New names of VILNIUS TECH buildings

October 8, 2024
Starting this September, the names of the buildings of Vilnius Gediminas Technical University (VILNIUS TECH) have been renewed – from now on, they are simpler and more understandable for the international community and visitors. We invite you to take a look at the new names and updated maps.

List:
 

New name Building/faculty Building Adress
 
SAULLETEKIS CAMPUS
S1 Central building  

Saulėtekio al. 11, Vilnius

S2   Auditorium building
S3 Faculty of Civil Engineering Educational building
Faculty of Business Managment
S4 Sustainability Hub Auditorium building
S5 Faculty of Environmental Engineering  Educational building
S6 Faculty of Fundamental Sciences Laboratory building
S7   Laboratory building
 
PLYTINE CAMPUS  
P1   Laboratory building

Plytinės g. 25, Vilnius

P2 Faculty of Electronics Educational building
Faculty of Mechanics
Faculty of Transport Engineering
P3   Educational building
 
LINKMENU CAMPUS
L1 Institute of Building Materials

Building

Linkmenų g. 28, Vilnius

L2 Road Research Institute
L2  
L3
L4
L5 Linkmenu factory Educational building
L6 Antanas Gustaitis' Aviaton Institute
 
SENAMIESCIO CAMPUS
T1 Faculty of Architecture

Educational building

Trakų g. 1, Vilnius

T2 Faculty of Creative Industries 
T3  
T4
T5
 

  
Faculty list:
 

Fakultetas Naujasis pavadinimas Adresas
Antanas Gustaitis' Aviaton Institute L6 Linkmenų g. 28, Vilnius
Faculty of Environmental Engineering S5 Saulėtekio al. 11, Vilnius
Faculty of Architecture T1 Trakų g. 1, Vilnius
Faculty of Electronics P2 Plytinės g. 25, Vilnius
Faculty of Fundamental Sciences S6 Saulėtekio al. 11, Vilnius
Faculty of Creative Industries  T2 Trakų g. 1, Vilnius
Faculty of Mechanics P2 Plytinės g. 25, Vilnius
Faculty of Civil Engineering S3 Saulėtekio al. 11, Vilnius
Faculty of Transport Engineering P2 Plytinės g. 25, Vilnius
Faculty of Business Managment S3 Saulėtekio al. 11, Vilnius
Lithuanian Maritime Academy   I. Kanto g. 7, Klaipėda

DOWNLOAD NEW MAP OF VILNIUS TECH CAMPUSES

DOWNOLAD NEW MAP OF CENTRAL CAMPUS

Maps:

 

Galerija

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