foundations-problem-solution-fit
顧客の抱える課題を明確にし、その解決策となる仮説を立て、実用最小限の製品(MVP)の範囲を定めることで、課題と解決策が合致する状態を目指すSkill。
📜 元の英語説明(参考)
Problem validation and solution design. Use when discovering customer problems, generating solution hypotheses, or defining MVP scope.
🇯🇵 日本人クリエイター向け解説
顧客の抱える課題を明確にし、その解決策となる仮説を立て、実用最小限の製品(MVP)の範囲を定めることで、課題と解決策が合致する状態を目指すSkill。
※ jpskill.com 編集部が日本のビジネス現場向けに補足した解説です。Skill本体の挙動とは独立した参考情報です。
下記のコマンドをコピーしてターミナル(Mac/Linux)または PowerShell(Windows)に貼り付けてください。 ダウンロード → 解凍 → 配置まで全自動。
mkdir -p ~/.claude/skills && cd ~/.claude/skills && curl -L -o foundations-problem-solution-fit.zip https://jpskill.com/download/17490.zip && unzip -o foundations-problem-solution-fit.zip && rm foundations-problem-solution-fit.zip
$d = "$env:USERPROFILE\.claude\skills"; ni -Force -ItemType Directory $d | Out-Null; iwr https://jpskill.com/download/17490.zip -OutFile "$d\foundations-problem-solution-fit.zip"; Expand-Archive "$d\foundations-problem-solution-fit.zip" -DestinationPath $d -Force; ri "$d\foundations-problem-solution-fit.zip"
完了後、Claude Code を再起動 → 普通に「動画プロンプト作って」のように話しかけるだけで自動発動します。
💾 手動でダウンロードしたい(コマンドが難しい人向け)
- 1. 下の青いボタンを押して
foundations-problem-solution-fit.zipをダウンロード - 2. ZIPファイルをダブルクリックで解凍 →
foundations-problem-solution-fitフォルダができる - 3. そのフォルダを
C:\Users\あなたの名前\.claude\skills\(Win)または~/.claude/skills/(Mac)へ移動 - 4. Claude Code を再起動
⚠️ ダウンロード・利用は自己責任でお願いします。当サイトは内容・動作・安全性について責任を負いません。
🎯 このSkillでできること
下記の説明文を読むと、このSkillがあなたに何をしてくれるかが分かります。Claudeにこの分野の依頼をすると、自動で発動します。
📦 インストール方法 (3ステップ)
- 1. 上の「ダウンロード」ボタンを押して .skill ファイルを取得
- 2. ファイル名の拡張子を .skill から .zip に変えて展開(macは自動展開可)
- 3. 展開してできたフォルダを、ホームフォルダの
.claude/skills/に置く- · macOS / Linux:
~/.claude/skills/ - · Windows:
%USERPROFILE%\.claude\skills\
- · macOS / Linux:
Claude Code を再起動すれば完了。「このSkillを使って…」と話しかけなくても、関連する依頼で自動的に呼び出されます。
詳しい使い方ガイドを見る →- 最終更新
- 2026-05-18
- 取得日時
- 2026-05-18
- 同梱ファイル
- 1
📖 Skill本文(日本語訳)
※ 原文(英語/中国語)を Gemini で日本語化したものです。Claude 自身は原文を読みます。誤訳がある場合は原文をご確認ください。
問題解決フィットエージェント
概要
問題解決フィットエージェントは、適切なソリューションアプローチで、現実的で価値のある問題を解決していることを検証します。このエージェントは、問題のフレーミング、代替案の分析、ソリューションの構築、イノベーション戦略を統合し、多大な投資を行う前に、問題とソリューションの強力な整合性を確保します。
主なユースケース: 問題の発見、ソリューションの検証、MVPの定義、イノベーション戦略、ピボットの評価。
ライフサイクルフェーズ: 発見(主要)、定義、主要なピボット、製品の拡張。
コア機能
1. 問題の発見
顧客の問題を特定、検証、優先順位付けし、価値の高いペインポイントを確実に解決します。
ワークフロー:
-
Jobs-to-be-Done フレームワークを使用して問題を特定する
- 機能的な Jobs: 顧客はどのようなタスクを完了しようとしていますか?
- 感情的な Jobs: 顧客はどのように感じたいですか?どのような不安を避けたいですか?
- 社会的な Jobs: 顧客は他人からどのように認識されたいですか?
- 現在のワークフローをマッピングし、摩擦点を特定します。
-
ペインの頻度を測定する
- 毎日: 問題が毎日発生する
- 毎週: 問題が週に1〜4回発生する
- 毎月: 問題が月に1〜4回発生する
- 四半期ごと: 問題が時々発生する
- 頻度が高いほど、認識と緊急性が高くなります。
-
ペインの強度を評価する
- 1 - 軽微な迷惑: 我慢できる、支払う意思が低い
- 2 - 目立つ不満: 認識しているが緊急ではない
- 3 - 重大な問題: 積極的に解決策を探している
- 4 - 主要なペインポイント: 緊急性が高く、予算が割り当てられている
- 5 - 危機的/実存的: ビジネス上不可欠、プレミアムを支払う意思がある
-
調査を通じて検証する
- ユーザーインタビュー: ターゲットセグメントで最低10〜15回のインタビュー
- 質問: 「[問題]を経験した最後の時について教えてください」
- 探る: 「どのように対処しましたか?どのようなコストがかかりましたか?」
- 避ける: 「Xを行うソリューションを使用しますか?」(誘導的な質問)
- 観察研究: 自然な環境でユーザーを観察する
- データ分析: サポートチケット、レビューマイニング、検索クエリデータ
- ユーザーインタビュー: ターゲットセグメントで最低10〜15回のインタビュー
-
問題の優先順位付け
- 重大度スコア: 頻度 × 強度
- 解決可能性の評価: 技術的な実現可能性、解決にかかるコスト、市場投入までの時間
- 戦略的適合性: 企業のビジョン、能力、市場での地位と一致する
- 問題のスタックランク: 追求する上位3〜5の問題
出力テンプレート:
検証済みの問題スタックランク
1. [問題文]
├── Job-to-be-Done: [機能的/感情的/社会的ジョブ]
├── 頻度: [毎日/毎週/毎月/四半期ごと]
├── 強度: X/5
├── 重大度スコア: XX (頻度 × 強度)
├── 現在のコスト: [期間]あたり$X、または[期間]あたりX時間
├── 証拠: [インタビューの引用、データポイント、観察]
├── 解決可能性: [高/中/低] (根拠)
└── 優先度: 1 (推奨される焦点)
2. [問題文]...
3. [問題文]...
問題の選択の根拠:
[問題#1が適切な焦点である理由を説明する1〜2文]
特定された危険信号:
- [価値が低い、または解決できないと思われる問題]
- [問題が存在しない顧客セグメント]
2. ソリューション仮説
最適な問題解決フィットを見つけるために、複数のソリューションアプローチを生成および評価します。
ワークフロー:
-
複数のソリューションアプローチを生成する
- 発散的思考: 5〜10個の異なるソリューションコンセプトを生成する
- 制約の緩和: 予算/時間/技術が制約でなかったらどうなるか?
- アナロジーマイニング: 他の業界は同様の問題をどのように解決していますか?
- ユーザーとの共創: ソリューションのアイデア出しに顧客を巻き込む
-
技術的な実現可能性を評価する
- 既存のテクノロジー: 現在の技術スタックで構築できる
- 新興テクノロジー: 新しいが利用可能なテクノロジーが必要
- 研究が必要: 研究開発またはブレークスルーが必要
- 今日では不可能: 現在のテクノロジーでは実現不可能
-
労力対インパクトを評価する
- 労力: S (小 - 日)、M (中 - 週)、L (大 - 月)
- インパクト: 低 (あると便利)、中 (意味のある改善)、高 (10倍優れている)
- 優先順位付けマトリックス: 高インパクト + 低労力 = クイックウィン
-
構築 vs 購入 vs パートナーシップを評価する
- 構築: コアとなる差別化、IPの所有権、完全な制御
- 購入: コモディティ機能、市場投入までの時間の短縮、実績のあるソリューション
- パートナーシップ: 補完的な能力、リスクの共有、エコシステムの活用
-
プロトタイプを作成してテストする
- 低忠実度のモックアップ: スケッチ、ワイヤーフレーム、ストーリーボード
- コンセプトテスト: ユーザーにコンセプトを提示し、フィードバックを収集する
- Wizard of Oz: 自動化された外観の背後にある手動プロセス
- コンシェルジュMVP: 自動化の前に価値を検証するための手厚いサービス
出力テンプレート:
ソリューション仮説の評価
解決される問題: [スタックランクからの問題#1]
ソリューションコンセプト (上位3つ):
コンセプトA: [ソリューション名]
├── 説明: [1〜2文]
├── 技術的な実現可能性: [既存/新興/研究/不可能]
├── 労力: [S/M/L] - [X週間/月]
├── インパクト: [低/中/高] - [予想される改善]
├── 構築/購入/パートナーシップ: [決定 + 根拠]
├── 差別化の可能性: [低/中/高]
├── プロトタイプアプローチ: [モックアップ/コンセプトテスト/Wizard of Oz/コンシェルジュ]
└── 検証基準: [これが機能するために何が真実でなければならないか?]
コンセプトB: [ソリューション名]...
コンセプトC: [ソリューション名]...
推奨されるソリューション: コンセプト [A/B/C]
根拠: [このコンセプトが代替案よりも優れている理由]
次のステップ:
1. [最初の検証実験]
2. [2番目の検証実験]
3. [検証が成功した場合のMVPの範囲設定]
3. 代替案の分析
既存のソリューションをカタログ化して分析し、競争上の優位性の機会を特定します。
ワークフロー:
- 現在のソリューションをカタログ化する
- 直接的な競合他社: 同じ問題、同様のソリューション
- 間接的な競合他社: 同じ問題、異なるソリューション
- 回避策: 手動プロセス、ハック、ダクトテープソリューション
- 非消費: 人々h
📜 原文 SKILL.md(Claudeが読む英語/中国語)を展開
Problem-Solution Fit Agent
Overview
The Problem-Solution Fit Agent validates that you're solving a real, valuable problem with the right solution approach. This agent merges Problem Framing, Alternative Analysis, Solution Building, and Innovation Strategy to ensure strong problem-solution alignment before significant investment.
Primary Use Cases: Problem discovery, solution validation, MVP definition, innovation strategy, pivot assessment.
Lifecycle Phases: Discovery (primary), Definition, major pivots, product expansion.
Core Functions
1. Problem Discovery
Identify, validate, and prioritize customer problems to ensure solving high-value pain points.
Workflow:
-
Identify Problems Using Jobs-to-be-Done Framework
- Functional Jobs: What tasks are customers trying to complete?
- Emotional Jobs: How do customers want to feel? What anxieties to avoid?
- Social Jobs: How do customers want to be perceived by others?
- Map current workflow and identify friction points
-
Measure Pain Frequency
- Daily: Problem occurs every day
- Weekly: Problem occurs 1-4 times per week
- Monthly: Problem occurs 1-4 times per month
- Quarterly: Problem occurs occasionally
- Higher frequency = higher awareness and urgency
-
Assess Pain Intensity
- 1 - Minor annoyance: Tolerable, low willingness to pay
- 2 - Noticeable frustration: Aware but not urgent
- 3 - Significant problem: Actively seeking solutions
- 4 - Major pain point: High urgency, budget allocated
- 5 - Critical/existential: Business-critical, will pay premium
-
Validate Through Research
- User Interviews: Minimum 10-15 interviews in target segment
- Ask: "Tell me about the last time you experienced [problem]"
- Probe: "How did you handle it? What did it cost you?"
- Avoid: "Would you use a solution that does X?" (leading question)
- Observational Studies: Shadow users in their natural environment
- Data Analysis: Support tickets, review mining, search query data
- User Interviews: Minimum 10-15 interviews in target segment
-
Prioritize Problems
- Severity Score: Frequency × Intensity
- Solvability Assessment: Technical feasibility, cost to solve, time to market
- Strategic Fit: Aligns with company vision, capabilities, market position
- Problem Stack Rank: Top 3-5 problems to pursue
Output Template:
Validated Problem Stack Rank
1. [Problem Statement]
├── Job-to-be-Done: [functional/emotional/social job]
├── Frequency: [daily/weekly/monthly/quarterly]
├── Intensity: X/5
├── Severity Score: XX (frequency × intensity)
├── Current Cost: $X per [time period] or X hours per [time period]
├── Evidence: [interview quotes, data points, observations]
├── Solvability: [high/medium/low] (rationale)
└── Priority: 1 (recommended focus)
2. [Problem Statement]...
3. [Problem Statement]...
Problem Selection Rationale:
[1-2 sentences explaining why problem #1 is the right focus]
Red Flags Identified:
- [Any problems that seem low-value or unsolvable]
- [Customer segments where problem doesn't exist]
2. Solution Hypothesis
Generate and evaluate multiple solution approaches to find optimal problem-solution fit.
Workflow:
-
Generate Multiple Solution Approaches
- Divergent Thinking: Generate 5-10 different solution concepts
- Constraint Relaxation: What if budget/time/tech weren't constraints?
- Analogy Mining: How do other industries solve similar problems?
- User Co-Creation: Involve customers in solution ideation
-
Evaluate Technical Feasibility
- Existing Technology: Can be built with current tech stack
- Emerging Technology: Requires new but available technology
- Research Required: Needs R&D or breakthroughs
- Impossible Today: Not feasible with current technology
-
Assess Effort vs Impact
- Effort: S (small - days), M (medium - weeks), L (large - months)
- Impact: Low (nice-to-have), Medium (meaningful improvement), High (10x better)
- Prioritization Matrix: High impact + Low effort = Quick wins
-
Evaluate Build vs Buy vs Partner
- Build: Core differentiation, IP ownership, full control
- Buy: Commodity feature, faster time-to-market, proven solution
- Partner: Complementary capabilities, shared risk, ecosystem play
-
Prototype and Test
- Low-Fidelity Mockups: Sketches, wireframes, storyboards
- Concept Testing: Present concepts to users, gather feedback
- Wizard of Oz: Manual process behind automated facade
- Concierge MVP: High-touch service to validate value before automation
Output Template:
Solution Hypothesis Evaluation
Problem Being Solved: [Problem #1 from stack rank]
Solution Concepts (Top 3):
Concept A: [Solution Name]
├── Description: [1-2 sentences]
├── Technical Feasibility: [existing/emerging/research/impossible]
├── Effort: [S/M/L] - [X weeks/months]
├── Impact: [Low/Medium/High] - [expected improvement]
├── Build/Buy/Partner: [decision + rationale]
├── Differentiation Potential: [low/medium/high]
├── Prototype Approach: [mockup/concept test/wizard of oz/concierge]
└── Validation Criteria: [What must be true for this to work?]
Concept B: [Solution Name]...
Concept C: [Solution Name]...
Recommended Solution: Concept [A/B/C]
Rationale: [Why this concept beats alternatives]
Next Steps:
1. [First validation experiment]
2. [Second validation experiment]
3. [MVP scoping if validation succeeds]
3. Alternative Analysis
Catalog and analyze existing solutions to identify competitive advantage opportunities.
Workflow:
-
Catalog Current Solutions
- Direct Competitors: Same problem, similar solution
- Indirect Competitors: Same problem, different solution
- Workarounds: Manual processes, hacks, duct-tape solutions
- Non-Consumption: People who have problem but don't solve it
-
Assess Customer Satisfaction
- Satisfaction Score: 1 (very dissatisfied) to 5 (very satisfied)
- Net Promoter Score: Likelihood to recommend current solution
- Review Mining: Extract common complaints and praises
- Churn/Retention Data: Why do users leave or stay?
-
Identify Switching Barriers
- Financial: Sunk costs, contracts, switching fees
- Technical: Data migration, integration complexity, learning curve
- Organizational: Process changes, stakeholder buy-in, training
- Psychological: Loss aversion, status quo bias, risk perception
-
Map Unmet Needs
- Feature Gaps: What do users wish existed?
- Performance Gaps: What's too slow, expensive, or complex?
- Experience Gaps: Where is UX frustrating or confusing?
- Integration Gaps: What doesn't connect that should?
-
Determine Adoption Triggers
- What event would make someone switch?: New role, company growth, regulation change
- Migration Paths: How to move users from alternative to your solution
- Value Gaps: How much better must you be to justify switching? (10x rule)
Output Template:
Alternative Analysis
Existing Alternatives (Top 5):
1. [Alternative Name/Category]
├── Type: [direct competitor/indirect/workaround/non-consumption]
├── Satisfaction: X/5 (evidence: [reviews/NPS/churn])
├── Strengths: [What they do well]
├── Weaknesses: [Where they fall short]
├── Switching Barriers: [financial/technical/organizational/psychological]
├── Market Share: X% or [dominant/emerging/niche]
└── Unmet Needs: [What users still complain about]
2. [Alternative Name/Category]...
Competitive Advantage Opportunities:
1. [Opportunity]: [Description]
- Why Alternative Fails Here: [reason]
- Our Advantage: [capability/insight/approach]
- Barrier to Replicate: [why hard for competitors to copy]
2. [Opportunity]...
3. [Opportunity]...
Adoption Strategy:
├── Adoption Trigger: [event/pain point that creates urgency]
├── Migration Path: [how to move users from alternative]
├── Required Superiority: [10x better on dimension X]
└── Early Adopter Profile: [who switches first]
Switching Cost Mitigation:
- [How to reduce financial barriers]
- [How to reduce technical barriers]
- [How to reduce organizational barriers]
4. MVP Definition
Define minimum viable product scope with clear success metrics and development priorities.
Workflow:
-
Determine Feature Categories
- Core Features: Must-have for MVP, solves primary problem
- Nice-to-Haves: Valuable but not essential for first version
- Non-Features: Explicitly out of scope for MVP (but maybe later)
-
Map Features to Problems
- Each core feature must solve a validated problem
- Avoid "cool tech" or "nice UX" without problem linkage
- Test: "If we remove this feature, can we still solve the core problem?"
-
Create User Stories
- Format: "As a [user type], I want [action] so that [benefit]"
- Include: Acceptance criteria, edge cases, error states
- Estimate: Story points or t-shirt sizing (S/M/L)
-
Estimate Development Effort
- Small: 1-3 days, low technical risk, clear requirements
- Medium: 1-2 weeks, moderate risk, some unknowns
- Large: 2+ weeks, high risk, significant unknowns or dependencies
- Total MVP timeline should be 4-12 weeks max
-
Assess Technical Risk
- Low Risk: Proven technology, team has experience
- Medium Risk: New to team but proven elsewhere
- High Risk: Cutting edge, uncertain feasibility, no prior art
- Flag dependencies: APIs, third-party services, integrations
-
Define Success Metrics
- Activation: % users who complete key action
- Engagement: Frequency of use, time spent
- Retention: % users active after 1 week, 1 month
- Satisfaction: NPS, CSAT, or qualitative feedback
- Business Metric: Revenue, conversions, or strategic goal
Output Template:
MVP Specification
Core Features (Must-Have):
1. [Feature Name]
├── Solves: [Problem from stack rank]
├── User Story: As a [user], I want [action] so that [benefit]
├── Acceptance Criteria: [What defines "done"]
├── Effort: [S/M/L] - [X days/weeks]
├── Technical Risk: [Low/Medium/High]
├── Dependencies: [APIs, services, other features]
└── Priority: P0 (must have for launch)
2. [Feature Name]...
Nice-to-Haves (Post-MVP):
- [Feature]: [Why valuable but not essential]
- [Feature]: [Why valuable but not essential]
Explicit Non-Features:
- [Feature]: [Why explicitly out of scope]
- [Feature]: [Why explicitly out of scope]
MVP Timeline:
├── Total Effort: X weeks
├── High-Risk Items: [features requiring de-risking]
├── Critical Path: [feature A] → [feature B] → [launch]
└── Launch Date Target: [date or week]
Success Metrics:
├── Activation: X% complete [key action]
├── Engagement: X% use [frequency]
├── Retention: X% active after 1 week
├── Satisfaction: NPS > X or [qualitative threshold]
└── Business Goal: [revenue/conversions/strategic metric]
Pivot Triggers:
- If activation < X%, reconsider [assumption]
- If retention < X%, problem not painful enough
- If satisfaction < X%, solution doesn't fit problem
5. Innovation Strategy
Identify unique insights and defensible advantages to create 10x better solutions.
Workflow:
-
Identify 10x Improvement Opportunities
- 10x Faster: What takes hours could take seconds?
- 10x Cheaper: What's expensive could be affordable?
- 10x Easier: What's complex could be simple?
- 10x More Accessible: Who's excluded could be included?
-
Uncover Unique Insights
- Contrarian Beliefs: What do you believe that others don't?
- Secret Sauce: What proprietary knowledge, data, or capability?
- Emergent Behavior: What pattern did you notice that others missed?
- Future Insight: What's inevitable but not yet obvious?
-
Assess Technical Moats
- Technology Moat: Proprietary algorithms, patents, trade secrets
- Data Moat: Unique dataset, network effects on data
- Scale Moat: Economies of scale, infrastructure advantages
- Integration Moat: Embedded in workflow, high switching cost
-
Evaluate Network Effects
- Direct Network Effects: More users → more value per user
- Indirect Network Effects: More users → more complementors → more value
- Data Network Effects: More usage → better product → more usage
- Marketplace Network Effects: More buyers attract more sellers
-
Design for Platform Potential
- Ecosystem Plays: Can third parties build on your platform?
- API Strategy: Enable integrations, data sharing, extensibility
- Category Creation: Are you creating a new category vs. entering existing?
- Winner-Take-Most Dynamics: What creates lock-in and defensibility?
Output Template:
Innovation Strategy
10x Improvement Thesis:
We can make [problem solution] 10x [faster/cheaper/easier/accessible] by [unique approach].
Unique Insight:
[Contrarian belief or proprietary knowledge that competitors don't have or don't believe]
Evidence for Insight:
- [Data point, trend, or observation #1]
- [Data point, trend, or observation #2]
- [Data point, trend, or observation #3]
Defensibility Analysis:
Technical Moats:
├── Technology: [proprietary algorithms, patents, trade secrets]
├── Data: [unique datasets, data network effects]
├── Scale: [economies of scale, infrastructure advantages]
└── Integration: [workflow embeddedness, switching costs]
Network Effects:
├── Type: [direct/indirect/data/marketplace]
├── Trigger Point: [At X users/transactions, value accelerates]
├── Defensibility: [Why hard for competitors to replicate]
└── Time to Moat: [How long until network effects kick in]
Platform Potential:
├── Ecosystem Play: [Can third parties build on this?]
├── API Strategy: [What to open, what to keep proprietary]
├── Category Creation: [New category vs. existing category]
└── Winner-Take-Most: [What creates lock-in and dominance]
Innovation Risks:
- [Risk #1]: [Mitigation strategy]
- [Risk #2]: [Mitigation strategy]
Contrarian Bets:
1. [Belief that differs from consensus]: [Why we believe it's true]
2. [Belief that differs from consensus]: [Why we believe it's true]
Next Validation Steps:
1. [Experiment to validate unique insight]
2. [Experiment to test defensibility assumption]
3. [Prototype to prove 10x improvement]
Input Requirements
Required:
market_intelligence_output: Output from market-intelligence agent (segments, competitors)validated_problems: Initial problem hypotheses to validate
Optional:
user_interviews: List of interview transcripts or summariesexisting_data: Support tickets, reviews, analytics datatechnical_constraints: Technology stack, team capabilities, timeline
Example Input:
{
"market_intelligence_output": {
"top_segments": ["Skincare Enthusiasts", "Beauty Novices"],
"competitors": ["Function of Beauty", "Curology"]
},
"validated_problems": [
"Can't find products that work for unique skin type",
"Overwhelmed by beauty product options"
],
"user_interviews": [
{"id": 1, "segment": "Skincare Enthusiast", "pain_points": ["..."]}
]
}
Output Structure
{
"validated_problems": [
{
"problem": "Can't find products for unique skin type",
"severity": 5,
"frequency": "daily",
"evidence": "12/15 interviews mentioned, avg $200/mo wasted on wrong products"
}
],
"existing_alternatives": [
{
"solution": "Manual research + trial and error",
"satisfaction": 2,
"switching_barrier": "low",
"unmet_need": "Personalization without expensive trial and error"
}
],
"mvp_features": [
{
"feature": "AI skin analysis via selfie",
"solves": "Can't determine skin type accurately",
"effort": "M",
"priority": "P0"
}
],
"unique_insight": "Skin changes seasonally; one-time analysis fails. Continuous monitoring wins.",
"next_experiments": [
"Test skin analysis accuracy with dermatologist validation (50 samples)",
"Concierge MVP with 10 users to validate recommendation quality",
"Wizard of Oz: Manual curation behind AI facade to test engagement"
]
}
Integration with Other Agents
Receives Input From:
market-intelligence: Market context shapes problem prioritization
- Target segments → Focus problem discovery on these users
- Competitive gaps → Identify differentiation opportunities
Provides Input To:
value-proposition: Validated problems inform value messaging
- Problem intensity → Quantify value in messaging
- Alternative analysis → Frame positioning against alternatives
business-model: Solution approach drives business model design
- MVP features → Estimate development costs
- Innovation strategy → Pricing power from differentiation
validation: Problems and solutions become testable hypotheses
- Critical assumptions → Experiment design
- MVP specification → What to build and test
execution: MVP definition becomes development backlog
- Feature list → Sprint planning
- User stories → Engineering tickets
Best Practices
For Problem Discovery
- Follow the Pain: Focus on high-frequency, high-intensity problems
- Evidence Over Opinions: 15 interviews > 1000 survey responses
- Observe Behavior: What users do > what users say
- Quantify Everything: "Wastes time" is weak; "Costs 5 hours/week" is strong
For Solution Hypothesis
- Diverge Then Converge: Generate many options before selecting one
- Prototype Cheaply: Test concepts before building
- Wizard of Oz MVPs: Fake the automation, deliver value manually
- 10x or Bust: Marginal improvements don't overcome switching costs
For MVP Definition
- Kill Your Darlings: Ruthlessly cut features that don't solve core problem
- 4-12 Week Rule: MVPs taking >12 weeks aren't minimal
- Metrics Before Launch: Know what success looks like in advance
- Feature-to-Problem Mapping: Every feature must solve validated problem
For Innovation Strategy
- Secret Sauce: Best insights are non-obvious or contrarian
- Defensibility First: 10x better today means nothing if easily copied
- Network Effects Take Time: Plan for cold start, measure leading indicators
- Platform Thinking: Even if starting small, design for ecosystem potential
Common Pitfalls to Avoid
Problem Discovery Errors:
- ❌ Asking "Would you use X?" (false positives)
- ❌ Solving problems you have, not customer problems
- ❌ Ignoring low-frequency but high-intensity problems
- ✅ Observe behavior, quantify pain, validate with evidence
Solution Hypothesis Errors:
- ❌ Falling in love with first solution idea
- ❌ Building before testing concept with mockups
- ❌ Pursuing "cool tech" without clear problem linkage
- ✅ Generate multiple options, test cheaply, iterate based on feedback
MVP Definition Errors:
- ❌ "MVP" becomes 6-month project with 20 features
- ❌ Including features for edge cases vs. core use case
- ❌ No clear success metrics or pivot triggers
- ✅ Ruthlessly minimal, solves one problem well, clear success criteria
Innovation Strategy Errors:
- ❌ Incremental improvements in crowded market
- ❌ No defensibility (easily copied by well-funded competitors)
- ❌ Ignoring cold start problem for network effects
- ✅ 10x better, unique insight, time-based or data-based moat
Usage Examples
Example 1: Discovery Phase - Problem Validation
User Request: "Help me validate that personalized beauty recommendations is a real problem worth solving"
Agent Process:
- Problem Discovery: Interview analysis, pain frequency/intensity scoring
- Alternative Analysis: Function of Beauty, Curology, Sephora Color IQ satisfaction levels
- Problem Stack Rank: Top 3 problems with severity scores
- Recommendation: Problem #1 validated, proceed to solution hypothesis
Output: Validated problem stack rank with evidence, recommended focus area
Example 2: Definition Phase - MVP Scoping
User Request: "We validated the problem. What should be in our MVP?"
Agent Process:
- Solution Hypothesis: Generate 5 solution concepts, evaluate effort vs impact
- Alternative Analysis: Identify unmet needs in existing solutions
- MVP Definition: Core features (max 5), nice-to-haves, non-features
- Innovation Strategy: Identify 10x improvement angle and defensibility
Output: MVP specification with features, effort estimates, success metrics
Example 3: Pivot Assessment - Alternative Problem
User Request: "MVP isn't getting traction. Should we solve a different problem?"
Agent Process:
- Problem Discovery: Re-interview users, reassess pain intensity
- Alternative Analysis: Why are users sticking with alternatives?
- Solution Hypothesis: Maybe wrong solution to right problem vs wrong problem
- Recommendation: Pivot to problem #2 or iterate on solution for problem #1
Output: Pivot recommendation with evidence, alternative problem validation
Success Metrics
Problem Validation Accuracy: % of validated problems that users actually pay for (Target: >70%) Solution Hit Rate: % of MVP features that drive activation/retention (Target: >60%) Time to Validation: Days from hypothesis to validated learning (Target: <14 days) Pivot Prevention: Catching bad ideas before significant investment (Target: 100% detection)
This agent ensures you're solving real, high-value problems with solutions that are 10x better than alternatives and defensible against competition.