--- title: Llewellyn Systems Inc emoji: ⚜️ colorFrom: yellow colorTo: red sdk: static pinned: false ---
The Operating System for Decision & Enterprise.
Open datasets, open agent primitives, and open infrastructure for the agentic enterprise.
llewellynsystems.com · MCP discovery · agents.json · A2A protocol
--- ## What we publish here We use Hugging Face to ship **the open layer** of our stack — the artifacts an enterprise AI ecosystem can actually be built on. - **Datasets** — labeled enterprise operations data, agent-routing corpora, MCP intent traces. - **Models** — small, focused classifiers and routers for orchestration (rolling out). - **Spaces** — interactive demos of ODE agents, governance probes, and benchmarks (rolling out). If you train on our data, route through our schema, or extend our agent layer — credit us, ship the work, and tell us about it. --- ## ⭐ Featured: ODE Enterprise Use Case Dataset A first-of-its-kind labeled corpus of **15,000 enterprise use cases** spanning the full operational surface area of a modern company — procurement, finance, ITSM, supply chain, AI mesh, governance, robotics, and more. | | | |---|---| | **Rows** | 15,000 | | **Modules** | 31 (Procurement → AI Policy → Robotics → MDM) | | **Submodules** | 215 | | **Verticals** | 8 (Manufacturing, Healthcare, FinServ, Public Sector, Retail, SaaS, Logistics, Creator) | | **Channels** | 5 (Web, Mobile, API, Voice, CLI) | | **Personas** | 12 | | **License** | CC-BY-4.0 (attribution required) | **Built for:** training AI orchestrators, intent classification across multi-agent systems, MCP server routing, business process mining, and benchmarking how well LLMs actually understand enterprise operations. → **[huggingface.co/datasets/LlewellynSystems/ode-enterprise-use-cases](https://huggingface.co/datasets/LlewellynSystems/ode-enterprise-use-cases)** ```python from datasets import load_dataset ds = load_dataset( "LlewellynSystems/ode-enterprise-use-cases", data_files="use_cases_universal.csv", ) # Agent routing: map free-text intent → (module, submodule) for row in ds["train"].select(range(3)): print(f"{row['title']} → {row['module']} / {row['submodule']}") ``` --- ## What we're building Llewellyn Systems builds **ODE** — an enterprise operating system designed for an agentic workforce, not a human-only one. - **19 production MCP servers** powering domain agents (finance, procurement, security, ops, AI policy, data lineage). - **55 AI agent skills** orchestrated under a 5-layer governance framework with constitutional AI guardrails. - **Open well-known endpoints** — every ODE deployment publishes `mcp.json`, `agents.json`, and `a2a.json` so other agents can discover and negotiate with it. The artifacts we publish here are the slices of that stack that work better in the open: schemas, datasets, routing models, and reference agents. --- ## Citation If our work shows up in your model, paper, product, or service — cite us. ```bibtex @misc{llewellyn_systems_hf_2026, title = {Llewellyn Systems on Hugging Face: Open Datasets and Agent Primitives for the Enterprise}, author = {Llewellyn Systems Inc}, year = {2026}, url = {https://huggingface.co/LlewellynSystems} } ``` --- ## Get in touch - **Website** — [llewellynsystems.com](https://www.llewellynsystems.com) - **Engineering / partnerships** — `llewellyn@llewellynsystems.com` - **MCP & A2A integrations** — start with the `.well-known/` endpoints linked aboveOpen primitives. Sovereign infrastructure. Built to be built upon.