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2

If You are very sure that the 2nd table has only one row then take the first column of 2nd table and hardcode the same value as last column in 1st table and then do the inner join and the you can easily multiply Let say first file as plain.txt (f1,1.5) (f2,2) here is the second file as multi.txt (mul,2) A = load ...


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You can use distcp to copy from one hdfs to another. distcp is used to copy large amounts of data to and from hadoop file systems in parallel. $ hadoop distcp hdfs://namenode1/foo hdfs://namenode2/bar


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You can do a CROSS and a FOREACH ... GENERATE. X = A CROSS B; Y = FOREACH X GENERATE A::feature, A::value * B::value; The above code has not been tested.


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Please see the Pig documentation about case sensitivity The names of Pig Latin functions are case sensitive.


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It's pretty simple - take a look at the grp_count relation: input= LOAD '/path/to/input/data' USING PigStorage('\t') AS (id:chararray,category:chararray); grp_count= FOREACH (GROUP input BY category) generate flatten(group) as category ,COUNT(input) as cnt; grp_ordered= order grp_count by $1 DESC; top_grp= LIMIT grp_ordered 5;


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It's straightforward if you change the way you present the data. At the moment, you have : {Tim, [Badminton, Basketball]} {Viola, [Badminton, Baseball]} Now, let consider you flat your map games and to have a two-columns dataset : {Tim, Badminton} {Tim, Basketball} {Viola, Badminton} {Viola, Baseball} You group on the second column and you will ...


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Pig lets you write your own load functions, which let you specify which InputFormat you'll be using. So you could write your own. That said, the job you described sounds like it would only involve a single map-reduce step. Since using Pig wouldn't reduce complexity in this case, and you'd have to write custom code just to use Pig, I'd suggest just doing it ...


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Try this : A = LOAD 'mydata1' AS (x: int, y: datetime); B = LOAD 'mydata2' AS (a: int, b: datetime); C = JOIN A BY x, B BY a; D = FILTER C BY ToUnixTime(y) >= ToUnixTime(b); DUMP D;


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The number of reducers you get is dependent on the number you choose or a basic formula is used (see below). You can set this by running SET default_parallel 20; for example to set it to 20. See http://pig.apache.org/docs/r0.8.1/piglatin_ref2.html#set pig.exec.reducers.max is simply an upper bound. If you do not explicitly set the number of reducers, the ...


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You can use CSVExcelStorage as the storage function which allows you to do precisely what you want: STORE output INTO '/outputfolder/' USING org.apache.pig.piggybank.storage.CSVExcelStorage('\t', 'NO_MULTILINE', 'UNIX', 'WRITE_OUTPUT_HEADER'); Using the "WRITE_OUTPUT_HEADER" option will write the header to every file which satisfies your use case.



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