I have some htmls that I have scraped off the web during different period of time from the same site. and the raw data looks like this
timestamp, htmlcontent(500KB)
..
I have written a parser to parse out a few interesting fields from the HTML and I trying to build a search engine based on the fields that I parsed out. NOT JUST BASED ON THE RAW TEXT OF THE HTML BUT THE RAW COMPLETE HTML CONTENT>
now my data looks like:
timestamp, htmlcontent, parsedfield1, parsedfield2
I want the user search for timestamp, parsedfield1 or parsedfield2 and my search engine returns the raw HTML matching the user's query and populating the browser... so it feels like a search engine time machine :)
In this case, I am wondering how should I design the index? which fields should I store and which not. I am following the book "Lucene in Action" and wondering can anyone help me how to approach this problem..
Based on my understanding of Index, there are a few attributes in the schema.xml... index or not? store or not?.... I assume, "Whatever you want to include in the query result, it should be stored. " .. In that case, I have to store the column which contains the raw HTML...
Since that column is so big one record is usually about hundreds of KB... with only hundreds of rows.. you can easily get a dataset of almost 1GB... which won't work in solr and I am trying to index those columns using Lucene and it run into the heapsize problem..
Here is another idea: Maybe I should store the parsedfield1, parsedfield2 and pointer... where point column is the absolute path of the raw HTML file. Of course, in this case, I need to store each html into a separate file locally/or on HDFS... So when user search for parsedfield1, it will return the absolute path and I go and retrieve those files...
I think I am describing the problem as clearly as I can and wondering can anyone spend a minute giving me some directional guidance...
Much appreciated!