I am working with RHadoop rhdfs package to perform dimension reduction on a CSV input file with large number of columns. The output would be a selected subset of all columns. To make it simple, I am trying to take just the first 5 columns of the CSV file.
I am trying to apply mapreduce function to perform the dimension reduction using MR framework and using the HDFS storage instead of any in-memory processing.
My code is as follows:
transfer.csvfile.hdfs.to.hdfs.reduced =
function(hdfsFilePath, hdfsWritePath, reducedCols=1) {
local.matrix = as.numeric()
hdfs.get(hdfsFilePath, local.Matrix, srcFS=hdfs.defaults("fs"))
transfer.reduced.map =
function(.,M) {
label <- M[,1]
reduced.predictors <- M[,1:reducedCols]
reduced.M <- cbind(reduced.predictors, label)
keyval(
1,
as.numeric(reduced.M[,-1]))
}
reduced.values =
values(
from.dfs(
mapreduce(
local.matrix,
map = function(.,M) {
label <- M[,1]
reduced.predictors <- M[,1:reducedCols]
reduced.M <- cbind(reduced.predictors, label)
keyval(
1,
as.numeric(reduced.M[,-1]))}
)))
to.dfs(reduced.values)
}
It takes a train data set with predictor columns and label column as the last one. What I am trying is to reduce the number of predictors from 100 to 5 and cbind
the class label column to the reduced predictors and finally store the reduced training data set into hdfs.
Right now I am storing the hdfs file in a local matrix by the name local.matrix
which will need me to store the entire file in-memory. Is there a way I can by-pass the in-memory local.matrix
by using
to.dfs(local.matrix)
and then passing the HDFS storage location for local.matrix as hdfsWritePath
into transfer.csvfile.hdfs.to.hdfs.reduced function
?