I have a 'big data' text search problem, and I had looked for general advice on a Stackexchange site here - http://programmers.stackexchange.com/questions/203855/text-search-big-data-problem
There is a specific question in mind here for this SO post, namely around integration of ElasticSearch with Hadoop (but I thought I'd provide some background).
Basically I have a large amount of text, split into distinct 'rows', each row represents an item. I have another, smaller list, which contains search terms that are in this text. I want to cross-reference the two and do an inverse index look up, and return the indexes that I find.
Note: I know that 20GB isn't massive data, but a secondary objective of this exercise is to engage with Big Data techs to lay a foundation for us to use with our true big data (> TB) projects!
I've continued to investigate the Lucene search route, but as far as I can see this would lead to the following approach:
- Use MapReduce to remove stop words and format the text etc
- Generate Lucene Index (possibly using MapReduce - this is an optimization)
- Develop a C# app to interface with Lucene (or SolR) and do the search.
But to me this would still be serial, i.e. I'd be depending on the scalability of the search servers to be really quick, but I'd still have to start at the top of my list and work my way through it, one after another.
I could split the original list into chunks, and run my C# app on a different server, that would be an approach.
The specific question
But I was wondering if I could use Hadoop Map Reduce to engage directly with ElasticSearch (my preferred route to Lucene) ? I have searched (!) but can't find anything, except using Wonderdog with Pig. Fine - but I can't see an example with a Pig UDF and ElasticSearch.
Any pointers appreciated, code examples very welcome!