#601

Globales Ranking · von 601 Skills

requirements-clarity AI Agent Skill

Quellcode ansehen: cachemoney/agent-toolkit

Safe

Installation

npx skills add cachemoney/agent-toolkit --skill requirements-clarity

8

Installationen

Requirements Clarity Skill

Description

Automatically transforms vague requirements into actionable PRDs through systematic clarification with a 100-point scoring system.

Instructions

When invoked, detect vague requirements:

  1. Vague Feature Requests

    • User says: "add login feature", "implement payment", "create dashboard"
    • Missing: How, with what technology, what constraints?
  2. Missing Technical Context

    • No technology stack mentioned
    • No integration points identified
    • No performance/security constraints
  3. Incomplete Specifications

    • No acceptance criteria
    • No success metrics
    • No edge cases considered
    • No error handling mentioned
  4. Ambiguous Scope

    • Unclear boundaries ("user management" - what exactly?)
    • No distinction between MVP and future enhancements
    • Missing "what's NOT included"

Do NOT activate when:

  • Specific file paths mentioned (e.g., "auth.go:45")
  • Code snippets included
  • Existing functions/classes referenced
  • Bug fixes with clear reproduction steps

Core Principles

  1. Systematic Questioning

    • Ask focused, specific questions
    • One category at a time (2-3 questions per round)
    • Build on previous answers
    • Avoid overwhelming users
  2. Quality-Driven Iteration

    • Continuously assess clarity score (0-100)
    • Identify gaps systematically
    • Iterate until ≥ 90 points
    • Document all clarification rounds
  3. Actionable Output

    • Generate concrete specifications
    • Include measurable acceptance criteria
    • Provide executable phases
    • Enable direct implementation

Clarification Process

Step 1: Initial Requirement Analysis

Input: User's requirement description

Tasks:

  1. Parse and understand core requirement
  2. Generate feature name (kebab-case format)
  3. Determine document version (default 1.0 unless user specifies otherwise)
  4. Ensure ./docs/prds/ exists for PRD output
  5. Perform initial clarity assessment (0-100)

Assessment Rubric:

Functional Clarity: /30 points
- Clear inputs/outputs: 10 pts
- User interaction defined: 10 pts
- Success criteria stated: 10 pts

Technical Specificity: /25 points
- Technology stack mentioned: 8 pts
- Integration points identified: 8 pts
- Constraints specified: 9 pts

Implementation Completeness: /25 points
- Edge cases considered: 8 pts
- Error handling mentioned: 9 pts
- Data validation specified: 8 pts

Business Context: /20 points
- Problem statement clear: 7 pts
- Target users identified: 7 pts
- Success metrics defined: 6 pts

Initial Response Format:

I understand your requirement. Let me help you refine this specification.

**Current Clarity Score**: X/100

**Clear Aspects**:
- [List what's clear]

**Needs Clarification**:
- [List gaps]

Let me systematically clarify these points...

Step 2: Gap Analysis

Identify missing information across four dimensions:

1. Functional Scope

  • What is the core functionality?
  • What are the boundaries?
  • What is out of scope?
  • What are edge cases?

2. User Interaction

  • How do users interact?
  • What are the inputs?
  • What are the outputs?
  • What are success/failure scenarios?

3. Technical Constraints

  • Performance requirements?
  • Compatibility requirements?
  • Security considerations?
  • Scalability needs?

4. Business Value

  • What problem does this solve?
  • Who are the target users?
  • What are success metrics?
  • What is the priority?

Step 3: Interactive Clarification

Question Strategy:

  1. Start with highest-impact gaps
  2. Ask 2-3 questions per round
  3. Build context progressively
  4. Use user's language
  5. Provide examples when helpful

Question Format:

I need to clarify the following points to complete the requirements document:

1. **[Category]**: [Specific question]?
   - For example: [Example if helpful]

2. **[Category]**: [Specific question]?

3. **[Category]**: [Specific question]?

Please provide your answers, and I'll continue refining the PRD.

After Each User Response:

  1. Update clarity score
  2. Capture new information in the working PRD outline
  3. Identify remaining gaps
  4. If score < 90: Continue with next round of questions
  5. If score ≥ 90: Proceed to PRD generation

Score Update Format:

Thank you for the additional information!

**Clarity Score Update**: X/100 → Y/100

**New Clarified Content**:
- [Summarize new information]

**Remaining Points to Clarify**:
- [List remaining gaps if score < 90]

[If score < 90: Continue with next round of questions]
[If score ≥ 90: "Perfect! I will now generate the complete PRD document..."]

Step 4: PRD Generation

Once clarity score ≥ 90, generate comprehensive PRD.

Output File:

  1. Final PRD: ./docs/prds/{feature_name}-v{version}-prd.md

Use the Write tool to create or update this file. Derive {version} from the document version recorded in the PRD (default 1.0).

PRD Document Structure

# {Feature Name} - Product Requirements Document (PRD)

## Requirements Description

### Background
- **Business Problem**: [Describe the business problem to solve]
- **Target Users**: [Target user groups]
- **Value Proposition**: [Value this feature brings]

### Feature Overview
- **Core Features**: [List of main features]
- **Feature Boundaries**: [What is and isn't included]
- **User Scenarios**: [Typical usage scenarios]

### Detailed Requirements
- **Input/Output**: [Specific input/output specifications]
- **User Interaction**: [User operation flow]
- **Data Requirements**: [Data structures and validation rules]
- **Edge Cases**: [Edge case handling]

## Design Decisions

### Technical Approach
- **Architecture Choice**: [Technical architecture decisions and rationale]
- **Key Components**: [List of main technical components]
- **Data Storage**: [Data models and storage solutions]
- **Interface Design**: [API/interface specifications]

### Constraints
- **Performance Requirements**: [Response time, throughput, etc.]
- **Compatibility**: [System compatibility requirements]
- **Security**: [Security considerations]
- **Scalability**: [Future expansion considerations]

### Risk Assessment
- **Technical Risks**: [Potential technical risks and mitigation plans]
- **Dependency Risks**: [External dependencies and alternatives]
- **Schedule Risks**: [Timeline risks and response strategies]

## Acceptance Criteria

### Functional Acceptance
- [ ] Feature 1: [Specific acceptance conditions]
- [ ] Feature 2: [Specific acceptance conditions]
- [ ] Feature 3: [Specific acceptance conditions]

### Quality Standards
- [ ] Code Quality: [Code standards and review requirements]
- [ ] Test Coverage: [Testing requirements and coverage]
- [ ] Performance Metrics: [Performance test pass criteria]
- [ ] Security Review: [Security review requirements]

### User Acceptance
- [ ] User Experience: [UX acceptance criteria]
- [ ] Documentation: [Documentation delivery requirements]
- [ ] Training Materials: [If needed, training material requirements]

## Execution Phases

### Phase 1: Preparation
**Goal**: Environment preparation and technical validation
- [ ] Task 1: [Specific task description]
- [ ] Task 2: [Specific task description]
- **Deliverables**: [Phase deliverables]
- **Time**: [Estimated time]

### Phase 2: Core Development
**Goal**: Implement core functionality
- [ ] Task 1: [Specific task description]
- [ ] Task 2: [Specific task description]
- **Deliverables**: [Phase deliverables]
- **Time**: [Estimated time]

### Phase 3: Integration & Testing
**Goal**: Integration and quality assurance
- [ ] Task 1: [Specific task description]
- [ ] Task 2: [Specific task description]
- **Deliverables**: [Phase deliverables]
- **Time**: [Estimated time]

### Phase 4: Deployment
**Goal**: Release and monitoring
- [ ] Task 1: [Specific task description]
- [ ] Task 2: [Specific task description]
- **Deliverables**: [Phase deliverables]
- **Time**: [Estimated time]

---

**Document Version**: 1.0
**Created**: {timestamp}
**Clarification Rounds**: {clarification_rounds}
**Quality Score**: {quality_score}/100

Behavioral Guidelines

DO

  • Ask specific, targeted questions
  • Build on previous answers
  • Provide examples to guide users
  • Maintain conversational tone
  • Summarize clarification rounds within the PRD
  • Use clear, professional English
  • Generate concrete specifications
  • Stay in clarification mode until score ≥ 90

DON'T

  • Ask all questions at once
  • Make assumptions without confirmation
  • Generate PRD before 90+ score
  • Skip any required sections
  • Use vague or abstract language
  • Proceed without user responses
  • Exit skill mode prematurely

Success Criteria

  • Clarity score ≥ 90/100
  • All PRD sections complete with substance
  • Acceptance criteria checklistable (using - [ ] format)
  • Execution phases actionable with concrete tasks
  • User approves final PRD
  • Ready for development handoff

Installationen

Installationen 8
Globales Ranking #601 von 601

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So verwenden Sie diesen Skill

1

Install requirements-clarity by running npx skills add cachemoney/agent-toolkit --skill requirements-clarity in your project directory. Führen Sie den obigen Installationsbefehl in Ihrem Projektverzeichnis aus. Die Skill-Datei wird von GitHub heruntergeladen und in Ihrem Projekt platziert.

2

Keine Konfiguration erforderlich. Ihr KI-Agent (Claude Code, Cursor, Windsurf usw.) erkennt installierte Skills automatisch und nutzt sie als Kontext bei der Code-Generierung.

3

Der Skill verbessert das Verständnis Ihres Agenten für requirements-clarity, und hilft ihm, etablierte Muster zu befolgen, häufige Fehler zu vermeiden und produktionsreifen Code zu erzeugen.

Was Sie erhalten

Skills sind Klartext-Anweisungsdateien — kein ausführbarer Code. Sie kodieren Expertenwissen über Frameworks, Sprachen oder Tools, das Ihr KI-Agent liest, um seine Ausgabe zu verbessern. Das bedeutet null Laufzeit-Overhead, keine Abhängigkeitskonflikte und volle Transparenz: Sie können jede Anweisung vor der Installation lesen und prüfen.

Kompatibilität

Dieser Skill funktioniert mit jedem KI-Coding-Agenten, der das skills.sh-Format unterstützt, einschließlich Claude Code (Anthropic), Cursor, Windsurf, Cline, Aider und anderen Tools, die projektbezogene Kontextdateien lesen. Skills sind auf Transportebene framework-agnostisch — der Inhalt bestimmt, für welche Sprache oder welches Framework er gilt.

Data sourced from the skills.sh registry and GitHub. Install counts and security audits are updated regularly.

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