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Can I set up a replica set in MongoDB 1.8 using servers with different amounts of RAM?

  • server1: 5gb
  • server2: 2gb
  • server3: 4gb

If yes, what are the pros and cons?

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2 Answers 2

up vote 4 down vote accepted

No, you do not need equal RAM. (Yes, you could set up a replica set as described.)

MongoDB uses memory-mapped files for all caching, which means that cache paging is handled by the operating system. The replicas with more memory will keep more of the database in memory; those with less will page more to disk.

MongoDB will eventually bring the entire database into memory if it can. If you're using two replicas for reads and one for writes, you might want to use the 5gb and 4gb machines for reads, so they are more likely to be hitting RAM.

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I would be hesitant to put the 2GB server as the primary. It's bad for updates and inserts. Updating data that is not in memory is very expensive. Inserting data requires updating at least one index so less RAM means that modifying that index will generally be more expensive. –  Gates VP May 13 '11 at 22:51
    
@gates that's a good point. It depends a lot on your use case. I was assuming a read-heavy environment. –  Paul Rosania May 13 '11 at 23:45

Yes, you can configure a replica set this way.

If yes, what are the pros and cons?

Here's a doc explaining the major features of replica sets. Let's take a look at these in light of the RAM differences.

Pros:

  • More computers means better data redundancy. Having that 2GB node at least means that you have one more copy of the data.
  • Having a full 3 nodes on a replica set makes it easier to take one down for maintenance.

Cons:

  • Having servers of different sizes isn't great for automated failover. Let's say that your 5GB server is the primary. What happens when it goes down and the 2GB server wins the election? You still have automated fail-over, but your performance has probably dropped dramatically.
  • Read scaling may not work very well. Depending on your read patterns, sending reads to the 2GB server may result in lots of extra disk hits and slower performance.

So, the big problem here, is really one of performance. If you're just doing this for a dev setup, then it will basically work. But in production you run the risk of completely tanking your app. If your app is used to living on 4GB+ of RAM and then suddenly drops to 2GB, it may become unusable.

Most production setups want to fail over to another "equally-powered" computer.

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