MLOps Engineer — AWS SageMaker
Client : A large global enterprise (name not disclosed)
Location : India
Work Model : 100% Remote
Contract : 6 months (initial) with possibility of extension
Start Date : ASAP
Engagement : Full-time / Long-term contract
Role Overview
You will work within a global data & analytics team to design, deploy, and maintain robust ML pipelines using AWS SageMaker and associated cloud services. The role requires strong experience in production-grade MLOps, automation, and cloud engineering.
Key Responsibilities
Build, deploy, and maintain ML models using AWS SageMaker (Pipelines, Endpoints, Model Registry)
Develop automated CI / CD workflows using CodePipeline, CodeBuild , or GitHub Actions
Implement model monitoring, logging, and drift detection (CloudWatch, SageMaker Model Monitor)
Create and maintain infrastructure using Terraform or CloudFormation
Manage secure, scalable, cost-optimized AWS environments (IAM, VPC, networking)
Collaborate with data scientists, cloud engineering teams, and solution architects
Troubleshoot issues in high-availability, production ML setups
Required Experience
4–8 years total experience in MLOps / ML Engineering
Hands-on experience with SageMaker in enterprise-scale environments
Strong Python skills & familiarity with ML frameworks
Experience with Docker, Kubernetes (EKS preferred)
Experience building CI / CD pipelines
Deep practical knowledge of AWS ecosystem
Nice to Have
Experience implementing model governance
Experience with multi-model endpoints
Familiarity with enterprise security standards and compliance
Mlops Engineer • Faridabad, Haryana, India