Director, It Engineering - End User Support

NVIDIA NVIDIA · Semiconductors · Cambridge, MA, United Kingdom +1

NVIDIA is seeking an engineering leader to drive the evolution of employee digital interaction across EMEA, focusing on integrating agentic AI into IT support workflows. The role involves leading a team to design, automate, and improve employee productivity through scalable engineering practices and AI workflows, treating employee technology experience as a product. This includes defining an engineering roadmap, leading AI agent deployment for issue resolution, and managing incident response.

What you'd actually do

  1. In this engineering leader role, you will define and carry out an engineering roadmap for EMEA end user support. The roadmap will match the global IT strategy and business priorities.
  2. Lead the strategy and execution for embedding agentic AI into IT support workflows — from intelligent triage and self-healing systems to fully autonomous resolution pipelines. Partner with AI/ML teams to design, deploy, and iterate on AI agents that reduce ticket volume, accelerate resolution, and proactively prevent issues before employees notice them.
  3. Lead with a product outlook: treat the employee technology experience as a product, with critical metrics, iteration cycles, and continuous improvement loops. Identify friction points in the employee technology journey and engineer solutions that measurably improve experience, satisfaction, and productivity.
  4. Build and develop a high-performing, geographically distributed engineering team across EMEA; mentor engineers and engineering managers at all levels.
  5. Define and own EMEA-specific objectives and key results, SLAs, and engineering KPIs for end user support; report progress to senior leadership with clarity and accountability.

Skills

Required

  • 12+ overall years of experience in IT engineering, infrastructure, or end user technology
  • at least 6 years in people management or engineering leadership roles
  • Demonstrated track record of leading engineering teams at scale in complex, multi-country or multi-regional environments
  • Hands-on background in systems/infrastructure engineering
  • strong prior individual contributor experience in at least one area (endpoint engineering, network, identity, cloud platforms, or automation)
  • Proven experience in crafting and deploying AI-powered workflows involving AI/ML operations concepts
  • Skilled in creating timely instructions and agentic workflow build within an IT or engineering context
  • Experience with observability and monitoring platforms (Datadog, Splunk, Grafana, or similar) applied to IT operations
  • BSc degree in Computer Science, Information Technology, Engineering, or a related technical field

Nice to have

  • Advanced degree (MSc/PhD)
  • Strong engineering approach with deep expertise in scalable platform architecture, automation, observability, reliability engineering, and modern operational practices including data-informed operations and AI-assisted service delivery
  • Demonstrated expertise in SRE and platform reliability principles

What the JD emphasized

  • agentic AI
  • AI agents
  • AI-powered workflows
  • agentic workflow build
  • AI-assisted service delivery

Other signals

  • AI/ML operations
  • AI agents
  • automation
  • employee digital interaction
  • IT support workflows