CYCLADES: Conflict-free Asynchronous Machine Learning
Pan, Xinghao, Lam, Maximilian, Tu, Stephen, Papailiopoulos, Dimitris, Zhang, Ce, Jordan, Michael I., Ramchandran, Kannan, Re, Chris, Recht, Benjamin
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.
May-31-2016