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I wonder if it's possible to pivot a table in one pass in Apache Pig.

Input:

Id    Column1 Column2 Column3
1      Row11    Row12   Row13
2      Row21    Row22   Row23

Output:

Id    Name     Value
1     Column1  Row11
1     Column2  Row12
1     Column3  Row13
2     Column1  Row21
2     Column2  Row22
2     Column3  Row23

The real data has dozens of columns.

I can do that with awk in one pass then run it with Hadoop Streaming. But majority of my code is is Apache Pig so I wonder if it's possible to do it in Pig efficiently.

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2 Answers 2

up vote 4 down vote accepted

You can do it in 2 ways: 1. Write a UDF which returns a bag of tuples. It will be the most flexible solution, but requires Java code; 2. Write a rigid script like this:

inpt = load '/pig_fun/input/pivot.txt' as (Id, Column1, Column2, Column3);
bagged = foreach inpt generate Id, TOBAG(TOTUPLE('Column1', Column1), TOTUPLE('Column2', Column2), TOTUPLE('Column3', Column3)) as toPivot;
pivoted_1 = foreach bagged generate Id, FLATTEN(toPivot) as t_value;
pivoted = foreach pivoted_1 generate Id, FLATTEN(t_value);
dump pivoted;

Running this script got me following results:

(1,Column1,11)
(1,Column2,12)
(1,Column3,13)
(2,Column1,21)
(2,Column2,22)
(2,Column3,23)
(3,Column1,31)
(3,Column2,32)
(3,Column3,33)
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I removed col3 from id 1 to show how to handle optional (NULL) data

Id Name Value 1 Column1 Row11 1 Column2 Row12 2 Column1 Row21 2 Column2 Row22 2 Column3 Row23

--pigscript.pig

data1       = load 'data.txt' using PigStorage() as (id:int, key:chararray, value:chararray);
grped       = group data1 by id;
pvt         = foreach grped {
    col1        = filter data1 by key =='Column1';
    col2        =filter data1  by key =='Column2';
    col3        =filter data1  by key =='Column3';
    generate flatten(group) as id,
        flatten(col1.value) as col1, 
        flatten(col2.value) as col2, 
        flatten((IsEmpty(col3.value) ? {('NULL')} : col3.value)) as col3; --HANDLE NULL
};
dump pvt;

Results:

(1,Row11,Row12,NULL)

(2,Row21,Row22,Row23)

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