Senior Staff AI Scientist

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

Seeking a Sr Staff AI Scientist with a strong research background in ML, DL, GANs, NLP, Generative AI, LLMs, and Agentic AI to lead advanced research, design intelligent systems, and translate AI capabilities into business impact within GE Healthcare. Requires PhD/Masters, expertise in AWS Bedrock/SageMaker, and Responsible AI practices.

What you'd actually do

  1. Conduct advanced research in artificial intelligence, with focus areas including machine learning, deep learning, generative AI, large language models, natural language processing, GANs, multimodal AI, and agentic AI systems.
  2. Design, prototype, and validate novel AI algorithms, architectures, and workflows for real-world use cases.
  3. Explore and apply cutting-edge approaches in transformers, fine-tuning, retrieval-augmented generation (RAG), prompt optimization, autonomous agents, multi-agent systems, model alignment, and reasoning frameworks.
  4. Lead experimentation across model training, evaluation, benchmarking, and optimization.
  5. Stay current with emerging AI advances and translate academic research and industry innovation into scalable enterprise solutions.

Skills

Required

  • Machine Learning
  • Deep Learning
  • Generative AI
  • Large Language Models
  • Natural Language Processing
  • Agentic AI / AI Agents
  • AWS Bedrock
  • AWS SageMaker
  • Responsible AI
  • fairness
  • explainability
  • governance
  • bias mitigation
  • transformers
  • fine-tuning
  • retrieval-augmented generation (RAG)
  • prompt optimization
  • autonomous agents
  • multi-agent systems
  • model alignment
  • reasoning frameworks
  • model training
  • evaluation
  • benchmarking
  • optimization
  • supervised learning
  • unsupervised learning
  • reinforcement learning
  • self-supervised learning
  • LLM-powered applications
  • conversational AI
  • summarization systems
  • semantic search
  • knowledge assistants
  • intelligent automation platforms
  • Generative AI applications
  • foundation models
  • text generation
  • image generation
  • code generation
  • synthetic data generation
  • multimodal outputs
  • GAN-based solutions
  • image synthesis
  • anomaly simulation
  • data augmentation
  • task planning
  • tool usage
  • workflow orchestration
  • memory integration
  • decision support
  • model lifecycle management
  • deployment workflows
  • transparency
  • accountability
  • hallucinations
  • model drift
  • adversarial misuse
  • unsafe automation
  • guardrails
  • human-in-the-loop processes
  • data privacy
  • security
  • ethical AI requirements
  • SQL
  • NoSQL
  • database modeling
  • data warehousing
  • data cleaning
  • feature engineering
  • data quality improvement
  • dataset curation
  • annotation strategies
  • enterprise data systems
  • APIs
  • cloud services
  • downstream applications
  • scalability
  • observability
  • reliability
  • security

Nice to have

  • GANs
  • multimodal AI
  • publication record
  • patents
  • technical thought leadership
  • autonomous agents
  • multi-agent systems
  • model alignment
  • reasoning frameworks
  • LLM-powered applications
  • conversational AI
  • summarization systems
  • semantic search
  • knowledge assistants
  • intelligent automation platforms
  • Generative AI applications
  • foundation models
  • text generation
  • image generation
  • code generation
  • synthetic data generation
  • multimodal outputs
  • GAN-based solutions
  • image synthesis
  • anomaly simulation
  • data augmentation
  • task planning
  • tool usage
  • workflow orchestration
  • memory integration
  • decision support
  • model lifecycle management
  • deployment workflows
  • transparency
  • accountability
  • hallucinations
  • model drift
  • adversarial misuse
  • unsafe automation
  • guardrails
  • human-in-the-loop processes
  • data privacy
  • security
  • ethical AI requirements
  • SQL
  • NoSQL
  • database modeling
  • data warehousing
  • data cleaning
  • feature engineering
  • data quality improvement
  • dataset curation
  • annotation strategies
  • enterprise data systems
  • APIs
  • cloud services
  • downstream applications
  • scalability
  • observability
  • reliability
  • security

What the JD emphasized

  • strong research background
  • PhD or master's in computer science
  • Responsible AI
  • proven experience in both scientific research and practical AI solution development
  • strong understanding of Responsible AI

Other signals

  • leading advanced AI research
  • design production-grade intelligent systems
  • translate emerging AI capabilities into real business impact
  • lead experimentation across model training, evaluation, benchmarking, and optimization
  • publish research findings, contribute to patents, or create internal technical thought leadership