Senior Agentic & AI Tech Ops Engineer - AI Center of Excellence
Location: Chennai (Hybrid – 3 Days Work from Office, 2 Days Work from
Home)
Reports to:
Head of AI Center of Excellence (AI CoE)
About Us:
Ingram Micro is a leading global IT distributor, connecting technology
solution providers with vendors worldwide. We are at the forefront of
leveraging cutting-edge technologies to drive innovation and efficiency
across the IT ecosystem. Our AI Center of Excellence (CoE) is a dynamic and
strategic group dedicated to solving complex business problems and creating
new value streams through the application of Artificial Intelligence, with a
strong focus on developing and operationalizing autonomous and intelligent
Agentic AI systems.
Role Summary:
We are seeking a proactive and technically skilled
Agentic & AI Tech Ops Engineer
to join our AI CoE. This role is crucial for ensuring the reliability,
scalability, and efficient operation of our cutting-edge AI and Agentic AI
systems in production environments. You will be responsible for deploying,
monitoring, maintaining, and troubleshooting our AI agents and the
underlying infrastructure. Working closely with AI developers, architects,
and data scientists, you will implement and manage Agentic Ops/MLOps
practices, automate operational tasks, and contribute to building a robust
and resilient operational framework for our AI initiatives.
Key Responsibilities:
Deployment & Infrastructure Management:
Deploy, configure, and manage AI models, agentic systems, and
supporting infrastructure in cloud (e.g., GCP) and on-premise
environments.
Implement and maintain CI/CD pipelines for AI/ML models and agentic
applications (MLOps/Agent Ops).
Manage and optimize cloud resources, ensuring cost-effectiveness and
scalability for AI workloads.
Collaborate with infrastructure teams to ensure network, storage,
and compute resources meet the demands of AI systems.
Monitoring, Logging & Alerting:
Develop and implement comprehensive monitoring, logging, and
alerting solutions for AI agents and infrastructure to ensure high
availability and performance.
Proactively identify and address potential issues, performance
bottlenecks, and anomalies in production AI systems.
Track key operational metrics and create dashboards for system
health and performance.
Incident Response & Troubleshooting:
Provide operational support for production AI systems, including
incident response, root cause analysis, and resolution of technical
issues.
Develop and maintain runbooks and standard operating procedures for
common operational tasks and incident management.
Participate in on-call rotations as needed to support critical AI
services.
Automation & Operational Excellence:
Automate routine operational tasks, deployment processes, and system
maintenance activities using scripting (e.g., Python, Bash) and
automation tools.
Contribute to the development and enforcement of operational best
practices, security standards, and compliance requirements for AI
systems.
Work with development teams to improve the deployability,
manageability, and observability of AI applications.
Collaboration & Documentation:
Collaborate effectively with AI developers, data scientists, AI
architects, and other stakeholders to ensure smooth transitions from
development to production.
Maintain clear and comprehensive documentation for system
configurations, operational procedures, and troubleshooting guides.
Provide feedback to development teams on operational aspects and
system performance.
Required Qualifications & Experience:
Bachelor’s degree in Computer Science, Information Technology,
Engineering, or a related technical field.
4-7+ years of experience
in a MLOps or Agent Ops role, preferably supporting AI/ML or
data-intensive applications.
Hands-on experience with
cloud computing platforms
(e.g., Google Cloud Platform - especially Vertex AI) and managing
cloud-based infrastructure.
Proficiency in
scripting languages
such as Python, Bash, or PowerShell for automation.
Experience with
CI/CD tools and practices
(e.g., Bitbucket, GitLab CI, GitHub Actions).
Familiarity with
containerization technologies
(e.g., Docker, Kubernetes) and orchestration.
Experience with
monitoring and logging tools
(e.g., Prometheus, Grafana, ELK Stack, Datadog, Google Cloud Monitoring,
Langfuse).
Understanding of
networking concepts, security best practices, and
infrastructure-as-code (IaC)
principles (e.g., Terraform, Ansible).
Strong troubleshooting and problem-solving skills with an analytical
mindset.
Excellent communication skills and ability to work collaboratively in a
team environment.
A proactive approach to identifying and resolving issues and improving
system reliability.
Preferred Qualifications & Experience:
Master's degree in a relevant field.
Specific experience in
MLOps or Agent Ops
, including deploying and managing machine learning models or large
language model applications in production.
Familiarity with AI/ML frameworks and libraries (e.g., TensorFlow,
PyTorch, scikit-learn).
Understanding of agentic AI concepts and the operational challenges they
present.
Experience with managing vector databases or other specialized data
stores for AI.
Knowledge of data pipeline tools (e.g., Apache Airflow, Kubeflow
Pipelines).
Relevant cloud certifications (e.g., Google Cloud Professional ML
Engineer).
Experience working in an agile development environment.
Why Join Us?
Play a critical role in operationalizing cutting-edge Agentic AI and AI
systems for a global industry leader.
Gain hands-on experience with the latest MLOps, Agent Ops, and cloud
technologies.
Work in a dynamic, innovative, and collaborative AI Center of
Excellence.
Opportunity to significantly impact the reliability and efficiency of
transformative AI solutions.
Competitive salary, bonus, and benefits package.
Apply through whichever channel suits you best.