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The Role of Network Topology for Distributed Machine Learning

机译:网络拓扑在分布式机器学习中的作用

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Many learning problems are formulated as minimization of some loss function on a training set of examples. Distributed gradient methods on a cluster are often used for this purpose. In this paper, we study how the variability of task execution times at cluster nodes affects the system throughput. In particular, a simple but accurate model allows us to quantity how the time to solve the minimization problem depends on the network of information exchanges among the nodes. Interestingly, we show that, even when communication overhead may be neglected, the clique is not necessarily the most effective topology, as commonly assumed in previous works.
机译:在一组训练示例中,许多学习问题被表述为最小化某些损失函数。为此,通常使用群集上的分布式梯度方法。在本文中,我们研究了群集节点上任务执行时间的可变性如何影响系统吞吐量。特别是,一个简单但准确的模型使我们能够量化解决最小化问题的时间如何取决于节点之间的信息交换网络。有趣的是,我们表明,即使可以忽略通信开销,该派系也不一定是最有效的拓扑结构,就像以前的工作通常假定的那样。

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