Sr. Principal Scientist, Spatial Omics

Johnson & Johnson Johnson & Johnson · Pharma · Cambridge, MA +2

Senior Principal Scientist role focused on applying and developing AI/ML frameworks for multimodal biological datasets, including spatial omics, genomics, transcriptomics, proteomics, and metabolomics. The role involves designing and building ML-based and agent-based models to simulate biological dynamics, integrating mechanistic models with AI, and contributing to the data and modeling architecture for large-scale ML training. The position emphasizes scientific leadership and innovation in computational biology for therapeutic discovery.

What you'd actually do

  1. Develop and apply state‑of‑the‑art AI/ML, statistical, and computational frameworks to analyze genomics, transcriptomics, proteomics, metabolomics, single‑cell, and multi‑omics datasets.
  2. Lead the design and execution of spatial omics analyses at massive scale, integrating imaging‑based, sequencing‑based, and multiplexed spatial platforms to uncover tissue architecture, cellular neighborhoods, and microenvironmental dynamics.
  3. Build scalable pipelines to preprocess, QC, harmonize, and integrate terabyte‑ to petabyte‑scale spatial omics datasets, enabling discovery‑ready data layers and advanced modeling.
  4. Deploy, adapt and develop agent‑based models (ABM) to simulate cellular interactions, tissue‑level organization, and dynamic biological processes, incorporating outputs from multimodal omics and spatial measurements.
  5. Fuse mechanistic models with ML/AI frameworks to generate hybrid predictive systems for target discovery, perturbation response, and disease progression modeling.

Skills

Required

  • AI/ML
  • statistical modeling
  • computational frameworks
  • genomics
  • transcriptomics
  • proteomics
  • metabolomics
  • single-cell data analysis
  • multi-omics data integration
  • spatial omics analysis
  • imaging data analysis
  • sequencing data analysis
  • data preprocessing
  • data quality control
  • data harmonization
  • large-scale data integration
  • agent-based modeling (ABM)
  • mechanistic modeling
  • predictive modeling
  • deep learning
  • generative models
  • graph neural networks
  • causal inference
  • scalable algorithm design
  • high-dimensional data analysis
  • multimodal data integration
  • cloud-native workflows
  • scientific leadership
  • cross-disciplinary collaboration

Nice to have

  • systems biology
  • computational modeling
  • platform development
  • data engineering
  • infrastructure optimization
  • biomarker development
  • target discovery
  • patient stratification

What the JD emphasized

  • high-impact individual contributor
  • scientific thought leader
  • advanced computational innovation
  • machine learning
  • systems biology
  • spatial genomics
  • computational modeling
  • analytical breakthroughs
  • transform how biological complexity is understood
  • therapeutic discovery
  • independently design, build, and apply cutting‑edge AI/ML frameworks
  • spatial omics disease and normal maps
  • orthogonal genomics, transcriptomics, proteomics, metabolomics, and single‑cell data
  • develop and deploy ML-based and/or agent‑based models (ABM)
  • simulate cellular, tissue‑level, and microenvironmental dynamics
  • mechanistic predictions and hypothesis generation
  • augment experimental biology
  • bridge predictive, generative, and mechanistic modeling
  • unified computational layer
  • drives discovery across therapeutic areas
  • mission‑critical role
  • shaping the Multi-omics computational ecosystem
  • map, influence, and guide the evolution of the data and modeling architecture
  • collaborating closely with data engineering, platform, and scientific partners
  • infrastructure, pipelines, and data standards are optimized
  • next‑generation omics
  • high‑dimensional analytics
  • large‑scale ML training
  • architectural guidance
  • scalable, reproducible, cloud‑native workflows
  • support both routine and exploratory science
  • recognized expert in the field
  • exert scientific leadership through influence
  • advising teams
  • championing best practices
  • shaping strategic priorities
  • representing computational innovation internally and externally
  • accelerate target discovery
  • deepen mechanistic understanding
  • refine patient stratification
  • guide biomarker development
  • shaping portfolio decisions and scientific strategy
  • thrives on scientific depth
  • architectural thinking
  • cross‑disciplinary problem‑solving
  • intellectual independence
  • push the boundaries of what is computationally and biologically possible
  • state‑of‑the‑art AI/ML
  • massive scale
  • terabyte‑ to petabyte‑scale
  • agent‑based models (ABM)
  • hybrid predictive systems
  • novel ML architectures
  • deep learning
  • generative models
  • graph neural networks
  • causal inference frameworks
  • tailored for biological complexity
  • high‑dimensional, multimodal integration
  • prototype and benchmark cutting‑edge computational approaches
  • pushing the frontier of in silico biological inference

Other signals

  • AI/ML frameworks
  • spatial omics
  • computational modeling
  • agent-based models
  • multi-omics integration
  • large-scale ML training