I have published a set of practical AI governance sandbox prototypes on GitHub, aimed at supporting administrative decision-making in complex environments such as the EU.
These are not theoretical discussions, but executable use cases designed to support real-world administrative decision-making under complexity — especially in environments with multiple jurisdictions and languages.
They are intended for use by:
- policy officers
- regulatory sandbox participants
- cross-border coordination teams
Each sandbox addresses a specific source of administrative friction.
1. Governance Sandbox
Clarifies responsibility allocation by structuring Concept, Intent, Boundary, and Rationale.
→ Reduces ambiguity when assigning responsible authorities.
https://github.com/Shiraki5995/ai-governance-sandbox-1-governance
2. Multilingual Sandbox
Aligns multi-language inputs into a shared conceptual structure.
→ Enables consistent understanding across 24 EU languages.
https://github.com/Shiraki5995/ai-governance-sandbox-2-multilingual
3. Translation Drift Sandbox
Detects and visualizes meaning shifts across translations.
→ Prevents hidden divergence in interpretation.
https://github.com/Shiraki5995/ai-governance-sandbox-3-translation-drift
4. Semantic Gate Sandbox
Applies configurable semantic boundaries to extract domain-specific concepts.
→ Supports explainable filtering for SLM and governance use.
https://github.com/Shiraki5995/ai-governance-sandbox-4-semantic-gate
5. Meaning Sandbox
Explores how meaning itself can be structured beyond surface language.
→ Provides a foundation for semantic-level governance.
https://github.com/Shiraki5995/ai-governance-sandbox-5-meaning
6. Beyond the Goal (Concept Sharing & Governance)
Conceptual foundation connecting governance, semantics, and implementation.
https://github.com/Shiraki5995/beyond-the-goal-book
The core idea is simple but practical:
We do not attempt to “automate decisions.”
We structure how decisions are constructed.
By making Concept, Intent, Boundary, and Rationale explicit — and supporting them with GenAI — we can reduce ambiguity, coordination cost, and friction in administrative processes.
These prototypes are intended for sandbox experimentation, iteration, and practical validation.
Even a single small test in a sandbox environment would be meaningful.
Feedback is very welcome.
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Mototsugu, thank you for this highly structuring work.
What I find essential in these sandboxes is that they do not aim to automate administrative judgement, but rather to structure how that judgement is constructed.
The approach based on Concept, Intent, Boundary and Rationale anchors decisions within an explicit, organisational and verifiable logic, rather than relying on implicit interpretations or derived uses .
From this perspective, these works bring something rare to current discussions on AI governance: they produce executable artefacts of semantic governance, where most approaches remain at the level of abstract principles.
This makes concretely observable:
– the alignment between intention and execution,
– the decision boundaries,
– the semantic divergences,
– as well as the effects of multilingualism in complex administrative environments.These aspects are particularly critical in contexts such as:
– cross-border benefits,
– migration procedures,
– or the allocation of public funds at the European level.However, these works also point towards a crucial next step:
linking semantic governance to evidence at execution time.A natural extension would be to integrate:
– versioned governance boundaries,
– immutable decision logging,
– replayable decision paths,
– as well as adjustment mechanisms based on observed gaps between initial intent and actual behaviour.For example, this could involve:
– a global decision identifier,
– and an append-only audit trail linking semantic structures to the system’s effective actions.This would not only structure decisions ex ante,
but also enable their reconstruction ex post, which becomes critical in multilingual and cross-jurisdictional environments.As a practitioner working on behavioural analysis and AI forensic investigation, I see here a strong convergence between “by design” governance and the real-world observability of systems in production.
These sandboxes therefore appear as a relevant micro-foundation for European AI governance, in line with their growing role as tools for experimentation and regulatory evidence production .
The next step could be to connect, within a unified architecture:
semantic governance, operational drift, and post-incident accountability.
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