I've found this discussion: MongoDB: Terrible MapReduce Performance. Basically it says try to avoid Mongo's MR queries as it single-threaded and not supposed to be for real-time at all. 2 years has passed, and I wonder what has been changed since the time. Now we have MongoDb 2.2. I heard MRs are now multi-threaded. Please share your ideas over MR usage for real-time requests like fetching data for web application frequent http requests. Is it able to effectively use indexes?
Here is the current state of functionality for Map/Reduce in MongoDB
There have been some incremental improvements to Map/Reduce for sharded clusters. Most notably, the final Reduce operation is now distributed across multiple shards, and the output is also sharded in parallel.
I would not recommend Map/Reduce for real-time aggregation in MongoDB version 2.2
2) Starting with MongoDB 2.2, there is now a new Aggregation Framework. This is a new implementation of aggregation operations, written in C++, and tightly integrated into the MongoDB framework.
Most Map/Reduce jobs can be rewritten to use the Aggregation Framework. They usually run faster (20x speed improvement vs. Map/Reduce is common in version 2.2), they make full use of the existing query engine, and you can run multiple Aggregation commands in parallel.
If you have real-time aggregation requirements, the first place to start is with the Aggregation Framework. For more information about the aggregation framework, take a look at these links:
The Map/Reduce engine is still considerably slower than the aggregation framework, for two main reasons:
There are no significant changes in Map/Reduce between 2.4 and 2.6.
I still do not recommend using the Map/Reduce for real-time aggregation in MongoDB version 2.4 or 2.6.
4) If you really need Map/Reduce, you can also look at the Hadoop Adaptor. There's more information here: