Machine Learning Engineer
We are assisting a leading cloud consulting firm specializing in c loud-native development, data and AI modernization , and secure cloud operations. As an AWS Premier Partner , they help organizations scale with cutting-edge technologies while fostering a culture of innovation, collaboration, and continuous learning. As a Machine Learning Engineer, you’ll design, implement, and optimize end-to-end ML pipelines using AWS SageMaker , MLflow , and GitLab CI/CD . You'll work closely with data scientists and engineers to make sure models are trained, shipped, and monitored with performance, governance, and reliability in mind. What you’ll be doing Build and maintain training pipelines using the AWS SageMaker SDK , with MLflow for experiment tracking Own the full model lifecycle: tracking, packaging, versioning, and registry management Implement and monitor real-time (SageMaker Endpoints) and batch (Batch Transform) inference pipelines Integrate model predictions with DynamoDB to support third-party enrichment and real-time workflows Set up monitoring for data drift , bias detection , and overall model health using SageMaker Model Monitor Maintain the MLflow Model Registry to ensure versioned, production-approved models Collaborate with the DevOps/infrastructure team to manage CI/CD/CT pipelines using GitLab , Terraform , and Terragrunt Requirements Must-Have Strong hands-on experience with AWS SageMaker , including Studio and Feature Store Proficiency with MLflow and solid understanding of artifact tracking and model versioning Fluent in Python , with experience building modular and scalable ML training pipelines Familiar with GitLab CI/CD , Terraform , and Terragrunt Strong grasp of model monitoring , including data capture, bias/drift detection, and production metrics Nice-to-Have Experience with Snowflake , AWS Athena , and AWS Glue Data Quality Familiarity with advanced MLOps governance workflows like approval gates and retraining triggers Experience working in high-compliance or audit-ready environments Why join us? As a lean and highly skilled team, at OpsBrasil we foster a culture of autonomy, collaboration, and continuous learning. You’ll be part of a fast-paced, innovation-first environment where ideas move quickly, and your contributions will have a direct impact on shaping both the product and the underlying infrastructure from the ground up. Originally posted on Himalayas