Mengyan Zhang

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Research Directions

🩺 AI for Science: Sequential Decision Making for Infectious Disease

Our research in this area focuses on adaptive AI systems that can learn and act in complex scientific and epidemiological settings.
Current directions include:

  • 🌍 Spatiotemporal forecasting and resource allocation for healthcare and epidemic response
  • 📈 Nowcasting and forecasting of epidemic trajectories using dynamic data
  • 🔄 Non-stationary decision making for evolving spatial–temporal signals
  • 🧩 Sequential disease surveillance and control through reinforcement learning

🎯 Causal Decision Making in Human Health

We explore how causal inference and decision theory can be combined to design data-driven, interpretable, and personalized interventions.
Wearable technologies such as smartwatches provide a promising testbed for causal decision-making frameworks.


🤖 Foundation Models for Epidemiology and Adaptive Inference

This direction focuses on developing and applying foundation models for epidemiological forecasting and decision support.
Research emphasises how large, pretrained models can be adaptively fine-tuned or updated at test time to improve robustness and generalization under data drift and uncertainty.

  • 🧠 Epidemiology foundation models for spatial–temporal health forecasting and intervention planning
  • ⚙️ Test-time adaptive inference and fine-tuning for rapidly evolving data environments

Reaching Out

If you are interested in the research directions above, please email me (mengyan.zhang@bristol.ac.uk) with [PhD Application] in the subject line and

  • your CV and transcript
  • a short paragraph about your research experience and interests in the email body
  • any additional materials to support your application

PhD Opportunities

Fully funded PhD opportunities are available:

I am also willing to be a secondary supervisor for PhD students in related areas.

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