TensorFlow Data Validation: Data Analysis and Validation in Continuous ML Pipelines

Emily Caveness, C. PaulSuganthanG., Zhuo Peng, N. Polyzotis, Sudip Roy, Martin A. Zinkevich
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引用次数: 23

Abstract

Machine Learning (ML) research has primarily focused on improving the accuracy and efficiency of the training algorithms while paying much less attention to the equally important problem of understanding, validating, and monitoring the data fed to ML. Irrespective of the ML algorithms used, data errors can adversely affect the quality of the generated model. This indicates that we need to adopt a data-centric approach to ML that treats data as a first-class citizen, on par with algorithms and infrastructure which are the typical building blocks of ML pipelines. In this demonstration we showcase TensorFlow Data Validation (TFDV), a scalable data analysis and validation system for ML that we have developed at Google and recently open-sourced. This system is deployed in production as an integral part of TFX - an end-to-end machine learning platform at Google. It is used by hundreds of product teams at Google and has received significant attention from the open-source community as well.
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TensorFlow数据验证:连续ML管道中的数据分析和验证
机器学习(ML)研究主要集中在提高训练算法的准确性和效率上,而很少关注同样重要的问题,即理解、验证和监控提供给ML的数据。无论使用哪种ML算法,数据错误都会对生成模型的质量产生不利影响。这表明我们需要采用以数据为中心的ML方法,将数据视为一等公民,与算法和基础设施(ML管道的典型构建块)同等对待。在这个演示中,我们展示了TensorFlow数据验证(TFDV),这是我们在b谷歌开发的一个可扩展的ML数据分析和验证系统,最近已经开源。该系统作为TFX (b谷歌的端到端机器学习平台)的一个组成部分部署在生产环境中。它被b谷歌的数百个产品团队使用,并且也受到了开源社区的极大关注。
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