Follow

Keep Up to Date with the Most Important News

By pressing the Subscribe button, you confirm that you have read and are agreeing to our Privacy Policy and Terms of Use
Contact

How to merge pandas dataframes with different column names

enter image description here

Can someone please tell me how I can achieve results like the image above, but with the following differences:

# Note the column names
df1 = pd.DataFrame({"A": ["A0", "A1", "A2", "A3"],
                    "B": ["B0", "B1", "B2", "B3"],
                    "C": ["C0", "C1", "C2", "C3"],
                    "D": ["D0", "D1", "D2", "D3"],
                    },
                    index = [0, 1, 2, 3],
                   )
# Note the column names
df2 = pd.DataFrame({"AA": ["A4", "A5", "A6", "A7"],
                    "BB": ["B4", "B5", "B6", "B7"],
                    "CC": ["C4", "C5", "C6", "C7"],
                    "DD": ["D4", "D5", "D6", "D7"],
                   },
                   index = [4, 5, 6, 7],
                  )
# Note the column names
df3 = pd.DataFrame({"AAA": ["A8", "A9", "A10", "A11"],
                    "BBB": ["B8", "B9", "B10", "B11"],
                    "CCC": ["C8", "C9", "C10", "C11"],
                    "DDD": ["D8", "D9", "D10", "D11"],
                   },
                   index = [8, 9, 10, 11],
                  )

Every kind of merge I do results in this:

MEDevel.com: Open-source for Healthcare and Education

Collecting and validating open-source software for healthcare, education, enterprise, development, medical imaging, medical records, and digital pathology.

Visit Medevel

enter image description here

Here’s what I’m trying to accomplish:

  1. I’m doing my Capstone Project, and the use case uses the SpaceX data set. I’ve web-scraped the tables found here: SpaceX Falcon 9 Wikipedia,
  1. Now I’m trying to combine them into one large table. However, there are slight differences in the column names, between each table, and so I have to do more logic to merge properly. There are 10 tables in total, I’ve checked 5. 3 have unique column names, so the simple merging doesn’t work.

  2. I’ve searched around at the other questions, but the use case is different than mine, so I haven’t found an answer that works for me.

I’d really appreciate someone’s help, or pointing me where I can find more info on the subject. So far I’ve had no luck in my searches.

>Solution :

Let us just do np.concatenate

out = pd.DataFrame(np.concatenate([df1.values,df2.values,df3.values]),columns=df1.columns)
Out[346]: 
      A    B    C    D
0    A0   B0   C0   D0
1    A1   B1   C1   D1
2    A2   B2   C2   D2
3    A3   B3   C3   D3
4    A4   B4   C4   D4
5    A5   B5   C5   D5
6    A6   B6   C6   D6
7    A7   B7   C7   D7
8    A8   B8   C8   D8
9    A9   B9   C9   D9
10  A10  B10  C10  D10
11  A11  B11  C11  D11
Add a comment

Leave a Reply

Keep Up to Date with the Most Important News

By pressing the Subscribe button, you confirm that you have read and are agreeing to our Privacy Policy and Terms of Use

Discover more from Dev solutions

Subscribe now to keep reading and get access to the full archive.

Continue reading