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Lead MLOps Engineer

Job in Menomonee Falls, Waukesha County, Wisconsin, 53051, USA
Listing for: Milwaukee Tool Group
Full Time position
Listed on 2026-02-18
Job specializations:
  • IT/Tech
    AI Engineer, Machine Learning/ ML Engineer, Data Science Manager, Data Engineer
Salary/Wage Range or Industry Benchmark: 80000 - 100000 USD Yearly USD 80000.00 100000.00 YEAR
Job Description & How to Apply Below

INNOVATE without boundaries!

At Milwaukee Tool we firmly believe that our People and our Culture are the secrets to our success -- so we give you unlimited access to everything you need to provide support to your business unit. Our people and our culture are the secrets to our success. We empower you to own it, drive it, and do what it takes to support the biggest breakthroughs in the industry.

Job Description

Applicants must be authorized to work in the U.S.;
Sponsorship is not available for this position.

Your Role On Our Team

Manager – Data Science & MLOps at Milwaukee Tool, you will lead the strategy, delivery, and evolution of our enterprise machine learning capabilities. You will manage and grow a team of data scientists while owning the design, deployment, and governance of MLOps platforms across Databricks, Azure, Citrine, and AWS. This role balances hands‑on technical leadership with people management and executive‑facing responsibility, empowering teams across the organization to develop, deploy, and operate machine learning solutions  will shape how data science and MLOps are practiced across the company, setting standards, driving adoption, and ensuring reliable, secure, and impactful outcomes from experimentation through production.

You’ll

Be DISRUPTIVE Through These Duties And Responsibilities
  • Lead and scale a Data Science & MLOps team, initially managing a Senior Data Scientist and Staff Data Scientist, with the ability to augment delivery through contractors and future full‑time hires.
  • Own the enterprise MLOps and applied data science strategy, defining how machine learning is developed, deployed, governed, and operated across the company.
  • Architect, implement, and evolve scalable MLOps platforms across Databricks, Azure, and AWS to support both centralized IT solutions and distributed domain teams.
  • Define and enforce architecture standards, tooling, and best practices for model development, versioning, reproducibility, deployment, and lifecycle management.
  • Build and oversee CI/CD/CT pipelines for model training, validation, deployment, monitoring, and retraining at enterprise scale.
  • Partner with data scientists on modeling strategy and delivery, ensuring the team’s data science work drives measurable business outcomes (e.g., promo pod and other strategic initiatives).
  • Collaborate closely with ML engineers, data scientists, electrical engineers, product teams, and Dev Ops to integrate models into production systems, including cloud, edge, and embedded environments.
  • Establish and maintain observability and reliability standards for ML systems, including monitoring for model performance, drift, latency, cost, and system health.
  • Lead governance across the ML lifecycle, working with the broader ML community to define and enforce security, compliance, privacy, and auditability standards—adapting rigor based on use case (experimental, regulated, or productized).
  • Serve as the executive‑facing owner of the ML platform roadmap, clearly communicating strategy, progress, risks, and value to VPs and senior leaders.
  • Drive enterprise adoption of ML tools and platforms through documentation, training, internal community engagement, and hands‑on enablement.
  • Continuously evolve ML Ops capabilities to support GenAI/LLMOps use cases, balancing innovation with guardrails and responsible usage.
  • Maintain a hands‑on technical presence (~50%), contributing to architecture, design reviews, and complex problem‑solving while coaching the team and setting direction.
The TOOLS You’ll Bring With You
  • 7+ years of experience across Data Science, MLOps, Data Ops, Dev Ops, or backend engineering, with demonstrated progression into technical leadership.
  • Experience managing and mentoring data scientists and/or ML engineers, including setting modeling strategy and delivery expectations.
  • Deep hands‑on experience with Databricks ML services, Azure ML, and AWS/Sage Maker in production environments.
  • Strong Python skills and practical experience with ML frameworks and tooling (e.g., PyTorch, MLflow).
  • Proven ability to design and implement enterprise‑grade MLOps architectures
    , including model registries, CI/CD pipelines, and automated…
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