# finding mean using pig or hadoop

I have a huge text file of form

data is saved in directory data/data1.txt, data2.txt and so on

``````merchant_id, user_id, amount
1234, 9123, 299.2
1233, 9199, 203.2
1234, 0124, 230
and so on..
``````

What I want to do is for each merchant, find the average amount..

so basically in the end i want to save the output in file. something like

`````` merchant_id, average_amount
1234, avg_amt_1234 a
and so on.
``````

How do I calculate the standard deviation as well?

Sorry for asking such a basic question. :( Any help would be appreciated. :)

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A good answer to this question would have to cover the basics of hadoop as well as the algorithms necessary to calculate the various metrics. I would re-edit this question, or perhaps ask another and state up front what you do know about how to solve this with hadoop or pig and be more specific about the one thing that's holding you up. –  Chris Gerken Sep 26 '12 at 2:26

``````inpt = load '~/pig_data/pig_fun/input/group.txt' as (amnt:double, id:chararray,c2:chararray);
grp = group inpt by id;
mean = foreach grp {
sum = SUM(inpt.amnt);
count = COUNT(inpt);
generate group as id, sum/count as mean, sum as sum, count as count;
};
``````

Pay special attention to the data type of the amnt column as it will influence which implementation of the SUM function PIG is going to invoke.

PIG can also do something that SQL can not, it can put the mean against each input row without using any inner joins. That is useful if you are calculating z-scores using standard deviation.

`````` mean = foreach grp {
sum = SUM(inpt.amnt);
count = COUNT(inpt);
generate FLATTEN(inpt), sum/count as mean, sum as sum, count as count;
};
``````

FLATTEN(inpt) does the trick, now you have access to the original amount that had contributed to the groups average, sum and count.

UPDATE 1:

``````inpt = load '~/pig_data/pig_fun/input/group.txt' as (amnt:double, id:chararray, c2:chararray);
grp = group inpt by id;
mean = foreach grp {
sum = SUM(inpt.amnt);
count = COUNT(inpt);
generate flatten(inpt), sum/count as avg, count as count;
};
tmp = foreach mean {
dif = (amnt - avg) * (amnt - avg) ;
generate *, dif as dif;
};
grp = group tmp by id;
standard_tmp = foreach grp generate flatten(tmp), SUM(tmp.dif) as sqr_sum;
standard = foreach standard_tmp generate *, sqr_sum / count as variance, SQRT(sqr_sum / count) as standard;
``````

It will use 2 jobs. I have not figured out how to do it in one, hmm, need to spend more time on it.

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how do i calculate standard deviation?? –  Fraz Sep 27 '12 at 18:23
see UPDATE 1 .... –  alexeipab Sep 27 '12 at 21:39
are there any chances of sum value overflowing ? I am trying to implement something like this but I am concerned about the overflow. –  siddardha Oct 20 '14 at 10:56
Double is 64-bit and as any data type it can overflow. COUNT returns long, so it could potentially overflow. But would it happen with your data? Only if it is some sort of complex scientific calculation. –  alexeipab Oct 20 '14 at 19:28

So what do you want? You want the running java code or the abstract map-reduce process? For the second:

The map step:

``````record -> (merchant_id as key, amount as value)
``````

The reduce step:

``````(merchant_id, amount) -> (merchant_id, aggregate the value you want)
``````

As in the reduce step, you will be provided with a stream of record having the same key and you can do almost everything you can including the average, variance.

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you can calculate the standard deviation just in one step; using the formula

``````var=E(x^2)-(Ex)^2
inpt = load '~/pig_data/pig_fun/input/group.txt' as (amnt:double,  id:chararray, c2:chararray);
grp = group inpt by id;
mean = foreach grp {
sum = SUM(inpt.amnt);
sum2 = SUM(inpt.amnt**2);
count = COUNT(inpt);
generate flatten(inpt), sum/count as avg, count as count, sum2/count-    (sum/count)**2 as std;
};
``````

that's it!

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Please, consider improving the format fo your answer along with some description. –  il_raffa 2 days ago