AI Engineer

GitLab GitLab · Enterprise · United States · Enterprise Applications

AI Engineer at GitLab focused on building internal AI-powered solutions for Sales, Marketing, and Customer Support. The role involves diagnosing business problems, owning AI initiatives end-to-end, designing and shipping AI solutions quickly, and integrating AI capabilities into existing systems. Emphasis on practical outcomes, measurable business value, and using AI as a productivity multiplier.

What you'd actually do

  1. Diagnose business problems before building solutions. Map workflows, identify constraints, and confirm whether AI is the right intervention. Be prepared to say "this doesn't need AI" when that's the honest answer.
  2. Own AI initiatives end-to-end, from stakeholder discovery and technical design through implementation, deployment, and iteration.
  3. Design, develop, and ship AI-powered solutions quickly, delivering working prototypes in days, not months, with a focus on practical outcomes and measurable business value.
  4. Improve organizational flow by building solutions that reduce bottlenecks, shorten lead times, and increase throughput. Measure success using flow metrics alongside adoption and ROI.
  5. Integrate AI capabilities into existing systems and workflows using APIs, orchestration tools, and modern AI platforms, including GitLab Duo Agent Platform, where appropriate. The right tool wins, whether that's custom code, a platform, or a well-crafted prompt.

Skills

Required

  • Competent, Confident Coding Skills
  • Strong proficiency in at least one modern scripting language (Python, JavaScript/TypeScript, or similar)
  • solid understanding of REST APIs, GraphQL, and integration patterns
  • Deep, practical experience with modern AI technologies
  • Prompt engineering as a core discipline: designing effective system prompts, managing context windows, structuring multi-turn interactions, evaluating output quality, and iterating systematically on prompt design.
  • Model selection and cost-performance trade-offs: understanding when a smaller fine-tuned model outperforms a general-purpose large one, when RAG is the right architecture versus expanding the context window, and how to make principled decisions about capability versus cost.
  • Agentic architecture patterns: tool use, multi-agent orchestration, human-in-the-loop designs, guardrails, evaluation frameworks, and production-grade reliability patterns.
  • Practical fluency across the LLM ecosystem: hands-on experience

Nice to have

  • Genuinely invested in technology, the foundational and the cutting-edge in equal measure
  • energised by a well-designed API integration as you are by the latest foundation model release
  • reach for the simplest solution that solves the problem well, rather than forcing new technology when proven approaches would do
  • AI is a powerful part of your toolkit, but it sits on top of solid engineering fundamentals, not in place of them.

What the JD emphasized

  • AI Engineer
  • AI-powered solutions
  • AI-first company
  • AI into their daily workflows
  • AI is the right solution
  • AI initiatives
  • AI-powered solutions
  • AI capabilities
  • AI offerings
  • AI & LLM Technical Depth
  • Prompt engineering
  • Agentic architecture patterns

Other signals

  • AI-powered solutions
  • AI-first company
  • internal AI-powered solutions
  • AI is the right solution
  • AI capabilities into existing systems
  • GitLab Duo Agent Platform
  • modern AI platforms
  • foundation model release
  • AI is a powerful part of your toolkit
  • AI & LLM Technical Depth
  • Prompt engineering
  • Model selection and cost-performance trade-offs
  • Agentic architecture patterns