Computatrum humanum

Multi tool use

"Cella ratiocinatorum" in "NACA High Speed Flight Station".
Computatrum humanum (Anglice mental calculator) significant ratiocinatorum homines fungi aut posse numeros callido computare. Ratiocinatores quondam poscebantur in magistratibus indagationibus similis CERN quam venire machina electronicis. Adhunc in dictionario Anglice, verbum ipsum "computer" significat eundem homines, nam moderna magis machinam informaticam refert. In series ficionis"Dune" est genus ratiocinatoris "Mentat" pro machina ratiocinatur quoniam machina antea rebellionem fecerunt, interdicuntur. Inter exempla notissima sunt Hans Eberstark, Carolus Fridericus Gauss, Willem Klein, Ioannes de Neumann.
Nexus externi |
- Situs certamine ratiocinaris mentalis Anglice
- De Prodigio Ratiocinaris a Viktor Pekelis,Anglice
- Willem Klein,Anglice
- Ratiocinaris , Anglice
- Ars ratiocinaris anglice
- 13throot.com - Ars ratiocinaris ab Alexis Lemaire ad radicem 13, Anglice
- Illes Grandes Ratiocinatores, Anglice
- Lightning Calculators
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