NoahAI Technical Whitepaper

This whitepaper is not a list of tech specs but a technical hub so that team, investors, and partners share the same picture.

The core goal is "moving the subject of financial judgment to AI"—focus is on 'operable safety', not short-term return competition.

Full whitepaper is available below.

Table of contents

  1. 1

    Overview

    NoahAI's core goal is "moving the subject of financial judgment to AI"—focusing on operable safety, not short-term return competition. This whitepaper describes the technical design and principles to achieve that goal.

  2. 2

    Technical philosophy (design principles)

    Four principles: Safety First, Record → Review → Improve, Collective Learning, Explain & Verify. The most important KPI in financial AI is minimizing failure, not short-term returns; every judgment is recorded, replayed, and reflected in improvement.

  3. 3

    System architecture

    High-level architecture in 7 layers: Market Data, Account State, Decision, Risk & Guardrails, Execution, Logging & Report, Feedback Loop. Each layer's role and interaction are described.

  4. 4

    AI optimization loop

    The 6-step loop Record → Review → Policy → Risk → Feedback → XAI is explained from an operational view. We aim for an "experience-accumulating judgment structure," not "fixed automation"; each step's role and improvement mechanism are detailed.

  5. 5

    Learning data structure

    Data structures in a CareLog-like schema. DecisionLog, MarketSnapshot, AccountSnapshot, RiskEvent, ExecutionResult, XAITrace and their fields and purpose; standardized record enables replay, learning, and audit.

  6. 6

    XAI (explainable AI)

    XAI value from the perspective of explainability = trust / audit / reproducibility. Four use cases: trust, audit and trace, reproducibility, improvement and learning; log structure and version tracking are covered.

  7. 7

    Multi-model benchmark

    Mechanism for comparing multiple AI engines to learn an optimal judgment structure. Same data and prompts, engine-level performance comparison; verification process to reduce bias and illusion.

  8. 8

    Security and compliance

    Security and regulatory compliance for financial services: data encryption, access control, audit logs, privacy, anonymized pattern learning.

  9. 9

    Enterprise adoption

    Adoption path and requirements for enterprise: RBAC, SSO, on-prem/VPC options, SLA, customization, integration API.

  10. 10

    Future plans

    Asset and channel expansion proceed step by step on top of the validated judgment·record·guardrail structure. This section does not imply immediate commercialization; it describes the technical roadmap and design principles for extending the same operational structure to other high-risk verticals.

Summary

NoahAI is financial AI operations infrastructure designed so that repeated judgment in finance and assets can be performed safely by AI. The technical core is not short-term returns or auto-trading performance but a structure where judgment, risk control, record, replay, and verification are possible.

This whitepaper is not a commercial service brochure or investment pitch. It is a reference document for explaining executability, reproducibility, and accountability in government R&D, public projects, and institutional adoption review.

The whitepaper describes NoahAI's overall technical structure, AI optimization loop, learning data structure, multi-model benchmark results, security and compliance, enterprise adoption, and future development plans.

All design is based on financial AI operation principles that reduce failure and clarify responsibility, not short-term performance.

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