Agent skill
accelerator-research-agent
Research accelerator portfolio companies using Firecrawl and Tavily MCPs. Generates structured CSV and markdown reports with systematic impact scoring. Optimized for token efficiency.
Install this agent skill to your Project
npx add-skill https://github.com/majiayu000/claude-skill-registry/tree/main/skills/devops/accelerator-research-agent-majiayu000-claude-skill-registr
SKILL.md
Accelerator Research Agent
A token-optimized Claude Desktop skill for researching accelerator portfolio companies with systematic impact analysis.
When to Use This Skill
Activate when user asks to:
- "Research companies from [accelerator name]"
- "Analyze [accelerator] portfolio"
- "Score companies for impact" or "evaluate mission alignment"
- Mentions: YC, Techstars, Fast Forward, 500 Global, a16z
Prerequisites
Required MCP Servers (both tested and validated):
-
Firecrawl MCP - Structured extraction
- Free tier: 500 credits/month
- Use
firecrawl_extractfor JSON extraction
-
Tavily MCP - AI-optimized search
- Free tier: 100 RPM (6,000/hour)
- Use
tavily-searchfor company research
Core Workflow (3 Phases)
Phase 1: Portfolio Extraction
Goal: Get company list from accelerator portfolio page
Tool: firecrawl_extract (PRIMARY - 100% success rate)
Schema Pattern: See SCHEMA-TEMPLATES.md for tested schemas (YC, Fast Forward, Healthcare, Climate, Fintech)
Quick Schema (customize based on accelerator):
{
"name": "mcp__MCP_DOCKER__firecrawl_extract",
"arguments": {
"urls": ["PORTFOLIO_URL"],
"prompt": "Extract all portfolio companies including name, website, description, industry",
"schema": {
"type": "object",
"properties": {
"companies": {
"type": "array",
"items": {
"type": "object",
"properties": {
"name": {"type": "string"},
"website": {"type": "string"},
"description": {"type": "string"},
"industry": {"type": "string"}
},
"required": ["name"]
}
}
},
"required": ["companies"]
}
}
}
Token Optimization:
- Only require
"name"field - Use string types for all fields (more flexible)
- Add
"maxAge": 604800000for caching (7 days)
If Extract Fails - Use fallback:
{
"name": "mcp__MCP_DOCKER__firecrawl_scrape",
"arguments": {
"url": "PORTFOLIO_URL",
"formats": ["markdown"]
}
}
Then manually parse the markdown.
Phase 2: Company Research
Goal: Research each company using web search
Tool: tavily-search with token-efficient parameters
CRITICAL - Token Optimization:
{
"name": "mcp__MCP_DOCKER__tavily-search",
"arguments": {
"query": "[company name] mission target market",
"max_results": 3, // ✅ NOT 10! Saves 70% tokens
"search_depth": "basic", // ✅ NOT "advanced"! Faster
"include_raw_content": false // ✅ Critical - saves massive tokens
}
}
Batch Processing (IMPORTANT):
- Research 3-5 companies at a time (not 10-20)
- Generate incremental reports to avoid token limits
Research Query Pattern:
"[Company Name] mission target market product"
Extract from Results:
- Founder names
- Mission/tagline
- Target market demographic
- Product/service description
- Key metrics (users, funding, team size)
Phase 3: Impact Scoring
Goal: Score companies using 5-tier rubric
5-Tier Impact Rubric (Customizable):
⭐⭐⭐⭐⭐ Tier 1 - Direct Impact
- Primary target: Underserved populations
- Core product addresses fundamental challenges
- Impact central to business model
⭐⭐⭐⭐ Tier 2 - Strong Alignment
- Significant focus on underserved
- Clear pathway to reach target communities
- Impact is key differentiator
⭐⭐⭐ Tier 3 - Moderate Alignment
- Serves underserved as secondary market
- Impact through indirect channels
- Mixed revenue model
⭐⭐ Tier 4 - Weak Alignment
- Minimal underserved focus
- Impact is incidental or aspirational
- Primarily serves mainstream markets
⭐ Tier 5 - Minimal Alignment
- No focus on underserved
- Luxury/premium positioning
- Opposite of mission
Customization Examples:
- Climate Tech: Direct emissions reduction → Greenwashing
- Healthcare: Medicaid focus → Luxury medicine
- Fintech: Unbanked → High-net-worth
Phase 4: Report Generation
CSV Format (Excel/Sheets compatible):
Company Name,Website,Description,Industry,Impact Tier,Impact Reasoning,Founder,Funding
Markdown Format:
# [Accelerator] Portfolio Research Report
## Executive Summary
- Total companies researched: X
- Impact distribution: Tier 1 (X), Tier 2 (X), etc.
## High-Impact Companies (Tier 1-2)
### Company Name
- **Website**: [URL]
- **Impact Tier**: ⭐⭐⭐⭐⭐
- **Mission**: [Brief mission]
- **Target Market**: [Demographics]
- **Why High Impact**: [Reasoning]
- **Metrics**: [Users, funding, etc.]
[Repeat for each high-impact company]
## Moderate Impact Companies (Tier 3)
[Summarized list]
## Lower Priority Companies (Tier 4-5)
[Brief list]
Token Management Best Practices
Critical for Avoiding Limits:
- Batch Processing: Research 3-5 companies at a time
- Tavily Parameters:
max_results: 3(not 10)search_depth: "basic"(not "advanced")include_raw_content: false(saves massive tokens)
- Incremental Reports: Generate partial results, then continue
- Schema Efficiency: Only require essential fields
- Caching: Use
maxAgeparameter for portfolio pages
Common Scenarios
Scenario 1: YC Research
User: "Research 10 YC W25 climate tech companies"
Steps:
1. Extract YC W25 companies (firecrawl_extract + YC schema)
2. Filter to climate tech vertical (JSON filtering)
3. Research FIRST 5 companies (tavily-search, max_results=3)
4. Score and generate partial report
5. Research NEXT 5 companies (new batch)
6. Append to report
Scenario 2: Fast Forward Impact
User: "Score Fast Forward portfolio for low-income US impact"
Steps:
1. Extract Fast Forward companies (firecrawl_extract)
2. Research in batches of 3 (tavily-search)
3. Apply low-income US impact rubric
4. Generate CSV + markdown report
Scenario 3: Healthcare Medicaid
User: "Find healthcare startups serving Medicaid populations"
Steps:
1. Extract with healthcare vertical schema (see SCHEMA-TEMPLATES.md)
2. Research with query: "[company] Medicaid low-income healthcare"
3. Filter to Medicaid focus
4. Score using healthcare impact rubric
Troubleshooting
Token Limit Hit:
- Reduce batch size to 3 companies
- Use
search_depth: "basic" - Set
include_raw_content: false - Generate incremental reports
Extract Returns Empty:
- Check SCHEMA-TEMPLATES.md for validated schemas
- Improve prompt specificity
- Try fallback to
firecrawl_scrape
Search Returns Poor Results:
- Refine query: "[company name] mission target market"
- Reduce
max_resultsto 3 - Try alternative search: "[company name] about"
Files Reference
- SCHEMA-TEMPLATES.md: Production-tested extraction schemas
- README.md: Setup instructions and MCP configuration
Output Deliverables
This skill generates ONLY research outputs:
- ✅ CSV file with all company data
- ✅ Markdown report with analysis
This skill does NOT:
- ❌ Create Linear/project tracking issues
- ❌ Integrate with CRM systems
- ❌ Send notifications
Use separate skills for pipeline management if needed.
Version: 2.1 (Token-Optimized) | Testing: Validated on YC, Fast Forward
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