1

I have 2 dataframes as below.

Dataframe 1 (with only column names and no data):

Name   Age   Gender

0 rows * 3 columns

Dataframe 2 (has data with over 1000 rows):

level_1   level_2    level_3
AAA       26         M
BBB       19         F
CCC       24         F

1000 rows * 3 columns

I have to append both the above dataframes.

Expected Output

Dataframe 1

Name   Age   Gender
AAA    26    M
BBB    19    F
CCC    24    F

What i tried so far:

dataframe_1 = dataframe_1.append(dataframe_2,ignore_index = True)

which gave me the below output:

Name   Age   Gender   level_1   level_2   level_3
NaN    NaN   NaN      AAA       26        M
NaN    NaN   NaN      BBB       19        F
NaN    NaN   NaN      CCC       24        F

1000 rows * 6 columns

2

Need same columns names for correct alignment of columns between both DataFrames, so set columns names by from another DataFrame:

dataframe_2.columns = dataframe_1.columns
dataframe_1 = dataframe_1.append(dataframe_2,ignore_index = True)

Another solution:

dataframe_1 = pd.concat([dataframe_1, dataframe_2],ignore_index = True)

print (dataframe_1)
  Name Age Gender
0  AAA  26      M
1  BBB  19      F
2  CCC  24      F
  • Terrific.. Thank you.. Works as expected :) Thank you everyone for quick response – shankar May 28 '19 at 13:50
  • @shankarBalu - one minutes difference between answers. :) – jezrael May 28 '19 at 13:51
  • Yeah. 3 answers in 3 minutes.. :) – shankar May 28 '19 at 13:52
3

Given what you're hoping for, I don't see any problem with:

dataframe_2.columns = dataframe_1.columns
2

Replace .columns attribute for the first dataframe with the second's:

import pandas as pd


df = pd.DataFrame({
    'val': ['Cat', 'Tiger', 'Ball', 'Bat'],
    'id': [1, 2, 3, 1]
})
df2 = pd.DataFrame({
    'waka': [],
    'wattafak': []
})
df.columns = df2.columns
df
    waka    wattafak
0   1   Cat
1   2   Tiger
2   3   Ball
3   1   Bat

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