About The Position

At FlowFuse, a Fullstack Engineer (AI-Focused) builds real product features and internal tooling that apply artificial intelligence to practical user and engineering problems. This role is for a strong fullstack engineer with deep, hands-on experience shipping AI-powered features to production. This is not a research role. You will focus on applied AI: integrating large language models, embeddings, and automation into FlowFuse in a way that is reliable, observable, secure, and valuable to users. This role will be a foundational contributor to establishing FlowFuse’s initial AI patterns, tooling, and best practices. You will collaborate closely with Product, Design, and other engineers to identify high-impact AI use cases and deliver them end to end, while remaining a fullstack contributor across the platform.

Requirements

  • Strong experience working across the full stack.
  • Demonstrated experience shipping AI-powered features to production.
  • Hands-on experience integrating LLM APIs into real systems.
  • Familiarity with embeddings, vector search, or retrieval-augmented generation.
  • Strong judgment around AI tradeoffs, failure modes, cost, and observability.
  • Ability to design AI systems that others can safely extend.
  • Experience shipping small, well-scoped changes incrementally.
  • Comfort working in a remote, async-first environment across multiple time zones.
  • Pragmatic use of AI tools to accelerate development and improve outcomes.

Responsibilities

  • Applied AI Feature Development: Designing and building AI-powered features and tooling used by customers and internal teams.
  • End-to-End Delivery: Owning fullstack solutions that include frontend, backend, and AI components.
  • Capability Building: Establishing patterns, guardrails, and examples that other engineers can safely build on.
  • Reliability and Safety: Ensuring AI features behave predictably in production, including fallback behavior and observability.
  • Collaboration: Working closely with Product, Design, and Engineering peers to scope and deliver AI-driven solutions.
  • Integrate LLM APIs and AI services into FlowFuse features and tooling.
  • Build backend services and frontend interfaces that support AI-powered workflows.
  • Prototype, evaluate, and productionize AI features with clear scope and guardrails.
  • Design for AI failure modes, latency, cost, and operational constraints.
  • Ensure AI features align with privacy, security, and SOC 2 requirements.
  • Share best practices and patterns for applied AI across the engineering team.
  • Contribute to broader fullstack product work as priorities evolve.
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service