Innovative Education and International Opportunities: Alina Makovska’s Presentation on ‘Future Engineering’

February 28, 2025
On February 20, during her visit to Mexico, Alina Makovska, a physics and computer science teacher at Vilnius District Avižieniai Gymnasium and coordinator of the Millennium Schools Program (Leadership in Action, STEAM Education), delivered a presentation to the community of Queretaro Aeronautical University (UNAQ) in Santiago de Queretaro. The presentation was titled “A New Vision: Redefining Education in the Modern World.”
 
In her speech, Alina Makovska discussed the Vilnius Tech educational platform “Future Engineering,” STEAM education, inclusive education, Erasmus+ opportunities, and the Millennium Schools Program. She emphasized innovative teaching methods that foster students' creativity, critical thinking, and international collaboration. She also highlighted the importance of creating a learning environment that meets today’s technological challenges and prepares students for future careers.
 
Alina Makovska shared insights on how Lithuania successfully implements educational reforms aimed at not only teaching but also developing well-rounded, active, and responsible citizens. This presentation served as an excellent opportunity to share knowledge with an international audience and highlight Lithuania’s evolving system of educational innovations.
 
She sincerely thanked Felipe Augusto López Garduza, Director of the Department of Research and Graduate Studies, for the invitation and the opportunity to share insights on modern education in Lithuania.

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