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Peng Cheng commented on MAHOUT-1286: ------------------------------------ Well, I mean, I partially agree that the effort I spent on this probably won't pay off as few will use In-memory/file dataModel in production, most of them will choose a databased-backed one. I just try to solve it because its a blocker. > Memory-efficient DataModel, supporting fast online updates and element-wise > iteration > ------------------------------------------------------------------------------------- > > Key: MAHOUT-1286 > URL: https://issues.apache.org/jira/browse/MAHOUT-1286 > Project: Mahout > Issue Type: Improvement > Components: Collaborative Filtering > Affects Versions: 0.9 > Reporter: Peng Cheng > Assignee: Sean Owen > Labels: collaborative-filtering, datamodel, patch, recommender > Fix For: 0.9 > > Attachments: InMemoryDataModel.java, InMemoryDataModelTest.java > > Original Estimate: 336h > Remaining Estimate: 336h > > Most DataModel implementation in current CF component use hash map to enable > fast 2d indexing and update. This is not memory-efficient for big data set. > e.g. Netflix prize dataset takes 11G heap space as a FileDataModel. > Improved implementation of DataModel should use more compact data structure > (like arrays), this can trade a little of time complexity in 2d indexing for > vast improvement in memory efficiency. In addition, any online recommender or > online-to-batch converted recommender will not be affected by this in > training process. -- This message is automatically generated by JIRA. If you think it was sent incorrectly, please contact your JIRA administrators For more information on JIRA, see: http://www.atlassian.com/software/jira