I have the following job to be done using map/reduce. I have come up with a solution. However I believe that this could be optimized and done in a better way. Any alternate solution or comments would appreciated.
The problem statement: I have 1 million web pages stored in the form of XML. Each page starts with a < page > tag and has a title, a pageid < pageid > and text tags in it describing its content. One such < page > can have multiple other pagelinks (having all the above mentioned tags). I need to create a map/reduce task to output the the source and target pageid for each pagelinks found in a source page respectively (source_id,target_id).
NOTE: The pagelinks are stored in the form of [[title|"displaystring"]]
Create two mappers as we do not need a reducer here.
< Use the first mapper to form a look-up map file >
Mapper1(XML doc) for all pages in XML doc emit(title,pageid)
< Set the reducers to NONE and store the intermediate output in HDFS using jobConfig object. Name the file containing title,pageid as temp >
Mapper2(temp t, XML doc) Map M <-- load file temp for all pages in XML doc for all pagelinks in pages get title from pagelinks emit(pageid, M[title])
The problem I believe with this solution is that loading the "temp" file in every mapper will be an overkill. Is there any other efficient way to solve this problem?