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arxiv: 1605.09721 · v1 · pith:K7JNOIPEnew · submitted 2016-05-31 · 📊 stat.ML · cs.DC· cs.DS· cs.LG· math.OC

CYCLADES: Conflict-free Asynchronous Machine Learning

classification 📊 stat.ML cs.DCcs.DScs.LGmath.OC
keywords algorithmscycladeshogwildasynchronousconflict-freeduringgainsimplementation
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We present CYCLADES, a general framework for parallelizing stochastic optimization algorithms in a shared memory setting. CYCLADES is asynchronous during shared model updates, and requires no memory locking mechanisms, similar to HOGWILD!-type algorithms. Unlike HOGWILD!, CYCLADES introduces no conflicts during the parallel execution, and offers a black-box analysis for provable speedups across a large family of algorithms. Due to its inherent conflict-free nature and cache locality, our multi-core implementation of CYCLADES consistently outperforms HOGWILD!-type algorithms on sufficiently sparse datasets, leading to up to 40% speedup gains compared to the HOGWILD! implementation of SGD, and up to 5x gains over asynchronous implementations of variance reduction algorithms.

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