I'm using MLlib's matrix factorization to recommend items to users. I have about a big implicit interaction matrix of M=20 million users and N=50k items. After training the model I want to get a short list(e.g. 200) of recommendations for each user. I tried
MatrixFactorizationModel but it's very very slow (ran 9 hours but still far from finish. I'm testing with 50 executors, each with 8g memory). This might be expected since
recommendProductsForUsers need to calculate all
M*N user-item interactions and get top for each user.
I'll try use more executors but from what I saw from the application detail on Spark UI, I doubt that it can finish in hours or a day even I have 1000 executors (after 9hours it's still in the
flatmap here https://github.com/apache/spark/blob/master/mllib/src/main/scala/org/apache/spark/mllib/recommendation/MatrixFactorizationModel.scala#L279-L289, 10000 total tasks and only ~200 finished)
Are there any other things that I can tune to speed up the recommendation process beside increasing # of executors?
Here is sample code:
val data = input.map(r => Rating(r.getString(0).toInt, r.getString(1).toInt, r.getLong(2))).cache val rank = 20 val alpha = 40 val maxIter = 10 val lambda = 0.05 val checkpointIterval = 5 val als = new ALS() .setImplicitPrefs(true) .setCheckpointInterval(checkpointIterval) .setRank(rank) .setAlpha(alpha) .setIterations(maxIter) .setLambda(lambda) val model = als.run(ratings) val recommendations = model.recommendProductsForUsers(200) recommendations.saveAsTextFile(outdir)