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View Full Version : [SOLVED:] Count the number if times a unique number appears in a list



Scuba
04-11-2024, 07:23 AM
Hi all,

I have a simple excel sheet that I need some help with a formula, I require a formula that looks at column B, and then Column C and returns the number of how many containers numbers match.

I don't need the sum of the values, just how many times a given container number is displayed when it it covers or falls under the same number from column B, Unique count as it where.

I have given an example of what I am after as the fished result in column D.

For example cell B2 & B3 have same number and column C2 & C3 have same number so the unique count of the container number in Cell D2 & D3 is actually only 1 and so forth as you go down the list

I'm probably not explaining myself clear here but hopefully column D will show what I'm after.

I'm hoping one of you wizards in excel can help me with this?

Thanks you in advance

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georgiboy
04-11-2024, 07:33 AM
Hi Scuba,

Did you intend to attach a file?

What version of Excel do you use: 2016, 2021, 365 etc.?

Scuba
04-11-2024, 07:46 AM
For some reason, it won't upload my excel file and so I put a picture in the original post, but that appears to have been removed?

I have shown below the data list,



MAWB/MBL
Container Number
Container Count


MEDUD8472729
TRLU4818477
0


MEDUD8472729
TRLU4818477
1


HLCUBC1240214568
TCLU4425450
0


HLCUBC1240214568
TCLU4425450
0


HLCUBC1240214568
TCLU4425450
1


ONEYHAMDC0153500
TRHU4029022
1


ONEYHAME01869400
TCLU8318357
1


HLCUGDY240132553
FANU1488766
0


HLCUGDY240132553
FANU1488766
0


HLCUGDY240132553
FANU1488766
0


HLCUGDY240132553
FANU1488766
1


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
1


HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
BEAU4183530



HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
BEAU4183530



HLCUGDY240144047
BEAU4183530



HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
BEAU4183530



HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
HLXU8418344



HLCUGDY240144047
HLXU8418344



HLCUGDY240217987
HLXU8129634



HLCUGDY240217987
FCIU7484437



HLCUGDY240217987
FCIU7484437




Thank you for answering so quickly

Aussiebear
04-11-2024, 01:33 PM
In the attached workbook, I have given you two examples of how it might be done.

Column E has a listing of the stripped numbers from Column B
Column F then counts the number of occurrences from Column E

Using Office 365 as the second example
Column H uses "=Unique($E$2:$E$35)"
Column I then counts the number of occurrences.

p45cal
04-11-2024, 02:14 PM
Try, in Aussiebear's workbook, in cell D3:
=COUNTIFS($B$3:$B$35,B3,$C$3:$C$35,C3)and copy down. It should work in any version of Excel from 2007

Aussiebear
04-11-2024, 03:41 PM
Hmmm.... that's different.

On another note: my example workbook should be adjusted as we don't really know which column represents what exactly. Will need to give this another thought.

p45cal
04-11-2024, 03:52 PM
Yes, the OP's question, seems contradictory:

just how many times a given container number is displayed when it it covers or falls under the same number from column B
and

cell B2 & B3 have same number and column C2 & C3 have same number so the unique count of the container number in Cell D2 & D3 is actually only 1

Surely it's possible for the OP to upload a small file with expected results?

Aussiebear
04-11-2024, 04:07 PM
okay here a second shot at the title....

In this workbook, I have stripped both Columns B & C down to unique values then conducted a count of.

counting numbers is a passion of mine in my position. :jail:

arnelgp
04-11-2024, 09:01 PM
also, maybe you can use VBA?

Scuba
04-12-2024, 01:56 AM
Hi all,

Sorry if my message is not clear, to try and clarify, the data in column B (MAWB/MBL) is a master file reference, under any given master file reference I could have instances where I have multiple container numbers (Column C 'Container Number').

I need to be able to count the unique number of time a container number is displayed in column C, that falls under the same master reference from column B.

I also need to leave the data as is i.e. I really need to find an option that works on the data as displayed, rather then doing further work first on the data.

This data is from a much larger data sheet, I just simplified it for the purposes of asking for help here.

I have managed to upload the file now, no idea why it didnt work before.

Regards

Scuba
04-12-2024, 02:07 AM
Replying to Post 9.

This worked perfectly and displays the data I need, however, is there a way to do this via Excel rather then VBA?

Regards

Richard

Aussiebear
04-12-2024, 02:12 AM
Your request was clear enough, its just the sample data you initially provided that was misleading. Did you try P45cals solution? From the workbook presented it appears you have done nothing. My issue is with the Counting, given that the count is duplicated. We can get around this by creating unique item listings for both columns and the count therefore is far more accurate. Which you can find in my second workbook.

However since you said you want to leave the data as is then so be it.

In short, in cell C2 enter the following formula
=Countifs($B$2:$B$136,B2,$C$2:$C$136,C2) and fill down. You simply need to adjust the range to suit your actual data.

Scuba
04-12-2024, 02:30 AM
Your request was clear enough, its just the sample data you initially provided that was misleading. Did you try P45cals solution? From the workbook presented it appears you have done nothing. My issue is with the Counting, given that the count is duplicated. We can get around this by creating unique item listings for both columns and the count therefore is far more accurate. Which you can find in my second workbook.

However since you said you want to leave the data as is then so be it.

In short, in cell C2 enter the following formula
=Countifs($B$2:$B$136,B2,$C$2:$C$136,C2) and fill down. You simply need to adjust the range to suit your actual data.


Hi,

Yes I did try P45 solution but this doesn't give a unique count, it just totals, which is not what I need to do, I need to count the total number of unique container numbers that are under the same Mawb number.

S0 for example




MAWB/MBL
Container Number
Container Count


MEDUD8472729
TRLU4818477
0


MEDUD8472729
TRLU4818477
1




The above data is telling me I moved 1 container against Mawb/MBL MEDUD8472729.


If I use P45 solution I get the below:




MAWB/MBL
Container Number
Container Count


MEDUD8472729
TRLU4818477
2


MEDUD8472729
TRLU4818477
2




Which gives wrong values

If I have the same container number displayed, this needs to be 'counted' as 1.

Hope that makes sense?

And that's for your patience everyone.

p45cal
04-12-2024, 02:39 AM
In the attached workbook I've added a column E. Do they show the correct values?
If column D is your expected results, I don't understand how any value can be 0, and why the values in cells D2 and D3 are different.

Screenshot of some of my results in the workbook:
31507

Scuba
04-12-2024, 02:51 AM
In the attached workbook I've added a column E. Do they show the correct values?
If column D is your expected results, I don't understand how any value can be 0, and why the values in cells D2 and D3 are different.

Screenshot of some of my results in the workbook:
31507

Hi,

Unfortunately no, its the unique or distinct count I need of column c, where the fall under the same number shown in column B

Some context, column B is a Master reference number, under any given master file reference, I could have multiple container numbers, some of these container numbers could be duplicated, as a result I need to count only like minded container numbers once, where they fall under the same Master Reference number (Column B)

See example below




MAWB/MBL
Container Number
Container Count


MEDUD8472729
TRLU4818477
0


MEDUD8472729
TRLU4818477
1


HLCUBC1240214568
TCLU4425450
0


HLCUBC1240214568
TCLU4425450
0


HLCUBC1240214568
TCLU4425450
1


ONEYHAMDC0153500
TRHU4029022
1


ONEYHAME01869400
TCLU8318357
1


HLCUGDY240132553
FANU1488766
0


HLCUGDY240132553
FANU1488766
0


HLCUGDY240132553
FANU1488766
0


HLCUGDY240132553
FANU1488766
1


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
0


HLCUGDY240213489
FANU3261386
1


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
BEAU4183530
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
BEAU4183530
0


HLCUGDY240144047
BEAU4183530
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
BEAU4183530
1


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
1




You will note each container number that is the same number is only counted once, as its the same container container number, so its the distinct count I need.

For example, from the above example under MAWB/MBL HLCUGDY240144047, I have only 2 container numbers, so the excel formula I need is to show 2




MAWB/MBL
Container Number
Container Count


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
BEAU4183530
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
BEAU4183530
0


HLCUGDY240144047
BEAU4183530
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
BEAU4183530
1


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
0


HLCUGDY240144047
HLXU8418344
1

Aussiebear
04-12-2024, 03:10 AM
P45cal, I think its more a VBA issue than a formula one.

arnelgp
04-12-2024, 03:27 AM
why can't you use a macro?

p45cal
04-12-2024, 03:46 AM
Unfortunately no, its the unique or distinct count I need of column c, where the fall under the same number shown in column BHow can ANY result be 0?!
My results are a distinct count of container number for every MAWB/MBL



You will note each container number that is the same number is only counted once, as its the same container container number, so its the distinct count I need.
For example, from the above example under MAWB/MBL HLCUGDY240144047, I have only 2 container numbers, so the excel formula I need is to show 2
This is a screenshot from my results; it looks like it's a 2 to me.

31510

p45cal
04-12-2024, 03:46 AM
P45cal, I think its more a VBA issue than a formula one.

It may be but I'm trying to get a definitive answer to what is required first.

Scuba
04-12-2024, 03:58 AM
How can ANY result be 0?!
My results are a distinct count of container number for every MAWB/MBL



This is a screenshot from my results; it looks like it's a 2.
31510


Hi,

You are correct but I need to total (sum) column C so I can obtain a count of unique container numbers, if I use your version I get incorrect values.

I think I may have solved it myself here by using the below code


=IF(COUNTIFS(B:B, B2,C:C,C2)>1,IF(COUNTIFS(B:B,B2,C:C,C2)>1,IF(COUNTIFS($B$2:B2, B2, $C$2:C2,C2)=1,1,0),""), 1)

UPDATE!

Actually this fails on some lines, unless I do a 'SORT' on column B in Ascending order, then formula works across all lines.

Would be good to get this to work without the need to sort in ascending order each time though, any thoughts people?

Aussiebear
04-12-2024, 04:16 AM
Actually not quite Scuba, since you asked for the reverse of this effect. With your lastest Workbook sample it only counts the first occurrence with the exception of Cell E2 which for some reason is showing =G4.

Scuba
04-12-2024, 04:23 AM
Actually not quite Scuba, since you asked for the reverse of this effect. With your lastest Workbook sample it only counts the first occurrence with the exception of Cell E2 which for some reason is showing =G4.

Soz, I had corrected it but uploaded wrong version, correct version attached now

georgiboy
04-12-2024, 04:25 AM
I did ask before, which version of Excel do you use?

For example, if you use Excel 365 you could use the below (first item gets a 1):

=LET(m,B2:B106,c,C2:C106,r,XLOOKUP(UNIQUE(m&c),m&c,ROW(m)),IF(ISNUMBER(XMATCH(ROW(m),r)),1,0))

The reverse version would be (last item gets a 1):

=LET(m,B2:B106,c,C2:C106,r,XLOOKUP(UNIQUE(m&c),m&c,ROW(m),,,-1),IF(ISNUMBER(XMATCH(ROW(m),r)),1,0))

p45cal
04-12-2024, 04:27 AM
but I need to total (sum) column C so I can obtain a count of unique container numbersSo if arnelgp's vba solution is correct, that sum is 44, which you can also get from
=ROWS(UNIQUE(B2:C106))

georgiboy
04-12-2024, 04:34 AM
@p45cal I make you right, but that depends on their Excel version and if they want to see the result row by row or just the overall sum of unique.

Scuba
04-12-2024, 04:37 AM
I did ask before, which version of Excel do you use?

For example, if you use Excel 365 you could use the below:

=LET(m,B2:B106,c,C2:C106,r,XLOOKUP(UNIQUE(m&c),m&c,ROW(m)),IF(ISNUMBER(XMATCH(ROW(m),r)),1,0))

The reverse effect version would be:

=LET(m,B2:B106,c,C2:C106,r,XLOOKUP(UNIQUE(m&c),m&c,ROW(m),,,-1),IF(ISNUMBER(XMATCH(ROW(m),r)),1,0))

Apologies, I use Office 365 :)

I'll try these now, thank you

p45cal
04-12-2024, 04:39 AM
depends on their Excel versionExamination of the zip version of their workbook implies it can handle UNIQUE:

31513

georgiboy
04-12-2024, 04:39 AM
Don't forget to look at @p45cal's option in post 24 if you are just wanting an overall sum of unique.

georgiboy
04-12-2024, 04:42 AM
Examination of the zip version of their workbook implies it can handle UNIQUE:

Appreciate that but I think the TS should inform us, especially when they have already been asked.

Scuba
04-12-2024, 04:44 AM
I did ask before, which version of Excel do you use?

For example, if you use Excel 365 you could use the below (first item gets a 1):

=LET(m,B2:B106,c,C2:C106,r,XLOOKUP(UNIQUE(m&c),m&c,ROW(m)),IF(ISNUMBER(XMATCH(ROW(m),r)),1,0))

The reverse version would be (last item gets a 1):

=LET(m,B2:B106,c,C2:C106,r,XLOOKUP(UNIQUE(m&c),m&c,ROW(m),,,-1),IF(ISNUMBER(XMATCH(ROW(m),r)),1,0))


This works perfectly for Office 365 and is exactly what I was trying to achieve. :bow: :clap:

Thank you everyone who contributed to this, we got there in the end.

Regards

Richard

georgiboy
04-12-2024, 04:46 AM
If you do want an overall sum then you should look at post 24 from @p45cal as it makes more sense, less intensive on the system.

p45cal
04-12-2024, 04:50 AM
Appreciate that but I think the TS should inform us, especially when they have already been asked.Absolutely!

p45cal
04-12-2024, 04:51 AM
Row2:
=--(COUNTIFS($B$2:$B$106,B2,$C$2:$C$106,C2)=COUNTIFS($B$2:$B2,B2,$C$2:$C2,C2)) copy down.

georgiboy
04-12-2024, 05:07 AM
That's a nice simple option

arnelgp
04-12-2024, 05:13 AM
simplifying your original formula:


=IF(COUNTIFS(B:B, B2,C:C,C2)>1,IF(COUNTIFS(B:B,B2,C:C,C2)>1,IF(COUNTIFS($B$2:B2, B2, $C$2:C2,C2)=1,1,0),""), 1)

becomes:


=IF(COUNTIFS($B2:$B$106, B2,$C2:$C$106,C2)>1,0,1)

Scuba
04-12-2024, 05:19 AM
simplifying your original formula:


=IF(COUNTIFS(B:B, B2,C:C,C2)>1,IF(COUNTIFS(B:B,B2,C:C,C2)>1,IF(COUNTIFS($B$2:B2, B2, $C$2:C2,C2)=1,1,0),""), 1)

becomes:


=IF(COUNTIFS($B2:$B$106, B2,$C2:$C$106,C2)>1,0,1)

That works even sexier :bow::clap:

Aussiebear
04-12-2024, 01:59 PM
Sorry to intrude again here but I was testing the results on a table, when I noticed that arnelgp's formula worked but Georgiboy's created a Spill error.

p45cal
04-12-2024, 02:08 PM
Such array formulae don't work well with tables.

georgiboy
04-12-2024, 02:31 PM
Indeed, I feel that it is a design flaw on Microsofts part.

They push us to use table objects and then don't support their new features with them.