9

I am storing a large binary array within a document. I wish to continually add bytes to this array and sometimes change the value of existing bytes.

I was looking for some $append_bytes and $replace_bytes type of modifiers but it appears that the best I can do is $push for arrays. It seems like this would be doable by performing seek-write type operations if I had access somehow to the underlying bson on disk, but it does not appear to me that there is anyway to do this in mongodb (and probably for good reason).

If I were instead to just query this binary array, edit or add to it, and then update the document by rewriting the entire field, how costly will this be? Each binary array will be on the order of 1-2MB, and updates occur once every 5 minutes and across 1000s of documents. Worse, yet there is no easy way to spread these out (in time) and they will usually be happening close to one another on the 5 minute intervals. Does anyone have a good feel for how disastrous this will be? Seems like it would be problematic.

An alternative would be to store this binary data as separate files on disk, implement a thread pool to efficiently manipulate the files on disk, and reference the filename from my mongodb document. (I'm using python and pymongo so I was looking at pytables). I'd prefer to avoid this though if possible.

Is there any other alternative that I am overlooking here?

Thanks in advnace.

EDIT

After some work writing some tests for my use cases I have decided to use a separate filesystem for the binary data objects (specifically hdf5 using either pytables or h5py). I will still use mongo for everything except the persistence of these binary data objects. In this manner I can decouple the performance related to append and update type operations away from my base mongo performance.

One of the mongo developers did point out that I can set internal array elements using dot notation and $set (see ref in comment below), but there is no way at this time to do a range of sets in an array atomically.

Moreover - if I have 1,000s of 2MB binary data fields within my mongo documents and I am updating and growing them often (as in at least once every 5 minutes) - my gut tells me that mongo is going to have to manage a lot of allocation/growth issues within its file(s) on disk - and that ultimately this will lead to performance problems. I would rather off load that to a separate filesystem at the OS level to handle.

Finally - I will be manipulating and performing computation on my data using numpy - both the pytables and the h5py modules allow nice integration between numpy behavior and the store.

1
  • It was just brought to my attention by one of the mongodb developers that you can access individual array elements using $set with dot notation. I overlooked this. The ref is at: mongodb.org/display/DOCS/… – Rocketman Jun 20 '12 at 16:29
4

As you have mentioned that, you are frequently editing your binary data, in fact very frequently. GridFS is another option I would be suggesting.

When to use GridFS might be useful to you

5
  • 1
    I looked into GridFS ... files are put() into the collection and it takes care of automatically distributing in chunks. It also appeared that if I need to change something - I then need to put() again - which saves another entire set of chunks. It seems to be built for versioning files that don't change that frequently. So in my case I would have a massive number of copies of the file. Unless it somehow stores changes by diff somehow - but none of the documentation that I saw suggested so ... – Rocketman Jun 17 '12 at 18:21
  • Yeah, actually updating existing chucks would be unbearable headache. Instead, generally you want to follow this pattern: 1.) find old one, keep the _id 2.) add new one 3.) remove old one by _id – Ravi Khakhkhar Jun 17 '12 at 19:09
  • stackoverflow.com/questions/6280186/…, have a look to this one – Ravi Khakhkhar Jun 17 '12 at 19:23
  • Thanks for the ref. I guess then I could chunk my data smaller (e.g. 64KB chunks) in gridfs. Then when an edit needs to take place - I could carefully go do a rewrite of just the effected 64KB chunks. Then update the checksum for the overall file. A little work on my part but this would be much better than having it rewrite all of the chunks for the file. Thanks for the idea - I may look into this approach. It still makes we wonder if I were to study the BSON spec - if I couldn't go manipulate just the effected bytes on disk directly. I assume that would be the fastest of all. – Rocketman Jun 17 '12 at 20:39
  • Best of luck, but don't forget to post the solution you find. It will help others too as well me. – Ravi Khakhkhar Jun 18 '12 at 2:09

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.