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View Full Version : Concatenate with ";" if values of 3 columns are same



aravindhan_3
07-08-2021, 05:49 AM
Hi,

Need some vba or excel formula help to concatenate based on conditions.
please find below the as is data and result data , attached the file as well reference. first table is as data and 2nd table is result data.

I want to concatenate values of "Sub product code" ( colc c) if column A, B & Column D are same , example below

http://www.vbaexpress.com/forum/image/png;base64,iVBORw0KGgoAAAANSUhEUgAAA/AAAAITCAYAAACg PeWAAAgAElEQVR4Aex9Pc7turHlnoMn4H6JI2cv8Qd0ZtzY0YteZmBnL rcwENP4GSG0WkPwNE3g57ByU7uaajBnyKLxSJVkiht/awLfHdTUrFYXKuKrJK093n961//mvC3DoP/83/ D7C7kP Ar3V /sT1Ab5yXV8Bd9u4 x//67cJf fG4Ilr8l3mjPVp2/p0Fz/41Dzgf9f1P8nd6x// MeEP2AAH4APwAfgA/AB ACK93MX744fxCniFD4AH4APPNsHXtO//jHhbx0Gr3/ ZcLfdTCAn6/zc AG3C7nAxP W40AcgLkRPAB AB8AD4AHzifD7CNHQX8BgdF8X6d4t1xdbkiZINvYq4ouh/tA2yTQ3MhAlh3sFfAB AD8AH4AHzgfD7AtnMU8BscFAU8CvhHF0kbYge44QbDrj7ANjk0FyKAuD5f0gZOwAl8AD4AH4APs O0cBfyGgEABjwJ 1yJkg2/CLhTIj/YBtsmhuRABrDtIEuED8AH4AHwAPnA H2DbOQr4DQ6KAh4F/KOLpA2xA9xwg2FXH2CbHJoLEUBcny9pAyfgBD4AH4APwAfYdo4CfkNAoIBHAb9rEbLBN2EXCuRH wDb5NBciADWHSSJ8AH4AHwAPgAfOJ8PsO0cBfwGBz1VAf/ba3r94Y/3/VX8AfPbq6D5/s/X9PrP/zpfoCu 7W399/ YfinX9sLnSL13n996LP/39OPfX9NrM/ej9Og3WH79979Nr9cr/Gkx9X//5/R6/c/pe85/2SaH5kIE5rDF9Uus9evXCj02oc Gy6f2IOQhNn6O8ONP cARczvfGKNyklF6dD/cI7dpF/D/7z mL0qk4ufXf/9vbFwseVEL L/ 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Thanks for the help
Regards
Arvind

SamT
07-08-2021, 06:18 AM
IMO, that will require VBA Code. For VBA Code, we must see the complete top few rows of the original Table.

NB: All the Columns and the first 5 rows, including the Headers.


Can we assume that the Table will always be sorted by Country, then Sub Product Code, then Commission%?

Can we omit the Duplicate Rows? (Rows 6 and 10 in your example.) Omitting Duplicates will be much easier to code for.

aravindhan_3
07-08-2021, 07:29 AM
Hi Sam,

Yes data will always be sorted by country , then Sub product code and then Commission
and yes, the result should be without duplicate rows

Thanks

Paul_Hossler
07-08-2021, 07:54 AM
Something simple and straight forward




Option Explicit


Sub ConCatACD()
Dim ws As Worksheet
Dim r As Range
Dim A() As String, B() As String, C() As String
Dim i As Long, j As Long

'init
Set ws = Worksheets("Sheet1")
Set r = ws.Cells(1, 1).CurrentRegion

'make temp array
ReDim A(1 To r.Rows.Count)
ReDim B(1 To r.Rows.Count)
ReDim C(1 To r.Rows.Count)

'define matches and fill array with the match values
With r
For i = LBound(A) + 1 To UBound(A)
A(i) = .Cells(i, 1).Value & "#" & .Cells(i, 2).Value & "#" & .Cells(i, 4).Value & "#"
B(i) = .Cells(i, 3).Value
Next i
End With


'look for more than one
For i = LBound(A) To UBound(A)
For j = LBound(A) To UBound(A)
If A(i) = A(j) And i <> j Then
If Len(C(i)) = 0 Then
C(i) = B(i) & ";" & B(j)
Else
C(i) = C(i) & ";" & B(j)
End If
End If
Next j
Next i


'make order of match the same
For i = LBound(A) To UBound(A)
For j = LBound(A) To UBound(A)
If A(i) = A(j) Then C(j) = C(i)
Next j
Next i

'pub back on worksheet
For i = LBound(C) To UBound(C)
If Len(C(i)) > 0 Then ws.Cells(i, 3).Value = C(i)
Next i


'remove dups
r.RemoveDuplicates Columns:=Array(1, 2, 3, 4), Header:=xlYes


End Sub

SamT
07-08-2021, 11:34 AM
Here's another version That works in a Standard Module

Option Explicit

Private Enum Array_and_Table_Column_Numbers
'Edit to include all columns. Edit "Concatting" code section below to suit
Country = 1
ProductCode = 2
SubProductCode = 3
Commisssion = 4
End Enum

Sub Concatenate_SubProduct_Codes()
'Declare Arrays
Dim SrcArray, DestArray

'Array Row numbers
Dim i As Long, j As Long, k As Long
Dim LR As Long, ColumnCount As Long

'Sheet and Range Name Variables
Dim Src As Range, Dest As Range

'Edit to suit
LR = ThisWorkbook.Sheets("Sheet1").Cells(Rows.Count, "A")
ColumnCount = 4
Set Src = ThisWorkbook.Sheets("Sheet1").Range("A1")
Set Dest = ThisWorkbook.Sheets("Sheet1").Range("F1")

SrcArray = Src.CurrentRegion
ReDim DestArray(1 To LR, 1 To ColumnCount)

'Concatting
'Headers
DestArray(1, Country) = SrcArray(1, Country)
DestArray(1, ProductCode) = SrcArray(1, ProductCode)
DestArray(1, SubProductCode) = SrcArray(1, SubProductCode)
DestArray(1, Commisssion) = SrcArray(1, Commisssion)

k = 2 'First open row in DestArray
For i = 2 To LR
j = i + 1 'Used to compare next Row's Values

'First, record this row. Edit to include all columns
DestArray(k, Country) = SrcArray(i, Country)
DestArray(k, ProductCode) = SrcArray(i, ProductCode)
DestArray(k, SubProductCode) = SrcArray(i, SubProductCode)
DestArray(k, Commisssion) = SrcArray(i, Commisssion)

If j < LR Then 'THere are still more rows

'If Values are the same for two, or more, Rows, then
Do While _
SrcArray(i, Commision) = SrcArray(j, Commision) And _
SrcArray(i, Country) = SrcArray(j, Country) And _
SrcArray(i, SubProductCode) = SrcArray(j, SubProductCode)

'Do the Concatenation
DestArray(k, SubProductCode) = _
DestArray(k, SubProductCode) & ";" & SrcArray(j, SubProductCode)
j = j + 1 'Check the next Row
If j > LR Then Exit For
Loop
End If
k = k + 1 'Increment DestArray Row number
Next i 'Next SrcArray Row number

'Paste the new data. This will paste some empty rows below the data
Dest.Resize(UBound(DestArray), ColumnCount) = DestArray.Value
End Sub

aravindhan_3
07-08-2021, 10:34 PM
Thanks Paul,

This work, Need another help! Can we keep the original data as is but, get the output on a different sheet which is already there called "Output"?

Thanks

SamT
07-09-2021, 04:09 AM
In my version: Change

Set Dest = ThisWorkbook.Sheets("Sheet1").Range("F1")
to

Set Dest = ThisWorkbook.Sheets("Output").Range("A1")

Paul_Hossler
07-09-2021, 06:11 AM
This?




Option Explicit


Sub ConCatACD()
Dim ws As Worksheet
Dim r As Range
Dim A() As String, B() As String, C() As String
Dim n As Long, i As Long, j As Long
Dim s As String, s1 As String

'init
Set ws = Worksheets("Output")

Worksheets("Sheet1").Cells(1, 1).CurrentRegion.Copy ws.Cells(1, 1)
Set r = ws.Cells(1, 1).CurrentRegion

'make temp array
ReDim A(1 To r.Rows.Count)
ReDim B(1 To r.Rows.Count)
ReDim C(1 To r.Rows.Count)

'define matches and fill array with the match values
With r
For i = LBound(A) + 1 To UBound(A)
A(i) = .Cells(i, 1).Value & "#" & .Cells(i, 2).Value & "#" & .Cells(i, 4).Value & "#"
B(i) = .Cells(i, 3).Value
Next i
End With


'look for more than one
For i = LBound(A) To UBound(A)
For j = LBound(A) To UBound(A)
If A(i) = A(j) And i <> j Then
If Len(C(i)) = 0 Then
C(i) = B(i) & ";" & B(j)
Else
C(i) = C(i) & ";" & B(j)
End If
End If
Next j
Next i


'make order of match the same
For i = LBound(A) To UBound(A)
For j = LBound(A) To UBound(A)
If A(i) = A(j) Then C(j) = C(i)
Next j
Next i

'pub back on worksheet
For i = LBound(C) To UBound(C)
If Len(C(i)) > 0 Then ws.Cells(i, 3).Value = C(i)
Next i


'remove dups
r.RemoveDuplicates Columns:=Array(1, 2, 3, 4), Header:=xlYes
r.EntireColumn.AutoFit


End Sub

aravindhan_3
07-12-2021, 09:27 PM
Super Paul, it works.. Thanks a ton.
you can shoot me if you have to.

I had to split my question/requirement earlier to make sure I explain it well. This piece of code perfectly works. And there is an another logic to be added with this.
With the current logic, we have looked Column A "country", Column B "Product code" & Column D Commission% if all are same we have concatenated Column C "Sub product code".

In addition & with only diff is concatenate column B as well
We have to look at Column A "country", Column C "Product code" & Column D Commission% if all are same we have concatenated Column B "Product code".

It would be really great if one piece of code does both of these. I am ok if we have to run macro twice for 2 diff logic and try something manually to put together.

I had attached the sample file and output.

Paul_Hossler
07-13-2021, 10:40 AM
Try this -- seems to work

Because of the Level check, I went to using the worksheet more than arrays

Also I think you wanted to join all 3 88186961 lines



Argentina
2
88186961
30.00%


Argentina
3
88186961
30.00%


Argentina
4
88186961
30.00%




Edit -- BTW, the title says semi-colons but your example users commas




Option Explicit


Sub MacroVer2()
Dim ws As Worksheet
Dim r As Range, r1 As Range
Dim i As Long

'init
Set ws = Worksheets("Output")
ws.Cells(1, 1).CurrentRegion.Clear

Worksheets("Sheet1").Cells(1, 1).CurrentRegion.Copy ws.Cells(1, 1)
Set r = ws.Cells(1, 1).CurrentRegion
Set r1 = r.Cells(2, 1).Resize(r.Rows.Count - 1, r.Columns.Count)


'sort by Country-Code-Commish = Cols ACD
With ws.Sort
.SortFields.Clear
.SortFields.Add Key:=r1.Columns(1), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(3), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(4), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SetRange r
.Header = xlYes
.MatchCase = False
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With

With r
For i = r.Rows.Count To 3 Step -1
'same country and code and commish
If (.Cells(i, 1).Value = .Cells(i - 1, 1).Value) And (.Cells(i, 2).Value = .Cells(i - 1, 2).Value) And (.Cells(i, 4).Value = .Cells(i - 1, 4).Value) Then
If InStr(.Cells(i - 1, 3).Value, .Cells(i, 3).Value) = 0 Then
.Cells(i - 1, 3).Value = .Cells(i - 1, 3).Value & "," & .Cells(i, 3).Value
.Rows(i).Delete
End If
End If
Next i
End With

Set r = ws.Cells(1, 1).CurrentRegion
Set r1 = r.Cells(2, 1).Resize(r.Rows.Count - 1, r.Columns.Count)


'sort by Country-level-Commish = Cols ABD
With ws.Sort
.SortFields.Clear
.SortFields.Add Key:=r1.Columns(1), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(4), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(2), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SetRange r
.Header = xlYes
.MatchCase = False
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With

With r
For i = r.Rows.Count To 3 Step -1
'same country and level and commish
If (.Cells(i, 1).Value = .Cells(i - 1, 1).Value) And (.Cells(i, 3).Value = .Cells(i - 1, 3).Value) And (.Cells(i, 4).Value = .Cells(i - 1, 4).Value) Then
If InStr(.Cells(i - 1, 2).Value, .Cells(i, 2).Value) = 0 Then
.Cells(i - 1, 2).Value = .Cells(i - 1, 2).Value & "," & .Cells(i, 2).Value
.Rows(i).Delete
End If
End If
Next i
End With


Set r = ws.Cells(1, 1).CurrentRegion
Set r1 = r.Cells(2, 1).Resize(r.Rows.Count - 1, r.Columns.Count)


'Final sort by Country-level-Code - Commish = Cols ABCD
With ws.Sort
.SortFields.Clear
.SortFields.Add Key:=r1.Columns(1), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(2), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(3), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(4), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SetRange r
.Header = xlYes
.MatchCase = False
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With

r.EntireColumn.AutoFit

MsgBox "All Done"
End Sub

aravindhan_3
07-13-2021, 11:53 PM
Thanks Paul, but somehow its not giving right result,

please refer the file with small data, for country UA Emirates, the levels 1,2,3 &4 same sub product code and same % but its creating multiple rows instead of 1 row.

you can run the macro and check the output tab,

thanks for the help in advance

Regards
Arvind

SamT
07-14-2021, 07:19 AM
Are these two different Tables? One with a Product Code Column and one with a Level Column? And Sub Product Code.

Or is it one Table with both Product Code and Level Columns? And Sub Product Code.



BTW, I noticed a logic error in the code in my Post #5

k = 2 'First open row in DestArray
For i = 2 To LR
j = i + 1 'Used to compare next Row's Values

'First, record this row. Edit to include all columns
DestArray(k, Country) = SrcArray(j, Country)
DestArray(k, ProductCode) = SrcArray(j, ProductCode)
DestArray(k, SubProductCode) = SrcArray(j, SubProductCode)
DestArray(k, Commisssion) = SrcArray(j, Commisssion)


Should read
k = 2 'First open row in DestArray
For i = 2 To LR
j = i + 1 'Used to compare next Row's Values

'First, record this row. Edit to include all relevant columns
DestArray(k, Country) = SrcArray(i, Country)
DestArray(k, ProductCode) = SrcArray(i, ProductCode)
DestArray(k, SubProductCode) = SrcArray(i, SubProductCode)
DestArray(k, Commisssion) = SrcArray(i, Commisssion)

Paul_Hossler
07-14-2021, 07:50 AM
try this version



Option Explicit


Const cCountry As Long = 1
Const cLevel As Long = 2
Const cCode As Long = 3
Const cCommish As Long = 4


Sub MacroVer3()
Dim ws As Worksheet
Dim r As Range, r1 As Range
Dim i As Long
Dim A As String, B As String, C As String, D As String
Dim A1 As String, B1 As String, C1 As String, D1 As String

'init
Set ws = Worksheets("Output")
ws.Cells(1, cCountry).CurrentRegion.Clear


'make working coly and remove any dups
Worksheets("Sheet1").Cells(1, cCountry).CurrentRegion.Copy ws.Cells(1, cCountry)

ws.Cells(1, 1).CurrentRegion.RemoveDuplicates Columns:=Array(cCountry, cLevel, cCode, cCommish), Header:=xlYes



'sort by Country-Level-Code-Commish
Set r = ws.Cells(1, cCountry).CurrentRegion
Set r1 = r.Cells(2, 1).Resize(r.Rows.Count - 1, r.Columns.Count)


With ws.Sort
.SortFields.Clear
.SortFields.Add Key:=r1.Columns(cCountry), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(cCode), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(cLevel), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SortFields.Add Key:=r1.Columns(cCommish), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SetRange r
.Header = xlYes
.MatchCase = False
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With


'pass #1 - merge products if same Level
With r
For i = r.Rows.Count To 3 Step -1
'same country and code and commish
If (.Cells(i, cCountry).Value <> .Cells(i - 1, cCountry).Value) Then GoTo NextLine
If (.Cells(i, cCommish).Value <> .Cells(i - 1, cCommish).Value) Then GoTo NextLine
If (.Cells(i, cLevel).Value <> .Cells(i - 1, cLevel).Value) Then GoTo NextLine

.Cells(i - 1, cCode).Value = .Cells(i - 1, cCode).Value & ";" & .Cells(i, cCode).Value
.Rows(i).Delete
NextLine:
Next i
End With


'pass #2 - merge level if same product
Set r = ws.Cells(1, cCountry).CurrentRegion
Set r1 = r.Cells(2, 1).Resize(r.Rows.Count - 1, r.Columns.Count)

With r
For i = r.Rows.Count To 3 Step -1

Debug.Print i

'same country and code and commish
If (.Cells(i, cCountry).Value <> .Cells(i - 1, cCountry).Value) Then GoTo NextLine2
If (.Cells(i, cCommish).Value <> .Cells(i - 1, cCommish).Value) Then GoTo NextLine2
If (.Cells(i, cCode).Value <> .Cells(i - 1, cCode).Value) Then GoTo NextLine2

.Cells(i - 1, cLevel).Value = .Cells(i - 1, cLevel).Value & ";" & .Cells(i, cLevel).Value
.Rows(i).Delete
NextLine2:
Next i
End With

ws.Cells(1, cCountry).CurrentRegion.EntireColumn.AutoFit

MsgBox "All Done"
End Sub

parttime_guy
09-03-2021, 01:40 AM
Hi All

Solutions by SamT (http://www.vbaexpress.com/forum/member.php?6494-SamT) and Paul_Hossler (http://www.vbaexpress.com/forum/member.php?9803-Paul_Hossler) are Great :bow:

Going through the post aravindhan_3 (http://www.vbaexpress.com/forum/member.php?17185-aravindhan_3) had requested for some FORMULA solution
In the attached file Sheet 2 has a FORMULA solution
Kindly review
:friends:

arnelgp
09-03-2021, 03:38 AM
can't believe that that people here always think of VBA as the last resort?

copy Sheet1 to New Sheet.
Erase all text from "Sub Product Code" on the New Sheet.
copy this formula on Cell C2 of New Sheet:



=IF(AND(Sheet1!B2=Sheet1!B1,Sheet1!D2=Sheet1!D1),Sheet1!C1&";"&Sheet1!C2,IF(AND(Sheet1!B2=Sheet1!B3,Sheet1!D2=Sheet1!D3),Sheet1!C2&";"&Sheet1!C3,Sheet1!C2))
https://www.dropbox.com/scl/fi/jy3py0h38zfqxa4sys32a/Concate.xlsx?dl=0&rlkey=5vtq6t6byx5ez52gdn2abvxhu

if you need to do it in PowerQuery:
https://exceloffthegrid.com/power-query-combine-rows-into-a-single-cell/