Principal Architect Genai and ML Ops

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

GE HealthCare is seeking a Principal Architect GenAI and ML Ops to operationalize advanced ML and GenAI solutions. This role involves designing, delivering, and maintaining robust development and deployment pipelines for AI applications across various business domains. The individual will integrate GenAI capabilities into business workflows, optimize infrastructure, and mentor teams on best practices. Experience in MLOps, GenAI operations, software development, and AI architecture is required, with a focus on scalable, reliable, and secure deployment.

What you'd actually do

  1. Develop and operationalize ML and GenAI pipelines to enable scalable, reliable, and secure deployment of AI models across GE HealthCare’s enterprise landscape.
  2. Automate model lifecycle management, including model versioning, continuous integration (CI/CD), testing, deployment, observability and monitoring, and governance in alignment with enterprise standards.
  3. Partner with IT and cloud teams to optimize infrastructure for AI workloads across hybrid and multi-cloud environments (AWS, Azure)
  4. Collaborate with cross-functional teams — including data scientists, software engineers, architects, and domain experts — to ensure smooth end-to-end delivery of AI solutions.
  5. Integrate Generative AI capabilities (e.g., LLMs, multimodal models) into business workflows, enhancing automation, productivity, and decision intelligence.

Skills

Required

  • MLOps / GenAIOps tools and frameworks
  • Python
  • cloud platforms (AWS, Azure)
  • open-source data science tools
  • containerization, CI/CD, and DevOps practices
  • data preprocessing
  • feature engineering
  • model evaluation
  • LLMs and generative AI models
  • cloud architecture design
  • API development and orchestration frameworks

Nice to have

  • vector databases
  • retrieval-augmented generation (RAG) pipelines
  • LLM prompt engineering
  • LangChain architecture
  • multi-agent or distributed AI ecosystems
  • LangChain
  • MLflow
  • Kubeflow
  • MS Copilot
  • OpenAi Agent Builder
  • SageMaker
  • Bedrock
  • LangSmith
  • LangGraph
  • Jupyter
  • SQL
  • Hadoop
  • Spark
  • TensorFlow
  • Keras
  • PyTorch
  • Scikit-learn
  • Docker
  • Kubernetes
  • GitHub Actions
  • Jenkins
  • AWS
  • Azure
  • GCP
  • Pinecone
  • FAISS
  • Milvus

What the JD emphasized

  • 10+ years of hands-on experience
  • translate research and prototypes into scalable enterprise-grade solutions

Other signals

  • operationalizing advanced Machine Learning and Generative AI solutions
  • design, deliver, and maintain robust development and deployment pipelines
  • integrate Generative AI capabilities into business workflows