Agent Orchestration: LangChain, LangGraph, CrewAI – not just conceptual
tRAG & Vector Stores: Chroma, Weaviate, Pinecone, know where RAG breaks
ePython / TypeScript: Primary languages for agent + backend development
LangSmith / Observability: Tracing, evaluation, debugging agent run
sCloud Platforms: Azure, AWS, GCP (at least one) – deployment, infra, managed service
sMCP / Shared Context: Model Context Protocol, CLAUDE.md, Bead
sAgent Evaluation: Testing non-deterministic outputs, guardrails, eval
sCI/CD & DevOps: Git, containers, pipelines – agents need to ship
Client Communication: Can present architecture to a CXO without jargo
Must have
- : Deployed 2–3 agent-based systems in production – stateful, multi-step, real use
- rsUsed LangGraph for multi-agent orchestration with memory, tool routing, and state manageme
- ntBuilt projects where AI (Claude Code, Codex, Cursor) wrote significant portions of the co
- deImplemented RAG pipelines end-to-end – chunking, embedding, retrieval, re-ranking, evaluati
- onIntegrated agents with real enterprise APIs – not just OpenAI playground or sample da
- taDebugged a production agent failure – and fixed it without blaming the mod
- elCan articulate when NOT to use agents – that is how we know you have built thin
#J-18808-Ljbffr…
