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"EPSRC FIBE3 CDT PhD studentship with CamDragon: Data-Intensive AI Thermodynamic Models for Next-Generation Building Decarbonisation"

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EPSRC FIBE3 CDT PhD studentship with CamDragon: Data-Intensive AI Thermodynamic Models for Next-Generation Building Decarbonisation

PhD Student

15 April 2026

Location

Cambridge, UK

University of Cambridge

Type

Fully-funded 1+3 MRes/PhD studentship

Salary

Fully funded (fees + maintenance for home students)

Visa Sponsorship

Limited for international

Required Qualifications

High 2.1/Masters Civil Engineering
Python/MATLAB programming
Data analytics
Numerical modelling
Sensor technologies
Thermodynamics (desirable)
Machine learning (desirable)

Research Areas

AI thermodynamic models
Building decarbonisation
Heat transfer prediction
Energy efficiency
Machine learning
Building physics
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EPSRC FIBE3 CDT PhD studentship with CamDragon: Data-Intensive AI Thermodynamic Models for Next-Generation Building Decarbonisation

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 CamDragon Co. Ltd, a Cambridge-based SME offering engineering consultancy and STEM education and specialising in flood-risk evaluation, geohazard assessment, and sustainable drainage solutions across the UK, China, and Australia.

This research develops a data-intensive, AI-driven framework to optimise built-environment thermodynamics and occupant comfort by creating predictive AI tools for spatiotemporal heat transfer. Machine learning algorithms will identify energy inefficiencies and propose adaptive strategies while combined theoretical and empirical approaches enhance wellbeing and reduce carbon emissions.

Project objectives

  • Construct AI algorithms employing advanced thermodynamic and machine learning models to forecast and visualize heat flow and occupant comfort metrics.
  • Identify key drivers of energy inefficiency, including occupant behaviour patterns and physical heat loss hotspots.
  • Formulate and validate AI-driven control strategies that optimise comfort and carbon reduction.
  • Assess heat pump readiness and propose targeted interventions to facilitate low-carbon retrofits.
  • Produce guidelines for scalable, data-rich design and operation frameworks within diverse building contexts.

For project-specific enquiries please e-mail Prof. Dongfang Liang, dl359@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) a high 2.1 degree preferably at Masters level in Civil Engineering, skills in data analytics and programming skills (Python, MATLAB), excellent communication and ability to integrate numerical modelling, sensor technologies, and occupant-focused design. Experience in thermodynamics, building physics, or machine learning is desirable. Familiarity with energy systems or HVAC design is advantageous.

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 course code EGEGR3 with Project: Data-Intensive AI Thermodynamic Models for Next-Generation Building Decarbonisation with Prof Dongfang Liang. Please note that there is a £20 application fee.

Early applications are strongly encouraged as an offer may be made before the stated deadline.

The University actively supports equality, diversity and inclusion and encourages applications from all sections of society.

Key information

Department/location: Department of Engineering

Reference: NM48018

Category: Studentships

Date published: 20 November 2025

Closing date: 15 April 2026

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Frequently Asked Questions

🎓What qualifications are required for this PhD studentship?

Applicants need a high 2.1 degree, preferably Masters level in Civil Engineering. Essential skills include data analytics, programming (Python, MATLAB), excellent communication, and ability to integrate numerical modelling, sensor technologies, and occupant-focused design. Desirable: thermodynamics, building physics, machine learning, energy systems or HVAC. See academic CV tips. PhD preparation aligns with academic careers.

📝How do I apply for this position?

Apply online via University of Cambridge Applicant Portal: https://www.postgraduate.study.cam.ac.uk/courses/directory/egegpdfib. Use course code EGEGR3 with project: Data-Intensive AI Thermodynamic Models for Next-Generation Building Decarbonisation with Prof Dongfang Liang. £20 application fee. Early applications encouraged. Research application tips.

💰Is funding available and who is eligible?

Fully-funded studentships (fees and maintenance) for home students. Limited funding for international students considered later. Check eligibility: UKRI, Cambridge fees, Cambridge Trust. Funded by EPSRC FIBE3 CDT and CamDragon.

🔬What are the project objectives?

Develop data-intensive AI framework for built-environment thermodynamics and occupant comfort. Key goals:
  • AI algorithms for heat flow forecasting/visualization
  • Identify energy inefficiency drivers (occupant behaviour, heat loss)
  • Validate AI-driven control strategies for comfort/carbon reduction
  • Assess heat pump readiness
  • Guidelines for scalable design/operation
Aligns with research roles.

📧Who to contact for enquiries?

Project enquiries: Prof. Dongfang Liang (dl359@cam.ac.uk). General: cdtcivil-courseadmin@eng.cam.ac.uk. CDT details: FIBE3 CDT site. Explore similar research jobs.

What is the duration and structure?

Four-year (1+3 MRes/PhD) studentship through Cambridge EPSRC FIBE3 CDT. Collaboration with CamDragon SME on flood-risk, geohazards, sustainable drainage.
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