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Towards a Robust Knowledge Graph-Enabled Machine Learning Service Description Framework

机译:朝向启用强大的知识图形机器学习服务描述框架

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Although machine learning (ML) is widely expected to become a key enabler of innovative applications in a number of important domains, building, deploying and managing robust ML pipelines for diverse domains are very challenging as they require expertise in both the application domain as well as the ML field. Recently, machine learning as a service (MLAAS) is being explored as a paradigm to address these challenges and to democratize artificial intelligence (AI). MLAAS envisions an ecosystem with powerful mechanisms for publishing, searching/discovering, composing and deploying ML models. This paper argues that a semantic-rich and flexible ML service description is indispensable for realizing such an ecosystem. Towards this end, we outline a unique approach that leverages knowledge graphs (KGs) for ML service description. A requirements study highlights the ML services aspects that need to be provisioned in the description framework. This paper presents a novel five-dimensional KG-enabled ML service description framework, which incorporates ML task description, Input-Output (I–O) description, ML-model description, dataset and training description and performance characteristics description. In designing this ML service description framework, we introduce several conceptual structures such as functional specifications with semantically-extended types and compound knowledge graphs for representing ML model architectures.
机译:虽然机器学习(ML)被广泛的预期成为许多重要域中的创新应用的关键推动因素,但是对于各种域的建筑,部署和管理强大的ML管道非常具有挑战性,因为它们需要应用领域的专业知识以及ml场。最近,作为服务(MLAAS)的机器学习被探索为范例,以解决这些挑战和民主化人工智能(AI)。 MLAAS设想具有强大机制的生态系统,用于发布,搜索/发现,组合和部署ML型号。本文认为,语义丰富和灵活的ML服务描述对于实现这种生态系统是必不可少的。为此,我们概述了一种独特的方法,可以利用ML服务描述的知识图表(kgs)。要求研究突出了在描述框架中需要配置的ML服务方面。本文介绍了一种新型的五维kg的ML服务描述框架,它包含ML任务描述,输入 - 输出(I-O)描述,ML模型描述,数据集和培训描述和性能特征描述。在设计此ML服务描述框架时,我们介绍了几种概念结构,例如功能规范,具有语义 - 扩展类型和复合知识图表,用于代表ML模型架构。

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