# is map/reduce appropriate for finding the median and mode of a set of values for many records?

I have a set of objects in Mongodb that each have a set of values embedded in them, e.g.:

`[1.22, 12.87, 1.24, 1.24, 9.87, 1.24, 87.65] // ... up to about 150 values`

Is a map/reduce the best solution for finding the median (average) and mode (most common value) in the embedded arrays? The reason that I ask is that the map and the reduce both have to return the same (structurally) set of values. It looks like in my case I want to take in a set of values (the array) and return a set of two values (median, mode).

If not, what's the best way to approach this? I want it to run in a rake task, if that's relevant. It'd be an overnight data crunching kind of thing.

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"Is a map/reduce the best solution for finding the median (average) and mode (most common value) in the embedded arrays? " Median is NOT average, it's the value at the midpoint. So do you want the median or mean (average)? –  scotts Jan 28 '12 at 17:58
@scotts ya caught me, I haven't taken statistics in years. I don't see how that changes the answer to the question. –  jcollum Jan 29 '12 at 0:02
Calculating the median is different from the mean because you need to sort the array of numbers –  stefann Jul 6 '13 at 0:49

I assume you want to find the mode & median of each document, you can do this with map reduce. In this case you calculate median & mode in the map function and reduce will return the map result untouched

``````map = function() {
var res = 0;
for (i = 0; i < this.marks.length; i++) {
res = res + this.marks[i];
}
var median = res/this.marks.length;
emit(this._id,{marks:this.marks,median:median});
}

reduce = function (k, values) {
values.forEach(function(value) {
result = value;
});
return result;
}
``````

and for this collection

``````{ "_id" : ObjectId("4f02be1f1ae045175f0eb9f1"), "name" : "ram", "marks" : [ 1.22, 12.87, 1.24, 1.24, 9.87, 1.24, 87.65 ] }
{ "_id" : ObjectId("4f02be371ae045175f0eb9f2"), "name" : "sam", "marks" : [ 1.32, 11.87, 12.4, 4.24, 9.37, 3.24, 7.65 ] }
{ "_id" : ObjectId("4f02be4c1ae045175f0eb9f3"), "name" : "pam", "marks" : [ 3.32, 10.17, 11.4, 2.24, 2.37, 3.24, 30.65 ] }
``````

you can get the median by

``````  db.test.mapReduce(map,reduce,{out: { inline : 1}})

{
"results" : [
{
"_id" : ObjectId("4f02be1f1ae045175f0eb9f1"),
"value" : {
"marks" : [
1.22,
12.87,
1.24,
1.24,
9.87,
1.24,
87.65
],
"median" : 16.475714285714286
}
},
{
"_id" : ObjectId("4f02be371ae045175f0eb9f2"),
"value" : {
"marks" : [
1.32,
11.87,
12.4,
4.24,
9.37,
3.24,
7.65
],
"median" : 7.155714285714285
}
},
{
"_id" : ObjectId("4f02be4c1ae045175f0eb9f3"),
"value" : {
"marks" : [
3.32,
10.17,
11.4,
2.24,
2.37,
3.24,
30.65
],
"median" : 9.055714285714286
}
}
],
"timeMillis" : 1,
"counts" : {
"input" : 3,
"emit" : 3,
"reduce" : 0,
"output" : 3
},
"ok" : 1,
}
``````
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This code doesn't calculate the median, rather it calculates the mean. Median is the number in the middle position in a sorted array of numbers. –  stefann Jul 6 '13 at 0:48

There's a key question here regarding the expected output. It's not 100% clear from your question which one you want.

Do you want (A):

``````{ _id: "document1", value: { mode: 1.0, median: 10.0 } }
{ _id: "document2", value: { mode: 5.0, median: 150.0 } }
... one for each document
``````

... or do you want (B), the mode and median across all the combination of all arrays.

• If the answer is (A), then Map/Reduce will work.
• If the answer is (B), then Map/Reduce will probably not work.

If you plan to do (A), please read the M/R documentation carefully and understand the limitations. While option (A) can be a Map/Reduce, it can also just be a big `for` loop with an `upsert` on the "summary" collection or even back into the original collection. This may be even more efficient.

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I'm looking for option A. I ran into enough cryptic errors in the map/reduce that I decided to just do a loop with a cursor (find/ forEach/update). I think you may be right that the loop will have better or at least the same performance. Thanks for the answer tho. –  jcollum Jan 3 '12 at 1:38
`If the answer is (B), then Map/Reduce will probably not work.` - If the calculation to be done is both commutative and associative then it can done with MR. mode (most common value) is similar to word count example, while calculating the median can be done by having one Reducers which takes the median from all the mappers and calculate the median again. –  Praveen Sripati Jan 3 '12 at 2:50
@jcollum: I honestly think the Ruby method may be better for the simple fact that you can parallelize the Ruby script and have no such option with Map / Reduce. –  Gates VP Jan 3 '12 at 10:00

I would start by read this http://www.mongovue.com/2010/11/03/yet-another-mongodb-map-reduce-tutorial/.

I think you want

1. A map stage to generate your key and single data element,
2. A reduce stage to place all the data elements into a data array for each key,
3. A finalize stage to perform your mean, median and mode operations on the entire collection.

## Finalize Function

A finalize function may be run after reduction. Such a function is optional and is not necessary for many map/reduce cases. The finalize function takes a key and a value, and returns a finalized value.

`function finalize(key, value) -> final_value`

Your reduce function may be called multiple times for the same object. Use finalize when something should only be done a single time at the end; for example calculating an average.

Taken from http://www.mongodb.org/display/DOCS/MapReduce

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