Lead AI Engineer — Productivity Systems
Software Engineering, Data Science
United States · Palo Alto, CA, USA · Miami, FL, USA · Durham, NC, USA · Washington, DC, USA
USD 11,712-17,568 / month + Equity
About Us
Nu is one of the largest digital financial platforms in the world, with more than 122 million customers across Brazil, Mexico, and Colombia. Guided by our mission to fight complexity and empower people, we are redefining financial services in Latin America and this is still just the beginning of the purple future we're building.
Listed on the New York Stock Exchange (NYSE: NU), we combine proprietary technology, data intelligence, and an efficient operating model to deliver financial products that are simple, accessible, and human.
Our impact has been recognized by global rankings such as Time 100 Companies, Fast Company’s Most Innovative Companies, and Forbes World’s Best Bank. Visit our institutional page https://international.nubank.com.br/careers/
About the Role
We are looking for an engineer who has already built with AI in production. You have shipped LLM-powered systems (agents, copilots, RAG pipelines, or AI-driven automations), you know what breaks when they meet real users, and you know how to make them reliable enough for business-critical workflows.
Your day-to-day is applied AI engineering: designing agentic workflows, integrating LLMs into internal tools and business processes, building evaluation and guardrail layers, and turning manual, high-friction workflows into AI-assisted ones that thousands of Nubankers depend on.
This is not an infrastructure role. You will not spend your days on Terraform, IAM policies, or email deliverability. Cloud fluency helps, but the core of this job is the AI layer — prompts, context, agents, evaluations, integrations — and the product judgment to know where AI genuinely helps versus where deterministic automation is the right answer.
Key Responsibilities
Applied AI & Agentic Systems
- Design, build, and ship LLM-powered agents and workflows that automate complex internal processes end-to-end.
- Work hands-on with frontier models and the modern AI stack: tool/function calling, structured outputs, MCP, RAG, multi-agent orchestration.
- Own the full lifecycle of an AI system: from problem discovery and prototype to production hardening, monitoring, and iteration.
Evaluation & Reliability
- Build evaluation harnesses, guardrails, and quality feedback loops so AI systems can be trusted in production — not just demoed.
- Define what "good" looks like for non-deterministic systems and instrument it: evals, regression suites, human-in-the-loop review where it matters.
Intelligent Workflow Automation
- Use orchestration platforms (e.g., n8n) and custom integrations as delivery vehicles for AI-in-the-loop automation across business units.
- Integrate enterprise platforms (Slack, Google Workspace, Jira, internal APIs) into coherent, AI-assisted workflows.
AI Adoption & Governance
- Drive the technical strategy for AI adoption within engineering and business workflows.
- Develop governance frameworks that make AI coding assistants and agents safe, compliant, and effective — balancing developer freedom with security and operational risk.
Multiplier Work
- Create Golden Paths, reference implementations, and documentation that let other teams build AI workflows safely on their own.
- For Lead/IC6: act as the technical reference for applied AI in the domain, influence architecture beyond the immediate team, mentor senior engineers, and partner with ITSec and Privacy to align AI solutions with company policy.
- For Senior/IC5: execute complex AI projects with high autonomy, identify workflow bottlenecks worth automating, and mentor mid-level engineers.
What are we looking for?
Must Have — Demonstrated Applied AI Experience
- Shipped LLM systems in production: at least one real system with an LLM at its core — an agent, copilot, RAG application, or AI-driven automation — used by real users, not a proof of concept.
- Hands-on AI engineering: practical fluency with prompt and context engineering, tool/function calling, structured outputs, and agent frameworks or orchestration patterns.
- Evaluation mindset: experience measuring and improving AI output quality — evals, test sets, feedback loops — and an honest understanding of failure modes (hallucination, drift, prompt injection).
- Solid software engineering foundation: proficiency in Python, TypeScript, or Clojure; strong API and integration skills; the discipline to ship maintainable systems, not notebooks.
- AI product sense: the judgment to identify which problems deserve an LLM, which need deterministic automation, and which should not be automated at all.
Nice to Have
- Experience with workflow automation platforms (n8n, Zapier, or custom orchestration engines).
- Exposure to cloud services (AWS) and infrastructure-as-code.
- Familiarity with AI developer tooling (Claude Code, Cursor, Copilot) and AI governance practices.
Behavioral & Strategic Skills
- Builder bias: you prototype fast, validate with real users, and harden what works.
- Governance-aware: you understand that "efficiency" must be balanced with "security," and you can design AI systems that are safe by default without destroying velocity.
- Multiplier: you enjoy documenting your work, creating Golden Paths, and teaching others how to use what you build.
- Comfortable with ambiguity: AI capabilities shift monthly; you treat that as an opportunity to re-solve problems better, not as churn.
Location
- Durham, United States
- Miami, United States
- Palo Alto, United States
- Washington DC, United States
Our Benefits
- Opportunity of earning equity at Nu
- Medical Insurance
- Dental and Vision Insurance
- Life Insurance and AD&D
- Extended maternity and paternity leaves
- Nucleo - Our learning platform of courses
- NuLanguage - Our language learning program
- NuCare - Our mental health and wellness assistance program
- 401K
- Saving Plans - Health Saving Account and Flexible Spending Account
- Work-from-home Allowance
- Relocation Assistance Package, if applicable.
Work Model for this Role
Hybrid 2–3 times/week: Our hybrid work model brings us to the office at least twice a week, on strategic days designed to maximize team connection and collaboration. For more details, visit https://building.nubank.com/nu-hybrid-work-model/
Location-Specific Disclosures
- Palo Alto: Total compensation includes base salary, RSUs and benefits. Base salary range: $11,712 - $17,568