⚠ Educational use only — NDinomics is a software analytical tool for educational and informational purposes only. Not a registered investment advisor, broker-dealer, or money-management service. Always consult a qualified financial advisor.

Everything we know, published.

Because transparency isn’t a feature — it’s a promise. Here’s how the platform works, how to build on it, and how to verify our math for yourself.

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Getting Started

New here? Start with your first strategy, signal feed, or skill. Step by step, no assumptions about what you already know. We want you building, not guessing.

Start here →
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API Reference

Every endpoint, documented. Strategies, signals, skills, marketplace, accounts. The same depth we give ourselves — because if you’re building on our platform, you deserve the full picture.

View endpoints →
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Examples

Working Python code that does real things: submit a strategy, run a signal feed, build and execute a skill. Copy, paste, modify. We learn by doing.

Browse examples →

Starter Templates

Pre-built allocation templates you can fork and make your own: Conservative Core, Sector Tilt, Income Focus, Risk Parity. Don’t start from scratch if you don’t have to.

Open Studio →
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Simulation Methods

Why six algorithms instead of one? Because each one sees what the others miss. Here’s exactly how NDI-Monte Carlo, HMC, BCI, Importance Sampling, Drawdown-Aware EF, and Kelly CVaR work — and when to use each.

Read the guide →
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Methodology White Paper

How Axiom calibrates assets, how simulations are constructed, how the gauntlet verifies strategies, and how ESI detects event cascades. The full methodology — because “trust us” is not a methodology.

Read methodology →

Event Sequence Intelligence

How compound event chains are detected, scored, and surfaced as actionable signals before they cascade. The market rhymes — ESI listens for the echoes.

Learn about ESI →
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Forward Impact Landscape

Submit a set of conditions, receive a landscape of possible outcomes with probability weights. Not a prediction — a map. Because the future is a distribution, not a number.

View API →