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Answer is below (posted here because the sysops closed this thread)

We dump debug and transaction logs into mongodb.

We really like mongodb because:

  • Blazing insert perf
  • document oriented
  • Ability to let the engine drop inserts when needed for performance

But there is this big problem with mongodb: The index must fit in physical RAM. In practice, this limits us to 80-150gb of raw data.

Sooooo, for us to have 500gb or a tb of data, we would need 50gb or 80gb of RAM.

Yes, I know this is possible, but we aren't going to do that. (MongoDB is FOSS, but we gotta spend $$$$$$$ on hardware to run it? Would rather buy commercial SW!)

Where do we go next?

(We already run Mongo v2)




We posted this same question on the Mongo forum, and the Mongo CTO responded, saying to review his presentation on how to optimize indexes

In this presentation, Mr. Horowitz states explicitly that sharding/horiz scaling can be overkill in many situations, and that design approaches (including some rather non-intuitive approaches that are kind of specific to Mongo) can make a given server scale much farther.

This presented some interesting concepts, including using client side logic to optimize how the db is used in a number of "non normalized" ways. There is a clear subtext to the presentation to the effect "if you just build by the book, you can easily hit unwanted problems related to scaling." For example, Mr. Horowitz (the CTO of 10Gen, maker of MongoDB) presents a "hybrid" design in which instead of one document per "record" you put perhaps 100 "records" in a document, resulting in a "bucket" kind of approach. This is done explicitly to reduce the index footprint. This is something that is coded on the client, and is not a "feature" of MongoDB. This hybrid approach may work for us, and could give us a 4x or 8x improvement in index size.

He also discusses "right balanced" btrees, which is basically optimizing the index design so that most queries access only the "right hand piece" of the index (as opposed to random access across the index, which, to perform well, requires that the whole index fit in RAM). This approach will not help us, as we need to query all over the index.

We are going to use these concepts as part of a review of our system.

(Interesting that of all the places I posted this question, the only person with a constructive response is the CTO of MongoDB itself.)

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closed as not constructive by Ken White, Code Magician, Andrew Orsich, Michael Petrotta, tvanfosson Nov 27 '11 at 14:46

As it currently stands, this question is not a good fit for our Q&A format. We expect answers to be supported by facts, references, or expertise, but this question will likely solicit debate, arguments, polling, or extended discussion. If you feel that this question can be improved and possibly reopened, visit the help center for guidance.If this question can be reworded to fit the rules in the help center, please edit the question.

Have you actually priced out 128 GB of RAM? It's doable for under $4k (e.g., is a vendor we use at work and have been happy with). You can do 256GB for under $7k, etc. – derobert Nov 27 '11 at 10:42
derobert: Thanks! That is a good tip, though I doubt we will take that route. – Jonesome Nov 27 '11 at 23:16
@Jonesome you should move your "answer" portion out of the question into the (can you believe it) answer section. It is ok to answer your own question. That would, I think, make this a proper use of StackOverflow. – David James Oct 18 '12 at 3:22
@DavidJames I know that... in case you didn't notice, this topic is closed, and has been. I added the answer in the question because that is all I could do! – Jonesome Oct 18 '12 at 14:50
@Jonesome Sorry, I didn't realize that you did that after the topic got closed. I think the question is valuable, for what it is worth. – David James Oct 18 '12 at 15:41

1 Answer 1

Sounds like you need to move to a sharded setup. Shards will let you distribute the load to more than one machine, that way RAM usage is lower per machine. Scaling MongoDB goes into the process in more detail.

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OK, let me try to understand your perspective: I can run 1 TB of data in SQL server with 16 or 32 or 48 GB of RAM and my queries are reasonably fast. I currently have about 80 GB of data in mongo and have maxed out a server that has 16gb RAM. To get up to 1 TB of data would involve perhaps 5 or 10 servers, with 32 GB RAM each. My point is: I have outgrown MongoDB. 5 servers is unreasonable. – Jonesome Nov 27 '11 at 20:35
You don't have to have everything fit in RAM. Only the most accessed. Other databases work the same way. – Justin Thomas Nov 27 '11 at 20:47
Mongodb completely dies if we query an index that can't get into memory. Queries can take forever (hours, even days). This is NOT like SQL Server or Oracle, which are able to traverse the index on disk QUICKLY. We have extensive experience with MongoDB and SQL Server. Mongo is perfect.... unless you have too much data, and then the cost is huge because hardware needs are huge. – Jonesome Nov 27 '11 at 21:16
We posted this same question on the Mongo forum, and the Mongo CTO responded, saying to review his presentation on how to optimize indexes – Jonesome Nov 29 '11 at 3:30

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