Skip to content

Senior Manager, Engineering - Performance ML

Leads a team of ML and Data Engineers, defining the ML roadmap, overseeing model lifecycle from pipelining to deployment, and partnering with engineering and leadership to drive ad platform performance. Requires 5+ years engineering management in ML/Data Science and ad-tech experience.

United StatesEngineering ManagementRemote5+ YOE

About the role

Responsibilities

  • Manage, mentor, and scale a high-performing team of Machine Learning and Data Engineers. Foster a culture of technical excellence, providing clear career progression paths for all team members.
  • Define the ML roadmap in alignment with broader product and engineering goals. Translate complex business challenges into scalable, actionable data solutions.
  • Oversee the end-to-end lifecycle of ML models from robust data pipelining and feature engineering to deployment, monitoring, and iteration in high-volume, low-latency environments.
  • Partner tightly with Software Development teams, Program Management, and executive leadership.
  • Bring strong organizational skills to streamline workflows, manage technical debt, ensure data quality, and guarantee the reliable, on-time delivery of data products.

Success Metrics

  • Audit existing ML models and data pipelines to build a deep understanding of system behavior, performance drivers, and gaps.
  • Identify and ship high-impact, production-ready improvements that deliver measurable performance or efficiency gains.
  • Establish a rigorous, repeatable experimentation and deployment framework to accelerate model iteration and reliability.
  • Define and execute a phased ML roadmap evolving from heuristic-based systems to advanced predictive models.
  • Strengthen the team through trust-based leadership, skills assessment, targeted hiring, and structured development plans.

Requirements

  • 6+ years of experience in Machine Learning, Data Science, with 5+ years specifically in an engineering management role overseeing ML/Data teams.
  • Proven track record of building, deploying, and maintaining models at scale, ideally within ad-tech.
  • Deep understanding of modern ML frameworks, data architecture, and cloud ecosystems (e.g., Google Cloud Platform). While you won't be coding daily, you need the technical chops to guide architectural decisions and review system designs.
  • Exceptional communication skills. You must be able to distill and present complex, highly technical ML concepts to non-technical stakeholders and executive leadership effectively.
  • Genuine passion for team building. You take pride in clearing roadblocks, upskilling your team, and building an environment where top-tier engineers thrive.

Perks

  • 100% remote within the US
  • Flexible vacation policy
  • Annual vacation allowance for travel related expenses
  • Three-day weekend every month of the year
  • Competitive compensation
  • 100% healthcare coverage
  • 401k plan
  • Flexible Spending Account (FSA) for dependent, medical, and dental care
  • Access to coaching, therapy, and professional development

Skills

Machine LearningData ScienceGCPMl FrameworksData PipeliningFeature EngineeringModel DeploymentData ArchitectureAd-TechCloud Ecosystems

Engineering Manager - Core Infra

Own Core Infra team end-to-end: set priorities, raise execution quality, and turn ICs into a self-organizing team. Requires 8+ years building production software (4+ in startups) managing platform engineers, plus deep familiarity with high-throughput and AI-powered systems.

190k – 250kNew York, NYEngineering ManagementHybrid8+ YOESlisSLOs

Senior Engineering Manager, AI Product

Lead engineering execution and people management for Thunderbolt, an open-source AI product. Manage senior engineers, contribute technically, and drive production-ready practices for enterprise-grade, privacy-first AI deployments.

215k – 240kUnited StatesEngineering ManagementRemote15+ YOETauriCI/CD

Senior Engineering Manager, AI Product

Lead engineering execution, people management, and operating practices for an open-source AI product moving from R&D to production. Manage senior engineers, contribute technically, and establish scalable engineering practices for enterprise-ready deployment.

215k – 240kUnited StatesEngineering ManagementRemote15+ YOEWebTauri

Manager, Applied AI Engineering

Lead and grow a team of Applied AI Engineers advising Enterprise Tech customers on Claude API deployments, architecture, evaluations, and advanced LLM patterns while partnering with Sales, Product, and Engineering.

300k – 405kSan Francisco, CA +1Engineering ManagementHybrid7+ YOELLMsPython

Manager, Platform Engineering

Hands-on Platform Engineering Manager leading a team to build standardized Kubernetes deployment, self-service tooling, auditable infrastructure, and CI/CD pipelines on AWS.

United StatesEngineering ManagementRemote7+ YOEAWSOkta