In the following example:
small.ints = to.dfs(1:1000) mapreduce( input = small.ints, map = function(k, v) cbind(v, v^2))
The data input for mapreduce function is an object named small.ints which refered to blocks in HDFS.
Now I have a CSV file already stored in HDFS as
How to get an object for it?
And as far as I know(which may be wrong), if I want data from CSV file as input for mapreduce, I have to first generate a table in R which contains all values in the CSV file. I do have method like:
It seems OK to use this method to get mydata, and then do object=to.dfs(mydata), but the problem is the test_short.csv file is huge, which is around TB size, and memory can't hold output of from.dfs!!
Actually, I'm wondering if I use "hdfs://172.16.1.58:8020/tmp/test_short.csv" as mapreduce input directly, and inside map function do the from.dfs() thing, am I able to get data blocks?
Please give me some advice, whatever!