I have a data set that is structured as follows:
[TIMESTAMP] FIXED POSITION DATA STRING [TIMESTAMP] FIXED POSITION DATA STRING [TIMESTAMP] tag1=9324, tag2=19, tag3=55, etc [TIMESTAMP] FIXED POSITION DATA STRING
These two types of records are intermixed, with the tag-based field containing summary data at a regular interval. These data files can be as large as 10 million rows for a single file. Additionally, some of the fixed position lines can be a couple kilobytes long - leading to a memory management problem when I process them.
I need to process the file from the beginning, grouping every entry when I hit a summary entry, and recording those summary entries along with aggregates of certain fields from the fixed position entries. Specifically, one specific part of the fixed position segment contains a 4-digit status code. I need to add that data to the summary record - # of occurrences of each summary code that appeared since the last summary record. Each summary entry, including fields for the aggregate data and timestamp, should be turned into a row in a CSV.
I am currently using ruby code / standard library only to do this. For smaller data sets it is fine, but for larger data sets, performance quickly deteriorates. This seems to me like a common ETL-type problem. I will be doing more complex types of operations on this data later, and seem to constantly be revisiting these log files to do more complex reporting on them.
Is there an existing ETL tool or library (pref. Ruby) that
- Does high performance mixed (regex / fixed position) extraction well.
- Is easy to learn.
- Abstracts away memory management.
- Is free / open source or low cost (under $200) commercial.
I am open to alternate recommendations on what to use to tackle this problem - I'm just looking for a better solution than raw standard-library ruby code.