Senior Machine Learning Engineer

AmperitySeattle, WA
$185,600 - $255,000Hybrid

About The Position

At Amperity, ML Engineers work in small, collaborative, and accountable teams. As a Senior ML Engineer, you'll lead complex, ambiguous ML projects within your team's space and own technically deep pieces of its ML architecture. You'll create agreement and simplicity on your team. Being an ambassador for your work, you'll collaborate across team lines. Partnering with Applied Scientists, Software Engineers, and Product Managers, you'll deliver production ML systems that create measurable customer impact. We are an AI-first company. We expect engineers to embrace AI assistance tools like Claude Code as a core part of their daily workflow—using them to accelerate development and improve code quality. We keep our processes lightweight, our experimentation rigorous, and our focus on delivering value to our customers through machine learning products and features.

Requirements

  • 5+ years building production ML systems, including hands-on experience designing ML pipelines and infrastructure.
  • Experience leading complex or ambiguous ML projects within a team as the directly responsible individual.
  • Expertise in ML deployment patterns, model serving, feature engineering, and monitoring/observability for ML systems.
  • Software engineering skills with experience in Python and familiarity with ML frameworks (e.g. XGBoost, PyTorch, PySpark).
  • Experience with cloud-native ML infrastructure, containerization, and orchestration (Kubernetes, Docker).
  • Enthusiastic about AI-first development practices, with experience using AI coding assistants to accelerate engineering workflows.
  • A habit of mentoring teammates, reviewing others' work, and elevating how your team builds and operates ML systems.

Nice To Haves

  • Large-scale data engines like Apache Spark, Presto, and Kafka.
  • MLOps tooling including MLflow, feature stores, and model serving frameworks.
  • Cloud-native infrastructure built with Kubernetes and Terraform, deployed across multiple cloud providers.
  • Functional programming languages including Clojure and Python for ML pipelines.
  • Machine learning models for entity resolution, classification, and customer analytics.
  • AI coding assistants (such as Claude Code) as part of our daily development workflow.

Responsibilities

  • Design the CI/CD pipelines and deployment architecture for the ML systems your team owns, making them reliable, repeatable, and easy to operate.
  • Build automated retraining pipelines triggered by performance degradation, and architect monitoring solutions with drift detection and alerting.
  • Design real-time and batch feature pipelines that power identity resolution, customer segmentation, and predictive models at scale.
  • Improve model inference latency to deliver predictions that meet strict Service level agreements while keeping infrastructure costs in check.
  • Establish SLOs and operational standards for your team's production ML. Lead incident response and blameless post-mortems. Evaluate MLOps tooling that raises the bar for the team, including experiment tracking, model registry, and serving.

Benefits

  • 100% employee healthcare coverage
  • transportation subsidies
  • a comfortable work environment with plenty of snacks
  • employee experience perks like events and activities, both in-person and remote
  • self-managed PTO
  • the flexibility to do your best work in the way that works for you
  • Cash incentives
  • Stock Options
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