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Distributed optimization with arbitrary local solvers

机译:随着任意本地求解器的分布式优化

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摘要

With the growth of data and necessity for distributed optimization methods, solvers that work well on a single machine must be re-designed to leverage distributed computation. Recent work in this area has been limited by focusing heavily on developing highly specific methods for the distributed environment. These special-purpose methods are often unable to fully leverage the competitive performance of their well-tuned and customized single machine counterparts. Further, they are unable to easily integrate improvements that continue to be made to single machine methods. To this end, we present a framework for distributed optimization that both allows the flexibility of arbitrary solvers to be used on each (single) machine locally and yet maintains competitive performance against other state-of-the-art special-purpose distributed methods. We give strong primal-dual convergence rate guarantees for our framework that hold for arbitrary local solvers. We demonstrate the impact of local solver selection both theoretically and in an extensive experimental comparison. Finally, we provide thorough implementation details for our framework, highlighting areas for practical performance gains.
机译:随着数据的增长和分布式优化方法的必要性,必须重新设计在单个机器上运行良好的求解器以利用分布式计算。这一领域的最新工作受到了影响在为分布式环境的高度具体方法侧重于开发高度具体的方法。这些专用方法往往无法充分利用其良好调整和定制的单机对应物的竞争性能。此外,它们无法轻松集成继续进行的改进,以继续进行单机方法。为此,我们提出了一个分布式优化的框架,两者都允许在本地(单)机器上使用任意求解器的灵活性,但对其他最先进的专用分布式方法保持竞争性能。我们为我们的框架提供了强大的原始 - 双重收敛速度,以便为任意本地求解器提供框架。我们在理论上和广泛的实验比较中展示了本地求解器选择的影响。最后,我们为我们的框架提供了彻底的实施细节,突出显示了实际业绩收益的领域。

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