Σ OVERWATCH — Institutional Decision Infrastructure for coherence, credibility, and drift governance
Project description
Σ OVERWATCH
Institutional Decision Infrastructure
Trust layer for agentic AI: verify before act, seal what happened, detect drift, ship patches.
What It Does
Organizations make thousands of decisions. Almost none are structurally recorded with their reasoning, evidence, or assumptions. When leaders leave, conditions change, or AI accelerates decisions 100x — governance fails silently.
Σ OVERWATCH fills this gap with three primitives:
- Truth — Decision Ledger Records (DLR) capture what was decided, by whom, with what evidence
- Reasoning — Reasoning Scaffolds (RS) capture why — claims, counter-claims, weights
- Memory — Decision Scaffolds + Memory Graphs (DS + MG) make institutional knowledge queryable
When assumptions decay, Drift fires. When drift exceeds tolerance, a Patch corrects it. This is the Drift → Patch loop — continuous self-correction.
Quick Start
pip install deepsigma
# Health check
deepsigma doctor
# Score coherence (0–100, A–F)
python -m coherence_ops score ./coherence_ops/examples/sample_episodes.json --json
# Drift → Patch in 60 seconds
python -m coherence_ops.examples.drift_patch_cycle
# Full 7-step Golden Path (no credentials needed)
deepsigma golden-path sharepoint \
--fixture src/demos/golden_path/fixtures/sharepoint_small --clean
Key Capabilities
| Capability | Description | Docs |
|---|---|---|
| Coherence Ops CLI | Score, audit, query, reconcile decision artifacts | CLI Reference |
| Golden Path | 7-step end-to-end proof loop | Golden Path |
| Credibility Engine | Institutional-scale claim lattice with formal scoring | Engine Docs |
| Trust Scorecard | Measurable SLOs from every Golden Path run | Spec |
| Excel-first BOOT | Govern decisions in a shared workbook — no code required | BOOT Protocol |
| MDPT | Multi-Dimensional Prompt Toolkit for governed prompt ops | MDPT Docs |
| MCP Server | Model Context Protocol server with auth + rate limiting | MCP Adapter |
| RDF/SPARQL | Semantic lattice queries via in-process SPARQL 1.1 | SPARQL Service |
| Dashboard | React dashboard with Trust Scorecard + Zustand store | Dashboard |
Connectors
All connectors conform to the Connector Contract v1.0.
| Connector | Transport | Docs |
|---|---|---|
| SharePoint | Graph API | docs |
| Power Platform | Dataverse Web API | docs |
| AskSage | REST API | docs |
| Snowflake | Cortex + SQL API | docs |
| LangGraph | LangChain Callback | docs |
| OpenClaw | WASM Sandbox | docs |
| Local LLM | llama.cpp / OpenAI-compatible | docs |
Repo Structure
DeepSigma/
├── src/ # 12 Python packages (all source code)
│ ├── coherence_ops/ # Core library + CLI
│ ├── engine/ # Compression, degrade ladder, supervisor
│ ├── adapters/ # MCP, SharePoint, Snowflake, LangGraph, OpenClaw, AskSage
│ ├── deepsigma/ # Unified product CLI
│ ├── demos/ # Golden Path, Excel-first Money Demo
│ ├── mdpt/ # MDPT tools + Power App starter kit
│ └── ... # credibility_engine, services, mesh, governance, tenancy, verifiers, tools
├── tests/ # 1050+ tests, fixtures, datasets
├── docs/ # Documentation + examples (canonical, mermaid, lattices, etc.)
├── dashboard/ # React dashboard + API server
├── schemas/ # JSON schemas (core engine + Prompt OS)
├── artifacts/ # Workbooks, templates, sealed runs, sample data
├── prompts/ # Canonical prompts + Prompt OS control prompts
└── .github/ # CI/CD workflows
Documentation
| START_HERE.md | Front door |
| HERO_DEMO.md | 5-minute hands-on walkthrough |
| NAV.md | Full navigation index |
| ABOUT.md | Reality Await Layer (RAL) |
| OPS_RUNBOOK.md | Operations + incident playbooks |
| STABILITY.md | Versioning policy + stability guarantees |
| docs/99-docs-map.md | Complete docs map |
Excel Prompt OS v2
Structured cognition workbook for institutional decision-making — no code required.
- Workbook:
artifacts/excel/Coherence_Prompt_OS_v2.xlsx - Quickstart:
docs/prompt_os/README.md - Prompts:
docs/prompt_os/PROMPTS.md - Diagram:
docs/prompt_os/diagrams/prompt_os_flow.mmd
Prompts
- Canonical Prompts v1:
prompts/canonical/— Executive Analysis, Reality Assessment - Prompt Index:
prompts/README.md
Contributing
See CONTRIBUTING.md.
License
Σ OVERWATCH We don't sell agents. We sell the ability to trust them.
Project details
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