Senior Staff AI Scientist

GE Healthcare GE Healthcare · Healthcare · Bengaluru, Karnātaka, India · Digital Technology / IT

Senior Staff AI Scientist at GE Healthcare in Bengaluru, India, focusing on research and leadership in medical imaging and Physical AI. The role involves defining research vision, architecting state-of-the-art systems, and translating AI research into regulated, commercially deployed healthcare solutions. Requires deep expertise in learning from real-world data, physical signals, foundation models, and multimodal healthcare systems, with a strong publication and patent record. The candidate will mentor scientists, influence product roadmaps, and ensure AI systems are safe, robust, and compliant in regulated healthcare environments.

What you'd actually do

  1. Define and own the long-term research vision for medical image analysis, Physical AI–enabled imaging systems, foundation models, and multimodal healthcare AI across clinical domains.
  2. Architect and lead the development of state-of-the-art detection, segmentation, classification, reconstruction, and quantitative imaging systems, incorporating physics-aware modeling, spatiotemporal reasoning, and sensor-informed learning, deployed in real clinical workflows.
  3. Partner deeply with clinicians, radiologists, pathologists, imaging scientists, and regulatory stakeholders to formulate AI problem statements grounded in clinical workflows and physical realities of imaging systems.
  4. Guide AI solutions through clinical validation, regulatory pathways, and real-world deployment, ensuring safety, robustness to physical variability, and compliance with regulated healthcare environments.
  5. Consistently publish in top-tier venues (e.g., MICCAI, CVPR, NeurIPS, TMI, MedIA, Radiology AI, Nature family journals), including work that bridges learning-based AI with physical modeling and real-world systems.

Skills

Required

  • PhD-trained AI scientist with 5–8+ years of post-PhD experience
  • Deep expertise in learning from real-world data and physical signals
  • Strong publication and patent record
  • Proven experience translating AI research into regulated, commercially deployed healthcare solutions
  • Deep mastery of deep learning frameworks (PyTorch preferred)
  • Large-scale training, fine-tuning, optimization, and deployment
  • Advanced expertise in medical image analysis across 2D/3D/4D imaging and multimodal MRI/CT/PET/X-ray/Ultrasound
  • Physics-informed ML, simulation-based learning, spatiotemporal modeling, sensor fusion, and uncertainty-aware inference
  • MLOps, experiment tracking, reproducibility

Nice to have

  • technical authority and research leader
  • mentoring senior scientists
  • influencing product and clinical roadmaps
  • bridging algorithmic innovation with physical systems
  • robust performance under real-world variability and operational constraints
  • collaboration with clinicians, engineers, and product teams
  • MONAI, SimpleITK, OpenCV, and related tools
  • Vision and multimodal foundation models
  • Self-, weakly-, and semi-supervised learning at scale
  • Domain adaptation and generalization across institutions and devices
  • federated learning
  • AI safety in healthcare

What the JD emphasized

  • driving cutting-edge medical imaging and Physical AI research from conception to real-world clinical deployment
  • shaping AI strategy across imaging, embodied and physics-aware AI, foundation models, and multimodal healthcare systems
  • translating AI research into regulated, commercially deployed healthcare solutions
  • proven experience translating AI research into regulated, commercially deployed healthcare solutions
  • accounting for physical robustness, safety, reliability, and regulatory requirements
  • compliance with regulated healthcare environments
  • regulatory requirements
  • regulatory science

Other signals

  • driving cutting-edge medical imaging and Physical AI research from conception to real-world clinical deployment
  • shaping AI strategy across imaging, embodied and physics-aware AI, foundation models, and multimodal healthcare systems
  • translating AI research into regulated, commercially deployed healthcare solutions
  • partner deeply with clinicians, radiologists, pathologists, imaging scientists, and regulatory stakeholders
  • guide AI solutions through clinical validation, regulatory pathways, and real-world deployment