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Dynamic Global Alignment Model (DGAM–V2): A Causal, Multi-Agent Decision-Intelligence Architecture for Sovereign Strategic Statecraft in a Multipolar World Final Ultimate Edition (2025)

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🧾 Canonical Zenodo Record Description Final Ultimate Edition (2025) Dynamic Global Alignment Model (DGAM–V2): A Causal, Multi-Agent Decision-Intelligence Architecture for Sovereign Strategic Statecraft in a Multipolar World This Zenodo record archives the authoritative Final Ultimate Edition (2025) of the Dynamic Global Alignment Model (DGAM–V2) as a canonical, cryptographically verifiable scholarly artifact.The work is published under a persistent DOI and is intended for long-term archival, citation, institutional reference, and rigorous peer review. DGAM–V2 is released as a single unified research object, composed of two tightly coupled volumes that are cryptographically bound to ensure immutability, auditability, and citation safety. 📘 Repository Contents Root-1: Main Research Volume File: DGAM-V2_Final-Ultimate-Edition_Mazumdar-2025.pdf The Main Research Volume presents the core conceptual, mathematical, and strategic architecture of DGAM–V2, including: Formal model structure and theoretical foundations Causal, risk-aware decision-intelligence design Strategic reasoning under multipolar geopolitical uncertainty Explicit governance constraints, ethical boundaries, and sovereignty safeguards Structured cross-references to all formal proofs, algorithms, and validation material contained in the Annex Compendium This volume is written for academic researchers, doctoral scholars, senior policy analysts, think-tank directors, ministers, and journal reviewers. Root-2: Annex Compendium (Technical & Audit Authority) File: DGAM-V2_Annex-Compendium_Final-Ultimate-Edition_Mazumdar_2025.pdf The Annex Compendium serves as the definitive technical, mathematical, and governance reference, containing: Complete mathematical proofs and formal derivations Full Python reference implementations Reproducibility protocols and documented boundary conditions Audit-grade governance logic, security isolation, and deployment constraints Validation experiments, stress testing, and explicit limitation analysis This volume is intended for reviewers, auditors, engineers, security analysts, and advanced researchers. 🧠 Framework Overview DGAM–V2 is a research-grade decision-intelligence and governance architecture for analyzing strategic state alignment and policy choice under geopolitical uncertainty in a multipolar world. The framework integrates: Multi-Agent Reinforcement Learning (MARL) for strategic multi-actor interaction Risk-sensitive optimization, including GeoVaR and CVaR Structural Causal Models (SCM) with intervention and counterfactual reasoning Tail-risk and systemic-shock analysis under non-stationary and regime-switching dynamics Governance-by-design, including human-in-the-loop control, auditability, security isolation, and version integrity DGAM–V2 reframes alignment not as a static bloc-membership or correlational forecasting problem, but as a dynamic, causal, and risk-bounded decision process. 🔐 Cryptographic Integrity & Immutability The two volumes are cryptographically bound using a Merkle construction to ensure immutability, citation safety, and long-term archival integrity. Merkle Root (SHA-256):9b6764b538bb8872a6cc18debc3ab92e5b96fde0cee75e0f8426ef455b489fcd This Merkle root irreversibly binds the Main Research Volume and the Annex Compendium into one immutable scholarly object.Any modification invalidates the root. ⚖️ Scope, Boundaries & Ethical Posture DGAM–V2 is not: a predictive oracle an autonomous decision-making system an operational command, escalation, or targeting tool It is designed strictly as a decision-support and analytical architecture, preserving: sovereign human authority legal accountability democratic and institutional oversight All claims are explicitly bounded, auditable, and reproducible within documented assumptions, data limits, and governance constraints. 🎯 Intended Use Doctoral and post-doctoral research Flagship think-tank and strategic-studies programs Government and national-security decision support (non-operational) AI governance, auditability, and sovereign deployment research Long-term archival reference and peer review 📜 Author Dr. B. MazumdarIndependent Researcher–Scholar AI Governance • Cybersecurity • Post-Quantum Cryptography • Digital Statecraft ORCID: https://orcid.org/0009-0007-5615-3558
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2025-12-29
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