MLOps/LLMOps Engineer – Senior – EY GDS Spain – Hybrid
The opportunity
We are seeking a highly skilled Senior MLOps / LLMOps Engineer with 3+ years of experience designing, automating, deploying and operating Machine Learning and Large Language Model (LLM) systems in production environments.
The ideal candidate will have strong experience with Azure ML, MLflow, CI/CD,
containerized deployments, orchestration platforms, and modern LLM
pipelines (RAG, vector DBs, LangChain).
You will be responsible for building robust, scalable, secure and automated ML/LLM infrastructure to support end-to-end model lifecycle management across EY global teams.
To qualify for the role, you must have
Experience:
• 3+ years in Machine Learning Engineering, MLOps, or related fields, with hands- on experience supporting ML and LLM solutions in production.
MLOps & Platform Engineering:
• Strong experience with Azure Machine Learning (Azure ML) for training
pipelines, model registry, deployment, managed compute and automation.
• Practical experience with MLflow for experiment tracking, reproducibility and model lifecycle management.
• Experience building and maintaining CI/CD pipelines (Azure DevOps, GitHub Actions, GitLab CI or similar) specifically for ML/LLM workflows.
LLMOps & Frameworks:
• Hands-on experience with RAG architectures, embeddings, retrieval pipelines and vector stores.
• Proficiency with frameworks such as LangChain, LangGraph, AutoGen,
Semantic Kernel or equivalent tools used in LLM application orchestration.
Programming & Engineering:
• Advanced Python skills following best software engineering practices including Git, testing, versioning, and modularization.
API Development:
• Experience building APIs using Flask, FastAPI, or similar frameworks for
operationalizing ML/LLM services.
Cloud Platforms:
• Hands-on experience with Azure (preferred), or other cloud environments for AI deployment and pipeline orchestration.
Containerization & Orchestration:
• Experience using Docker to package ML and LLM workloads and deploying them in Kubernetes (AKS preferred).
Collaboration & Communication:
• Strong interpersonal skills with the ability to collaborate effectively across cross- functional and global teams.
Education:
• Bachelor’s or Master’s degree in Computer Science, Engineering, AI, or a related technical field.
Ideally, you’ll also have
Trusted AI Practices:
• Knowledge of AI governance, responsible AI principles, transparency, and
accountability.
Deployment & Scalability:
• Experience deploying scalable model and LLM inference services using Kubernetes-native tools (e.g., KServe, Ray Serve, Triton Inference Server).
Monitoring & Reliability:
• Experience implementing monitoring, logging, observability and performance
tracking for ML/LLM systems.
Analytical & Problem-Solving Skills:
• Ability to translate complex operational and business requirements into scalable ML/LLM architectures.
What we offer
In EY GDS Spain, we’re committed to fostering a vibrant environment where every team member can thrive. We provide a space for continuous learning and the flexibility to defin…
Otros requisitos
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