Index Legatorum Dietae Imperii Germanici (monarchia) VI

Multi tool use
Dietae Imperii Germanici VI, quae die 28 Octobris 1884 electa ad annum 1887 leges dabat, inter alii et hi legati interfuerunt:
Factionis Socialis Democraticae |
Augustus Bebel |Gulielmus Blos |
Factionis Centri |
Georgius de Hertling |Petrus Reichensperger |
Liberalis Factionis |
Fridericus de Payer |Rudolphus Virchow |
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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