ENGINEERING BLOG
Deep Dives into AI Governance Architecture
Technical research and engineering insights from the team building the operating system for responsible AI operations.
213 articles · Published by MARIA OS
Start with the highest-signal technical articles
The blog is intentionally high-volume, so this layer separates the most important architecture thesis, applied engineering, and case-study articles from the daily publication stream.
創業者の頭の中を、外に見える階段へ変える
A core MARIA OS thesis article. Read as a design and architecture position, not as a claim of new foundational theory.
Dynamic Harness and Phase-Space Control: From virtual-talent to MARIA OS
A core MARIA OS thesis article. Read as a design and architecture position, not as a claim of new foundational theory.
動的ハーネスと位相空間制御:virtual-talentからMARIA OSへ
A core MARIA OS thesis article. Read as a design and architecture position, not as a claim of new foundational theory.
Harness-Driven Development: Building Agentic Systems from Runtime Evidence Backward
Applies established engineering and mathematical methods to MARIA OS implementation and industry operations. The value is reproducible design, not novelty theater.
ハーネス駆動開発:Runtime Evidenceから逆算してAgentic Systemを作る
Applies established engineering and mathematical methods to MARIA OS implementation and industry operations. The value is reproducible design, not novelty theater.
Governed Auto-Implementation: How a Dynamic Harness Turns Research Intent into Code
Applies established engineering and mathematical methods to MARIA OS implementation and industry operations. The value is reproducible design, not novelty theater.
ガバナンス付き自動実装:Dynamic Harnessが研究意図をコードへ変換する仕組み
Applies established engineering and mathematical methods to MARIA OS implementation and industry operations. The value is reproducible design, not novelty theater.
MARIA Self-Healing Runtime: Safe Autonomous Repair for Agentic Systems
Applies established engineering and mathematical methods to MARIA OS implementation and industry operations. The value is reproducible design, not novelty theater.
MARIA Self-Healing Runtime:Agentic Systemの安全な自律改修基盤
Applies established engineering and mathematical methods to MARIA OS implementation and industry operations. The value is reproducible design, not novelty theater.
Autonomous Repair Harness: Turning Runtime Failures into Safe, Reviewable System Improvements
Applies established engineering and mathematical methods to MARIA OS implementation and industry operations. The value is reproducible design, not novelty theater.
The blueprint for building an Agentic Company
Eight papers that form the complete theory-to-operations stack: why organizational judgment needs an OS, structural design, stability laws, algorithm architecture, mission-constrained optimization, survival optimization, workforce transition, and agent lifecycle management.
Series Thesis
Company Intelligence explains why the OS exists. Structure defines responsibility. Stability laws prove when governance holds. Algorithms make it executable. Mission constraints keep optimization aligned. Survival theory determines evolutionary direction. White-collar transition shows who moves first. VITAL keeps the whole system alive.
00
Company Intelligence
Company Intelligence: Why MARIA OS Is Not an AI Tool but the Operating System for Organizational Judgment
Why organizational judgment needs an operating system, not just AI tools.
00
Company Intelligence
Company Intelligence: なぜMARIA OSはAIツールではなく、会社の知能をつくるOSなのか
Why organizational judgment needs an operating system, not just AI tools.
01
Structural Design
Agentic Company Structural Design: Responsibility Topology, Conflict-Driven Learning, and Self-Evolving Governance for Human-Agent Organizations
How to decompose responsibility across human-agent boundaries.
02
Stability Laws
Governing Emergent Role Specialization: Stability Laws for Agentic Companies Under Constraint Density
Mathematical conditions under which agentic governance holds or breaks.
03
Algorithm Stack
The Algorithm Stack for Agentic Organizations: 10 Essential Algorithms Mapped to a 7-Layer Architecture
10 algorithms mapped to a 7-layer architecture for agentic organizations.
04
Mission Constraints
Mission-Constrained Optimization in Agentic Companies
How to optimize agent goals without eroding organizational values.
05
Survival Optimization
Survival Optimization and Mission Constraint Theory
Does evolutionary pressure reduce organizations to pure survival machines? The math of directed vs. undirected evolution.
06
Workforce Transition
How Agent Office Replaces White-Collar Execution: Workflow Transfer, Organizational Redesign, and a Staged Change Roadmap
Which white-collar workflows move first, and how fast the shift happens.
Applications Maintained by Dynamic Harness-Driven Development
A general operating model for collecting runtime evidence, planning repairs, and keeping AI-assisted products stable
This application is maintained through dynamic harness-driven development. The method treats harness results as operational evidence, converts failures into bounded repair plans, and preserves learning without exposing internal implementation details.
動的ハーネス駆動開発により保守されるアプリケーション
Runtime evidenceを収集し、改修計画へ変換し、AI支援プロダクトを安定運用するための汎用モデル
このアプリは動的ハーネス駆動開発により保守されています。Harness結果を運用証跡として扱い、失敗を境界付きの改修計画へ変換し、内部実装の詳細を公開せずに学習を残す方法です。
Harness-Driven Development: Building Agentic Systems from Runtime Evidence Backward
A development method where scenarios, gates, scorecards, and repair boundaries are designed before implementation
Harness-driven development treats the dynamic harness as the primary specification. Instead of writing agent code first and testing it later, teams define runtime episodes, failure taxonomies, gates, and evidence contracts first, then let implementation converge toward measurable behavior.
ハーネス駆動開発:Runtime Evidenceから逆算してAgentic Systemを作る
実装より先にscenario、gate、scorecard、repair boundaryを設計する開発方法論
ハーネス駆動開発では、dynamic harnessをテスト補助ではなく主仕様として扱う。promptやtoolを書く前に、runtime episode、failure taxonomy、scorecard、authority boundaryを定義し、実装を測定可能な振る舞いへ収束させる。
Governed Auto-Implementation: How a Dynamic Harness Turns Research Intent into Code
From design note to implementation plan, patch, replay, and approval-gated merge
Automatic implementation becomes useful only when the system can prove what changed, why it changed, which runtime episodes improved, and which authority boundaries were touched. This article defines the governed auto-implementation loop inside a dynamic harness.
ガバナンス付き自動実装:Dynamic Harnessが研究意図をコードへ変換する仕組み
設計メモから実装計画、パッチ、再現実行、承認ゲート付きマージまで
自動実装が有用になるのは、何がなぜ変わり、どのruntime episodeが改善し、どのauthority boundaryに触れたかを証明できる時だけである。本稿はdynamic harness内部のgoverned auto-implementation loopを定義する。
Autonomous Repair Harness: Turning Runtime Failures into Safe, Reviewable System Improvements
Failure episodes, repair proposals, rollback envelopes, and approval boundaries for self-healing agentic systems
Automatic repair is the next step after automatic implementation. A dynamic harness can observe runtime failures, classify drift, draft repairs, replay evidence, and route patches through rollback and approval boundaries without allowing agents to rewrite their own constitution.
自動改修ハーネス:Runtime Failureを安全でReview可能な改善へ変換する
Failure episode、repair proposal、rollback envelope、approval boundaryによるself-healing agentic system
自動改修は自動実装の次段階である。Dynamic harnessはruntime failureを観測し、driftを分類し、repairを下書きし、evidenceをreplayし、rollbackとapproval boundaryを通してpatchをrouteできる。ただしagentが自分自身の憲法を書き換えることは許さない。
Dynamic Harness and Phase-Space Control: From virtual-talent to MARIA OS
Reframing runtime episodes, failure taxonomies, dynamic scorecards, repair proposals, and controlled self-healing as phase control for agentic society
The central question for agentic systems is shifting from model intelligence to runtime phase control. This article defines the Dynamic Harness as a Runtime Governance Layer that observes, evaluates, and controls the phase space of an agent runtime, connecting MARIA OS research with implementation lessons from bonginkan/virtual-talent.
動的ハーネスと位相空間制御:virtual-talentからMARIA OSへ
runtime episode、failure taxonomy、dynamic scorecard、repair proposal、controlled self-healingを、Agentic Society Runtimeの位相制御として再定義する
AI Agentの時代における本質的な問いは、モデルがどれほど賢いかではなく、知能がどの位相に入り、どの位相から戻れなくなるかである。本稿は、bonginkan/virtual-talentのProducer AIで進むDynamic Harness実装を踏まえ、MARIA OSにおけるハーネスをRuntime Governance Layer、さらにAgent runtimeの位相空間を制御する層として定義する。runtime episode、failure taxonomy、dynamic scorecard、repair proposal、controlled self-healingを軸に、静的テストから動的制御へ移行する設計原理を整理し、企業OSとAgentic Societyへ拡張する研究課題を示す。
AGENT TEAMS FOR TECH BLOG
Editorial Pipeline
Every article passes through a 5-agent editorial pipeline. From evidence synthesis to technical review, quality assurance, and publication approval, each agent operates within its responsibility boundary.
ARIA identifiers are shown as provenance, not as academic authority. Articles are labeled as Architecture Thesis, Applied Engineering, Engineering Case Study, or Governance Design Note so readers can distinguish architecture framing from rigorous application of established theory.
Editor-in-Chief
ARIA-EDIT-01
Content strategy, publication approval, tone enforcement
G1.U1.P9.Z1.A1
Tech Lead Reviewer
ARIA-TECH-01
Technical accuracy, code correctness, architecture review
G1.U1.P9.Z1.A2
Writer Agent
ARIA-WRITE-01
Draft creation, evidence synthesis, narrative craft
G1.U1.P9.Z2.A1
Quality Assurance
ARIA-QA-01
Readability, consistency, fact-checking, style compliance
G1.U1.P9.Z2.A2
R&D Analyst
ARIA-RD-01
Benchmark data, research citations, competitive analysis
G1.U1.P9.Z3.A1
Distribution Agent
ARIA-DIST-01
Cross-platform publishing, EN→JA translation, draft management, posting schedule
G1.U1.P9.Z4.A1
All Articles
Complete list of all 213 published articles. EN / JA bilingual index.
TOPIC INDEX
Search and LLM Topic Archives
Canonical category and tag URLs expose MARIA OS articles as topic-specific archives for Google Search and LLM retrieval.
Judgment OS / Decision Intelligence OS
Core MARIA OS research on turning organizational judgment into executable decision systems.
#MARIA-OS
Agentic Company Architecture
Research on human-agent organizations, delegation boundaries, role topology, and governed autonomy.
#agentic-company
Responsibility Gates and AI Governance
Safety, accountability, fail-closed gates, auditability, and human-in-the-loop control for AI agents.
#governance
Multi-Agent Mathematics
Formal models for convergence, stability, game theory, graph dynamics, and multi-agent evaluation.
#multi-agent
Evidence, RAG, and Knowledge Governance
Evidence bundles, retrieval architecture, Graph RAG, knowledge trust, and auditable reasoning pipelines.
#RAG
Agentic R&D and Judgment Science
Research operations, simulation labs, judgment science, recursive improvement, and experimental AI governance.
#judgment-science
Categories
Primary Tags
All articles reviewed and approved by the MARIA OS Editorial Pipeline.
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