Senior Machine Learning Ops Engineer

Sheetz, IncPittsburgh, PA
Remote

About The Position

A Senior Machine Learning Ops Engineer at Sheetz ensures that AI models move seamlessly from “working on a laptop” to running reliably across our stores, applications, and systems at scale. This role powers capabilities like smarter inventory management, enhanced customer experiences, and faster decision-making that keeps pace with the way Sheetz operates. The MLOps Engineer designs, builds, and maintains the pipelines, deployment processes, and monitoring systems that allow models to run continuously and perform consistently. Just as Sheetz kitchens operate around the clock to serve customers, this role keeps our AI systems running 24/7, using data as the ingredients and algorithms as the recipes that drive our technology. This role qualifies for a remote work arrangement within our 7 state footprint (PA, OH, MI, WV, VA, MD, NC).

Requirements

  • Bachelor’s degree in Computer Science, Management Information Systems, Computer Engineering, or related discipline is required
  • Minimum 5 years hands-on experience in designing, developing, and operationalizing machine learning solutions, with a strong focus on ML Ops practices and infrastructure is required
  • Previous experience working with large databases – both structured and unstructured – to build data pipelines and self-service dashboards for business users required
  • Previous experience in managing machine learning pipelines, lifecycle management, and deployment at scale—including training, validation, serving, and monitoring required

Nice To Haves

  • Previous experience with CI/CD pipelines for ML workflows and containerization tools such as Docker and Kubernetes preferred
  • Previous experience with secure and scalable cloud environments (e.g., AWS, GCP, Azure) and infrastructure-as-code and platform-as-a-service (PaaS) offerings preferred
  • Cloud Platforms (AWS, GCP, Azure) preferred
  • MLOps tools and framweorks (e.g., ML Flow, Kubeflow, TFX) preferred
  • DevOps certifications (e.g. Docker, Kubernetes, Terraform, CI/CD Tools) preferred

Responsibilities

  • Lead the end-to-end development and optimization of ML pipelines, including training, validation, deployment, monitoring, and retraining workflows at scale.
  • Guide the use of and implement infrastructure for tools such as ML flow, TensorFlow, PyTorch, Docker, and Kubernetes to support scalable production workflows for model deployment and lifecycle management.
  • Design and monitor tools for performance monitoring, drift detection, and automated alerting.
  • Develop CI/CD pipelines to enable safe, rapid model iteration, deployment, and retraining across environments.
  • Write, review, and maintain high-quality, production ready code, ensuring robust, reproducible, and secure ML systems.
  • Apply advanced software engineering and ML Ops best practices to operationalize machine learning solutions efficiently and reliably.
  • Collaborate with cross-functional teams to align ML solutions with business needs and system requirements and guide integration efforts to embed ML into production applications.
  • Maintain thorough documentation, version control, metadata tracking, and lineage to support reproducibility and compliance of ML models.
  • Recommend and implement improvements to ML infrastructure, frameworks, and operational standards, elevating the organization’s ML maturity and capabilities.
  • Mentor and coach junior engineers, providing guidance on technical challenges, workflow design, and career development.
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