Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a MondoDB collection with over 5 million items. Each item has a "start" and "end" fields containing integer values.

Items don't have overlapping starts and ends.

e.g. this would be invalid:

{start:100, end:200}
{start:150, end:250}

I am trying to locate an item where a given value is between start and end

start <= VALUE <= end

The following query works, but it takes 5 to 15 seconds to return

db.blocks.find({ "start" : { $lt : 3232235521 }, "end" :{ $gt : 3232235521 }}).limit(1);

I've added the following indexes for testing with very little improvement


//also a compounded one

** Edit **

The result of explain() on the query results in:

> db.blocks.find({ "start" : { $lt : 3232235521 }, "end" :{ $gt : 3232235521 }}).limit(1).explain();

        "cursor" : "BtreeCursor end_1",
        "nscanned" : 1160982,
        "nscannedObjects" : 1160982,
        "n" : 0,
        "millis" : 5779,
        "nYields" : 0,
        "nChunkSkips" : 0,
        "isMultiKey" : false,
        "indexOnly" : false,
        "indexBounds" : {
                "end" : [

What would be the best approach to speeding this specific query up?

share|improve this question
Did you try to run an explain command to see what is the nscanned number for your query ? It might be that your query critera is qualifying loads of documents for start and then finding end and vice versa. Btw are the intervals fixed eg 0-99,100-199? or variable ? – DhruvPathak Nov 9 '11 at 6:38
I think you're on to something.. nscanned is huge (added to the question). The intervals are not fixed, they're variable. – thatjuan Nov 9 '11 at 16:16
up vote 1 down vote accepted

I guess compbound index should work faster for you:

db.blocks.ensureIndex({start:1, end:1});

You can also use explain to see number of scanned object, etc and choose best index.

Also if you are using mongodb < 2.0 you need to update to 2.0+, because there indexes work faster. Also you can limit results to optimize query.

share|improve this answer
Thanks for your suggestion.. I had actually already tried a compound index and also used hint(..) to make sure it was being used. explain() confirmed that it was. .limit(1) cut some queries in half, but I'm still seeing 4-5 second queries. I'm using the latest mongo 2.* – thatjuan Nov 9 '11 at 6:35
I had updated to mongo 2.0 from 1.6, but I was still using the same data path.. I started mongod with a new dbpath, re-imported the data and created the indexes (single and compound). Now queries average 10ms :) – thatjuan Nov 9 '11 at 17:04
@JuanD: hmm, strange. docs says that update to mongodb 2.0 should work without reimporting of data and rebuilding of indexes. in any good that you've figured it out! – Andrew Orsich Nov 9 '11 at 17:44
See rendybjunior answer. It is a lot faster if the range hit miss. – waza Feb 6 '15 at 3:06

actually I'm working on similar problem and my friend find a nice way to solve this.

If you don't have overlapping data, you can do this:

  1. query using start field and sort function
  2. validate with end field

for example you can do

var x = 100;
var results = db.collection.find({start:{$lte:x}}).sort({start:-1}).limit(1)
if (results!=null) {
  var result = results[0];
  if (result.end > x) {
    return result;
  } else {
    return null; // no range contain x

If you are sure that there will always range containing x, then you do not have to validate the result.

By using this piece of code, you only have to index by either start or end field and your query become a lot faster.

--- edit

I did some benchmark, using composite index takes 100-100,000ms per query, in the other hand using one index takes 1-5ms per query.

share|improve this answer

This might help: how about you introduce some redundancy. If there is not a big variance in the lengths of the intervals, then you can introduce a tag field for each record - this tag field is a single value or string that represents a large interval - say for example tag 50,000 is used to tag all records with intervals that are at least partially in the range 0-50,000 and tag 100,000 is for all intervals in the range 50,000-100,000, and so on. Now you can index on the tag as primary and one of the end points of record range as secondary.

Records on the edge of big interval would have more than one tag - so we are talking multikeys. On your query you would of course calculate the big interval tag and use it in the query.

You would roughly want SQRT of total records per tag - just a starting point for tests, then you can fine tune the big interval size.

Of course this would make writing bit slower.

share|improve this answer

Your Answer


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.