EY

Manager AI Engineer - EY GDS

EY  •  Hybrid  •  5 days ago
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Job Description

AI & Data – AI Manager

  • Location: Buenos Aires (Hybrid)
  • Clients: US‑based Enterprise Clients

About the Role

The AI Manager leads technical strategy, oversees AI/ML engineering teams, and ensures high governance standards across enterprise AI programs. This role combines leadership, architecture, and cross-functional alignment.

Key Responsibilities

  • Lead AI technical strategy, architectural decisions, design and roadmap execution of AI initiatives.
  • Oversee engineering teams delivering AI/ML and LLM-based solutions at scale.
  • Define and enforce technical standards, governance, and responsible AI practices.
  • Partner with business and technical stakeholders to align AI initiatives with organizational goals.
  • Provide coaching, mentorship, and development for AI engineers.

Skills & Qualifications

Python & Development

  • Strong Python (+5 years)
  • Technical leadership;
  • Code reviews;
  • Microservices architecture;
  • Definition of technical standards
  • Preferred: Performance optimization; legacy-to-AI-platform migrations; Distributed systems design
  • We evaluate Technical decisions; scalability; mentoring/coaching; standards

LLMs, RAG & Agents:

  • Enterprise LLM design leadership;
  • Governance, policies & risks;
  • Strategy for RAG and agents;
  • Continuous evaluation pipelines
  • Preferred: Model/vendor selection (Azure/OpenAI/Anthropic/Mistral)
  • What we evaluate Strategy; risks; compliance; cost/safety criteria

Agent Orchestation

  • Agent observability;
  • Langchain
  • Preferred: Langraph, autogen

Cloud (Azure or Databricks):

  • Azure: Cloud architecture (security, networking, cost management, DRP); multi-cloud; AI landing zones.
  • Databricks: Lakehouse governance & design; Lineage; granular permissions; Multi-workspace integration.
  • Preferred: Cross-cloud residency/compliance, Cost strategy & optimization
  • What we evaluate Compliance; standards; scalability. Standardization; architectural decisions; cost control

MLOps & Delivery:

  • Enterprise MLOps strategy;
  • Model governance;
  • AI SLAs (latency, grounding, costs);
  • AI FinOps;
  • Integration with client Data Governance
  • Preferred: Hybrid MLOps (onprem + cloud)
  • What we evaluate Operation at scale; security; cost control

ML Fundamentals:

  • Strategic model decisions for AI products
  • Preferred: Model risk evaluation
  • What we evaluate Impact-driven judgment

AI Factory Design:

  • Cloud/vendor selection;
  • AI infrastructure evaluation (model catalogs, vector DBs, observability);
  • Tooling choices (Databricks, Azure AI Studio, OpenAI, Anthropic);
  • End-to-end governance
  • Preferred: Adoption roadmap; reference playbooks; maturity metrics
  • What we evaluate Vision; ecosystem orchestration; risk & compliance

Communication and other requirements:

  • C1 english executive communication
  • Global stakeholder management
  • Bachelor degree
  • Preferred: Cross-cultural leadership
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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