Postdoctoral Scientist – AI & Machine Learning for Predictive Drug Absorption

Pfizer Pfizer · Pharma · CT

Pfizer is seeking a Postdoctoral Scientist to develop and evaluate advanced AI/ML models for predicting oral drug absorption and formulation performance. The role involves building end-to-end ML pipelines, focusing on scalability, interpretability, and translating model outputs into actionable insights for drug development. This is a research-focused position within the healthcare domain.

What you'd actually do

  1. Design, train, and evaluate machine‑learning models for predicting oral drug absorption–related outcomes from high‑dimensional datasets.
  2. Develop end‑to‑end ML pipelines, including data ingestion, feature engineering, model training, validation, and performance benchmarking.
  3. Apply and compare a range of ML approaches, including tree‑based methods, neural networks, surrogate models, probabilistic approaches for uncertainty‑aware prediction.
  4. Focus on model interpretability and explainability, linking learned patterns to scientifically meaningful drivers where possible.
  5. Translate ML outputs into actionable insights for drug development teams, rather than purely academic metrics.

Skills

Required

  • PhD in Machine Learning, Data Science, Applied Mathematics, Computational Sciences, Engineering, Pharmaceutical Sciences, or a closely related quantitative discipline
  • Python and/or R for data analysis and ML development (e.g. scikit-learn, PyTorch, TensorFlow, or similar)
  • Experience working with large, heterogeneous datasets and structured scientific data
  • Ability to collaborate effectively in multidisciplinary research environments

Nice to have

  • Experience applying ML to scientific, pharmaceutical or biomedical, datasets
  • Familiarity with model interpretability, explainable AI, or uncertainty quantification
  • Exposure to mechanistic modelling, including physiologically based pharmacokinetic (PBPK) and physiologically based biopharmaceutics modeling (PBBM), simulation-derived data, or physics-informed / mechanism-informed learning
  • Interest in translating ML models into real-world decision-support tools, rather than purely predictive benchmarks
  • Strong scientific presentation skills

What the JD emphasized

  • PhD in Machine Learning, Data Science, Applied Mathematics, Computational Sciences, Engineering, Pharmaceutical Sciences, or a closely related quantitative discipline.
  • Less than 2 years post-doctoral experience.
  • At least 1 first-author scientific research article in high-quality specialty or general readership journals.

Other signals

  • developing next-generation predictive models
  • building, evaluating, and interpreting advanced machine learning models
  • scalability, interpretability, and real-world applicability
  • explainable modeling approaches
  • translating ML outputs into actionable insights for drug development teams