We have pretty large files, the order of 1-1.5 GB combined (mostly log files) with raw data that is easily parseable to a csv, which is subsequently supposed to be graphed to generate a set of graph images.
Currently, we are using bash scripts to turn the raw data into a csv file, with just the numbers that need to be graphed, and then feeding it into a gnuplot script. But this process is extremely slow. I tried to speed up the bash scripts by replacing some piped
trs etc. with a single
awk command, although this improved the speed, the whole thing is still very slow.
So, I am starting to believe there are better tools for this process. I am currently looking to rewrite this process in python+numpy or R. A friend of mine suggested using the JVM, and if I am to do that, I will use clojure, but am not sure how the JVM will perform.
I don't have much experience in dealing with these kind of problems, so any advice on how to proceed would be great. Thanks.
Edit: Also, I will want to store (to disk) the generated intermediate data, i.e., the csv, so I don't have to re-generate it, should I choose I want a different looking graph.
Edit 2: The raw data files have one record per one line, whose fields are separated by a delimiter (
|). Not all fields are numbers. Each field I need in the output csv is obtained by applying a certain formula on the input records, which may use multiple fields from the input data. The output csv will have 3-4 fields per line, and I need graphs that plot 1-2, 1-3, 1-4 fields in a (may be) bar chart. I hope that gives a better picture.
Edit 3: I have modified @adirau's script a little and it seems to be working pretty well. I have come far enough that I am reading data, sending to a pool of processor threads (pseudo processing, append thread name to data), and aggregating it into an output file, through another collector thread.
PS: I am not sure about the tagging of this question, feel free to correct it.