I have a dataset name rssfeeds which as � � � , how to remove this unicodes and replace with its original values

my dataset:- enter image description here

please help me guys

  • Yeah i think it's pandas.remove_unicode("weird symbol that looks like ? mark"), but i might be wrong. Welcome to Stack Overflow- Please provide a Minimal, Complete, and Verifiable example – Yang K Nov 16 '18 at 4:19
  • These look like UTF-8 encoded “fancy-quotes” and apostrophes to me. Can you edit the question to include the code to read this data. – Kingsley Nov 16 '18 at 4:22
  • Please see the Stack Overflow character-encoding tag info page for information about how to diagnose and ask questions about unknown character codes. – tripleee Nov 16 '18 at 5:47

You can use Series.str.decode() on the columns with the offending encoding, but I don't prefer this method if your can reread the data and have direct access to it.

You can use the encoding='utf-8' argument when you read the data and Pandas will try to work it out for you. Something like this assuming your data is in a csv and is UTF-8 encoded:

df = pd.read_csv("yourfile.csv", encoding="utf-8")

Edit: you noted that your data is imported from a db, and pandas.read_sql does not have the encoding arg. As such I would suggest using my first suggestion, Series.str.decode(). You would use it like this on a column:

df["column_name"] = df["column_name"].str.decode("encoding_name")

If you encounter errors you can pass a kwarg errors, the default is strict but you can also ignore.

df["column_name"] = df["column_name"].str.decode("encoding_name", errors="policy")

  • I am importing it from mongodb so how can I use this – Rahul Varma Nov 16 '18 at 4:47
  • @RahulVarma I added an edit to address this. If the response addressed your original question then mark it as answered. – Charles Landau Nov 16 '18 at 4:54
  • try his :- df.replace(['\d+', r'(?u)[^\w\s\?]+', '\s*$'], ['','',''], regex=True) – Rahul Varma Nov 21 '18 at 10:29

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