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If I had data that looked like this:

harvest = [{type: "apple", color: "green", value: 1}, 
           {type: "apple", color: "red", value: 2}, 
           {type: "grape", color: "green", value: 3},
           {type: "grape", color: "red", value: 4 }]

I could sum it by various attributes using d3's nest.rollup() function:

sum_by = "color";

rollup = d3.nest().key(function(d) {
  return d[sum_by];
}).rollup(function(d) {
  return d3.sum(d, function(g) {
    return g.value;
  });
}).entries(harvest);

Giving me this:

rollup = [{key: "green", values: 4},
          {key: "red", values: 6}]

Which is just what I want.

However the values in my data consist of arrays, all of equal length:

harvest = [{type: "apple", color: "green", values: [1,2,3,4]}, 
           {type: "apple", color: "red", values: [5,6,7,8]}, 
           {type: "grape", color: "green", values: [9,10,11,12]},
           {type: "grape", color: "red", values: [13,14,15,16] }]

Is it possible to combine these in a similar way? To give for example:

rollup = [{key: "green", values: [10,12,14,16]},
          {key: "red", values: [18,20,22,24]}]

I feel this is probably possible using a d3 rollup function (but it doesn't necessarily have to be done using d3).

RESOLUTION

Thanks to the efforts of @meetamit and @Superboggly I have three solutions:

Version 1 (preferred because it uses reduce() just once and map() just once):

function sumArrays(group) {
  return group.reduce(function(prev, cur, index, arr) {
    return {
      values: prev.values.map(function(d, i) {
        return d + cur.values[i];
      })
    };
  });
}

Version 2:

function sumArrays(group) {
  return group.map(function(h) {
    return h.values;
  }).reduce(function(prev, cur, index, arr) {
    return prev.map(function(d, i) {
      return d + cur[i];
    });
  });
}

Version 3 (for interest because array length can vary):

function sumArrays(group) {
  return group.reduce(function(prev, cur, index, arr) {
    return prev.map(function(d, i) {
      return d + cur.values[i];
    });
  }, [0, 0, 0, 0]);
}

Called like this:

function rollupArrays() {
  return d3.nest().key(function(d) {
    return d[sum_by];
  }).rollup(sumArrays).entries(harvest);
}

And converted to CoffeeScript:

rollupArrays = ->
  d3.nest().key (d) ->
    d[sum_by]
  .rollup(sumArrays).entries(harvest)

sumArrays = (group) ->
  group.reduce (prev, cur, index, arr) ->
    values: prev.values.map (d,i) ->
      d + cur.values[i]

UPDATE

This method isn't suitable if the function must run, even with one input row. See Part II

share|improve this question

2 Answers 2

up vote 4 down vote accepted

One solution uses [].reduce() and [].map():

// eg: sumArrays([ [1,2,3,4], [5,6,7,8] ]);// <- outputs [6, 8, 10, 12]
function sumArrays(arrays) {
  return arrays.reduce(
    function(memo, nums, i) {
      if(i == 0)
        return nums.concat();
      else
        return memo.map(
          function(memoNum, i) {
            return memoNum + nums[i];
          }
        );
    },
    [ ]// Start with empty Array for memo
  );
}

Both reduce and map are not native in old JS, so best use a module (underscore, or maybe there's a d3 equivalent to reduce, but I haven't seen it).

EDIT

Using it in your code:

sum_by = "color";

rollup = d3.nest().key(function(d) {
  return d[sum_by];
}).rollup(function(d) {
  var arraysToSum = d.map(function(g) { return g.values; });
  return sumArrays(arraysToSum)
}).entries(harvest);
share|improve this answer
    
Thanks. This function works, but I haven't yet figured out how to apply it. Simply doing "return sumArrays(d, function(g) { return g.values;..." doesn't work, giving "memo.map is not a function." Any pointers appreciated. –  Derek Hill Nov 14 '12 at 23:36
    
K, I added usage example. –  meetamit Nov 15 '12 at 2:12
    
Great. Took me a moment to get my head round this but working perfectly now. –  Derek Hill Nov 15 '12 at 19:31
    
Cool, thanks. But you should probably use @Superboggly's solution, since it's even more compact (still uses the same reduce() method). –  meetamit Nov 15 '12 at 19:34
    
OK. It's good having both these solutions because I can take them to bits and really get into these methods. Thanks! –  Derek Hill Nov 15 '12 at 19:38

@meetamit I like your idea of using reduce.

If you want to solve this just using d3 it also has a built in reduce which you can use in conjunction with the nest function:

var rollup = d3.nest().key(function(d) {
  return d[sum_by];
}).rollup(function(d) {
    var result = d.reduce(function(prev, cur, index, arr) {
        return prev.values.map(function(d,i) { return d + cur.values[i];});
    });

    return result;
}).entries(harvest);

If you want you can play with it here.

share|improve this answer
    
Actually, this is still using the native reduce(), but much more compactly than my version. I hadn't realized that reduce can work without an initial value (in which case it starts from the 2nd element, passing in the 1st val). Cool. –  meetamit Nov 15 '12 at 16:22
    
I'm afraid there's a bug in here. When I add another row to my data with an existing type or color (e.g. a 3rd row for "apple" like this) I get the message "prev.values is undefined." Any suggestions? –  Derek Hill Nov 15 '12 at 21:32
    
@DerekHill, I modified your jsfiddle to fix this bug, by adding { values:... } (too hard to explain why, you need to think about it). Solution is kinda iffy. –  meetamit Nov 15 '12 at 23:04
    
Ah, yeah! That is not very good for my solution! Basically I am changing the type of prev as it goes - you don't notice when there are only two items to iterate through. meetamit's fix is good! In the interest of providing yet another alternative you can also pass in an initialization value to the reduce method. Check the updated fiddle –  Superboggly Nov 16 '12 at 1:23

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