Agent resource management: creating and configuring agents, attaching knowledge for retrieval-augmented generation (RAG), connecting MCP servers, and managing agent memories.
> For using agents (sending messages, multi-turn chat, polling), use cargo-orchestration.
> For uploading knowledge files and building knowledge libraries (the content domain), use cargo-content. This skill covers how that knowledge attaches to an agent.
> For workspace administration — folders (used to organize agents and files), users, API tokens, roles, and submitting reports when the CLI fails — use cargo-workspace-management.
> See references/response-shapes.md for full JSON response structures.
> See references/troubleshooting.md for common errors and how to fix them.
> See references/examples/agents.md for agent CRUD and configuration examples.
> See references/examples/mcp-servers.md for MCP server creation and management examples.
See ../cargo/references/prerequisites.md for install, login (--oauth / --token), JSON output conventions, and error shapes. Verify the session with cargo-ai whoami before running any of the commands below.
cargo-ai ai agent list # all agents (uuid, name, description)
cargo-ai ai template list # all AI agent templates (slug, name)
cargo-ai ai mcp-server list # all MCP servers (uuid, name)
cargo-ai ai memory list --scope agent --agent-uuid <uuid> # agent memories
# Knowledge files & libraries live in the content domain — see cargo-content:
# cargo-ai content file list / cargo-ai content library list
Retrieve in the UI: agents live at app.getcargo.io/workspaces/. Get from cargo-ai whoami under workspace.uuid.
cargo-ai ai agent list
cargo-ai ai agent get <agent-uuid>
cargo-ai ai agent create --name <name> --icon-color blue --icon-face 🤖
cargo-ai ai agent update --uuid <agent-uuid> --name <name>
cargo-ai ai agent remove <agent-uuid>
cargo-ai ai release list --agent-uuid <uuid>
cargo-ai ai release get <release-uuid>
cargo-ai ai release get-draft --agent-uuid <uuid>
cargo-ai ai release update-draft --agent-uuid <uuid> --language-model-slug gpt-4o
cargo-ai ai release deploy-draft --agent-uuid <uuid>
cargo-ai ai template list
cargo-ai ai template get <slug>
cargo-ai ai mcp-server list
cargo-ai ai mcp-server create --name "Internal Tools"
cargo-ai ai mcp-server update --uuid <mcp-server-uuid> --name "Updated Name"
cargo-ai ai mcp-server remove <mcp-server-uuid>
cargo-ai ai memory list --scope agent --agent-uuid <uuid>
cargo-ai ai memory update --mem0-id <id> --scope agent --agent-uuid <uuid> --content "Updated memory"
cargo-ai ai memory remove --mem0-id <id> --scope agent --agent-uuid <uuid>
Agents are AI resources with configured instructions, a language model, actions, and optional resources.
Before creating an agent from scratch, check existing templates — they capture proven patterns for common use cases (lead research, classification, email drafting) and give you a ready-made system prompt, model, and temperature to start from:
cargo-ai ai template list # browse available patterns
cargo-ai ai template get <slug> # inspect system prompt, model, and actions
# List all agents
cargo-ai ai agent list
# Get a single agent (includes deployed release details)
cargo-ai ai agent get <agent-uuid>
# Create an agent
cargo-ai ai agent create \
--name "Lead Researcher" \
--icon-color blue --icon-face 🤖 \
--description "Researches leads and enriches data"
# Update an agent
cargo-ai ai agent update --uuid <agent-uuid> \
--name "Senior Lead Researcher" \
--description "Updated description"
# Move to a folder (find folder UUIDs via cargo-workspace-management)
cargo-ai ai agent update --uuid <agent-uuid> --folder-uuid <folder-uuid>
# Remove an agent
cargo-ai ai agent remove <agent-uuid>
Agent icon: --icon-color must be one of: grey, green, purple, yellow, blue, red. --icon-face is an emoji string.
Folders: Folder creation, listing, and management lives in cargo-workspace-management (cargo-ai workspaceManagement folder list/create/...). Use that skill to discover or create the you pass to --folder-uuid here.
Releases are versioned snapshots of an agent's configuration (system prompt, actions, resources, model, temperature). Agents execute against their deployed release.
# List releases for an agent
cargo-ai ai release list --agent-uuid <uuid>
# Get a specific release
cargo-ai ai release get <release-uuid>
# Get the current draft release (editable)
cargo-ai ai release get-draft --agent-uuid <uuid>
# Update the draft release
cargo-ai ai release update-draft --agent-uuid <uuid> \
--system-prompt "You are a lead research assistant..." \
--language-model-slug gpt-4o \
--temperature 0.3 \
--max-steps 10
# Deploy the draft release (makes it live)
cargo-ai ai release deploy-draft --agent-uuid <uuid> \
--integration-slug openai \
--language-model-slug gpt-4o \
--actions '[]' \
--mcp-clients '[]' \
--resources '[]' \
--capabilities '[]' \
--suggested-actions '[]' \
--description "Added research actions"
The release API payload (both draft/update and draft/deploy) accepts two fields that release update-draft / release deploy-draft do not surface as flags (verified against the CLI source — there is no --output / --output-schema or --heartbeat):
| Field | Shape | Purpose | |
|---|---|---|---|
| --- | --- | --- | |
output | {"type":"text"} or {"type":"jsonSchema","jsonSchema": | Force the agent to return structured output matching a JSON Schema. | |
heartbeat | `{"intervalMinutes": number, "maxMessages": number, "prompt": string \ | null}` | Periodically re-wake the chat (intervalMinutes) until it reaches maxMessages; prompt is the wake message (null = generic "continue"). |
The generic --options flag does not carry these — the API's options only holds {connectorUuidsByIntegrationSlug, modelUuidsByIntegrationSlug}. Until the flags ship, set these with a direct API call against the same endpoints the CLI uses:
# Structured (JSON Schema) output on the draft release
curl -sS -X PUT "$CARGO_API_BASE/v1/ai/releases/draft/update" \
-H "Authorization: Bearer $CARGO_TOKEN" -H "Content-Type: application/json" \
-d '{"agentUuid":"<uuid>","output":{"type":"jsonSchema","jsonSchema":{"type":"object","properties":{"score":{"type":"number"}},"required":["score"]}}}'
# Deploy carries the same fields — POST .../v1/ai/releases/draft/deploy
Send these payloads alongside the other fields you're updating (the endpoint replaces the draft config). File a workspaceManagement report (see ../cargo-workspace-management/SKILL.md) to request first-class --output / --heartbeat flags — this is the documented feedback channel for CLI/UI parity gaps.
Agent configuration workflow:
cargo-ai ai template list — find a template close to your use case, then cargo-ai ai template get to see its system prompt, model, and temperaturecargo-ai ai agent create --name "..." --icon-color blue --icon-face 🤖cargo-ai ai release get-draft --agent-uuid cargo-ai ai release update-draft --agent-uuid ... cargo-ai ai release deploy-draft --agent-uuid ... Templates are pre-built agent configurations that capture proven patterns for common use cases. Always check templates before designing an agent from scratch — they give you a ready-made system prompt, recommended language model, temperature, and tool configuration that you can adopt as-is or adapt.
# List available agent templates
cargo-ai ai template list
# Get a template by slug — inspect its system prompt, model, and settings
cargo-ai ai template get <slug>
Templates include a system prompt, actions, resources, and recommended model settings. Use them as a starting point and customize via release update-draft. See references/examples/templates.md for the full guide including an end-to-end example of creating an agent from a template.
| Use case | Recommended model | Temperature |
|---|---|---|
| --- | --- | --- |
| Classification, extraction, scoring | gpt-4o-mini or claude-3-5-haiku | 0.0 – 0.2 |
| Research, summarization, analysis | gpt-4o or claude-3-5-sonnet | 0.2 – 0.5 |
| Copywriting, personalization | gpt-4o or claude-3-5-sonnet | 0.5 – 0.8 |
| Brainstorming, creative ideation | gpt-4o or claude-opus | 0.7 – 1.0 |
Low temperature (0.0–0.2) = deterministic, consistent outputs. High temperature (0.7+) = creative, varied outputs. For production workflows processing thousands of records, prefer low temperature.
Knowledge that grounds agent responses (retrieval-augmented generation, RAG) comes from the content domain — see cargo-content:
native (workspace-managed) or connector-backed (synced from an external source via an unstructured-data extractor).> Files and libraries moved out of ai into the top-level content domain in CLI ≥ 1.0.19 (cargo-ai content file … / cargo-ai content library …). The old ai file … commands are gone. Everything content-related now lives in cargo-content.
A file or library is inert until attached to an agent via the draft release's resources array and deployed. Upload files / build libraries in cargo-content, then wire them in here with release update-draft --resources … followed by release deploy-draft. See ../cargo-content/references/examples/files.md for the full upload → attach → deploy sequence.
MCP (Model Context Protocol) servers expose additional actions to agents. Once connected, agents can call MCP actions automatically during conversations or workflow runs.
# List all MCP servers
cargo-ai ai mcp-server list
# Create an MCP server
cargo-ai ai mcp-server create --name "Internal Tools"
# Update an MCP server
cargo-ai ai mcp-server update --uuid <mcp-server-uuid> --name "Updated Tools"
# Remove an MCP server
cargo-ai ai mcp-server remove <mcp-server-uuid>
MCP clients (connections to MCP servers) are configured on agent releases. Use release update-draft to attach MCP clients to an agent.
Memories are pieces of information an agent stores from conversations for future reference. They can be scoped to a workspace, user, or specific agent.
# List agent memories
cargo-ai ai memory list --scope agent --agent-uuid <uuid>
# List workspace-wide memories
cargo-ai ai memory list --scope workspace
# List user-scoped memories
cargo-ai ai memory list --scope user
# Update a memory
cargo-ai ai memory update \
--mem0-id <id> \
--scope agent --agent-uuid <uuid> \
--content "Updated memory content"
# Remove a memory
cargo-ai ai memory remove \
--mem0-id <id> \
--scope agent --agent-uuid <uuid>
Every command supports --help:
cargo-ai ai agent create --help
cargo-ai ai release update-draft --help
cargo-ai ai mcp-server create --help
cargo-ai ai memory list --help
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