Randomized Polar Codes for Anytime Distributed Machine Learning

Burak Bartan;Mert Pilanci
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Abstract

We present a novel distributed computing framework that is robust to slow compute nodes, and is capable of both approximate and exact computation of linear operations. The proposed mechanism integrates the concepts of randomized sketching and polar codes in the context of coded computation. We propose a sequential decoding algorithm designed to handle real valued data while maintaining low computational complexity for recovery. Additionally, we provide an anytime estimator that can generate provably accurate estimates even when the set of available node outputs is not decodable. We demonstrate the potential applications of this framework in various contexts, such as large-scale matrix multiplication and black-box optimization. We present the implementation of these methods on a serverless cloud computing system and provide numerical results to demonstrate their scalability in practice, including ImageNet scale computations.
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随时分布式机器学习的随机极性码
我们提出了一种新的分布式计算框架,该框架对慢速计算节点具有鲁棒性,并且能够对线性运算进行近似和精确计算。所提出的机制在编码计算的背景下集成了随机绘制和极性代码的概念。我们提出了一种顺序解码算法,旨在处理实值数据,同时保持较低的恢复计算复杂度。此外,我们提供了一种随时估计器,即使在可用节点输出集不可解码的情况下,该估计器也可以生成可证明的精确估计。我们展示了该框架在各种环境中的潜在应用,如大规模矩阵乘法和黑盒优化。我们介绍了这些方法在无服务器云计算系统上的实现,并提供了数值结果来证明它们在实践中的可扩展性,包括ImageNet规模的计算。
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