Bulge-tier Excel financial model factory. Every cell live-formulated, every number traceable. MCP-native.
Project description
ModelForge
Bulge-tier Excel financial model factory for credit & structured finance. Every cell live-formulated. Every number traceable back to the source document page it came from.
A developer tool for analysts and engineers who build credit and corporate-finance models programmatically. Covers unitranche, sponsor-backed LBO, project finance, real estate credit, NPL, structured credit, restructuring, M&A, DCF and IPO templates. Extensible to any asset class.
Use it inside Claude Code, Cursor, ChatGPT Enterprise (MCP-native)
PyPI name: modelforge-finance (the unscoped modelforge was taken by source{d}'s ML library). Import name stays modelforge.
pip install "modelforge-finance[mcp,export]"
# wire into your MCP client config:
{
"mcpServers": {
"modelforge": { "command": "modelforge-mcp" }
}
}
Then in your AI assistant:
"Build me a unitranche LBO model from this YAML spec, export the committee deck."
Tools available: list_templates · build_model · qc_workbook · list_sources · lineage_walk · ingest_dataroom · screen_deals · compute_tax · export_pptx · export_docx · plus 7 unified-feed tools (get_fundamentals, get_prices, lookup_lei, etc.) across an 11-provider data stack.
The architectural principle
LLMs produce specs + sources + narrative. Deterministic Python produces the workbook.
The LLM never writes a number into a cell. It writes a typed YAML spec with source IDs. A deterministic builder emits the Excel via openpyxl. A QC gate validates before export. Excel is a render of a linkage graph; the graph is persisted to SQLite and is the canonical artifact.
Quality standards (bulge-tier, non-negotiable)
Formatting
- Blue = hardcoded input. Black = formula. Green = cross-sheet link. Red = warning.
- No mixed formulas (no magic numbers embedded). Named ranges for every driver.
- Costs NEGATIVE (sign convention enforced and checked).
- EN primary labels, multi-language secondary (DE / ES / IT shipped; SV / NO / DA / NL on the v0.10 roadmap as design-partner asks).
- Historical vs Projected column separator, obvious.
- Check row at top of every sheet (BS balance, CFS tie, covenant headroom — TRUE or 0).
Sourcing
- Every hardcoded cell has a comment with source ID (S-001, S-002, ...).
Sourcessheet lists each source: doc, page, publisher, date, URL, verified-flag.- Assumptions (not sourced) tagged A-001 with rationale + confidence H/M/L.
Scenarios
- WORST / BASE / BEST toggle on Assumptions. Drives every sheet via CHOOSE.
- Every sheet respects the toggle — no orphan assumptions.
Audit
QCsheet with 12 automated checks, all must pass.- Revision log on Cover.
- Named ranges mandatory.
- Print areas set. Print-ready on every sheet.
Quick start
pip install "modelforge-finance[mcp,export,data]"
# Build any of 14 templates from a YAML spec
modelforge build examples/unitranche_cdmo.yaml
# QC the workbook (12 checks + Trust Layer plausibility)
modelforge qc output/unitranche_cdmo.xlsx --trust-strict
# Audit every example (CI uses the same gate)
modelforge audit-all examples/ --report AUDIT_REPORT.md
Trust Layer v1 (new in v0.9.7)
Why should a buyer trust the number in cell
B42?
The Trust Layer is a semantic gate (separate from the structural QC gate). It answers the question every IC asks in the first five minutes: is this number plausible? It catches issues like a DCF EV that's 8× the company's real market cap before the model ever leaves QA.
25+ built-in rules cover all 14 templates:
- DCF: WACC band (3-25%), terminal growth ≤ GDP + 1%, EV vs market-cap deviation, terminal-value share, sensitivity-table monotonicity
- Three-statement: balance-sheet integrity, cash reconciliation, retained-earnings link
- NPL: cumulative recovery ≤ 100%, vintage staircase monotone
- Project finance: DSCR floor, wire degradation > 0, P90 < P50
- Sponsor LBO: XIRR plausibility, multiple expansion vs entry
- M&A / fairness / structured credit / unitranche / credit memo: per-template plausibility
Each violation produces a RedFlags worksheet inside the built workbook with severity (info / warn / fail), the rule that fired, expected-vs-actual, and the recommended remediation.
modelforge audit-all examples/ # 14/14 templates, 0 FAIL violations in current ship
See AUDIT_REPORT.md for the current ship's audit.
Data-room ingestion (v0.3.1)
Turn a directory of PDFs, XLSXs and CSVs into a validated ModelForge YAML spec using Claude Opus. Every extracted number traces back to a doc page via the auto-built Sources registry.
pip install -e .[ingest] # installs anthropic, pdfplumber, pypdf
export ANTHROPIC_API_KEY=sk-ant-... # required
modelforge ingest path/to/dataroom/ \
--template project_finance \
-o output/my_deal.yaml --verbose
# Review output/my_deal.yaml + output/my_deal.ingestion.md
# (INGESTION_REPORT.md lists every extracted field, S-id, confidence)
modelforge build output/my_deal.yaml # produces the workbook
modelforge qc output/my_deal.xlsx # 8/8 quality gate
Supported template: project_finance (MVP). Templates 1, 3, 5-8 queued for v0.3.2.
Package layout
modelforge/
├── graph/ # First-class linkage graph (nodes, edges, SQLite persistence)
├── spec/ # Pydantic schemas per template
│ ├── base.py # Source, Assumption, Scenario, Target (shared types)
│ └── unitranche.py # Template 1: Unitranche LBO
├── builder/ # Deterministic openpyxl writer
│ ├── styles.py # Bulge-tier formatting library
│ ├── formulas.py # Formula string builders
│ ├── i18n.py # EN/IT label dictionary
│ ├── workbook.py # Top-level builder
│ └── sheets/ # One module per sheet (cover, sources, assumptions, ...)
├── qc/ # Quality gate (12 checks + PDF report)
├── data/ # Market data loaders (Damodaran, ECB, Borsa minibond)
└── cli.py # modelforge build|qc|sources|inspect
Templates (14, all shipped)
- ✅ Unitranche LBO — Mid-market direct lending (Cash sweep + IFRS 9 EIR + covenant package)
- ✅ Minibond / Private Placement Bond — Direct private debt instrument (Gross YTM + Net YTM + jurisdiction-specific WHT)
- ✅ Credit Memo — Extends Unitranche with recovery waterfall + PD×LGD×EAD
- ✅ Project Finance — Construction + operating phases, DSCR-driven
- ✅ Real Estate — NOI build, exit cap, LP/GP promote waterfall
- ✅ NPL Portfolio — Collection curves, servicing fees, senior/mezz capital structure
- ✅ Structured Credit — Tranche waterfall with attachment/detachment points
- ✅ 3-Statement — P&L + BS + CFS with BS balance integrity check
- ✅ DCF — WACC build, fade, terminal normalization, 2D sensitivity (Trust Layer protected)
- ✅ Merger — Accretion/dilution, breakeven, contribution, collar, PPA
- ✅ Fairness Opinion — Selected comps, regression, premium analysis
- ✅ Sponsor LBO — Returns waterfall, debt schedule, 14-story block
- ✅ IPO — Float build, lock-up, stabilization, fee schedule
- ✅ Restructuring — Going-concern recovery, plan-feasibility, creditor classes
Run modelforge list-templates to see them all. Each ships with an anonymized example YAML in examples/.
Tax jurisdictions (7)
US · Federal CIT + state + NOL + R&D credit + GILTI + BEAT + ASC 740
UK · FRS 102 + main rate + marginal relief + RDEC + AIA + WDA + group relief
DE · KSt + SolZ + GewSt (Hebesatz + § 8 add-backs + min-tax loss CF) — HGB roadmap v0.10
FR · IS + small-profits + social surcharge + CVAE + CIR + 88% participation
ES · IS + SME 23% + newly-created 15% + 95% participation + R&D + min-tax 15%
JP · NCT + LCT + Enterprise Tax + Special Local Corp Tax + R&D credit
IT · IRES / IRAP / SIIQ / PEX
Data providers (11, unified Provider Protocol)
Tier-0 (free, live today): EDGAR · OpenFIGI · GLEIF Tier-1 (low-cost paid): Polygon ($29/mo) · FMP ($19/mo) · Finnhub · Tiingo Tier-2 (institutional): Bloomberg · Refinitiv · FactSet · S&P Capital IQ
Tier-1 and Tier-2 are interface-complete — paid keys activate them via env vars. Local TTL cache prevents rate-limit blow-ups.
Security & SBOM
- CycloneDX 1.5 SBOM auto-generated by CI on every push and attached to every GitHub release (
scripts/generate_sbom.py) - CI gates: pytest across Python 3.11 + 3.12, ruff lint, SBOM structure validation (
.github/workflows/ci.yml) - Audit log with append-only SQLite (
modelforge/audit_log.py) - Trust Layer semantic gates auto-injected into every built workbook
- Security policy: see SECURITY.md
Procurement-grade controls (SOC 2 Type II, ISO 27001, pen-test, multi-tenant SaaS with SSO/SCIM) are Phase-B work.
The pitch
Bulge-tier Excel models, every cell live-formulated, every number traceable back to the data room page it came from.
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