Applied Data Scientist, Health AI Evaluation & Datasets
This position is listed on behalf of a partner company, who manages all applications and next steps. Our partner is looking for an Applied Data Scientist, Health AI Evaluation & Datasets based in the United States.
This role sits at the intersection of clinical expertise, data science, and cutting-edge AI evaluation, focusing on building trustworthy datasets for healthcare generative AI systems. You will design and validate the data foundations that power high-stakes models used in clinical, payer, pharmaceutical, and patient-facing environments. Working in a multidisciplinary team alongside engineers, researchers, and clinical experts, you will translate complex healthcare workflows into structured, measurable datasets and rigorous evaluation frameworks. This is a highly impactful position where your work directly influences the safety, accuracy, and reliability of health AI systems operating at scale. The environment is fast-moving, collaborative, and deeply focused on clinical realism, regulatory alignment, and measurable model performance.
This position is listed on behalf of a partner company, who manages all applications and next steps. Our partner is looking for an Applied Data Scientist, Health AI Evaluation & Datasets based in the United States.
This role sits at the intersection of clinical expertise, data science, and cutting-edge AI evaluation, focusing on building trustworthy datasets for healthcare generative AI systems. You will design and validate the data foundations that power high-stakes models used in clinical, payer, pharmaceutical, and patient-facing environments. Working in a multidisciplinary team alongside engineers, researchers, and clinical experts, you will translate complex healthcare workflows into structured, measurable datasets and rigorous evaluation frameworks. This is a highly impactful position where your work directly influences the safety, accuracy, and reliability of health AI systems operating at scale. The environment is fast-moving, collaborative, and deeply focused on clinical realism, regulatory alignment, and measurable model performance.
Accountabilities
- Design, define, and operationalize high-quality healthcare datasets used for training, fine-tuning, and evaluating generative and multimodal AI systems across clinical and life sciences domains.
- Translate complex healthcare objectives such as diagnosis support, medical summarization, RAG-based retrieval, and patient communication into structured dataset specifications, labeling schemas, and evaluation rubrics.
- Develop clinically grounded evaluation frameworks that measure model performance across safety, accuracy, faithfulness, guideline adherence, and workflow relevance.
- Design multimodal datasets spanning clinical notes, imaging, structured EHR data, claims, literature, and patient-provider communications while ensuring clinical validity and statistical rigor.
- Define sampling strategies, annotation guidelines, SME review workflows, inter-annotator agreement standards, and quality assurance processes for healthcare datasets.
- Build statistical and ML-based quality checks including bias analysis, subgroup performance evaluation, leakage detection, and dataset reliability metrics.
- Collaborate with engineers and research scientists to integrate datasets into evaluation pipelines, including LLM-as-judge systems, benchmarking frameworks, and model comparison workflows.
- Ensure data governance, compliance, and auditability across PHI-sensitive workflows, including de-identification, provenance tracking, and version control.
- Evaluate model behavior beyond accuracy, including calibration, hallucination risk, safety-critical failure modes, and fairness across patient populations.
- Support client-facing discussions by translating technical methodology into clear, defensible explanations for clinical and ML stakeholders.
- Contribute to reusable internal assets such as taxonomies, rubrics, evaluation templates, and gold-standard datasets.
- 5+ years of experience in data science, including at least 2+ years working directly with healthcare, biomedical, clinical, payer, pharma, or life sciences data.
- Strong understanding of healthcare data systems and standards, including EHR structures and clinical coding systems such as ICD-10, CPT, SNOMED CT, LOINC, and RxNorm.
- Proven experience designing and building ML datasets, including annotation guidelines, sampling strategies, QA processes, and dataset validation frameworks.
- Hands-on experience with LLM-based AI workflows, including evaluation design, prompt engineering, retrieval-augmented systems, and rubric-based assessment methods.
- Strong programming skills in Python and SQL, with familiarity in tools such as pandas, scikit-learn, statsmodels, and modern ML/LLM ecosystems.
- Solid statistical background covering sampling methods, bias and fairness analysis, inter-annotator agreement, hypothesis testing, and uncertainty estimation.
- Deep understanding of healthcare privacy and compliance frameworks such as HIPAA, de-identification methodologies, and secure handling of sensitive data.
- Ability to collaborate effectively with clinicians, engineers, researchers, and business stakeholders in complex, cross-functional environments.
- Strong communication skills with the ability to translate clinical and technical complexity into actionable insights and structured evaluation frameworks.
- Advanced degree in a relevant field (biostatistics, epidemiology, health informatics, data science, computer science, or related discipline) or equivalent experience; clinical backgrounds (MD, RN, PharmD, MPH, PhD) are a strong advantage.
- Competitive annual salary ranging from $150,000 to $175,000 USD, based on experience and qualifications.
- Fully remote work opportunity across the United States.
- Opportunity to work on high-impact healthcare AI systems used across clinical, payer, and life sciences domains.
- Collaborative environment working alongside leading experts in AI, clinical science, and data engineering.
- Exposure to cutting-edge generative AI, evaluation frameworks, and multimodal dataset development.
- Professional growth in a rapidly evolving field at the intersection of healthcare and artificial intelligence.
- Support for continuous learning in advanced ML, healthcare data systems, and AI evaluation methodologies.
Requirements
Benefits