--- name: impact-sizing description: Quantify feature value with driver trees, confidence levels, and the 4-step sizing framework. disable-model-invocation: false user-invocable: true --- # /impact-sizing - Quantify Feature Value Systematically estimate the impact of a feature using the 4-step framework. ## Context Routing Logic (Internal - for Claude) **Automatic Context Checks:** When this skill is invoked, immediately check: | Source | Files/Folders | Search Terms | What to Extract | | --------------- | ---------------------------------------------- | ------------------------------------- | --------------------------------------- | | Current PRD | `thoughts/shared/pm/prds/*.md` | feature name from chat | User impact, problem severity | | User Research | `thoughts/shared/pm/*.md` | feature problem, user quotes | Addressable users, pain severity | | Business Model | `thoughts/shared/pm/context/business-info-template.md` | pricing, revenue model, TAM | Revenue impact drivers | | Historical Data | `thoughts/shared/pm/metrics/*.md` | similar features, baseline conversion | Reference adoption rates | | Strategy | `thoughts/shared/pm/frameworks/*.md` | feature strategic fit | Resource availability, priority context | **Context Priority:** 1. Feature definition and user impact FIRST 2. Business model and pricing SECOND 3. User base size and addressable segment THIRD 4. Historical precedent for similar features FOURTH **Cross-Skill Links:** - If sizing is unclear → Link to `/impact-sizing` (this skill) - If comparing options → Use this to inform `/experiment-decision` - If building business case → Reference in PRD and `/write-prod-strategy` - If identifying leading metrics → Connect to `/feature-metrics` and `/metrics-framework` --- ## Step 0: Understanding What We're Sizing Before we estimate impact, let me check what context exists... **Checking:** - `thoughts/shared/pm/prds/` for the feature definition - `thoughts/shared/pm/` for user research on this problem - `thoughts/shared/pm/context/business-info-template.md` for business model context - `thoughts/shared/pm/metrics/` for comparable feature data **Based on what I find, I'll show you:** ### What We Know About This Feature **Feature Definition:** - [What problem does it solve?] - [Who does it affect? Total addressable users: X] - [User segment: SMB / Enterprise / Consumer / etc.] **User Impact:** - [Problem severity: from user research] - [Expected behavior change: what users do differently] - [Current workaround cost: time/money users waste today] **Business Context:** - [Revenue model: how does this make money?] - [Existing similar features: what was their adoption?] - [Resource constraints: time/team availability] ### PM-Specific Diagnosis Questions 1. **Addressability:** Can you reach the entire user population, or only a segment? 2. **Adoption Curve:** Will this be immediate adoption or gradual ramp? 3. **Monetization:** Is this a direct revenue play or indirect (retention/expansion)? 4. **Confidence:** What data do you have vs what are you assuming? 5. **Execution Risk:** What could go wrong with adoption or implementation? --- ## When to Use - Prioritizing features in planning - Justifying resource allocation - Building business cases for executives - Comparing multiple feature options --- ## The 4-Step Framework ### Step 1: Estimate Usage (Funnel) Create a funnel from exposure to usage: ``` Total users who see feature: [number] ↓ (Drop-off: [reason]) Users eligible for feature: [number] ↓ (Drop-off: [reason]) Users who engage: [number] ↓ (Drop-off: [reason]) Users who complete action: [number] ``` **Gotchas to consider:** - How many users are actually eligible? - How often will users be exposed? - What's the expected adoption curve? ### Step 2: Calculate Impact Progress through three levels: **Engagement Impact:** - DAU/MAU change - Retention rate change - Session frequency/duration **Top-Line Impact:** - Revenue change - GMV change - Conversion rate change **Bottom-Line Impact:** - Contribution margin - Customer acquisition cost - Lifetime value change ### Step 3: Identify & De-Risk Assumptions For each assumption, assess risk and plan mitigation: | Assumption | Confidence | Risk | De-risking Action | | ------------ | ------------ | --------------- | ----------------- | | [Assumption] | High/Med/Low | [Risk if wrong] | [Action] | **Common de-risking actions:** - Old data → Work with analytics for fresh numbers - Usability question → Test with prototype - Similar to competitors → Benchmark research - Industry standard → Collect benchmarks ### Step 4: Define Takeaways Three buckets: 1. **Planning:** Use for prioritization decisions 2. **Experiment Execution:** Determine experiment duration for stat sig 3. **Feature Design:** Identify levers to increase impact --- ## Quick Start Prompt When PM types `/impact-sizing`, respond: ``` Let's size the impact of your feature. I'll walk you through the 4-step framework. **Step 1: Estimate Usage** - What feature are we sizing? - Who sees this feature? (total addressable users) - What are the steps from seeing → using? Once you share this, I'll help build the funnel and calculate impact. ``` --- ## Output Template ```markdown # Impact Sizing: [Feature Name] ## Usage Funnel | Stage | Users | Drop-off Rate | Reason | | ----------- | ----- | ------------- | -------- | | See feature | [X] | - | - | | Eligible | [X] | [Y%] | [reason] | | Engage | [X] | [Y%] | [reason] | | Complete | [X] | [Y%] | [reason] | ## Impact Estimates **Engagement Impact:** - Metric: [metric] - Current: [baseline] - Expected change: [+/- X%] - Confidence: [High/Med/Low] **Top-Line Impact:** - Metric: [revenue/GMV] - Expected change: [$X / +Y%] - Confidence: [High/Med/Low] **Bottom-Line Impact:** - Metric: [margin/LTV] - Expected change: [$X / +Y%] - Confidence: [High/Med/Low] ## Confidence Assessment | Assumption | Confidence | De-risking Action | | ------------ | ---------- | ----------------- | | [assumption] | [level] | [action] | ## Recommendation [Proceed / De-risk first / Deprioritize] Rationale: [why] ``` --- ## Driver Tree Example Connect feature to business metrics: ``` Feature: [Name] ↓ [Engagement metric] +X% ↓ [Conversion metric] +Y% ↓ [Revenue metric] +$Z ↓ [Profit metric] +$W ``` --- ## Output Integration ### Where Files Go **Impact sizing analysis:** - Save to: `thoughts/shared/pm/analyses/impact-sizing-[feature-name]-[date].md` - When finalized: Reference in PRD in `Strategic Fit` section ### Link to Other Work After sizing impact: - **Reference in PRD** - "Users affected: X, revenue impact: $Y, confidence: [High/Med/Low]" - **Use in prioritization** - Helps decide if this should be in Q# roadmap - **Support pitches** - Share with executives when requesting resources - **Inform metrics** - Use impact estimates to set success metric targets ### Cross-Skill Integration **Feeds into:** - `/prd-draft` - Impact sizing goes into "Strategic Fit" section - `/write-prod-strategy` - Feature impact informs strategic pillar priorities - `/feature-metrics` - Usage estimates inform what metrics can detect changes - `/experiment-decision` - Impact size determines experiment duration/sample size **Pulls from:** - `thoughts/shared/pm/` - User pain and adoption patterns - `/user-research-synthesis` - Qualitative insights about addressable users - [[business-info-template]] - Business model and growth drivers - `thoughts/shared/pm/metrics/` - Historical data on similar features --- ## Tips - **Do the amount that fits your world** - Few weeks? Address top assumption. More time? Go deeper. - **Never done** - You can always upgrade the model as you learn more - **Connect to what matters** - Executives care about revenue/profit, not engagement metrics alone - **Validate assumptions** - The biggest unknowns are usually adoption rate and addressable market - **De-risking matters** - Knowing what you don't know is worth more than precise wrong estimates --- ## Output Quality Self-Check Before presenting output to the PM, verify: - [ ] **File saved to correct location:** Output saved to `thoughts/shared/pm/analyses/impact-sizing-[feature-name]-[date].md` - [ ] **Context routing table was checked:** Reviewed `thoughts/shared/pm/context/business-info-template.md`, `thoughts/shared/pm/frameworks/`, and `thoughts/shared/pm/metrics/` for relevant context - [ ] **Driver tree has specific numbers:** Every node in the driver tree contains actual estimates (not placeholders like "[X]" or "[number]") - [ ] **Confidence levels assigned:** Each assumption in the confidence assessment table has a High/Med/Low rating with justification - [ ] **Revenue/user impact calculated with clear methodology:** Impact estimates show the math (e.g., "10,000 eligible users x 30% adoption x $5 ARPU = $15,000/month"), not just final numbers - [ ] **De-risking actions identified:** Every Low-confidence assumption has a specific, actionable de-risking step (not generic "do more research") - [ ] **Impact tied to strategic goal:** The recommendation section explicitly references a strategic goal or OKR from `thoughts/shared/pm/frameworks/` - [ ] **Sensitivity analysis included:** Output shows best-case, worst-case, and expected-case scenarios with the key variable that drives the range