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I am new to MongoDB, i have a collection which has the following fields:

> db.TestTable.findOne()
        "_id" : ObjectId("527c48e99000cf10bc2a1d82"),
        "ID" : "16587",
        "Name" : "N15247",
        "Serial1" : "11",
        "Serial2" : "727",
        "DateTime" : ISODate("1998-12-15T18:30:00Z"),
        "CompID" : "ID465",
        "CompName" : "F1460"

I have inserted around 300,000,000 documents into the collection using a c# driver using BsonDocument. The size of the collection is:

> db.TestTable.stats()
        "ns" : "FeatureParser.LogsTable",
        "count" : 300000000,
        "size" : 62399477600,
        "avgObjSize" : 207.99825866666666,
        "storageSize" : 68783787568,
        "numExtents" : 54,
        "nindexes" : 2,
        "lastExtentSize" : 2146426864,
        "paddingFactor" : 1,
        "systemFlags" : 1,
        "userFlags" : 0,
        "totalIndexSize" : 14878186064,
        "indexSizes" : {
                "_id_" : 9746789472,
                "dateTime_1" : 5131396592
        "ok" : 1

Does MongoDB take so much space for the documents inserteD? Is there anyway the size of the DB can be reduced?

Thanks in advance.

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3 Answers 3

up vote 3 down vote accepted

To be expected

It's not clear in what way the stored size is considered huge - what size is to be expected?

I have inserted around [300M] documents

Each rows is approximately 200 bytes:

{"_id" : ObjectId("527c48e99000cf10bc2a1d82"),"ID" : "16587","Name" : "N15247","Serial1" : "11","Serial2" : "727","DateTime" : ISODate("1998-12-15T18:30:00Z"),"CompID" : "ID465","CompName" : "F1460"}
^199 chars

Which is reported/confirmed as:

"avgObjSize" : 207.99825866666666 [bytes]

with a total data size of:

"size" : 62399477600 [bytes]


    300, 000, 000 rows x
              200 bytes per row
60, 000, 000, 000 bytes

Which simply confirms that the estimate of the data inserted, is very close to the size of the data in the collection (62GiB v 60GiB).

The actual storage size is 68, 783, 787, 568 (68GiB) which is also pretty close to the data size, the difference being overhead for indexes and pre-allocation of storage space.

As such the results observed are easily to be expected. If the above isn't what's meant - please clarify by editing the question.

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Yes, I think you're right and the calculation/estimation is more or less correct. The surprise might be, that pure, naked data only takes ~40 bytes, but consumes 200 bytes. And taking the string-length of the JSON could be a value to calculate with, but e.g. ObjectId("527c48e99000cf10bc2a1d82") takes only 12 bytes binary. – hgoebl Nov 12 '13 at 11:06
It's meant very much as a dumb/finger-in-the air estimate, that anyone can do. I'm aware for example that taking the length of a json representation as bytes is pretty weak =) just meant as a means to verify the average row and storage size is about right. – AD7six Nov 12 '13 at 11:11
Didn't want to criticize your answer. I agree with it. Just wanted to say that MongoDB seems to be quite greedy with space storing simple objects. – hgoebl Nov 12 '13 at 11:58
I understood your original meaning =) – AD7six Nov 12 '13 at 13:11


Preallocated data files.
In the data directory, MongoDB preallocates data files to a particular size, in part to prevent file system fragmentation. MongoDB names the first data file .0, the next .1, etc. The first file mongod allocates is 64 megabytes, the next 128 megabytes, and so on, up to 2 gigabytes, at which point all subsequent files are 2 gigabytes. The data files include files with allocated space but that hold no data. mongod may allocate a 1 gigabyte data file that may be 90% empty. For most larger databases, unused allocated space is small compared to the database.

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At 300m rows preallocation shouldn't be the effect, especially since it is sitting at around 58 GB, which means 2gb allocation is only effecting the last 2gb of that 58gb, also providing more than a quote to explain your logic helps – Sammaye Nov 12 '13 at 10:51

People already suggested the reason why collection is so big, so instead of rephrasing their words, I would address the second question. How to decrease the size of the collection.

There is one nice way to reduce the size of your collection.

Because mongodb stores keys for every document, you can substantially reduce the size of the collection by shortening the names. This way you will have collection with documents like this:

        "_id" : ObjectId("527c48e99000cf10bc2a1d82"),
        "ID" : "16587",
        "n" : "N15247",
        "s" : "11",
        "c" : "727",
        "d" : ISODate("1998-12-15T18:30:00Z"),
        "c" : "ID465",
        "f" : "F1460"

and on your application layer you can create a mapping from these cryptic names to normal names.

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I would bet £100 his field names are not his problem though, and prolly won't do much – Sammaye Nov 12 '13 at 10:47
I would bet 100$ that I was not telling that this is the root of problems. I just suggested a way to reduce the size of the collection. – Salvador Dali Nov 12 '13 at 10:48
@Sammaye actually it would - removing ~30 bytes from each record would reduce the collection size by 9GiB. (+1 as it's a useful technique/information). – AD7six Nov 12 '13 at 10:50
@Sammaye his document weights 144 bytes, mine is 104. So this increase in 28%. If also to convert some of the strings which looks like ints to integers, this can save additional few bytes. So it might be a good way of reducing the size. – Salvador Dali Nov 12 '13 at 10:53
@hgoebl MongoDB will get field compression in the next 2 versions hopefully which will mean that field names are now a 10th of the document size, edit: more like a fraction but you know – Sammaye Nov 12 '13 at 12:15

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