Postdoctoral Fellow in AI/ML Applications for Vaccine Research & Development
Pfizer is a leading pharmaceutical company dedicated to delivering breakthroughs that transform patients' lives. They are seeking a Postdoctoral Fellow in AI/ML Applications for Vaccine Research & Development to develop advanced AI and machine learning models for pneumococcal conjugate vaccines, collaborate with multidisciplinary teams, and publish scientific findings.
Responsibilities
- Develop advanced AI and machine learning models, including transformer architectures and graph neural networks, to represent molecular features and predict immunogenicity of pneumococcal conjugate vaccines using preclinical and clinical data
- Apply transfer learning to translate predictive models from preclinical to clinical domains and utilize interpretation frameworks (such as SHAP) to identify key molecular motifs for rational vaccine design
- Conduct meta-analyses of large-scale immunogenicity datasets to characterize quantitative relationships between vaccine physical parameters and immunogenicity outcomes
- Harmonize and curate preclinical and clinical datasets to support robust statistical and machine learning analyses
- Engage in active collaboration with multidisciplinary teams, encompassing experts in data science, preclinical analysis, and clinical vaccine research, to advance pneumococcal conjugate vaccines development
- Publish impactful scientific findings while safeguarding confidential data, ensuring clear, transparent reporting of methods and results to facilitate reproducibility and recognition in peer-reviewed journals and conferences
Skills
- Ph.D. in Computational Biology, Bioinformatics, Computer Science, Immunology, or a related field
- Successful record of scientific accomplishments evidenced by scientific publications and/or presentations with at least one first-author publication in a peer-reviewed journal
- No more than 2 years of post-degree experience
- Willingness to make a minimum 2-year commitment
- Demonstrated expertise in machine learning and deep learning, with hands-on experience in developing and validating predictive models for biological or biomedical data
- Proficiency in Python and relevant AI Machine Learning frameworks (e.g., PyTorch, TensorFlow, scikit-learn). Experience with statistical modeling, including regression analysis and mixed-effects models
- Solid understanding of immunology, especially vaccine immunogenicity and conjugate vaccine design
- Strong data management and curation skills, including harmonization of heterogeneous biological datasets
- Excellent scientific communication skills, with a track record of peer-reviewed publications or presentations. Ability to work across computational and wet‑lab teams, distill complex results for diverse stakeholders
- Prior experience applying graph neural networks, transformer models, or cross-attention mechanisms to biological sequence or molecular structure data
- Familiarity with glycan-focused modeling and representation, including encoding of polysaccharide and protein carrier features
- Experience in translational research bridging preclinical and clinical datasets, especially in vaccine development
- Knowledge of SHAP or similar model interpretation frameworks for feature attribution in complex models
- Hands-on experience with ensemble modeling and transfer learning in biomedical contexts
- Collaborative experience with experimental biologists and vaccine R&D teams
- Familiarity with regulatory and translational aspects of vaccine development
Benefits
- 401(k) plan with Pfizer Matching Contributions
- Additional Pfizer Retirement Savings Contribution
- Paid vacation
- Holiday and personal days
- Paid caregiver/parental and medical leave
- Health benefits to include medical, prescription drug, dental and vision coverage
Company Overview
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