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The mongodb document says that

To compact this space, run db.repairDatabase() from the mongo shell (note this operation will block and is slow).

in http://www.mongodb.org/display/DOCS/Excessive+Disk+Space

I wonder how to make the mongodb free deleted disk space automatically ?

p.s. We stored many downloading task in mongodb, up to 20GB, and finished these in half an hour.

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3 Answers 3

up vote 42 down vote accepted

In general if you don't need to shrink your datafiles you shouldn't shrink them at all. This is because "growing" your datafiles on disk is a fairly expensive operation and the more space that MongoDB can allocate in datafiles the less fragmentation you will have.

So, you should try to provide as much disk-space as possible for the database.

However if you must shrink the database you should keep two things in mind.

  1. MongoDB grows it's data files by doubling so the datafiles may be 64MB, then 128MB, etc up to 2GB (at which point it stops doubling to keep files until 2GB.)

  2. As with most any database ... to do operations like shrinking you'll need to schedule a separate job to do so, there is no "autoshrink" in MongoDB. In fact of the major noSQL databases (hate that name) only Riak will autoshrink. So, you'll need to create a job using your OS's scheduler to run a shrink. You could use an bash script, or have a job run a php script, etc.

Serverside Javascript

You can use server side Javascript to do the shrink and run that JS via mongo's shell on a regular bases via a job (like cron or the windows scheduling service) ...

Assuming a collection called foo you would save the javascript below into a file called bar.js and run ...

$ mongo foo bar.js

The javascript file would look something like ...

// Get a the current collection size.
var storage = db.foo.storageSize();
var total = db.foo.totalSize();

print('Storage Size: ' + tojson(storage));

print('TotalSize: ' + tojson(total));

print('-----------------------');
print('Running db.repairDatabase()');
print('-----------------------');

// Run repair
db.repairDatabase()

// Get new collection sizes.
var storage_a = db.foo.storageSize();
var total_a = db.foo.totalSize();

print('Storage Size: ' + tojson(storage_a));
print('TotalSize: ' + tojson(total_a));

This will run and return something like ...

MongoDB shell version: 1.6.4
connecting to: foo
Storage Size: 51351
TotalSize: 79152
-----------------------
Running db.repairDatabase()
-----------------------
Storage Size: 40960
TotalSize: 65153

Run this on a schedule (during none peak hours) and you are good to go.

Capped Collections

However there is one other option, capped collections.

Capped collections are fixed sized collections that have a very high performance auto-FIFO age-out feature (age out is based on insertion order). They are a bit like the "RRD" concept if you are familiar with that.

In addition, capped collections automatically, with high performance, maintain insertion order for the objects in the collection; this is very powerful for certain use cases such as logging.

Basically you can limit the size of (or number of documents in ) a collection to say .. 20GB and once that limit is reached MongoDB will start to throw out the oldest records and replace them with newer entries as they come in.

This is a great way to keep a large amount of data, discarding the older data as time goes by and keeping the same amount of disk-space used.

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Thanks for the great post. if I don't shrink the datafiles the mongod will always cost a lot of memory, How could I solve it? –  Zealot Ke Dec 30 '10 at 23:05
    
@Zealot ... See my answer on memory use, it might be helpful. stackoverflow.com/questions/4468873/… –  Justin Jenkins Dec 31 '10 at 0:40
    
I got it, we have 16GB memory, and the mongodb cost 4GB. So I may not care about it. Thank you for these answer. –  Zealot Ke Dec 31 '10 at 2:42
    
Note, while there is still no "auto" compact as of 1.9 there is a "compact" feature which can be used per collection: mongodb.org/display/DOCS/compact+Command –  Justin Jenkins Sep 14 '11 at 18:05

Running db.repairDatabase() will require that you have space equal to the current size of the database available on the file system. This can be bothersome when you know that the collections left or data you need to retain in the database would currently use much less space than what is allocated and you do not have enough space to make the repair.

As an alternative if you have few collections you actually need to retain or only want a subset of the data, then you can move the data you need to keep into a new database and drop the old one. If you need the same database name you can then move them back into a fresh db by the same name. Just make sure you recreate any indexes.

use cleanup_database
db.dropDatabase();

use oversize_database

db.collection.find({},{}).forEach(function(doc){
    db = db.getSiblingDB("cleanup_database");
    db.collection_subset.insert(doc);
});

use oversize_database
db.dropDatabase();

use cleanup_database

db.collection_subset.find({},{}).forEach(function(doc){
    db = db.getSiblingDB("oversize_database");
    db.collection.insert(doc);
});

use oversize_database

<add indexes>
db.collection.ensureIndex({field:1});

use cleanup_database
db.dropDatabase();

An export/drop/import operation for databases with many collections would likely achieve the same result but I have not tested.

Also as a policy you can keep permanent collections in a separate database from your transient/processing data and simply drop the processing database once your jobs complete. Since MongoDB is schema-less, nothing except indexes would be lost and your db and collections will be recreated when the inserts for the processes run next. Just make sure your jobs include creating any nessecary indexes at an appropriate time.

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I have another solution that might work better than doing db.repairDatabase() if you can't afford for the system to be locked, or don't have double the storage.

You must be using a replica set.

My thought is once you've removed all of the excess data that's gobbling your disk, stop a secondary replica, wipe its data directory, start it up and let it resynchronize with the master.

The process is time consuming, but it should only cost a few seconds of down time, when you do the rs.stepDown().

Also this can not be automated. Well it could, but I don't think I'm willing to try.

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Thank you. This works awesome for replica sets and was exactly what we needed for a replica set that ran out of space. –  tcbcw Jan 31 at 17:56
    
this should be the top answer. it is simple and works in a real-world deployment. –  Keeth Sep 9 at 5:06

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