I have a data frame in python/pyspark with columns id time city zip and so on......

Now I added a new column name to this data frame.

Now I have to arrange the columns in such a way that the name column comes after id

I have done like below

change_cols = ['id', 'name']

cols = ([col for col in change_cols if col in df] 
        + [col for col in df if col not in change_cols])

df = df[cols]

I am getting this error

pyspark.sql.utils.AnalysisException: u"Reference 'id' is ambiguous, could be: id#609, id#1224.;"

Why is this error occuring. How can I rectify this.

3 Answers 3


You can use select to change the order of the columns:

  • 9
    df.select(["id", "name", "time", "city"]) also works.
    – Powers
    Dec 2, 2017 at 19:37

If you're working with a large number of columns:


If you just want to reorder some of them, while keeping the rest and not bothering about their order :

def get_cols_to_front(df, columns_to_front) :
    original = df.columns
    # Filter to present columns
    columns_to_front = [c for c in columns_to_front if c in original]
    # Keep the rest of the columns and sort it for consistency
    columns_other = list(set(original) - set(columns_to_front))
    # Apply the order
    df = df.select(*columns_to_front, *columns_other)

    return df
  • There is a typo, should be 'columns_other = list(set(original) - set(columns_to_front))'. Nice solution!
    – Pengshe
    Jul 5 at 10:41
  • Corrected. Thank you for spotting :)
    – ZettaP
    Jul 5 at 11:01

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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