0

I am recording site usage events in a sub object of a (visitor). here is a basic example of the data structure:

{ "_id" : ObjectId("4d4c695794b332a0740009bd"), "evs" : [
    {
            "ev" : "Visit Home Page",
            "d" : 1,
            "s" : 1
    },
    {
            "ev" : "Buy Product",
            "d" : "110.10",
            "upc" : 1234,
            "s" : 1
    },
    {
            "ev" : "Sign up to newsletter",
            "d" : "1",
            "s" : 1
    }
]}

I have an index on 'evs.s', but when I search on evs.s, the index is not used:

db.visitors.find({'evs.s':0}).explain()
{
    "cursor" : "BtreeCursor evs.s_1",
    "nscanned" : 33361,
    "nscannedObjects" : 33361,
    "n" : 33361,
    "millis" : 311,
    "nYields" : 105,
    "nChunkSkips" : 0,
    "isMultiKey" : false,
    "indexOnly" : false,
    "indexBounds" : {
            "evs.s" : [
                    [
                            0,
                            0
                    ]
            ]
    }
}

That query takes 311 milliseconds and scans through every object.

Here is the index: db.visitors.getIndexes()

{
  "ns" : "tracking.visitors",
  "unique" : false,
  "key" : {
     "evs.s" : 1
  },
  "name" : "evs.s_1",
  "v" : 0
}

2 Answers 2

2

Your query actually is using an index, as indicated by the cursor type in the explain output ("BtreeCursor evs.s_1"). If you were not using a an index, it would be "BasicCursor".

From your input data, it looks like evs.s might not be a very efficient key to index on. If all of the values of evs.s are either 1 or 0, your index will always hit a large number of matches.

My guess is that your query did not do a full table scan, but that there are actually that many records with a value of evs.s = 0 in your index.

You might compare the output of

db.visits.find({evs.s: 0}).count();

db.visits.find({evs.s: 1}).count();

db.visits.find().count();

to verify this.

There are several things you can do to speed this up:

1) You can use a different index that has more distinct values. This will reduce the search space on each query.

2) You can add a limit statement to your query. This will stop scanning the index once limit documents have been found.

1
  • Ahhhhh yes your right, no real way to index 10,000 0's efficiently. Limit speeds the query up massively, thanks!
    – Lerchmo
    Feb 6, 2011 at 16:11
0

"cursor" : "BtreeCursor evs.s_1"

means that the index is used.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.