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I have multiple time series in database in mongodb, with fields "ticker", "time", and "close" amongst other fields:

> db.bbticks.find().limit(2)
{ "_id" : ObjectId("522b2cf7d4236309a57c8f96"), "close" : 1.9432, "high" : 1.9433, "low" : 1.9426, "open" : 1.9427, "source" : "HIST", "systime" : ISODate("2013-09-07T13:41:13.383Z"), "ticker" : "USDTRY Curncy", "time" : ISODate("2013-08-01T15:14:00Z"), "type" : "BAR", "value" : 1.9432 }
{ "_id" : ObjectId("522b2cf7d4236309a57c8f97"), "close" : 1.9425, "high" : 1.9433, "low" : 1.9425, "open" : 1.9432, "source" : "HIST", "systime" : ISODate("2013-09-07T13:41:13.383Z"), "ticker" : "USDTRY Curncy", "time" : ISODate("2013-08-01T15:15:00Z"), "type" : "BAR", "value" : 1.9425 }

The time stamps are whole minutes. There are multiple timezones represented amongst the tickers, so for example, the MEXBOL Mexical stock market is open only from 13h30 UTC, whereas the FTSEMIB Italian stock market is open from 07h00 UTC. I want to bring down all the time series but only for timestamps that they all have. Here is an example:

> db.bbticks.find({ticker: "FTSEMIB Index", type: "BAR", time: {$gte: ISODate("2013-08-01")}}, {_id: 0, ticker: 1, time: 1, close: 1}).sort({time: 1}).limit(5)
{ "close" : 16565.04, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T07:00:00Z") }
{ "close" : 16585.56, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T07:01:00Z") }
{ "close" : 16583.29, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T07:02:00Z") }
{ "close" : 16578.95, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T07:03:00Z") }
{ "close" : 16587.16, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T07:04:00Z") }
> db.bbticks.find({ticker: "MEXBOL Index", type: "BAR", time: {$gte: ISODate("2013-08-01")}}, {_id: 0, ticker: 1, time: 1, close: 1}).sort({time: 1}).limit(5)
{ "close" : 41101.39, "ticker" : "MEXBOL Index", "time" : ISODate("2013-08-01T13:30:00Z") }
{ "close" : 41099.25, "ticker" : "MEXBOL Index", "time" : ISODate("2013-08-01T13:31:00Z") }
{ "close" : 41126.17, "ticker" : "MEXBOL Index", "time" : ISODate("2013-08-01T13:32:00Z") }
{ "close" : 41137.03, "ticker" : "MEXBOL Index", "time" : ISODate("2013-08-01T13:33:00Z") }
{ "close" : 41173.89, "ticker" : "MEXBOL Index", "time" : ISODate("2013-08-01T13:34:00Z") }

as you can see, for ticks on or after 1 August 2013, FTSEMIB starts at 07h00 and MEXBOL starts at 13h30. Data does exist for FTSEMIB after 13h30 too:

> db.bbticks.find({ticker: "FTSEMIB Index", type: "BAR", time: {$gte: ISODate("2013-08-01T13:30:00")}}, {_id: 0, ticker: 1, time: 1, close: 1}).sort({time: 1}).limit(5)
{ "close" : 16739.41, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T13:30:00Z") }
{ "close" : 16748.21, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T13:31:00Z") }
{ "close" : 16750.76, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T13:32:00Z") }
{ "close" : 16747.89, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T13:33:00Z") }
{ "close" : 16746.66, "ticker" : "FTSEMIB Index", "time" : ISODate("2013-08-01T13:34:00Z") }

So basically, wherever there is "time" field that exists for both tickers, I want only those closes returned. There may be multiple time series in the query (not just two), and there may be missing values within otherwise contiguous blocks of series (so for example, at 14h31 on 1 August for example, one series might not have value for that time, in which case no series must be returned for that time).

Basically, I want to compare time series, I need the series returned only for timestamps that they all have.

Finally, ideally I would prefer to use the aggregation pipeline framework, rather than Map Reduce, if possible.

share|improve this question

1 Answer 1

up vote 1 down vote accepted

See if the following is in line with what you want to accomplish:

db.bbticks.aggregate(
[
 { $match: { time: { $gte: ISODate("2013-08-01") } } },
 { $group: { _id: "$time", count: {$sum: 1}, tickers: { $push: { "ticker": "$ticker" , "close": "$close" } } } } ,
 { $match: { count: { $gt: 1 } } }
]
)

-- break --

For the map-reduce, you could try the following (not very elegant, I think there are better ways but just some ideas to get you started). Also, as this will be a time series that grows, chances are you might want to use an incremental map-reduce (http://docs.mongodb.org/manual/tutorial/perform-incremental-map-reduce/). But the below can give you some ideas (like I said, it is ugly --- and it might be better to perform a second map-reduce operation rather than my last find statement, but up to you).

var mapFunction = function() {
                      var key = this.time

                      var value = { tickers: [
                                                { ticker: this.ticker, close: this.close } 
                                             ] };

                      emit( key, value );
                  };

var reduceFunction = function(keyObject, valuesArray) {
                     var reducedValue = { tickers: [] };

                     for (var idx = 0; idx < valuesArray.length; idx++) {
                        reducedValue.tickers.push( valuesArray[idx].tickers[0] )
                     }

                     return reducedValue;
                  };


db.bbticks.mapReduce( mapFunction,
                      reduceFunction,
                      {
                        out: "mr_interim_results",
                        sort: { time: 1 },
                        query: {
                                 time: {$gte: ISODate("2013-08-01") }
                               },
                      }
                   )

db.mr_interim_results.find( { 'value.tickers': { $not: { $size: 1 } } }  )
share|improve this answer
    
"errmsg": "aggregation result exceeds maximum document size". Admittedly there are actually 115 series in bbticks, but since 1 August is not so long so even if I were to reduce the series number, I could be in a situation of requiring much longer history than 1 Aug so it must be robust to the 16mb doc size. Perhaps if you wouldn't mind running me through the logic of your aggregation, I might be able to play with it a bit..... –  Thomas Browne Sep 9 '13 at 9:46
    
I think I may have to go with MapReduce because of this 16mb limitation: stackoverflow.com/questions/12337319/…. –  Thomas Browne Sep 9 '13 at 10:10
    
Hi Thomas - as you stated, because of the size limit, you probably should go with MapReduce. In regards to the logic of the aggregation, I first do a $match to find all the documents that match the condition of time >= "2013-08-01". Then, these matching documents are grouped by time, keeping a count and adding a field "tickers" which contain an array of tickers & closing price associated with that time. Then, from these grouping, I do another match to return only those that have count > 1. –  Kay Sep 9 '13 at 16:51
    
Hi Thomas - the development version 2.5.2 of MongoDB supports $out for aggregation which allows for output to a collection and is not under the 16mb limit. This version, which is for testing and not production purposes, may or may not work for you. In any case, the code would be db.bbticks.aggregate([ { $match: { time: { $gte: ISODate("2013-08-01") } } }, { $group: { _id: "$time", count: {$sum: 1}, tickers: { $push: { "ticker": "$ticker" , "close": "$close" } } } } , { $match: { count: { $gt: 1 } } }, { $out: "myAggResults"} ]) –  Kay Sep 9 '13 at 17:21
    
Kay - I will download 2.5.2 but if you were able to point me in the right direction on MapReduce (I am a javascript / mapreduce / mongo newbie) that would be really helpful. Reason is I need this functionality to go on multiple machines so don't really want to rely on development algorithms unless I have to. That said, have tested your aggregation query with a smaller dataset and it seems to work well. –  Thomas Browne Sep 10 '13 at 13:01

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