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5F5=75=BK ˆ ˜˘ 2021.Xlsx Приложение к приказу факультета компьютерных наук от_________________ №_________________ Список рецензентов выпускных квалификационных работ Ученая степень, Место работы Тема на английском Руководитель из Департамент/ Фамилия Имя Отчество Тема работы Рецензент ученое звание рецензента, занимаемая языке НИУ ВШЭ Кафедра рецензента должность Frontend of the департамент Клиентская часть программной Software System for Паринов Андрей анализа данных и Белова Наталья Азаров Евгений Сергеевич системы подбора площадок для к.т.н доцент ДПИ ФКН Filming Locations Андреевич искусственного Сергеевна киносъемок Selection интеллекта 1 Web-приложение для Web Application for осуществления поиска в базе Searching the Database Виноградова Ольга Школа Манахов Павел Алешина Айсылу Наилевна к.т.н. доцент ДПИ ФКН данных студенческих текстов на of Students Texts in Ильинична лингвистики Алексеевич 2 английском языке REALEC English REALEC Search Application for Приложение поиска исполнителей департамент Performers of Common Брейман Александр Меликян Алиса кандидат наук по Алтунян Айк Эдвардович повседневных бытовых услуг. программной доцент ДПИ ФКН Household Services. Давидович Валерьевна образованию Клиентская часть инженерии 3 Frontend Система для тренировки и System for Machine департамент Брейман Александр Ломазова Ирина Аль-Шедиват Радуан Файсал использования моделей машинного Learning Model программной д.ф.-м.н., профессор профессор ДПИ ФКН Давидович Александровна 4 обучения Training and Usage инженерии департамент iOS приложение для проката iOS Application for Тюрюмина Элла анализа данных и Белова Наталья Анисимов Сергей Сергеевич к.т.н. Доцент ДПИ ФКН самокатов и велосипедов Scooter and Bike Rental Яковлевна искусственного Сергеевна интеллекта 5 Practical Assessment of Практическая оценка подходов к Approaches to Organize департамент Салех Хади Старичков Никита 1С, зам.директора по Астафьев Михаил Васильевич организации взаимодействия с the Interaction with A программной - Мухаммед Юрьевич работе с НИУ СУБД в Web-приложениях DBMS in Web инженерии Applications 6 департамент Приложение для мониторинга Pyspark Resource Брейман Александр Дударев Виктор Ашихмин Павел Александрович программной к.т.н. доцент ДПИ ФКН ресурсов в pyspark Monitoring Application Давидович Анатольевич 7 инженерии Web Application for Web-приложение для поиска департамент Relevant Chemical Дударев Виктор Ломазова Ирина Бабиков Сергей Сергеевич релевантных химических объектов программной д.ф.-м.н., профессор профессор ДПИ ФКН Object Search Based on Анатольевич Александровна на основе графовой базы данных инженерии 8 a Graph Database Service for Broadcasts Сервис трансляций с аудио- и Александров департамент from Audio and Video Салех Хади Бабичев Герман Валентинович видеостриминговых платформ. Дмитрий программной к.т.н. доцент ДПИ ФКН Streaming Platforms. Мухаммед Подсистема 1 Владимирович инженерии 9 Subsystem 1 Диагностика заболеваний департамент Circulatory System кровеносной системы с Громов Василий анализа данных и Пантюхин Дмитрий Балбин Илья Олегович Ailments Using Deep - НИУ ВШЭ, ДПИ, ст. преп. использованием нейронных сетей Александрович искусственного Валерьевич Neural Networks глубокого обучения интеллекта 10 Веб-приложение для учета Web Application for департамент Песоцкая Елена Старичков Никита 1С, зам.директора по Барышникова Анна Михайловна человеческих ресурсов в проектах Resource Tracking in программной - Юрьевна Юрьевич работе с НИУ малого бизнеса Small Business Projects инженерии 11 Android App for Clients департамент Android-приложение для клиентов Манахов Павел Легалов Александр Белавенцев Валерий Евгеньевич of the "Okna Service" программной д.т.н. профессор, ДПИ, ФКН компании "Окна Сервис" Алексеевич Иванович 12 Company инженерии Web Application for Александров департамент Веб-приложение для верстки и Дударев Виктор Белов Борис Петрович Layout and Internet- Дмитрий программной к.т.н. доцент ДПИ ФКН Интернет-публикации статей Анатольевич 13 Publishing of Articles Владимирович инженерии Client-server Клиент-серверное приложение для Application for Indoor департамент навигации внутри помещения на Салех Хади Манахов Павел Бодюл Владимир - Navigation Based on программной к.т.н. доцент ДПИ ФКН основе дополненной реальности. Мухаммед Алексеевич Augmented Reality. инженерии Веб-приложение 14 Web Application базовая кафедра Software for Automatic "Системное Программа для автоматического Adoption of программировани Турдаков Денис Гринкруг Ефим профессор БК Системное Борисова Александра Андреевна расширения TOSCA оркестратора Deployment Artifacts to е" Института к.т.н. Юрьевич Михайлович программирование за счёт артефактов развёртывания the TOSCA системного Orchestrator программировани 15 я РАН Puzzle Game Using Игра-говололомка с Three-Dimensional департамент использованием трехмерных Ахметсафина Римма Легалов Александр Бурашников Роман Викторович Sections of Four- программной д.т.н. профессор, ДПИ, ФКН сечений четырехмерных объектов в Закиевна Иванович Dimensional Objects in инженерии Unity 16 Unity Performance Evaluation Исследование производительности департамент of Geospatial Raster Родригес Залепинос Жукова Галина Быков Кирилл Валерьевич систем обработки растровых программной к.ф.-м.н. доцент ДПИ ФКН Data Processing Рамон Антонио - Николаевна геоданных инженерии 17 Systems Client-server Web Клиент-серверное веб-приложение Application with со сводкой футбольных новостей и Football News Александров департамент статистикой Белова Наталья Васильев Евгений Михайлович Summary and Game Дмитрий программной к.т.н. доцент ДПИ ФКН Сергеевна Statistics. Frontend and Владимирович инженерии игр. Клиентская часть и модуль Server Authorization авторизации 18 Module Backend of the департамент Серверная часть программной Software System for Паринов Андрей анализа данных и Шилов Валерий Васильев Валерий Максимович системы подбора площадок для к.т.н, с.н.с. ДПИ, профессор Filming Locations Андреевич искусственного Владимирович киносъемок Selection интеллекта 19 Климов Борис Анатольевич, Web Application Based Система сбора статистики и приглашенный департамент on Polyanalyst to Баканов Валерий д.т.н., профессор Васильева Ирина Вадимовна хранения информации о поведении преподаватель, программной профессор ДПИ ФКН Extract Covenants from Михайлович человека в сети Интернет Департамент инженерии Contracts программной 20 инженерии департамент Программа визуализации динамики Cloth Falling Dynamics Ахметсафина Римма Чуйкин Николай Васильева Варвара Андреевна программной - преподаватель ДПИ ФКН падения ткани Visualization Program Закиевна Константинович 21 инженерии High-Immersive департамент Высокоиммерсивный Interactive Tutoring Незнанов Алексей анализа данных и профессор БК Систеиное Веселко Никита Игоревич интерактивный тренажер по химии Гринкруг Е.М. к.т.н. System for Chemistry Андреевич искусственного программировагние и биологии and Biology Classes интеллекта 22 Интерпретатор для приложения Interpreter for департамент «обучение детей Application “Teaching Максименкова Ольга Карсаков Андрей доцент Факультета Ветлин Владислав Сергеевич программной к.т.н. программированию с Kids Programming with Вениаминовна Сергеевич Цифровых Трансформаций инженерии 23 геймификацией» Gamification” Университета ИТМО Комплекс программ Software for Automated автоматизированного тестирования департамент Testing of Mobile Максименкова Ольга Родригес Залепинос Гаврилов Илья Викторович мобильных приложений, программной к.т.н. доцент ДПИ Applications, Integrated Вениаминовна Рамон Антонио интегрированный с плагином инженерии with the Moodle Plugin 24 Moodle Программное средство для WebRTC-based Video департамент Брейман Александр Глущенко Даниил Валерьевич проведения видеоконференций на Conferencing Software программной Салех Х.М. к.т.н. доцент ДПИ ФКН Давидович 25 базе WebRTC Tool инженерии Development of Client- Разработка клиент-серверного server Application for приложения для цветоводов с Старичков Никита базовая кафедра Пантюхин Дмитрий Горелик Леонид Аркадьевич Florists with the Ability - НИУ ВШЭ, ДПИ, ст. преп. возможностью распознавания вида Юрьевич фирмы 1С Валерьевич to Recognize the Type растения по фото of Plant from a Photo 26 департамент Spot the Bot: Identify Максименкова Поймай бота: идентификация Громов Василий анализа данных и научный сотрудник МЛ Гринкевич Татьяна Александровна Texts Generated by Ольга к.т.н. текстов, сгенерированных ботами Александрович искусственного ИССА ФКН Bots Вениаминовна интеллекта 27 департамент Дегтярев University Guide Салех Хади Гудеев Михаил Сергеевич Чатбот-справочник университета программной Константин к.т.н., - Доцент ДПИ Chatbot Мухаммед 28 инженерии Юрьевич департамент Web-приложение для онлайн Web Application for Дударев Виктор Ахметсафина Римма Гурин Семен Борисович программной к.т.н., доцент Доцент ДПИ тестирования Online Testing Анатольевич Закиевна 29 инженерии департамент Online Database Брейман Александр Данилов Алексей Андреевич Онлайн-конструктор баз данных программной Береснева Е.Н. - ст. преп. ДПИ ФКН Designer Давидович 30 инженерии Android приложение для создания Android Application for департамент Макаров Сергей Легалов Александр Двалашвили Торнике Кахаберович календарей с функцией общего Creating Calendars with программной д.т.н. профессор, ДПИ, ФКН Львович Иванович доступа the Sharing Function инженерии 31 Service for Broadcasts Сервис трансляций с аудио- и Александров департамент from Audio and Video Баканов Валерий Демидова Мария Дмитриевна видеостриминговых Дмитрий программной д.т.н., профессор профессор ДПИ ФКН Streaming Platforms.
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