RSQS Segmented Ethics - A Constiutional Framework for Constraied Governed Human Conduct Under Uncertainty
Description
This publication presents Constitutional Acts of the RSQS Segmented Ethics Framework. The work establishes a structured ethical foundation intended for use across human, organisational, governmental, educational, technological, and artificial intelligence contexts.
The framework adopts a segmented ethics architecture in which foundational ethical principles are separated from domain-specific applications, allowing ethical analysis to be performed in a deterministic, auditable, and jurisdiction-aware manner. Rather than relying upon ideological, political, religious, or cultural assumptions, the Constitutional Acts define universal ethical constraints intended to support responsible decision-making, accountability, transparency, proportionality, fairness, harm minimisation, stewardship, due process, and institutional legitimacy.
The publication forms the constitutional layer of the broader RSQS Ethics Framework and serves as a reference artefact for governance systems, standards development, ethical review processes, compliance assessments, policy evaluation, educational programs, AI governance systems, and future machine-assisted ethical reasoning environments.
The Constitutional Acts are designed to operate as a stable ethical substrate upon which additional layers of standards, case law, governance instruments, assessment methodologies, certification frameworks, and domain-specific ethical profiles may be constructed.
This work is intended for researchers, educators, policymakers, governance practitioners, standards bodies, auditors, regulators, software developers, AI governance specialists, and organisations seeking a structured and explainable ethics framework capable of supporting both human and machine-assisted decision processes.
Files
Ethics Book.pdf
Files
(575.3 kB)
| Name | Size | Download all |
|---|---|---|
|
md5:3c5cdc001cdf9b5e18c892ff021d20f8
|
304.9 kB | Preview Download |
|
md5:23e37542ee882a5a326cff7cefddd119
|
270.4 kB | Preview Download |
Additional details
Dates
- Copyrighted
-
2026-06-24