РАЗВИТИЕ ИНСТРУМЕНТОВ ЦИФРОВОЙ ТРАНСФОРМАЦИИ ПРИНЯТИЯ РЕШЕНИЙ
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https://doi.org/10.5281/zenodo.20784636##article.subject##:
цифровые системы, бизнес-аналитика, менеджмент##article.abstract##
Данная статья рассматривает хронологию развития цифровых систем управления бизнесом и
инструментов принятия решений. В исследовании изучены существующие публикации зарубежных ученых и
технологические основы цифровых платформ принятия управленческих решений, проводится качественный
анализ и систематизируется инструменты принятия решений. Обобщенная информация представлена методами
визуализации.
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Загрузки
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