I am about to start a research project that will require a lot of data conversion and processing operations. On one hand, the data is rather massive - 10GB is typical for a raw dataset - so efficiency is an issue. On the other hand, many of these operations will be one-off, and rarely re-run, so building a deploy-able application is an overkill. It is not a user application, but mostly an experiment.
Some characteristics and constraints:
- A lot of chained format conversions - JSON and XML to tabular format, then some patching, then text indexing, then exporting to some other format, etc.
- I have a multi-core machine, but not several machines, at least to begin with.
- Data does not fit as a whole in main memory, and from my experience, exploiting several cores is called for.
What are some recommended tools for handling such a project? My preferences are:
- Easy-as-possible handling of multiple formats (JSON, XML, CSV)
- Supporting multiple sources and sinks (text files, archives, databases)
- Makes use of multiple cores
- Little as possible administration, deployment issues, etc.
Programming language is not an issue, and I can manage Windows or Linux. Thanks!