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"EPSRC FIBE3 CDT PhD studentship with Network Rail: A Generative AI Framework for Optimising Capital Allocation in Track Asset Renewal Specifications"

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EPSRC FIBE3 CDT PhD studentship with Network Rail: A Generative AI Framework for Optimising Capital Allocation in Track Asset Renewal Specifications

PhD Studentship

15 April 2026

Location

Cambridge

University of Cambridge

Type

Fully-funded 1+3 MRes/PhD Studentship

Required Qualifications

High 2.1 degree (preferably Masters) in Engineering, Data Science, or Applied Mathematics
Strong computational skills

Research Areas

Generative AI
Large Language Models (LLMs)
Graph Neural Networks
Multi-Objective Optimization
Digital Twins
Railway Track Renewal
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EPSRC FIBE3 CDT PhD studentship with Network Rail: A Generative AI Framework for Optimising Capital Allocation in Track Asset Renewal Specifications

EPSRC FIBE3 CDT PhD studentship with Network Rail: A Generative AI Framework for Optimising Capital Allocation in Track Asset Renewal Specifications

This is a four-year (1+3 MRes/PhD) studentship funded through the Cambridge EPSRC Centre for Doctoral Training in Future Infrastructure and Built Environment: Unlocking Net Zero (FIBE3 CDT). Further details can be found at https://www.net-zero-fibe-cdt.eng.cam.ac.uk/

The project is funded in collaboration with Network Rail, the entity responsible for the operation and maintenance of the Great Britain's railway infrastructure, with an extensive network spanning thousands of miles and its complex web of tracks, stations, signalling systems and more, and is fully committed to advancing research and innovation in the field of infrastructure and built environment to enhance efficiency, safety and sustainability.

As we navigate 2026, the global rail industry faces a systemic paradox: an unprecedented abundance of sensor data juxtaposed against rapidly aging infrastructure and increasingly constrained capital budgets. Traditional track renewal specifications remain siloed and manual, often failing to account for the non-linear impacts of climate resilience, carbon efficiency, and long-term lifecycle costs. To maintain a sustainable network, we must transcend "predictive" maintenance-which merely forecasts failure-and move toward "prescriptive" asset management.

This project aims to develop a pioneering Generative AI framework designed to autonomously synthesize and optimize capital investment strategies. By leveraging Large Language Models (LLMs) and Graph Neural Networks, the candidate will create a system capable of interpreting complex engineering standards, historical maintenance logs, and real-time telemetry to generate high-fidelity renewal specifications.

The core of the research will focus on:

  • Multi-Objective Optimization: Balancing immediate structural necessity with 30-year carbon targets and budgetary ceilings.
  • Generative Policy Design: Using AI to "draft" investment scenarios that traditionally take months of manual cross-referencing.
  • Digital Twin Integration: Linking generative outputs with live physics-based models to validate the structural viability of AI-proposed specifications.

This project offers a unique opportunity to work at the intersection of the University of Cambridge's Department of Engineering, ensuring your research has a direct pathway to industrial adoption and policy influence.

For project-specific enquiries please e-mail Professor Mark Girolami (mag92@cam.ac.uk). For general enquiries, please email cdtcivil-courseadmin@eng.cam.ac.uk.

Applicants should have (or expect to obtain by the start date) at least a high 2.1 degree preferably at Masters level in Engineering, Data Science, or Applied Mathematics. Candidates are expected to possess strong computational skills and a desire to apply cutting-edge AI to the physical world's most pressing "Grand Challenges".

Fully-funded studentships (fees and maintenance) are only available for eligible home students in the first instance. A limited number of international students can be considered for funding at a later stage in the recruitment process. Further details about eligibility and funding can be found at: https://www.ukri.org/councils/esrc/career-and-skills-development/funding-for-postgraduate-training/eligibility-for-studentship-funding/ https://www.postgraduate.study.cam.ac.uk/finance/fees https://www.cambridgetrust.org/scholarships/

Applications should be made online via the University of Cambridge Applicant Portal: https://www.postgraduate.study.cam.ac.uk/courses/directory/egegpdfib stating project title and supervisors name. Please note there is a £20 application fee. Early applications are strongly encouraged as an offer may be made before the stated deadline.

The University has a responsibility to ensure that all employees are eligible to live and work in the UK.

Key information

Department/location: Department of Engineering

Reference: NM48875

Category: Studentships

Date published: 18 February 2026

Closing date: 15 April 2026

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Frequently Asked Questions

🎓What are the eligibility requirements for this PhD studentship?

Applicants must have (or expect) a high 2.1 degree, preferably at Masters level, in Engineering, Data Science, or Applied Mathematics. Strong computational skills and interest in Generative AI for infrastructure challenges are essential. Fully-funded for eligible home students; limited international funding. Check eligibility at UKRI guidelines or explore scholarships.

📝How do I apply for this Generative AI PhD studentship in Cambridge?

Apply online via the University of Cambridge Applicant Portal, stating the project title and supervisor (Professor Mark Girolami). Include a £20 fee. Early applications encouraged before 15 April 2026. Visit research jobs for similar opportunities.

🔬What is the research focus of this railway track renewal PhD project?

Develop a Generative AI framework using LLMs and Graph Neural Networks to optimize capital allocation for track asset renewal. Key areas: multi-objective optimization (carbon, budget, resilience), generative policy design, and digital twin integration with Network Rail data. Ideal for AI in infrastructure. See research jobs in engineering.

💰What funding is available for this EPSRC FIBE3 CDT PhD?

Fully-funded fees and maintenance for eligible home students via EPSRC FIBE3 CDT and Network Rail. Limited international funding considered later. Details at Cambridge fees and Cambridge Trust scholarships. Explore scholarships.

📧Who should I contact for enquiries about this PhD studentship?

For project-specific queries, email Professor Mark Girolami at mag92@cam.ac.uk. General enquiries to cdtcivil-courseadmin@eng.cam.ac.uk. More on FIBE3 CDT at net-zero-fibe-cdt. Check research role advice.

🌍Is visa sponsorship available for international applicants?

Funding prioritizes home students; limited for internationals later in process. University ensures UK work eligibility. Review UKRI eligibility. See scholarships for international options.
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