Discovery AI is NILAB’s core training module designed to help PhD researchers carry out rigorous, data-driven scientific discovery—from extracting meaningful signals in complex data to proposing causal explanations and designing validating experiment
- Date(s)
- February 10, 2026 - March 20, 2026
- Location
- Room: Allstate Software Studio on the 2nd Floor of the Computer Science Building, QUB.
- Time
- 10:00 - 16:00
The Discovery AI module is organised around three connected discovery problems:
- Signature Discovery (Objects): how to discover what to measure—interpretable signatures, biomarkers, phenotypes, and latent states—using classical methods (e.g., PCA/NMF, clustering, feature selection) and modern representation learning (e.g., embeddings, VAEs).
- Causal Discovery (Relations): how to discover how variables relate—recovering plausible causal structure from observational, interventional, and temporal data under explicit assumptions, and understanding what is (and is not) identifiable (e.g., CPDAG/PAG outputs).
- Hypothesis Discovery (Systems): how to discover why the system works—turning signatures and causal graphs into testable mechanistic hypotheses, specifying discriminating predictions, and proposing minimal discriminating experiments within an auditable workflow.
Audience: NILAB PhD students and PhD researchers across the universities.
Duration: 30 hours
Format: concept sessions + practical capstones (code provided; heavy coding not required)
Room: Allstate Software Studio on the 2nd Floor of the Computer Science Building, QUB.
Time: 10am-4pm
Programme:

- Department
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| Name | Professor Hui Wang |
| h.wang@qub.ac.uk |