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I've been looking at Spark implementations of Factorization Machines. I found that none of the existing open source implementations scale to a dataset with millions of features and hundreds of millions of examples. I'd be curious how this implementation is able to scale.
The text was updated successfully, but these errors were encountered:
@geffy@benmccann These days I was learning tensorflow, and developed a distributed factorization machine version. I customized some operators such that it has comparable performance with difacto. Welcome to take a look and give some suggestion :) Thanks.
I've been looking at Spark implementations of Factorization Machines. I found that none of the existing open source implementations scale to a dataset with millions of features and hundreds of millions of examples. I'd be curious how this implementation is able to scale.
The text was updated successfully, but these errors were encountered: