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I have a mongodb on a 8GB linux machine running. Currently it's in test-mode so there are very few other requests coming in if any at all.

I have a colelction items with 1 million documents in it. I am creating an index on the fields: PeerGroup and CategoryIds (which is an array of 3-6 elements which will yield in an multi key): db.items.ensureIndex({PeerGroup:1, CategoryIds:1}.

When I am querying

db.items.find({"CategoryIds" : new BinData(3,"xqScEqwPiEOjQg7tzs6PHA=="), "PeerGroup" : "anonymous"}).explain()

I have the following results:

{
    "cursor" : "BtreeCursor PeerGroup_1_CategoryIds_1",
    "isMultiKey" : true,
    "n" : 203944,
    "nscannedObjects" : 203944,
    "nscanned" : 203944,
    "nscannedObjectsAllPlans" : 203944,
    "nscannedAllPlans" : 203944,
    "scanAndOrder" : false,
    "indexOnly" : false,
    "nYields" : 1,
    "nChunkSkips" : 0,
    "millis" : 680,
    "indexBounds" : {
            "PeerGroup" : [
                    [
                            "anonymous",
                            "anonymous"
                    ]
            ],
            "CategoryIds" : [
                    [
                            BinData(3,"BXzpwVQozECLaPkJy26t6Q=="),
                            BinData(3,"BXzpwVQozECLaPkJy26t6Q==")
                    ]
            ]
    },
    "server" : "db02:27017"

}

I think 680ms is not that very fast. Or is this acceptable? Also, why does it say "indexOnly:false" ?

share|improve this question
    
Hmmmm... the high number of nscanned seems to indicate that it first searches by one of the arguments and then searches by the other in the result set. Is 203944 rather the number of documents with PeerGroup:anonymous or of BinData(3,"xqScEqwPiEOjQg7tzs6PHA==")? – Philipp Sep 1 '12 at 10:54
    
Maybe it's because PeerGroup is an array and with db.items.ensureIndex({PeerGroup:1} you are only finding results when you are searching for a certain combination of CategoryIDs? – Philipp Sep 1 '12 at 10:57
    
Forget about my last post. The documentation clearly says "Creating an index on an array element indexes results in the database indexing each element of the array" – Philipp Sep 1 '12 at 11:14
up vote 4 down vote accepted

I think 680ms is not that very fast. Or is this acceptable?

That kind of depends on how big these objects are and whether this was a first run. Assuming the whole data set (including the index) you are returning fits into memory, then they next time you run this it will be an in-memory query and will then return basically as fast as possible. The nscanned is high meaning that this query is not very selective, are most records going to have an "anonymous" value in PeerGroup? If so, and the CategoryId is more selective then you might try an index on {CategoryIds:1, PeerGroup:1} instead (use hint() to try out one versus the other).

Also, why does it say "indexOnly:false"

This simply indicates that all the fields you wish to return are not in the index, the BtreeCursor indicates that the index was used for the query (a BasicCursor would mean it had not). For this to be an indexOnly query, you would need to be returning only the two fields in the index (that is: {_id : 0, PeerGroup:1, CategoryIds:1}) in your projection. That would mean that it would never have to touch the data itself and could return everything you need from the index alone.

share|improve this answer
    
Ah. PeerGroup contains only three different values which are uniformly distributed, ie. 1/3 1/3 1/3 = 1. Actually I return only one field that is a reference to another collection-id but which is not included in the index since it is never queried. Would it make sense to add this field to the index to make the query faster? – Max Sep 1 '12 at 13:14
    
Btw: 680ms is not for the first run. Using a limit on the find basically makes the query very fast -> 0ms. But the count still takes some time – Max Sep 1 '12 at 13:19
1  
I am guessing that it's a combo of the low selectivity (lots of results) and the scan and load that is slowing it down then - you may get a boost by adding the third field since that will mean it won't have to load the data too, just the index (don't forget to explicitly not return _id or it will still be indexOnly false). The trade off is that the index will be bigger, of course, but there will be a lot less data in RAM. – Adam Comerford Sep 1 '12 at 13:23
    
DOn't know if that would speed things up, because Count is nearly as fast/slow as Find. Is there any way to explain() a Count? – Max Sep 1 '12 at 13:57
    
No, but assuming you are not CPU bound, the count won't be adding much to the find. If you are not seeing page faults during the find, and the index changes are not helping (and you are getting an indexOnly true), then without a schema change I'm not sure it's going to get faster – Adam Comerford Sep 1 '12 at 14:00

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