7

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 recommendProductsForUsers in 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)
  • Are you positive that Spark fully utilizes 8g RAM? Maybe it hits the disk cache really often. – stholzm Aug 23 '16 at 18:23
1

@Jack Lei: Did you find the answer to this? I myself tried few things but only helped a little.

For eg: I tried

javaSparkContext.setCheckpointDir("checkpoint/");

This helps becuase it avoid repeated computation in between.

Also tried adding more memory per Executor and overhead spark memory

--conf spark.driver.maxResultSize=5g --conf spark.yarn.executor.memoryOverhead=4000

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.