Environmental Data Science and Analytics MSc

Year of entry

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Start date
September 2026
Delivery type
On campus
Duration
12 months full time
Entry requirements
A bachelor degree with a 2:1 (hons)
Full entry requirements
English language requirements
IELTS 6.5 overall, with no less than 6.0 in any component
UK fees
£14,250 (Total)
International fees
£33,250 (Total)

Course overview

Image of students using the Data science helix computer cluster

As global discussions are increasingly focused on the environment and sustainability, the need to understand and interpret both built and natural environmental data is more crucial than ever. Governments, organisations, and industries across the world are seeking individuals who can leverage data to make informed, sustainable decisions.

Our Environmental Data Science and Analytics MSc is designed to give you a fuller understanding of data and what appropriate interpretation and insight generation means in various environmental contexts. Throughout, you'll develop a broad understanding of environmental issues and how data driven analysis can help address these.

You’ll build the skills needed to analyse, understand, interpret and visualise complex environmental data; generating insights that address real-world environmental challenges. You’ll apply techniques from data science including environmental modelling, machine learning, visualisation and data curation to environmental data, with a focus on analysis through programming.

Here at Leeds, you’ll have the opportunity to learn from leading researchers in the field, with input from the School of Geography and the School of Earth and Environment.

By the end of the course, you’ll be equipped with the specialist knowledge and skills that are sought after across multiple industries, especially those dealing with large scale environmental data to address the needs of society.

Why study at Leeds:

  • Our globally-renowned research from the School of Geography, School of Earth and Environment and the Leeds Institute for Data Analytics, the national institute for data science and artificial intelligence feeds into the course, shaping your learning with the latest thinking in environmental data science and analytics.
  • Advance your skills and knowledge in areas such as environmental policies, programming for data science, machine learning, AI, satellite technology and interpreting large hyperdimensional data.
  • Tailor the course to suit your career aspirations with a selection of optional modules in areas like web-based GIS, GIS and environment and digital image processing for environmental remote sensing.
  • Conduct your own project work which will enable you to develop transferable skills as a researcher, investigating a real-world issue that explores and develops your interests.
  • Access specialist facilities which will complement your learning including laboratories and an excellent GIS computer cluster with industry-standard software.
  • Experience expert theoretical and practical teaching delivered by a programme team of academics who are actively engaged in ground-breaking research in the School of Geography and the School of Earth and Environment.
  • Put theory into practice with exciting fieldwork opportunities, allowing you to develop the understanding and skills in data acquisition and deployment of sensors to collect environmental data.

Related course

Urban Data Science and Analytics MSc

This Masters degree is a great fit for students interested in urban processes and using data-driven solutions to provide insight for future planning and policies. Like our Environmental Data Science and Analytics MSc, you’ll build key skills in data wrangling, machine learning, data analysis, visualisation and creative coding – but with a specialised focus surrounding an urban context.

Guaranteed work experience

While studying at Leeds, you’ll have the chance to work with a business and gain consultancy experience as part of a 2-week virtual Global Industry Programme.

As well as giving you the opportunity to build key industry connections, you’ll also develop invaluable professional and practical skills that are highly valued by employers.

Course details and modules

The course is designed to give you an understanding of the end-to-end workflow of data in an environmental context, allowing the nuances of how and why data from the environment is collected, and the need for appropriate analysis for policy and management relevant insights.

The course has a particular focus on the data science and analytic techniques, giving you the skills to apply them to complex environmental issues – allowing you to gain in-depth specialist knowledge needed to ensure that data-driven environmental decisions are based on accurate, reliable and correctly interpreted data. A multitude of environmental data, and its specific context and form, is considered and worked with to give a breadth of experience necessary to derive insights and solutions creatively to real world problems.

You'll take compulsory modules that are designed to progressively include more programming and data science, moving from fundamental knowledge to application of skills in a creative manner.

On completion of the course, you'll be able to demonstrate in-depth data science techniques to environmental data, with understanding of the data context allowing for sophisticated insight generation that is appropriate to inform decision making in multiple scenarios. The combination of relevant data science techniques to environmental data and understanding of environmental science context will allow you to demonstrate an ability to generate creative solutions, alongside insights.

Course Structure

The list shown below represents typical modules/components studied and may change from time to time. Read more in our terms and conditions.

Most courses consist of compulsory and optional modules. There may be some optional modules omitted below. This is because we assess the content of the programme regularly and occasionally add more optional modules to make sure students have the best possible experience. Before you enter each year, full details of all modules for that year will be provided.

Compulsory modules

Programming for Spatial Data Science – 15 credits

Build your foundational programming skills using Python, with a specific focus on the challenges and opportunities of working with spatial data. This module is designed for those with no prior programming experience, providing the key skills to confidently manipulate spatial data, conduct reproducible scientific analysis, and create effective data visualisations and maps. Beyond the coding fundamentals, you’ll develop an understanding of professional software development practices and the ethical considerations of using spatial data, ensuring your technical skills are grounded in a robust research context.

Skills for Environmental Data Scientists – 15 credits

Equip yourself with the essential practical skills that form the foundation of any environmental data project. You'll get to grips with the initial stages of the data science workflow, from structuring a project and designing effective sampling strategies to sourcing high-quality data and academic evidence. This culminates in a hands-on residential field course where you will deploy environmental sensors, troubleshoot real-world challenges, and collect your own data.

Data to Insights in Multiple Environments – 15 credits

This module challenges you to move from data collection to insight generation by applying your analytical skills to diverse and complex environmental contexts, including deep sea, freshwater, and agricultural systems. Through hands-on programming and statistical analysis, you will learn to select the most appropriate data science techniques for a specific challenge, transforming complex datasets into actionable insights. The focus is on critical thinking and tailoring your analytical approach, ensuring the methods you apply are directly relevant to the unique data challenges and scientific questions posed by each environment.

Data Science for Practical Applications – 15 credits

Gain experience and acquire foundational knowledge in data science. From being introduced to concepts in data handling, exploratory data analysis, to machine learning and visualisation. You'll have opportunities to work with a variety of spatial and spatiotemporal datasets relating to practical problems in the real world, including multiple environments.

Creative Coding for Real World Problems – 15 credits

This will be your chance to enhance your creativity and develop your technical skills in relation to variety of mixed environments. You’ll work in groups to derive solutions that are novel and insightful through application of programming skills.

Machine Learning for Environmental Data – 15 credits

Following on from Data to Insights in Multiple Environments in semester 1, here we continue to investigate the use of specialised data science and machine learning techniques in the analysis of environmental data in a broader context, incluing socio-environmental and ethics. Focusing on how techniques from machine learning can be utilised for a context specific analysis for large scale problems, you'll learn the fundamentals of machine learning and the applications across multiple environments.

Environmental Data Science Project – 60 credits

This project will take the place of the traditional dissertation. Your project submission is designed to reflect the types of data science outputs you might encounter in your future career in the form of a ‘notebook’-style analysis and an associated practical briefing report. This brings together skills in data science and programming, and meaningful insight generation that can be used to inform decision making in multiple contexts, including influencing policy.

Optional modules

Please note: The modules listed below are indicative of typical options.

GIS and Environment – 15 credits

We give you the opportunity to explore the diverse applications of GIS in environmental studies, including terrain modelling, hydrology analysis, ecological studies, and land use mapping. The module covers issues in the application of GIS such as sampling strategies, scale, generalisation, error and uncertainty, and grid-based modelling before looking at how you can use these methods to understand landscape processes. By the end of this module, you'll gain skills in utilising ArcGIS and other GIS software packages and interpreting spatial environmental data.

Digital Image Processing for Environmental Remote Sensing – 15 credits

This exciting module will introduce you to the fundamental principles of satellite image acquisition, processing, and interpretation as well as concepts, theories, and methods of earth observation from aircraft and earth orbital satellites for environmental research. You’ll learn how to use appropriate software to read, display, restore, enhance, classify and extract information about the land surface from diverse types of remote sensing images. You'll also be able to explain and perform the standard workflow used to turn remote sensing data (i.e. images) into information (i.e. thematic outputs) in a range of applications. Upon successful completion of this module, you'll be able to use digital technology and techniques to create classified images and understand the sources of digital environmental data.

Environmental Assessment – 15 credits

Discover the principles and practice of environmental assessment, emphasising tools that are applied to infrastructure and development plans. Following an initial focus on Environmental Impact Assessment, you'll be taught how to use other widely used tools, including Strategic Environmental Appraisal, Environmental Risk Assessment, Multi-Criteria Appraisal, and Environmental Justice Appraisal. Enabling you to gain familiarity with the tools used in professional practice, this module will develop your understanding of how activities ranging from numerical modelling to public participation are used to support decision making.

Web-Based GIS – 15 credits

We will provide you with the technical skills required to build web-based mapping applications. The module will introduce industry-standard web-development technologies for data storage, manipulation, visualisation, and analysis including HTML, Javascript and CSS, client-side mapping libraries, database management systems and server-side technologies. This module focuses on developing your skill set through plenty of hands-on practical coding tasks. You'll then get the opportunity to build a web-based GIS application of your choice for your final project. Through this module, you'll gain transferable skills in web development and database management, along with enhanced abilities in effective database and file management and developing secure and efficient code.

Fieldwork

Fieldwork provides a great opportunity to study a fascinating subject in contrasting environments away from the University. On this course, we offer the opportunity to undertake fieldwork as part of the Data to Insights in Multiple Environments module, in the UK, to develop your understanding and skills in data acquisition and deployment of sensors to collect environmental data.

In addition, you can also opt to conduct fieldwork as part of your dissertation. An increased understanding of how and why data is collected will allow for enhanced context appropriate interpretation of analysis that results from data.

For more information and a full list of typical modules available on this course, please read Environmental Data Science and Analytics MSc in the course catalogue

Learning and teaching

The course is designed to develop both your practical skills in data science and develop a deeper understanding of environmental issues and contexts from which data is derived. This course takes a problem-based learning approach – presenting real-world problems where you must use your growing skills and knowledge to develop creative solutions. This is embodied using practical sessions, individual and group, where you’ll practice skills; reducing the number of modules that are purely lecture based. Datasets used are sourced from leading researchers in the field, or from industry, reflecting a variety of data types and contexts.

A combination of face-to-face learning in a variety of learning environments such as practical labs, lectures, seminars, and group working are used alongside digital platforms to enhance and scaffold learning.

Active research environment

You'll be taught by an experienced team of academics and researchers who are actively engaged in cutting-edge research and part of the Centre for Spatial Analysis and Policy, River Basin Processes and Management, and Ecology and Global Change research groups within the School of Geography, School of Earth and Environment.

Specialist facilities

You'll have access to excellent teaching facilities within the School of Geography, including a GIS computer cluster with industry-standard software.

Programme team

On this course, you’ll be taught by our expert academics, from lecturers through to professors. You may also be taught by industry professionals with years of experience, as well as trained postgraduate researchers, connecting you to some of the brightest minds on campus.

Assessment

The course is designed to assess you through the application of your data science skills within the context of environment problems; namely this is through the writing of code and analysis and interpretation of findings, with a focus on insight generation. To replicate the type of work graduates from this course are expected to encounter, assessments will be both individual and group based, with the interpretation taking forms such as briefing documents, panel presentations, and executive summaries.

Assessments will capture your ability to conduct in-depth enquiries using data science, within the context of complex environmental problems and challenges.

Applying

Entry requirements

A bachelor degree with a 2:1 (hons) in a subject including, but not limited to, physical geography, environmental science, natural sciences or related discipline that can evidence quantitative and/or computing skills.

Alternative subjects which may be considered include, but are not limited to, engineering, mathematics, human geography, geology, water resources engineering or management, physics, computer science or a related discipline.

All applicants should possess an interest in using data science to understand the natural environment and address environmental issues.

Applicants with a 2:2 (hons) will be considered on a case-by-case basis where they can demonstrate relevant work experience or competence in a relevant specialist field.

Professional qualifications and relevant experience can also be considered.

International

We accept a range of international equivalent qualifications. For more information, please contact the Admissions Team.

English language requirements

IELTS 6.5 overall, with no less than 6.0 in any component. For other English qualifications, read English language equivalent qualifications.

Improve your English

International students who do not meet the English language requirements for this programme may be able to study our postgraduate pre-sessional English course, to help improve your English language level.

This pre-sessional course is designed with a progression route to your degree programme and you’ll learn academic English in the context of your subject area. To find out more, read Language for Science (6 weeks) and Language for Science: General Science (10 weeks)

We also offer online pre-sessionals alongside our on-campus pre-sessionals. Find out more about our six week online pre-sessional and our 10 week online pre-sessional

You can also study pre-sessionals for longer periods – read about our postgraduate pre-sessional English courses.

How to apply

Application deadlines

Please read our How to Apply page for full details, including application deadlines and what to include with your application.

Applicants are encouraged to apply as early as possible.

31 July 2026 – International applicants

11 September 2026 – UK applicants

Click below to access the University’s online application system and find out more about the application process.

If you're still unsure about the application process, contact the admissions team for help.

Read about visas, immigration and other information in International students. We recommend that international students apply as early as possible to ensure that they have time to apply for their visa.

Admissions policy

University of Leeds Admissions Policy 2026

This course is taught by

School of Geography

Contact us

School of Geography Postgraduate Admissions Team

Email: geo-tpg-enq@leeds.ac.uk

Fees

UK: £14,250 (Total)

International: £33,250 (Total)

Read more about paying fees and charges.

For fees information for international taught postgraduate students, read Masters fees.

Additional cost information

Standard travel, subsistence and accommodation costs associated with compulsory field trips are covered by the University. However, you must pay for incidental or personal expenses such as suitable clothing and footwear.

There may be additional costs related to your course or programme of study, or related to being a student at the University of Leeds. Read more on our living costs and budgeting page.

Scholarships and financial support

If you have the talent and drive, we want you to be able to study with us, whatever your financial circumstances. There may be help for students in the form of loans and non-repayable grants from the University and from the government.  Find out more at Masters funding overview.

Career opportunities

The specific environmental context of the course allows you to enter specialised careers that require a contextual understanding of data and context from the environmental domain, including environmental consultancies, transport, engineering, utilities (e.g. water, energy, renewables) and government agencies.

More widely, the course will equip you with data science and analytical skills that are vital to many industries across the globe. Growth in the data science field is only increasing, with the number of opportunities growing year on year, from positions in local authorities and governments, industry (e.g. finance, telecoms), NGOs; wherever there is a need for data scientist or data analyst.

Plus, University of Leeds students are among the top 5 most targeted by top employers according to The Graduate Market 2024, High Fliers Research, meaning our graduates are highly sought after by some of the most reputable companies in the field.

Careers support

At Leeds, we help you to prepare for your future from day one — that’s one of the reasons Leeds graduates are so sought after by employers. The University’s Careers Centre is one of the largest in the country, providing a wide range of resources to ensure you are prepared to take your next steps after graduation and get you where you want to be.

  • Dedicated Employability Officer — gain quality advice, guidance and information to help you choose a career path. From CV and cover letter writing to supporting you with job applications, our School’s dedicated Employability Enhancement Officer is on hand to help maximise your capabilities through a process of personal development and career planning.
  • Employability and networking events — we run a full range of events, including careers fairs in specialist areas and across broader industries, with employers who are actively recruiting for roles, giving you the opportunity to network with industry sponsors. 
  • MyCareer system — on your course and after you graduate, you’ll have access to a dedicated careers portal where you can book appointments with our team, get information on careers and see job vacancies and upcoming events.
  • Opportunities at Leeds — there are plenty of exciting opportunities offered by our Leeds University Union, including volunteering and over 300 clubs and societies to get involved in.

Find out more at the Careers website.