Justice Decision Observability™ (JDO™) defines an execution-layer governance discipline focused on documenting, reconstructing, and evaluating how human decision-makers interpret and act on AI-supported system outputs within real-world justice environments. This document, JDO-2026-011, provides a comprehensive overview of the Justice Decision Observability™ Framework Series and establishes the full system architecture underlying the discipline. It integrates foundational doctrine, operational methodologies, implementation standards, and measurement systems into a unified governance framework designed for institutional adoption across corrections, community supervision, courts, and related operational environments. The framework is structured as a multi-layered governance system. Foundational components define the field, conceptual architecture, and boundary conditions of execution-layer governance. Operational governance components establish the methodologies and protocols required to reconstruct decision pathways and document governance-relevant events. Implementation standards define how these components are embedded within institutional workflows through structured governance methods, including Deployment Context Risk Review (DCRR™) and Critical Event Governance Reconstruction (CEGR™). A central contribution of this document is the integration of the Decision Reconstruction Performance Index™ (DRPI™), which introduces a measurement and standardization layer to the framework. DRPI™ enables institutions to evaluate reconstruction completeness, decision pathway integrity, evidentiary alignment, and governance consistency, transforming JDO™ from a descriptive framework into a measurable and repeatable governance standard. The JDO™ Framework Series collectively defines how automated system outputs are interpreted within operational environments, how human authority and discretion are exercised at the moment of decision, and how decision pathways are systematically reconstructed, documented, and evaluated as part of the institutional record. This document is descriptive, system-level, and non-adversarial. It does not assess algorithmic performance, determine legal compliance, or assign individual fault. Instead, it establishes a structured and defensible approach for making human–AI decision interaction visible and governable at the execution layer. JDO-2026-011 functions as the unifying system document of the canonical series, providing the architectural map and operational logic necessary to support implementation, measurement, and continuous improvement of governance practices in AI-supported justice systems.
Fleming et al. (Mon,) studied this question.