Integration events for bachelor’s and master’s students

August 30, 2023

VILNIUS TECH Faculty of Business Management eagerly awaits the beginning of the new academic year, so we invite the university community and all city guests to celebrate. 

We will kick off the new academic year on September 1st at 10:00 AM with an official ceremony at VILNIUS TECH Central Building, Saulėtekio al. 11. If the weather conditions are unfavorable, we will move to the Aula Magna space inside the Central Building. 

The event will feature the festive mood created by the academic choir "Gabija," the folk dance ensemble "Vingis," and the university orchestra. 

We also invite first-year students to participate in integration events, which will be a great start before the new academic year begins.

On September 4th, starting at 5:00 PM, the celebration will continue at the VILNIUS TECH "LinkMenų fabrikas". We will once again have the tradition of the VILNIUS TECH CREATORS’ FEST! We will celebrate current students and welcome new students who have joined the ranks of future creators. Everyone is invited to the opening festival of the academic year, so lectures on September 4th (Monday) will be held until 4:00 PM. 

During the festival, VILNIUS TECH students will showcase their talents: Augustė Ižaganaitytė will demonstrate aerial acrobatics, Kamilė Jankevičiūtė and Laura Pažusytė will enchant with songs, and Neila and Ema Lavrenovaitės will captivate with dance moves. 

Later, well-known Lithuanian performers such as jautì, Rondo, and GJan will also appear. 

The festival will also feature a food and drink area, relaxation spaces, and various activities: 

  • Spikeball; 
  • Entertainment from the VILNIUS TECH Tourist Club; 
  • Counter-Strike tournament; 
  • "Vilnius sveikiau" intellectual battle; 
  • Body painting; 
  • Photo corner; 
  • Company activities and many more! 

So, dress in silver-colored attire and let's meet at the beginning of the academic year celebration! 

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