In the MapReduce framework, one reducer is used for each key generated by the mapper.

So you would think that specifying the number of Reducers in Hadoop MapReduce wouldn't make any sense because it's dependent on the program. However, Hadoop allows you to specify the number of reducers to use (-D mapred.reduce.tasks=# of reducers).

What does this mean? Is the parameter value for number of reducers specifying how many machine resources go to the reducers instead of the number of actual reducers used?

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解决方案

one reducer is used for each key generated by the mapper

This comment is not correct. One call to the reduce() method is done for each key grouped by the grouping comparator. A reducer (task) is a process that handles zero or more calls to reduce(). The property to which you refer is talking about the number of reducer tasks.

其他提示

To simplify @Judge Mental's (very accurate) answer a little bit: A reducer task can work on many keys at a time, but the mapred.reduce.tasks=# parameter declares how many simultaneous reducer tasks will run for a specific job.

An example if your mapred.reduce.tasks=10:
You have 2,000 keys, each key with 50 values (for an evenly distributed 10,000 k:v pairs). Each reducer should be roughly handling 200 keys (1,000 k:v pairs).

An example if your mapred.reduce.tasks=20:
You have 2,000 keys, each key with 50 values (for an evenly distributed 10,000 k:v pairs). Each reducer should be roughly handling 100 keys (500 k:v pairs).

In the example above, the fewer keys each reducer has to work with, the faster the overall job will be ... so long as you have the available reducer resources in the cluster, of course.

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