Data structure for mixed-type arrays - cellarray, dataset, structarray, struct of arrays, or other?
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I need to process large amounts of tabular data of mixed type - strings and doubles. A standard problem, I would think. What is the best data structure in Matlab for working with this?
Cellarray is definitely not the answer. It is extremely memory inefficient. (tests shown below). Dataset (from stats toolbox) is horribly time and space inefficient. That leaves me with structarray or struct of arrays. I did a test across all four different options for both time and memory below and it seems to me the struct of arrays is the best option for the things I tested for.
I am relatively new to Matlab and this is a bit disappointing, frankly. Anyway - looking for advice on whether I am missing something, or if my tests are accurate/reasonable. Am I missing other considerations besides access/conversion/memory usage that are likely to come up as I code more using this stuff. (fyi am using R2010b)
**** Test #1: Access speed Accessing a data item.
cellarray:0.002s
dataset:36.665s       %<<< This is horrible
structarray:0.001s
struct of array:0.000s
**** Test #2: Conversion speed and memory usage I dropped dataset from this test.
Cellarray(doubles)->matrix:d->m: 0.865s
Cellarray(mixed)->structarray:c->sc: 0.268s
Cellarray(doubles)->structarray:d->sd: 0.430s
Cellarray(mixed)->struct of arrays:c->sac: 0.361s
Cellarray(doubles)->struct of arrays:d->sad: 0.887s
    Name           Size               Bytes  Class     Attributes
    c         100000x10            68000000  cell                
    d         100000x10            68000000  cell                
    m         100000x10             8000000  double              
    sac            1x1             38001240  struct              
    sad            1x1              8001240  struct              
    sc        100000x1             68000640  struct              
    sd        100000x1             68000640  struct
================== CODE: TEST#1
    %%cellarray
    c = cell(100000,10);
    c(:,[1,3,5,7,9]) = num2cell(zeros(100000,5));
    c(:,[2,4,6,8,10]) = repmat( {'asdf'}, 100000, 5);
    cols = strcat('Var', strtrim(cellstr(num2str((1:10)'))))';
    te = tic;
    for iii=1:1000
        x = c(1234,5);
    end
    te = toc(te);
    fprintf('cellarray:%0.3fs\n', te);
    %%dataset
    ds = dataset( { c, cols{:} } );
    te = tic;
    for iii=1:1000
        x = ds(1234,5);
    end
    te = toc(te);
    fprintf('dataset:%0.3fs\n', te);
    %%structarray
    s = cell2struct( c, cols, 2 );
    te = tic;
    for iii=1:1000
        x = s(1234).Var5;
    end
    te = toc(te);
    fprintf('structarray:%0.3fs\n', te);
    %%struct of arrays
    for iii=1:numel(cols)
        if iii/2==floor(iii/2) % even => string
            sac.(cols{iii}) = c(:,iii);
        else
            sac.(cols{iii}) = cell2mat(c(:,iii));
        end
    end
    te = tic;
    for iii=1:1000
        x = sac.Var5(1234);
    end
    te = toc(te);
    fprintf('struct of array:%0.3fs\n', te);
================== CODE: TEST #2
    %%cellarray
    % c - cellarray containing mixed type 
    c = cell(100000,10);
    c(:,[1,3,5,7,9]) = num2cell(zeros(100000,5));
    c(:,[2,4,6,8,10]) = repmat( {'asdf'}, 100000, 5);
    cols = strcat('Var', strtrim(cellstr(num2str((1:10)'))))';
    % c - cellarray containing doubles only
    d = num2cell( zeros( 100000, 10 ) );
    %%matrix
    % doubles only
    te = tic;
    m = cell2mat(d);
    te = toc(te);
    fprintf('Cellarray(doubles)->matrix:d->m: %0.3fs\n', te);
    %%structarray
    % mixed
    te = tic;
    sc = cell2struct( c, cols, 2 );
    te = toc(te);
    fprintf('Cellarray(mixed)->structarray:c->sc: %0.3fs\n', te);
    % doubles
    te = tic;
    sd = cell2struct( d, cols, 2 );
    te = toc(te);
    fprintf('Cellarray(doubles)->structarray:d->sd: %0.3fs\n', te);
    %%struct of arrays
    % mixed
    te = tic;
    for iii=1:numel(cols)
        if iii/2==floor(iii/2) % even => string
            sac.(cols{iii}) = c(:,iii);
        else
            sac.(cols{iii}) = cell2mat(c(:,iii));
        end
    end
    te = toc(te);
    fprintf('Cellarray(mixed)->struct of arrays:c->sac: %0.3fs\n', te);
    % doubles
    te = tic;
    for iii=1:numel(cols)
        sad.(cols{iii}) = cell2mat(d(:,iii));
    end
    te = toc(te);
    fprintf('Cellarray(doubles)->struct of arrays:d->sad: %0.3fs\n', te);
    clear iii cols te;
    whos
5 Kommentare
  Matt J
      
      
 am 26 Apr. 2013
				
      Bearbeitet: Matt J
      
      
 am 26 Apr. 2013
  
			I'm a bit surprised to discover that sortrows works on cells. Nothing in the documentation about it.
Anyway, the fact that it requires multiple lines of code wouldn't make it "painful" in my book. You can always encapsulate the multiple lines in your own mfile and just reuse that.
The issue you point out is also only an issue when the columns being sorted are of mixed type. My approach might be to convert all the numeric data to strings and then concatenate the columns being sorted into one big string matrix. Then I can run sortrows on that.
  per isakson
      
      
 am 26 Apr. 2013
				[num2cell(sac.Var1(1:10)), sac.Var2(1:10), ...]
This operation represents a cost. What is the benifit of storing Var1, Var2, etc. in separate fields compared to a double array?
Akzeptierte Antwort
  Marc
      
 am 29 Feb. 2016
        I thought about asking a question but was wondering if the "table" structure fits this. I cannot confirm when this data type was released (looks like it wasn't in 2010a or 2012a) but I have been using this now for a wide range of stuff that I dump into excel files and want to do some serious analysis on. In 2015b, the help doc refers you to table when looking at dataset, so it looks like the table data type will be replacing this in the future. Works pretty well if you do a lot of design of experiments and like me, have to dump the data somewhere like excel or some database due to work requirements.
If you format the excel file correctly, reading in tabular data to a table is really easy.
2 Kommentare
  per isakson
      
      
 am 29 Feb. 2016
				
      Bearbeitet: per isakson
      
      
 am 29 Feb. 2016
  
			- table, Create table from workspace variables says: Introduced in R2013b
- dataset is in the Statistical Toolbox. However, it seems as if they decided to move the functionality to table in Matlab itself.
  Guillaume
      
      
 am 29 Feb. 2016
				In the context of this thread, a table is equivalent to a cell of arrays in term of memory overhead. Access is a bit more convenient at the expense of performance.
Weitere Antworten (2)
  Matt J
      
      
 am 26 Apr. 2013
        
      Bearbeitet: Matt J
      
      
 am 18 Mai 2013
  
      As best I can tell, you haven't tested a "cell of arrays", i.e., instead of having a 100000x10 cell array, have a 1x10 cell array where each c{i} contains an array of a column of data. Should be similar to "struct of arrays", but with easier indexing.
Beyond that, nothing in your tests is very unexpected. You have a large amount of data and have to be careful not to scatter it discontiguously in memory. Successive cell/struct elements cannot be held contiguously in memory, because they hold non-homogeneous data types. Numeric and string arrays are contiguous, however, so by grouping things into large numeric/string sub-arrays where possible, you maximize data contiguity, which leads to efficiencies both in access speed and memory usage.
As for "dataset", I cannot comment, since I don't have the Stats Toolbox. However, a mixed data table with 100000 rows is uncommonly large in my experience. I don't think you would ever see it in an Excel spreadsheet, for example. If dataset was meant to be "Excel-like", I can imagine 100000 rows being usage outside of what the designers anticipated.
3 Kommentare
  matal
      
 am 17 Mai 2013
        1 Kommentar
  Cedric
      
      
 am 17 Mai 2013
				
      Bearbeitet: Cedric
      
      
 am 17 Mai 2013
  
			It would not be too difficult to create your own class for that if you can precisely define what you need, moreover if you know OOP but never used it in MATLAB. Let us know if you are interested, this would be a good "case/pretext/application" to make the step towards OOP. It would not be more efficient than managing numeric arrays and cell arrays, as you would essentially build a wrapper around these structures with proper methods to manage size/indexing, but it would make the whole clean and consistent.
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