Senior MLOps / AIOps Engineer - MLflow, GCP, Vertex AI, IBM Watsonx, Terraform
Actively Reviewing the ApplicationsUPS
India, Tamil Nadu, Chennai
Full-Time
INR 9–16 LPA
Posted 1 week ago
•
Apply by June 20, 2026
Job Description
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Explore your next opportunity at a Fortune Global 500 organization. Envision innovative possibilities, experience our rewarding culture, and work with talented teams that help you become better every day. We know what it takes to lead UPS into tomorrow—people with a unique combination of skill + passion. If you have the qualities and drive to lead yourself or teams, there are roles ready to cultivate your skills and take you to the next level.
Job Description
Job Summary
We are seeking a Senior MLOps / AIOps Platform Engineer with deep DevSecOps expertise and hands-on experience managing enterprise-grade AI/ML platforms. This critical role focuses on building, configuring, and operationalizing secure, scalable, and reusable infrastructure and pipelines that support AI and ML initiatives across the enterprise. The ideal candidate will have a strong background in Infrastructure as Code (IaC), pipeline automation, and platform engineering, with specific experience configuring and maintaining IBM watsonx and Google Cloud Vertex AI environments.
Key Responsibilities
Platform Engineering & Operations
Education
Permanent
UPS is committed to providing a workplace free of discrimination, harassment, and retaliation.
Explore your next opportunity at a Fortune Global 500 organization. Envision innovative possibilities, experience our rewarding culture, and work with talented teams that help you become better every day. We know what it takes to lead UPS into tomorrow—people with a unique combination of skill + passion. If you have the qualities and drive to lead yourself or teams, there are roles ready to cultivate your skills and take you to the next level.
Job Description
Job Summary
We are seeking a Senior MLOps / AIOps Platform Engineer with deep DevSecOps expertise and hands-on experience managing enterprise-grade AI/ML platforms. This critical role focuses on building, configuring, and operationalizing secure, scalable, and reusable infrastructure and pipelines that support AI and ML initiatives across the enterprise. The ideal candidate will have a strong background in Infrastructure as Code (IaC), pipeline automation, and platform engineering, with specific experience configuring and maintaining IBM watsonx and Google Cloud Vertex AI environments.
Key Responsibilities
Platform Engineering & Operations
- Lead the provisioning, configuration, and ongoing support of IBM watsonx and Google Cloud Vertex AI platforms.
- Ensure platforms are production-ready, secure, cost-efficient, and performant across training, inference, and orchestration workflows.
- Manage lifecycle tasks such as patching, upgrades, integrations, and service reliability.
- Partner with security, compliance, and product teams to align platforms with enterprise and regulatory standards.
- Define and implement standardized MLOps/AIOps practices across business units for consistency and scalability.
- Build and maintain reusable workflows for model development, deployment, retraining, and monitoring.
- Provide onboarding, enablement, and support to AI/ML teams adopting enterprise platforms and tools.
- Support development/deployment of GenAI applications and maintain them at an Enterprise scale.
- Embed security and compliance guardrails across the ML lifecycle, including CI/CD pipelines and IaC templates.
- Implement policy-as-code, access controls, vulnerability scanning, and automated compliance checks.
- Ensure all deployments meet enterprise and regulatory requirements (HIPAA, SOX, FedRAMP, etc.).
- Design and maintain IaC templates (Terraform, Pulumi, Ansible, CloudFormation) for reproducible ML infrastructure.
- Build and optimize CI/CD pipelines for AI/ML assets including data pipelines, training workflows, deployment artifacts, and monitoring systems.
- Enforce best practices around automation, reusability, and observability of infrastructure and workflows.
- Implement comprehensive observability for AI/ML workloads using Prometheus, Grafana, Stackdriver, or Datadog.
- Monitor both infrastructure health (CPU, memory, cost) and ML-specific metrics (model drift, data integrity, anomaly detection).
- Define KPIs and usage metrics to measure platform performance, adoption, and operational health.
Education
- Bachelor’s or Master’s degree in Computer Science, Engineering, or a related technical field.
- 5+ years in MLOps, DevOps, Platform Engineering, or Infrastructure Engineering.
- 2+ years applying DevSecOps practices (secure CI/CD, vulnerability management, policy enforcement).
- Hands-on experience configuring and managing enterprise AI/ML platforms (IBM watsonx, Google Vertex AI).
- Demonstrated success in building and scaling ML infrastructure, automation pipelines, and platform support models.
- Proficiency with IaC tools (Terraform, Pulumi, Ansible, CloudFormation).
- Strong scripting skills in Python and Bash.
- Deep understanding of containerization and orchestration (Docker, Kubernetes).
- Experience with model lifecycle tools (MLflow, TFX, Vertex Pipelines, or equivalents).
- Familiarity with secrets management, policy-as-code, access control, and monitoring tools.
- Working knowledge of data engineering concepts and their integration into ML pipelines.
- Cloud certifications (e.g., GCP Professional ML Engineer, AWS DevOps Engineer, IBM Cloud AI Engineer).
- Experience supporting platforms in regulated industries (HIPAA, FedRAMP, SOX, PCI-DSS).
- Contributions to open-source projects in MLOps, automation, or DevSecOps.
- Familiarity with responsible AI practices including governance, fairness, interpretability, and explainability.
- Hands-on experience with enterprise feature stores, model monitoring frameworks, and fairness toolkits.
Permanent
UPS is committed to providing a workplace free of discrimination, harassment, and retaliation.
Required Skills
Machine Learning
Monitoring
Python
DevSecOps
AWS
Access Control
Google Cloud Platform
IBM Cloud
Docker
Kubernetes
Terraform
Ansible
Prometheus
Grafana
Vulnerability Assessment
MLOps
MLflow
Bash
Datadog
KPIs
DevOps
CI/CD
Anomaly detection
Adobe Illustrator
Data pipelines
Platform Engineering
Infrastructure as Code
Observability
Generative AI
Computer Science
Vertex AI
DevSecOps practices
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