AI Solutions Engineer

Affirm Affirm · Fintech · Canada, United States · Remote · People Tech, Data & Analytics

This role involves building and deploying AI-powered systems, specifically agents, APIs, and applications, for Affirm's People function. The engineer will own the full lifecycle from architecture to production maintenance, integrating with existing HR tools and ensuring data governance and security. Key responsibilities include designing reliability infrastructure for LLM services, working with non-technical stakeholders, and contributing to the team's Python/Snowflake codebase.

What you'd actually do

  1. Build and ship AI agents, APIs, and applications on Affirm's internal platform (Snowpark Container Services / Quicksilver). You own the full lifecycle: architecture, containerization, networking, secrets, CI/CD, monitoring, and fixing what breaks.
  2. Turn messy business requirements from People Operations stakeholders into production systems. Integrate with Workday, Notion, and case management tools so AI surfaces real answers from governed content, not model guesses.
  3. Navigate Affirm's existing security and data governance infrastructure to get AI systems running safely on people data. RBACs, data classification, and access policies already exist, but connecting them across systems (Workday, Snowflake, case tools) is where it gets messy. You figure out what's allowed, build within those constraints, and make sure employee data stays where it's supposed to.
  4. Design reliability infrastructure for multi-model LLM services. Structured output validation, fallback chains, circuit breakers for external APIs, and quality controls that catch hallucination before users see it.
  5. Work directly with non-technical stakeholders to scope problems, make architecture decisions, and give honest assessments of what AI can and can't do. You translate in both directions.

Skills

Required

  • Software engineering foundation
  • production applications
  • version control (Git/GitHub)
  • CI/CD pipelines
  • containerization
  • Python
  • systems thinking
  • technical architecture
  • databases
  • APIs
  • authentication
  • hosting
  • deployment pipelines
  • architecture decisions
  • evaluate trade-offs
  • read code
  • builder disposition
  • created something from nothing
  • work across the technical-business boundary
  • non-technical stakeholders

Nice to have

  • Snowpark Container Services
  • Quicksilver
  • Workday
  • Notion
  • case management tools
  • RBACs
  • data classification
  • access policies
  • dbt models
  • Snowflake infrastructure

What the JD emphasized

  • Build and ship AI agents
  • production systems
  • AI agents
  • LLM services
  • AI tools

Other signals

  • AI agents
  • production systems
  • LLM services
  • AI tools