Principal Scientist, Data Science (data Products, Integration & Analysis)

Johnson & Johnson Johnson & Johnson · Pharma · Spring House, PA +7

The Principal Scientific Data Scientist will lead the design, implementation, and evolution of scientific data products and integration strategies supporting AI-enabled drug discovery and development. This role focuses on creating scalable, interoperable, and AI-ready data products across the drug discovery lifecycle, enabling advanced analytics, knowledge graphs, and agentic AI applications. Key responsibilities include defining data product strategy, integration architecture, digital platform leadership on AWS, data product development (curated datasets, feature stores, metadata), data quality, and building predictive AIML models for translational safety.

What you'd actually do

  1. Define and execute a scientific data product strategy supporting: Discovery Research, Translational Science, Preclinical Safety, Clinical Development, Pharmacovigilance, Real-World Evidence
  2. Design integration frameworks connecting heterogeneous scientific data sources.
  3. Define the implementation strategy for scientific data products deployed on AWS
  4. In collaboration with Data Strategy group, lead design and implementation of: Curated datasets, Semantic-ready data products, Feature stores, Metadata products, Scientific data services, AI-ready data assets
  5. Build predictive AIML models to support translational safety decision making.

Skills

Required

  • Master’s or PhD in Computer Science, Data Engineering, Bioinformatics, Biomedical Informatics, Information Systems, Computational Biology, or Related scientific discipline
  • 5+ years of experience in scientific data engineering, data architecture, data products, or life sciences informatics
  • Demonstrated experience designing and delivering enterprise-scale scientific data products
  • Experience supporting drug discovery, development, clinical research, or pharmacovigilance organizations
  • Experience developing predictive AIML models

Nice to have

  • Knowledge graphs
  • GraphRAG
  • AWS
  • SEND
  • SDTM
  • ADaM
  • MedDRA
  • Imaging
  • Omics
  • Biomarker
  • Pathology
  • Real-world data

What the JD emphasized

  • AI-enabled drug discovery and development
  • AI-ready data products
  • agentic AI applications
  • predictive AIML models

Other signals

  • AI-enabled drug discovery
  • AI-ready data products
  • semantic reasoning
  • knowledge graphs
  • GraphRAG
  • agentic AI applications
  • predictive AIML models