I am not sure if I understood your question, but what you want to do is to get the maximum and minimum for each of the attributes of that dataset, to then divide them, all in the same job, right? Ok, in order to divide the attributes, you need to feed the reducer with the max and min values instead of relying on the reducer to do the work for you. And I am guessing this is where your trouble starts.
However there is one thing you could do, a MapReduce design pattern called in-mapper combiner. When each mapper has finished its job, it calls a method called
cleanup. You can implement the cleanup method so that it gets the max and min values of each of the attributes for each of the map nodes. This way, you give the reducer (only one reducer) only a collection with X values, being X the number of mappers in your cluster.
Then, the reducer gets the max and min values for each of the attributes, since it will be a very short collection so there won't be any problems. Finally, you divide each of the attributes into the 'n' buckets.
There is plenty of information about this pattern on the web, an example could be this tutorial. Hope it helps.
EDIT: you need to create an instance variable in the mapper where you will store each of the values in the
map method, so that they will be available in the
cleanup method, since it's only called once. A
HashMap for example will do. You need to remember that you cannot save the values in the
context variable in the
map method, you need to do this in the
cleanup method, after iterating through the
HashMap and finding out the max and min value for each column. Then, as for the key, I don't think it really matters in this case, so yes, you could use the csv header, and as for the value you are correct, you need to store the whole column.
Once the reducer receives the output from the mappers, you can't calculate the buckets just yet. Bear in mind that you will receive one "column" for each mapper, so if you have 20 mappers, you will receive 20 max values and 20 min values for each attribute. Therefore you need to calculate the max and min again, just like you did in the
cleanup method of the mappers, and once this is done, then you can finally calculate the buckets.
You may be wondering "if I still need to find the max and min values in the reducer, then I could omit the
cleanup method and do everything in the reducer, after all the code would be more or less the same". However, to do what you are asking, you can only work with one reducer, so if you omit the
cleanup method and leave all the work to the reducer, the throughput would be the same as if working in one machine without Hadoop.