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cargo-ai

Cargo Context

by Cargo · GitHub ↗ · v1.0.1 · MIT-0
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Install in OpenClaw
/install cargo-context
Description
Inspect and edit the workspace's git-backed context repository (the GTM knowledge base of markdown/MDX files) and its runtime sandbox using the Cargo CLI. Us...
README (SKILL.md)

Cargo CLI — Context

The context is a git-backed repository of typed markdown/MDX files that captures a workspace's GTM knowledge (company narrative, ICPs, personas, plays, proof, objections, etc.) and is read/written by both humans and agents. The cargo-ai context domain has two subdomains you'll use:

  • runtime — browse, read, write, edit, and execute against the workspace's runtime sandbox (a checked-out copy of the context repo). write/edit are pushed to the default branch; execute runs are not pushed.
  • graph — build/load the knowledge graph derived from every markdown/MDX file in the context repo.

The canonical example of a context repository is getcargohq/cargo-workspaces. Read its README.md to understand the domain layout and file conventions before writing new entries. For uploading runtime-independent files (CSVs, PDFs) used in batch runs, use cargo-workspace-management (cargo-ai workspaceManagement file upload) instead. For RAG file attachments to agents, use cargo-ai (cargo-ai ai file upload).

See references/conventions.md for the full context repo structure and per-domain templates. See references/response-shapes.md for the JSON shapes returned by each cargo-ai context command. See references/troubleshooting.md for common errors and how to fix them. See references/examples/authoring.md for end-to-end add / edit / delete recipes. See references/examples/lifecycle.md for the bootstrap + refresh-from-calls playbook. See references/examples/graph-queries.md for inspecting the knowledge graph.

Prerequisites

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 — runtime write and runtime edit push commits to the workspace's context repo, so confirming workspace.name first is non-negotiable.

Discover the context first

Before editing anything, see what's in the context repo:

cargo-ai context runtime browse                 # list entries at the runtime sandbox root
cargo-ai context graph get                      # full knowledge graph derived from the repo's md/mdx files

Quick reference

# Runtime sandbox (checked-out copy of the context repo)
cargo-ai context runtime browse [--path \x3Cpath>]
cargo-ai context runtime read --path \x3Cpath> [--start-line \x3Cn>] [--end-line \x3Cn>]
cargo-ai context runtime write --path \x3Cpath> --content \x3Ccontent> [--commit-message \x3Cmessage>]
cargo-ai context runtime edit --path \x3Cpath> --old-string \x3Cold> --new-string \x3Cnew> [--commit-message \x3Cmessage>]
cargo-ai context runtime execute --command \x3Ccommand> [--args \x3Cjson>]

# Knowledge graph
cargo-ai context graph get

Runtime sandbox

The runtime sandbox is a checked-out, executable copy of the context repository. It's the surface you use to read and modify context files, and to run commands against them.

Two important behaviors to remember:

  • write and edit push to the default branch of the context repo. They are not local-only.
  • execute does not push. Changes made to files by a shell command run via execute stay in the sandbox and are discarded — use execute for builds, tests, or inspection, not for committing edits.

Because writes push immediately, confirm the target workspace before the first write/edit:

cargo-ai whoami   # → workspace.uuid, workspace.name

Read the workspace name back to the user. If the session is for a specific client, make sure workspace.name matches before authoring anything — there is no dry-run mode. If workspace.name is generic or ambiguous (e.g. "Main", "Test", a person's name, an internal codename), don't guess — ask the user for the company name and canonical domain (example.com) and confirm both before the first write. If you logged in without pinning a workspace, re-run cargo-ai login --oauth --workspace-uuid \x3Cuuid> (or --token \x3Cworkspace-scoped-token> for non-interactive use).

Edits derived from sales-call analysis should be applied one at a time with human review, not batched. Looping an agent over many calls tends to overweight the loudest signal and miss nuance — see references/examples/lifecycle.md for the call-refresh playbook.

Browse and read

# List entries at the root of the runtime sandbox
cargo-ai context runtime browse

# List entries under a subpath (e.g. a domain folder like persona/ or play/)
cargo-ai context runtime browse --path persona

# Read a full file
cargo-ai context runtime read --path persona/vp-sales-mid-market.md

# Read only a line range (1-indexed, inclusive on both ends)
cargo-ai context runtime read --path play/inbound-trial-to-paid.md --start-line 1 --end-line 40

Write a new file

write creates (or overwrites) a file and pushes a commit to the default branch.

cargo-ai context runtime write \
  --path persona/vp-sales-mid-market.md \
  --content "$(cat \x3C\x3C'EOF'
---
title: VP of Sales, mid-market
description: Owns pipeline, quota, and rep productivity at a 200–2,000-person company.
---

## Role
- Title: VP of Sales
- Seniority: Executive
- Function: Revenue
- Reports to: CRO or CEO

## KPIs
- New ARR, win rate, pipeline coverage, rep ramp time

## Pains
- Pipeline gaps, slow ramp, low rep activity, forecasting drift

## Motivations
- Hit the number, build a repeatable motion, get visibility

## Day-to-day
Forecast calls, deal reviews, pipeline reviews, 1:1s with frontline managers.

## Preferred channels
- medium/linkedin-outbound
- medium/exec-warm-intro

## Common objections
- objection/we-already-have-an-ai-sdr

## How we land
Lead with pipeline-coverage math, not features.
EOF
)" \
  --commit-message "Add VP of Sales mid-market persona"

Edit an existing file

edit replaces a single exact substring. --old-string must occur exactly once in the file; pass an empty --new-string to delete the match.

# Replace one specific sentence
cargo-ai context runtime edit \
  --path global/positioning.md \
  --old-string "We help RevOps automate workflows." \
  --new-string "We help RevOps run AI-native GTM motions." \
  --commit-message "Refresh positioning one-liner"

# Delete a line (pass empty --new-string)
cargo-ai context runtime edit \
  --path persona/vp-sales-mid-market.md \
  --old-string "\
- Outdated stat: 4.2x pipeline\
" \
  --new-string ""

For larger restructures, prefer write (full-file overwrite) over many sequential edit calls.

Execute a command in the sandbox

execute runs a shell command in the sandbox. Useful for inspecting structure or running checks; changes are not pushed.

# Find every file that cross-references a specific slug
cargo-ai context runtime execute \
  --command grep \
  --args '["-r","-l","persona/vp-sales-mid-market","."]'

# Count entries per domain
cargo-ai context runtime execute --command ls --args '["-1","persona"]'

# Run a one-shot script (no quotes/escaping needed inside --command beyond JSON for args)
cargo-ai context runtime execute --command pwd

--args is a JSON array of string arguments. Omit it for a no-arg command.

Context repository structure and conventions

The Cargo context repo is a typed knowledge base. The canonical example — and the source of the conventions below — is getcargohq/cargo-workspaces; read its README.md and _template.md files in each domain before writing new entries. For the full domain reference, see references/conventions.md.

Domains

Domain Purpose
global/ Company-level context: mission, voice, positioning, narrative, pricing
icp/ Ideal Customer Profile segments
persona/ Buyer personas (roles inside an ICP)
jtbd/ Jobs-to-be-done framings
alternative/ Competitors, substitutes, status quo
client/ Customer profiles, case studies, reference accounts
insight/ Market insights and observations
medium/ Channel playbooks (email, LinkedIn, cold call, etc.)
objection/ Objections + responses + proof
play/ GTM plays (signal → audience → channel → sequence → outcome)
proof/ Atomic proof points (metrics, quotes, case data)
signal/ Buying signals and intent triggers

File conventions

  • Filename: kebab-case.md (e.g. vp-sales-mid-market.md).
  • Frontmatter: YAML with title and description, both required on every file.
  • Cross-references: use the domain/slug form, no .md extension (e.g. persona/vp-sales-mid-market).
  • Templates: each domain ships an _template.md. Read it (cargo-ai context runtime read --path persona/_template.md) before authoring a new entry.

Workflow: add a new entry

  1. Confirm the target domain and copy its template:
    cargo-ai context runtime read --path persona/_template.md
    
  2. write a new file at \x3Cdomain>/\x3Cslug>.md with title + description and the body sections filled in.
  3. Add cross-refs (domain/slug) where useful — keep them bidirectional when it makes sense.
  4. Rebuild the knowledge graph to verify the new entry and its links:
    cargo-ai context graph get
    

For full per-domain templates and worked examples, see references/conventions.md and references/examples/authoring.md.

Workflow: bootstrap and refresh

To stand up a new workspace's context repo from scratch, or to refresh an existing one on a cadence, follow the two-phase lifecycle in references/examples/lifecycle.md:

  1. Bootstrap (one-time): seed global/, persona/, client/, proof/, objection/, signal/ from public sources, then open a fresh agent session against the seeded repo. For the prescriptive, automatable version (domain in → files out, idempotent, with credit budget), use references/examples/bootstrap-from-domain.md.
  2. Refresh (every 2–4 weeks): pull the last ~3 months of sales-call transcripts → analyze one at a time, human-in-the-loop → apply a repetition threshold before promoting any claim to context → validate by generating sequence permutations → diff the graph before/after and retire stale entries.

The repetition threshold (how many calls a claim must appear in before it lands in context) is documented in references/conventions.md.

Knowledge graph

context graph get builds (or loads from cache) the knowledge graph over every markdown/MDX file in the context repo. Use it to:

  • Audit cross-references between domains (e.g. find personas that link to plays with no proof attached).
  • Discover what already exists before writing a new entry (avoid duplicates).
  • Power downstream agents that need the typed structure of the workspace's context.
cargo-ai context graph get

The response includes the parsed frontmatter and outbound domain/slug references for each node — pipe it through jq to slice it. See references/examples/graph-queries.md for ready-to-run queries.

Help

Every command supports --help:

cargo-ai context --help
cargo-ai context runtime browse --help
cargo-ai context runtime read --help
cargo-ai context runtime write --help
cargo-ai context runtime edit --help
cargo-ai context runtime execute --help
cargo-ai context graph get --help
Usage Guidance
Install only if you intend to let Cargo operate on your workspace context repository. Confirm the workspace before any write/edit, avoid committing raw call transcripts or sensitive customer data, review repo changes carefully, and use sandbox execution only for simple inspection unless you explicitly approve more.
Capability Tags
requires-oauth-tokenrequires-sensitive-credentials
Capability Assessment
Purpose & Capability
The stated purpose, examples, and metadata consistently describe browsing, reading, writing, editing, executing inspection commands, and querying a git-backed Cargo context repository.
Instruction Scope
The skill repeatedly tells agents to confirm the target workspace, read before editing, avoid batching call-derived edits, and use human review; some reference pages are less explicit but do not add hidden behavior.
Install Mechanism
Installation uses the disclosed npm package @cargo-ai/cli@latest and requires Cargo OAuth or an API token; this is purpose-aligned but users should understand they are trusting an external CLI and account credential.
Credentials
The runtime execute command is broad, but it is disclosed as sandboxed, non-persistent, and mainly shown for inspection commands such as grep, ls, pwd, and find.
Persistence & Privilege
Write and edit operations push commits to the default branch, and rename/delete workflows can affect persistent repository state; this is central to the skill and is disclosed, though privacy and backup cautions could be stronger.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install cargo-context
  3. After installation, invoke the skill by name or use /cargo-context
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.1
- Updated dependency installation to use "@cargo-ai/cli@latest" in SKILL.md. - Simplified and centralized prerequisites section by linking to a shared prerequisites document. - Removed redundant step-by-step install and login instructions from SKILL.md. - No changes to commands, usage, or functionality.
v1.0.0
Initial release of cargo-context. - Introduces a Cargo CLI skill for inspecting and editing a workspace's git-backed context repository and runtime sandbox. - Supports browsing, reading, writing, and editing markdown/MDX files, as well as running commands in the context sandbox. - Provides access to the context-derived knowledge graph for workspace insights. - Requires @cargo-ai/cli and Cargo account to use. - Includes clear usage references, prerequisites, and safety recommendations for editing and executing commands.
Metadata
Slug cargo-context
Version 1.0.1
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 2
Frequently Asked Questions

What is Cargo Context?

Inspect and edit the workspace's git-backed context repository (the GTM knowledge base of markdown/MDX files) and its runtime sandbox using the Cargo CLI. Us... It is an AI Agent Skill for Claude Code / OpenClaw, with 90 downloads so far.

How do I install Cargo Context?

Run "/install cargo-context" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Cargo Context free?

Yes, Cargo Context is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Cargo Context support?

Cargo Context is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Cargo Context?

It is built and maintained by Cargo (@cargo-ai); the current version is v1.0.1.

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