UCP Server
OfficialClick on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@UCP Servergenerate a UCP from the Flask issue #5961"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Universal Context Package (UCP)
An open format that turns a sprawling issue thread into a small, verifiable context package for LLM agents.
Version: 0.1.0-draft · Status: Draft · ucpcore.org
UCP in 10 seconds
LLMs don't know your work context, and pasting a 596-comment thread into a prompt is not knowledge transfer. A UCP is one JSON document that carries what a person or agent needs to know right now to act on a task — with every claim cited, every source hashed, and a deterministic rendering under any token budget:
task.ucp.json
├── summary what is going on, with cited sources
├── must_know facts, ranked by salience
├── decisions what was decided, when, with status
├── conflicts contradictions, kept visible instead of merged
├── context_diff what changed since your last visit
└── sources every claim cites one; each sha256-hashedRelated MCP server: GitHub See MCP Server
Try it in 30 seconds
Run everything as one self-hosted server (REST + MCP over Streamable HTTP):
docker run --rm -p 8080:8080 -e GITHUB_TOKEN=ghp_yourtoken \
ghcr.io/ucpcore/ucp-server:latest
# or without Docker: uvx --from ucpcore-server ucp-serverPoint Cursor / Claude Code at http://localhost:8080/mcp, or use the REST
API (POST /v1/generate); see libs/server for details.
Deploying beyond localhost? Set UCP_SERVER_API_KEY and send it as a
Bearer header — see server security notes.
Or generate a package directly with the CLI — by default no LLM involved, structure only:
pip install ucp-gen
# JSON package: claims, decisions, timeline, hashed sources
ucp-gen github pallets/flask#5961 -o task.ucp.json
ucp-gen jira PROJ-123 -o task.ucp.json # needs JIRA_BASE_URL + token
# or the canonical LLM rendering, capped at 1500 tokens
ucp-gen github pallets/flask#5961 --markdown --token-budget 1500
# optional: add semantic understanding via any OpenAI-compatible endpoint
ucp-gen github pallets/flask#5961 --llm -o task.ucp.jsonServe a directory of generated packages to agents via the stdio MCP server:
pip install ucp-mcp
ucp-mcp --dir . # exposes list_contexts / get_context / get_context_markdownMeasured on real issues
Same token estimator on both sides (~4 chars/token); "raw thread" is the
text you would otherwise paste into the model — title, body, comments,
linked-PR bodies. Reproduce with
tools/benchmark_context.py:
Issue | Comments | Raw thread | UCP |
| first 200 of 596 | ~18,500 | ~1,200 |
| 12 | ~4,450 | ~1,450 |
| 4 | ~800 | ~700 |
| 0 | ~500 | ~330 |
The win grows with thread size — a decade-long discussion collapses ~15×
while keeping decisions, conflicts and provenance. On small issues the
token count is similar, but the package is still structured, hashed and
audience-aware instead of being a wall of text. Generated with ucp-gen
0.1.1, 2026-07-05.
What --llm adds
The default pipeline is purely structural: fast, deterministic, no model
involved. The optional --llm flag adds a semantic layer through a single
call to any OpenAI-compatible endpoint — summary becomes a synthesis of
the whole thread instead of its opening paragraph, comments the model flags
as pivotal get a salience boost, and decisions and conflicts that exist
only in prose are extracted into their structured fields.
Measured on microsoft/vscode#519 — 596 comments over a decade, of which
200 fit the package (17 sources, ~1,623 rendered tokens) — the enriched
package captures what no structural field of GitHub carries. The summary
explains why the feature was never built: the VS Code team declined
because list and tree heights are hard-coded, the community relies on
workarounds (zoom, custom CSS), and a community PR was not accepted. A
conflict records the dispute over whether Electron or VS Code's
hard-coded styles are to blame, both positions citing specific hashed
comments. A decision with status rejected records that the request is
not on the roadmap — information stated only in prose, invisible to the
structural mode.
The guarantees do not change. The package still validates against the
schema; every LLM-added claim must cite source ids that exist in the
package (hallucinated citations are dropped); generator.llm_model records
which model produced the enrichment; and if the endpoint is unreachable the
generator degrades gracefully to the structural package with a warning.
The problem
Before an AI can help with a task, someone — a human or a pipeline — must gather the relevant documents, decisions, constraints, and risks scattered across Jira, Confluence, GitHub, Drive, CRMs and ERPs, and paste them into a prompt.
Existing standards solve adjacent problems:
MCP (Model Context Protocol) standardizes access to data sources.
RAG pipelines retrieve similar chunks.
UCP standardizes understanding: a verifiable, permission-aware, time-aware package of what a person (or agent) needs to know right now to act on a specific task.
MCP is the pipe. UCP is what flows through it.
What a UCP looks like
{
"ucp_version": "0.1.0",
"id": "urn:uuid:7f9c2e14-...",
"generated_at": "2026-07-05T13:40:00Z",
"generator": { "name": "context-os", "version": "0.2.0" },
"profiles": ["ucp-core", "ucp-temporal", "ucp-secure"],
"entity": {
"ref": { "system": "jira", "type": "issue", "id": "PAY-482",
"url": "https://acme.atlassian.net/browse/PAY-482" },
"title": "Migrate payment webhooks to v2 API"
},
"summary": { "text": "…", "sources": ["src-1", "src-2"] },
"must_know": [
{
"id": "mk-1",
"text": "Webhook signatures must use HMAC-SHA256; v1 keys are revoked on Aug 1.",
"salience": 0.97,
"confidence": 0.9,
"sources": ["src-3"],
"valid_from": "2026-06-12T00:00:00Z"
}
],
"decisions": [
{
"id": "dec-1",
"decision": "Keep idempotency keys in Redis, not Postgres",
"status": "accepted",
"decided_at": "2026-05-20T09:00:00Z",
"sources": ["src-4"]
}
],
"conflicts": [],
"context_diff": { "since": "2026-07-01T08:00:00Z", "changes": [] },
"sources": {
"src-1": { "system": "jira", "type": "issue", "title": "PAY-482",
"url": "…", "content_hash": "sha256:…" }
}
}Design principles
Provenance is mandatory. Every claim links to its sources. A claim without sources is invalid in every profile.
Time is first-class. Claims carry validity windows; stale facts are distinguishable from current ones. Contradictions are representable, not silently merged.
Permission-aware. A package declares its audience and whether access control was enforced during assembly. Packages are per-audience by design.
LLM-agnostic. A canonical rendering algorithm turns any UCP into a deterministic prompt for any model. Salience scores define truncation order under a token budget.
Forward-compatible. Consumers must ignore unknown fields. Extensions use namespaced keys. The schema evolves under semver.
What UCP gives you
Structure. Every consumer — an LLM, an agent, any application — receives the
same predictable sections: what is going on (summary), what you must know
(must_know), why things were decided (decisions), what contradicts what
(conflicts), what changed since your last visit (context_diff). The model
doesn't dig meaning out of a document dump; the meaning is already laid out.
Token economy. A raw retrieval dump for a task easily costs 50–100K
tokens; a UCP package carries the same actionable knowledge in 1–2K. Inside
the package, per-claim salience defines a deterministic truncation order, so
under any token budget the noise is dropped first and the core (summary,
conflicts, diff) survives.
Verifiability. A claim without sources is schema-invalid. Sources carry content hashes. An AI summary you can audit is an AI summary you can trust.
Access safety. A package declares who it was assembled for and attests that every source passed an access-control check.
Integrations
MCP (Cursor, Claude Code, any MCP-capable agent). The self-hosted server
speaks Streamable HTTP; add it to mcp.json:
{
"mcpServers": {
"ucp": { "url": "http://localhost:8080/mcp" }
}
}The agent gets generate_context, list_contexts, get_context and
get_context_markdown, plus ucp_context / ucp_catchup MCP prompts —
in Claude Code they show up as /mcp__ucp__ucp_context slash commands.
Ready-made /ucp command files for Cursor and Claude Code live in
libs/server/clients. For file-based workflows,
ucp-mcp serves a directory of .ucp.json files over stdio.
REST. POST /v1/generate with
{"source": "github", "ref": "owner/repo#123"} returns the package JSON;
GET /v1/packages/{id}/markdown?token_budget=1500 returns the canonical
rendering. See libs/server.
Libraries. Validate, parse and render packages in your own code:
pip install pyucp # Python: import ucp
npm install @ucpcore/core # TypeScriptimport ucp
pkg = ucp.load("task.ucp.json") # validate + parse
prompt = ucp.render(pkg, token_budget=1500)Industry-neutral by design
The structure of "understanding a task" is the same everywhere; only the
content differs. A lawyer opening a case, a plant engineer opening a work
order, and a bank analyst opening an application all need the same sections —
facts, constraints, decisions, conflicts, changes. UCP keeps vocabularies
open (system: 1c, scada, ehr, …), puts system-specific fields in
attributes/extensions, and keeps the mandatory core (provenance, time,
audience) domain-free.
The honest boundary: the format is universal; the builder is not. UCP defines what the artifact of understanding looks like. Assembling it well from a particular industry's systems — connectors, domain entity extraction, ranking — is where producers (like Context OS) compete. That is deliberate: the standard is open, the craft is the market.
Repository layout
Path | Contents |
The normative specification | |
JSON Schema (draft 2020-12) | |
Complete example packages | |
Conformance test suite (valid / invalid packages) | |
|
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Conformance profiles
Profile | Guarantees |
| Valid structure, entity, summary, sources, provenance on every claim |
| Validity windows, |
| Audience declared, access control attested, audit reference present |
A minimal producer can ship ucp-core only. See SPEC.md §5.
Governance and contributing
The specification evolves in the open: see GOVERNANCE.md
for how changes are proposed and accepted, and
CONTRIBUTING.md for how to get involved.
Status of this document
This is a draft published for community review. Breaking changes are expected before 1.0.0. Feedback via issues and pull requests is welcome.
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