GE HealthCare

Cloud and AI Integration Engineer

GE HealthCare  •  Bengaluru, IN (Onsite)  •  2 months ago
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Job Description

We are seeking a Software Engineer with strong expertise in cloud‑native development, microservices architecture, and software system design. The ideal candidate has strong programming skills, experience with modern DevOps practices, and working knowledge of Generative AI concepts (LLMs, RAG, Agentic AI) to build and automate intelligent workflows. This role focuses on integrating AI capabilities into applications—including building MCP (Model Context Protocol) servers, context providers, and orchestration layers—not on building, deploying, or hosting AI models. Experience with DICOM or healthcare systems is a strong plus.

Key Responsibilities

Cloud‑Native & Backend Engineering

  • Design, develop, and maintain scalable microservices‑based applications on a major cloud provider.

  • Develop backend services with clean, maintainable, testable code.

  • Ensure availability, resiliency, scalability, performance, and observability across services.

  • Contribute to system architecture including service decomposition, data flows, and integration patterns.

  • Apply distributed systems best practices including fault tolerance, idempotency, caching, and asynchronous or event‑driven patterns.

  • Promote cloud‑first and API‑first architectural principles.

  • Participate in design reviews and provide technical leadership on architecture decisions.

DevOps, Platform & Infrastructure as Code

  • Implement Infrastructure as Code (IaC) using tools such as Terraform, Pulumi, or native cloud frameworks.

  • Develop and maintain CI/CD pipelines for automated build, test, security scanning, and deployment.

  • Use Docker and Kubernetes for containerization and orchestration.

  • Build and deploy services using compute, storage, networking, and data services from any major cloud provider.

AI Integration (MCP & Orchestration)

  • Implement context providers, adapters, and orchestration layers that enable reliable interactions between applications and AI models.

  • Develop pipelines for prompt engineering, context retrieval, tool invocation, rate limiting, and response orchestration.

  • Integrate with hosted AI platforms to operationalize AI‑driven features.

  • Implement guardrails, validation, monitoring, and safety measures to ensure responsible AI usage

  • Design and build MCP (Model Context Protocol) servers and supporting components to integrate enterprise systems, data sources, and workflows with LLMs.

Collaboration & Compliance

  • Collaborate effectively with frontend engineers and understand how backend services integrate with TypeScript‑based UI components.

  • Work with Data Science, Applied AI, Platform, and Product teams to deliver end‑to‑end features.

  • Ensure secure and compliant handling of sensitive healthcare data when applicable.

  • Translate business requirements into scalable technical implementations.

  • Participate in code reviews, quality practices, and continuous improvement.

Required Qualifications

  • Bachelor’s or Master’s degree in Computer Science, Engineering, or a related field.

  • 5+ years of experience building cloud‑native applications.

  • Hands‑on experience with:

    • 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

  • Strong understanding of software architecture and distributed systems.

  • Working knowledge of (2+ years of working experience):

    • LLMs, RAG, and Agentic AI concepts

    • AI‑based workflow integration including prompting, grounding, and orchestration

Preferred Qualifications

  • 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

Key Competencies

  • Strong architectural thinking and systems problem‑solving.

  • Ability to design and build scalable cloud‑native systems with operational excellence.

  • Curiosity and adaptability with emerging AI technologies and patterns.

  • Excellent debugging and troubleshooting skills across distributed systems.

  • Effective communication and collaboration across cross‑functional teams.

Additional Information

Relocation Assistance Provided: Yes

GE HealthCare

About GE HealthCare

Every day millions of people feel the impact of our intelligent devices, advanced analytics and artificial intelligence. As a leading global medical technology and digital solutions innovator, GE HealthCare enables clinicians to make faster, more informed decisions through intelligent devices, data analytics, applications and services, supported by its Edison intelligence platform.

With over 100 years of healthcare industry experience and around 50,000 employees globally, the company operates at the center of an ecosystem working toward precision health, digitizing healthcare, helping drive productivity and improve outcomes for patients, providers, health systems and researchers around the world.

We embrace a culture of respect, transparency, integrity and diversity and we work to create a world where healthcare has no limits.

Industry
Healthcare & Social Services
Company Size
10,000+ employees
Headquarters
Chicago
Year Founded
1892
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