Title: Sr Technical Lead-Cloud & Infra Engg
Area(s) of responsibility
Data & MLOps Engineering
- Design and implement end-to-end MLOps pipelines covering data ingestion, feature engineering, model training, validation, deployment, monitoring, and retraining.
- Operationalize GenAI and LLM-based solutions, including prompt management, vector databases, embeddings, and agent workflows.
- Implement CI/CD pipelines for ML and GenAI workloads using industry best practices.
- Enable scalable experimentation, versioning, rollback, and model lifecycle management.
GenAI & Agentic AI Enablement
- Build and operate Agentic AI frameworks supporting multi-agent orchestration, tool calling, memory management, and autonomous task execution.
- Implement guardrails for GenAI including security, safety, bias detection, hallucination mitigation, and policy enforcement.
- Optimize LLM inference performance, latency, cost, and throughput across environments.
Cloud Infrastructure & Platform Engineering
- Architect and manage cloud-native ML platforms on Azure and/or AWS.
- Leverage cloud services for compute (CPU/GPU), storage, containerization, and orchestration (Kubernetes).
- Implement infrastructure-as-code (IaC) and platform automation to support scalable MLOps operations.
Observability, Governance & FinOps
- Implement monitoring for model performance, data drift, concept drift, and system health.
- Ensure compliance with enterprise standards for data governance, security, auditability, and Responsible AI.
- Collaborate with FinOps teams to manage and optimize GenAI and ML platform costs.
Collaboration & Delivery
- Work closely with Data Scientists, AI Engineers, Cloud Architects, SRE, and Security teams.
- Support production readiness reviews, incident resolution, and continuous improvement initiatives.
- Contribute to reusable accelerators, reference architectures, and best practices.