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I only wanted to remove whitespace in my data, the whole dataframe.

import pandas as pd

fileName = 'home/filepath.xlsx'
df = pd.read_excel(fileName, sheet_name='october2018')

enter image description here

df = df.apply(lambda x: x.str.strip() if x.dtype == "object" else x)

enter image description here

The ID number in each row is a hyperlink, if it helps. Data in the entire column was wiped out leaving only the column name with NaN values, as shown above. In another column AppID, data e.g '123456' were also deleted. How can I strip whitespace in the whole dataframe without having to delete anything else?

Date             AppID      App Name    IDNumber   Decision
2018-10-01   com.android    myapp1      NaN         Approve
2018-10-01   com.android    myapp2      NaN         Approve
2018-10-01   com.android    myapp3      NaN         Approve
2018-10-01   com.android    myapp4      NaN         Approve
2018-10-01   NaN            iOSapp1     NaN         Approve
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  • What is your original df's dtypes?
    – Kevin Fang
    Oct 31, 2018 at 3:47
  • It may be difficult to diagnose this without having a sample df to work with. Unfortunately an image won't be much help in this case. Could you provide a minimal code example to set up a data frame that reproduces your issue? Oct 31, 2018 at 3:49
  • @KevinFang Date datetime64[ns] App ID object App Name object IDNumber object Decision object
    – user9347860
    Oct 31, 2018 at 4:08
  • @MadPhysicist There, I edited my post.
    – user9347860
    Oct 31, 2018 at 4:09

1 Answer 1

5

Instead of using x.str.strip(), try x.astype(str).str.strip()

You'd better make sure the dtype of column is string before using pandas string operation on it. object dtype can be heterogeneous.

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  • Bang! For the win! Thank you, it did exactly what I wanted.
    – user9347860
    Oct 31, 2018 at 4:27

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