I have been trying to understand the basics of MapReduce in MongoDB and even after implementing it, I'm not sure how exactly it is different from SQL's GROUP BY or even Mongo's own GROUP BY. In SQL server, a GROUP BY can be done by stream or hash aggregate. Isn't MapReduce similar to hash aggregate, just over a large number of servers?
I have been reading at places that MR for MongoDB is to be run as a background process since it is a "heavy operation". Given that the data is sharded, wouldn't a GROUP BY be equally "heavy"? That said, I'm only trying to compare those type of operations that are possible to be implemented both as an MR job or using GROUP BY query.
Is there something that GROUP BY can't do and only MR can do?
Also, Hadoop seems to be very good at MR (This is only what I have read..I have never worked on Hadoop). How's Hadoop's MR different from that of Mongo?
I'm confused. Kindly help or guide me to a good tutorial that explains the need of MapReduce.