1

I'm trying to blow out the below dataset, so that every email address is a line item, including all the columns.

    PrimaryEmail     ShipToEmail       SoldToEmail    City
0  jack@jill.com            None  bridge@white.com   Maine
1  jill@jack.com            None              None  Jersey
2           None  frank@tony.com   listen@what.com    Blah

The results should be:

    PrimaryEmail     ShipToEmail       SoldToEmail    City             Role             Email                  UserID
0  jack@jill.com            None  bridge@white.com   Maine  Primary Contact     jack@jill.com     jack@jill.com__user
1  jill@jack.com            None              None  Jersey  Primary Contact     jill@jack.com     jill@jack.com__user
2           None  frank@tony.com   listen@what.com    Blah  Ship-To Contact    frank@tony.com    frank@tony.com__user
3  jack@jill.com            None  bridge@white.com   Maine  Sold-To Contact  bridge@white.com  bridge@white.com__user
4           None  frank@tony.com   listen@what.com    Blah  Sold-To Contact   listen@what.com   listen@what.com__user

I've created the function below which works great for a small set of data (like above), however when I get into 250K+ lines it will do the first function call fine, i.e.:

user_modifications(df.copy(deep=True),'PrimaryEmail','Primary Contact')

However, the rest of the function calls, for the other roles, are returning line items where the email address for that function are blank.

import pandas as pd

def user_modifications(__dataframe,__emailcolumn, __Role):
    __df=pd.DataFrame()
    __df.iloc[0:0]
    __df = __dataframe[__dataframe[__emailcolumn].notnull()].copy(deep=True)
    __df['Role'] = __Role
    __df['Email'] = __df[__emailcolumn]
    __df['UserID'] = __df[__emailcolumn] + '__user'
    return(__df)

def main():
    df=pd.DataFrame({'PrimaryEmail':['jack@jill.com','jill@jack.com',None],'ShipToEmail':[None,None,'frank@tony.com'],'SoldToEmail':['bridge@white.com',None,'listen@what.com'], 'City':['Maine','Jersey','Blah']})
    df_users = pd.concat([user_modifications(df.copy(deep=True),'PrimaryEmail','Primary Contact'),user_modifications(df.copy(deep=True),'ShipToEmail','Ship-To Contact'),user_modifications(df.copy(deep=True),'SoldToEmail','Sold-To Contact')], ignore_index=True)
    print(df_users)

main()

Thanks for the help.

1

It looks like you are doing some additional copying of the dataframe. You can try as simple as possible, split the dataframe depending on the values in the first 3 columns, add the Role and Email columns and the concatenate everything together. Finally, the UserID column can be added.

primary_emails = df.loc[df['PrimaryEmail'].notnull()].copy()
primary_emails['Role'] = 'Primary Contact'
primary_emails['Email'] = df['PrimaryEmail']

ship_emails = df.loc[df['ShipToEmail'].notnull()].copy()
ship_emails['Role'] = 'Ship-To Contact'
ship_emails['Email'] = df['ShipToEmail']

sold_emails = df.loc[df['SoldToEmail'].notnull()].copy()
sold_emails['Role'] = 'Sold-To Contact'
sold_emails['Email'] = df['SoldToEmail']

df = pd.concat([primary_emails, ship_emails, sold_emails], axis=0, ignore_index=True)
df['UserId'] = df['Email'] + '__user'

This will give the wanted resulting dataframe.

| improve this answer | |
  • Thank you for your response, yes I know that I can do what you described, however I'd like to do it via a function and understand what I'm doing wrong. – Val Lapidus Sep 14 at 6:41
0

One way using pandas.DataFrame.filter, melt and merge:

df = df[df.ne("None")]
df2 = df.filter(like="Email").reset_index().melt(id_vars="index", 
                                                 var_name="Role", 
                                                 value_name="Email").dropna()
new_df = df.merge(df2, left_index=True, right_on="index").drop("index", 1)

Output:

    PrimaryEmail     ShipToEmail       SoldToEmail    City          Role  \
0  jack@jill.com             NaN  bridge@white.com   Maine  PrimaryEmail   
6  jack@jill.com             NaN  bridge@white.com   Maine   SoldToEmail   
1  jill@jack.com             NaN               NaN  Jersey  PrimaryEmail   
5            NaN  frank@tony.com   listen@what.com    Blah   ShipToEmail   
8            NaN  frank@tony.com   listen@what.com    Blah   SoldToEmail   

              Email  
0     jack@jill.com  
6  bridge@white.com  
1     jill@jack.com  
5    frank@tony.com  
8   listen@what.com  

Then modify the new columns as desired:

new_df["Role"] = new_df["Role"].str.replace("Email", " Contact")
new_df["UserID"] = new_df["Email"] + "__user"
print(new_df)

Output:

    PrimaryEmail     ShipToEmail       SoldToEmail    City             Role  \
0  jack@jill.com             NaN  bridge@white.com   Maine  Primary Contact   
6  jack@jill.com             NaN  bridge@white.com   Maine   SoldTo Contact   
1  jill@jack.com             NaN               NaN  Jersey  Primary Contact   
5            NaN  frank@tony.com   listen@what.com    Blah   ShipTo Contact   
8            NaN  frank@tony.com   listen@what.com    Blah   SoldTo Contact   

              Email                  UserID  
0     jack@jill.com     jack@jill.com__user  
6  bridge@white.com  bridge@white.com__user  
1     jill@jack.com     jill@jack.com__user  
5    frank@tony.com    frank@tony.com__user  
8   listen@what.com   listen@what.com__user  
| improve this answer | |
0

I figured out what the issue is in case any one stumbles on this thread. When you perform a DataFrame filter like the one seen here:

__df = __dataframe[__dataframe[__emailcolumn].notnull()].copy(deep=True)

Pandas alters all null values to something else. I'm still trying to figure out what. I know in my original description I mentioned that it worked for smaller data set, and didn't for a larger one. It was late at night, and maybe the smaller data set just sneaked by, with a scenario where it looked like it was working, but the data aligned just right.

Regardless: Now I'm trying to figure out how to fill blanks with None

but when I replace the line with this:

__df = __dataframe[__dataframe[__emailcolumn].notnull()].fillna(None).copy(deep=True)

It throws an error that I need to specify a value to fill with.

| improve this answer | |

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