与非专家一起构建深度学习应用的原型:一个辅助命题

Gustavo Rodrigues dos Reis, Adrian Mos, Mario Cortes-Cornax, Cyril Labbé
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引用次数: 0

摘要

基于深度神经网络的机器学习(ML)系统比以往任何时候都更多地出现在许多行业的软件解决方案中。它们的内部运作依赖于通过数据学习的模型,这对非专业人士来说既有用又神秘。越来越需要使这些解决方案的设计和开发能够为更广大的公众所接受,同时使它们更容易探索。在本文中,为了解决这一需求,我们讨论了一种新的辅助方法的命题,该方法以要执行的下游任务为中心,以帮助从业者开始使用和应用深度学习(DL)技术。该建议由初始测试平台UI原型支持,使用外部化的知识形式,其中JSON文件用各自相关的工件(例如,模型代码,要加载的数据集,良好的超参数选择)编译不同的管道元数据信息,这些信息在用户与会话代理交互时呈现,以建议给定任务的候选解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prototyping Deep Learning Applications with Non-Experts: An Assistant Proposition
Machine learning (ML) systems based on deep neural networks are more present than ever in software solutions for numerous industries. Their inner workings relying on models learning with data are as helpful as they are mysterious for non-expert people. There is an increasing need to make the design and development of those solutions accessible to a more general public while at the same time making them easier to explore. In this paper, to address this need, we discuss a proposition of a new assisted approach, centered on the downstream task to be performed, for helping practitioners to start using and applying Deep Learning (DL) techniques. This proposal, supported by an initial testbed UI prototype, uses an externalized form of knowledge, where JSON files compile different pipeline metadata information with their respective related artifacts (e.g., model code, the dataset to be loaded, good hyperparameter choices) that are presented as the user interacts with a conversational agent to suggest candidate solutions for a given task.
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