Agent skill
using-agentops
Meta skill explaining the AgentOps operating model. Hook-capable runtimes inject it at session start; Codex uses it through the explicit startup fallback. Covers bookkeeping, validation, primitives, flows, the RPI lifecycle, and the skill catalog.
Install this agent skill to your Project
npx add-skill https://github.com/boshu2/agentops/tree/main/cli/embedded/skills/using-agentops
Metadata
Additional technical details for this skill
- tier
- meta
- internal
- YES
- dependencies
-
[]
SKILL.md
AgentOps Operating Model
AgentOps is the operational layer for coding agents.
Publicly, it gives you four things:
- Bookkeeping — captured learnings, findings, and reusable context
- Validation — plan and code review before work ships
- Primitives — single skills, hooks, and CLI surfaces
- Flows — named compositions like
/research,/validation, and/rpi
Technically, AgentOps acts as a context compiler: raw session signal becomes reusable knowledge, compiled prevention, and better next work.
Core Flow: RPI
Research → Plan → Implement → Validate
↑ │
└──── Knowledge Flywheel ────┘
Research Phase
/research <topic> # Deep codebase exploration
ao search "<query>" # Search existing knowledge
ao search "<query>" --cite retrieved # Record adoption when a search result is reused
ao lookup <id> # Pull full content of specific learning
ao lookup --query "x" # Search knowledge by relevance
Output: .agents/research/<topic>.md
Plan Phase
/pre-mortem <spec> # Simulate failures (error/rescue map, scope modes, prediction tracking)
/plan <goal> # Decompose into trackable issues
Output: Beads issues with dependencies
Implement Phase
/implement <issue> # Single issue execution
/crank <epic> # Autonomous epic loop (uses swarm for waves)
/swarm # Parallel execution (fresh context per agent)
Output: Code changes, tests, documentation
Validate Phase
/vibe [target] # Code validation (finding classification + suppression + domain checklists)
/post-mortem # Validation + streak tracking + prediction accuracy + retro history
/retro # Quick-capture a single learning
Output: .agents/learnings/, .agents/patterns/
Phase-to-Skill Mapping
| Phase | Primary Skill | Supporting Skills |
|---|---|---|
| Discovery | /discovery |
/brainstorm, /research, /plan, /pre-mortem |
| Implement | /crank |
/implement (single issue), /swarm (parallel execution) |
| Validate | /validation |
/vibe, /post-mortem, /retro, /forge |
Choosing the skill:
- Use
/implementfor single issue execution. Now defaults to TDD-first — writes failing tests before implementing. Skip with--no-tdd. - Use
/crankfor autonomous epic execution (loops waves via swarm until done). Auto-generates file-ownership maps to prevent worker conflicts. - Use
/discoveryfor the discovery phase only (brainstorm → search → research → plan → pre-mortem). - Use
/validationfor the validation phase only (vibe → post-mortem → retro → forge). - Use
/rpifor full lifecycle — delegates to/discovery→/crank→/validation. - Use
/ratchetto gate/record progress through RPI.
Start Here (12 starters)
These are the skills every user needs first. Everything else is available when you need it.
| Skill | Purpose |
|---|---|
/quickstart |
Guided onboarding — run this first |
/bootstrap |
One-command full AgentOps setup — fills gaps only |
/research |
Deep codebase exploration |
/council |
Multi-model consensus review + finding auto-extraction |
/vibe |
Code validation (classification + suppression + domain checklists) |
/rpi |
Full RPI lifecycle orchestrator (/discovery → /crank → /validation) |
/implement |
Execute single issue |
/retro --quick |
Quick-capture a single learning into the flywheel |
/status |
Single-screen dashboard of current work and suggested next action |
/goals |
Maintain GOALS.yaml fitness specification |
/push |
Atomic test-commit-push workflow |
/flywheel |
Knowledge flywheel health monitoring (σ×ρ > δ/100) |
Advanced Skills (when you need them)
| Skill | Purpose |
|---|---|
/compile |
Active knowledge intelligence — Mine → Grow → Defrag cycle |
/llm-wiki |
External reading wiki proposal — raw sources to compiled wiki |
/harvest |
Cross-rig knowledge consolidation — sweep, dedup, promote to global hub |
/knowledge-activation |
Operationalize a mature .agents corpus into beliefs, playbooks, briefings, and gap surfaces |
/brainstorm |
Structured idea exploration before planning |
/discovery |
Full discovery phase orchestrator (brainstorm → search → research → plan → pre-mortem) |
/plan |
Epic decomposition into issues |
/design |
Product validation gate — goal alignment, persona fit, competitive differentiation |
/pre-mortem |
Failure simulation (error/rescue, scope modes, temporal, predictions) |
/post-mortem |
Validation + streak tracking + prediction accuracy + retro history |
/bug-hunt |
Root cause analysis |
/release |
Pre-flight, changelog, version bumps, tag |
/crank |
Autonomous epic loop (uses swarm for each wave) |
/swarm |
Fresh-context parallel execution (Ralph pattern) |
/evolve |
Goal-driven fitness-scored improvement loop |
/autodev |
PROGRAM.md autonomous development contract setup and validation |
/dream |
Interactive Dream operator surface for setup, bedtime runs, and morning reports |
/doc |
Documentation generation |
/retro |
Quick-capture a learning (full retro → /post-mortem) |
/validation |
Full validation phase orchestrator (vibe → post-mortem → retro → forge) |
/ratchet |
Brownian Ratchet progress gates for RPI workflow |
/forge |
Mine transcripts for knowledge — decisions, learnings, patterns |
/readme |
Generate gold-standard README for any project |
/security |
Continuous repository security scanning and release gating |
/security-suite |
Binary and prompt-surface security suite — static analysis, dynamic tracing, offline redteam, policy gating |
/test |
Test generation, coverage analysis, and TDD workflow |
/red-team |
Persona-based adversarial validation — probe docs and skills from constrained user perspectives |
/review |
Review incoming PRs, agent output, or diffs — SCORED checklist |
/refactor |
Safe, verified refactoring with regression testing at each step |
/deps |
Dependency audit, update, vulnerability scanning, and license compliance |
/perf |
Performance profiling, benchmarking, regression detection, and optimization |
/scaffold |
Project scaffolding, component generation, and boilerplate setup |
/scenario |
Author and manage holdout scenarios for behavioral validation |
Expert Skills (specialized workflows)
| Skill | Purpose |
|---|---|
/grafana-platform-dashboard |
Build Grafana platform dashboards from templates/contracts |
/codex-team |
Parallel Codex agent execution |
/openai-docs |
Official OpenAI docs lookup with citations |
/oss-docs |
OSS documentation scaffold and audit |
/reverse-engineer-rpi |
Reverse-engineer a product into feature catalog and specs |
/pr-research |
Upstream repository research before contribution |
/pr-plan |
External contribution planning |
/pr-implement |
Fork-based PR implementation |
/pr-validate |
PR-specific validation and isolation checks |
/pr-prep |
PR preparation and structured body generation |
/pr-retro |
Learn from PR outcomes |
/complexity |
Code complexity analysis |
/product |
Interactive PRODUCT.md generation |
/handoff |
Session handoff for continuation |
/recover |
Post-compaction context recovery |
/trace |
Trace design decisions through history |
/provenance |
Trace artifact lineage to sources |
/beads |
Issue tracking operations |
/heal-skill |
Detect and fix skill hygiene issues |
/converter |
Convert skills to Codex/Cursor formats |
/update |
Reinstall all AgentOps skills from latest source |
Knowledge Flywheel
Every /post-mortem promotes learnings and patterns into .agents/ so future /research starts with better context instead of zero.
Runtime Modes
AgentOps has four runtime modes. Do not assume hook automation exists everywhere.
| Mode | When it applies | Start path | Closeout path | Guarantees |
|---|---|---|---|---|
gc |
Gas City (gc) binary available and city.toml present |
gc controller manages sessions; ao rpi auto-selects gc executor |
gc event bus captures phase/gate/failure/metric events | Default when gc is available. Phase execution via gc sessions, events via gc event bus, agent health via gc health patrol |
hook-capable |
Claude/OpenCode with lifecycle hooks installed (no gc) | Runtime hook or ao inject / ao lookup |
Runtime hook or ao forge transcript + ao flywheel close-loop |
Automatic startup/context injection and session-end maintenance when hooks are installed |
codex-native-hooks |
Codex CLI v0.115.0+ with native hook support (March 2026) | Runtime hooks (same as hook-capable) | Runtime hooks (same as hook-capable) | Native lifecycle hooks — same guarantees as hook-capable mode |
codex-hookless-fallback |
Codex Desktop / Codex CLI pre-v0.115.0 without hook surfaces | ao codex start |
ao codex stop |
Explicit startup context, citation tracking, transcript fallback, and close-loop metrics without hooks |
manual |
No hooks and no Codex-native runtime detection | ao inject / ao lookup |
ao forge transcript + ao flywheel close-loop |
Works everywhere, but lifecycle actions are operator-driven |
Issue Tracking
This workflow uses beads for git-native issue tracking:
bd ready # Unblocked issues
bd show <id> # Issue details
bd close <id> # Close issue
bd vc status # Inspect Dolt state if needed (JSONL auto-sync is automatic)
Examples
Startup Context Loading
Hook-capable runtimes
session-start.sh(or equivalent) can run at session start.- In
manualmode, MEMORY.md is auto-loaded and the hook points to on-demand retrieval (ao search,ao lookup). - In
leanmode, the hook extracts pending knowledge and injects prior learnings with a reduced token budget. - This skill can be injected automatically into session context.
Codex (v0.115.0+: native hooks, older: hookless fallback)
- v0.115.0+: hooks fire automatically — same behavior as hook-capable runtimes above.
- Pre-v0.115.0: run
ao codex startexplicitly, useao lookupfor citations, end withao codex stop.
Result: The agent gets the RPI workflow, prior context, and a citation path in all modes.
Workflow Reference During Planning
User says: "How should I approach this feature?"
What happens:
- Agent references this skill's RPI workflow section
- Agent recommends Research → Plan → Implement → Validate phases
- Agent suggests
/researchfor codebase exploration,/planfor decomposition - Agent explains
/pre-mortemfor failure simulation before implementation - User follows recommended workflow with agent guidance
Result: Agent provides structured workflow guidance based on this meta-skill, avoiding ad-hoc approaches.
Troubleshooting
| Problem | Cause | Solution |
|---|---|---|
| Skill not auto-loaded | Hook runtime unavailable or startup path not run | Hook-capable runtimes: verify hooks/session-start.sh exists and is enabled. Codex: run ao codex start explicitly |
| Outdated skill catalog | This file not synced with actual skills/ directory | Update skill list in this file after adding/removing skills |
| Wrong skill suggested | Natural language trigger ambiguous | User explicitly calls skill with /skill-name syntax |
| Workflow unclear | RPI phases not well-documented here | Read full workflow guide in README.md or docs/ARCHITECTURE.md |
Recommended Agent Skills
Expand your agent's capabilities with these related and highly-rated skills.
swarm
Spawn isolated Codex sub-agents for parallel task execution using the current runtime primitives. Triggers: "swarm", "spawn agents", "parallel work", "run in parallel", "parallel execution".
council
Multi-perspective review for Codex using the current sub-agent runtime. Triggers: "council", "get consensus", "multi-model review", "multi-perspective review", "council validate", "council brainstorm", "council research".
openai-docs
Use when the user asks how to build with OpenAI products or APIs and needs up-to-date official documentation with citations (for example: Codex, Responses API, Chat Completions, Apps SDK, Agents SDK, Realtime, model capabilities or limits); prioritize OpenAI docs MCP tools and restrict any fallback browsing to official OpenAI domains.
crank
Hands-free epic execution for Codex using wave-based sub-agents and lead-side validation. Triggers: "crank", "run epic", "execute epic", "run all tasks", "hands-free execution", "crank it".
pr-retro
Learn from PR outcomes. Analyzes accept/reject patterns and updates contribution lessons. Triggers: "pr retro", "learn from PR", "PR outcome", "why was PR rejected", "analyze PR feedback".
ratchet
Brownian Ratchet progress gates for RPI workflow. Check, record, verify. Triggers: "check gate", "verify progress", "ratchet status".
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