Integrate conversational experiences across web, mobile, SMS, and email channels
Make real decisions around prompt design, model selection, latency/cost/quality tradeoffs, and failure modes
Collaborate with product, design, and ML teams to build systems that are technically sound and product-aware
Requirements
Have shipped conversational AI or agent-based systems used by real users in production
Have built production systems on top of LLM APIs and agent frameworks — not just prompt playgrounds, but real integrations involving tool orchestration, context management, and reliability at scale
Have a point of view on model selection tradeoffs — when to use frontier APIs vs. open-weight models (Qwen, Llama, Mistral), and understand the cost, latency, privacy, and capability tradeoffs of each
Have built context graph pipelines that go beyond naive retrieval — entity resolution, relationship modeling, and dynamic context assembly from structured and unstructured data
Have designed agent architectures that use function calling, tool execution, or multi-step reasoning
Have strong programming skills in Python or TypeScript
Have experience building and integrating APIs and backend services
Are comfortable reasoning about evaluation, safety, and reliability in non-deterministic systems
Take initiative naturally and are comfortable operating with ambiguity.