| name | create-cli |
| description | This skill should be used when the user asks to "design a CLI", "help me design command-line flags", "what flags should my tool have", "create a CLI spec", "refactor my CLI interface", "design a CLI my agent can call", or wants to design command-line UX (args/flags/subcommands/help/output/errors/config) before implementation or audit an existing CLI surface for consistency and composability.
|
| argument-hint | [tool-name and one-line description] |
| allowed-tools | ["AskUserQuestion","Read","Glob","Grep","Bash","Write"] |
Create CLI
Design CLI surface area (syntax + behavior), agent-aware, human-friendly.
Phase 1 — Prepare
Read ${CLAUDE_PLUGIN_ROOT}/skills/create-cli/references/cli-guidelines.md. Apply it as the default CLI rubric, including the Agent Ergonomics section.
For new CLI designs, also read ${CLAUDE_PLUGIN_ROOT}/skills/create-cli/references/language-selection.md to inform the language recommendation in Phase 2. Skip it for audits — the language is already chosen.
Proceed when cli-guidelines.md is loaded.
Phase 2 — Clarify
Determine whether this is a new design or an audit from the user's trigger.
New design
Ask, then proceed with best-guess defaults if user is unsure:
- Command name + one-sentence purpose.
- Primary consumer: agent/LLM, human at a terminal, scripted automation, or mixed.
- Input sources: args vs stdin; files vs URLs; secrets (never via flags).
- Output contract: human text by default,
--json for structured output, exit codes.
- Backend/data layer: does it wrap an existing API? Source of the surface — OpenAPI/docs, live URL,
or HAR capture (undocumented/browser-fed)? (cli-guidelines.md → Wrapping an existing API.)
- Interactivity: prompts allowed? need
--no-input? confirmations for destructive ops?
- Config model: flags/env/config-file; precedence; XDG vs repo-local.
- Language & distribution: ask for the user's preferred implementation language, or offer to
recommend one. Ask whether a single binary (no runtime needed on target machine) is required,
or whether a runtime dependency is acceptable. Apply language-selection.md to recommend if
the user is unsure. Platform: macOS/Linux/Windows.
If an existing CLI spec or tool description is provided, read it first — skip questions already answered by it.
Data Layer gate — required when the tool reads from a backend. Run the Data Layer Decision
scorecard (cli-guidelines.md → Stateful CLIs); record adopt cache or stateless + a one-line
rationale. Decide this before drawing the command tree — it changes whether sync/local-read
subcommands exist at all.
Audit
Ask:
- CLI name and source location (repo path, or provide
--help output).
- Primary consumer: agent, human, or mixed.
- Known pain points or specific areas to focus on.
Then explore the codebase: use Glob/Grep to find command definitions, flag registrations, output formatting, and error handling. Run <cli> --help via Bash to capture actual behavior.
Proceed when answers are confirmed or user is unsure — use best-guess defaults.
Phase 3 — Conventions
Apply the conventions from cli-guidelines.md (loaded in Phase 1), including the Agent Ergonomics section. The rules below are the key conventions to enforce — cli-guidelines.md provides the full rubric for edge cases.
If primary consumer is human-only, the Errors and Reduce Tool Calls subsections are optional — apply them only if the user wants script-friendliness.
Output
- Default output is human-readable text; an explicit
--json/--plain flag sets the data format and overrides TTY state. Cosmetics (color, spinners) may TTY-detect; the data format must not rely on it (see cli-guidelines.md → Agent Ergonomics for the TTY/PTY rationale).
- List commands in
--json mode use NDJSON (one JSON object per line) — enables streaming and jq piping without buffering. For paginated results with metadata, a JSON object with an items array is acceptable. If the CLI extends an existing ecosystem that uses JSON arrays (kubectl, aws, gh), match the ecosystem convention.
- Primary data to stdout; diagnostics/errors to stderr.
- Suppress ANSI codes, progress spinners, and decorative output when
--json is passed or when stdout is not a TTY.
Errors (agent/mixed consumers only)
- When
--json is active, emit error objects on stderr: {"error": "<snake_case_code>", "message": "...", "hint": "<exact CLI invocation or null>"} — so agent callers can route recovery logic without parsing free-text stderr. The hint field must be an executable command, not prose.
- Exit codes:
0 success, 1 runtime error, 2 invalid usage; for agent/mixed consumers, extend with the typed table from cli-guidelines.md → Exit codes (typed) (3 not-found, 4 auth, 5 upstream, 7 conflict) — apply identically across all subcommands so agents branch on the code.
Flags
-h/--help always shows help; ignores other args.
--version prints version to stdout.
--json preferred for structured output. --output json/-o json acceptable when the CLI needs multiple output formats (yaml, table, csv) under a single flag. Pick one and apply consistently.
- For commands an agent calls in a loop, offer
--compact (opt-in): same JSON shape, minimal whitespace, essential fields only — --json stays the full-fidelity default. See cli-guidelines.md → Output defaults.
- Consistent flag names across all subcommands for the same concept (
--id, --force, --json) — agents learn the naming pattern once and apply it everywhere without guessing.
- Prompts only when stdin is a TTY;
--no-input disables prompts. --non-interactive acceptable if the ecosystem already uses it.
- Destructive operations: interactive confirmation; non-interactive requires
--force.
- Respect
NO_COLOR, TERM=dumb; provide --no-color.
- Handle Ctrl-C: exit fast; bounded cleanup; crash-only when possible.
Reduce Tool Calls (agent/mixed consumers only)
- Compound output: operations return enough data to avoid a follow-up call.
create returns the new resource's ID and key fields. delete echoes what was removed.
- Rich JSON defaults: in
--json mode, return full objects not just IDs.
- Bounded lists: list commands default to a safe limit (e.g., 50 items) with
--limit to adjust. In JSON mode, include has_more (bool) and optionally next_cursor for keyset pagination. Unbounded output wastes tokens and risks context overflow for agent callers.
- Idempotent by default: where possible, commands are safe to repeat; document preconditions explicitly — agents rely on safe retries for error recovery without human intervention.
Apply all applicable conventions, then proceed to Phase 4.
Phase 4 — Deliver
Audits
Evaluate the existing CLI against every Phase 3 subsection. For each convention, state: what the CLI does today, whether it conforms, and what to change. Also check:
- Flag naming consistency across subcommands.
- Help text quality (examples present, common flags first, fits one screen).
- Config precedence (flags > env > project config > user config > defaults).
- Destructive-op safety (confirmations, --force, --dry-run).
- Shell completion availability.
- Data layer fit: if the CLI reads from a backend, run the Data Layer Decision scorecard; flag when it re-fetches live data that a local cache + compound queries would serve (cli-guidelines.md → Stateful CLIs).
Produce a gap report organized by severity: Breaking (requires API change), Major (agent-breaking or convention violation), Minor (cosmetic/polish). Each finding: current behavior, convention violated, recommended fix with migration risk (none/low/breaking).
New designs
Produce a compact spec the user can implement. Include all relevant sections:
- Command tree + USAGE synopsis.
- Args/flags table (types, defaults, required/optional, examples).
- Subcommand semantics (what each does; idempotence; state changes).
- Output rules: stdout vs stderr;
--json for structured output; --quiet/--verbose.
- Error + exit code map (top failure modes).
- Safety rules:
--dry-run, confirmations, --force, --no-input.
- Config/env rules + precedence (flags > env > project config > user config > system).
- Data layer decision:
adopt cache | stateless verdict + rationale (required when the tool reads from a backend).
- API provenance (when wrapping an existing API): source + endpoint→command mapping; for HAR, the secret/auth/coverage/fragility/ToS checks.
- Shell completion story (if relevant): install/discoverability; generation command or bundled scripts.
- 5–10 example invocations (common flows; include piped/stdin examples).
Use this skeleton, dropping irrelevant sections:
- Language & distribution:
Go · cobra · single binary · goreleaser for CI
(Omit if language was not determined.)
- Name:
mycmd
- One-liner:
...
- USAGE:
mycmd [global flags] <subcommand> [args]
- Subcommands:
mycmd init ...
mycmd run ...
- Global flags:
-h, --help
--version
-q, --quiet / -v, --verbose (define exactly)
--json (structured JSON output; NDJSON for list commands)
- I/O contract:
- Exit codes:
0 success
1 generic failure
2 invalid usage (parse/validation)
- (add command-specific codes only when actually useful)
- Env/config:
- env vars:
- config file path + precedence:
- Data Layer Decision (required when the tool reads from a backend; omit if no backend):
adopt cache | stateless + one-line rationale. If adopt: sync command, local schema
sketch, local-vs-live reads, write invalidation note.
- API Provenance (only when wrapping an existing API; omit for from-scratch tools):
source (OpenAPI/URL/HAR); subcommand ← method+path mapping; for HAR, the five checks.
- Examples:
See ${CLAUDE_PLUGIN_ROOT}/skills/create-cli/examples/example-cli-spec.md for a complete worked example.
If the spec is destined for a skill body or CLAUDE.md, omit unused sections entirely (do not mark them "N/A") and limit examples to ≤5 invocations that each demonstrate multiple patterns.
Phase 5 — Verify
For new specs: confirm the spec covers all applicable sections from the Phase 4 skeleton. Verify the examples section demonstrates at least: --json output, error recovery (if agent/mixed consumer), and one piped/stdin usage.
For backend/API-wrapping specs: confirm a Data Layer Decision verdict is recorded with a rationale (not left implicit), and — when the source is a HAR/undocumented API — that no secret values appear anywhere in the spec (only env-var names) and the coverage/fragility caveats are stated.
For audits: confirm the gap report addresses every Phase 3 subsection and includes at least one example invocation showing the recommended fix for each Major finding.
Skill is complete when verification passes.
Notes
- Once language is selected (Phase 2), include the idiomatic parsing library in the spec (see language-selection.md). If language remains undetermined, omit the library.
- If the request is "design parameters", do not drift into implementation.