10

I have 2 dataframes

df1

Company           SKU   Sales
Walmart           A     100
Total             A     200
Walmart           B     200
Total             B     300
Walmart           C     400
Walmart           D     500

df2

 Company             SKU   Sales
 Walmart             A     400
 Total               B     300
 Walmart             C     900
 Walmart             F     400
 Total               G     500

I want a resulting dataframe (df2) which only has the records of matching SKUs in df1 and df2

df2

Company       SKU   Sales 
Walmart       A     400
Total         B     300
Walmart       C     900

I want only the unique (Company + SKU) values of df1 in df2

Is there any good solution to achieve this?

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3 Answers 3

22

Update

You could use a simple mask:

m = df2.SKU.isin(df1.SKU)
df2 = df2[m]

You are looking for an inner join. Try this:

df3 = df1.merge(df2, on=['SKU','Sales'], how='inner')

#  SKU  Sales
#0   A    100
#1   B    200
#2   C    300

Or this:

df3 = df1.merge(df2, on='SKU', how='inner')

#  SKU  Sales_x  Sales_y
#0   A      100      100
#1   B      200      200
#2   C      300      300
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  • Hi Anton , thanks for answering Buy sales is not my key It could be any value Jun 2, 2018 at 9:31
  • @AhamedMoosa I don't understand exactly what you want. The current solution I propose gives you the desired result. Ok sorry you changed the name
    – Anton vBR
    Jun 2, 2018 at 9:46
  • your updated answer fits my purpose Thank you. Can I use isin for multiple columns ? Jun 2, 2018 at 10:01
  • @AhamedMoosa Sorry for late response. Are you still seeking the answer on how to do this on multiple columns?
    – Anton vBR
    Jun 12, 2018 at 15:48
  • I have already found a workaround for this problem, I used your solution and improvised a little bit to my use case. Thank You. Jun 12, 2018 at 16:02
5

One way is to align indices and then use a mask.

# align indices
df1 = df1.set_index(['Company',  'SKU'])
df2 = df2.set_index(['Company',  'SKU'])

# calculate & apply mask
df2 = df2[df2.index.isin(df1.index)].reset_index()

Resetting index is not required, but needed to elevate Company and SKU to columns.

1
  • 1
    Thanks jpp , I did similar kind of thing. I have concatinated both company and SKU column and then applied mask Jun 3, 2018 at 15:06
3

Solution 1 :

# First identify the common SKU's    
temp = list(set(list(df1.SKU)).intersection(set(list(df2.SKU))))

# Filter df2 using the list of common SKU's
df3 = df2[df2.SKU.isin(temp)]
print(df3)

   SKU  Sales
0   A   400
1   B   300
2   C   900

Solution 2 : One Line solution

df3 = df2[df2.SKU.isin(list(df1.SKU))]

EDIT 1 : Solution for the updated question (Not the optimal way of doing it, but answers your question)

# reading data for df1
df1= pd.read_clipboard(sep='\\s+')
df1
    Company SKU Sales
0   Walmart A   100
1   Total   A   200
2   Walmart B   200
3   Total   B   300
4   Walmart C   400
5   Walmart D   500

# reading data for df2
df2= pd.read_clipboard(sep='\\s+')
df2
Company SKU Sales
0   Walmart A   400
1   Total   B   300
2   Walmart C   900
3   Walmart F   400
4   Total   G   500

# Using intersect and zip to create a list of tuples matching in the data frames
temp = list(set(list(zip(df1.Company,df1.SKU))).intersection(set(list(zip(df2.Company,df2.SKU)))))
temp
[('Walmart', 'A'), ('Walmart', 'C'), ('Total', 'B')]

# Creating a helper variable in df2 to lookup in the temp list
df2["temp"] = list(zip(df2.Company,df2.SKU))
df2= df2[df2["temp"].isin(temp)]
del(df2["temp"])
df2
    Company SKU Sales
0   Walmart A   400
1   Total   B   300
2   Walmart C   900

Suggestions are welcome to improve this code

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  • Hi ram , thanks for your answer Just in case if I have multiple columns to intersect ? Jun 2, 2018 at 10:02
  • Then you can go for Solution 1 as the temp is a list which you can further intersect with another list.
    – Ram
    Jun 2, 2018 at 10:15
  • Hi Ram , I have edited my question , please advise if your first solution can achieve it Jun 2, 2018 at 11:10
  • 1
    In my opinion, the list() conversions are not necessary and potentially expensive.
    – jpp
    Jun 3, 2018 at 14:40
  • Fully agree with you. Thanks!
    – Ram
    Jun 3, 2018 at 14:58

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