I'm new in hadoop development. I read about hadoop cluster structure and understood that there are one namenode, jobtracker, tasktracker and multiple datanodes. When we write map-reduce programs we implement mapper and reducer. I also understood logic of these clasess. But I don't understand how are they executed in the hadoop cluster. Is mapper executed in the namenode only? Is reducer executed seperatly on the datanodes? I need to make a lot of parralel computations and don't want to use HDFS, how can I be sure that each output collection (from mapper) executes seperatly in all datanodes? Please explain me the connection between hadoop cluster and map/reduce logic. Thanks a lot!
Map Reduce Jobs are executed by Job Tracker and Task Trackers.
Job Tracker initiates the Job the dividing the input file/files into splits. Tasktrackers are given these splits who run map tasks on the splits( One map task per split). After Mappers throws their output.This output will be passed on the reducer depending on the map output keys . Similar keys are sent to one reducer. Reducer can be more than 1 , depending upon your configuration. Reducer process also runs on one the tasktracker nodes only .
You can see stats of the Job on , jobtracker UI which by default runs on 50030 port.
You can also, visit my website for example topics on Bigdata technologies. Also, you can post your questions , I will try to answer.
protected by Community♦ Feb 26 '14 at 2:41
Thank you for your interest in this question.
Because it has attracted low-quality answers, posting an answer now requires 10 reputation on this site.
Would you like to answer one of these unanswered questions instead?