Наши Cookies

Мы используем cookies, чтобы обеспечить вам лучший опыт работы с сайтом за счет персонализированного контента, релевантной рекламы и расширенных функций. Нажав «разрешить все», вы соглашаетесь на использование cookies в соответствии с политикой использования cookies. Вы сможете изменить свое решение в любой момент.

Что я буду изучать?

Why choose this course?

Data Science is one of the most rapidly expanding areas of employment globally, due to rapid and ongoing developments in computer systems and data gathering. Large data sets are widespread in business, science and government.

This course builds on the established strengths of the Mathematics and Computer Science programmes and develops a multidisciplinary approach to the computational analysis of data. Contemporary society faces new challenges in the analysis of data, predictive analytics in support of decision making processes that are both mathematical and computational. There is an increasing demand for data-savvy professionals both in industry and in research who are able make sense of large amounts of data and apply it to the solution of relevant problems.

This course offers postgraduates with some background in computing, mathematics, or data-based investigation the opportunity to develop their skills in a way which will prepare them for careers in this fast-growing and exciting area which spans virtually all areas of commerce and industry as well as scientific research, and involves working with individuals and organisations to extract value from the ever-increasing volume of data that is available.

What you will study

The multidisciplinary nature of data science is reflected in this MSc programme through the careful combination of modules in data management, analysis, modelling, visualisation and artificial intelligence (AI), which are taught by a cross-disciplinary team whose expertise encompasses mathematics, statistics, AI and machine learning, information management, and user experience design.

For a student to go on placement they are required to pass every module first time with no reassessments. It is the responsibility of individual students to find a suitable paid placement. Students will be supported by our dedicated placement team in securing this opportunity.

Careers and recruitment advice

The Faculty of Science, Engineering and Computing has a specialist employability team. It provides friendly and high-quality careers and recruitment guidance, including advice and sessions on job-seeking skills such as CV preparation, application forms and interview techniques. Specific advice is also available for international students about the UK job market and employers' expectations and requirements.

The team runs employer events throughout the year, including job fairs, key speakers from industry and interviews on campus. These events give you the opportunity to hear from, and network with, employers in an informal setting.

На каком факультете я буду учиться?

Department of Computer Science

Варианты обучения

Очная (2 лет)

Цена
£15,900.00 (1,117,358 руб) за 1 год
£1,420 placement year. The mentioned placement year fee is for 2021-22. There may be slightly increase in 2022-2023.

Это фиксированная стоимость
Начало обучения

26 Сентябрь 2022, 9 Январь 2023

Где

Penrhyn Road Campus

Penrhyn Road,

Kingston upon Thames,

London,

KT1 2EE, England

Очная (1 год)

Цена
£15,900.00 (1,117,358 руб) за 1 год
Это фиксированная стоимость
Начало обучения

26 Сентябрь 2022, 9 Январь 2023

Где

Penrhyn Road Campus

Penrhyn Road,

Kingston upon Thames,

London,

KT1 2EE, England

Вступительные требования

Для студентов, проживающих в Соединенных Штатах

Students must need 3.0 grade point average, with the following exception for the Faculty of Science Engineering and Computing, a bachelors degree with a good grade point average in relevant subjects. For certain courses work experience will also be required. For MBA students need to have Bachelors degree with a 3.0 grade point average with two years' work experience. IELTS score 6.5 overall and 5.5 in all elements, TOEFL Score 88.

Для иностранных студентов

A 2.2 or above honours degree in a subject with relevant computing science and mathematics/statistics content. Typical appropriate first degree subjects would include: computer science (including software engineering or cyber security), mathematics, statistics, and some engineering courses. IELTS academic test in English with an overall score of 6.5, with no element below 6.0, TOEFL IBT with overall score of 88 with individual skills of R=22, L=21, S=23, W=22.

Требования к IELTS могут отличаться в зависимости от выбранного курса

ДОБАВИТЬ В ШОРТ-ЛИСТ

Оставайтесь на связи