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Senior Machine Learning Engineer – Ops
Location
India
Posted
96 days ago
Salary
0
Seniority
Senior
Job Description
Senior Machine Learning Engineer – Ops
Gather AI
• Migrate box and barcode detection pipelines to cloud infrastructure following MLOps best practices • Build and maintain CI/CD pipelines for deployment across production and non-production environments • Implement automated rollback, canary, and blue-green deployment strategies for ML microservices • Build out a multi-tenant MLOps platform using tools like Prefect, ZenML, or similar orchestration frameworks • Establish a centralized model registry and versioning system for all production assets • Instrument observability across the ML stack — logging, metrics, and distributed tracing — to ensure reliability at scale
Job Requirements
- 6+ years of industry experience (outside academia) in ML engineering, MLOps, or infrastructure engineering
- Deep operational fluency with Kubernetes and Docker for ML workload orchestration
- Strong production-grade Python skills with a track record of hardening research code into scalable microservices
- Hands-on experience with CI/CD for ML (e.g., GitHub Actions, GitLab CI) and model serving frameworks (e.g., KServe, SageMaker, Vertex AI Endpoints)
- Experience with pipeline orchestration and model lifecycle tools such as Airflow, MLflow, Kubeflow, or Flyte
- Proven ownership of production system reliability, including SRE principles, observability stacks, and automated failure safeguards
Benefits
- Health insurance
- Retirement plans
- Paid time off
- Flexible work arrangements
- Professional development
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