2

I have a CSV file which contains the below data:

  NAME    | AGE  | COLLEGE  | BRANCH  | Qualification
------------------------------------------------------- 
  sai     | 21   |   FG     |   CSE   |   B.Tech
  Kiran   | 22   |   FG     |   EEE   |   M.Tech
  Anil    | 21   |   FG     |   CSE   |   B.Tech
  Ram     | 22   |   KL     |   EEE   |   B.Tech

Code that I have used to create the CSV file:

import pandas as pd

Name=['sai', 'Kiran', 'Anil', 'Ramj']
Age=[21, 22, 21, 22]
college=['FG', 'FG', 'FG', 'KL']
branch=['CSE', 'EEE', 'CSE', 'EEE']
Qualification=['B.Tech', 'M.Tech', 'B.Tech', 'B.Tech']

dict = {'NAME': Name, 'AGE': Age, 'COLLEGE': college, 'BRANCH': branch, 
'Qualification': Qualification }  

df = pd.DataFrame(dict) 
df.to_csv('TESTINGFILE.csv',index=False) 

Need to implement following steps:


STEP 1:

Based on a condition I need to create an duplicate row.

Condition : COLLEGE = FG and BRANCH = CSE

If the condition is satisfied then a duplicate row should be created with the BRANCH name as ECE.

  NAME    | AGE  | COLLEGE  | BRANCH  | Qualification
------------------------------------------------------- 
  sai     | 21   |   FG     |   CSE   |   B.Tech
  sai     | 21   |   FG     |   ECE   |   B.Tech
  Kiran   | 22   |   FG     |   EEE   |   M.Tech
  Anil    | 21   |   FG     |   CSE   |   B.Tech
  Anil    | 21   |   FG     |   ECE   |   B.Tech
  Ram     | 22   |   KL     |   EEE   |   B.Tech

STEP 2:

Now with the same condition(COLLEGE = FG and BRANCH = CSE), if this satisfies then change the branch from CSE to IT.

Final Expected output:

  NAME    | AGE  | COLLEGE  | BRANCH  | Qualification
------------------------------------------------------- 
  sai     | 21   |   FG     |   IT    |   B.Tech
  sai     | 21   |   FG     |   ECE   |   B.Tech
  Kiran   | 22   |   FG     |   EEE   |   M.Tech
  Anil    | 21   |   FG     |   IT    |   B.Tech
  Anil    | 21   |   FG     |   ECE   |   B.Tech
  Ram     | 22   |   KL     |   EEE   |   B.Tech

Can someone help me in doing this by writing the code using pandas.

Thanks for the help!

  • why did the first row not duplicate? College = FC and Branc = CSE there aswell. – Erfan Mar 15 at 13:15
  • As the condition is satisfied by first row, then the row is created, which is duplicate but the branch name is ECE instead of CSE. – Suhas_mudam Mar 15 at 13:19
  • Then why is the duplicate of Anil in the step 1 CSE? – Erfan Mar 15 at 13:21
  • Thanks @Erfan. Thats a mistake by me. I have edited that. – Suhas_mudam Mar 15 at 13:28
1

First create mask by conditions, replace value by mask, duplicated rows with concat and assign value by DataFrame.assign, last DataFrame.sort_index:

mask = (df.COLLEGE == 'FG') & (df.BRANCH == 'CSE')
df.loc[mask, 'BRANCH'] = 'IT' 
df = pd.concat([df, df[mask].assign(BRANCH='ECE')]).sort_index().reset_index(drop=True)
print (df)
    NAME  AGE COLLEGE BRANCH Qualification
0    sai   21      FG     IT        B.Tech
1    sai   21      FG    ECE        B.Tech
2  Kiran   22      FG    EEE        M.Tech
3   Anil   21      FG     IT        B.Tech
4   Anil   21      FG    ECE        B.Tech
5   Ramj   22      KL    EEE        B.Tech
1

You can do this the following:
1. Create a subset first by filtering
2. Change the values to ECE
3. Concat the dataframes together
4. Use np.where to conditionally change the values to IT

df_dup = df[(df.COLLEGE== 'FG') & (df.BRANCH == 'CSE')]
df_dup['BRANCH'] = 'ECE'

df = pd.concat([df, df_dup])

df['BRANCH'] = np.where((df.COLLEGE== 'FG') & (df.BRANCH == 'ECE'), 'IT', df.BRANCH)

df = df.sort_index().reset_index(drop=True)

print(df)
    NAME  AGE COLLEGE BRANCH Qualification
0    sai   21      FG    CSE        B.Tech
1    sai   21      FG     IT        B.Tech
2  Kiran   22      FG    EEE        M.Tech
3   Anil   21      FG    CSE        B.Tech
4   Anil   21      FG     IT        B.Tech
5   Ramj   22      KL    EEE        B.Tech

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