Julia Handl
Top university
4 months ago
Explainable AI for Passenger Flow and Commercial Decision-Making in Complex Airport Systems The University of Manchester in United Kingdom
Degree Level
PhD
Field of study
Computer Science
Funding
Funded PhD Project (Students Worldwide)
Deadline
Expired
Country
United Kingdom
University
The University of Manchester

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Where to contact
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About this position
This PhD project at The University of Manchester focuses on advancing artificial intelligence (AI) methods for learning from multi-modal spatio-temporal data, particularly in contexts where uncertainty, sparsity, and heterogeneity challenge traditional approaches. The research aims to develop unified, interpretable frameworks that integrate diverse data types—such as spatial-temporal trajectories, multi-variate time series, and contextual information—to generate reliable insights and predictions. Key modelling paradigms to be explored include probabilistic deep learning, representation learning, and graph neural networks, with a strong emphasis on quantifying and explaining uncertainty to ensure outputs are transparent and actionable.
The project is closely partnered with Manchester Airports Group (MAG), providing access to rich, multi-source, industry-scale datasets and opportunities to validate models in collaboration with domain experts. The ideal candidate will have a first-class degree or distinction MSc in computer science, data science, statistics, geospatial science, management science, or engineering, along with skills in Python or R, machine learning (especially unsupervised and probabilistic methods), and an interest in applied optimisation and simulation. Strong communication skills are essential for working with industry partners and translating technical results into actionable insights.
The position is fully funded through the AI UKRI CDT 4-year program, covering home tuition fees and offering a tax-free stipend at the UKRI rate (£20,780 for 2025/26). The start date is September 2026. Applicants are encouraged to apply via the University of Manchester Application Portal, specifying the project and supervisor, and providing all required documents including transcripts, CV, supporting statement, and referee contact details.
The university is committed to equality, diversity, and inclusion, welcoming applicants from all backgrounds and offering flexible study options, including part-time. For further information, prospective students may contact Dr AH Hassanzadeh at [email protected].
Funding details
Funded PhD Project (Students Worldwide)
What's required
Applicants should hold a first-class degree or distinction MSc in computer science, data science, statistics, geospatial science, management science, or engineering. Required skills include proficiency in Python or R, experience with machine learning (especially unsupervised and probabilistic methods), and an interest in applied optimisation and simulation. Good communication skills are necessary to collaborate with industry partners and translate technical results into actionable insights. Applicants must submit a final transcript and certificates of all awarded university-level qualifications, interim transcript of any qualifications in progress, CV, a supporting statement outlining motivation and relevant experience, and contact details for two referees (with official university/work email addresses). An English Language Certificate is required if applicable.
How to apply
Apply through the University of Manchester Application Portal under 'PhD in Artificial Intelligence'. Specify the full project name, supervisor, previous study details, and contact details for two referees. Upload all required supporting documents including transcripts, CV, supporting statement, and English language certificate if applicable. Incomplete applications will not be considered.
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