# using a list of index to setup values
df1.iloc[[1,2,4], 2] = 9999
df1.loc[[0,'D','E'],'w'] = 7500
df1.at[[0,2,"D"],'x'] = 10
df1.at[:, ['y', 'w']] = 8000
df1
>>> df1
x y z w q
0 10 8000 NaN 8000 NaN
1 B 8000 9999 8000 NaN
2 10 8000 9999 8000 NaN
D 10 8000 NaN 8000 NaN
E NaN 8000 9999 8000 499.0