Boglárka Csemer (, born 30 November 1986 in Budapest, Hungary), professionally known as Boggie, is a Hungarian musician, singer and songwriter. Globally, Boggie is best known for her 2014 hit single entitled "Nouveau Parfum" () from her self-titled debut studio album Boggie (2013). While the song went number one on Hungary's MAHASZ chart, it also found its way to two Billboard charts reaching number three on its Jazz Album Chart and number 17 on its World Music Album Chart. She represented Hungary in the Eurovision Song Contest 2015 with the song "Wars for Nothing". On 19 May 2015, her song qu
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Csemer Boglárka or “BOGGIE” has been a well-known jazz singer at the clubs and festivals of Budapest and also in the countryside for 2 years. She won a price from the Hungarian Jazz Federation for her own composition in 2011 which was given in the Palace of the Arts of Budapest by the president of the Jazz Federation. She also performed at the Palace of the Arts in the JazzShowcase, a well-known and reputed festival organized especially for young jazz musicians. <a href="https://www.last.fm/mu
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Boglárka Csemer (, born 30 November 1986 in Budapest, Hungary), professionally known as Boggie, is a Hungarian musician, singer and songwriter. Globally, Boggie is best known for her 2014 hit single entitled "Nouveau Parfum" () from her self-titled debut studio album Boggie (2013). While the song went number one on Hungary's MAHASZ chart, it also found its way to two Billboard charts reaching number three on its Jazz Album Chart and number 17 on its World Music Album Chart. She represented Hungary in the Eurovision Song Contest 2015 with the song "Wars for Nothing". On 19 May 2015, her song qualified for the 2015 Eurovision Song Contest final, which was held on 23 May 2015 in Vienna, Austria.
==Musical career==
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