Distributed Double Machine Learning with a Serverless Architecture

Malte S. Kurz
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引用次数: 12

Abstract

This paper explores serverless cloud computing for double machine learning. Being based on repeated cross-fitting, double machine learning is particularly well suited to exploit the high level of parallelism achievable with serverless computing. It allows to get fast on-demand estimations without additional cloud maintenance effort. We provide a prototype Python implementation DoubleML-Serverless for the estimation of double machine learning models with the serverless computing platform AWS Lambda and demonstrate its utility with a case study analyzing estimation times and costs.
分布式双机器学习与无服务器架构
本文探讨了双机器学习的无服务器云计算。基于重复交叉拟合,双机器学习特别适合利用无服务器计算可以实现的高水平并行性。它允许获得快速的按需评估,而无需额外的云维护工作。我们提供了一个原型Python实现DoubleML-Serverless,用于在无服务器计算平台AWS Lambda上估计双机器学习模型,并通过分析估计时间和成本的案例研究来演示其实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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