[ Skip to the content ]

Institute of Formal and Applied Linguistics Wiki


[ Back to the navigation ]

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Next revision Both sides next revision
courses:mapreduce-tutorial:step-5 [2012/01/28 12:52]
majlis Added links to previous and next chapter.
courses:mapreduce-tutorial:step-5 [2012/01/29 20:21]
straka
Line 3: Line 3:
 The interesting part of a Hadoop job is the //reducer// -- after all mappers produce the (key, value) pairs, for every unique key and all its values a ''reduce'' function is called. The ''reduce'' function can output (key, value) pairs, which are written to disk. The interesting part of a Hadoop job is the //reducer// -- after all mappers produce the (key, value) pairs, for every unique key and all its values a ''reduce'' function is called. The ''reduce'' function can output (key, value) pairs, which are written to disk.
  
-The ''reduce'' is similar to ''map'', but instead of one value it gets an iterator, which enumerates all values associated with the key:+The ''reduce'' is similar to ''map'', but instead of one value it gets an iterator (instance of Hadoop::Runner::ValueIterator), which enumerates all values associated with the key:
  
 <file perl> <file perl>

[ Back to the navigation ] [ Back to the content ]