I have a DataFrame, and I want to replace the values in a particular column that exceed a value with zero. I had thought this was a way of achieving this:

df[df.my_channel > 20000].my_channel = 0

If I copy the channel into a new data frame it's simple:

df2 = df.my_channel 

df2[df2 > 20000] = 0

This does exactly what I want, but seems not to work with the channel as part of the original DataFrame.

  • Found what I think you were looking for here. – feetwet Jan 5 '17 at 20:21

.ix indexer works okay for pandas version prior to 0.20.0, but since pandas 0.20.0, the .ix indexer is deprecated, so you should avoid using it. Instead, you can use .loc or iloc indexers. You can solve this problem by:

mask = df.my_channel > 20000
column_name = 'my_channel'
df.loc[mask, column_name] = 0

Or, in one line,

df.loc[df.my_channel > 20000, 'my_channel'] = 0

mask helps you to select the rows in which df.my_channel > 20000 is True, while df.loc[mask, column_name] = 0 sets the value 0 to the selected rows where maskholds in the column which name is column_name.

Update: In this case, you should use loc because if you use iloc, you will get a NotImplementedError telling you that iLocation based boolean indexing on an integer type is not available.



df.loc[df.my_channel > 20000, 'my_channel'] = 0

Note: Since v0.20.0, ix has been deprecated in favour of loc / iloc.

  • 8
    Thank you. I found my own solution too, which was: df.my_channel[df.my_channel >20000] = 0 – BMichell Feb 6 '14 at 16:40
  • 2
    @BMichell I think your solution might start giving you warnings in 0.13, didn't have a chance to try yet – lowtech Feb 6 '14 at 19:14
  • yield error: /opt/anaconda3/envs/python35/lib/python3.5/site-packages/ipykernel_launcher.py:1: SettingWithCopyWarning: A value is trying to be set on a copy of a slice from a DataFrame See the caveats in the documentation: pandas.pydata.org/pandas-docs/stable/… """Entry point for launching an IPython kernel. – Rutger Hofste Oct 10 '17 at 15:25
  • @RutgerHofste thanks for mentioning that, yet another argument never use Python3 – lowtech Oct 10 '17 at 15:29

np.where function works as follows:

df['X'] = np.where(df['Y']>=50, 'yes', 'no')

In your case you would want:

import numpy as np
df['my_channel'] = np.where(df.my_channel > 20000, 0, df.my_channel)

The reason your original dataframe does not update is because chained indexing may cause you to modify a copy rather than a view of your dataframe. The docs give this advice:

When setting values in a pandas object, care must be taken to avoid what is called chained indexing.

You have a few alternatives:-

loc + Boolean indexing

loc may be used for setting values and supports Boolean masks:

df.loc[df['my_channel'] > 20000, 'my_channel'] = 0

mask + Boolean indexing

You can assign to your series:

df['my_channel'] = df['my_channel'].mask(df['my_channel'] > 20000, 0)

Or you can update your series in place:

df['my_channel'].mask(df['my_channel'] > 20000, 0, inplace=True)

np.where + Boolean indexing

You can use NumPy by assigning your original series when your condition is not satisfied; however, the first two solutions are cleaner since they explicitly change only specified values.

df['my_channel'] = np.where(df['my_channel'] > 20000, 0, df['my_channel'])

I would use lambda function on a Series of a DataFrame like this:

f = lambda x: 0 if x>100 else 1
df['my_column'] = df['my_column'].map(f)

I do not assert that this is an efficient way, but it works fine.

  • 4
    This is inefficient and not recommended as it involves a Python-level loop in a row-wise operation. – jpp Nov 10 '18 at 4:49
  • Thank you, I guess we can use loc here, like df.loc[: , 'my_column'] = df['my_column'].map(f) . I do not know if it is fast like the ones you added below. – Ozkan Serttas Nov 10 '18 at 4:56
  • 2
    Nope, still slow as you are still operating row-wise rather than column-wise. – jpp Nov 10 '18 at 5:00

Try this:

df.my_channel = df.my_channel.where(df.my_channel <= 20000, other= 0)


df.my_channel = df.my_channel.mask(df.my_channel > 20000, other= 0)

Not the answer you're looking for? Browse other questions tagged or ask your own question.