79

I have a question similar to this and this. The difference is that I have to select row by position, as I do not know the index.

I want to do something like df.iloc[0, 'COL_NAME'] = x, but iloc does not allow this kind of access. If I do df.iloc[0]['COL_NAME'] = x the warning about chained indexing appears.

1
  • what version of python and pandas are you using? I'm not getting a 'chained indexing' warning on PY3.4.2 with pandas 0.16.1. Is there anything special about how you construct the dataframe?
    – GG_Python
    Jul 22, 2015 at 17:02

8 Answers 8

143

For mixed position and index, use .ix. BUT you need to make sure that your index is not of integer, otherwise it will cause confusions.

df.ix[0, 'COL_NAME'] = x

Update:

Alternatively, try

df.iloc[0, df.columns.get_loc('COL_NAME')] = x

Example:

import pandas as pd
import numpy as np

# your data
# ========================
np.random.seed(0)
df = pd.DataFrame(np.random.randn(10, 2), columns=['col1', 'col2'], index=np.random.randint(1,100,10)).sort_index()

print(df)


      col1    col2
10  1.7641  0.4002
24  0.1440  1.4543
29  0.3131 -0.8541
32  0.9501 -0.1514
33  1.8676 -0.9773
36  0.7610  0.1217
56  1.4941 -0.2052
58  0.9787  2.2409
75 -0.1032  0.4106
76  0.4439  0.3337

# .iloc with get_loc
# ===================================
df.iloc[0, df.columns.get_loc('col2')] = 100

df

      col1      col2
10  1.7641  100.0000
24  0.1440    1.4543
29  0.3131   -0.8541
32  0.9501   -0.1514
33  1.8676   -0.9773
36  0.7610    0.1217
56  1.4941   -0.2052
58  0.9787    2.2409
75 -0.1032    0.4106
76  0.4439    0.3337
6
  • My index is the result of some selection, and it is composed of not correlative integers:eg, [3,24, 34] ix[0] throws an error.
    – luna1999
    Jul 22, 2015 at 17:16
  • @luna1999 Then maybe try reset_index first so that you can use df.loc[0, 'COL_NAME'], which causes no confusion.
    – Jianxun Li
    Jul 22, 2015 at 17:17
  • 1
    @luna1999 I've updated my code using df.columns.get_loc, and it should work for you. Let me know if this is not the case.
    – Jianxun Li
    Jul 22, 2015 at 17:24
  • @luna1999 You are most welcome. Glad that it helped. :-)
    – Jianxun Li
    Jul 22, 2015 at 17:28
  • 1
    @JianxunLi thanks for the .iloc tip. However, I am puzzled about a thing (correct me if I am wrong): if df.iloc[4:7] = x returns a copy df with values [4:7] set to x, why df.iloc[4:7,df.columns.get_loc("C")] = x is setting to x to the original df? Feb 17, 2017 at 11:15
48

One thing I would add here is that the at function on a dataframe is much faster particularly if you are doing a lot of assignments of individual (not slice) values.

df.at[index, 'col_name'] = x

In my experience I have gotten a 20x speedup. Here is a write up that is Spanish but still gives an impression of what's going on.

17

If you know the position, why not just get the index from that?

Then use .loc:

df.loc[index, 'COL_NAME'] = x
2
  • 14
    df.loc is for label-based indexing, not for position-based indexing. You may be referring to doing something like df.loc[df.index[0], 'COL_NAME'] = x
    – noe
    Oct 7, 2016 at 12:03
  • An example would be nice. You may copy gist.githubusercontent.com/MartinThoma/… Oct 19, 2017 at 12:21
9

You can use:

df.set_value('Row_index', 'Column_name', value)

set_value is ~100 times faster than .ix method. It also better then use df['Row_index']['Column_name'] = value.

But since set_value is deprecated now so .iat/.at are good replacements.

For example if we have this data_frame

   A   B   C
0  1   8   4 
1  3   9   6
2  22 33  52

if we want to modify the value of the cell [0,"A"] we can do

df.iat[0,0] = 2

or df.at[0,'A'] = 2

2
  • 2
    I mentioned that set_value is deprecated be carefull and read the answer well before decide to downvote blindly Dec 12, 2020 at 1:06
  • It has been seiad in this line => But since set_value is deprecated now so .iat/.at are good replacements. May 21, 2021 at 15:31
6

another way is, you assign a column value for a given row based on the index position of a row, the index position always starts with zero, and the last index position is the length of the dataframe:

df["COL_NAME"].iloc[0]=x
2
5

To modify the value in a cell at the intersection of row "r" (in column "A") and column "C"

  1. retrieve the index of the row "r" in column "A"

        i = df[ df['A']=='r' ].index.values[0]
    
  2. modify the value in the desired column "C"

        df.loc[i,"C"]="newValue"
    

Note: before, be sure to reset the index of rows ...to have a nice index list!

        df=df.reset_index(drop=True)
3

Another way is to get the row index and then use df.loc or df.at.

# get row index 'label' from row number 'irow'
label = df.index.values[irow] 
df.at[label, 'COL_NAME'] = x
1
  • This is the best solution when you want to set multiple rows to the same value
    – Riebeckite
    Nov 13, 2020 at 18:01
1

Extending Jianxun's answer, using set_value mehtod in pandas. It sets value for a column at given index.

From pandas documentations:

DataFrame.set_value(index, col, value)

To set value at particular index for a column, do:

df.set_value(index, 'COL_NAME', x)

Hope it helps.

1
  • set_value is depreciated. Better to us "at"
    – Sadhun
    Jul 24, 2019 at 10:58

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