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Оценка квантовой памяти: полное руководство по расчету формулы IQMC. Максимизация эффективности квантовой памяти


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формулы IQMC с использованием приближенных значений и алгоритмов. Эти методы могут включать метод Монте-Карло, методы многократных запусков и другие численные приближения.

      3. Экспериментальные методы: Экспериментальные методы предполагают непосредственное измерение параметров и переменных формулы IQMC на реальных системах или в экспериментальных условиях. Экспериментальные данные могут быть использованы для расчета IQMC и оценки эффективности использования квантовой памяти.

      Конец ознакомительного фрагмента.

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