| name | creating-agents-in-medusa |
| description | Use when building an internal admin-facing AI agent in a Medusa project. These agents are operated by merchants and store operators — not customers. Covers data models, module service, agent runtime (tools, system prompt, streamText), streaming API routes (NDJSON), and admin UI chat extensions. Load for any internal agent type: store operations assistant, product audit, cohort analysis, customer service tooling for support staff, etc. Do NOT use for customer-facing agents (storefront chatbots, buyer-side assistants). |
Creating Agents in Medusa
This skill covers the full stack for adding an internal, admin-facing AI agent to a Medusa project. These agents are used by merchants and store operators through the Medusa admin dashboard — not by customers on a storefront. For customer-facing agents (e.g. a storefront chatbot), a different architecture is needed: public API routes, no MedusaExec, and storefront auth.
Constraints
- Internal use only — this architecture is for admin users (merchants, operators, support staff), not customers. Routes live under
src/api/admin/, the UI lives in the Medusa admin dashboard, and access is gated by admin authentication throughout.
- Authentication is non-negotiable — MedusaExec runs arbitrary TypeScript with full database access. All agent routes must use
AuthenticatedMedusaRequest and live under src/api/admin/. An unauthenticated endpoint is a remote code execution vulnerability.
- Use MedusaExec, not custom tools — for any data operation, the agent writes TypeScript and executes it via MedusaExec. Only build a custom tool for capabilities that cannot be expressed as executable TypeScript (e.g. calling an external API with a secret key).
- One shared module, multiple agents —
AgentSession and AgentMessage are shared infrastructure. Use agent_type to distinguish sessions per agent. Never create separate models per agent.
- Pass
MedusaContainer via experimental_context — never import services directly in tool files; that causes circular dependencies.
- Stream format is NDJSON —
Content-Type: application/x-ndjson, one JSON object per line followed by \n.
- Run migrations after adding or changing models (
npx medusa db:generate agent && npx medusa db:migrate).
- Tool descriptions live in config, not inline in
tool() — the config object overrides them at runtime.
CRITICAL: Load Reference Files When Needed
⚠️ The quick reference below is NOT sufficient for implementation. Load the relevant reference file before writing any code.
| Task | Load this file |
|---|
| Defining conversation models | reference/data-models.md |
| Setting up the module service | reference/service.md |
| Configuring tools, prompt, streamText | reference/agent-setup.md |
| Building the POST chat endpoint | reference/api-route.md |
| Implementing NDJSON streaming | reference/streaming.md |
| Building the admin chat UI | reference/admin-extension.md |
| Giving the agent code execution capability | reference/medusa-exec.md |
Minimum requirement: Load at least the reference file matching your current task before writing code.
Related Skills
Load these alongside this skill when relevant:
building-with-medusa — Medusa module patterns, workflows, data model conventions. Load when implementing the module service or custom backend logic.
building-admin-dashboard-customizations — Admin UI component patterns, TanStack Query, route registration. Load when building or extending the admin chat UI.
Architecture Overview
src/modules/agent/
index.ts ← Module() export + AGENT_MODULE constant
service.ts ← MedusaService + Anthropic client + stream(messages, container, config)
models/
session.ts ← AgentSession (shared across all agents, filtered by agent_type)
message.ts ← AgentMessage
agents/index.ts ← streamText() orchestration
tools/
medusa-exec.ts ← MedusaExec tool (primary tool for all data operations)
todo-write.ts ← TodoWrite tool
config/
<agent-type>.ts ← per-agent system prompt + tool descriptions
src/api/admin/agent/<agent-type>/
route.ts ← POST (AuthenticatedMedusaRequest, session lifecycle, NDJSON stream)
sessions/route.ts ← GET session list (filtered by agent_type)
sessions/[id]/route.ts ← GET messages for a session
src/admin/routes/<agent-type>/
page.tsx ← React chat UI (admin extension)
src/lib/code-mode/
executor.ts ← sandboxed TypeScript executor used by MedusaExec
Common Mistakes
Verify you are NOT doing these:
Security:
Architecture:
Streaming:
Module:
Reference Files Available
reference/data-models.md - model.define(), agent_type discriminator, relationships, migrations
reference/service.md - MedusaService extension, Anthropic init, stream(), module index, config registration
reference/agent-setup.md - streamText(), MedusaExec tool wiring, system prompt, context passing
reference/api-route.md - POST route, session lifecycle, message persistence, streaming headers
reference/streaming.md - NDJSON emission, fullStream iteration, chunk types, client-side parsing
reference/admin-extension.md - React chat UI, streaming fetch, message rendering, tool call display, session sidebar
reference/medusa-exec.md - Executor setup, MedusaExec tool, query.graph() patterns, error codes
Testing
Once the agent is implemented, test it end-to-end directly in the admin dashboard:
- Start the Medusa dev server (
npx medusa develop)
- Open the admin dashboard and navigate to the agent's page in the sidebar (the label set in
defineRouteConfig)
- Type a simple read-only prompt — e.g. "How many products are in the store?" — and submit
- Verify the response streams in and a new session appears in the sidebar
- Send a follow-up message in the same session to confirm conversation history is preserved
- Reload the page, select the session from the sidebar, and confirm the message history is restored from the database
If anything is broken, check:
- Browser network tab — the POST request should return
Content-Type: application/x-ndjson with chunked lines
- Server logs —
[agent] tool_call and [agent] step_finish lines confirm the agent is running
- Database —
agent_session and agent_message tables should have rows with the correct agent_type