I am trying to optimize the performance of a search engine by preprocessing all the results. We have around 50k search terms. I am planning to search these 50k terms before hand and save it in memory (memcached/redis). Searching for all 50k terms takes more than a day in my case since we do deep semantic search. So I am planning to distribute the searching (preprocessing) over several nodes. I was considering to use hadoop. My input size is very less. Probably less than 1MB even though total search term is over 50k. But searching each term takes over a min i.e more computation oriented than data oriented. So I am wondering if I should use Hadoop or build my own distributed system. I remember reading that hadoop is used mainly if input is very huge. Please suggest me on how to go about this.
And I read hadoop reads data in block size. i.e 64mb for each jvm/mapper. Is it possible to make it number of lines instead of block size. Example: Every mapper gets 1000 lines instead of 64mb. Is it possible to achieve this.