This question already has an answer here:

I have a list of values. How can I replace all values in a Dataframe column not in the given list of values?

For example,

>>> df = pd.DataFrame(['D','ND','D','garbage'], columns=['S'])
>>> df
0    D
1    ND
2    D
3  garbage

>>> allowed_vals = ['D','ND']

I want to replace all values in the column S of the dataframe which are not in the list allowed_vals with 'None'. How can I do that?

marked as duplicate by Jim G., snakecharmerb, Matheus Lacerda, Kirby, Justin Bennett Sep 11 at 20:04

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • Replace them with what? – DSM Jan 19 '16 at 1:06
  • @DSM the string 'None' – banad Jan 19 '16 at 1:09
  • 1
    I'm voting to close this question as off-topic because the question is asking for someone to write code for them rather than asking for help with a problem that they are having in their code. – Kirby Sep 11 at 19:50

You can use isin to check membership in allowed_list, ~ to negate that, and then .loc to modify the series in place:

>>> df.loc[~df["S"].isin(allowed_vals), "S"] = "None"
>>> df
0     D
1    ND
2     D
3  None


>>> df["S"].isin(allowed_vals)
0     True
1     True
2     True
3    False
Name: S, dtype: bool

If you want to modify the entire frame (not just the column S), you can make a frame-sized mask:

>>> df
         S   T
0        D   D
1       ND   A
2        D  ND
3  garbage   A
>>> df[~df.isin(allowed_vals)] = "None"
>>> df
      S     T
0     D     D
1    ND  None
2     D    ND
3  None  None

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