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This question already has an answer here:

I have a dataframe like this:

df:

col1    col2
 1        4
 4       ab1
 5       1s,2
 6        5
 3        24
 5        xy

If col2 contains any character other than numbers drop those rows from the data frame.

The final dataframe will look like:

col1    col2
 1        4
 6        5
 3        24  

How to do it using pandas in effictive way ?

marked as duplicate by Indent, jezrael dataframe Jan 15 at 12:43

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.

  • df = df[df.id2.str.contains(r'^[0-9]$')] – meW Jan 15 at 12:44
  • df = df[df.col2.str.encode('utf-8').isna()] – shaik moeed Jan 15 at 13:05
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Try this

df=df[df.col2.apply(lambda x: x.isnumeric())]

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