Director - Ai/ml Engineering

Verizon Verizon · Telecom · Basking Ridge, NJ +8

Director of AI/ML Engineering at Verizon, focusing on leading teams to deploy and scale enterprise-level Generative AI applications and LLM-based solutions. The role involves industrializing AI services, managing compute and latency, establishing MLOps, ensuring ethical AI, designing GenAI platforms, implementing adaptive model routing, evaluating LLM frameworks, overseeing digital twins, and people leadership. The emphasis is on an AI-native approach to engineering and operations, shifting from traditional software development to agent-assisted development and AI-driven logic.

What you'd actually do

  1. AI Industrialization & Scaling: Lead the deployment, operationalization, and maintenance of high-availability AI services; architect robust, reliable AI/ML pipelines capable of handling millions of concurrent requests.
  2. Compute & Latency Management: Balance high-performance compute costs against the business value generated by models, ensuring systems satisfy the strict latency and scaling requirements of a global enterprise.
  3. Modern MLOps Foundations: Establish rigorous engineering standards around MLOps, software SDKs, containerization, instrumentation, and distributed infrastructure to safely move experimental lab models into high-volume production.
  4. Ethical AI & Compliance: Institutionalize strict standards for responsible AI, including safety, bias mitigation, data privacy, and compliance guardrails across all automated platforms
  5. Advanced Architectural Design: Direct the end-to-end development, evaluation, and lifecycle management of enterprise GenAI platforms and application frameworks.

Skills

Required

  • Bachelor's degree or four or more years of work experience
  • Ten or more years of relevant experience
  • Ten or more years of experience in AI/ML Engineering, Software Engineering, or AI Science environments
  • Six or more years of progressive technical people leadership experience (Director or high-level Manager) directing multi-disciplinary teams of data scientists and engineering specialists
  • Generative AI experience including technical fluency across the modern ML stack, with knowledge of LLMs, agentic orchestration, prompt engineering, vector databases, and multi-agent systems.

Nice to have

  • Scale and Deployment Track Record. Proven success building and scaling AI industrialization frameworks, modern MLOps pipelines, distributed training methodologies, and detailed simulation or digital twin networks.

What the JD emphasized

  • Generative AI experience
  • LLMs
  • agentic orchestration
  • prompt engineering
  • vector databases
  • multi-agent systems
  • AI industrialization frameworks
  • modern MLOps pipelines
  • distributed training methodologies
  • digital twin networks

Other signals

  • leading AI/ML engineering teams
  • deploying generative AI applications
  • scaling AI services
  • managing compute and latency
  • establishing MLOps foundations
  • ethical AI and compliance
  • enterprise GenAI platforms
  • adaptive model routing
  • evaluating LLM frameworks
  • digital twin and predictive systems
  • people leadership
  • AI-native engineering