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Tracking MongoDB® Memory Usage

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Tracking MongoDB® Memory Usage

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Understanding MongoDB® memory usage is crucial for a good MongoDB® hosting experience. For best performance, it’s imperative to keep your working set in-memory. I’ve seen a few suggestions that if you use solid-state drives (SSD), it makes memory less important. Dynamic random-access memory (DRAM) access time is of the order of nanoseconds, SSD access time is of the order of microseconds, and hard disk access time is of the order of milliseconds – so SSDs still have a ways to go to catch up with memory.

MongoDB® uses memory mapped files (MMF) to map the database into memory. Data is periodically flushed to the disk (obviously the mechanism is a lot more complicated, but that’s a topic for another post).

Once your MongoDB® server is up and running, it’s important to monitor and understand the memory usage. In order to monitor MongoDB® servers, you can use the ScaleGrid Monitoring Console for MongoDB® to see detailed metrics on your performance. Run some sample workloads and establish a baseline so you can understand when something is not performing normally. Here are four important counters that will help you monitor your MongoDB® memory usage:

Memory

MongoDB memory usage counter

This is actually three counters in one graph:

Resident Memory

This is the actual amount of the physical memory used by the MongoDB® process.

Mapped Memory

This is the amount of virtual memory used by the MongoDB® progress to map your database into memory. This will typically be the size of your database.

Virtual Memory

This includes the virtual memory for the entire MongoDB® process. If you have journaling turned on, this will typically be twice the size of your mapped memory.

Non-Mapped Virtual Memory

MongoDB Non mapped virtual memory

This is the amount of virtual memory used for bookkeeping data and not for mapping the data files.  For example, each connection consumes a certain amount of memory. Usually, this counter should be fairly low – typically less than 1GB.

Page Faults

This is the number of hard page faults/second. Obviously you want this number to be as low as possible.

Hard Page Fault

This is triggered when the page in question is not in physical memory and needs to be fetched from the disk.

Soft Page Fault

This occurs when the page is resident somewhere else in memory or is in a transitional state.

B-tree (Index Miss)

MongoDB index miss count

An index miss is twice as inefficient as it causes two disk reads, one to read the index entry and another to read the document. The B-tree counter tracks the number of index misses. This is another place you’ll want to establish a baseline to spot any unusual patterns. Use the .explain() command to check the query plans for your common queries.

Another important aspect of memory management in MongoDB® is understanding your ‘Working set’. In our next post, we’ll examine how to determine your database’s working set.

For more information, please visit www.scalegrid.io. Connect with ScaleGrid on LinkedIn, X, Facebook, and YouTube.
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