I am trying to learn about "Big Data" and figured the only way to start is to dive right in. Worth noting is that I am going to use a single machine that I have at home. For context, I have about 700 text files that total about 300gb's of data. Each file contains JSON responses captured from Twitter's firehouse over the last month.
I love R and ultimately what to use it to study my dataset, but I know that I need a way to "store" the data. I hear a lot about Hadoop and HDFS, but can't get my head wrapped around it. Would I simply "copy" the text files to HDFS on my local machine and use the
RHadoopto write Map/Reduce statements to create datasets?
Lastly, I have MongoDB up and running and was considering storing the data there but I am not sure that the I would capture analytical performance gains, although I know that there is an adaptor for Haddop.
My question: Having successfully captured the data, what is the best way to store this such that I can use R (and other tools) to analyze the data.