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EDISON Data Science Framework (EDSF): Addressing Demand for Data Science and Analytics Competences for the Data Driven Digital Economy | IEEE Conference Publication | IEEE Xplore

EDISON Data Science Framework (EDSF): Addressing Demand for Data Science and Analytics Competences for the Data Driven Digital Economy


Abstract:

Emerging data driven economy including industry, research and business, requires new types of specialists that are capable to support all stages of the data lifecycle fro...Show More

Abstract:

Emerging data driven economy including industry, research and business, requires new types of specialists that are capable to support all stages of the data lifecycle from data production and input to data processing and actionable results delivery, visualisation and reporting, which can be jointly defined as the Data Science professions family. Data Science is becoming a new recognised field of science that leverages the Data Analytics methods with the power of the Big Data technologies and Cloud Computing that both provide a basis for effective use of the data driven research and economy models. Data Science research and education require a multi-disciplinary approach and data driven/centric paradigm shift. Besides core professional competences and knowledge in Data Science, increasing digitalisation of Science and Industry also requires new type of workplace and professional skills that rise the importance of critical thinking, problem solving and creativity required to work in highly automated and dynamic environment. The education and training of the data related professions must reflect all multi-disciplinary knowledge and competences that are required from the Data Science and handling practitioners in modern, data driven research and the digital economy. In modern conditions with the fast technology change and strong skills demand, the Data Science education and training should be customizable and delivered in multiple forms, also providing sufficient lab facilities for practical training. This paper discusses aspects of building customizable and interoperable Data Science curricula for different types of learners and target application domains. The proposed approach is based on using the EDISON Data Science Framework (EDSF) initially developed in the EU funded Project EDISON and currently being maintained by the EDISON Community Initiative.
Date of Conference: 21-23 April 2021
Date Added to IEEE Xplore: 18 June 2021
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Conference Location: Vienna, Austria

I. Introduction

Emerging data economy, as a part of more general The Fourth Industrial Revolution (referred to as Industry 4.0) is powered by the convergence of previously disconnected fields such as Cloud Computing, Big Data, Data Science and Analytics (DSA), Artificial Intelligence (AI), robotics, mobile technologies, 3D printing, nanotechnology and biotechnologies, that all are based on automation and digitalisation of organisational, industrial and business processes. Industry 4.0 will be characterized by fast development, a high level of technologies convergence and increased role of knowledge, skills and human factors to enable continuous and sustainable science and technology development. Such type of economy requires new type of data driven and Data Science and Analytics enabled competences and workplace skills.

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