Behavioral Trust Clustering a thermodynamic governance layer that reduces LLM hallucination by 52% on HumanEval. Drop-in wrapper for any decoder. MIT.
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Updated
May 4, 2026 - Python
Behavioral Trust Clustering a thermodynamic governance layer that reduces LLM hallucination by 52% on HumanEval. Drop-in wrapper for any decoder. MIT.
Agility infrastructure for regulated AI. Trace, Policy, Evidence under EU jurisdiction. Apache 2.0, on-premise capable.
Governance patterns for autonomous AI agents in regulated financial services — DEFCON state machine, Sovereign Veto, Audit Chain, EU AI Act mapping
Model-neutral Agent IAM runtime for regulated AI workflows: short-lived capabilities, API-body enforcement, credential brokering, and tamper-evident audit trails.
Secure CI/CD and infrastructure patterns for regulated AI/ML deployments
Interpretability-first ML pipeline wrapper for regulated industries
A modular architecture for AI-powered regulated investigation. 8 universal base components · 7 plug-and-play clusters · 6 deployment profiles.
Compliance and audit middleware for LLM agents operating in regulated financial workflows.
Policy enforcement for AI agents in regulated environments (FERPA, HIPAA, GLBA, GDPR): framework adapters for CrewAI, AutoGen, LangChain, Semantic Kernel, Haystack
kolm — the AI compiler. Compile any task into a signed .kolm artifact that runs locally. RS-1 open spec, MIT.
A starter repository for documenting, reviewing, and releasing regulated AI systems.
Reference architecture for wrapping a frontier model so it can ship in a regulated workflow: gateway, permission-aware retrieval, two-sided guardrails, identity/KYB-KYC, pre-registered eval gate, tamper-evident audit. The model is the easy part; the wrap is the product.
Regulated multi-agent operations platform with governance, review, and audit-friendly workflows.
Fiducial Mesh — open specification (CC-BY-4.0) for cradle-to-grave traceability of AI-assisted engineering: sovereign agent identity, policy, audit, and knowledge-grounding primitives for regulated, certifiable AI. SPEC-001 + HDBK-001.
Governance patterns for autonomous AI agents in health-insurance / payer operations — UM, prior auth, claims/appeals. Aligned to the NAIC Model Bulletin framework. Reference IP; makes no medical-necessity determination.
Reference architecture for accountable AI document workflows with RAG-style retrieval, validation, human review, and audit logging.
Bilingual (Norwegian and English) AI workflow platform for regulated, document-heavy casework with source-grounded RAG, human approval, audit trails, and deterministic evaluation.
Can your AI act as a fiduciary inside a regulated bank? A deployment-readiness benchmark that drops LLMs into a synthetic regulated organization as an employee and audits the behavior.
Production-grade agentic decisioning platform for regulated industries. Constant L0–L9 architecture — LangGraph orchestration, MCP context assembly, jurisdiction-aware governance, append-only audit, MLflow model registry, and Playbook-driven execution. Domain is a plugin. Insurance, lending, healthcare, and wealth run on one platform.
Proof of Insight — specification, schemas, and governance
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