SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service Systems

To develop smart services to successfully operate as a component of smart service systems (SSS), they need qualitatively and quantitatively sufficient data. This is especially true when using statistical methods from the field of artificial intelligence (AI): training data quality directly determine...

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Main Authors: Maurice Preidel, Rainer Stark
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/11/5148
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spelling doaj-7054bc9482db44d684f29f7c83448dd62021-06-30T23:03:07ZengMDPI AGApplied Sciences2076-34172021-06-01115148514810.3390/app11115148SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service SystemsMaurice Preidel0Rainer Stark1Department of Industrial Information Technology, Institute for Machine Tools and Factory Management, Technische Universität Berlin, Pascalstr. 8-9, 10587 Berlin, GermanyDepartment of Industrial Information Technology, Institute for Machine Tools and Factory Management, Technische Universität Berlin, Pascalstr. 8-9, 10587 Berlin, GermanyTo develop smart services to successfully operate as a component of smart service systems (SSS), they need qualitatively and quantitatively sufficient data. This is especially true when using statistical methods from the field of artificial intelligence (AI): training data quality directly determines the quality of resulting AI models. However, AI model quality is only known when AI training can take place. Additionally, the creation of not yet available data sources (e.g., sensors) takes time. Therefore, systematic specification is needed alongside SSS development. Today, there is a lack of systematic support for specifying data relevant to smart services. This gap can be closed by realizing the systematic approach SemDaServ presented in this article. The research approach is based on Blessing’s Design Research Methodology (literature study, derivation of key factors, success criteria, solution functions, solution development, applicability evaluation). SemDaServ provides a three-step process and five accompanying artifacts. Using domain knowledge for data specification is critical and creates additional challenges. Therefore, the SemDaServ approach systematically captures and semantically formalizes domain knowledge in SysML-based models for information and data. The applicability evaluation in expert interviews and expert workshops has confirmed the suitability of SemDaServ for data specification in the context of SSS development. SemDaServ thus offers a systematic approach to specify the data requirements of smart services early on to aid development to continuous integration and continuous delivery scenarios.https://www.mdpi.com/2076-3417/11/11/5148smart servicesdata specificationdomain knowledgeinformation needsdata needsknowledge needs
collection DOAJ
language English
format Article
sources DOAJ
author Maurice Preidel
Rainer Stark
spellingShingle Maurice Preidel
Rainer Stark
SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service Systems
Applied Sciences
smart services
data specification
domain knowledge
information needs
data needs
knowledge needs
author_facet Maurice Preidel
Rainer Stark
author_sort Maurice Preidel
title SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service Systems
title_short SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service Systems
title_full SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service Systems
title_fullStr SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service Systems
title_full_unstemmed SemDaServ: A Systematic Approach for Semantic Data Specification of AI-Based Smart Service Systems
title_sort semdaserv: a systematic approach for semantic data specification of ai-based smart service systems
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2021-06-01
description To develop smart services to successfully operate as a component of smart service systems (SSS), they need qualitatively and quantitatively sufficient data. This is especially true when using statistical methods from the field of artificial intelligence (AI): training data quality directly determines the quality of resulting AI models. However, AI model quality is only known when AI training can take place. Additionally, the creation of not yet available data sources (e.g., sensors) takes time. Therefore, systematic specification is needed alongside SSS development. Today, there is a lack of systematic support for specifying data relevant to smart services. This gap can be closed by realizing the systematic approach SemDaServ presented in this article. The research approach is based on Blessing’s Design Research Methodology (literature study, derivation of key factors, success criteria, solution functions, solution development, applicability evaluation). SemDaServ provides a three-step process and five accompanying artifacts. Using domain knowledge for data specification is critical and creates additional challenges. Therefore, the SemDaServ approach systematically captures and semantically formalizes domain knowledge in SysML-based models for information and data. The applicability evaluation in expert interviews and expert workshops has confirmed the suitability of SemDaServ for data specification in the context of SSS development. SemDaServ thus offers a systematic approach to specify the data requirements of smart services early on to aid development to continuous integration and continuous delivery scenarios.
topic smart services
data specification
domain knowledge
information needs
data needs
knowledge needs
url https://www.mdpi.com/2076-3417/11/11/5148
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AT rainerstark semdaservasystematicapproachforsemanticdataspecificationofaibasedsmartservicesystems
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