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I have a collection referencing GridFS files, generally 1-2 files per record. The collections are reasonably large - about 705k records in the parent collection, and 790k GridFS files. Over time, there have become a number of orphaned GridFS files - the parent records were deleted, but the referenced files weren't. I'm now attempting to clean the orphaned files out of the GridFS collection.

The problem with an approach like suggested here is that combining the 700k records into a single large list of ids results in a Python list that's about 4mb in memory - passing that into a $nin query in Mongo on the fs.files collection takes literally forever. Doing the reverse (get a list of all ids in fs.files and querying the parent collection to see if they exist) also takes forever.

Has anybody come up against this and developed a faster solution?

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1 Answer 1

up vote 3 down vote accepted

Firstly, let's take the time to consider what GridFS actually is. And as a starter, lets read from the manual page that is referenced:

GridFS is a specification for storing and retrieving files that exceed the BSON-document size limit of 16MB.

So with that out of the way, and that may well be your use case. But the lesson to learn here is that GridFS is not automatically the "go-to" method for storing files.

What has happened here in your case (and others) is because of the "driver level" specification that this is (and MongoDB itself does no magic here), Your "files" have been "split" across two collections. One collection for the main reference to the content, and the other for the "chunks" of data.

Your problem (and others), is that you have managed to leave behind the "chunks" now that the "main" reference has been removed. So with a large number, how to get rid of the orphans.

Your current reading says "loop and compare", and since MongoDB does not do joins, then there really is no other answer. But there are some things that can help.

So rather than run a huge $nin, try doing a few different things to break this up. Consider working on the reverse order, for example:

db.fs.chunks.aggregate([
    { "$group": { "_id": "$files_id" } },
    { "$limit": 5000 }
])

So what you are doing there is getting the distinct "files_id" values (being the references to fs.files ), from all of the entries, for 5000 of your entries to start with. Then of course you're back to the looping, checking fs.files for a matching _id. If something is not found, then remove the documents matching "files_id" from your "chunks".

But that was only 5000, so keep the last id found in that set, because now you are going to run the same aggregate statement again, but differently:

db.fs.chunks.aggregate([
    { "$match": { "files_id": { "$gte": last_id } } },
    { "$group": { "_id": "$files_id" } },
    { "$limit": 5000 }
])

So this works because the ObjectId values are monotonic or "ever increasing". So all new entries are always greater than the last. Then you can go an loop those values again and do the same deletes where not found.

Will this "take forever". Well yes. You might employ db.eval() for this, but read the documentation. But overall, this is the price you pay for using two collections.

Back to the start. The GridFS spec is designed this way because it specifically wants to work around the 16MB limitation. But if that is not your limitation, then question why you are using GridFS in the first place.

MongoDB has no problem storing "binary" data within any element of a given BSON document. So you do not need to use GridFS just to store files. And if you had done so, then all of your updates would be completely "atomic", as they only act on one document in one collection at a time.

Since GridFS deliberately splits documents across collections, then if you use it, then you live with the pain. So use it if you need it, but if you do not, then just store the BinData as a normal field, and these problems go away.

But at least you have a better approach to take than loading everything into memory.

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I should specify - it's not orphaned chunks that I'm cleaning up, it's the files (since pymongo takes care of the chunks when deleting a gridfs file). The original collection ("entries") refer to the GridFS files ("fs.files"). There are some good ideas here, but they're sadly not applicable because the files I'm cleaning are not necessarily contiguously missing (most of the time they're not). –  Murodese Mar 22 at 7:06
    
@Murodese Same deal applies. Just reverse the case. At any rate you have a method to reduce the working set by utilizing the monotonic nature of the ObjectId keys. And there is no magic tonic here. You have created a lot of "mismatching entries" across collections. You are stuck with looping to compare. Your "not contiguous" statement does not make much sense in this context. There is no other way than to compare the "mismatch". –  Neil Lunn Mar 22 at 7:12
    
Upon re-reading it, I see what you mean. Thanks! –  Murodese Mar 22 at 7:24

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