Chameleon: A Semi-AutoML framework targeting quick and scalable development and deployment of production-ready ML systems for SMEs

J. Otterbach, Thomas Wollmann
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引用次数: 1

Abstract

Developing, scaling, and deploying modern Machine Learning solutions remains challenging for small- and middle-sized enterprises (SMEs). This is due to a high entry barrier of building and maintaining a dedicated IT team as well as the difficulties of real-world data (RWD) compared to standard benchmark data. To address this challenge, we discuss the implementation and concepts of Chameleon, a semi-AutoML framework. The goal of Chameleon is fast and scalable development and deployment of production-ready machine learning systems into the workflow of SMEs. We first discuss the RWD challenges faced by SMEs. After, we outline the central part of the framework which is a model and loss-function zoo with RWD-relevant defaults. Subsequently, we present how one can use a templatable framework in order to automate the experiment iteration cycle, as well as close the gap between development and deployment. Finally, we touch on our testing framework component allowing us to investigate common model failure modes and support best practices of model deployment governance.
变色龙:一个半自动框架,旨在为中小企业快速、可扩展地开发和部署生产就绪的机器学习系统
开发、扩展和部署现代机器学习解决方案对于中小型企业(sme)来说仍然具有挑战性。这是由于构建和维护一个专门的IT团队的门槛很高,以及与标准基准数据相比,实际数据(RWD)的难度很大。为了应对这一挑战,我们讨论了一个半自动化框架Chameleon的实现和概念。变色龙的目标是将生产就绪的机器学习系统快速、可扩展地开发和部署到中小企业的工作流程中。我们首先讨论中小企业面临的RWD挑战。之后,我们概述了框架的中心部分,这是一个具有rwd相关默认值的模型和损失函数动物园。随后,我们将介绍如何使用可模板框架来自动化实验迭代周期,以及缩小开发和部署之间的差距。最后,我们将触及测试框架组件,使我们能够调查常见的模型故障模式,并支持模型部署治理的最佳实践。
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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