0

I have some docs (daily open price for a stock) like the followings:

/* 0 */
{
    "_id" : ObjectId("54d65597daf0910dfa8169b0"),
    "D" : ISODate("2014-12-29T00:00:00.000Z"),
    "O" : 104.98
}

/* 1 */
{
    "_id" : ObjectId("54d65597daf0910dfa8169af"),
    "D" : ISODate("2014-12-30T00:00:00.000Z"),
    "O" : 104.73
}

/* 2 */
{
    "_id" : ObjectId("54d65597daf0910dfa8169ae"),
    "D" : ISODate("2014-12-31T00:00:00.000Z"),
    "O" : 104.51
}

/* 3 */
{
    "_id" : ObjectId("54d65597daf0910dfa8169ad"),
    "D" : ISODate("2015-01-02T00:00:00.000Z"),
    "O" : 103.75
}

/* 4 */
{
    "_id" : ObjectId("54d65597daf0910dfa8169ac"),
    "D" : ISODate("2015-01-05T00:00:00.000Z"),
    "O" : 102.5
}

and I want to aggregate the records by week so I can get the weekly average open price. My first attempt is to use:

db.ohlc.aggregate({
    $match: {
        D: {
            $gte: new ISODate('2014-12-28')
        }
    }
}, {
    $project: {
        year: {
            $year: '$D'
        },
        week: {
            $week: '$D'
        },
        O: 1
    }

}, {
    $group: {
        _id: {
            year: '$year',
            week: '$week'
        },
        O: {
            $avg: '$O'
        }
    }
}, {
    $sort: {
        _id: 1
    }
})

Bu I soon realized the result is incorrect as both the last week of 2014 (week number 52) and the first week of 2015 (week number 0) are partial weeks. With this aggregation I would have an average price for 12/29-12/31/2014 and another one for 01/02/2015 (which is the only trading date in the first week of 2015) but in my application I would need to group the data from 12/29/2015 through 01/02/2015. Any advice?

  • 1
    I am curious, why my question gets a down vote? I would be glad to find out the reason. – Rico Chen Feb 8 '15 at 14:09
1

To answer my own question, the trick is to calculate the number of weeks based on a reference date (1970-01-04) and group by that number. You can check out my new post at http://midnightcodr.github.io/2015/02/07/OHLC-data-grouping-with-mongodb/ for details.

1

I use this for candelization; with allowDiskUsage, out and some date filters it works great. Maybe you can adopt the grouping?

db.getCollection('market').aggregate(
[
    { $match: { date: { $exists: true } } },
    { $sort: { date: 1 } },
    { $project: { _id: 0, date: 1, rate: 1, amount: 1, tm15: { $mod: [ "$date", 900 ] } } }, 
    { $project: { _id: 0, date: 1, rate: 1, amount: 1, candleDate: { $subtract: [ "$date", "$tm15" ] } } },
    { $group: { _id: "$candleDate", open: { $first: '$rate' }, low: { $min: '$rate' }, high: { $max: '$rate' }, close: { $last: '$rate' }, volume: { $sum: '$amount' }, trades: { $sum: 1 } } }
])
  • any chance you can explain this more please? I tried to get it working on trade data, wanted to group by 5, 10, 15min candles etc.. but didn't work. What $date is.. Unix time milliseconds ? Can you show some sample input documents ? thank you. – Flo Woo Jun 16 '17 at 2:46
0

From my experience, this is not a really good approach to tackle the problem. Why? This will definitely not scale, the amount of computation needed is quite exhausting, specially to do the grouping.

What I would do in your situation is to move part of the application logic to the documents in the DB.

My first approach would be to add a "week" field that will state the previous (or next) Sunday of the date the sample belongs to. This is quite easy to do at the moment of insertion. Then you can simply run the aggregation method grouping by that field. If you want more performance, add an index for { symbol : 1, week : 1 } and do a sort in the aggregate.

My second approach, which would be if you plan on making a lot this type of aggregations, is basically having documents that group the samples in a weekly manner. Like this:

{
    week : <Day Representing Week>,
    prices: [
       { Day Sample }, ...
    ]
}

Then you can simply work on those documents directly. This will help you reduce your indexes in a significant manner, thus speeding things up.

  • You are right about speeding up queries by adding pre-calculated field (week). However the performance gain is not very significant (0.75s with pure grouping vs 0.4s with pre-calculated field) but I still follow your first suggestion and add a week field which is calculated based on the method in my post. The value is calculated using awk (which is way easier than mongodb I have to say) while importing data into db. My collection has over 61 million documents and has compound index { S: 1, D: 1 }. I didn't use your second suggestion since the number of weeks to be grouped needs to be dynamic. – Rico Chen Feb 10 '15 at 3:25

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