Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have the following mongo test cluster in place

  1. No of shards -2
  2. No of config server -1
  3. mongos instances -2
  4. Replication not enabled

I have around 41 million records split across the shards, I have defined a compound index {field1:1,field2:1,field3:1}, my queries are of the form (field=1 and field2 between x and y), I expected the compound index to be useful for these queries, however the query response time is around 8 sec for the query I described. I am specifying only the fields of interest when I execute find.

Mongos is installed on the machine from where I execute the query and I am using java to do the querying.

Can someone throw some light on the possible reasons, why this query takes such a long time? I would be happy to provide more information if required.

The following is the output of explain command

{
    "indexBounds": {
        "LOGIN_ID": [
            [
                {
                    "$minElement": 1
                }, 
                {
                    "$maxElement": 1
                }
            ]
        ], 
        "LOGIN_TIME": [
            [
                1262332800000, 
                1293782400000
            ]
        ]
    }, 
    "nYields": 7, 
    "millisShardTotal": 7410, 
    "millisShardAvg": 7410, 
    "numQueries": 1, 
    "nChunkSkips": 0, 
    "shards": {
        "server1:27017": [
            {
                "nYields": 7, 
                "nscannedAllPlans": 1769804, 
                "allPlans": [
                    {
                        "cursor": "BtreeCursor LOGIN_TIME_1_LOGIN_ID_1", 
                        "indexBounds": {
                            "LOGIN_ID": [
                                [
                                    {
                                        "$minElement": 1
                                    }, 
                                    {
                                        "$maxElement": 1
                                    }
                                ]
                            ], 
                            "LOGIN_TIME": [
                                [
                                    1262332800000, 
                                    1293782400000
                                ]
                            ]
                        }, 
                        "nscannedObjects": 1763903, 
                        "nscanned": 1763903, 
                        "n": 14081
                    }, 
                    {
                        "cursor": "BasicCursor", 
                        "indexBounds": {}, 
                        "nscannedObjects": 5901, 
                        "nscanned": 5901, 
                        "n": 0
                    }
                ], 
                "millis": 7410, 
                "nChunkSkips": 0, 
                "server": "server2:27017", 
                "n": 14081, 
                "cursor": "BtreeCursor LOGIN_TIME_1_LOGIN_ID_1", 
                "oldPlan": {
                    "cursor": "BtreeCursor LOGIN_TIME_1_LOGIN_ID_1", 
                    "indexBounds": {
                        "LOGIN_ID": [
                            [
                                {
                                    "$minElement": 1
                                }, 
                                {
                                    "$maxElement": 1
                                }
                            ]
                        ], 
                        "LOGIN_TIME": [
                            [
                                1262332800000, 
                                1293782400000
                            ]
                        ]
                    }
                }, 
                "scanAndOrder": false, 
                "indexBounds": {
                    "LOGIN_ID": [
                        [
                            {
                                "$minElement": 1
                            }, 
                            {
                                "$maxElement": 1
                            }
                        ]
                    ], 
                    "LOGIN_TIME": [
                        [
                            1262332800000, 
                            1293782400000
                        ]
                    ]
                }, 
                "nscannedObjectsAllPlans": 1769804, 
                "isMultiKey": false, 
                "indexOnly": false, 
                "nscanned": 1763903, 
                "nscannedObjects": 1763903
            }
        ]
    }, 
    "n": 14081, 
    "cursor": "BtreeCursor LOGIN_TIME_1_LOGIN_ID_1", 
    "oldPlan": {
        "cursor": "BtreeCursor LOGIN_TIME_1_LOGIN_ID_1", 
        "indexBounds": {
            "LOGIN_ID": [
                [
                    {
                        "$minElement": 1
                    }, 
                    {
                        "$maxElement": 1
                    }
                ]
            ], 
            "LOGIN_TIME": [
                [
                    1262332800000, 
                    1293782400000
                ]
            ]
        }
    }, 
    "numShards": 1, 
    "clusteredType": "ParallelSort", 
    "nscannedAllPlans": 1769804, 
    "nscannedObjectsAllPlans": 1769804, 
    "millis": 7438, 
    "nscanned": 1763903, 
    "nscannedObjects": 1763903
}

A sample document in my db is as follows

    {
    "_id" : ObjectId("52d5192c1a45f84e48c24e2f"),
    "LOGIN_ID" : <loginId>,
    "LOGIN_TIME" : NumberLong("1372343932000"),
    "BUSINESS_ID" : <businessId>,
    "USER_ID" : <userid>,
    "EMAIL" : "a@b.com",
    "SITE_POD_NAME" : "x",
    "USER_AGENT" : "Mozilla/5.0 (Windows NT 6.1; WOW64) AppleWebKit/537.31 (KHTML. like      Gecko) Chrome/26.0.1410.43 Safari/537.31"
    }

There are some other fields in the above doc which I cannot expose outside, but its a simple key value of string and string

This is how I query the db

    DBObject dbObject = new BasicDBObject("BUSINESS_ID", businessId)
        .append("LOGIN_TIME",
new BasicDBObject("$gte",start).append("$lt", end))
    .append("LOGIN_TYPE", loginType);

    long startTime = System.currentTimeMillis();
    DBObject keys = new BasicDBObject("LOGIN_TIME", 1);
DBCursor find = collection.find(dbObject, keys);

int count = 0;
while (find.hasNext()) {
    find.next();
    count++;
}
long endTime = System.currentTimeMillis();

Mongo DB version is 2.4.9. Appreciate any help.

share|improve this question
2  
please run explain of your query, and add results to your post –  orid Jan 15 at 6:19
2  
It seems that the query plan scans every value for LOGIN_ID in the index, a total of almost 1.8M login records. Can you add your query, and an example document. Also, which version of MongoDB are you using? –  orid Jan 15 at 9:34
    
How many documents does this query return? If it fetches too many documents, try limit –  Mustafa Genç Jan 16 at 8:13
    
Hi, this query returns around 14000 documents, but I am only specifying LOGIN_TIME to be returned, so the returned document size shouldn't be much –  Gowri Shankar Jan 16 at 8:34

1 Answer 1

I see a following spots which could head into finding more about exact issue:

  1. What is login_time and what does the numbers in the query range actually mean? The range looks quite wide by numeric difference. May be you filter criteria is vey wide-ranged? This is also indicative from the "nscanned" from the explain plan.

  2. I see the index is on login_time and login_id, where as your query is on login_time and login_type. Just high-lighting that although you are using index, your query criteria is wide enough to cover a much larger index range and since the second criteria of login_type is not part of the index, query would need to fetch all "nscanned" documents to determine if it a valid record for this query.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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