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View Full Version : [SOLVED:] Sorting based on letter, and then on number



enjam
10-14-2021, 10:26 PM
Hi all,

I have a column of values with each row in that column composed of 1 to 3 letters, and then a number, with the length of this number ranging from 1 to 5 digits.

The letters all belong in a group, (e.g. AA, B, C, CB, J, T) and so need to be grouped together when sorting, and the numbers then are to increase sequentially.

Below is a table with my intended input and desired output.



Input
Output


AA1
AA1


T4
B5


T1
C27


B5
CB5


J23
CB12


J19
J19


C27
J23


CB12
T1


CB5
T4



Is this something that can be achieved with VBA?

If so, any guidance would be greatly appreciated :)

Cheers,
enjam

prasadk
10-15-2021, 12:58 AM
Use This Code if it is help full to you or not





Sub Sorting()
Dim InSheet As Worksheet
Set InSheet = ThisWorkbook.Worksheets("Sheet1")
Dim LastRow As Integer
LastRow = InSheet.Cells(Rows.Count, "A").End(xlUp).Row


With InSheet.Sort ' sort data from A to Z
.SetRange InSheet.Range("A1:A9" & LastRow)
.Header = xlGuess
.MatchCase = False
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With
End Sub

enjam
10-15-2021, 02:55 AM
Thanks for your reply Prasadk, unfortunately the code does not achieve the desired output

Paul_Hossler
10-15-2021, 11:23 AM
This seems to match what you wanted

You might have to change the way the logic is used since I used a driver sub and the range to sort is hard coded

It basically takes the cells in the sort range, reformats in a format to sort, sorts, and then changes the cell back to the original format




Option Explicit


Sub drv()

Call LetterNumberSort(Range("A2:A10"))


End Sub




' composed of 1 to 3 letters, and then a number, with the length of this number ranging from 1 to 5 digits.
Sub LetterNumberSort(r As Range)
Dim c As Range
Dim i As Long
Dim s As String

With r

For Each c In .Cells
c.Value = pvtFormatToSort(c.Value)
Next




With .Parent.Sort
.SortFields.Clear
.SortFields.Add Key:=r, SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SetRange r
.Header = xlNo
.MatchCase = True
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With

For Each c In .Cells
c.Value = pvtFormatToDisplay(c.Value)
Next
End With
End Sub




Private Function pvtFormatToSort(s As String) As String
Dim s1 As String, s2 As String, s3 As String

s1 = Trim(UCase(s))

If s1 Like "[A-Za-z]#*" Then
s2 = Left(s1, 1) & "00"
s3 = Right("00000" & Right(s1, Len(s1) - 1), 5)

ElseIf s1 Like "[A-Za-z][A-Za-z]#*" Then
s2 = Left(s1, 2) & "0"
s3 = Right("00000" & Right(s1, Len(s1) - 2), 5)


ElseIf s1 Like "[A-Za-z][A-Za-z][A-Za-z]#*" Then
s2 = Left(s1, 3)
s3 = Right("00000" & Right(s1, Len(s1) - 3), 5)
End If


pvtFormatToSort = s2 & s3
End Function


Private Function pvtFormatToDisplay(s As String) As String
Dim s1 As String, s2 As String
Dim i As Long

If s Like "[A-Za-z]#*" Then
i = 2
ElseIf s Like "[A-Za-z][A-Za-z]#*" Then
i = 3
ElseIf s Like "[A-Za-z][A-Za-z][A-Za-z]#*" Then
i = 4
End If

s1 = Left(s, i - 1)

Do While Mid(s, i, 1) = 0
i = i + 1
Loop

s2 = Right(s, Len(s) - i + 1)

pvtFormatToDisplay = s1 & s2
End Function

enjam
10-15-2021, 04:50 PM
Thanks Paul, will test this code out on Monday and get back to you.

Cheers,
enjam

Paul_Hossler
10-15-2021, 05:20 PM
Slightly more efficient version



Option Explicit


Sub drv()

Call LetterNumberSort(Range("A2:A10"))


End Sub




' composed of 1 to 3 letters, and then a number, with the length of this number ranging from 1 to 5 digits.
Sub LetterNumberSort(r As Range)
Dim c As Range
Dim i As Long
Dim s As String

With r
For Each c In .Cells
Call pvtFormatToSort(c)
Next


With .Parent.Sort
.SortFields.Clear
.SortFields.Add Key:=r, SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SetRange r
.Header = xlNo
.MatchCase = True
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With

For Each c In .Cells
Call pvtFormatToDisplay(c)
Next
End With
End Sub




Private Sub pvtFormatToSort(r As Range)
Dim s1 As String, s2 As String, s3 As String

s1 = Trim(UCase(r.Value))

If s1 Like "[A-Z]#*" Then
s2 = Left(s1, 1) & "00"
s3 = Right("00000" & Right(s1, Len(s1) - 1), 5)

ElseIf s1 Like "[A-Z][A-Z]#*" Then
s2 = Left(s1, 2) & "0"
s3 = Right("00000" & Right(s1, Len(s1) - 2), 5)


ElseIf s1 Like "[A-Z][A-Z][A-Z]#*" Then
s2 = Left(s1, 3)
s3 = Right("00000" & Right(s1, Len(s1) - 3), 5)
End If

r.Value = s2 & s3
End Sub


Private Sub pvtFormatToDisplay(r As Range)
Dim s1 As String, s2 As String, s3 As String
Dim i As Long

s1 = r.Value

If s1 Like "[A-Z]#*" Then
i = 2
ElseIf s1 Like "[A-Z][A-Z]#*" Then
i = 3
ElseIf s1 Like "[A-Z][A-Z][A-Z]#*" Then
i = 4
End If

s2 = Left(s1, i - 1)

Do While Mid(s1, i, 1) = 0
i = i + 1
Loop

s3 = Right(s1, Len(s1) - i + 1)

r.Value = s2 & s3
End Sub

p45cal
10-17-2021, 04:26 AM
If you're happy for the output to be a separate range from your input (rather than just sorting your input in situ) see Power Query solution table in colmn D of the attached where you right-click that table and choose Refresh to update.

enjam
10-17-2021, 10:54 PM
Thank you Paul, that code works just as intended. I'm applying on a range that's quite a bit longer (280,000 rows); it takes a while, but does the job :)

Pascal, thanks also for your input. Unfortunately I can't leverage the performance advantage of PowerQuery here as the sorting needs to be done in situ.

snb
10-18-2021, 06:40 AM
I'd suggest to use VBA:


Sub M_snb()
sn = Sheet1.Cells(1).CurrentRegion.Columns(1)

With GetObject("new:{00000535-0000-0010-8000-00AA006D2EA4}")
.Fields.Append "S", 129, 3
.Fields.Append "N", 5
.Open

For j = 1 To UBound(sn)
.AddNew
.Fields("N") = StrReverse(Val(StrReverse(sn(j, 1))))
.Fields("S") = Replace(sn(j, 1), .Fields("N"), "")
.Update
Next
.Sort = "S,N"

MsgBox Replace(Replace(.getstring, vbTab, ""), " ", "")
End With
End Sub
or


Sub M_snb()
sn = Sheet1.Cells(1).CurrentRegion.Columns(1)

With GetObject("new:{00000535-0000-0010-8000-00AA006D2EA4}")
.Fields.Append "S", 129, 3
.Fields.Append "N", 5
.Open

For j = 1 To UBound(sn)
.AddNew
.Fields("N") = StrReverse(Val(StrReverse(sn(j, 1))))
.Fields("S") = Replace(sn(j, 1), .Fields("N"), "")
.Update
Next
.Sort = "S,N"

sp = .getrows
For j = 0 To UBound(sp, 2)
sn(j + 1, 1) = Trim(sp(0, j)) & sp(1, j)
Next

Sheet1.Cells(1).CurrentRegion.Columns(1) = sn
End With
End Sub

p45cal
10-18-2021, 10:38 AM
Pascal, thanks also for your input. Unfortunately I can't use the performance advantage of PowerQuery here as the sorting needs to be done in situ.
That's possible with Power Query and 2 lines of VBA. It takes 20 seconds here to sort 280,000 records in situ.




Thank you Paul, that code works just as intended. I'm applying on a range that's quite a bit longer (280,000 rows); it takes a while, but does the job :)
Paul's code does take a while to complete with 280,000 records; I saw it was going to take some time so I left it running and went and chopped down a tree and planted 4 in its place. On returning I found it took 2.5 hours.
Paul's code takes a long time to execute because there's no Application.ScreenUpdating = False, but more importantly because it writes and reads to the sheet so many times.
In the attached, I've applied a few tweaks to Paul's code to reduce the number of read/writes to the sheet to just 4.
This took the time down to less than 4 seconds for 280,000 records, which is much faster than Power Query.

There is another difference I noticed; if you have values with leading zeroes in the numeric part like CB002, this get's reduced to CB2, which the PQ offering doesn't change. It would only need a bit more of a tweak to Paul's code to stop this happening.

Tom Jones
10-18-2021, 10:45 AM
@snb,

For me, your both VBA code, gave error.

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29059
Highlight this line:
.Fields("S") = Replace(sn(j, 1), .Fields("N"), "")

Paul_Hossler
10-18-2021, 12:23 PM
Thank you Paul, that code works just as intended. I'm applying on a range that's quite a bit longer (280,000 rows); it takes a while, but does the job :)



Sorry, if I had known you were talking about 280K entries, I would have used arrays (like I think P45cal did)

My fault was using a IMHO more straight-forward approach that I thought would be easier for you to integrate

If it still seems too slow, come on back, but p45cal's and snb's should work fine

p45cal
10-18-2021, 01:25 PM
@snb,
Highlight this line:
.Fields("S") = Replace(sn(j, 1), .Fields("N"), "")
I think it's to do with the original ending in a zero. In the following, zzz is your recordset object:

?sn(j, 1)
FVR25180
?StrReverse(sn(j, 1))
08152RVF
?Val(StrReverse(sn(j, 1)))
8152
?StrReverse(Val(StrReverse(sn(j, 1))))
2518
?zzz.Fields("N")
2518
?Replace(sn(j, 1), zzz.Fields("N"), "")
FVR0
I put it in code tags to try to preserve spaces/invisible characters.
Although the last command produces a string, it's the execution of:
.Fields("S") = Replace(sn(j, 1), .Fields("N"), "")
which throws an error.
Doing a Val on a string starting with zero, the zero is ignored.
Still don't know why it throws an error though…

edit: could it be because it's trying to put more than a 3-character string in a field with a defined size of 3?

snb
10-18-2021, 02:39 PM
In that case:


Sub M_snb()
sn = Sheet1.Cells(1).CurrentRegion.Columns(1)

With GetObject("new:{00000535-0000-0010-8000-00AA006D2EA4}")
.Fields.Append "S", 129, 3
.Fields.Append "N", 5
.Open

For j = 1 To UBound(sn)
.AddNew
y = StrReverse(Val(StrReverse(sn(j, 1))))
n = Left(sn(j, 1), InStr(sn(j, 1), y) - 1)
y = y * 10 ^ (Len(sn(j, 1)) - Len(y) - Len(n))
.Fields("S") = n
.Fields("N") = y
.Update
Next
.Sort = "S,N"

sp = .getrows
For j = 0 To UBound(sp, 2)
sn(j + 1, 1) = Trim(sp(0, j)) & sp(1, j)
Next

Sheet1.Cells(1).CurrentRegion.Columns(1) = sn
End With
End Sub

enjam
10-18-2021, 08:58 PM
Hi snb, thanks for your help, your revised VBA code also have me an error.

Apologies Paul for not specifying the number of rows; I will be more mindful of this in future posts.

Pascal thank you very much, that code works just as intended, and rapidly too. Is it possible to have a table 14 columns wide (and 280,000 rows long) to be sorted in this order, based on Column A?

Paul_Hossler
10-18-2021, 11:41 PM
Apologies Paul for not specifying the number of rows; I will be more mindful of this in future posts.

No problem - my personal first approach is to go with a simple approach, even if it's not as efficient as others. For 1000+ rows, I doubt there would be a perceptible wall clock time difference

280k rows requires a more efficient approach as P45cal and snb have said

I used P45cal's macro and 'generalized' it a bit to sort the block of data (.CurrentRegion) by the first column, and I assumed that you had headers

For testing in the attached (since the run time issue has been fixed) I just used a dozen rows and 14 columns, so try it with your real data




Option Explicit


Sub drv()
Call LetterNumberSort(ActiveSheet.Cells(1, 1).CurrentRegion)
End Sub


' composed of 1 to 3 letters, and then a number, with the length of this number ranging from 1 to 5 digits.
Sub LetterNumberSort(r As Range)
Dim i As Long
Dim aryValues As Variant
Dim s As String
Dim r1 As Range

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

aryValues = .Columns(1).Value


For i = 2 To UBound(aryValues, 1)
Call pvtFormatToSort(aryValues(i, 1))
Next

.Columns(1).Value = aryValues

With .Parent.Sort
.SortFields.Clear
.SortFields.Add Key:=r1.Columns(1), SortOn:=xlSortOnValues, Order:=xlAscending, DataOption:=xlSortNormal
.SetRange r
.Header = xlYes ' <<<<<<<<<<<<<<<<<<<<<<<<<<<<<<
.MatchCase = True
.Orientation = xlTopToBottom
.SortMethod = xlPinYin
.Apply
End With

aryValues = .Columns(1).Value

For i = 2 To UBound(aryValues)
Call pvtFormatToDisplay(aryValues(i, 1))
Next

.Columns(1).Value = aryValues
End With
End Sub


'1. objects are always passed ByRef
'2. r should be Dim-ed as a Range since it is a Range, and not a Variant
'3. I originally had these as Functions, but that way forces VBA to make copies of the strings
Private Sub pvtFormatToSort(r As Range)
Dim s1 As String, s2 As String, s3 As String

s1 = Trim(UCase(r))

If s1 Like "[A-Z]#*" Then
s2 = Left(s1, 1) & "00"
s3 = Right("00000" & Right(s1, Len(s1) - 1), 5)

ElseIf s1 Like "[A-Z][A-Z]#*" Then
s2 = Left(s1, 2) & "0"
s3 = Right("00000" & Right(s1, Len(s1) - 2), 5)


ElseIf s1 Like "[A-Z][A-Z][A-Z]#*" Then
s2 = Left(s1, 3)
s3 = Right("00000" & Right(s1, Len(s1) - 3), 5)
End If

r = s2 & s3
End Sub




Private Sub pvtFormatToDisplay(r As Range)
Dim s1 As String, s2 As String, s3 As String
Dim i As Long

s1 = r

If s1 Like "[A-Z]#*" Then
i = 2
ElseIf s1 Like "[A-Z][A-Z]#*" Then
i = 3
ElseIf s1 Like "[A-Z][A-Z][A-Z]#*" Then
i = 4
End If

s2 = Left(s1, i - 1)

Do While Mid(s1, i, 1) = 0
i = i + 1
Loop

s3 = Right(s1, Len(s1) - i + 1)

r = s2 & s3
End Sub

snb
10-19-2021, 12:18 AM
Are you always so lazy ?
Why don't you mention the 'error' ?
Why don't you indicate in which line the 'error' occurs ?
Why don't try to find out what could cause the 'problem'?
Why don't you even post a sample workbook ?
How can we know in which workbook you will apply the macro?
If you use this code in PH's sample workbook you will see that it will ignore the column label, that obviously has no number in it.


Sub M_snb()
sn = Sheet1.Columns(1).SpecialCells(2).Offset(1).SpecialCells(2)

With GetObject("new:{00000535-0000-0010-8000-00AA006D2EA4}")
.Fields.Append "S", 129, 3
.Fields.Append "N", 5
.Open

For j = 1 To UBound(sn)
.AddNew
y = StrReverse(Val(StrReverse(sn(j, 1))))
n = Left(sn(j, 1), InStr(sn(j, 1), y) - 1)
y = y * 10 ^ (Len(sn(j, 1)) - Len(y) - Len(n))
.Fields("S") = n
.Fields("N") = y
.Update
Next
.Sort = "S,N"

sp = .getrows
For j = 0 To UBound(sp, 2)
sn(j + 1, 1) = Trim(sp(0, j)) & sp(1, j)
Next

Sheet1.Columns(1).SpecialCells(2).Offset(1).SpecialCells(2) = sn
End With
End Sub

enjam
10-19-2021, 02:06 AM
Very sorry snb, I responded to these posts during the limited time I had during lunchbreak and can appreciate your frustration over the lack of detail in my response.

I have tested your code on PH's workbook and can confirm that it produces the desired output. Thank you.

p45cal
10-19-2021, 03:16 AM
'1. objects are always passed ByRef
'2. r should be Dim-ed as a Range since it is a Range, and not a Variant
'3. I originally had these as Functions, but that way forces VBA to make copies of the strings

Paul,
you're right about point 1, my ByRef was superfluous.
About point 2 I'm not so sure. The r in the pvtFormatToSort sub was not meant to be a range but a value/member in the aryValues array. The r in that sub is a different r from that in the LetterNumberSort sub (scope and all that). I tried running your code and was immediately met with a ByRef argument type mismatch error, which I'm nigh on certain is because you've Dim-med it as a range.
Re. point 3, I'm going to have an explore of making them into functions, but later…

p45cal
10-19-2021, 03:36 AM
Why don't you even post a sample workbook ?Exactly.

snb
10-19-2021, 07:40 AM
Faster alternative to randomize


Sub M_snb()
Dim sn(28 * 10 ^ 4, 0)
Randomize

For j = 1 To UBound(sn)
sn(j, 0) = Mid(Join(Array(Chr(65 + Int(25 * Rnd)), Chr(65 + (25 * Rnd)), Chr(65 + Int(26 * Rnd)), CLng(10 ^ 5 * Rnd)), ""), 1 + Int(3 * Rnd))
Next

Sheet1.Cells(1, 4).Resize(UBound(sn) + 1) = sn
End Sub

Paul_Hossler
10-19-2021, 10:03 AM
Paul,
About point 2 I'm not so sure. The r in the pvtFormatToSort sub was not meant to be a range but a value/member in the aryValues array. The r in that sub is a different r from that in the LetterNumberSort sub (scope and all that). I tried running your code and was immediately met with a ByRef argument type mismatch error, which I'm nigh on certain is because you've Dim-med it as a range.

Yea, you are 100% correct. :blush:blush:blush

In my second ('Sub' version) version I was passing a Range to the sub, but in your improved version using arrays, it should have been a Variant.

That was a change I made at the last minute using the "I don't need to test THIS little change" rule. :banghead::banghead:




Private Sub pvtFormatToSort(r As Variant)

Private Sub pvtFormatToDisplay(r As Variant)






Re. point 3, I'm going to have an explore of making them into functions, but later…

I was going by this (FWIW) figuring that the default ByRef in a Sub would save time taking the return from a Function and putting it back where it came from since the Sub would be operating on the 'real' parameter via it's address

https://www.aivosto.com/articles/stringopt.html#whyslow



Pass strings ByRef

How should you define procedure parameters for calls from within the same project?
ByVal is slow for string parameters. ByVal makes a copy of the string on every call. The good side is that a ByVal parameter is safe to modify: the modifications aren't passed back to the callers.
ByRef is faster because the string doesn't get copied. The drawback is that you have to be careful. If your intention is not to return a value in the ByRef parameter back to the caller, you may not accidentally write to this parameter.
Use ByRef instead of function return value

There's also an optimization trick for returning a string value. Returning a string as the function return value is the normal practice. However, returning a string in a ByRef parameter is faster.

snb
10-20-2021, 01:16 AM
Alternative:


Sub M_snb()
sn = Sheet1.ListObjects(1).DataBodyRange

For j = 1 To UBound(sn)
y = Val(StrReverse(sn(j, 1) & "9"))
y = Len(sn(j, 1)) + 1 - Len(y)
sn(j, 1) = Left(sn(j, 1), y) & Format(Mid(sn(j, 1), 1 + y), "00000")
Next

Cells(1, 10).Resize(UBound(sn)) = sn
With Columns(10)
.SpecialCells(2).Sort Cells(1, 10)
sn = Columns(10).SpecialCells(2)
.ClearContents
End With

For j = 1 To UBound(sn)
y = Val(StrReverse(sn(j, 1) & "9"))
y = Len(sn(j, 1)) + 1 - Len(y)
sn(j, 1) = Left(sn(j, 1), y) & Val(Mid(sn(j, 1), 1 + y))
Next

Sheet1.ListObjects(1).DataBodyRange = sn
End Sub