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Environmental Analytics and Management 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

    15-SEP-25

  • Duration

    1 Year

Course summary

The big challenge at the core of the global effort to fight climate change is the ability to measure and regularly monitor climate actions taken by governments and businesses, and evaluate their outcomes.

MSc Environmental Analytics and Management is one-of-a-kind programme designed for students with a strong quantitative background who want to develop a deep understanding of climate and environmental change, related risks, mitigation strategies, and policies through the application of economic fundamentals, artificial intelligence, and big data.

Gain a deep understanding of the nature of climate and environmental change.

Learn advanced data analytics skills including AI, econometrics and networks analysis.

Learn to work with big data and complex global datasets.

Leverage solutions and ideas seamlessly from across disciplines, bridge and integrate data across spatial and time scales.

Develop the capability to design effective forms of interventions with the help of quantitative analysis and behavioural economics.

What you'll study

The end goal of this course is to train dynamic and creative future managers, researchers in AI for sustainability and AI for climate change, public policy practitioners, financial sector professionals and prospective PhD students. 

You will come to understand the complexity of climate change and the associated trade-offs. 

You will master the use of AI and big data to identify trends and dynamics of fundamental aspects of climate change, such as the environmental risks organisations are exposed to, the quality of natural capital, GHG emissions, and diffusion of best management practices, behaviours and policy. 

Assessment

Assessment methods include academic coursework and examinations, as well as short class presentations, analyses of data, short written exercises and group work.

Career paths

Graduates from this programme will have developed a range of cognitive and practical skills together which will be applicable to different contexts beyond academia. Graduates will be well placed to pursue roles in environmental research and consulting in a variety of industries. This course could lead you to specialised roles such as ESG manager, researcher in AI for sustainability, researcher in AI for climate change, public policy practitioner in climate change and sustainability, and financial sector analyst in ESG.

Application deadline

08/09/2025

Tuition fees

Students living in Hong Kong
(International fees)

£ 33,500per 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

    50th

  • Campus address

    Queen Mary University of London, Admissions and Recruitment Office, Mile End Road, London, Tower Hamlets, E1 4NS, England

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

    31st out of 73 4

    26th out of 87 37

  • Entry standards

    / Max 211
    131 62%

    37th

  • Graduate prospects

    / Max 100
    73.0 73%

    44th

    8
  • Student satisfaction

    / Max 4
    2.89 72%

    67th

    2
  • Entry standards

    / Max 204
    160 79%

    10th

  • Graduate prospects

    / Max 100
    63.0 63%

    68th

    4
  • Student satisfaction

    / Max 4
    3.00 75%

    54th

    26

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