Clinical Data Scientist
emagine Polska
⚲ Copenhagen
Wymagania
- GitHub
- Data analysis
- Quality Assurance (QA)
- Machine Learning (ML)
- strategy
- Operations
- SQL
- Python
- Agile
- DevOps
Opis stanowiska
We are seeking a highly skilled Clinical Data Scientist to join our team as a full-time consultant. You will combine deep clinical data expertise with pragmatic data engineering and analytic skills to generate actionable insights that inform clinical strategy and trial design. You will collaborate closely with clinical SMEs, biostatisticians, data scientists, medical experts, and engineers. Main Responsibilities As a Clinical Data Scientist, your core duties will include: • Execute exploratory and confirmatory analyses on clinical trial and real-world datasets to inform clinical strategy and trial design. • Design and implement complex data analysis plans and translate analyses into clear, actionable recommendations for clinical and product stakeholders. • Rapidly prototype Minimum Viable Products (MVPs) and analytical workflows using agile practices and DevOps principles to iterate with users. • Define cohorts, design subpopulation analyses, and perform robust quality assurance on outcomes and derived datasets. • Ensure clinical concepts are correctly represented and harmonized across data models (CDISC SDTM/ADaM, OMOP, HL7); contribute to mapping and transformation logic. • Produce reproducible code and well-documented workflows in Python, R, and SQL; collaborate with engineering to operationalize analyses on Databricks or similar platforms. • Present findings and recommendations to stakeholders with clarity, tailoring communications to varying levels of data literacy. Key Requirements • 3–5 years of hands-on experience working with clinical trial and/or real-world clinical datasets (EHRs, registries, claims). • Strong applied experience in data analysis and reporting using Python, R, and SQL; production-ready, reproducible, and documented code. • Experience with Statistical Modeling, Machine Learning, and Deep Learning. • Familiarity with clinical data standards and transformations: CDISC (SDTM, ADaM), OMOP, and HL7. • Experience with data standards mapping, CDISC implementations, or clinical trial design/operations. • Experience with GitHub and Databricks or similar enterprise data platforms for scalable analytics and collaboration. • Demonstrable experience defining cohorts, performing subpopulation/stratified analyses, and establishing QA checks for analytical outputs. • Comfortable working with imperfect, heterogeneous clinical data and pragmatic about delivering timely, high-quality insights. • Strong problem-solving skills, critical thinking, and meticulous attention to detail. • Excellent verbal and written communication skills; able to convey complex analyses to clinical, technical, and product audiences. • Results-oriented with strong ownership, learning agility, and collaborative mindset.