EY - GDS Consulting - AIA - AI ML Ops Engineer - Senior
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Job Description
MLOps / LLMOps Engineering
- Design, build, and maintain end‑to‑end MLOps and LLMOps pipelines covering experimentation, training, deployment, monitoring, and retraining.
- Operationalize ML and LLM models for production environments with high availability and scalability.
- Implement best practices for model versioning, artifact management, and reproducibility.
CI/CD & Automation
- Develop and maintain CI/CD/CT pipelines for ML and GenAI workloads.
- Automate model packaging, deployment, validation, and rollback processes.
- Integrate AI pipelines with enterprise DevOps toolchains.
API & Model Serving
- Design, develop, and deploy REST‑based inference services using Python frameworks such as Flask or FastAPI.
- Enable scalable and secure model serving for batch and real‑time use cases.
Monitoring, Governance & Responsible AI
- Monitor model performance, data drift, and model drift in production environments.
- Support Responsible AI practices including robustness, explainability, and governance controls.
- Enable continuous feedback loops and retraining strategies to maintain model quality.
Collaboration & Delivery
- Collaborate with cross‑functional teams including Data Engineering, Data Science, Platform Engineering, and Cyber/Compliance teams.
- Support enterprise AI platforms and GenAI solutions across multiple client engagement