Titus Annius Luscus Rufus (natus saeculo 2, mortuus post annum 128 a.C.n.) fuit vir publicus Romanus.
Index
1Gens
2Cursus honorum
3Bibliographia
4Notae
Gens |
Pater eius Titus Annius Luscus anno 153 a.C.n. consul erat.
Cursus honorum |
Annius Rufus anno 131 a.C.n. aut antea praetor electus est. Anno 128 a.C.n. aut antea una cum Gnaeo Octavio consul fuit[1]. Vel Annius hoc anno vel Publius Popillius Laenas anno 132 a.C.n. Viam Anniam vel Popiliam a Rhegio ad capuam exstruxerunt.
Bibliographia |
Carolus-Ludovicus Elvers, "[I 15] Rufus, T." in Der Neue Pauly vol. 1 (Stutgardiae: Metzler, 1996. ISBN 3-476-01471-1) col. 713.
Notae |
↑Fasti Consulares
Antecessores: Gaius Sempronius Tuditanus et Manius Aquillius
Consul 128 a.C.n. cum Gnaeo Octavio
Successores: Lucius Cornelius Cinna et Lucius Cassius Longinus Ravilla
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