Voldemort

Multi tool use

-3
(maxdubium) Latinitas huius rei maxime dubia est. Corrige si potes. Vide {{latinitas}}.
Voldemort (-is, m.), sive Dominus Voldemort,[1]Dux Niger[2] aut Obscurus,[3] est adversarius Harrii Potteri in septem mythistoriis phantasticis?de vita Potteriana, ab Ioanna Rowling scriptice scriptis. Magi magaeque, ipsum nomen Voldemort vehementer timentes, Quidam nominant.
Nomen verum eius Tom Musvox Ruddle (Anglice: Tom Marvolo Riddle) est. Nomen eius mutatum est ut Dux Voldemort sum diceret, quia Tom Marvolo Riddle anagramma est verborum Anglicorum I am Lord Voldemort, quod 'Dominus Voldemort sum' significat.
A patre "Tom" et ab avo "Musvox" appellatus est.
Magus ater et potens est, qui parentes Harrii necavit, et Harrium quoque necare conatur, sed non contigit.? In Librīs, semper Harrium necare conatur ut dominus mundum superaret et potentissimus esset.
Voldemortis parentes Merope Gaunt et Tom Riddle senior sunt. Patrem et parentes patris sui Voldemort necavit, quia Tom Riddle senior matrem Voldemortis gravidam reliquit et haec partu mortua est.
Frater matris Morfin Gaunt et avis maternus Marvolo Gaunt erant.
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↑ Harrius Potter et Philosophi Lapis, etc.
↑ Harrius Potter et Camera Secretorum
↑ Harrius Potter et Camera Secretorum, p.40
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