Loading...
Loading...
Create and maintain a control-system metalayer for autonomous code-agent development in any repository. Use when you need explicit control primitives (setpoints, sensors, controller policy, actuators, feedback loop, stability and entropy controls), repo command/rule governance, and a scalable folder topology that lets agents operate safely and keep improving over time.
npx skill4agent add broomva/agent-control-metalayer-skill control-metalayer-loopreferences/control-primitives.mdreferences/rules-and-commands.mdreferences/topology-growth.mdreferences/wizard-cli.mdpython3 scripts/control_wizard.py init <repo-path> --profile governedbaselinegovernedautonomouspython3 scripts/control_wizard.py init <repo-path> --profile baselineAGENTS.mdPLANS.mdMETALAYER.mdMakefile.controlscripts/control/*docs/control/ARCHITECTURE.mddocs/control/OBSERVABILITY.mdpython3 scripts/control_wizard.py init <repo-path> --profile governed.control/policy.yaml.control/commands.yaml.control/topology.yamldocs/control/CONTROL_LOOP.mdevals/control-metrics.yamlpython3 scripts/control_wizard.py init <repo-path> --profile autonomousscripts/control/install_hooks.sh.githooks/*scripts/control/recover.shscripts/control/web_e2e.shscripts/control/cli_e2e.sh.github/workflows/web-e2e.yml.github/workflows/cli-e2e.ymltests/e2e/web/*playwright.config.tstests/e2e/cli/smoke.sh.control/state.json.github/workflows/control-nightly.ymlpython3 scripts/control_wizard.py audit <repo-path>
python3 scripts/control_wizard.py audit <repo-path> --strictsmokechecktestrecoverweb-e2ecli-e2e