Own end-to-end delivery of AI workstreams: from requirements through data preparation, modelling, integration, testing, and production handover
Develop agentic applications including RAG pipelines, prompt-engineered agents, and agentic workflows using LangChain, LlamaIndex, LangGraph, or plain Python
Build on top of GenAI application stacks including LLM orchestration, observability (Langfuse, Braintrust), guardrails, and LLM gateway patterns (LiteLLM, Portkey)
Implement multi-agent orchestration layer: event routing, resource locking, inter-agent handoff contracts, prompt caching, and shared state management
Implement agentic design patterns including workflow evaluation, LLM-as-Judge, and AI red teaming
Adopt Model Context Protocol (MCP) and Agent-to-Agent (A2A) Protocol as foundational extension mechanisms, enabling agents to operate safel...
Ready to Apply?
Join thousands of Americans building their careers