⌨️ django × cli-tool

Ship cli tool on Django with sensible defaults.

Django is a Python workable choice for cli tool. GreatCTO auto-detects both — adds the cli-tool archetype overlay, wires cli-tool-specific gates, and runs 83 specialist agents around your existing Django workflow.

What changes when GreatCTO joins your Django project

Detection → overlay → gates → reviewers.

1 · DETECT

Stack + archetype

GreatCTO reads your pyproject.toml / requirements.txt and detects django + cli-tool archetype from signals: imports, file structure, env vars, README hints.

2 · OVERLAY

Archetype pack

Attaches the cli-tool archetype overlay: archetype-specific reviewer + compliance gates. Override if your specifics differ; the defaults are sensible for Django-style projects.

3 · GATES

Django-aware reviewers

qa-engineer runs mypy / ruff / pytest --cov; security-officer scans for SQL injection patterns common in ORMs (SQLAlchemy, Django ORM); performance-engineer profiles async patterns for I/O contention.

4 · MEMORY

Cross-project lessons

Bugs you've hit before in other Django projects (connection-pool exhaustion, ORM N+1 queries, retry storms) — the agent's Step 0 includes the prior detection order. MTTR drops 94 % on second occurrence (methodology).

First 10 minutes

Concrete walkthrough.

$ cd my-django-app && npx great-cto init
✓ scanning manifests… found pyproject.toml
✓ stack: django (Python)
✓ archetype: cli-tool
⚠ archetype + stack combo is unusual — review overlay manually
✓ 83 agents ready

$ /start "add cli-tool feature"
▸ architect drafting ARCH-cli-tool.md…
▸ pm decomposing into beads tasks…
⚐ gate:plan — your approval needed

Approve → 3 senior-devs run in parallel worktrees → 5 reviewers fan out in parallel → gate:ship → deploy. One real run walked stage-by-stage: /proof.

What ships

The first feature, Django-idiomatic.

This is the shape of what senior-dev drafts for "cli-tool feature" — auth first, schema validation, and the audit line the cli-tool reviewer requires before gate:ship opens.

# cli_tool/views.py — drafted by senior-dev, reviewed by 5 agents
from django.contrib.auth.decorators import login_required
from .audit import audit_log                  # gate:cli-tool: every decision logged

@login_required                                # security-officer: auth before handler
def create(request):
    form = CliToolForm(request.POST)   # qa-engineer: form validation enforced
    if form.is_valid():
        result = handle(form.cleaned_data, request.user)
        audit_log(who=request.user.pk, what="cli-tool feature", confidence=result.confidence)
        return JsonResponse(result.as_dict())
Where this combo lands

What teams build with Django + the cli-tool overlay.

1

Developer CLIs with shell-injection-safe argv handling.

2

CI/CD utilities with --json output and clean exit codes.

3

Internal ops tooling with secret redaction in verbose logs.

⚠ Honest caveat

Django (Python) is not a typical fit for cli tool. The archetype overlay still attaches, but you may want to override defaults more aggressively. Check the cli-tool archetype page for the typical stack list and decide if your case is the right tool / right archetype.

Architecture

Every step of the pipeline, transparent.

No black-box "AI does it all" loop. GreatCTO is a deterministic state machine — 8 stages, 22 nodes, 2 human gates. Every node maps to a real agent on GitHub. Inspect the state machine →

Install

Django + GreatCTO in one command.

$ npx great-cto init

Free, MIT, runs locally. Built as a Claude Code plugin — install with one command.

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