product-skills
Use when coordinating product work across the 12 bundled product sub-skills (RICE, OKRs, UX research, design tokens, competitive teardown, analytics, experiments, discovery, roadmaps, spec-to-repo, landing pages, SaaS scaffolding) or the 4 standalone product-team plugins (user stories, Apple HIG, code-to-PRD, research summarizer). Triggers on 'help me prioritize', 'plan a product experiment', 'we ship features nobody uses', 'run the discovery loop', 'is our OST sound'. Forks context to route to one sub-skill via a deterministic signal router and returns a digest; can also drive a continuous-discovery loop (Torres cadence tracker + OST linter as machine gates) or a full goal→plan→execute→verify→close run through the repo-wide agent-harness. Distinct from project-management (how to deliver vs what to build), marketing/landing (from-scratch pages), and engineering/agent-harness (the generic loop engine this orchestrator plugs into).
How do I install this agent skill?
npx skills add https://github.com/alirezarezvani/claude-skills --skill product-skillsIs this agent skill safe to install?
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This comprehensive skill collection provides tools for product managers, UX researchers, and developers, including RICE prioritization, OKR cascades, persona generation, and SaaS project scaffolding. All provided Python scripts are implemented using the standard library and function as documented. While some tools execute local commands like 'git log' or process user-provided transcripts and documents, these behaviors are necessary for their described productivity functions and contain no malicious patterns.
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What does this agent skill do?
Product Team — Domain Orchestrator & Discovery Loop
This orchestrator does two jobs. Routing: fork context, classify a product inquiry
with scripts/product_goal_router.py across all 16 product-team lanes (12 bundled + 4
standalone plugins), run exactly one, return a digest. Looping: run product work as
bounded agentic loops with machine-checkable gates — the continuous-discovery loop
(weekly cadence scored by discovery_cadence_tracker.py, tree structure enforced by
ost_linter.py) and goal-scale runs through the repo-wide agent-harness.
When to invoke
| Symptom | Sub-skill |
|---|---|
| "Prioritize features / RICE / PRD" | product-manager-toolkit |
| "OKRs, strategy cascade" | product-strategist |
| "Personas, usability, research synthesis" | ux-researcher-designer |
| "Design tokens, WCAG contrast" | ui-design-system |
| "Competitor matrix, teardown" | competitive-teardown |
| "Retention, cohorts, funnels, KPIs" | product-analytics |
| "A/B test, sample size, hypothesis" | experiment-designer |
| "Discovery, assumptions, opportunity trees" | product-discovery |
| "Roadmap comms, release notes, changelog" | roadmap-communicator |
| "Spec → runnable repo" | spec-to-repo |
| "Landing page (Next.js/Tailwind)" | landing-page-generator |
| "SaaS boilerplate" | saas-scaffolder |
| "User stories, sprint capacity" | agile-product-owner (standalone) |
| "Apple HIG audit" | apple-hig-expert (standalone) |
| "PRD from an existing codebase" | code-to-prd (standalone) |
| "Summarize papers/articles" | research-summarizer (standalone) |
Routing logic (deterministic)
python3 scripts/product_goal_router.py --text "<the goal>" --output json
Exit 0 → route_to names the skill (with skill_path, including the standalone
plugins): load its SKILL.md and follow its workflow. Exit 2 → ask ONE clarifying question
naming the listed candidates, with a recommended answer. Exit 3 → no signal: ask the user
to restate the goal with the deliverable named. Never guess silently; never silently
chain — digest first, confirm, then chain.
The discovery loop (the domain's recurring agentic loop)
Modern discovery is a weekly habit, not a project phase (Torres). Run it as a bounded loop with two machine gates:
- Observe — maintain
discovery_log.json(interviews, assumption tests; shape inassets/sample_discovery_log.json) and score the cadence:
Refuses on < 2 interviews (exit 5) — there is no cadence to measure yet. Output: health 0–100, verdict HEALTHY/AT-RISK/DORMANT, named gaps, andpython3 scripts/discovery_cadence_tracker.py --input discovery_log.jsonnext_loop_action. - Choose — the tracker's
next_loop_actionIS the choice: book the touchpoint, re-anchor the guide on the outcome, or test the top untested assumption (route toproduct-discovery's assumption_mapper for prioritization). - Act — run the interview / assumption test with the routed sub-skill's tools.
- Verify — keep the tree structurally sound before it may drive a roadmap:
Rules: one measurable outcome root (O1), opportunities are needs not features (O2), targeted opportunities compare ≥ 2 solutions (O3), every solution has an assumption test (O4), no orphan solutions (O5 — the feature-factory tell).python3 scripts/ost_linter.py --input ost.json # exit 2 = NEEDS-REWORK, fix before citing the tree - Record / Repeat-or-stop — update the log, keep the weekly streak alive. Stop
states: HEALTHY + validated assumption → graduate to
experiment-designer(build the A/B gate) orproduct-manager-toolkit(PRD); DORMANT for 4+ weeks → escalate to the product lead by name — do not quietly let discovery die.
For build-scale goals ("turn this validated spec into a repo and verify it"), compile through the repo-wide harness instead:
python3 engineering/agent-harness/skills/agent-harness/scripts/goal_compiler.py \
--goal "<goal>" --manifest engineering/agent-harness/skills/agent-harness/assets/harnesses/product-team.json \
--out .agent-harness/plan.json
The domain's three strongest close-out gates plug in as task verifications:
../spec-to-repo/scripts/validate_project.py (exit 0), code-to-prd's golden
expected_outputs/, and research-summarizer's citation-count check.
Hard rules
- Evidence before conviction: no roadmap item cites the OST unless
ost_linter.pyexits 0; no insight is asserted from a single participant (anecdote, not insight). - Outcome-first: every loop hangs from one measurable outcome — the linter's O1 rule is the intake gate.
- Experiments are gated by math: sample size from
../experiment-designer/scripts/sample_size_calculator.py, never gut feel; report the MDE with the verdict. - Prioritization shows its framework: RICE for steady-state, WSJF/cost-of-delay when time sensitivity dominates, opportunity scoring for underserved needs — name which and why (see references/product_operating_model.md).
- AI features ship with evals: a golden set + rubric is the PRD's quality contract for probabilistic features (references/ai_product_evals.md).
- Never modify a gate you are judged by; exhausted budgets escalate to a named human, never report as success.
Forcing-question library (grill-with-docs pattern)
One per turn, recommended answer, canon citation. Never run a sub-skill or start a loop until the lane-defining decision is locked:
- DISCOVERY lane: "What is the single outcome this discovery serves, stated with a number? Recommended: write it as the OST root first — opportunities without an outcome are a feature factory. Canon: Torres, Continuous Discovery Habits; opportunity solution trees (producttalk.org)."
- PRIORITIZE lane: "Does time sensitivity change this ranking — would delaying any item a quarter erode its value? Recommended: if yes, run WSJF/cost-of-delay alongside RICE and compare ranks; flag items whose rank flips on a one-step estimate change. Canon: Reinertsen, Principles of Product Development Flow; SAFe WSJF false-precision critique."
- EXPERIMENT lane: "What baseline rate and MDE justify this test's runtime? Recommended: compute n first; if you can't reach it in 4 weeks, test a bigger lever. Canon: statistical power analysis (experiment-designer)."
- ANALYTICS lane: "Is your North Star a leading indicator of value exchange, or revenue/vanity? Recommended: leading value metric with an input tree. Canon: Amplitude, The North Star Playbook."
- STRATEGY lane: "Are these OKRs outcomes or shipping lists? Recommended: outcomes — output OKRs are the #1 operating-model failure. Canon: Cagan, Transformed (SVPG, 2024)."
- BUILD lanes (spec-to-repo / saas-scaffolder): "Which validated assumption says this should be built at all? Recommended: link the OST test that survived; building is the most expensive way to test an idea. Canon: Torres; Bland, Testing Business Ideas."
Assumptions
- The user owns (or advises the owner of) the product decision.
- Discovery data lives in the workspace as JSON logs — the loop is file-backed and
resumable; every tool ships
--sampleso the shape is visible first. - The four standalone plugins are installed alongside the bundle (the router still routes to them by path if not).
Non-goals
- Not the delivery loop — sprint/flow/Jira work routes to
project-management. - Not the generic loop engine — that is
engineering/agent-harness; this orchestrator is the product-domain adapter (router + discovery gates). - Not campaign marketing —
marketing/landingbuilds from-scratch marketing pages;landing-page-generatorhere scaffolds product Next.js/TSX pages.
Output artifacts
| Mode | Artifact |
|---|---|
| Route | Sub-skill's own artifact + ≤ 200-word digest with one canon-cited challenge |
| Discovery loop | discovery_log.json + cadence report + linted ost.json |
| Harness run | .agent-harness/plan.json + state.json + close handoff |
Anti-patterns (do not)
- ❌ Run all 16 lanes "to be thorough" — route to one, digest, chain on confirmation
- ❌ Cite an OST that fails the linter, or promote a single-participant anecdote to insight
- ❌ Ship an AI feature whose PRD has no eval (golden set + rubric)
- ❌ Let the discovery streak die silently — DORMANT escalates by name
- ❌ Treat RICE as the only prioritization lens when deadlines dominate
References
- references/continuous_discovery_canon.md — Torres, OST, assumption testing, JTBD switch interviews, story mapping
- references/product_operating_model.md — Cagan Transformed, North Star framework, PLG benchmarks, WSJF/ODI vs RICE
- references/ai_product_evals.md — evals-as-PRD, model cards, evaluator-optimizer loops
- Loop engine:
engineering/agent-harness· Loop vocabulary:loop-library
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/alirezarezvani/claude-skills/product-skills">View product-skills on skillZs</a>