I have this simplified dataframe:

ID   Fruit
F1   Apple
F2   Orange
F3   Banana 

I want to add in the begining of the dataframe a new column df['New_ID'] which has the number 880 that increments by one in each row.

The output should be simply like:

New_ID   ID   Fruit
880      F1   Apple
881      F2   Orange
882      F3   Banana  

I tried the following:

df['New_ID'] = ["880"] # but I want to do this without assigning it the list of numbers literally

Any idea how to solve this?



8 Answers 8

df.insert(0, 'New_ID', range(880, 880 + len(df)))

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  • 2
    The first parameter, loc, is the Insertion index that is 0 <= loc <= len(columns).
    – Zahra
    Oct 26, 2020 at 21:25
  • 6
    Note: this modifies the dataframe in-place, i.e., don't reassign your df df = df.insert(.....)
    – momo
    Jun 3, 2021 at 15:40
  • 1
    @piRSquared how can I increment by float number? I need to add a "Time" column that adds 0.002 after each row starting at 0.
    – mpvalenc
    Nov 15, 2021 at 18:46


df = df.reset_index()
df = df.rename(columns={"index":"New_ID"})
df['New_ID'] = df.index + 880
  • Great solution, but it does not insert the New_ID column in the beginning of the dataframe.
    – MEhsan
    Aug 10, 2016 at 1:37
  • 11
    Or do what piRSquared says, his answer is better. I should have thought of that, but I was manipulating indexes when you asked your question, and I guess I sat in the groove.
    – Kartik
    Aug 10, 2016 at 1:46
  • This is assuming the index is a range index.
    – Gulzar
    Mar 24, 2021 at 21:58

You can also simply set your pandas column as list of id values with length same as of dataframe.

df['New_ID'] = range(880, 880+len(df))

Reference docs : https://pandas.pydata.org/pandas-docs/stable/missing_data.html

  • 1
    This would be the best/easiest solution if it actually put the new ID column in the first position, but from what I can tell this puts it into the last position, not what OP asked for. For the issue that brought me here I don't need that, so this is the simplest solution. Thanks! Dec 10, 2020 at 22:00
df = df.assign(New_ID=[880 + i for i in xrange(len(df))])[['New_ID'] + df.columns.tolist()]

>>> df
   New_ID  ID   Fruit
0     880  F1   Apple
1     881  F2  Orange
2     882  F3  Banana

I used the follow code:

df.insert(0, 'id', range(1, 1 + len(df)))

So my "id" columns is:

1, 2, 3, ...


For a pandas DataFrame whose index starts at 0 and increments by 1 (i.e., the default values) you can just do:

df.insert(0, 'New_ID', df.index + 880)

if you want New_ID to be the first column. Otherwise this if you don't mind it being at the end:

df['New_ID'] = df.index + 880
import numpy as np


If you have a long, chained expression, and you want to add a column with incrementing values, but you don't know the length of the dataframe (due to some of the chained expressions being groups or aggregations) you can also accomplish this by using assign() and a lambda

df.assign(New_ID = lambda x: range(880, 880 + len(x))

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