Pandas文摘:Join And Merge Pandas Dataframe

原文地址:https://chrisalbon.com/python/data_wrangling/pandas_join_merge_dataframe/

Join And Merge Pandas Dataframe

20 Dec 2017

import modules

import pandas as pd
from IPython.display import display from IPython.display import Image

Create a dataframe

raw_data = {
        'subject_id': ['1', '2', '3', '4', '5'], 'first_name': ['Alex', 'Amy', 'Allen', 'Alice', 'Ayoung'], 'last_name': ['Anderson', 'Ackerman', 'Ali', 'Aoni', 'Atiches']} df_a = pd.DataFrame(raw_data, columns = ['subject_id', 'first_name', 'last_name']) df_a
  subject_id first_name last_name
0 1 Alex Anderson
1 2 Amy Ackerman
2 3 Allen Ali
3 4 Alice Aoni
4 5 Ayoung Atiches

Create a second dataframe

raw_data = {
        'subject_id': ['4', '5', '6', '7', '8'], 'first_name': ['Billy', 'Brian', 'Bran', 'Bryce', 'Betty'], 'last_name': ['Bonder', 'Black', 'Balwner', 'Brice', 'Btisan']} df_b = pd.DataFrame(raw_data, columns = ['subject_id', 'first_name', 'last_name']) df_b
  subject_id first_name last_name
0 4 Billy Bonder
1 5 Brian Black
2 6 Bran Balwner
3 7 Bryce Brice
4 8 Betty Btisan

Create a third dataframe

raw_data = {
        'subject_id': ['1', '2', '3', '4', '5', '7', '8', '9', '10', '11'], 'test_id': [51, 15, 15, 61, 16, 14, 15, 1, 61, 16]} df_n = pd.DataFrame(raw_data, columns = ['subject_id','test_id']) df_n
  subject_id test_id
0 1 51
1 2 15
2 3 15
3 4 61
4 5 16
5 7 14
6 8 15
7 9 1
8 10 61
9 11 16

Join the two dataframes along rows

df_new = pd.concat([df_a, df_b]) df_new
  subject_id first_name last_name
0 1 Alex Anderson
1 2 Amy Ackerman
2 3 Allen Ali
3 4 Alice Aoni
4 5 Ayoung Atiches
0 4 Billy Bonder
1 5 Brian Black
2 6 Bran Balwner
3 7 Bryce Brice
4 8 Betty Btisan

Join the two dataframes along columns

pd.concat([df_a, df_b], axis=1)
  subject_id first_name last_name subject_id first_name last_name
0 1 Alex Anderson 4 Billy Bonder
1 2 Amy Ackerman 5 Brian Black
2 3 Allen Ali 6 Bran Balwner
3 4 Alice Aoni 7 Bryce Brice
4 5 Ayoung Atiches 8 Betty Btisan

Merge two dataframes along the subject_id value

pd.merge(df_new, df_n, on='subject_id')
  subject_id first_name last_name test_id
0 1 Alex Anderson 51
1 2 Amy Ackerman 15
2 3 Allen Ali 15
3 4 Alice Aoni 61
4 4 Billy Bonder 61
5 5 Ayoung Atiches 16
6 5 Brian Black 16
7 7 Bryce Brice 14
8 8 Betty Btisan 15

Merge two dataframes with both the left and right dataframes using the subject_id key

pd.merge(df_new, df_n, left_on='subject_id', right_on='subject_id')
  subject_id first_name last_name test_id
0 1 Alex Anderson 51
1 2 Amy Ackerman 15
2 3 Allen Ali 15
3 4 Alice Aoni 61
4 4 Billy Bonder 61
5 5 Ayoung Atiches 16
6 5 Brian Black 16
7 7 Bryce Brice 14
8 8 Betty Btisan 15

Merge with outer join

“Full outer join produces the set of all records in Table A and Table B, with matching records from both sides where available. If there is no match, the missing side will contain null.” - source

pd.merge(df_a, df_b, on='subject_id', how='outer')
  subject_id first_name_x last_name_x first_name_y last_name_y
0 1 Alex Anderson NaN NaN
1 2 Amy Ackerman NaN NaN
2 3 Allen Ali NaN NaN
3 4 Alice Aoni Billy Bonder
4 5 Ayoung Atiches Brian Black
5 6 NaN NaN Bran Balwner
6 7 NaN NaN Bryce Brice
7 8 NaN NaN Betty Btisan

Merge with inner join

“Inner join produces only the set of records that match in both Table A and Table B.” - source

pd.merge(df_a, df_b, on='subject_id', how='inner')
  subject_id first_name_x last_name_x first_name_y last_name_y
0 4 Alice Aoni Billy Bonder
1 5 Ayoung Atiches Brian Black

Merge with right join

pd.merge(df_a, df_b, on='subject_id', how='right')
  subject_id first_name_x last_name_x first_name_y last_name_y
0 4 Alice Aoni Billy Bonder
1 5 Ayoung Atiches Brian Black
2 6 NaN NaN Bran Balwner
3 7 NaN NaN Bryce Brice
4 8 NaN NaN Betty Btisan

Merge with left join

“Left outer join produces a complete set of records from Table A, with the matching records (where available) in Table B. If there is no match, the right side will contain null.” - source

pd.merge(df_a, df_b, on='subject_id', how='left')
  subject_id first_name_x last_name_x first_name_y last_name_y
0 1 Alex Anderson NaN NaN
1 2 Amy Ackerman NaN NaN
2 3 Allen Ali NaN NaN
3 4 Alice Aoni Billy Bonder
4 5 Ayoung Atiches Brian Black

Merge while adding a suffix to duplicate column names

pd.merge(df_a, df_b, on='subject_id', how='left', suffixes=('_left', '_right'))
  subject_id first_name_left last_name_left first_name_right last_name_right
0 1 Alex Anderson NaN NaN
1 2 Amy Ackerman NaN NaN
2 3 Allen Ali NaN NaN
3 4 Alice Aoni Billy Bonder
4 5 Ayoung Atiches Brian Black

Merge based on indexes

pd.merge(df_a, df_b, right_index=True, left_index=True)
  subject_id_x first_name_x last_name_x subject_id_y first_name_y last_name_y
0 1 Alex Anderson 4 Billy Bonder
1 2 Amy Ackerman 5 Brian Black
2 3 Allen Ali 6 Bran Balwner
3 4 Alice Aoni 7 Bryce Brice
4 5 Ayoung Atiches 8 Betty Btisan

猜你喜欢

转载自www.cnblogs.com/chickenwrap/p/10125569.html