Senior Cloud and AI Integration Engineer

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

Seeking a Senior Cloud and AI Integration Engineer with expertise in cloud-native development, microservices, and DevOps to integrate AI capabilities into applications. This role focuses on building orchestration layers, context providers, and MCP servers for AI integration, not on model building or hosting. Experience with LLMs, RAG, and Agentic AI is required, with a strong plus for healthcare systems experience.

What you'd actually do

  1. Implement context providers, adapters, and orchestration layers that enable reliable interactions between applications and AI models.
  2. Develop pipelines for prompt engineering, context retrieval, tool invocation, rate limiting, and response orchestration.
  3. Integrate with hosted AI platforms to operationalize AI‑driven features.
  4. Implement guardrails, validation, monitoring, and safety measures to ensure responsible AI usage
  5. Design and build MCP (Model Context Protocol) servers and supporting components to integrate enterprise systems, data sources, and workflows with LLMs.

Skills

Required

  • Cloud platforms such as AWS, Azure, or GCP
  • Microservices architecture
  • Docker and Kubernetes
  • CI/CD pipelines
  • Infrastructure as Code using Terraform, Pulumi, or native cloud frameworks
  • LLMs, RAG, and Agentic AI concepts
  • AI-based workflow integration including prompting, grounding, and orchestration

Nice to have

  • Master’s degree in Data Science fields
  • Experience integrating Generative AI features into production systems.
  • Experience in healthcare or medical technology domains.
  • Understanding of DICOM standards or imaging workflows.
  • Building server components or integration layers, including protocol‑based services such as MCP servers

What the JD emphasized

  • not on building, deploying, or hosting AI models
  • working knowledge of (2+ years working experience)
  • LLMs, RAG, and Agentic AI concepts
  • AI-based workflow integration including prompting, grounding, and orchestration

Other signals

  • integrating AI capabilities into applications
  • building MCP (Model Context Protocol) servers, context providers, and orchestration layers
  • not on building, deploying, or hosting AI models
  • working knowledge of Generative AI concepts (LLMs, RAG, Agentic AI) to build and automate intelligent workflows