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Machine Learning for Visual Data Analytics MSc

Queen Mary University of London

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Course options

  • Qualification

    MSc - Master of Science

  • Location

    Main Site

  • Study mode

    Full time

  • Start date

    SEP

  • Duration

    1 Year

Course summary

As recent developments in computers and sensors make the generation, storage and processing of visual data easier, methods that enable a machine to analyse and understand images and videos become increasingly relevant. The advances in this field are behind Google's autonomous vehicles, Meta's image analysis technologies and car plate recognition systems.This programme is designed to train engineers to work in the analysis and interpretation of images and video.Undertake high-level training in programming languages, tools and methods necessary for the design and implementation of practical computer vision systems.Be taught by world-class researchers in the fields of multimedia analysis, vision-based surveillance, structure from motion and human motion analysis.Work on cutting-edge research projects, gaining hands-on experience.What you'll studyThis course will enable students to study cutting-edge technologies in the field of machine learning for visual analytics, and will provide them with the background and skills they need to pursue careers in research or industry. Course content covers:Fundamental methods and techniques in computer vision, machine learning and image processing.Programming tools, languages and techniques for the application of machine learning methods to analyse visual data.Methods and techniques for systems and applications.The programme is taught by academics from the Computer Vision and Multimedia and Vision research groups. The groups consist of a team of more than 100 researchers (academics, post-docs, research fellows and PhD students) performing world-leading research into the fields of surveillance, face and gesture recognition, multimedia indexing and retrieval and robotics.The School has collaborations, partnerships, industrial placement schemes and public engagement programmes with organisations including Vodafone, Google, IBM, BT, NASA, BBC and Microsoft.This degree is accredited by BCS, The Chartered Institute for IT, for the purposes of partially meeting the academic requirement for registration as a Chartered IT Professional. This degree is also accredited by BCS on behalf of the Engineering Council, for the purposes of partially meeting the academic requirement for registration as a Chartered Engineer.

Application deadline

08/09/2025

Tuition fees

Students living in United States
(International fees)

£ 29,950per year

Tuition fees shown are for indicative purposes and may vary. Please check with the institution for most up to date details.

University information

Queen Mary University of London

Queen Mary University of London

  • University League Table

    41st

  • Campus address

    Queen Mary University of London, Mile End Road, London, Tower Hamlets, E1 4NS, United Kingdom

Students can experience campus life while living in London, the best student city in the world.
Research at Queen Mary is world-leading across disciplines, with its academics making a major impact across all subject areas.
Queen Mary is truly inclusive, with multiple nationalities represented on its campuses.

Subject rankings

  • Subject ranking

    21st out of 90 5

  • Entry standards

    / Max 211
    160 76%

    8th

  • Graduate prospects

    / Max 100
    62.0 62%

    68th

  • Student satisfaction

    / Max 4
    3.03 76%

    58th

    4

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