Index Legatorum Dietae Imperii Germanici (Dictatura Nazista) I

Multi tool use
Legati Dietae Imperii Germanici I inter Dictaturam Nazistam die 12 Novembris 1933 electae (omnes paene Nazistae) fuerunt inter alios:
Martinus Bormann |Gualterius Buch |Philippus Bouhler |Gualterius Darré |Franciscus de Epp |Gottfried Feder |Ioannes Frank |Rolandus Freisler |Paulus Giesler |Iosephus Goebbels |Hermannus Göring |Gualterus Granzow |Henricus Himmler |Adolphus Hitler |Alfredus Hugenberg (hospes NSDAP) | |Manfredus de Killinger |Ioannes Kerrl |Theodericus Klagges |Gualterus Köhler |Gulielmus Kube |Gulielmus Marschler |Gulielmus Murr |Martinus Mutschmann |Ernestus Röhm (ad 1 Iulii 1934) |Alfredus Rosenberg |Carolus Röver |Bernhardus Rust |Franciscus Seldte |Ludovicus Siebert |Iacobus Sprenger |Iulius Streicher |Iosephus Wagner |Robertus Wagner |
Legati Dietarum Imperii Germaniae
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Foederatio Germaniae Septentrionalis (1867 - 1871): Index legatorum Dietae Imperii Foederationis Germanicae Septemtrionalis
Imperium Germanicum (1871 - 1918):
Legati Dietae Imperii (1871 - 1874) |
Legati Dietae Imperii (1874 - 1877) |
Legati Dietae Imperii (1877 - 1878) |
Legati Dietae Imperii (1878 - 1881) |
Legati Dietae Imperii (1881 - 1884) |
Legati Dietae Imperii (1884 - 1887) |
Legati Dietae Imperii (1887 - 1890) |
Legati Dietae Imperii (1890 - 1893) |
Legati Dietae Imperii (1893 - 1898) |
Legati Dietae Imperii (1898 - 1903) |
Legati Dietae Imperii (1903 - 1907) |
Legati Dietae Imperii (1907 - 1912) |
Legati Dietae Imperii (1912 - 1918) |
Res Publica Vimariana:
Legati Consilii Formae Civitatis Constituendae (1919 - 1920) |
Legati Dietae Imperii (1920 - 1924) |
Legati Dietae Imperii (1924) |
Legati Dietae Imperii (1924 - 1928) |
Legati Dietae Imperii (1928 - 1930) |
Legati Dietae Imperii (1930 - 1932) |
Legati Dietae Imperii (1932) |
Legati Dietae Imperii (1932 - 1933) |
Legati Dietae Imperii (1933) |
Dictatura Nazista (1933 - 1945)
Legati Dietae Imperii (1933 - 1936) |
Legati Dietae Imperii (1936 - 1938) |
Legati Dietae Imperii (1938 - 1945)
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