| name | anysite-market-research |
| description | Conduct comprehensive market research using Y Combinator data, SEC filings, social media insights, and web scraping via anysite MCP server. Analyze tech markets, research startup ecosystems, study public companies, identify market opportunities, and understand competitive dynamics. Supports startup discovery, industry analysis, public company research, and social sentiment analysis. Use when users need to analyze market opportunities, research industries, evaluate startups, study public companies, or gather market intelligence for strategic planning and investment decisions. |
anysite Market Research
Comprehensive market research using Y Combinator, SEC, social media, and web data through anysite MCP. Analyze tech markets, research startups, and study competitive landscapes.
Overview
- Research startup ecosystems via Y Combinator data
- Analyze public companies through SEC filings
- Gather market intelligence from social platforms
- Study industry trends across communities
- Identify market opportunities through data analysis
Coverage: 70% - Excellent for tech/startup markets; pivoted from local business to tech focus
Supported Platforms
- ✅ Y Combinator: Startup research, batch analysis, founder discovery, funding data
- ✅ SEC: Public company filings, financial data, disclosures
- ✅ Reddit: Market sentiment, community insights, product discussions
- ✅ LinkedIn: Industry trends, company intelligence, professional discussions
- ✅ Twitter/X: Market pulse, news, influencer opinions
- ✅ Web Scraping: Company websites, industry reports, market data
v2 MCP Tool Interface
All data fetching uses the universal execute() meta-tool. Always call discover(source, category) first if you need to verify endpoint names or parameters.
Core workflow:
execute(source, category, endpoint, params) -- fetch data (returns first page + cache_key)
get_page(cache_key, offset, limit) -- paginate through remaining results
query_cache(cache_key, conditions, sort_by, aggregate, group_by) -- filter/sort/aggregate cached data without new API calls
export_data(cache_key, format) -- export to CSV, JSON, or JSONL for deliverables
Error handling: check response for llm_hint field -- it contains actionable guidance when calls fail or return partial data.
Quick Start
Step 1: Define Research Scope
Choose focus:
- Startup ecosystem:
execute("yc", "search", "search", {"query": ...})
- Public companies:
execute("sec", "search", "search", {"query": ...})
- Industry sentiment:
execute("reddit", "search", "search", {"query": ...}), execute("twitter", "search", "search_users", {"query": ...})
- Company intelligence:
execute("linkedin", "search", "search_companies", {...})
Step 2: Gather Data
Execute searches:
# Startup research
execute("yc", "search", "search", {"query": "fintech", "batch": "W24,S23"})
# Public company research
execute("sec", "search", "search", {"query": "tech company"})
# Market sentiment
execute("reddit", "search", "search", {"query": "fintech trends"})
→ use get_page(cache_key, offset, limit) to collect up to 100 results
Step 3: Analyze Results
Use query_cache() to slice data without re-fetching:
# Count startups by category
query_cache(cache_key, aggregate={"field": "category", "function": "count"})
# Filter high-engagement posts
query_cache(cache_key, conditions=[{"field": "score", "operator": ">", "value": 50}], sort_by={"field": "score", "order": "desc"})
Extract insights:
- Market size indicators
- Competitive landscape
- Technology trends
- Consumer sentiment
- Funding patterns
Step 4: Synthesize Findings
Use export_data(cache_key, "csv") or export_data(cache_key, "json") to deliver:
- Market opportunity assessment
- Competitive analysis
- Trend identification
- Strategic recommendations
Common Workflows
Workflow 1: Startup Ecosystem Analysis
Scenario: Analyze fintech startup landscape
Steps:
- Find Startups
execute("yc", "search", "search", {
"query": "fintech",
"batch": "W24,S23,W23,S22"
})
→ use get_page(cache_key, offset, limit) to paginate through all results
- Categorize by Focus
For each startup:
execute("yc", "company", "get", {"slug": company_slug})
Group by:
- Payments
- Lending
- Investment/Trading
- Banking
- Insurance
- B2B fintech tools
Or use query_cache to group:
query_cache(cache_key, group_by="category")
- Analyze Patterns
Identify:
- Hot subcategories (most startups)
- Team size distribution
- Geographic concentration
- Common tech stacks (from job postings)
Use query_cache for aggregation:
query_cache(cache_key, aggregate={"field": "team_size", "function": "avg"})
- Research Traction
For promising startups:
execute("linkedin", "search", "search_companies", {"keywords": startup_name})
→ Check employee growth
execute("twitter", "search", "search_users", {"query": startup_name})
→ Check social presence and buzz
execute("webparser", "parse", "parse", {"url": startup_website})
→ Check positioning and features
- Identify White Spaces
Compare:
- Overcrowded categories
- Underserved segments
- Emerging opportunities
- Geographic gaps
Expected Output:
- 50-100 startup landscape map
- Category distribution
- Funding trends
- Market gaps identified
- Competitive intensity by segment
Use export_data(cache_key, "csv") to deliver the startup list as a spreadsheet.
Workflow 2: Public Company Competitive Analysis
Scenario: Research public competitors in cloud infrastructure
Steps:
- Find Companies
execute("sec", "search", "search", {
"query": "cloud"
})
→ use get_page(cache_key, offset, limit) to collect up to 50 results
- Get Financial Data
For each company:
execute("sec", "document", "get", {"url": document_url})
Extract:
- Revenue and growth
- Operating margins
- R&D spending
- Geographic breakdown
- Risk factors mentioned
- Analyze Strategy
From 10-K filings:
- Business model
- Target markets
- Competitive advantages
- Growth initiatives
- Challenges and risks
- Track Changes
Compare year-over-year:
- Revenue growth trends
- Market focus shifts
- New initiatives
- Risk factor changes
- Supplement with Social Intel
execute("linkedin", "search", "search_companies", {"keywords": company_name})
→ Employee count, hiring patterns
execute("linkedin", "company", "get", {"company": company_urn})
→ Company details and strategic messaging
execute("reddit", "search", "search", {"query": company_name})
→ Customer sentiment
Use query_cache to filter sentiment:
query_cache(cache_key, conditions=[{"field": "text", "operator": "contains", "value": "review"}])
Expected Output:
- Competitive landscape map
- Financial benchmarks
- Strategic positioning
- Growth trajectories
- Market opportunities
Use export_data(cache_key, "json") for structured competitive data.
Workflow 3: Industry Trend Analysis
Scenario: Understand AI/ML market evolution
Steps:
- YC Startup Trends
execute("yc", "search", "search", {
"query": "AI OR machine learning OR artificial intelligence"
})
→ use get_page(cache_key, offset, limit) to collect up to 200 results
Group by batch to see:
- Trend over time
- Focus area shifts
- Team size changes
query_cache(cache_key, group_by="batch", aggregate={"field": "id", "function": "count"})
- Public Market Signals
execute("sec", "search", "search", {
"query": "artificial intelligence"
})
→ use get_page(cache_key, offset, limit) to collect up to 50 results
Check 10-K mentions of:
- "AI" or "machine learning" frequency
- AI-related investments
- AI revenue segments
- Community Sentiment
execute("reddit", "search", "search", {
"query": "AI trends 2026"
})
→ use get_page(cache_key, offset, limit) to collect up to 100 results
Analyze for:
- Excitement vs. concern
- Adoption barriers
- Use case validation
- Technology maturity
query_cache(cache_key, sort_by={"field": "score", "order": "desc"})
- Professional Discussion
execute("linkedin", "post", "search_posts", {
"keywords": "artificial intelligence"
})
Check:
- Industry adoption
- Job market signals
- Skill requirements
- Thought leader opinions
- Web Intelligence
For key AI companies:
execute("webparser", "parse", "parse", {"url": website + "/blog"})
→ Technology updates, product launches
Expected Output:
- Market evolution timeline
- Technology adoption curves
- Sentiment analysis
- Opportunity identification
- Risk assessment
Use export_data(cache_key, "csv") for trend data tables.
MCP Tools Reference (v2)
Data Fetching
execute(source, category, endpoint, params) -- Universal data fetcher; always returns cache_key
Pagination
get_page(cache_key, offset, limit) -- Load additional pages from a previous execute()
Analysis
query_cache(cache_key, conditions, sort_by, aggregate, group_by) -- Filter, sort, and aggregate cached data
Export
export_data(cache_key, format) -- Export to CSV, JSON, or JSONL; returns download URL
Y Combinator Research
execute("yc", "search", "search", {"query": ...}) -- Find startups by industry, batch, filters
execute("yc", "company", "get", {"slug": ...}) -- Get detailed company profile
SEC Research
execute("sec", "search", "search", {"query": ...}) -- Find public companies and filings
execute("sec", "document", "get", {"url": ...}) -- Get full document content
Social Intelligence
execute("reddit", "search", "search", {"query": ...}) -- Community insights and sentiment
execute("twitter", "search", "search_users", {"query": ...}) -- Real-time market pulse
execute("linkedin", "post", "search_posts", {"keywords": ...}) -- Professional trends
Company Intelligence
execute("linkedin", "search", "search_companies", {"keywords": ...}) -- Find companies
execute("linkedin", "company", "get", {"company": ...}) -- Company details
execute("webparser", "parse", "parse", {"url": ...}) -- Extract website data
Market Discovery
- Use
discover(source, category) to explore available endpoints for any source
execute("webparser", "parse", "parse", {"url": ...}) -- Scrape any URL for market data
Note: Crunchbase endpoints are disabled in v2. Use LinkedIn company search and Y Combinator data as alternatives for company research.
Market Analysis Frameworks
TAM/SAM/SOM Analysis:
Total Addressable Market (TAM):
- Count YC companies in category x avg market size
- SEC filing market size mentions
- Industry reports via execute("webparser", "parse", "parse", {"url": report_url})
Serviceable Addressable Market (SAM):
- Filter by geography, segment using query_cache()
- LinkedIn company search by ICP
- YC companies by batch/stage
Serviceable Obtainable Market (SOM):
- Realistic capture based on competition
- Competitive analysis via LinkedIn/social
- Market share indicators
Porter's Five Forces:
Using anysite v2 data:
1. Competitive Rivalry:
- YC startups in space
- LinkedIn company counts
- Social mention volume
2. Threat of New Entrants:
- Recent YC batches
- Funding announcements
- Talent movement (LinkedIn)
3. Supplier Power:
- Technology dependencies
- Integration partners
4. Buyer Power:
- Customer reviews (Reddit)
- Pricing transparency
- Switching costs mentioned
5. Threat of Substitutes:
- Alternative solutions
- Adjacent markets
Output Formats
Chat Summary:
- Key market insights
- Competitive landscape summary
- Opportunity identification
- Strategic recommendations
CSV Export (via export_data(cache_key, "csv")):
- Company list with metrics
- Market segmentation data
- Trend indicators
JSON Export (via export_data(cache_key, "json")):
- Complete research data
- Time-series analysis
- Cross-platform correlations
Reference Documentation
- RESEARCH_METHODS.md - Market research methodologies, analysis frameworks, and data synthesis techniques
Ready for market research? Ask Claude to help you analyze markets, research startups, or study competitive landscapes using this skill!