EY

AI Engineers + Platform Architect - EY GDS

EY  •  Hybrid  •  14 days ago
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AI Success™

Job Description

AI & Data – AI Engineer

  • Location: LATAM (Remote / Hybrid)
  • Clients: US‑based Enterprise Clients

About the Role

The Senior AI Engineer designs, builds, and ships enterprise-grade AI/ML and LLM-based solutions. This role focuses on hands-on engineering, high-quality delivery, and strong collaboration with cross-functional teams.

Key Responsibilities

  • Design, build, and deploy AI/ML and LLM-based solutions in enterprise environments.
  • Collaborate with cross-functional teams (Data Engineering, Cloud, Product) to deliver scalable AI systems.
  • Ensure high engineering standards, maintainability, and best practices.
  • Participate in code reviews, architecture discussions, and solution design.
  • Support continuous improvement of AI delivery processes and tooling.

Skills & Qualifications

Python & Development

  • Advanced Python (3–6 years);
  • FastAPI;
  • scikit-learn;
  • API design;
  • clean code;
  • Preferred: intermediate SQL, Design patterns (clean architecture/hexagonal); microservices; advanced testing; Docker
  • What we evaluate: Code quality; API design; troubleshooting; software architecture discipline; applied SQL

LLMs, RAG & Agents:

  • End-to-end RAG; LangChain/LangGraph;
  • Vector search (FAISS or similar);
  • Fine-tuning (LoRA/QLoRA);
  • Advanced evaluation (RAGAS/TruLens/DeepEval);
  • Agent design
  • Autogen;
  • Preferred: Llama Index; custom retrievers
  • What we evaluate: Hallucination mitigation; grounding; cost/latency trade-offs; quality

Cloud (Azure or Databricks):

  • Cloud (Azure): Azure OpenAI; Azure AI Search; Azure ML; service integration; AKS/Container Apps; API Management
  • Databricks: Advanced MLflow (registry/tracking/serving); Delta Lake; Unity Catalog; Feature Store; Vector Search
  • Preferred: Workflows/DLT,
  • What we evaluate: Secure & scalable architectures; integration; resilience, Pipelines; governance (Unity Catalog); productivity

MLOps & Delivery:

  • CI/CD (GitHub Actions/Azure DevOps);
  • Docker;
  • AKS/Kubernetes;
  • End-to-end ML pipelines;
  • Basic monitoring (latency, cost, failures)
  • Preferred: AI observability (tracing/telemetry); advanced Bicep/Terraform
  • What we evaluate: Reliability; diagnostics; automation

ML Fundamentals:

  • Classic models;
  • Advanced metrics & trade-offs;
  • When to use classic ML vs. LLMs
  • Preferred: Advanced/ensemble models
  • What we evaluate: Technical judgment; model validation

Communication and other requirements:

  • English: Fluent B2+ technical communication
  • Autonomy in English, Technical clarity;
  • Proactive
  • Good at managing request gathering and handling
  • Proactive communication
EY

About EY

EY is building a better working world by creating new value for clients, people, society, the planet, while building trust in the capital markets.

Enabled by data, AI and advanced technology, EY teams help clients shape the future with confidence and develop answers for the most pressing issues of today and tomorrow.

EY teams in more than 150 countries work across a full spectrum of services in assurance, consulting, tax, strategy and transactions, strengthened by sector experience and diverse ecosystem partners.

Find out more about the EY global network: http://ey.com/en_gl/legal-statement

Industry
Consulting & Advisory
Company Size
10,000+ employees
Headquarters
London, GB
Year Founded
Unknown
Website
ey.com
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