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I'm trying to maximize inserts per second. I currently get around 20k inserts/sec. My performance is actually degrading the more threads and CPU I use (I have 16 cores available). 2 threads currently do more per sec than 16 threads on a 16 core dual processor machine. Any ideas on what the problem is? Is it because I'm using only one mongod? Is it indexing that could be slowing things down? Do I need to use sharding? I wonder if there's a way to shard, but also keep the database capped...

Constraints: must handle around 300k inserts/sec, must be self-limiting(capped), must be query-able relatively quickly

Problem Space: must handle call records for a major cellphone company (around 300k inserts/sec) and make those call records query-able for as long as possible (a week, for instance)


use strict;
use warnings;
use threads;
use threads::shared;

use MongoDB;
use Time::HiRes;

my $conn = MongoDB::Connection->new;

my $db = $conn->tutorial;

my $users = $db->users;

my $cmd = Tie::IxHash->new(
    "create"    => "users",
    "capped"    => "boolean::true",
    "max"       => 10000000,


my $idx = Tie::IxHash->new(
    "background"=> "boolean::true",

my $myhash =
        "name"  => "James",
        "age"   => 31,
        #    "likes" => [qw/Danielle biking food games/]

my $j : shared = 0;

my $numthread = 2;  # how many threads to run

my @array;
for (1..100000) {
    push (@array, $myhash);

sub thInsert {
    #my @ids = $users->batch_insert(\@array);

my @threads;

my $timestart = Time::HiRes::time();
push @threads, threads->new(\&thInsert) for 1..$numthread;
$_->join foreach @threads; # wait for all threads to finish
print (($j*$numthread) . "\n");
my $timeend = Time::HiRes::time();

print( (($j*$numthread)/($timeend - $timestart)) . "\n");

share|improve this question
up vote 17 down vote accepted

Writes to MongoDB currently aquire a global write lock, although collection level locking is hopefully coming soon. By using more threads you're likely introducing more concurrency problems as the threads block eachother while they wait for the lock to be released.

Indexes will also slow you down, to get the best insert performance it's ideal to add them after you've loaded your data, however this isn't always possible, for example if you're using a unique index.

To really maximise write performance, your best bet is sharding. This'll give you a much better concurrency and higher disk I/O capacity as you distribute writes across several machines.

share|improve this answer
Note that collection-level locking will not help here. – Thilo Sep 1 '11 at 2:28
@Thilo Correct, but it's still useful to note that collection-level locking is on the way. Once it's available, there'll be an extra option of splitting data across multiple collections to reduce lock contention, as well as sharding and distributing across different databases. – Chris Fulstow Sep 1 '11 at 2:48
"option of splitting data across multiple collections". How will that work? Is that like a partitioned table in Oracle? i.e. you can still query it as a single collection but it "shards internally"? – Thilo Sep 1 '11 at 2:50
@Thilio I was thinking of something more manual, but I like that idea. Once collection-level locking is in place, you could build a neat little partitioning layer over multiple collections to reduce locking; it could appear through the driver as a single collection. Collection-level locking might even be implemented using a lock per extent, rather than per collection, in that case you'd get multiple locks per collection straight out of the box. – Chris Fulstow Sep 1 '11 at 4:34
Oh, I see, when you said "there'll be an extra option" you mean an option for the application developer, not a feature of MongoDB, right? – Thilo Sep 1 '11 at 4:52

Why don't you manually cap the collection? You could shard across multiple machines and apply the indexes you need for the queries, and then every hour or so delete the unwanted documents.

The bottleneck you have is most likely the global lock - I have seen this happen in my evaluation of MongoDB for a insert-heavy time-series data application. You need to make sure the shard key is not the timestamp, otherwise all the inserts will execute sequentially on the same machine instead of being distributed across multiple machines.

share|improve this answer

uhmm.. you won't get that much performance from one mongodb server.

0.3M * 60 * 60 * 24 = 26G records/day, 180G records/week. I guess your records size is around 100 bytes, so that's 2.6TB data/day. I don't know what field(s) do you use for indexing but I doubt it's below 10-20 bytes, so just the daily index is going to be over 2G, not to mention the whole week.. the index won't fit into memory, with a lot of queries that's a good recipe for disaster.

You should do manual sharding, partitioning the data based on the search field(s). It's a major tel company, you should do replication. Buy a lot of single/dual core machines, you only need cores for the main (perl?) server.

BTW how do you query the data? Could you use a key-value store?

share|improve this answer
The system is 12.2TB HD, 192GB RAM and 16 processing cores, so the daily indexing should be ok. I don't see why I couldn't use a key-value store, if I understand you correctly. What do you have in mind? – EhevuTov Sep 1 '11 at 22:37
Oh, also, I'll be querying for a result set by a few fields, such as a telephone number, calltime, etc. – EhevuTov Sep 1 '11 at 23:07
Well, you have to query the data, so if you have complex queries K-V store won't work. If you have simple one-field queries then it might work but for the mentioned multiple fields you have to insert the data (or index) multiple times, further increasing the insert rate. – Karoly Horvath Sep 2 '11 at 10:15
@EhevuTov: BTW have you figured out what the bottleneck is? I doubt it's the network, it should be the disk, maaaybe the CPU. – Karoly Horvath Sep 2 '11 at 14:57
I'm saying that a dozen dual core machines with 4G ram and single hard drive could be cheaper and overall provide better performance.… You can scale up to some point but then you'll reach a point where no single server on earth would be able to serve the requests and you have to switch to the scale out solution. Many many many companies went on this route. It's better to start with the right architecture right from the beginning. – Karoly Horvath Sep 2 '11 at 18:19

2 threads currently do more per sec than 16 threads on a 16 core dual processor machine.

MongoDB inserts cannot be done concurrently. Every insert needs to acquire a write lock. Not sure if that is a global or a per-collection lock, but in your case that would not make a difference.

So making this program multi-threaded does not make much sense as soon as Mongo becomes the bottleneck.

Do I need to use sharding?

You cannot shard a capped collection.

share|improve this answer
Thank you for your response. Have you ever heard of capping while at the same time maximizing inserts by using sharding? I know internally it's not a feature for MongoDB, but I wonder if there is a way to cap by using a script or something. – EhevuTov Sep 1 '11 at 15:11
Maybe MongoDB is not the right solution for high-volume transaction data. – Thilo Sep 1 '11 at 23:12
I think MongoDB has the potential to do high-volume inserts through sharding, but also rotating/capping the database is a challenge. – EhevuTov Sep 2 '11 at 4:27
there are other constraints other than the lock that can be sped up by multithreading though. See… – n00b Jul 9 '13 at 16:15

Write lock on MongoDB is global but quoting this "collection-level locking coming soon".

Do I need to use sharding?

Not so easy to answer. If what you can get out of one mongod is not meeting your requirements, you kind of have to since sharding is the only way to scale writes on MongoDB (writes on different instances will not block each other).

share|improve this answer
You cannot shard a capped collection, though. – Thilo Sep 1 '11 at 2:31
Yes, my mistake. I did not see that it was a capped collection. – Eren Güven Sep 1 '11 at 13:52
No need to downvote, though. The answer is still correct. – Thilo Sep 1 '11 at 23:13

I've noticed that building the index after inserting helps.

share|improve this answer
You typically do not add indexes to capped collections – Remon van Vliet Sep 1 '11 at 11:01
right, I just mentioned it because he was calling ensure_index. So maybe not indexing at all will save even more time? – jeffsaracco Sep 1 '11 at 14:41
What call would I use to not index? I'll probably need indexing though, since these inserts will need to be query-able. Basically, the customer will be logging all their phone calls and need to query those calls based on certain values. – EhevuTov Sep 1 '11 at 15:32
The use cases for capped collections and queries requiring indexes are usually mutually exclusive. Capped collections are suited for various types of logs and other things that benefit from tailable cursors. As soon as you need queries you're usually better off with a normal collection. Note that you can index capped collections, it's just pretty rare for it to make sense. – Remon van Vliet Sep 1 '11 at 15:56
@Remon so, it's sounding more and more like I want to use sharding, and then cap the collection outside of mongo using my own app that truncates – EhevuTov Sep 1 '11 at 22:54

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