Ai-accelerated Full Stack Software Development Engineer

Ford Ford · Auto · Dearborn, MI +1 · Enterprise Technology

This role is for a Full Stack Software Development Engineer at Ford who will use AI to accelerate the software development lifecycle (SDLC) across vehicle engineering and product development. The engineer will design, build, and maintain secure and scalable web applications using Angular and GCP, applying AI-assisted development practices to improve productivity, code quality, and delivery speed. The role involves integrating applications with AI services, LLMs, and retrieval systems, and contributing to reusable AI platform capabilities.

What you'd actually do

  1. Design, develop, test, and maintain full stack web applications using Angular, modern backend services, APIs, and cloud-native technologies on GCP.
  2. Use AI coding assistants and generative AI tools to accelerate software development, refactoring, debugging, documentation, and code reviews.
  3. Build, deploy, and support applications using Google Cloud Platform services and cloud-native architecture patterns.
  4. Help build and enhance AI-enabled applications that support Ford Product Development teams across electrical, software, and vehicle systems domains.
  5. Work closely with product owners, designers, data scientists, software engineers, DevOps engineers, and business stakeholders.

Skills

Required

  • Angular
  • TypeScript
  • HTML
  • CSS/SCSS
  • backend services development
  • API development
  • cloud-native technologies
  • Google Cloud Platform (GCP)
  • secure application development
  • scalable application development
  • reliable application development
  • observable application development
  • maintainable application development
  • CI/CD pipelines
  • automated testing
  • containerization
  • infrastructure automation
  • cloud security best practices
  • identity and access management
  • secrets management
  • network controls
  • data protection
  • LLMs
  • AI APIs
  • retrieval systems
  • vector databases
  • prompt templates
  • AI service wrappers
  • evaluation workflows
  • telemetry
  • feedback loops
  • low-code AI capabilities
  • self-service AI capabilities
  • retrieval-augmented generation
  • agentic workflows
  • Model Context Protocol
  • Agent-to-Agent integration
  • Agile methodologies
  • product owners collaboration
  • designers collaboration
  • data scientists collaboration
  • software engineers collaboration
  • DevOps engineers collaboration
  • business stakeholders collaboration

Nice to have

  • AI coding assistants
  • generative AI tools

What the JD emphasized

  • 7+ years of professional software development experience
  • 7+ years of experience building modern web applications using Angular, TypeScript, HTML, CSS/SCSS, and modern frontend engineering practices

Other signals

  • AI-assisted development practices
  • transform early-stage AI prototypes into secure, production-ready enterprise applications
  • integrate applications with LLMs, AI APIs, retrieval systems, vector databases
  • support low-code or self-service AI capabilities