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Will it get slower? Will find work for only data that fit into RAM? What will happen if mongodb indexes are more then RAM?

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2 Answers 2

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About Mongo

MongoDB uses memory mapped files.

This means the the operating system essentially controls what is paged in and out of memory (to and from disk).

The Rules

If your indexes + working set exceed memory, the last recently used pages (sections of memory) will be flushed to disk. This leaves only the most recently used data which still fits in memory readily available.

Your operating system controls this.

While you will experience awful performance if your true working set and indexes do not fit into memory, in practice, the size of one's working set (hot data) is much smaller than their total dataset.

If you don't violate this rule, you should have excellent performance most of the time even though your indexes + total data may exceed the total available memory.

How It Works

If a query is performed that needs data that is not in memory, it will be paged into memory (retrieved from disk) and there will be a performance hit.

Note: this is essentially the situation when the database is first started (cold).

Nothing is in memory to start with, page faults occur when data is required, and data is paged into memory as needed. When you run out of memory, the last recently used pages (chunks) are flushed from memory in favor of hotter (more recently accessed) data.

Also it is worth mentioning that because indexes are used constantly, and thus always recently used, they are virtually never paged out.

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I don't agree that "you will still experience relatively high performance". In my experience if index size gets close to or exceeds RAM size then performance drops precipitously. MongoDB web site advises you to keep index size << RAM size. –  Ian Mercer Apr 13 '12 at 2:40
    
It stands to reason that when I said performance was good if working set + indexes are in memory that if your indexes don't even fit in memory then you won't have much room for your working set and fall out of the "you will experience high performance" category, or did I miss something? –  Tyler Brock Apr 13 '12 at 2:49
    
Your answer reads ... "If your indexes + working set exceed memory,..." and continues that with "You will still experience relatively high performance unless you are constantly touching every single part of your dataset." That's the part that's misleading - you don't need to touch much to get terrible performance once indexes > RAM. –  Ian Mercer Apr 13 '12 at 3:05
    
Yes because surely you will run out of memory for working set + indexes before you will run out of memory for just indexes. If your working set isn't all in memory, which will paged out before indexes ever will, you are already screwed. Unless every single query you do is on a covered index, you will hit the point where you are dead in the water before ever having to worry about just your indexes fitting in memory, as is the case with every database on the face of the earth. –  Tyler Brock Apr 13 '12 at 3:18
    
I've updated my answer to reflect your concerns. –  Tyler Brock Apr 13 '12 at 3:25

If your indexes are larger than available RAM then performance drops rapidly. The MongoDB site specifically advises you to "Make sure your indexes can fit in RAM".

If your queries seem sluggish, you should verify that your indexes are small enough to fit in RAM. For instance, if you're running on 4GB RAM and you have 3GB of indexes, then your indexes probably aren't fitting in RAM. You may need to add RAM and/or verify that all the indexes you've created are actually being used.

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