I have a pandas data frame that looks like this (its a pretty big one)

           date      exer exp     ifor         mat  
1092  2014-03-17  American   M  528.205  2014-04-19 
1093  2014-03-17  American   M  528.205  2014-04-19 
1094  2014-03-17  American   M  528.205  2014-04-19 
1095  2014-03-17  American   M  528.205  2014-04-19    
1096  2014-03-17  American   M  528.205  2014-05-17 

now I would like to iterate row by row and as I go through each row, the value of ifor in each row can change depending on some conditions and I need to lookup another dataframe.

Now, how do I update this as I iterate. Tried a few things none of them worked.

for i, row in df.iterrows():
    if <something>:
        row['ifor'] = x
        row['ifor'] = y

    df.ix[i]['ifor'] = x

None of these approaches seem to work. I don't see the values updated in the dataframe.

  • 2
    I think you want df.ix[i,'ifor']. df.ix[i]['ifor'] is problematic because it is chained indexing (which isn't reliable in pandas).
    – Karl D.
    Apr 28, 2014 at 0:28
  • 1
    Can you provide the other frame as well as the <something>. Whether your code can be vectorized will depend on those things. In general, avoid iterrows. In your case, you should definitely avoid it since each row will be an object dtype Series. Apr 28, 2014 at 2:23
  • You would be better off creating a boolean mask for your condition, update all those rows and then set the rest to the other value
    – EdChum
    Apr 28, 2014 at 8:33
  • 1
    Please do not use iterrows(). It is a blatant enabler of the worst anti-pattern in the history of pandas. Jun 9, 2019 at 3:52

9 Answers 9


You can use df.at:

for i, row in df.iterrows():
    ifor_val = something
    if <condition>:
        ifor_val = something_else
    df.at[i,'ifor'] = ifor_val

For versions before 0.21.0, use df.set_value:

for i, row in df.iterrows():
    ifor_val = something
    if <condition>:
        ifor_val = something_else

If you don't need the row values you could simply iterate over the indices of df, but I kept the original for-loop in case you need the row value for something not shown here.

  • 14
    See pandas.pydata.org/pandas-docs/stable/generated/…, second bullet: "2.You should never modify something you are iterating over" May 11, 2016 at 9:13
  • 53
    I'm not sure if we read it exactly the same. If you look in my pseudo code I do the modification on the dataframe, not on the value from the iterator. The iterator value is only used for the index of the value/object. What will fail is row['ifor']=some_thing, for the reasons mentioned in the documentation.
    – rakke
    May 11, 2016 at 12:32
  • 17
    now set_value is also deprectated, and should use .at (or .iat), so my loop looks like this: for i, row in df.iterrows(): ifor_val = something if <condition>: ifor_val = something_else df.at[i,'ifor'] = ifor_val
    – complexM
    Feb 8, 2018 at 13:48
  • 4
    set_value is deprecated and will be removed in a future release. Please use .at[] or .iat[] accessors instead
    – RoyaumeIX
    Oct 29, 2018 at 3:37
  • 2
    This only works if the index is unique. Otherwise has really odd behavior
    – bscan
    Dec 24, 2018 at 18:29

Pandas DataFrame object should be thought of as a Series of Series. In other words, you should think of it in terms of columns. The reason why this is important is because when you use pd.DataFrame.iterrows you are iterating through rows as Series. But these are not the Series that the data frame is storing and so they are new Series that are created for you while you iterate. That implies that when you attempt to assign tho them, those edits won't end up reflected in the original data frame.

Ok, now that that is out of the way: What do we do?

Suggestions prior to this post include:

  1. pd.DataFrame.set_value is deprecated as of Pandas version 0.21
  2. pd.DataFrame.ix is deprecated
  3. pd.DataFrame.loc is fine but can work on array indexers and you can do better

My recommendation
Use pd.DataFrame.at

for i in df.index:
    if <something>:
        df.at[i, 'ifor'] = x
        df.at[i, 'ifor'] = y

You can even change this to:

for i in df.index:
    df.at[i, 'ifor'] = x if <something> else y

Response to comment

and what if I need to use the value of the previous row for the if condition?

for i in range(1, len(df) + 1):
    j = df.columns.get_loc('ifor')
    if <something>:
        df.iat[i - 1, j] = x
        df.iat[i - 1, j] = y
  • and what if I need to use the value of the previous row for the if condition? add a lagged column to the OG df?
    – Yuca
    Aug 8, 2018 at 18:55
  • efficiency wise, is your approach better vs adding a lagged column or is the effect negligible for small datasets? (< 10k rows)
    – Yuca
    Aug 8, 2018 at 18:55
  • That depends. I'd go for using a lagged column. This answer is showing what to do if you must loop. But if you don't have to loop, then don't.
    – piRSquared
    Aug 8, 2018 at 18:59
  • Got it, also if it's possible to have your feedback for stackoverflow.com/q/51753001/9754169 then it would be awesome :D
    – Yuca
    Aug 8, 2018 at 19:00
  • Nice for contrasting .at[] with the older alternatives
    – Justas
    Nov 27, 2018 at 19:14

A method you can use is itertuples(), it iterates over DataFrame rows as namedtuples, with index value as first element of the tuple. And it is much much faster compared with iterrows(). For itertuples(), each row contains its Index in the DataFrame, and you can use loc to set the value.

for row in df.itertuples():
    if <something>:
        df.at[row.Index, 'ifor'] = x
        df.at[row.Index, 'ifor'] = x

    df.loc[row.Index, 'ifor'] = x

Under most cases, itertuples() is faster than iat or at.

Thanks @SantiStSupery, using .at is much faster than loc.

  • 3
    Since you only point at a precise index, you may think of using .at instead of .loc to improve your performance. See this question for more info on this Jan 17, 2019 at 13:11
  • weird think but df.loc[row.Index, 3] = x does not work. On the other hand, df.loc[row.Index, 'ifor'] = x works !
    – seralouk
    Oct 22, 2019 at 13:26

It's better to use lambda functions using df.apply() -

df["ifor"] = df.apply(lambda x: {value} if {condition} else x["ifor"], axis=1)
  • 4
    this should be the new updated answer. the other ones seem to be from earlier in the decade. Who still uses for loops yikes
    – iqbal125
    Oct 28, 2020 at 1:00
  • 1
    And if the value you wish to add must change on a row-by-row basis, rather than over an entire column at once, how will the above work/be applied?
    – steve
    Feb 15, 2021 at 20:52
  • 2
    @steve that is operating on a row-by-row basis. x is the row (series). Lambda can be any function, so you can have arbitrarily complex behaviour there.
    – MrR
    May 14, 2021 at 11:18
  • @iqbal125 is right. This is a one-liner solution. It is okay to break a complex problem into a multiple-step solution, but that is the answer one needs. May 9, 2023 at 2:36

You should assign value by df.ix[i, 'exp']=X or df.loc[i, 'exp']=X instead of df.ix[i]['ifor'] = x.

Otherwise you are working on a view, and should get a warming:

-c:1: SettingWithCopyWarning: A value is trying to be set on a copy of a slice from a DataFrame. Try using .loc[row_index,col_indexer] = value instead

But certainly, loop probably should better be replaced by some vectorized algorithm to make the full use of DataFrame as @Phillip Cloud suggested.


Well, if you are going to iterate anyhow, why don't use the simplest method of all, df['Column'].values[i]

df['Column'] = ''

for i in range(len(df)):
    df['Column'].values[i] = something/update/new_value

Or if you want to compare the new values with old or anything like that, why not store it in a list and then append in the end.

mylist, df['Column'] = [], ''

for <condition>:

df['Column'] = mylist
for i, row in df.iterrows():
    if <something>:
        df.at[i, 'ifor'] = x
        df.at[i, 'ifor'] = y

List Comprehension could be an option.

df['new_column'] = [your_func(x) for x in df['column']]

This will iterate over the column df['column'] call the function your_func with the value from df['column'] and assign a value to the row in the new column df['new_column'].

Please, don't forget to create a function.


Increment the MAX number from a column. For Example :

df1 = [sort_ID, Column1,Column2]

My output :

Sort_ID Column1 Column2
12         a    e
45         b    f
65         c    g
78         d    h

MAX = df1['Sort_ID'].max() #This returns my Max Number 

Now , I need to create a column in df2 and fill the column values which increments the MAX .

Sort_ID Column1 Column2
79      a1       e1
80      b1       f1
81      c1       g1
82      d1       h1

Note : df2 will initially contain only the Column1 and Column2 . we need the Sortid column to be created and incremental of the MAX from df1 .

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