Universitas Cuvaitensis

Multi tool use

Universitas Cuvaitensis
Res apud Vicidata repertae:
universitasCivitas:
CuvaitumSitus:
Cuvaitum
Rectio
Situs interretialis
Universitas Cuvaitensis (Arabice جامعة الكويت) est universitas publica civitatis Cuvaiti, in urbe Cuvaitensi anno 1966 condita. Quattuor collegia a principio constituta sunt, videlicet collegia scientiarum, artium, educationis et collegium feminarum.
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Haec stipula ad universitatem aut scholam spectat. Amplifica, si potes!
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