Resumo da vaga

ML Ops Infrastructure Engineer

Requisitos e responsabilidades

Conteúdo da vaga extraído em seções para revisão mais rápida.

What You'll Do

  • Design and build CI/CD pipelines specifically tailored for ML model development, validation, and deployment
  • Architect and maintain model deployment pipelines that move models from research environments through staging to production with confidence
  • Build A/B testing infrastructure that enables controlled rollouts of new models and measures real-world performance impact
  • Implement comprehensive monitoring for model performance in production -- accuracy metrics, latency, drift detection, and regression alerts
  • Develop automated retraining pipelines that trigger on data changes, performance degradation, or scheduled cadences
  • Create and maintain build and test environments that mirror production, giving researchers high-fidelity feedback before deployment
  • Establish model versioning, artifact management, and rollback capabilities to ensure safe and reproducible deployments
  • Collaborate with research engineers to define and enforce model quality gates before production promotion
  • Build observability dashboards that give the team real-time insight into model health across all environments
  • Optimize model serving infrastructure for latency, throughput, and cost efficiency

You'll Love This Role If You

  • Are excited by the challenge of operationalizing cutting-edge AI models at production scale
  • Believe that great infrastructure is what turns research breakthroughs into customer value
  • Enjoy designing systems that are automated, reliable, and self-healing
  • Want to work on problems where minutes of latency reduction or percentage points of accuracy matter enormously
  • Like collaborating across research and engineering teams to make the whole organization faster
  • Are motivated by building the deployment and testing systems that back a platform serving over 200,000 developers

It's Important To Us That You Have

  • 4+ years of experience in MLOps, DevOps, or infrastructure engineering with a focus on ML systems
  • Strong proficiency in Python and experience building automation and tooling for ML workflows
  • Deep experience with CI/CD systems and building pipelines for software and model delivery
  • Hands-on experience with Docker and Kubernetes for containerized workload management
  • Practical experience deploying and serving ML models in production environments
  • Familiarity with model evaluation, validation, and quality assurance processes
  • Understanding of monitoring and observability principles as applied to ML systems
  • Strong problem-solving skills and a bias toward automation over manual processes

It Would Be Great If You Had

  • Experience with model serving frameworks such as NVIDIA Triton Inference Server, TensorRT, or ONNX Runtime
  • Background in speech, audio, or real-time media ML systems
  • Experience with Infrastructure as Code tools such as Terraform or Pulumi
  • Hands-on experience with monitoring and observability stacks (Prometheus, Grafana, Datadog, or similar)
  • Familiarity with GPU-accelerated inference optimization and profiling
  • Experience with feature stores, data versioning, or ML metadata management
  • Knowledge of canary deployment strategies and progressive delivery for ML models
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FocoEngineeringÁrea da vaga
Sinal de senioridadeNível abertoNível do candidato
StackCI/CD, Docker, KubernetesSkills principais
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