Compilatrum

Multi tool use

-5
(maxcorrigenda) Latinitas huius paginae magnopere corrigenda est. Si potes, corrige vel rescribe. Vide {{latinitas}}.
Compilatrum[1] vel fortasse puriore Latinitate compositrum, est programma computatrale quod alia programmata facit. Id utitur commonitoria initialia et compilat programmam in vel linguam machinam vel linguam intermediam programmandi.
Compilatrum iussa cuiusdam linguae programmandi (codicis originis) in iussa ad aliam linguam (codicem obiectum?) pertinentia transfert. Compilatrum primis commonitoris? utitur, et programma vel in linguam machinae vel mediam linguam programmandi componit.
Codex originis trasfertur ad exsequibile? programma generandum.
Nexus interni
- Compilatrum unius transitus
- GCC
- Octopiler
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↑ Conradus Kokoszkiewicz, Vocabula computatralia.
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