I am getting a ValueError: cannot reindex from a duplicate axis when I am trying to set an index to a certain value. I tried to reproduce this with a simple example, but I could not do it.

Here is my session inside of ipdb trace. I have a DataFrame with string index, and integer columns, float values. However when I try to create sum index for sum of all columns I am getting ValueError: cannot reindex from a duplicate axis error. I created a small DataFrame with the same characteristics, but was not able to reproduce the problem, what could I be missing?

I don't really understand what ValueError: cannot reindex from a duplicate axismeans, what does this error message mean? Maybe this will help me diagnose the problem, and this is most answerable part of my question.

ipdb> type(affinity_matrix)
<class 'pandas.core.frame.DataFrame'>
ipdb> affinity_matrix.shape
(333, 10)
ipdb> affinity_matrix.columns
Int64Index([9315684, 9315597, 9316591, 9320520, 9321163, 9320615, 9321187, 9319487, 9319467, 9320484], dtype='int64')
ipdb> affinity_matrix.index
Index([u'001', u'002', u'003', u'004', u'005', u'008', u'009', u'010', u'011', u'014', u'015', u'016', u'018', u'020', u'021', u'022', u'024', u'025', u'026', u'027', u'028', u'029', u'030', u'032', u'033', u'034', u'035', u'036', u'039', u'040', u'041', u'042', u'043', u'044', u'045', u'047', u'047', u'048', u'050', u'053', u'054', u'055', u'056', u'057', u'058', u'059', u'060', u'061', u'062', u'063', u'065', u'067', u'068', u'069', u'070', u'071', u'072', u'073', u'074', u'075', u'076', u'077', u'078', u'080', u'082', u'083', u'084', u'085', u'086', u'089', u'090', u'091', u'092', u'093', u'094', u'095', u'096', u'097', u'098', u'100', u'101', u'103', u'104', u'105', u'106', u'107', u'108', u'109', u'110', u'111', u'112', u'113', u'114', u'115', u'116', u'117', u'118', u'119', u'121', u'122', ...], dtype='object')

ipdb> affinity_matrix.values.dtype
ipdb> 'sums' in affinity_matrix.index

Here is the error:

ipdb> affinity_matrix.loc['sums'] = affinity_matrix.sum(axis=0)
*** ValueError: cannot reindex from a duplicate axis

I tried to reproduce this with a simple example, but I failed

In [32]: import pandas as pd

In [33]: import numpy as np

In [34]: a = np.arange(35).reshape(5,7)

In [35]: df = pd.DataFrame(a, ['x', 'y', 'u', 'z', 'w'], range(10, 17))

In [36]: df.values.dtype
Out[36]: dtype('int64')

In [37]: df.loc['sums'] = df.sum(axis=0)

In [38]: df
      10  11  12  13  14  15   16
x      0   1   2   3   4   5    6
y      7   8   9  10  11  12   13
u     14  15  16  17  18  19   20
z     21  22  23  24  25  26   27
w     28  29  30  31  32  33   34
sums  70  75  80  85  90  95  100
  • 1
    Is there any chance that you obfuscated the real column names of your affinity matrix? (i.e. replaced the real values with something else to hide sensitive information)
    – tktk
    Dec 1, 2014 at 20:12
  • @Korem, I don't think this is true, but even if this is true, why would this cause the above error?
    – Akavall
    Dec 1, 2014 at 21:10
  • 6
    I usually see this when the index assigned to has duplicate values. Since in your case you're assigning a row, I expected a duplicate in the column names. That's why I asked.
    – tktk
    Dec 1, 2014 at 21:11
  • @Korem, Indeed my actual data had duplicate index values, and I was able to reproduce the error in the small example when duplicate index values were present. You fully answered my question. Thank You. Do you mind putting it as an answer?
    – Akavall
    Dec 1, 2014 at 21:17
  • If you are trying to assing , merge etc and getting this error a reset index will do df = df.assign(y=df2["y"].reset_index(drop=True)) Apr 28, 2022 at 12:08

18 Answers 18


This error usually rises when you join / assign to a column when the index has duplicate values. Since you are assigning to a row, I suspect that there is a duplicate value in affinity_matrix.columns, perhaps not shown in your question.

  • 28
    To be more accurate, in my case a duplicate value was in affinity_matrix.index, but I think this is the same concept.
    – Akavall
    Dec 2, 2014 at 6:36
  • 64
    For those who come to this later, index means both row and column names, spent 20 minutes on row index but turned out I got duplicated column names that caused this error.
    – Jia Gao
    Oct 6, 2018 at 18:29
  • To add to this, I came across this error when I tried to reindex a dataframe on a list of columns. Oddly enough, my duplicate was in my original dataframe, so be sure to check both!
    – n8-da-gr8
    Nov 6, 2019 at 11:33
  • Thanks @JasonGoal, I had duplicates in index itself. Dropped on index source (before building DF) with drop_duplicates.
    – Denis
    Dec 27, 2021 at 22:36
  • 2
    I came across this error because I appended dataframes together, then tried copying one column after modifying the others. The solution was to reset_index(drop=True) after appending the dataframes.
    – DarkHark
    Jan 12, 2023 at 16:31

As others have said, you've probably got duplicate values in your original index. To find them do this:


  • 77
    To remove rows with duplicated indices, use: df = df[~df.index.duplicated()]
    – tuomastik
    Mar 31, 2018 at 18:59
  • 4
    For DatetimeIndexed dataframes, you can resample to the desired frequency and then take .first(), .mean(), etc. May 16, 2018 at 14:17
  • Better way to drop duplicates
    – Gulzar
    Jun 29, 2021 at 8:44
  • @tuomastik In the current version of pandas, there is df = df.loc[df.index.unique()]. Does is it do the same thing?
    – Dr_Zaszuś
    Mar 25, 2022 at 15:17

Indices with duplicate values often arise if you create a DataFrame by concatenating other DataFrames. IF you don't care about preserving the values of your index, and you want them to be unique values, when you concatenate the the data, set ignore_index=True.

Alternatively, to overwrite your current index with a new one, instead of using df.reindex(), set:

df.index = new_index
  • 18
    I used ignore_index=True to get my code to work with concatenated dataframes
    – Kessem Lee
    Jul 8, 2018 at 11:25
  • 2
    Indeed, ignore_index=False is the default; if using the option is to change append's behavior at all, it will have to be because you set it to True. Jun 20, 2019 at 20:06
  • I spent 10 hours trying to figure out my error and your answer helped me. I was concatenating two dataframes and looking to the df.tail() to see the last index. The fact is that the index was duplicating.
    – Isac Moura
    Jun 25, 2020 at 22:32
  • 1
    I think this should be the accepted answer as it not only provides a reason for the error but also a workable solution.
    – Jio
    Apr 20, 2021 at 8:25
  • 9
    what is new_index ?
    – dcsan
    Jun 5, 2021 at 8:17

Simple Fix

Run this before grouping

df = df.reset_index()

Thanks to this github comment for the solution.


For people who are still struggling with this error, it can also happen if you accidentally create a duplicate column with the same name. Remove duplicate columns like so:

df = df.loc[:,~df.columns.duplicated()]
  • 3
    Above will delete all columns with duplicates, to keep one column use the keep parameter: df.loc[:,~df.columns.duplicated(keep='first')] pandas.pydata.org/pandas-docs/stable/reference/api/…
    – closedloop
    Feb 4, 2021 at 12:01
  • 1
    Thank you...That was helpful for me today. Mar 10, 2021 at 5:44
  • keep='first' or 'last' does not delete all duplicated values! It keeps one (depending on what you have specified in keep) and deletes the rest. To delete all duplications, you should use keep='False'
    – Phoenix
    Jun 16, 2022 at 20:56

Simply skip the error using .values at the end.

affinity_matrix.loc['sums'] = affinity_matrix.sum(axis=0).values
  • 1
    This is exactly what I needed! Just trying to create a new column, but I had a index with duplicates in it. Using .values did the trick Jan 2, 2020 at 22:03
  • 1
    Finally, I found the only answer which actually works! The other answers state the problem but don't give an actual answer as to how to fix it.
    – Lecdi
    Apr 12, 2022 at 19:15

I came across this error today when I wanted to add a new column like this

df_temp['REMARK_TYPE'] = df.REMARK.apply(lambda v: 1 if str(v)!='nan' else 0)

I wanted to process the REMARK column of df_temp to return 1 or 0. However I typed wrong variable with df. And it returned error like this:

----> 1 df_temp['REMARK_TYPE'] = df.REMARK.apply(lambda v: 1 if str(v)!='nan' else 0)

/usr/lib64/python2.7/site-packages/pandas/core/frame.pyc in __setitem__(self, key, value)
   2417         else:
   2418             # set column
-> 2419             self._set_item(key, value)
   2421     def _setitem_slice(self, key, value):

/usr/lib64/python2.7/site-packages/pandas/core/frame.pyc in _set_item(self, key, value)
   2484         self._ensure_valid_index(value)
-> 2485         value = self._sanitize_column(key, value)
   2486         NDFrame._set_item(self, key, value)

/usr/lib64/python2.7/site-packages/pandas/core/frame.pyc in _sanitize_column(self, key, value, broadcast)
   2634         if isinstance(value, Series):
-> 2635             value = reindexer(value)
   2637         elif isinstance(value, DataFrame):

/usr/lib64/python2.7/site-packages/pandas/core/frame.pyc in reindexer(value)
   2625                     # duplicate axis
   2626                     if not value.index.is_unique:
-> 2627                         raise e
   2629                     # other

ValueError: cannot reindex from a duplicate axis

As you can see it, the right code should be

df_temp['REMARK_TYPE'] = df_temp.REMARK.apply(lambda v: 1 if str(v)!='nan' else 0)

Because df and df_temp have a different number of rows. So it returned ValueError: cannot reindex from a duplicate axis.

Hope you can understand it and my answer can help other people to debug their code.


In my case, this error popped up not because of duplicate values, but because I attempted to join a shorter Series to a Dataframe: both had the same index, but the Series had fewer rows (missing the top few). The following worked for my purposes:

2018-04-03 13:54:47.274   -0.45
2018-04-03 13:55:46.484   -0.42
2018-04-03 13:56:56.235   -0.37
2018-04-03 13:57:57.207   -0.34
2018-04-03 13:59:34.636   -0.33

2018-04-03 14:09:36.577    62.2
2018-04-03 14:10:28.138    63.5
2018-04-03 14:11:27.400    63.1
2018-04-03 14:12:39.623    62.6
2018-04-03 14:13:27.310    62.5
Name: SensA_rrT, dtype: float64

df = series.to_frame().combine_first(df)

                          SensA  SensA_rrT
2018-04-03 13:54:47.274   -0.45        NaN
2018-04-03 13:55:46.484   -0.42        NaN
2018-04-03 13:56:56.235   -0.37        NaN
2018-04-03 13:57:57.207   -0.34        NaN
2018-04-03 13:59:34.636   -0.33        NaN
2018-04-03 14:00:34.565   -0.33        NaN
2018-04-03 14:01:19.994   -0.37        NaN
2018-04-03 14:02:29.636   -0.34        NaN
2018-04-03 14:03:31.599   -0.32        NaN
2018-04-03 14:04:30.779   -0.33        NaN
2018-04-03 14:05:31.733   -0.35        NaN
2018-04-03 14:06:33.290   -0.38        NaN
2018-04-03 14:07:37.459   -0.39        NaN
2018-04-03 14:08:36.361   -0.36        NaN
2018-04-03 14:09:36.577   -0.37       62.2
  • Thank you! I had become accustomed to filtering and later merging DataFrames and Series' like so: df_larger_dataframe['values'] = df_filtered_dataframe['filtered_values'] and it hasn't been working lately on TimeSeries - your code solved it!
    – tw0000
    Jun 26, 2018 at 16:48

I wasted couple of hours on the same issue. In my case, I had to reset_index() of a dataframe before using apply function. Before merging, or looking up from another indexed dataset, you need to reset the index as 1 dataset can have only 1 Index.


I got this error when I tried adding a column from a different table. Indeed I got duplicate index values along the way. But it turned out I was just doing it wrong: I actually needed to df.join the other table.

This pointer might help someone in a similar situation.

  • Thank you! I was having a hard time trying to add a column as you mentioned from the same table, but with different row/column combinations. I realized the index was duplicated but just wanted that to be ignored in appending a new column... your answer made me realize df.join was the way to go.
    – El-
    Mar 17, 2021 at 14:12

Just add .to_numpy() to the end of the series you want to concatenate.

  • 1
    Your answer could be improved with additional supporting information. Please edit to add further details, such as citations or documentation, so that others can confirm that your answer is correct. You can find more information on how to write good answers in the help center.
    – Community Bot
    Dec 31, 2021 at 8:57

In my case it was caused by mismatch in dimensions:

accidentally using a column from different df during the mul operation


Make sure your index does not have any duplicates, I simply did df.reset_index(drop=True, inplace=True) and I don't get the error anymore! But you might want to keep the index, in that case just set drop to False


df = df.reset_index(drop=True) worked for me

  • 3
    Please, consider adding some explanation. Code-only answer are discouraged. Why it works? How is it different from some of the already upvoted 8 years-old answers?
    – chrslg
    Dec 7, 2022 at 11:53

I was trying to create a histogram using seaborn.

sns.histplot(data=df, x='Blood Chemistry 1', hue='Outcome', discrete=False, multiple='stack')

I get ValueError: cannot reindex from a duplicate axis. To solve it, I had to choose only the rows where x has no missing values:

data = df[~df['Blood Chemistry 1'].isnull()]

This can also be a cause for this[:) I solved my problem like this]

It may happen even if you are trying to insert a dataframe type column inside dataframe

you can try this


if you get this error after merging two dataframe and remove suffix adnd try to write to excel Your problem is that there are columns you are not merging on that are common to both source DataFrames. Pandas needs a way to say which one came from where, so it adds the suffixes, the defaults being '_x' on the left and '_y' on the right.

If you have a preference on which source data frame to keep the columns from, then you can set the suffixes and filter accordingly, for example if you want to keep the clashing columns from the left:

# Label the two sides, with no suffix on the side you want to keep
df = pd.merge(
    on=['myid', 'myorder'], 
    suffixes=('', '_delete_suffix')  # Left gets no suffix, right gets something identifiable
# Discard the columns that acquired a suffix
df = df[[c for c in df.columns if not c.endswith('_delete_suffix')]]

Alternatively, you can drop one of each of the clashing columns prior to merging, then Pandas has no need to assign a suffix.


It happened to me when I appended 2 dataframes into another (df3 = df1.append(df2)), so the output was:

    A   B
0   1   a
1   2   b
2   3   c

    A   B
0   4   d
1   5   e
2   6   f

    A   B
0   1   a
1   2   b
2   3   c
0   4   d
1   5   e
2   6   f

The simplest way to fix the indexes is using the "df.reset_index(drop=bool, inplace=bool)" method, as Connor said... you can also set the 'drop' argument True to avoid the index list to be created as a columns, and 'inplace' to True to make the indexes reset permanent.

Here is the official refference: https://pandas.pydata.org/docs/reference/api/pandas.DataFrame.reset_index.html

In addition, you can also use the ".set_index(keys=list, inplace=bool)" method, like this:

new_index_list = list(range(0, len(df3)))
df3['new_index'] = new_index_list 
df3.set_index(keys='new_index', inplace=True)

official refference: https://pandas.pydata.org/docs/reference/api/pandas.DataFrame.set_index.html

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