I have a initial dataframe D. I extract two data frames from it like this:

A = D[D.label == k]
B = D[D.label != k]

I want to combine A and B into one DataFrame. The order of the data is not important. However, when we sample A and B from D, they retain their indexes from D.

  • Does this answer your question? Pandas Merging 101 Nov 2, 2020 at 14:41
  • From pandas v1.4.1: The frame.append method is deprecated and will be removed from pandas in a future version. Use pandas.concat instead. Apr 28, 2022 at 17:06

9 Answers 9


DEPRECATED: DataFrame.append and Series.append were deprecated in v1.4.0.

Use append:

df_merged = df1.append(df2, ignore_index=True)

And to keep their indexes, set ignore_index=False.

  • 2
    This works. It creates a new DataFrame though. Is there a way to do it inline? That would be nice for when I'm loading huge amounts of data from a database in batches so I could iteratively update the DataFrame without creating a copy each time.
    – Andrew
    Nov 5, 2013 at 17:36
  • 1
    Yes, that's possible, see: stackoverflow.com/a/46661368/5717580 Oct 10, 2017 at 7:55
  • 8
    From pandas v1.4.1: The frame.append method is deprecated and will be removed from pandas in a future version. Use pandas.concat instead. Apr 28, 2022 at 17:06

Use pd.concat to join multiple dataframes:

df_merged = pd.concat([df1, df2], ignore_index=True, sort=False)
  • 2
    I want to use this, but I'm trying to concatenate two columns of the same name o_O Apr 1, 2020 at 2:13

Merge across rows:

df_row_merged = pd.concat([df_a, df_b], ignore_index=True)

Merge across columns:

df_col_merged = pd.concat([df_a, df_b], axis=1)

If you're working with big data and need to concatenate multiple datasets calling concat many times can get performance-intensive.

If you don't want to create a new df each time, you can instead aggregate the changes and call concat only once:

frames = [df_A, df_B]  # Or perform operations on the DFs
result = pd.concat(frames)

This is pointed out in the pandas docs under concatenating objects at the bottom of the section):

Note: It is worth noting however, that concat (and therefore append) makes a full copy of the data, and that constantly reusing this function can create a significant performance hit. If you need to use the operation over several datasets, use a list comprehension.

  • 2
    I think there should be pd.concat(frames) since pandas doesn't have append method.
    – My Work
    Jan 4, 2021 at 9:37
  • 3
    I don't fully undestand the list "comprehension" focus. What's important here is not calling append every time and hence gathering all the dataframes into a list first. Whether that list is established through a list comprehension or not is completely irrelevant.
    – MrR
    Apr 27, 2021 at 19:06
  • Thanks for the very relevant comments, I updated the answer to address them. May 14, 2021 at 7:55
  • what is the intended definition of the process_file(f) function? Sep 14, 2021 at 17:57
  • That was meant as an example for performing operations on the individual DFs before concatenating them, but I see it's less helpful than I initially thought. Updated the answer, thanks. Sep 15, 2021 at 9:10

If you want to update/replace the values of first dataframe df1 with the values of second dataframe df2. you can do it by following steps —

Step 1: Set index of the first dataframe (df1)


Step 2: Set index of the second dataframe (df2)


and finally update the dataframe using the following snippet —


To join 2 pandas dataframes by column, using their indices as the join key, you can do this:

both = a.join(b)

And if you want to join multiple DataFrames, Series, or a mixture of them, by their index, just put them in a list, e.g.,:

everything = a.join([b, c, d])

See the pandas docs for DataFrame.join().

# collect excel content into list of dataframes
data = []
for excel_file in excel_files:
    data.append(pd.read_excel(excel_file, engine="openpyxl"))

# concatenate dataframes horizontally
df = pd.concat(data, axis=1)
# save combined data to excel
df.to_excel(excelAutoNamed, index=False)

You can try the above when you are appending horizontally! Hope this helps sum1


Use this code to attach two Pandas Data Frames horizontally:

df3 = pd.concat([df1, df2],axis=1, ignore_index=True, sort=False)

You must specify around what axis you intend to merge two frames.


Both the dataframe should have same column name else instead of appending records by row wise, it will append as separate columns.

df = df.append(df1,ignore_index=True)
df = pd.concat([df1,df2], ignore_index=True)

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