Description

Job description:

  • 12+ Years Must.

What You’ll Do:

  • Build and maintain scalable MLOps pipelines using AWS SageMaker
  •  Support full ML lifecycle: ingestion → training → versioning → deployment
  • Optimize models for real-time inference via APIs
  • Detect and address data/model drift, automate re-training workflows
  • Use feature stores and model registries effectively
  • Collaborate across data science, ML, and engineering teams
  • Architect end-to-end AI/ML solutions on Databricks

What You Bring:

  • 5+ years in MLOps, ML Engineering, or Data Engineering
  • Deep AWS SageMaker experience (Pipelines, Studio, Model Hosting)
  • Hands-on with large-scale data (billions of records)
  • Real-time model deployment experience with <100ms latency
  • Familiarity with Databricks, CI/CD for ML, and monitoring
  • Skilled in Python, Docker, Bash, Terraform/CloudFormation (nice to have)

Education

Any Graduate