TY - GEN
T1 - Towards a stream based machine learning testbed
AU - Zenisek, Jan
AU - Wolfartsberger, Josef
AU - Wild, Norbert
AU - Affenzeller, Michael
N1 - Funding Information:
The work described in this paper was done within the project ?Smart Factory Lab? which is funded by the European Fund for Regional Development (EFRE) and the state of Upper Austria as part of the program ?Investing in Growth and Jobs 2014-2020?.
Publisher Copyright:
© 2020 The Authors.
Copyright:
Copyright 2020 Elsevier B.V., All rights reserved.
PY - 2020
Y1 - 2020
N2 - With the rise of data analytics in industrial applications a heterogeneous tool landscape developed over the past few years. To cope with highly dynamic and domain-specific requirements of such applications, scripting programming languages and frameworks, which offer ecosystems comprising numerous publicly available plugin libraries, are gaining more and more attraction as a starting point, since they enable rapid prototyping and thus, quick results. At the other end, cloud service providers are continuously extending their data analysis product palette in order to support large enterprise solutions for real-world deployments. As scripted prototypes and cloud based solutions have their strengths in different phases of an analytics project, we identified several pitfalls in recent case studies when moving a prototypic approach to release. In this work, we present a software design for a data stream analysis testbed, with the aim to address some of these challenges. Therefore, an interaction pattern for common analysis steps (data acquisition, visualization, preprocessing and machine learning model evaluation) is detailed, results gained from a sample case study are summarized and future leads are discussed.
AB - With the rise of data analytics in industrial applications a heterogeneous tool landscape developed over the past few years. To cope with highly dynamic and domain-specific requirements of such applications, scripting programming languages and frameworks, which offer ecosystems comprising numerous publicly available plugin libraries, are gaining more and more attraction as a starting point, since they enable rapid prototyping and thus, quick results. At the other end, cloud service providers are continuously extending their data analysis product palette in order to support large enterprise solutions for real-world deployments. As scripted prototypes and cloud based solutions have their strengths in different phases of an analytics project, we identified several pitfalls in recent case studies when moving a prototypic approach to release. In this work, we present a software design for a data stream analysis testbed, with the aim to address some of these challenges. Therefore, an interaction pattern for common analysis steps (data acquisition, visualization, preprocessing and machine learning model evaluation) is detailed, results gained from a sample case study are summarized and future leads are discussed.
KW - Data Stream Analysis
KW - Machine Learning
KW - Predictive Maintenance
KW - Software Framework
UR - http://www.scopus.com/inward/record.url?scp=85097715541&partnerID=8YFLogxK
U2 - 10.46354/i3m.2020.emss.044
DO - 10.46354/i3m.2020.emss.044
M3 - Conference contribution
AN - SCOPUS:85097715541
T3 - 32nd European Modeling and Simulation Symposium, EMSS 2020
SP - 305
EP - 310
BT - 32nd European Modeling and Simulation Symposium, EMSS 2020
A2 - Affenzeller, Michael
A2 - Bruzzone, Agostino G.
A2 - Longo, Francesco
A2 - Petrillo, Antonella
PB - DIME UNIVERSITY OF GENOA
T2 - 32nd European Modeling and Simulation Symposium, EMSS 2020
Y2 - 16 September 2020 through 18 September 2020
ER -