Visitors at the library — colleagues from Bulgaria

May 23, 2018

Last week May 14th-17th VGTU library had with help of Erasmus+ program visitors from the Bulgarian University of Economics in Varna — librarians  Yana Doneva and Galya Valchanova.

VGTU library astonished guests with open spaces for students: 24 hours 7 days a week working library, freedom to take your belonging with yourself, drink hot liquids and that all the university services are available with one student's card.  Colleagues from Bulgaria liked the wide electronic catalog possibilities,  scanned book covers project, fast delivery of book orders and the possibility to reserve the books if the books are already taken.  Also the information bridge Library—University—Student is of the great example to our guest librarians, which allows users of the library to get the recommendations from lecturers. 

Librarians from Bulgaria also visited VGTU university central and new buildings. They were welcome by the Practical buildings, construction, and material laboratory and Electronic study group at their facilities. Guests had been introduced and guided through Vilnius libraries and academic facilities: Martynas Mazvydas National Library of Lithuania, Vilnius County Adomas Mickevičius Public Library, Lithuanian library for the blind, the Wroblewski library of the Lithuanian Academy of Sciences, Vilnius university libraries at old town and Saulėtekis, Vilnius university Life sciences center.

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