Self-service Business Intelligence over On-Demand IoT Data: A New Design Methodology Based on Rapid Prototyping

Data Warehouse (DW) and OLAP systems are acknowledged as first citizens of Business Intelligence (BI) technologies, allowing the on-line analysis of huge volumes of data. However, traditional data-driven BI might not be enough to compete in the context of Industry 4.0, since the collection and analysis of data from the Internet of Things (IoT) requires a more responsive approach. Therefore, in this work, we present a new design methodology for Self-Service DW with On-Demand IoT Data, which is accompanied by a new UML profile for Stream Data Warehouses based on IoT data.

[1]  Sandro Bimonte,et al.  Conceptual model for spatial data cubes: A UML profile and its automatic implementation , 2015, Comput. Stand. Interfaces.

[2]  Matteo Golfarelli,et al.  Modern Software Engineering Methodologies Meet Data Warehouse Design: 4WD , 2011, DaWaK.

[3]  Athanasios V. Vasilakos,et al.  Model-Driven Development Patterns for Mobile Services in Cloud of Things , 2018, IEEE Transactions on Cloud Computing.

[4]  Eva Söderström,et al.  Implementation Challenges of Self Service Business Intelligence: A Literature Review , 2018, HICSS.

[5]  Rafik Bouaziz,et al.  Definition of Design Patterns for Advanced Driver Assistance Systems , 2016, VikingPLoP '16.

[6]  Andre Pierre Mattei,et al.  General architecture for data analysis in industry 4.0 using SysML and model based system engineering , 2018, 2018 Annual IEEE International Systems Conference (SysCon).

[7]  Omar Boussaïd,et al.  Design and Implementation of Active Stream Data Warehouses , 2019, Int. J. Data Warehous. Min..

[8]  Pankesh Patel,et al.  Enabling high-level application development for the Internet of Things , 2015, J. Syst. Softw..

[9]  Kurt Geihs,et al.  FRASAD: A framework for model-driven IoT Application Development , 2015, 2015 IEEE 2nd World Forum on Internet of Things (WF-IoT).

[10]  Juan Carlos Corrales,et al.  Data-Centric UML Profile for Wireless Sensors: Application to Smart Farming , 2019, Int. J. Agric. Environ. Inf. Syst..

[11]  Alfredo Cuzzocrea,et al.  Model-driven data mining engineering: from solution-driven implementations to 'composable' conceptual data mining models , 2011, Int. J. Data Min. Model. Manag..

[12]  PinetFrancois,et al.  Conceptual model for spatial data cubes , 2015 .

[13]  Stefano Rizzi,et al.  ProtOLAP: rapid OLAP prototyping with on-demand data supply , 2013, DOLAP '13.

[14]  Sushma Jain,et al.  A survey towards an integration of big data analytics to big insights for value-creation , 2018, Inf. Process. Manag..

[15]  Khalil Drira,et al.  A Model-Driven Methodology for the Design of Autonomic and Cognitive IoT-Based Systems: Application to Healthcare , 2017, IEEE Transactions on Emerging Topics in Computational Intelligence.

[16]  Jamel Feki,et al.  The Power of a Model-Driven Approach to Handle Evolving Data Warehouse Requirements , 2017, MODELSWARD.

[17]  Kleanthis Thramboulidis,et al.  UML4IoT - A UML-based approach to exploit IoT in cyber-physical manufacturing systems , 2016, Comput. Ind..

[18]  Federico Ciccozzi,et al.  MDE4IoT: Supporting the Internet of Things with Model-Driven Engineering , 2016, IDC.