Job Title : MLOPS Cloud Engineer
Location : Charlotte, NC (hybrid)
Duration : 18 Month
Job Summary
We are seeking an Advanced MLOps Engineer to architect and scale our machine learning platform on AWS. This is a DevOps / Platform coding role focused on enabling data scientists. The successful candidate will combine an advanced understanding of the ML lifecycle with a consultant mindset to build reliable, high-volume data pipelines and robust infrastructure using IaC.
Job Responsibilities
Key Responsibilities
Platform Architecture : Design and maintain the end-to-end cloud platform, leveraging AWS services (SageMaker, Bedrock, EKS, Step Functions, Lambda) for security and scalability.
Data Pipeline Engineering : Develop and optimize Python-based, high-volume data pipelines to transform and prepare data at scale for model consumption.
MLOps & Automation : Implement MLOps best practices (MLFlow) for model tracking and deployment. Build and own CI / CD using GitHub Actions and manage platform configuration in JIRA / Agile.
Infrastructure as Code (IaC) : Own all infrastructure provisioning and management using expert-level proficiency in Terraform.
Consulting : Act as a technical consultant to Data Science teams, building custom tools and solutions to accelerate their path to production.
Required Skills & Qualifications
ML Expertise : Advanced understanding of the AI / ML lifecycle, concepts, and deployment patterns.
Cloud & IaC : Expert in AWS platform services and Terraform.
Programming & Tooling : Strong Python platform coding, experience with MLFlow, GitHub, and GitHub Actions.
Process : Familiarity with software development best practices and Agile methodologies.
Preferred : Prior experience in a Solutions Architect (SA) capacity.
Cloud Engineer • Charlotte, NC, United States