3

I have 2 dataframes in python pandas

Dataframe 1

User_id  zipcode

1        12345

2        23456

3        34567

Dataframe 2

ZipCodeLowerBound ZipCodeUpperBound Region

10000             19999             1

20000             29999             2

30000             39999             3

How can I map in the Region to dataframe 1 with the condition if(df1.zipcode>=df2.ZipCodeLowerBound and df1.zipcode<=df2.ZipCodeUpperBound) using pandas merge

2

This gives a column per region and a mask of each zipcode belonging to that region or not:

df2 = df2.set_index('Region')
mask = df2.apply(lambda r: df1.zipcode.between(r['ZipCodeLowerBound'],
                                               r['ZipCodeUpperBound']),
                 axis=1).T
mask
Out[103]: 
Region      1      2      3
0        True  False  False
1       False   True  False
2       False  False   True

Then you can use that matrix against its own column names to apply it as a mask and find back the region:

mask.dot(mask.columns)
Out[110]: 
0    1
1    2
2    3
dtype: int64
0
import pandas as pd

df1 = pd.DataFrame({'User_id': [1,2,3],
                    'zipcode':[12345,23456,34567]})
df2 = pd.DataFrame({'ZipCodeLowerBound': [10000,20000,30000],
                    'ZipCodeUpperBound': [19999,29999,39999],
                    'Region': [1,2,3]})

region = []
for i in range(len(df1.zipcode)):
    region.append(int(df2[(df2.ZipCodeLowerBound <= df1.zipcode[i]) & (df2.ZipCodeUpperBound >= df1.zipcode[i])]['Region']))
df1['Region'] = region

print(df1)

Output:

   User_id  zipcode  Region
0        1    12345       1
1        2    23456       2
2        3    34567       3
0
df1['Region'] = df1.User_id
df1.merge(df2, on='Region')

you can merge both dataset if you will have the same columns in both dataframes,

well thats just an example how you can merge it, you can put your condition and try it

this is what output will be after merging it

   User_id  zipcode Region  ZipCodeLowerBound   ZipCodeUpperBound
0   1        12345     1         10000             19999
1   2        23456     2         20000             29999
2   3        34567     3         30000             39999

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.