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I'm reading up on MongoDB, and trying to get a sense of where it's best used. One question that I don't see a clear answer to is which operations are cheap or expensive, and under what conditions.

Can you help clarify?

Thanks.

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3 Answers

up vote 3 down vote accepted

It is often claimed that mongodb has insanely fast writes. While they are not slow indeed, this is quite an overstatement. Write throughput in mongodb is limited by global write lock. Yes, you heard me right, there can be only ONE write operation happening on the server at any given moment.

Also I suggest you take advantage of schemaless nature of mongodb and store your data denormalized. Often it is possible to do just one disk seek to fetch all required data (because it is all in the same document). Less disk seeks - faster queries.

If data sits in RAM - no disk seeks are required at all, data is served right from memory. So, make sure you have enough RAM.

Map/Reduce, group, $where queries are slow.

It is not fast to keep writing to one big document (using $push, for example). The document will outgrow its disk boundaries and will have to be copied to another place, which involves more disk operations.

And I agree with @AurelienB, some basic principles are universal across all databases.

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What I hear you saying is "mongodb has very fast individual writes, but the lock system limits you to one at a time." Does that apply even with sharding? –  Abe Dec 19 '11 at 16:00
    
No, sharding mitigates this issue. Each shard gets its own lock. –  Sergio Tulentsev Dec 19 '11 at 16:04
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From my practice one thing that should mentioned is that mongodb not very good fit for reporting, because usual in reports you need data from different collections ('join') and mongodb does not provide good way to aggregate data multiple collections (and not supposed to provide). For sure for some reports map/reduce or incremental map/reduce can work well, but it rare situations.

For reports some people suggest to migrate data into relations databases, that's have a lot of tools for reporting.

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This is not very different than all database systems.

Query on indexed data are fast. Query on a lot of data are... slow. Due to denormalization, if there is no index, writing on the base will be fast, that's why logging is the basic use case.

At the opposite, reading data which are on disk (not in RAM) without index can be very slow when you have billion of document.

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