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I have 2 examples:

results = key={"ip": 1, "id" : 1 }, condition= {}, initial={},
reduce="function(obj,prev) {}" )
print len(results)


map = Code(
"function () {"
"emit({ id:, ip: this.ip}, {count: 1});"

reduce = Code("function (key, values) {""}")
result = coll.map_reduce(map, reduce, "map_reduce_example")
print result.count()

Why second example more slowly than first ? I want to use 2 example instead of 1 example because 1 example not work for more than 20000 uniq key.

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There is a third option (coming soon): MongoDB's new aggregation framework (…). – Leftium Jan 6 '12 at 22:08
up vote 1 down vote accepted

When you're running map/reduce, your map and reduce functions are executed in javascript runtime (which is slower than native C++ code). This also involves some locking (JS locks, read locks, write locks).

group, on the other hand, might be executed more efficiently (more native code, less locks, etc).

Note that in a sharded enviroment, map/reduce is your only option for now (in future versions you'll be able to use Aggregation Framework).

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MongoDB's new aggregation framework will probably solve your problems, but until then I suggest running map/reduce as a regularly scheduled background job and querying the collection resulting from map/reduce in real-time. This will get the grouped count results much faster, but the counts may be slightly stale (depending on the last time the background map reduce was done.)


MongoDB's map/reduce is much slower than group() for several reasons:

  • Intermediate conversions: BSON -> JSON -> BSON -> JSON -> BSON (MongoDB stores data in binary BSON, but JavaScript map() and reduce() need to be fed textual JSON)
  • Javascript functions map() and reduce() must be interpreted by the single-threaded JavaScript engine

MongoDB's native C aggregation functions are much faster, but one of their limitations is that all output must fit within a single BSON document (currently 16MB). That is why there is a limit on the number of unique keys.

MongoDB's aggregation framework will combine the best of both methods:

  • Native execution for speed
  • No BSON conversions to/from JSON
  • Results can be sent to a collection, bypassing the limitations set by a single document.

The framework is already documented and available in development versions of MongoDB. The framework is scheduled for production release in Feb. 2012.

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