I have a s3 bucket containing about 300gb of log files in no particular order.
I want to partition this data for use in hadoop-hive using a date-time stamp so that log-lines related to a particular day are clumped together in the same s3 'folder'. For example log entries for January 1st would be in files matching the following naming:
s3://bucket1/partitions/created_date=2010-01-01/file1 s3://bucket1/partitions/created_date=2010-01-01/file2 s3://bucket1/partitions/created_date=2010-01-01/file3
What would be the best way for me to transform the data? Am I best just running a single script that reads in each file at a time and outputs data to the right s3 location?
I'm sure there's a good way to do this using hadoop, could someone tell me what that is?
What I've tried:
I tried using hadoop-streaming by passing in a mapper that collected all log entries for each date then wrote those directly to S3, returning nothing for the reducer, but that seemed to create duplicates. (using the above example, I ended up with 2.5 million entries for Jan 1st instead of 1.4million)
Does anyone have any ideas how best to approach this?