72

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?

Thanks!

0
146
df.insert(0, 'New_ID', range(880, 880 + len(df)))
df

enter image description here

3
  • 1
    The first parameter, loc, is the Insertion index that is 0 <= loc <= len(columns).
    – Zahra
    Oct 26 '20 at 21:25
  • 2
    Note: this modifies the dataframe in-place, i.e., don't reassign your df df = df.insert(.....)
    – momo
    Jun 3 at 15:40
  • @momo absolutely. Thanks for pointing that out.
    – piRSquared
    Jun 3 at 18:39
67

Here:

df = df.reset_index()
df = df.rename(columns={"index":"New_ID"})
df['New_ID'] = df.index + 880
3
  • Great solution, but it does not insert the New_ID column in the beginning of the dataframe.
    – MEhsan
    Aug 10 '16 at 1:37
  • 9
    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 '16 at 1:46
  • This is assuming the index is a range index.
    – Gulzar
    Mar 24 at 21:58
26

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 '20 at 22:00
9
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
3

I used the follow code:

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

So my "id" columns is:

1, 2, 3, ...

1
import numpy as np

df['New_ID']=np.arange(880,880+len(df.Fruit))
df=df.reindex(columns=['New_ID','ID','Fruit'])
1

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

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