Решения, подсказки, тесты и утилиты для тренировки по алгоритмам от Яндекса.

Overview

Решения и подсказки к тренировке по алгоритмам от Яндекса

Что есть внутри

Содержание

Как получить подсказку по задаче

Оформите issue здесь или напишите мне в telegram

Мой подход к решению задач

  1. Копирую файл template.py;
  2. Меняю название функции;
  3. Читаю в задаче секции про входные и выходные данные;
  4. Обновляю main, где идёт считывание данных и вывод;
  5. По примерам в задаче обновляю тесты, записанные через assert;
  6. Перехожу к написанию алгоритма решения задачи.

Общие подсказки

  • Обращайте внимание на тему урока
  • Обращайте внимание на информацию о входных данных; например, числа могут быть целыми или натуральными, могут быть разные ограничения на количество входных данных, верхние и нижние границы
  • Обращайте внимание на ограничения по памяти и времени

Contributing

Не стесняйтесь оформлять pull request'ы с улучшениями кода, новыми подсказками и тестами к задачам. В принципе это поддержка open source, будет чем похвастаться на собеседованиях. Пропинговать меня можно в телеграме.

Owner
Yankovsky Andrey
Web developer, leader of an internal projects team at @CSSSR. Love dogos, hiking and gaming.
Yankovsky Andrey
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