27.12.2021 Aufrufe

OCG Journal 03-04/2021: Nachhaltigkeit & Ethik in der IT

Mitgliederzeitschrift der OCG, 46. Jahrgang, Schwerpunktthema dieser Ausgabe ist Nachhaltigkeit und IT

Mitgliederzeitschrift der OCG, 46. Jahrgang, Schwerpunktthema dieser Ausgabe ist Nachhaltigkeit und IT

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Schwerpunktthema: <strong>Nachhaltigkeit</strong> & <strong>Ethik</strong> <strong>in</strong> <strong>der</strong> <strong>IT</strong><br />

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<strong>03</strong>-<strong>04</strong> • <strong>2021</strong> | <strong>OCG</strong> <strong>Journal</strong><br />

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