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Материалы курса по компьютерной лингвистике Школы Лингвистики НИУ ВШЭ

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О Курсе

Это курс для магистров 1-го курса программы Компьютерная Лингвистика в Вышке.
Основная цель курса - познакомить вас с основными задачами компьютерной лингвистики и автоматической обработки языка, классическими и современными подходами к их решению.
Пререквизиты курса совсем небольшие: нужно уметь программировать на python (встроенные структуры данных, функции), знать, что такое матрица и вектор, знать любое определение вероятности, читать на английском. Будет отлично, если вы знаете про jupyter, pandas, numpy и sklearn. Но если не знаете, то ничего страшного - все разберём на занятиях.
Курс прежде всего практический - будет много семинаров и домашек.

Оценивание

Оценка за курс состоит из двух частей: накоп (70% оценки) и экзамен (30% оценки). Накоп - это просто средняя оценка за домашки. А на экзамене будет не очень большой тест по всем пройденным темам.

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