A focused online event for applying AI to metascience—the study and improvement of how science is done.
Aims
- Clarify AI vs. LLMs and where each fits in metascience.
- Enable ethical, transparent, and effective AI use.
- Provide practical methods for coding, data extraction, and analysis.
- Reduce duplication, improve coordination, and build capacity for funding calls.
Who should attend
- Metascience researchers, methodologists, meta‑research students/postdocs, research software engineers, librarians/information specialists, editors, and research integrity/ethics leads.
Scope
- Plenary: AI capabilities, limits, and evaluation for metascience.
- Workflow: From literature to dataset—deduplication, entity resolution, provenance.
- LLMs in practice: Screening and data extraction with audit trails.
- Beyond LLMs: Retrieval, weak supervision, and classical ML for study classification.
- Reproducible pipelines: Containers, workflow orchestration, and transparency by design.