Senior Manager, Machine Learning Engineering

Metropolis Metropolis · Vertical AI · Seattle, WA +2 · Advanced Technologies

Senior Manager of Machine Learning Engineering to lead technical vision and execution of foundational systems for next-generation AI, overseeing data engineering, annotation pipelines, ML Infrastructure, and deployment of Agentic AI solutions. The role involves transitioning state-of-the-art models into robust, autonomous production systems for enterprise workflows.

What you'd actually do

  1. Build and maintain scalable, compliant and auditable data infrastructure to serve computer vision and AI pricing use cases
  2. Build scalable data engineering pipelines and automated annotation workflows (LLM-in-the-loop) to reduce reliance on manual labeling and accelerate model iteration
  3. Own the MLOps lifecycle, including distributed training infrastructure, model registries, and low-latency inference services. Ensure high availability and observability for all deployed models
  4. Define technical direction, lead and grow a high-performance team of data and ML infrastructure engineers to influence impactful business outcomes
  5. Develop foundational systems to productionize agentic AI, Large Language Models (LLMs) and Vision Language Models (VLMs) solutions for workflow automation to enhance our products

Skills

Required

  • 10+ years of professional experience in data and machine learning engineering
  • proven expertise in building enterprise-scale, auditable ETL pipelines and data governance mechanisms
  • 5+ years of experience in leadership and management
  • MS or PhD in computer science and/or a quantitative discipline
  • Strong experience in distributed data processing like Apache Spark, Kafka, Cloud native data storage and processing services
  • 1+ years experience building data /eval pipelines and deploying agentic AI solutions (LLMs and/or VLMs)
  • Experience managing technical programs, defining milestones, and communicating progress to diverse audiences
  • Familiarity with deep learning frameworks such as TensorFlow or PyTorch
  • Strong proficiency with SQL and Python
  • Engage effectively with external data providers and vendors
  • Familiarity with computer vision systems and models (e.g. object detection, tracking, segmentation)

Nice to have

  • Manage large scale datasets and database tools for data processing
  • Deploy ML services to the cloud with a focus on scalability and reliability
  • Operate in innovative, high-growth environments

What the JD emphasized

  • productionize agentic AI
  • LLMs and VLMs
  • workflow automation
  • MLOps lifecycle
  • distributed training
  • low-latency inference
  • agentic AI solutions (LLMs and/or VLMs)

Other signals

  • productionize agentic AI
  • LLMs and VLMs
  • workflow automation
  • MLOps lifecycle
  • distributed training
  • low-latency inference