Trouble pivoting large table using unstack function

3 views (last 30 days)
I have a large table (6307840x42) that I need to pivot. To scale down the problem, let's assume the table looks something like this:
Measurement Value DUT # DUT Barcode
___________ _____ _______ ___________
Temperature 50 1 ABC123
Humidity 15 1 ABC123
Voltage 1.2 1 ABC123
Temperature 52 2 DEF456
Humidity 12 2 DEF456
Voltage 1.1 2 DEF456
Temperature 48 3 GHI789
Humidity 17 3 GHI789
Voltage 0.8 3 GHI789
I want to pivot the above table such that the values in the Measurement column become new column titles which contain the data stored in the Value column:
Temperature Humidity Voltage DUT # DUT Barcode
___________ ________ _______ _____ ___________
50 15 1.2 1 ABC123
52 12 1.1 2 DEF456
48 17 0.8 3 GHI789
I have tried using the unstack function to achieve this, but the result spits out a 0x62 sized table containing only the pivoted variable names, but no data. My code looks something like this:
ds = datastore('myTable.csv')
myTable = readall(ds);
myPivotedTable = unstack(myTable,'Value','Measurement');
Am I using the unstack function incorrectly? Am I approaching the problem compeltely the wrong way? Any help would be greatly appreciated.

Accepted Answer

Guillaume
Guillaume on 26 Jun 2019
Works fine for me with your little example:
Measurement = repmat({'Temperature'; 'Humidity'; 'Voltage'}, 3, 1);
Value = [50; 15; 1.2; 52; 12; 1.1; 48; 17; 0.8];
DUT = repelem([1; 2; 3], 3);
Barcode = repelem({'ABC123'; 'DEF456'; 'GHI789'}, 3);
myTable = table(Measurement, Value, DUT, Barcode)
unstack(myTable, 'Value', 'Measurement')
myTable =
9×4 table
Measurement Value DUT Barcode
_____________ _____ ___ ________
'Temperature' 50 1 'ABC123'
'Humidity' 15 1 'ABC123'
'Voltage' 1.2 1 'ABC123'
'Temperature' 52 2 'DEF456'
'Humidity' 12 2 'DEF456'
'Voltage' 1.1 2 'DEF456'
'Temperature' 48 3 'GHI789'
'Humidity' 17 3 'GHI789'
'Voltage' 0.8 3 'GHI789'
ans =
3×5 table
DUT Barcode Humidity Temperature Voltage
___ ________ ________ ___________ _______
1 'ABC123' 15 50 1.2
2 'DEF456' 12 52 1.1
3 'GHI789' 17 48 0.8
so, I'm not sure why you end up with an empty result. However, not that if unique DUT don't match unique Barcode you're going to end up with a lot of NaN in your output (but it should never be empty). It may be better to consider either DUT or Barcode as a constant:
>> unstack(myTable, 'Value', 'Measurement', 'ConstantVariables', 'Barcode')
ans =
3×5 table
DUT Barcode Humidity Temperature Voltage
___ ________ ________ ___________ _______
1 'ABC123' 15 50 1.2
2 'DEF456' 12 52 1.1
3 'GHI789' 17 48 0.8
  5 Comments
Guillaume
Guillaume on 26 Jun 2019
The problem has nothing to do with the size of the table indeed. It's due to the NaN columns. You could either not include them in the call to unstack, or tell unstack to consider them constant:
ds = datastore('EmmonsL18-1_THD.csv');
myTable = readall(ds); %might take a while!
%find NaN variables
toignore = varfun(@(var) isnumeric(var) && any(isnan(var)), mytable, 'OutputFormat', 'Uniform');
%option 1: don't include the NaN variables
myPivotTable = unstack(myTable(:, ~toignore), 'Value', 'Measurement');
%option 2: consider them constant
myPivotTable = unstack(myTable, 'Value', 'Measurement', 'ConstantVariables', toignore);
Justin Dubin
Justin Dubin on 26 Jun 2019
Well that sure solved it! Thanks for the help, Guillaume. I didn't realize you could not pivot NaNs. I learned something today!

Sign in to comment.

More Answers (0)

Categories

Find more on Descriptive Statistics in Help Center and File Exchange

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!