The Universe of M. K. Čiurlionis’ Art

September 19, 2025

On 22 September, we will commemorate the 150th anniversary of the birth of Mikalojus Konstantinas Čiurlionis.
This distinguished artist, composer, painter, and cultural figure made an invaluable contribution to Lithuanian and international art. During his brief yet remarkably productive life, Čiurlionis composed approximately 400 musical works, created over 300 paintings, authored literary and journalistic texts, and experimented with photography.

Čiurlionis’ oeuvre was not limited to a single artistic discipline; he succeeded in integrating music and painting into a cohesive artistic vision. His symphonic poems In the Forest (Miške) and The Sea (Jūra) are regarded as cornerstones of Lithuanian music, while his visual works display a highly distinctive artistic style. His painting cycles – The Sonata of the Pyramids, The Sonata of the Sea, The Sonata of the Serpent – alongside his celebrated compositions Fairy Tale (The Kings) and Rex, demonstrate his exceptional ability to convey musical ideas through visual form.

For those seeking a deeper understanding of Čiurlionis’ life and work, the VILNIUS TECH Library recommends the following publications:

   
Čiurlionio muzika / Vytautas Landsbergis
 
Vainikas Čiurlioniui : menininko gyvenimo ir kūrybos apybraižos / Vytautas Landsbergis
 
Čiurlionio dailė / Vytautas Landsbergis
 
Semiotics of Classical Music, 2012, Vol.10
Tarasti, Eero
Knygos skyrius: „M. K. Čiurlionis and the interrelationships of arts“.
Čiurlionio kelias = Дорога Чюрлениса / Aldona Kireilienė
Music, Art and Performance from Liszt to Riot Grrrl, 2019
Knygos skyrius: „The ‘Figure in the Carpet’: M. K. Čiurlionis and the Synthesis of the Arts
Petritakis, Spyros“, Diane Silverthorne. 

 

Neatpažinti Mikalojaus Konstantino Čiurlionio muzikos ciklai : skirta kompozitoriaus 100-osioms gimimo metinėms / Rimantas Janeliauskas.

Books can be borrowed for home use through the VILNIUS TECH Virtual Library. Once you receive a notification that your request is ready, please collect the items at the designated location: the Central Library (1st floor hall) or the faculty reading room.

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