random results in mongodb with php [duplicate] - php

I am looking to get a random record from a huge collection (100 million records).
What is the fastest and most efficient way to do so?
The data is already there and there are no field in which I can generate a random number and obtain a random row.

Starting with the 3.2 release of MongoDB, you can get N random docs from a collection using the $sample aggregation pipeline operator:
// Get one random document from the mycoll collection.
db.mycoll.aggregate([{ $sample: { size: 1 } }])
If you want to select the random document(s) from a filtered subset of the collection, prepend a $match stage to the pipeline:
// Get one random document matching {a: 10} from the mycoll collection.
db.mycoll.aggregate([
{ $match: { a: 10 } },
{ $sample: { size: 1 } }
])
As noted in the comments, when size is greater than 1, there may be duplicates in the returned document sample.

Do a count of all records, generate a random number between 0 and the count, and then do:
db.yourCollection.find().limit(-1).skip(yourRandomNumber).next()

Update for MongoDB 3.2
3.2 introduced $sample to the aggregation pipeline.
There's also a good blog post on putting it into practice.
For older versions (previous answer)
This was actually a feature request: http://jira.mongodb.org/browse/SERVER-533 but it was filed under "Won't fix."
The cookbook has a very good recipe to select a random document out of a collection: http://cookbook.mongodb.org/patterns/random-attribute/
To paraphrase the recipe, you assign random numbers to your documents:
db.docs.save( { key : 1, ..., random : Math.random() } )
Then select a random document:
rand = Math.random()
result = db.docs.findOne( { key : 2, random : { $gte : rand } } )
if ( result == null ) {
result = db.docs.findOne( { key : 2, random : { $lte : rand } } )
}
Querying with both $gte and $lte is necessary to find the document with a random number nearest rand.
And of course you'll want to index on the random field:
db.docs.ensureIndex( { key : 1, random :1 } )
If you're already querying against an index, simply drop it, append random: 1 to it, and add it again.

You can also use MongoDB's geospatial indexing feature to select the documents 'nearest' to a random number.
First, enable geospatial indexing on a collection:
db.docs.ensureIndex( { random_point: '2d' } )
To create a bunch of documents with random points on the X-axis:
for ( i = 0; i < 10; ++i ) {
db.docs.insert( { key: i, random_point: [Math.random(), 0] } );
}
Then you can get a random document from the collection like this:
db.docs.findOne( { random_point : { $near : [Math.random(), 0] } } )
Or you can retrieve several document nearest to a random point:
db.docs.find( { random_point : { $near : [Math.random(), 0] } } ).limit( 4 )
This requires only one query and no null checks, plus the code is clean, simple and flexible. You could even use the Y-axis of the geopoint to add a second randomness dimension to your query.

The following recipe is a little slower than the mongo cookbook solution (add a random key on every document), but returns more evenly distributed random documents. It's a little less-evenly distributed than the skip( random ) solution, but much faster and more fail-safe in case documents are removed.
function draw(collection, query) {
// query: mongodb query object (optional)
var query = query || { };
query['random'] = { $lte: Math.random() };
var cur = collection.find(query).sort({ rand: -1 });
if (! cur.hasNext()) {
delete query.random;
cur = collection.find(query).sort({ rand: -1 });
}
var doc = cur.next();
doc.random = Math.random();
collection.update({ _id: doc._id }, doc);
return doc;
}
It also requires you to add a random "random" field to your documents so don't forget to add this when you create them : you may need to initialize your collection as shown by Geoffrey
function addRandom(collection) {
collection.find().forEach(function (obj) {
obj.random = Math.random();
collection.save(obj);
});
}
db.eval(addRandom, db.things);
Benchmark results
This method is much faster than the skip() method (of ceejayoz) and generates more uniformly random documents than the "cookbook" method reported by Michael:
For a collection with 1,000,000 elements:
This method takes less than a millisecond on my machine
the skip() method takes 180 ms on average
The cookbook method will cause large numbers of documents to never get picked because their random number does not favor them.
This method will pick all elements evenly over time.
In my benchmark it was only 30% slower than the cookbook method.
the randomness is not 100% perfect but it is very good (and it can be improved if necessary)
This recipe is not perfect - the perfect solution would be a built-in feature as others have noted.
However it should be a good compromise for many purposes.

Here is a way using the default ObjectId values for _id and a little math and logic.
// Get the "min" and "max" timestamp values from the _id in the collection and the
// diff between.
// 4-bytes from a hex string is 8 characters
var min = parseInt(db.collection.find()
.sort({ "_id": 1 }).limit(1).toArray()[0]._id.str.substr(0,8),16)*1000,
max = parseInt(db.collection.find()
.sort({ "_id": -1 })limit(1).toArray()[0]._id.str.substr(0,8),16)*1000,
diff = max - min;
// Get a random value from diff and divide/multiply be 1000 for The "_id" precision:
var random = Math.floor(Math.floor(Math.random(diff)*diff)/1000)*1000;
// Use "random" in the range and pad the hex string to a valid ObjectId
var _id = new ObjectId(((min + random)/1000).toString(16) + "0000000000000000")
// Then query for the single document:
var randomDoc = db.collection.find({ "_id": { "$gte": _id } })
.sort({ "_id": 1 }).limit(1).toArray()[0];
That's the general logic in shell representation and easily adaptable.
So in points:
Find the min and max primary key values in the collection
Generate a random number that falls between the timestamps of those documents.
Add the random number to the minimum value and find the first document that is greater than or equal to that value.
This uses "padding" from the timestamp value in "hex" to form a valid ObjectId value since that is what we are looking for. Using integers as the _id value is essentially simplier but the same basic idea in the points.

Now you can use the aggregate.
Example:
db.users.aggregate(
[ { $sample: { size: 3 } } ]
)
See the doc.

In Python using pymongo:
import random
def get_random_doc():
count = collection.count()
return collection.find()[random.randrange(count)]

Using Python (pymongo), the aggregate function also works.
collection.aggregate([{'$sample': {'size': sample_size }}])
This approach is a lot faster than running a query for a random number (e.g. collection.find([random_int]). This is especially the case for large collections.

it is tough if there is no data there to key off of. what are the _id field? are they mongodb object id's? If so, you could get the highest and lowest values:
lowest = db.coll.find().sort({_id:1}).limit(1).next()._id;
highest = db.coll.find().sort({_id:-1}).limit(1).next()._id;
then if you assume the id's are uniformly distributed (but they aren't, but at least it's a start):
unsigned long long L = first_8_bytes_of(lowest)
unsigned long long H = first_8_bytes_of(highest)
V = (H - L) * random_from_0_to_1();
N = L + V;
oid = N concat random_4_bytes();
randomobj = db.coll.find({_id:{$gte:oid}}).limit(1);

You can pick a random timestamp and search for the first object that was created afterwards.
It will only scan a single document, though it doesn't necessarily give you a uniform distribution.
var randRec = function() {
// replace with your collection
var coll = db.collection
// get unixtime of first and last record
var min = coll.find().sort({_id: 1}).limit(1)[0]._id.getTimestamp() - 0;
var max = coll.find().sort({_id: -1}).limit(1)[0]._id.getTimestamp() - 0;
// allow to pass additional query params
return function(query) {
if (typeof query === 'undefined') query = {}
var randTime = Math.round(Math.random() * (max - min)) + min;
var hexSeconds = Math.floor(randTime / 1000).toString(16);
var id = ObjectId(hexSeconds + "0000000000000000");
query._id = {$gte: id}
return coll.find(query).limit(1)
};
}();

My solution on php:
/**
* Get random docs from Mongo
* #param $collection
* #param $where
* #param $fields
* #param $limit
* #author happy-code
* #url happy-code.com
*/
private function _mongodb_get_random (MongoCollection $collection, $where = array(), $fields = array(), $limit = false) {
// Total docs
$count = $collection->find($where, $fields)->count();
if (!$limit) {
// Get all docs
$limit = $count;
}
$data = array();
for( $i = 0; $i < $limit; $i++ ) {
// Skip documents
$skip = rand(0, ($count-1) );
if ($skip !== 0) {
$doc = $collection->find($where, $fields)->skip($skip)->limit(1)->getNext();
} else {
$doc = $collection->find($where, $fields)->limit(1)->getNext();
}
if (is_array($doc)) {
// Catch document
$data[ $doc['_id']->{'$id'} ] = $doc;
// Ignore current document when making the next iteration
$where['_id']['$nin'][] = $doc['_id'];
}
// Every iteration catch document and decrease in the total number of document
$count--;
}
return $data;
}

In order to get a determinated number of random docs without duplicates:
first get all ids
get size of documents
loop geting random index and skip duplicated
number_of_docs=7
db.collection('preguntas').find({},{_id:1}).toArray(function(err, arr) {
count=arr.length
idsram=[]
rans=[]
while(number_of_docs!=0){
var R = Math.floor(Math.random() * count);
if (rans.indexOf(R) > -1) {
continue
} else {
ans.push(R)
idsram.push(arr[R]._id)
number_of_docs--
}
}
db.collection('preguntas').find({}).toArray(function(err1, doc1) {
if (err1) { console.log(err1); return; }
res.send(doc1)
});
});

The best way in Mongoose is to make an aggregation call with $sample.
However, Mongoose does not apply Mongoose documents to Aggregation - especially not if populate() is to be applied as well.
For getting a "lean" array from the database:
/*
Sample model should be init first
const Sample = mongoose …
*/
const samples = await Sample.aggregate([
{ $match: {} },
{ $sample: { size: 33 } },
]).exec();
console.log(samples); //a lean Array
For getting an array of mongoose documents:
const samples = (
await Sample.aggregate([
{ $match: {} },
{ $sample: { size: 27 } },
{ $project: { _id: 1 } },
]).exec()
).map(v => v._id);
const mongooseSamples = await Sample.find({ _id: { $in: samples } });
console.log(mongooseSamples); //an Array of mongoose documents

I would suggest using map/reduce, where you use the map function to only emit when a random value is above a given probability.
function mapf() {
if(Math.random() <= probability) {
emit(1, this);
}
}
function reducef(key,values) {
return {"documents": values};
}
res = db.questions.mapReduce(mapf, reducef, {"out": {"inline": 1}, "scope": { "probability": 0.5}});
printjson(res.results);
The reducef function above works because only one key ('1') is emitted from the map function.
The value of the "probability" is defined in the "scope", when invoking mapRreduce(...)
Using mapReduce like this should also be usable on a sharded db.
If you want to select exactly n of m documents from the db, you could do it like this:
function mapf() {
if(countSubset == 0) return;
var prob = countSubset / countTotal;
if(Math.random() <= prob) {
emit(1, {"documents": [this]});
countSubset--;
}
countTotal--;
}
function reducef(key,values) {
var newArray = new Array();
for(var i=0; i < values.length; i++) {
newArray = newArray.concat(values[i].documents);
}
return {"documents": newArray};
}
res = db.questions.mapReduce(mapf, reducef, {"out": {"inline": 1}, "scope": {"countTotal": 4, "countSubset": 2}})
printjson(res.results);
Where "countTotal" (m) is the number of documents in the db, and "countSubset" (n) is the number of documents to retrieve.
This approach might give some problems on sharded databases.

You can pick random _id and return corresponding object:
db.collection.count( function(err, count){
db.collection.distinct( "_id" , function( err, result) {
if (err)
res.send(err)
var randomId = result[Math.floor(Math.random() * (count-1))]
db.collection.findOne( { _id: randomId } , function( err, result) {
if (err)
res.send(err)
console.log(result)
})
})
})
Here you dont need to spend space on storing random numbers in collection.

The following aggregation operation randomly selects 3 documents from the collection:
db.users.aggregate(
[ { $sample: { size: 3 } } ]
)
https://docs.mongodb.com/manual/reference/operator/aggregation/sample/

MongoDB now has $rand
To pick n non repeat items, aggregate with { $addFields: { _f: { $rand: {} } } } then $sort by _f and $limit n.

I'd suggest adding a random int field to each object. Then you can just do a
findOne({random_field: {$gte: rand()}})
to pick a random document. Just make sure you ensureIndex({random_field:1})

When I was faced with a similar solution, I backtracked and found that the business request was actually for creating some form of rotation of the inventory being presented. In that case, there are much better options, which have answers from search engines like Solr, not data stores like MongoDB.
In short, with the requirement to "intelligently rotate" content, what we should do instead of a random number across all of the documents is to include a personal q score modifier. To implement this yourself, assuming a small population of users, you can store a document per user that has the productId, impression count, click-through count, last seen date, and whatever other factors the business finds as being meaningful to compute a q score modifier. When retrieving the set to display, typically you request more documents from the data store than requested by the end user, then apply the q score modifier, take the number of records requested by the end user, then randomize the page of results, a tiny set, so simply sort the documents in the application layer (in memory).
If the universe of users is too large, you can categorize users into behavior groups and index by behavior group rather than user.
If the universe of products is small enough, you can create an index per user.
I have found this technique to be much more efficient, but more importantly more effective in creating a relevant, worthwhile experience of using the software solution.

non of the solutions worked well for me. especially when there are many gaps and set is small.
this worked very well for me(in php):
$count = $collection->count($search);
$skip = mt_rand(0, $count - 1);
$result = $collection->find($search)->skip($skip)->limit(1)->getNext();

My PHP/MongoDB sort/order by RANDOM solution. Hope this helps anyone.
Note: I have numeric ID's within my MongoDB collection that refer to a MySQL database record.
First I create an array with 10 randomly generated numbers
$randomNumbers = [];
for($i = 0; $i < 10; $i++){
$randomNumbers[] = rand(0,1000);
}
In my aggregation I use the $addField pipeline operator combined with $arrayElemAt and $mod (modulus). The modulus operator will give me a number from 0 - 9 which I then use to pick a number from the array with random generated numbers.
$aggregate[] = [
'$addFields' => [
'random_sort' => [ '$arrayElemAt' => [ $randomNumbers, [ '$mod' => [ '$my_numeric_mysql_id', 10 ] ] ] ],
],
];
After that you can use the sort Pipeline.
$aggregate[] = [
'$sort' => [
'random_sort' => 1
]
];

My simplest solution to this ...
db.coll.find()
.limit(1)
.skip(Math.floor(Math.random() * 500))
.next()
Where you have at least 500 items on collections

If you have a simple id key, you could store all the id's in an array, and then pick a random id. (Ruby answer):
ids = #coll.find({},fields:{_id:1}).to_a
#coll.find(ids.sample).first

Using Map/Reduce, you can certainly get a random record, just not necessarily very efficiently depending on the size of the resulting filtered collection you end up working with.
I've tested this method with 50,000 documents (the filter reduces it to about 30,000), and it executes in approximately 400ms on an Intel i3 with 16GB ram and a SATA3 HDD...
db.toc_content.mapReduce(
/* map function */
function() { emit( 1, this._id ); },
/* reduce function */
function(k,v) {
var r = Math.floor((Math.random()*v.length));
return v[r];
},
/* options */
{
out: { inline: 1 },
/* Filter the collection to "A"ctive documents */
query: { status: "A" }
}
);
The Map function simply creates an array of the id's of all documents that match the query. In my case I tested this with approximately 30,000 out of the 50,000 possible documents.
The Reduce function simply picks a random integer between 0 and the number of items (-1) in the array, and then returns that _id from the array.
400ms sounds like a long time, and it really is, if you had fifty million records instead of fifty thousand, this may increase the overhead to the point where it becomes unusable in multi-user situations.
There is an open issue for MongoDB to include this feature in the core... https://jira.mongodb.org/browse/SERVER-533
If this "random" selection was built into an index-lookup instead of collecting ids into an array and then selecting one, this would help incredibly. (go vote it up!)

This works nice, it's fast, works with multiple documents and doesn't require populating rand field, which will eventually populate itself:
add index to .rand field on your collection
use find and refresh, something like:
// Install packages:
// npm install mongodb async
// Add index in mongo:
// db.ensureIndex('mycollection', { rand: 1 })
var mongodb = require('mongodb')
var async = require('async')
// Find n random documents by using "rand" field.
function findAndRefreshRand (collection, n, fields, done) {
var result = []
var rand = Math.random()
// Append documents to the result based on criteria and options, if options.limit is 0 skip the call.
var appender = function (criteria, options, done) {
return function (done) {
if (options.limit > 0) {
collection.find(criteria, fields, options).toArray(
function (err, docs) {
if (!err && Array.isArray(docs)) {
Array.prototype.push.apply(result, docs)
}
done(err)
}
)
} else {
async.nextTick(done)
}
}
}
async.series([
// Fetch docs with unitialized .rand.
// NOTE: You can comment out this step if all docs have initialized .rand = Math.random()
appender({ rand: { $exists: false } }, { limit: n - result.length }),
// Fetch on one side of random number.
appender({ rand: { $gte: rand } }, { sort: { rand: 1 }, limit: n - result.length }),
// Continue fetch on the other side.
appender({ rand: { $lt: rand } }, { sort: { rand: -1 }, limit: n - result.length }),
// Refresh fetched docs, if any.
function (done) {
if (result.length > 0) {
var batch = collection.initializeUnorderedBulkOp({ w: 0 })
for (var i = 0; i < result.length; ++i) {
batch.find({ _id: result[i]._id }).updateOne({ rand: Math.random() })
}
batch.execute(done)
} else {
async.nextTick(done)
}
}
], function (err) {
done(err, result)
})
}
// Example usage
mongodb.MongoClient.connect('mongodb://localhost:27017/core-development', function (err, db) {
if (!err) {
findAndRefreshRand(db.collection('profiles'), 1024, { _id: true, rand: true }, function (err, result) {
if (!err) {
console.log(result)
} else {
console.error(err)
}
db.close()
})
} else {
console.error(err)
}
})
ps. How to find random records in mongodb question is marked as duplicate of this question. The difference is that this question asks explicitly about single record as the other one explicitly about getting random documents.

For me, I wanted to get the same records, in a random order, so I created an empty array used to sort, then generated random numbers between one and 7( I have seven fields). So each time I get a different value, I assign a different random sort.
It is 'layman' but it worked for me.
//generate random number
const randomval = some random value;
//declare sort array and initialize to empty
const sort = [];
//write a conditional if else to get to decide which sort to use
if(randomval == 1)
{
sort.push(...['createdAt',1]);
}
else if(randomval == 2)
{
sort.push(...['_id',1]);
}
....
else if(randomval == n)
{
sort.push(...['n',1]);
}

If you're using mongoid, the document-to-object wrapper, you can do the following in
Ruby. (Assuming your model is User)
User.all.to_a[rand(User.count)]
In my .irbrc, I have
def rando klass
klass.all.to_a[rand(klass.count)]
end
so in rails console, I can do, for example,
rando User
rando Article
to get documents randomly from any collection.

you can also use shuffle-array after executing your query
var shuffle = require('shuffle-array');
Accounts.find(qry,function(err,results_array){
newIndexArr=shuffle(results_array);

What works efficiently and reliably is this:
Add a field called "random" to each document and assign a random value to it, add an index for the random field and proceed as follows:
Let's assume we have a collection of web links called "links" and we want a random link from it:
link = db.links.find().sort({random: 1}).limit(1)[0]
To ensure the same link won't pop up a second time, update its random field with a new random number:
db.links.update({random: Math.random()}, link)

Related

How to find Intersection of Two Collection in monogdb?

Let say, I have 2 collection
first one :-
db.product_main
{
_id:123121,
source_id:"B4456dde1",
title:"test Sample",
price: 250
quantity: 40
}
which consist approx ~10000 objects (Array) and unique field is source_id.
Second :-
db.product_id
{
"_id":58745633,
"product_id":"B4456dde1"
}
which consist of ~500 and only have field "product_id" which is equals to "source_id" of db.product_main
now, i want to intersect two collection so that i only find those which don't exist in db.product_id.
db.product_main.aggregate({any query})
Just use the lookup stage to find the products associated with the 'product_main' collection and then match for empty array (i.e. records where no product_id was found)
db.product_main.aggregate([
{
$lookup: {
from: "product_id",
localField: "source_id",
foreignField: "product_id",
as: "products_available"
}
},
{
$match: {
products_available: {
$size: 0
}
}
}
])
On WRITE operations using aggregate pipeline You can also directly offload statistics update by using $out command and store cached result in product_stats collection (for example).
Later in web/ui/api READ operations just use this cached collection. Of cause, You can create database query methods for cached and non-cached results.

How to sort column in a table having software version numbers?

I have a columns in my table which get generated dynamically. Table got columns like Name, Company etc., It also got column which contains version numbers (1.14.0.2, 1.12.1.0, 1.8.0.1).
I am using library called Sortable for in-place sorting. This is great library which works just out of the box!
It works fine for columns like Name and Company. But it fails for Version Number in some cases. I'm setting data-value to result of
str_replace('.','',$version_number)
But it fails when version numbers are 1.10.0, 1.14, 1.0.1.2 (Special Case)
It should sort like
1.0.1.2
1.10.0
1.14
But it sorts like
1.14
1.0.1.2
1.10.0
Any way I can achieve correct results?
It sorts like that because it sorts by the data value, which you're setting to a number without the periods.
1.14 --> 114 (smallest)
1.0.1.2 --> 1012
1.10.0 --> 1100 (largest)
If you leave the data-value attribute absent, or leave the periods in the version numbers, it'll sort correctly. As demonstrated in the fiddle below.
https://jsfiddle.net/t7xhkkjc/
Edit
You need to add a custom sorting function to correctly sort version numbers
// Credit for function http://stackoverflow.com/a/7717160/769237
var customTypes = [{
name: 'version',
defaultSortDirection: 'descending',
match: function(a) {
return a.match(/([1-9]+\.?)+/g);
},
compare: function (a, b) {
var i, cmp, len, re = /(\.0)+[^\.]*$/;
a = (a + '').replace(re, '').split('.');
b = (b + '').replace(re, '').split('.');
len = Math.min(a.length, b.length);
for( i = 0; i < len; i++ ) {
cmp = parseInt(a[i], 10) - parseInt(b[i], 10);
if( cmp !== 0 ) {
return cmp;
}
}
return a.length - b.length;
}
}];
So that you don't lose the original sorting types by overriding them
var customAndOriginalTypes = Sortable.types.concat(customTypes);
Sortable.setupTypes(customAndOriginalTypes);
Also, you need to disable the auto initialisation by removing data-sortable from your table. This allows you to add the new sort type prior to adding the sorting functionality to the table.
You can then initialise sorting on the table with
var yourTable = document.querySelector('#your-table');
Sortable.initTable(yourTable);
https://jsfiddle.net/p4w5bup3/

Find in mongodb (search in the first 30 records)

how do I make an appointment within 30 mongo documents?
Ex:
db.find (). count () = 100 documents //my base
I wanted
db.find ({$ {and 'user.gender': 'Male'}, {'in first 30 records "}) = 5 documents
it is not
db.find ({'user.gender': 'Male'}). limit (30) = 30 documents //I do not want it
You can use the $aggregate in mongodb
for eg
db.collName.aggregate([
{ $limit: 30 },
{ $match: { 'user.gender': 'Male'} }
])
If you want to sort the collection on basics of any field you can use the $sort in the aggregation pipeline.
Also please do remember the fact that "there is no guarantee that your documents are returned in any particular order by a query as long as you don't sort explicitly. Documents in a new collection are usually returned in insertion order, but various things can cause that order to change unexpectedly, so don't rely on it.
When you sort by _id field the items are returned by creation Date. So you can also sort by _id first and then limit your documents.
For eg:
db.collName.aggregate([
{ $sort: { _id: 1 } },
{ $limit: 30 },
{ $match: { 'user.gender': 'Male'} }
])
Explaination:
It will first sort your documents based on the _id field in documents and then limit your documents to 30 and then find a matchon the returned documents based on the query.

MongoDB Map Reduce returning unexpected results in high data Volume

I am new to PHP as well as mongo DB and
i have a data set of 80000 records and this is a local deployment.
My Data Structure is simple:
(
[_id] => MongoId Object
(
[$id] => 53c146aebc7d867d058b94b3
)
[name] => Mark
[txnType] => Borrowed
[amount] => 5876
)
I am running a Map Reduce Job as defined below:
$map = new MongoCode("function ()
{
{
emit({name:this.name,type:this.txnType},this.amount);
}
}");
$reduce = new MongoCode("
function (key, values)
{
var total=0;
var count=0;
for (var i in values) {
if (!isNaN(values[i])) {
total+=values[i];
};
count++;
}
return {total:total, count:count};
}
");
$sales = $db->command(array(
"mapreduce" => "data",
"map" => $map,
"reduce" => $reduce,
"out" => "sales"
));
The Concept is basically that there are 4 guys who may have transactions of type Borrowed, Sold, Purchase and Lent. Each record representing a txn.
I want to just create a data pivot getting the data as:
Name : Type : Total Amount : Count of Txns
Some how the data that is propping up is messed up. The counts when added up should add up to 80000, but instead its adding up to only 216.
I am not able to understand why this is happening..
Can anyone please help me. where am i going wrong and what to correct.
My need is to basically draw up analytic for the transaction.
The problem is that your emit is the outputting the same format as your reduce.
Here is what you emit for value:
this.amount
Here is what you return from reduce:
return {total:total, count:count};
In order for reduce to work correctly when it re-reduces (remember, reduce may be called zero, once or multiple times on the same key value) you must emit this format:
emit({name:this.name,type:this.txnType},{ total: this.amount, count: 1} );
And therefore your reduce function should now be:
var total=0;
var count=0;
for (var i in values) {
if (!isNaN(values.total[i])) {
total+=values.total[i];
};
count+=values.count;
}
return {total:total, count:count};
The two most important rules of mapReduce in MongoDB:
emit value in exactly the same format as your reduce function returns
structure reduce so that it can be called zero, once or multiple times for each key
Note that you can perform the same aggregation much more efficiently and faster with Aggregation Framework like so:
db.collection.aggregate( {$group:
{ _id : {name: "$name", type: "$txnType"},
total: {$sum: "$amount"},
count: {$sum: 1}
}
}

Classic average calculus using PHP versus Map and Reduce MongoDB

I need to calculate the averages for a chart.
I have 15k rows in the database, my index is the time.
I did it in two different way:
1) I repeat on the interval of time (for each interval) :
- raw data request between the dates
- average calculation in PHP for this interval
2) Map and Reduce: for each interval the reduce function is counting the data, then in the finalize function I make the average.
m = function() {
var k = new Date(this.date);
k.setSeconds(0);
k.setMilliseconds(0);
emit(
k, {
note: this.note
}
);
}
r = function(key, values) {
var reduced = {
note:0,
count:0,
noteAvg:0,
};
values.forEach(function(val) {
reduced.note += val.note;
reduced.count += val.count;
});
return reduced;
}
f = function(key, reduced) {
reduced.noteAvg = reduced.note / reduced.count;
return reduced;
}
$data_graph = $this->db->command(array(
"mapreduce" => "notes",
"map" => $map,
"reduce" => $reduce,
"finalize" => $finalize,
"query" => $req,
"out" => array("inline"=>1)
));
The second solution is a lot of time slower than the first. Why?
Should I try to use more data to compare?
I tried on MongoLab (free version) and with my local mongo server and nothing change.
Thanks :)
It sounds like you're mapping all data and filtering it out with reduce rather than restricting the query to the same subset your PHP query is getting.
If you are not already doing so, add a {query:{}} parameter to your mapreduce call as documented here.
This will only pass the subset of documents satisfying the query to the map/reduce operation.

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