The Gender and Responsible Artificial Intelligence Network (GRAIN) is organizing a virtual debate on Thursday 30 May 2024 from 3pm to 5pm GMT on the Zoom platform on How to get more women involved in STEM.
The virtual meeting will provide an opportunity to exchange views with network members and other stakeholders in STEM (Science, Technology, Engineering and Mathematics) on strategies and opportunities to promote women's involvement in STEM and to discuss ways to strengthen their inclusion and active participation.
Specifically, it will assess the educational and career opportunities in STEM fields for women in Africa; identify successful initiatives and programmes that have attracted women to STEM and understand the key factors of their success; explore the specific barriers and challenges that women face in their educational and career pathways in STEM; and formulate strategic recommendations for policy makers, business and civil society to support and encourage women to pursue careers in STEM.
Moderated by Dr Ndeye Fatou CISSE, gender expert at IPAR, the virtual event will bring together Ms Minata SARRPhD in digital law, teacher-researcher ; Ms Maimouna Leye DiakhatePresident of SENUM (Synergie pour l'Education au Numérique et aux Médias) ; Joyce Nabende Lecturer in Computer Science at Makere University, Kenya ; Dr Juliet Moso Lecturer at Dedan Kimathi University of Technology; and Marwa Cheikh-YoussefPresident of HACK&PITCH, Morocco.
Using a brainstorming format with all participants to encourage open and collaborative thinking, the debate will include STEM experts, representatives of women's groups and others to cultivate an inclusive and participatory approach to ensure that all voices are heard and that the discussions are enriching and constructive.
Expected outcomes include the exchange of information and best practice to promote women's participation in STEM ; increased awareness of the importance of women's inclusion in STEM and the actions needed to ncrease their participation and success in these fields.
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