Аннотация к книге "welve Variations on "Ah Vous Dirai-Je, Maman""
High Quality Content by WIKIPEDIA articles! Twelve Variations on "Ah vous dirai-je, Maman", K. 265/300e, is a piano composition by Wolfgang Amadeus Mozart, composed when he was around 25 years old (1781 or 1782). This piece consists of twelve variations on the French folk song Ah! vous dirai-je, Maman. The French melody first appeared in 1761, and has been used for many children's songs, such as Twinkle Twinkle Little Star, Baa, Baa, Black Sheep and the Alphabet Song. This work was composed for...
High Quality Content by WIKIPEDIA articles! Twelve Variations on "Ah vous dirai-je, Maman", K. 265/300e, is a piano composition by Wolfgang Amadeus Mozart, composed when he was around 25 years old (1781 or 1782). This piece consists of twelve variations on the French folk song Ah! vous dirai-je, Maman. The French melody first appeared in 1761, and has been used for many children's songs, such as Twinkle Twinkle Little Star, Baa, Baa, Black Sheep and the Alphabet Song. This work was composed for solo piano and consists of 13 sections: the first section is the Theme, the other sections are Variations I to XII. Only Variations XI and XII have tempo indications, Adagio and Allegro respectively. For a time, it was thought that these Variations were composed in 1778, while Mozart stayed in Paris from April to September in that year, the assumption being that the melody of a French song could only have been picked up by Mozart while residing in France. For this presumed composition date, the composition was renumbered from K. 265 to K. 300e in the chronological catalogue of Mozart's compositions.
Данное издание не является оригинальным. Книга печатается по технологии принт-он-деманд после получения заказа.
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