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jamiemill/layers-skills1.3k installs

layers-product-strategy

Techniques for connecting user opportunities to business outcomes and solution bets, and testing the riskiest assumptions cheaply

How do I install this agent skill?

npx skills add https://github.com/jamiemill/layers-skills --skill layers-product-strategy
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    The skill is a product strategy framework that guides users through creating opportunity-solution trees. It contains no executable code, network connections, or sensitive file access, and is considered safe for use.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

What does this agent skill do?

/layers-product-strategy

Assumes /layers-intro has been loaded. This skill is a library of techniques, not a script — see "How to use these skills" there.

Strategy is the first layer of the solution space — where problem-space understanding converts into deliberate decisions about scope and direction. It is about choices: which user needs to serve, and which business outcomes to target.


The decisions this layer makes

  • The business outcome this work serves
  • Which user opportunities (needs, pains, desires) genuinely connect to that outcome
  • What solution bets we're placing on those opportunities
  • How to test the riskiest assumptions cheaply
  • Which bets to pursue first, and why

If the outcome and the bets are already clear, don't rebuild the tree for its own sake.


Disciplines — what keeps strategy honest

  • The outcome is measurable, meaningful, and bounded. Not "grow the product" but "increase users who activate in the first 30 days." One outcome per tree.
  • Opportunities are customer needs/pains/desires — anchored to a journey moment. First-person, problem-space statements ("I don't know which streaming service has this movie"), not job stories and not features. Apply the flip test: if you can restate it as a feature, it's a solution in disguise. Keep them specific, not generic. Group opportunities by journey moment — the forcing function that exposes vague opportunities and surfaces moments left unaddressed. (Teresa Torres.)
  • Every opportunity connects to the outcome. If serving it wouldn't move the outcome, it doesn't belong in this tree.
  • Every bet names its riskiest assumption, and there's more than one bet per opportunity — resist early convergence.
  • Every experiment is the cheapest way to test the core assumption — days, not months.

Techniques

The Opportunity Solution Tree is the default; the rest serve particular strategic questions.

TechniqueUse it when
Opportunity Solution Tree (Teresa Torres)Default. Makes outcome → opportunity → solution → experiment explicit. Good for ongoing discovery.
Solution betsFor a chosen opportunity: "We could [solution], which we believe would [serve the opportunity] because [reasoning]." Generate several; name each one's key assumption.
ExperimentsCheapest test of a bet's core assumption — prototype, fake door, concierge, a targeted interview, data analysis.
Impact mapping (Gojko Adzic)B2B with multiple stakeholders who each must change behaviour.
Jobs portfolio mappingMany job stories — decide which to target by frequency, severity, strategic fit.
Now / Next / Later roadmapThe team needs a shared timeline view of bets.
Kano analysisSort candidate features into hygiene, performance, and delight.
HEART / North Star (Google / Amplitude)Choosing the outcome metric. HEART structures the choice; North Star distils to one.
Wardley mappingPositioning depends on where capabilities sit on the evolution curve; build/buy/partner.
Bundling / unbundling (Christensen)Should this product own more of the workflow, or one job precisely?
NPE CanvasConsumer products: Narrative, Primitive, Enablers.
Critical User Journeys (Google / Reforge)Which flows to prioritise — the minimal path to core value (high-traffic, high-revenue, or metric-critical).

When you build the tree as a diagram (graph TD): outcome at the top, branching down through opportunities grouped by journey moment, then bets, then experiments. Top-to-bottom reads as dependency, not sequence.


Working with the designer

Settle the desired outcome first, pushing for specificity. Then map the opportunities that connect to it (applying the disciplines above), generate bets for the ones worth pursuing, and identify the cheapest experiment for the most promising. Prioritise by opportunity size, assumption risk, effort, and reversibility — start with high size, manageable risk, and a clear experiment path, not necessarily the most ambitious.

Offer the technique that fits the question — an OST to connect things end to end, Kano or jobs-portfolio to choose among many candidates, Wardley or bundling for positioning. Don't run them all.

Capture only the residue: the outcome, the opportunity tree (opportunities grouped by journey moment), the top 2–3 bets with their experiments, deferred bets worth returning to, and the open questions (untested assumptions, ungrounded needs). If the needs underneath were weak or assumed, say plainly that the strategy is a bet on assumptions.

The bets chosen here define what needs designing next — the objects, relationships, and vocabulary those solutions work with: /layers-conceptual-model.

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/jamiemill/layers-skills/layers-product-strategy">View layers-product-strategy on skillZs</a>