Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I have a collection with 400 million documents. Each has 6 DateTime, 1 Boolean, 8 Double, 9 Integer, and 6 String fields. I am trying to build the following index:

    { "String1" : 1, "String2" : 1, "String3" : 1, "DateTime1" : 1, "Integer1" : 1, "DateTime2" : 1 }, 
    {background: true} 

After running for 5 days it is only half done.

The server is running Windows Server Enterprise and has 4TB disk space and 256GB RAM. Very few other processes are running against the database. No sharding or other special configuration.

Is there any way to speed this up? (Without dropping the background = true qualifier, because I don't want it to completely shut me out of the database, which it does in that case.)

share|improve this question
how does the cpu look? It's either CPU or disk bound, it would help to know which looks maxed out right now. – Asya Kamsky May 22 '14 at 21:31
It is not CPU bound. But the 256GB RAM is fully used. So maybe it's disk bound or could it be RAM bound? – davidpaulstevens May 22 '14 at 22:10
RAM bound just leads to page faults so that still manifests as disk-bound. It needs to read in all the data, it needs to write out all of the index and it needs to do a massive sort which it's using disk for since it can't take up all your RAM with the sort. – Asya Kamsky May 22 '14 at 22:40
As long as you want your app stay online while building index, I'm afraid there's no other way but wait. That's why you need a ReplicaSet. The only one server will always fail. – yaoxing May 23 '14 at 1:16
Do you have a query that requires all those fields to be indexed. If not, you might be better off with several compound indexes with just the keys you need for the individual queries – John Barça May 23 '14 at 10:43



Even when not talking of a multi key index, here is what happens. There is a massive table scan going on. So mongoDB iterates over the documents, tries to find the field to be indexed, evaluates that field (to null if it does not exist in the current document) and writes it's findings to no less than 6 files as we are talking of 6 indices. Doing the math: 200.000.000 / 86400 * 5 tells us that mongoDB does this for roughly 460 documents per second or only needs 2.2 milliseconds per document. I would not call that slow. It may take long, but it is not slow.


Using this parameter does not lock you out of the databases. Quite the contrary, which is clearly stated in the docs, both on the Index Creation section and in the tutorial section on creating indices in the background. However, there is a sentence which can easily be misinterpreted:

Also, no operation that requires a read or write lock on all databases (e.g. listDatabases) can occur during a foreground index build.

What that means is that you can not do operations which apply to all databases and require a read or write lock.

Ways to improve (in the future)

Sharded Cluster

Use a shared cluster with replica set shards. It is easy to set up and has multiple advantages besides improved performance. One of them is easy scalability adding a shard (and thus adding space and computing power to a cluster) is very easy. Backups have less impact on the application. There is not single point of failure any more (when done right, this even applies to outages at the scale of a whole datacenter).

Use a different filesystem

Sorry, running a disk io performance dependent application on a Windows Server does not make sense to me - at all. ExtFS4 or XFS are between 25% and 40% faster than NTFS or ReFS, depending on the optimization. This makes a real difference on applications which are as disk IO dependent like your use case. We are talking of a matter of days (not even taking into account the more efficient memory mapping and the reduced memory consumption of the OS on Linux systems).


While this does not really improve performance (actually building indices in the background take longer than in foreground for obvious reasons), your application stays available during the time during which the index is build. So depending on your needs, this may be a viable option.

Side note: It is a Bad Idea™, to scale vertically when using mongoDB since it was explicitly designed to be scaled horizontally. This especially applies for large collections like yours as parallel processing would greatly improve the performance of your application.

share|improve this answer
Horizontal scaling seems intuitive to me with regard to disk access. What about server memory? For example, all else equal, is it better to have 4 servers with 64GB RAM each or 1 server with 256GB RAM? Optimizing RAM configuration seems critical. – davidpaulstevens May 28 '14 at 14:35
Assuming the data is balanced equally among the shards, I'd go for 4 x 64GB as processing will go parallel. Other than that, it should not make a difference. – Markus W Mahlberg May 28 '14 at 16:07

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.