| name | domain-research |
| description | MCP-powered domain research for requirements elicitation. Uses perplexity, context7, firecrawl, and other MCP servers to research domain knowledge, best practices, and industry requirements. |
| allowed-tools | Read, Glob, Grep, Write, mcp__perplexity__search, mcp__perplexity__reason, mcp__context7__resolve-library-id, mcp__context7__query-docs, mcp__firecrawl__firecrawl_search, mcp__firecrawl__firecrawl_scrape |
Domain Research Skill
MCP-powered domain research for enriching requirements elicitation with external knowledge.
MANDATORY: Documentation-First Approach
Before conducting domain research:
- Invoke
docs-managementskill for requirements elicitation patterns - Use MCP servers as primary research tools (perplexity, context7, firecrawl)
- Base all guidance on official documentation and authoritative sources
When to Use This Skill
Keywords: domain research, MCP research, industry standards, best practices, competitive analysis, technology research, regulatory requirements
Invoke this skill when:
- Unfamiliar with a domain and need background
- Researching industry standards and best practices
- Investigating regulatory requirements
- Analyzing competitor features
- Exploring technology constraints
- Supplementing stakeholder knowledge
Available MCP Servers
Perplexity (General Research)
Use for:
- Industry best practices
- Recent developments
- Comparative analysis
- Regulatory overviews
mcp_tool: mcp__perplexity__search
example_queries:
- "e-commerce checkout best practices 2025"
- "GDPR compliance requirements for SaaS"
- "authentication patterns for financial applications"
Context7 (Library Documentation)
Use for:
- Framework requirements
- API constraints
- Library capabilities
- Technical limitations
mcp_tools:
- mcp__context7__resolve-library-id
- mcp__context7__query-docs
example_queries:
- Library: "react" → Query: "state management patterns"
- Library: "fastapi" → Query: "authentication requirements"
Firecrawl (Web Scraping)
Use for:
- Competitor analysis
- Documentation extraction
- Feature comparison
- Market research
mcp_tools:
- mcp__firecrawl__firecrawl_search
- mcp__firecrawl__firecrawl_scrape
example_queries:
- Search: "inventory management software features"
- Scrape: Competitor feature pages
Research Patterns
Pattern 1: Domain Background
Build foundational domain knowledge:
research_pattern: domain_background
steps:
1. Use perplexity for industry overview
2. Identify key concepts and terminology
3. Research common requirements in domain
4. Note regulatory considerations
output: Domain context document
Pattern 2: Best Practices
Research current best practices:
research_pattern: best_practices
steps:
1. Search for "best practices" in domain
2. Filter for recent (last 2 years)
3. Identify common patterns
4. Note recommended approaches
output: Best practices summary
Pattern 3: Competitive Analysis
Research competitor features:
research_pattern: competitive_analysis
steps:
1. Identify key competitors
2. Scrape feature pages with firecrawl
3. Extract capability lists
4. Compare and contrast
output: Competitive feature matrix
Pattern 4: Regulatory Research
Research compliance requirements:
research_pattern: regulatory
steps:
1. Identify applicable regulations
2. Research specific requirements
3. Note mandatory vs recommended
4. Document compliance criteria
output: Regulatory requirements list
Pattern 5: Technology Constraints
Research technical requirements:
research_pattern: technology
steps:
1. Identify technologies in scope
2. Use context7 for library docs
3. Research integration requirements
4. Document technical constraints
output: Technical requirements document
Research Workflow
Step 1: Define Research Scope
research_scope:
domain: "{domain name}"
topic: "{specific focus area}"
depth: shallow|moderate|deep
sources: [perplexity, context7, firecrawl]
Step 2: Execute Research Queries
For each research need:
- Select appropriate MCP server
- Formulate effective query
- Process results
- Extract requirements
Step 3: Synthesize Findings
Combine research into actionable requirements:
- Identify common patterns
- Note conflicts or options
- Highlight mandatory items
- Suggest priorities
Step 4: Document Results
Save research findings and derived requirements.
Output Format
Research Results
research_session:
id: "RES-{timestamp}"
domain: "{domain}"
topic: "{research topic}"
timestamp: "{ISO-8601}"
queries_executed:
- server: perplexity
query: "{query text}"
results_count: {number}
- server: firecrawl
url: "{scraped URL}"
content_type: feature_page
findings:
domain_context:
- "{key finding 1}"
- "{key finding 2}"
best_practices:
- "{recommended practice 1}"
- "{recommended practice 2}"
regulatory:
- regulation: "GDPR"
requirements:
- "{requirement 1}"
- "{requirement 2}"
competitive:
- competitor: "{name}"
features:
- "{feature 1}"
- "{feature 2}"
derived_requirements:
- id: REQ-RES-001
text: "{requirement statement}"
source: research
source_detail: "{where this came from}"
confidence: low # Research-derived = low confidence
needs_validation: true
category: "{category}"
recommendations:
- topic: "{topic}"
finding: "{what research showed}"
implication: "{what this means for requirements}"
gaps_in_research:
- "{area where more research needed}"
Query Optimization
Effective Perplexity Queries
query_patterns:
best_practices:
template: "{domain} {topic} best practices {year}"
example: "e-commerce checkout best practices 2025"
requirements:
template: "{domain} {topic} requirements specifications"
example: "healthcare application HIPAA requirements"
comparison:
template: "{topic A} vs {topic B} for {use case}"
example: "OAuth 2.0 vs SAML for enterprise SSO"
regulatory:
template: "{regulation} requirements for {industry}"
example: "PCI-DSS requirements for payment processing"
Effective Context7 Queries
query_patterns:
library_features:
resolve: "{library name}"
get_docs: topic="{specific feature}"
integration:
resolve: "{library name}"
get_docs: topic="integration authentication"
Effective Firecrawl Queries
query_patterns:
competitor_features:
search: "{competitor} features {product type}"
scrape: Feature page URLs
documentation:
search: "{technology} documentation requirements"
scrape: Official docs
Confidence Levels
Research-derived requirements have inherent confidence limits:
confidence_levels:
high:
sources: [official documentation, regulatory text]
note: "Verified from authoritative source"
medium:
sources: [industry articles, best practice guides]
note: "Generally accepted but verify with stakeholders"
low:
sources: [competitor analysis, general web]
note: "Use as starting point, requires validation"
Delegation
For follow-up actions:
- interview-conducting: Validate research with stakeholders
- gap-analysis: Check research fills identified gaps
- elicitation-methodology: Return for technique selection
Output Location
Save research results to:
.requirements/{domain}/research/RES-{timestamp}.yaml
Related
elicitation-methodology- Parent hub skillgap-analysis- Research to fill gapsinterview-conducting- Validate research findings
Last Updated: 2025-12-29