Information for graduates

January 11, 2024

Important for graduates:

We would like to inform you that before graduation of bachelor's, master's studies at the University, it is necessary to return the publications borrowed from the Library, pay for the lost or damaged publications and pay the accrued fine.

Return the publications borrowed from the Library:

Publications you can return  through the return box on the outside of the Library building at any time of the day.
If you are unable to attend the Library, you can return publications per post:
VILNIUS TECH Biblioteka, Saulėtekio al. 14, LT-10223 Vilnius

Extend the return time of the publication:

You can extend the return time of the publication by logging in to the VILNIUS TECH virtual library, in your account "My Library Card / My Loans",  by phone (8 5) 274 49 00 or writing an e-mail biblioteka@vilniustech.lt

The payment of fine for overdue or lost publications procedure:

You can pay fines at the Information Centre in Hall on the 1st floor or online, without forgetting to send copies of orders by e-mail biblioteka@vilniustech.lt.

Payment details:
Recipient: Vilniaus Gedimino technikos universitetas
Beneficiary's current account No.: LT32 7300 0100 0245 9012
The purpose of payment: delspinigiai-už pavėluotai grąžintas knygas (specify student ID)

If a borrowed library book has been lost, it must be replaced with the same or an equivalent book. You should consult with a library before buying a book.

Information for students uploading Master's theses to the eLABa repository:

Every year, faculties and departments select the best Master theses. These works have to be registered in the eLABa ETD (Electronic Theses and Dissertations) database within 3 days after their public defense.
 
Access to eLABa ETD: https://talpykla.elaba.lt
For log in use VILNIUS TECH institutional login data.
Select “New Document” and then for the field “DB*” select “ETD” from the drop down menu. After filling the form with the required information, you will need to attach the copy of the described document.

The clearance with the Library procedure:

The clearance with the Library is initiated in ManoVILNIUSTECH information system.
In Mano VILNIUSTECH, select the "Final report slip" subsystem and confirm the process. Use VILNIUS TECH institutional login data to log in.

If you have any questions about uploading the thesis to the eLABa repository, please contact to responsible librarian by phone (8 5) 274 4900 or e-mail. email biblioteka@vilniustech.lt

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