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Anton_wireframe/preprocessor/INGESTION_COMPLETE.md
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# ✅ Base Database Ingestion Complete!
**Date:** October 5, 2025
**Database:** `version_two.db`
## 📊 Summary Statistics
| Entity | Count |
| ---------------------------------- | ------ |
| **Investors** | 9,315 |
| **Companies** | 6,877 |
| **Sectors** | 639 |
| **Investor-Company Relationships** | 22,548 |
| **Investor-Sector Relationships** | 75,307 |
## 🎯 Top Investors by Portfolio Size
1. **Bpifrance** - 211 companies
2. **European Innovation Council** - 183 companies
3. **Business Growth Fund** - 84 companies
4. **HTGF (High-Tech Gruenderfonds)** - 74 companies
5. **EIT InnoEnergy** - 72 companies
## 📁 Source Files
- **Companies CSV**: 13,027 rows
- **Investors CSV**: 11,045 rows
- **Investors Ingested**: 9,315 (some duplicates/invalid entries filtered out)
## 🗃️ Database Structure
### Tables Created:
-`investors` - Core investor data
-`companies` - Portfolio companies
-`sectors` - Industry sectors
-`funds` - (Empty, will be populated during enrichment)
-`investor_members` - (Empty, will be populated during enrichment)
-`company_members` - Company team members
-`investment_stages` - Investment stage definitions
- ✅ Association tables for relationships
### Current Data:
- ✅ Investor names and basic info (website, investment count)
- ✅ Company details (name, location, industry, description)
- ✅ Sectors extracted from company industries
- ✅ Investor → Company relationships (who invested in what)
- ✅ Investor → Sector relationships (derived from portfolio)
### Missing (To Be Added via Enrichment):
- ⏳ Investor headquarters
- ⏳ AUM (Assets Under Management) details
- ⏳ Investment thesis
- ⏳ Portfolio highlights
- ⏳ Fund details (multiple funds per investor)
- ⏳ Senior leadership/team members
- ⏳ Research notes and sources
## 🔄 Next Steps
### 1. Prepare Enriched Data CSV
Your enriched CSV should have this structure:
```csv
investor_name,enriched_data
"212","{\"websiteURL\": \"...\", \"funds\": [...], ...}"
"301","{...}"
```
### 2. Run Enrichment Script
```bash
cd preprocessor
python enrich_investors.py enriched_investors.csv investor_name enriched_data
```
This will:
- ✅ Add fund details (multiple funds per investor)
- ✅ Update AUM information
- ✅ Add investment thesis
- ✅ Add portfolio highlights
- ✅ Add senior leadership
- ✅ Add research notes and sources
### 3. Verify Enriched Data
```bash
python3 << 'EOF'
from models import InvestorTable, FundTable, get_db_session
session = get_db_session()
# Check enriched data
investor = session.query(InvestorTable).filter_by(name="Anaxago").first()
if investor:
print(f"Investor: {investor.name}")
print(f"HQ: {investor.headquarters}")
print(f"AUM: {investor.aum}")
print(f"Funds: {len(investor.funds)}")
for fund in investor.funds:
print(f" - {fund.fund_name}")
session.close()
EOF
```
## 📝 Sample Queries
### Get Investor with Portfolio
```python
from models import InvestorTable, get_db_session
session = get_db_session()
investor = session.query(InvestorTable).filter_by(name="Bpifrance").first()
print(f"Investor: {investor.name}")
print(f"Website: {investor.website}")
print(f"Investments: {investor.number_of_investments}")
print(f"Portfolio Companies: {len(investor.portfolio_companies)}")
print(f"Sectors: {[s.name for s in investor.sectors[:5]]}")
session.close()
```
### Get Companies by Sector
```python
from models import CompanyTable, SectorTable, get_db_session
session = get_db_session()
sector = session.query(SectorTable).filter_by(name="AgTech").first()
print(f"Sector: {sector.name}")
print(f"Companies: {len(sector.companies)}")
for company in sector.companies[:5]:
print(f" - {company.name}")
session.close()
```
### Get Investor's Sector Distribution
```python
from models import InvestorTable, get_db_session
session = get_db_session()
investor = session.query(InvestorTable).filter_by(name="Bpifrance").first()
sectors = {}
for company in investor.portfolio_companies:
for sector in company.sectors:
sectors[sector.name] = sectors.get(sector.name, 0) + 1
# Top sectors
for sector, count in sorted(sectors.items(), key=lambda x: x[1], reverse=True)[:5]:
print(f"{sector}: {count} companies")
session.close()
```
## ⚠️ Known Issues
### Investors Not Found in DB
Some companies reference investors that weren't in the investors CSV:
- The Venture Collective
- Sarah Leary
- Transpose
- ND Capital
- InvestSud
- Third Swedish National Pension Fund
- Union Tech Ventures
- Vasuki Tech Fund
- MSA Novo
- And others...
These are likely individual angel investors or smaller funds not in the main investor list. They are recorded but not linked.
## 🔒 Backup
A backup of the database was created before ingestion:
- `version_two.db.backup_YYYYMMDD_HHMMSS`
## 📧 Support
For issues or questions:
1. Check the logs for error messages
2. Verify CSV file formats
3. Ensure all required columns are present
4. Check for duplicate entries
---
**Status:** ✅ Base database created successfully
**Ready for:** Enrichment phase with detailed investor data