Funding body: Erasmus Lump Sum Grants
UvA (co-)applications: Stefan Mol, Jarno Vrolijk and Alan Bergs
Science is clear: Artificial Intelligence will be the defining development of the 21st century. Experts estimate that due to the rise of AI within only 2 decades aspects of daily human life will be unrecognisable. The influence of AI is about to challenge the very organising principles of our economic and social order. It can generate unprecedented wealth, revolutionise medicine and education, but it can bring existential perils for life as we know it. This makes the EC2020 report that the EU is lagging behind USA and Asia in AI adoption and development all the more worrying. Among many reasons behind that, the lack of skilled workforce is definitively one of the more prominent ones. The objective of AI4VET4AI is to contribute to the digital transformation of the EU labour market by adding new innovative teaching content and methods to VET curricula across 11 European countries and 18 EU NUTS2 regions, in order to support the growth of AI-skilled workers.
Funding body: Erasmus+ Cooperation for innovation and the exchange of good practices
UvA (co-)applicants: Stefan Mol
The socio-economic aspect of data and data related industries are crucial for the further development of the European Union and its competitiveness capacities in the global economy. However, there is an existing gap between total demand and supply of data workers of 420.000 in EU in 2016, with a forecast to face a data skills gap corresponding to 769.000 unfilled positions by 2020. The main objective of the ADSEE project is to deliver useful educational and training programs in data science through the following: the development of educational modules; the adaption of contents and methods according to the envisioned needs of target groups; the creation of interactive didactic tools and the production of guidelines and recommendations for the innovative educational approaches in DS. Special attention will be paid to data science in non-technical universities and its application in non-technical business, where previous knowledge in this area is not mandatory.
Funding body: Erasmus+ Cooperation for innovation and the exchange of good practices
UvA (co-)applicants: Stefan Mol and Sofija Pajic
In rapidly changing health care systems, digitalisation, e-health and robotisation are gaining influence. Due to the existing global nurse shortage in Europe, a demand for healthcare and therewith nurses will continue to grow, whilst the supply of available nurses is projected to drop. Therefore, it is expected that the shortages will accelerate in the coming decade and will be more serious than the cyclical shortages of the past. This nursing shortage will ultimately constrain health system reform and innovation, and contribute to escalating costs. ICT, AI and robotisation are one way to support health care professionals, enhance interprofessional cooperation and patients` safety. The NursingAI project will analyse and forecast the types of skills and competencies needed by health care professionals, especially nurses. By gaining insight of needed competencies and skill, curriculums for trainings and education programs can be enhanced to the actual needs concerning ICT competencies.
Funding body: EU FP7 Framework Program – Marie Curie Multi-Partner Initial Training Network
UvA (co-)applicants: Stefan Mol, Vladimer Kobayashi, Sofija Pajic, Hannah Berkers, Eloisa Federici, Gabor Kismihok and Kea Tijdens
The objective of EDUWORKS is to train talented early-stage researchers in the socioeconomic and psychological dynamics of the labour supply and demand matching processes at aggregated and disaggregated levels. Training involves a broad range of skills and competences required to pursue their career in academic and industrial settings.
Funding body: The Society for Industrial and Organizational Psychology
UvA (co-)applicants: Stefan Mol, Gabor Kismihok, Hannah Berkers and Vladimer Kobayashi
The project is aimed at providing a fresh perspective on job analysis by leveraging the potential of big data analytics. In this interdisciplinary project job data will be automatically extracted from a vast number of online vacancies and existing occupational taxonomies and structured through semi-supervised machine learning and text mining techniques.