Every day, Global Payments makes it possible for millions of people to move money between buyers and sellers using our payments solutions for credit, debit, prepaid and merchant services. Our worldwide team helps over 3 million companies, more than 1,300 financial institutions and over 600 million cardholders grow with confidence and achieve amazing results. We are driven by our passion for success and we are proud to deliver best-in-class payment technology and software solutions. Join our dynamic team and make your mark on the payments technology landscape of tomorrow.
RESPONSIBILITIES
Design and implement CI/CD pipelines for AI and ML model training, evaluation, and RAG system deployment (including LLMs, vectorDB, embedding and reranking models, governance and observability systems, and guardrails).
Provision and manage AI infrastructure across cloud hyperscalers (AWS/GCP), using infrastructure-as-code tools -strong preference for Terraform-.
Maintain containerized environments (Docker, Kubernetes) optimized for GPU workloads and distributed compute.
Support vector database, feature store, and embedding store deployments (e.g., pgVector, Pinecone, Redis, Featureform. MongoDB Atlas, etc).
Monitor and optimize performance, availability, and cost of AI workloads, using observability tools (e.g., Prometheus, Grafana, Datadog, or managed cloud offerings).
Collaborate with data scientists, AI/ML engineers, and other members of the platform team to ensure smooth transitions from experimentation to production.
Implement security best practices including secrets management, model access control, data encryption, and audit logging for AI pipelines.
Help support the deployment and orchestration of agentic AI systems (LangChain, LangGraph, CrewAI, Copilot Studio, AgentSpace, etc.).
Must Haves:
4+ years of DevOps, MLOps, or infrastructure engineering experience. Preferably with 2+ years in AI/ML environments.
Hands-on experience with cloud-native services (AWS Bedrock/SageMaker, GCP Vertex AI, or Azure ML) and GPU infrastructure management.
Strong skills in CI/CD tools (GitHub Actions, ArgoCD, Jenkins) and configuration management (Ansible, Helm, etc.).
Proficient in scripting languages like Python, Bash, -Go or similar is a nice plus-.
Experience with monitoring, logging, and alerting systems for AI/ML workloads.
Deep understanding of Kubernetes and container lifecycle management.
Bonus Attributes:
Exposure to MLOps tooling such as MLflow, Kubeflow, SageMaker Pipelines, or Vertex Pipelines.
Familiarity with prompt engineering, model fine-tuning, and inference serving.
Experience with secure AI deployment and compliance frameworks
Knowledge of model versioning, drift detection, and scalable rollback strategies.
Abilities:
Ability to work with a high level of initiative, accuracy, and attention to detail.
Ability to prioritize multiple assignments effectively. Ability to meet established deadlines.
Ability to successfully, efficiently, and professionally interact with staff and customers.
Excellent organization skills.
Critical thinking ability ranging from moderately to highly complex.
Flexibility in meeting the business needs of the customer and the company.
Ability to work creatively and independently with latitude and minimal supervision.
Ability to utilize experience and judgment in accomplishing assigned goals.
Experience in navigating organizational structure.
Global Payments Inc. is an equal opportunity employer. Global Payments provides equal employment opportunities to all employees and applicants for employment without regard to race, color, religion, sex (including pregnancy), national origin, ancestry, age, marital status, sexual orientation, gender identity or expression, disability, veteran status, genetic information or any other basis protected by law. If you wish to request reasonable accommodations related to applying for employment or provide feedback about the accessibility of this website, please contact jobs@globalpay.com.