Skip to main content
    Back to Programs
    Imperial College London

    Geo-Energy with Machine Learning and Data Science MSc

    Last verified against the official program page on .

    London, GBMScIn-person1 year
    £46,000.00
    Tuition
    over 12mo
    40%
    Acceptance
    of applicants
    90
    Credits
    £90.00
    App fee

    Geo-Energy with Machine Learning and Data Science MSc at Imperial College London is a 90-credit, 1-year, in-person MSc program based in London, GB. Tuition is £46,000.

    About the program

    Covers fundamental processes of subsurface geoscience and engineering, and applies data science, numerical methods, and machine learning to solve problems in the sector including carbon dioxide storage, hydrocarbon recovery, and geothermal energy. Includes core modules on programming, machine learning, geology, geophysics, fluids, geomechanics, and an applied computational or data science project.

    Focus: both

    Your fit

    Match

    Pro users see a 0 to 100 match score personalized to their academic profile, plus a per-component breakdown (major, GPA, tests, work experience, and more).

    Admissions

    Pro

    Unlock full admissions requirements

    GPA thresholds, GRE/TOEFL/IELTS minimums, essay counts, recommendation letters, prerequisites, admissions contacts, and country-specific requirements like APS certification, portfolio submissions, or GATE scores.

    Sign up for 7-day free trial

    Deadlines

    Pro

    Exact application deadlines for each term (Fall, Spring, Summer, Rolling), with priority and final dates where the program distinguishes them.

    Sign up for 7-day free trial

    Standardized tests

    Pro

    Which tests are required, optional, or waived (GRE, GMAT, TOEFL, IELTS, Duolingo), minimum scores including separate verbal / quant sections, and program codes for score reporting.

    Sign up for 7-day free trial

    After the program

    Post-study work rights

    24 months Graduate Route (UK)

    $16,530.00
    Annual living cost

    Application Checklist

    Sign in to track what you need to submit for this program.

    Sign in
    See admits on GradCafe
    Self-reported profiles of past applicants to this program.

    Prerequisites

    Specific coursework this program expects you to have completed: calculus, linear algebra, programming, statistics, and subject-specific prerequisites where applicable.

    Recommendations

    Exact count of letters required, whether academic vs professional references are preferred, and any program-specific guidance on who to ask.

    Essays

    Number of essays required (statement of purpose, personal statement, diversity statement), prompts where the program publishes them, and whether supplemental essays are optional or mandatory.

    Contact

    Direct email and phone for the admissions office handling this program, plus a link to the program-specific inquiry page where available.

    Frequently asked questions

    How much does Geo-Energy with Machine Learning and Data Science MSc at Imperial College London cost?
    The total estimated tuition for Geo-Energy with Machine Learning and Data Science MSc at Imperial College London is £46,000 across 90 required credits.
    Is Geo-Energy with Machine Learning and Data Science MSc at Imperial College London online or in-person?
    Geo-Energy with Machine Learning and Data Science MSc at Imperial College London is offered in-person.
    How long does Geo-Energy with Machine Learning and Data Science MSc at Imperial College London take to complete?
    Geo-Energy with Machine Learning and Data Science MSc at Imperial College London is structured around 1 year and 90 credits.
    What GPA is required for Geo-Energy with Machine Learning and Data Science MSc at Imperial College London?
    Per the program's published guidance: 2:1 honours degree
    How competitive is Geo-Energy with Machine Learning and Data Science MSc at Imperial College London?
    Geo-Energy with Machine Learning and Data Science MSc at Imperial College London reports an acceptance rate of approximately 40%.