Resumo da vaga

Senior Machine Learning Operations Engineer II (AI Native)

Requisitos e responsabilidades

Conteúdo da vaga extraído em seções para revisão mais rápida.

What You’ll Do

  • Pipeline Automation: Design, implement, and manage automated CI/CD and Continuous Training (CT) pipelines for machine learning model development, evaluation, and delivery.
  • Model Deployment: Containerize, deploy, and scale machine learning models as high-availability microservices or batch processing workflows.
  • Observability & Monitoring: Establish unified logging, alerting, and monitoring solutions to track model inference performance, system latency, resource utilization, data drift, and concept drift.
  • Infrastructure Management: Provision and optimize cloud-based ML infrastructure (including GPU/CPU computing clusters) utilizing Infrastructure as Code (IaC) paradigms.
  • Cross-Functional Collaboration: Work intimately with product development teams to drive infrastructure adoption and efficiency gains through SDK/API development, automation and efficient ML system maintenance.
  • Governance & Compliance: Implement robust lineage tracking for data, code, and model artifacts to ensure compliance, reproducibility, and security across the entire ML lifecycle.
  • Data Infrastructure & Tooling: Work with data engineering to improve the data ecosystem, ensuring robust, scalable pipelines for experimentation and ML (including streaming tools like Kafka and Flink for low-latency online inference).
  • Thought Leadership: Act as a mentor and thought leader, helping to define best practices in machine learning engineering, scalable ML service ops, and agentic AI (AI-Native) best practices.

Desired Experience & Qualifications

  • Professional Experience: 5+ years of professional software engineering, DevOps, or data engineering experience, with at least 2 years dedicated to building and maintaining MLOps infrastructure.
  • Programming Mastery: Strong proficiency in Python, including deep familiarity with software engineering best practices (unit testing, modular design, version control via Git).
  • Orchestration & Containerization: In addition to hands-on experience with containerization (Docker) and container orchestration platforms, specifically Kubernetes (EKS, GKE, or native clusters), experience with related tools like FastAPI.
  • MLOps and Datastore Tooling: Proven familiarity with specialized ML lifecycle and data processing tools and platforms such as MLflow, Kubeflow, SparkML, Synapse ML, SQL, Spark/PySpark, dbt, and Airflow.
  • Cloud Foundations: Practical experience operating within a major cloud ecosystem—e.g., AWS, GCP, Databricks—with a clear grasp of cloud networking, security, and storage tiers.
  • Strong communication and project leadership skills, with the ability to influence cross-functional teams.
  • Educational Background: Bachelor’s or Master’s degree in Computer Science, Data Science, Software Engineering, or a closely related quantitative field.

Preferred Qualifications

  • Advanced Tooling: Experience implementing and scaling production feature stores (e.g., Feast, Tecton) and model registries.
  • Generative AI & LLMs: Prior experience deploying and optimizing Large Language Models (LLMs) or foundation models utilizing serving frameworks like vLLM, Triton Inference Server, or TGI.
  • Infrastructure as Code: Proficient with IaC frameworks, particularly Terraform, to manage reproducible environments.
  • Data Frameworks: Familiarity with distributed data computation engines such as Apache Spark, Ray, or Dask.
  • Industry Certifications: Relevant cloud or architecture credentials, such as AWS Certified Machine Learning Specialty, Google Cloud Professional Machine Learning Engineer, or Certified Kubernetes Administrator (CKA).
  • Experience in subscription-based products, lifecycle marketing, or user acquisition.
  • Experience with geospatial data and mobile location-based services.
  • Experience in the consumer technology sector, particularly within a fast-paced and sometimes ambitious development setting.

Core Expectations

  • Problem-solving mindset - You structure ambiguous problems precisely before reaching for a tool, AI or otherwise
  • Collaborative approach - You can explain technical tradeoffs and articulate ideas effectively, work well across teams, and value diverse perspectives
  • Ownership mentality - You take responsibility for your work from design through production and beyond
  • AI-native working style - You use AI tooling (Claude Code or equivalent) as a genuine development partner: delegating discrete tasks, reviewing outputs critically, and running parallel workstreams rather than hand-holding one agent at a time

Our Benefits

  • Competitive pay and benefits.
  • Medical, dental, vision, life and disability insurance plans (100% paid for US employees). We offer supplemental plans for medical and dental for Canadian employees.
  • 401(k) plan with company matching program in the US and RRSP with DPSP plan for Canadian employees.
  • Employee Assistance Program (EAP) for mental wellness.
  • Flexible PTO and 12 company wide days off throughout the year.
  • Learning & Development programs.
  • Equipment, tools, and reimbursement support for a productive remote environment.
  • Free Life360 Platinum Membership for your preferred circle.

Life360 Values

  • Be a Good Person - We have a team of high integrity people you can trust.
  • Be Direct With Respect - We communicate directly, even when it’s hard.
  • Members Before Metrics - We focus on building an exceptional experience for families.
  • High Intensity High Impact - We do whatever it takes to get the job done.
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FocoMLOps EngineeringÁrea da vaga
Sinal de senioridadeSeniorNível do candidato
StackAWS, CI/CD, DockerSkills principais
Localização1 país aceitoElegibilidade

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