Burkhardus Blienert

Multi tool use

Burkhardus Blienert anno 2014
Burkhardus (Theod. Burkhard) Blienert (natus die 30 Martii 1966 in oppido Braubach) rerum politicarum peritus Germanicus factionis SPD est.
Iuventus et munus |
Postquam anno 1986 testimonium maturitatis accepit, Blienert officium civile absolvit atque ab anno 1988 Monasterii rebus politicis, historiae, sociologiae studebat, ut magister fieret. Annis 1994 - 2010 pro factione Sociali Democratica eiusque legatis operam dedit.
Cursus honorum |
Blienert ab anno 2013 legatus ad Dietam Foederalem Germaniae est.
Nexus externi |
- Curriculum vitae in pagina Dietae Foederalis
- Pagina personalis
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