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I am building a logging system that will log requests and responses to a web service which is distributed across multiple application nodes. I was thinking of using MongoDB as the repository and logging in real-time, or more realistically dumping logs to DB after x number of requests. The application is designed to be considerably high volume and is built in Perl. Does anyone have any experience doing this? Recommendations? Or is this a no-no?

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I've seen at lot of companies are using MongoDB to store logs. Its schema-freeness is really flexible for application logs, at which schema tends to change time-to-time. Also, its Capped Collection feature is really useful because it automatically purges old data to keep the data fit into the memory.

People aggregates the logs by normal Grouping or MapReduce, but it's not that fast. Especially MongoDB's MapReduce only works within a single thread and its JavaScript execution overhead is huge. New aggregation framework could solve this problem.

Another concern is high write through put. Although MongoDB's insert is fire-and-forget style by default, calling a lot of insert command causes a heavy write lock contention. This could affect the application performance, and prevent the readers to aggregate / filter the stored logs.

One solution might be using the log collector framework such as Fluentd, Logstash, or Flume. These daemons are supposed to be launched at every application nodes, and takes the logs from app processes.

fluentd plus mongodb

They buffer the logs and asynchronously writes out the data to other systems like MongoDB / PostgreSQL / etc. The write is done by batches, so it's a lot more efficient than writing directly from apps. This link describes how to put the logs into Fluentd from Perl program.

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I use it in several applications through Log::Dispatch::MongoDB; works like a charm!

# Declaration
use Log::Dispatch;
use Log::Dispatch::MongoDB;
use Log::Dispatch::Screen;
use Moose;

has log => (is => 'ro', isa => 'Log::Dispatch', default => sub { Log::Dispatch->new }, lazy => 1)


# Configuration
        min_level   => 'debug',
        name        => 'screen',
        newline     => 1,
        collection  => MongoDB::Connection->new(
            host    => $self->config->mongodb
        min_level   => 'debug',
        name        => 'crawler',


# The logging facility
    level   => 'info',
    message => 'Crawler finished',
    info    => {
        origin  => $self->origin,
        country => $self->country,
        counter => $self->counter,
        start   => $self->start,
        finish  => time,

And here is a sample record from the capped collection:

    "_id" : ObjectId("50c453421329307e4f000007"),
    "info" : {
            "country" : "sa",
            "finish" : NumberLong(1355043650),
            "origin" : "onedayonly_sa",
            "counter" : NumberLong(2),
            "start" : NumberLong(1355043646)
    "level" : "info",
    "name" : "crawler",
    "message" : "Crawler finished"
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I've done this on a webapp that runs on two app servers. Writes in mongodb are non-blocking by default (the java driver just gets the request for you and returns back immediately, I assume it's the same for perl, but you better check) which is perfect for this use case since you don't want your users to wait for a log to be recorded.

The downside of this is that in certain failure scenarios you might lose some logs (your app fails before mongo gets the data for example).

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Great. Are you doing real time logging? How load intensive is your logging server? – MadHacker Jan 17 '12 at 4:01

For some interesting ideas for your app, I recommend checking out Graylog2 if you haven't already. They use a combination of MongoDB and Elasticsearch quite effectively. Adding a powerful search engine into the mix can give you some interesting query and analysis options.

For your reference, here's an Elasticsearch page dedicated to log processing tools and techniques.

If you are planning to queue the log entries before processing (which I would recommend), I suggest Kestrel as a solid message queue option. This is what uses, and I've been putting it through it's paces lately. A Java app, it's extremely fast and atomic, and it conveniently speaks the Memcache protocol. It's a great way to scale horizontally, and the memory cache is backed up to a journalled file for a good balance of speed and durability.

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