Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

The aggregation framework on MongoDB has certain limitations as per this link.

I want to remove the restrictions 2, 3.

I really do not care what the resulting set's size is. I have a lot of RAM and resources.

And I do not care if it takes more than 10% system resources.

I expect both 2, 3 to be violated in my application. Mostly 2.

But I really need the aggregation framework. Is there anything that I can do to remove these limitations?

  • The reason *

The application I have been working has these things

  1. The user has the ability to upload a large dataset
  2. We have a menu to let him sort, aggregate etc
  3. The aggregate has no restrictions currently and the user can choose to do whatever he wants. Since the data is not known to the developer and since it is possible to group by any number of columns, the application can error out.

Choosing something other than mongodb is a no go. We have already sunk too much into development with MongoDB

Is it advisable to change the source code of Mongo?

share|improve this question
    
It's open source. Although the result size issue will be difficult to overcome. Honestly, without more information, there isn't a good answer. I'd suggest you consider a database that fits your requirements better. – WiredPrairie Jun 17 '13 at 11:01
    
there is nothing wrong with the database - I would consider whether your schema is correct for your use case if you are expecting to rely on functionality that doesn't exist. – Asya Kamsky Jun 24 '13 at 6:42

1) Saving aggregated values directly to some collection(like with MapReduce) will released in future versions, so first solution is just wait for a while :)

2) If you hit 2-nd or 3-rd limitation may you should redesign your data scheme and/or aggregation pipeline. If you working with large time series, you can reduce number of aggregated docs and do aggregation in several steps (like MapReduce do). I can't say more concretely, because I don't know your data/use cases(give me a comment).

3) You can choose different framework. If you familiar with MapReduce concept, you can try Hadoop(it can use MongoDB as data source). I don't have experience with MongoDB-Hadoop integration, but I mast warn you NOT to use Mongo's MapReduce -- it sucks hard on large datasets.

4) You can do aggregation inside your code, but you should use some "lowlevel" language or library. For example, pymongo (http://api.mongodb.org/python/current/) is not suitable for such things, but you can tray something like monary(https://bitbucket.org/djcbeach/monary/wiki/Home) to efficiently extract date and NumPy or Pandas to aggregate it the way want.

share|improve this answer
    
Will look into the libraries mentioned by you. Thanks – CivFiveAddict Jun 17 '13 at 14:32
    
I have edited the question to reflect the use case – CivFiveAddict Jun 17 '13 at 14:33
    
It seems that you have huge problem with design, not with MongoDB. Crunching MongoDB sources is not an option, because it's easier to write your own solution like I said in point 4. – Artem Mezhenin Jun 17 '13 at 16:01

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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