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A drop-in markdown cognition layer for AI agents that need to analyze public agenda

Project description

Agenda Intelligence MD

PyPI version License: MIT CI Status GitHub stars

A drop-in markdown cognition layer that turns news scanning into decision-ready analysis.

Bottom line: agents using this protocol move from “monitor developments” to “watch these 3 indicators; if X happens, decision Y becomes urgent.”


Who it is for

  • Policy analysts & think‑tanks – structured monitoring of regulatory and geopolitical signals.
  • Sanctions & compliance teams – evidence‑backed briefs that satisfy audit requirements.
  • Market‑risk analysts – concise impact snapshots for faster investment decisions.
  • Founders & operators – external chaos turned into clear strategic inputs.
  • AI agents – any LLM‑based system that needs to analyze public agenda without drifting into generic summaries.

Quick install

From PyPI

pip install agenda-intelligence-md

From GitHub Release (v0.5.4)

pip install https://github.com/vassiliylakhonin/agenda-intelligence-md/releases/download/v0.5.4/agenda_intelligence_md-0.5.4-py3-none-any.whl

Editable install from source

git clone https://github.com/vassiliylakhonin/agenda-intelligence-md
cd agenda-intelligence-md
pip install -e .

CLI happy path (aha‑moment in 5‑10 min)

The start command is the primary onboarding entry‑point. It prints a trimmed source plan, a brief template, and next commands.

# 1. Onboard with a source category
agenda-intelligence start technology-ai

# Output: trimmed source plan + brief template + next commands

# 2. Validate a bundled example brief
agenda-intelligence validate-brief examples/agenda-brief.json

# 3. Score a JSON brief (structural quality check)
agenda-intelligence score examples/agenda-brief.json

# 4. Add an evidence pack for claim-level evidence discipline
agenda-intelligence score examples/agenda-brief.json --evidence examples/source/evidence-pack.json

# 5. Or score a before/after markdown example
agenda-intelligence score examples/before-after/eu-ai-act.md

Scorer status: the score command now scores JSON briefs with a heuristic 0-100 structural rubric, can include an evidence pack for claim-level support feedback, and still supports before/after markdown examples. It does not verify factual truthfulness.

Demo output (what you see after start):

=== Trimmed source plan ===
{
  "must_check": ["tech‑release", "policy‑update", "market‑data"],
  "watch_indicators": ["regulation draft", "enforcement action"]
}

=== Brief template (fill in) ===
{
  "bottom_line": "<summary>",
  "signal_classification": "<signal>",
  "what_changed": "<what changed>",
  "main_uncertainty": "<main uncertainty>",
  "watch_next": ["<indicator 1>", "<indicator 2>"]
}

Protocol · Source Policy · Schemas

Layer Purpose Status
Markdown protocol (Agenda-Intelligence.md) Core reasoning workflow (signal classification, watch‑next, etc.) ✅ Stable
Source Acquisition Layer Tells the agent which source types to check before making claims (sanctions, regulation, elections, conflict, etc.) ✅ Stable
JSON schemas Validate briefs, evidence packs, memory cards ✅ Stable
AnalysisBank Memory layer that stores reusable reasoning patterns from good/bad outputs ✅ Stable
Regional & Sector lenses Central Asia & Caspian, Middle East, EU; sanctions, export controls ✅ Stable

Stable today vs Experimental

✅ Stable today

  • Markdown protocol (Agenda-Intelligence.md) – core reasoning workflow.
  • JSON schemas – validation for briefs, evidence packs, memory cards.
  • CLI validationvalidate-brief, validate-evidence, validate-manifest.
  • Source planssource-plan, list-source-packs, source-types.
  • Guided startstart command prints trimmed plan + brief template.
  • Brief scoringscore examples/agenda-brief.json returns a heuristic 0-100 structural quality score; add --evidence for claim-level evidence feedback.
  • Evaluation toolkitevals/rubric.md, evals/llm_judge_prompt.txt, evals/human_checklist.md, evals/cases/*.json.
  • MCP read toolsvalidate_brief, validate_evidence, get_protocol, list_lenses, get_lens, source_plan.

🧪 Experimental / Planned

  • MCP transport/server – read-only tool functions exist, but a full HTTP/WebSocket server is still on the roadmap (docs/integrations/mcp.md).
  • Fetch command – stub in CLI, full evidence‑pack retrieval not implemented.
  • Truthfulness evaluation – not implemented; current scoring checks structure and protocol signals.
  • Generate‑brief – not yet exposed; use start + manual template fill.

Note: The project is young. Stable parts are ready for production use; experimental bits are usable for testing but may change.


Examples

  • Source‑backed briefs (with evidence mode & source plans):
    examples/source-backed/eu-ai-act.md, sanctions-routing.md, red-sea-shipping.md
  • Classic examples: examples/hormuz_strait_brief.md, eu-brief.md, central-asia-caspian-brief.md
  • Before/after: examples/before-after/ – shows the delta when the protocol is applied.

Documentation

Resource Link
Quickstart docs/quickstart.md
End‑to‑end tutorial docs/tutorial.md
Evaluation assets evals/ – rubric, LLM judge prompt, human checklist, sample cases
Use‑cases docs/use-cases/ – policy monitoring, sanctions compliance, market risk, founder context
Integrations docs/integrations/ – Claude Code, OpenAI Codex, Cursor, MCP
Roadmap ROADMAP.md
Changelog CHANGELOG.md

Repository structure

agenda-intelligence-md/
├─ src/agenda_intelligence/   # Python package
├─ schemas/                   # JSON schemas
├─ examples/                  # sample briefs, evidence packs, source‑backed examples
├─ analysis-bank/             # memory cards (failures & successes)
├─ evals/                     # evaluation rubric, LLM judge, human checklist, cases
├─ docs/                      # guides, tutorials, use‑cases, integrations
├─ skills/agenda-intelligence/ # OpenClaw skill wrapper
└─ tests/                     # pytest suite

Roadmap (high‑level)

  • v0.6 – Full MCP server exposing current Python tool functions via HTTP/WebSocket.
  • v0.7 – Promote score_output to rubric-based quality scoring and wire it into MCP.
  • v0.8 – Automated CI quality gate using the evaluation toolkit.
  • v1.0 – Stable API, broader adoption‑channel support, production‑grade MCP.

Contributing

Pull requests are welcome! Please:

  1. Open an issue to discuss changes.
  2. Create a feature branch (feat/..., fix/...).
  3. Run pytest and ensure all tests pass.
  4. Update docs if behavior changes.

License

MIT – free for any use.


Why this exists

Most agent‑written news analysis is a polished recap that doesn’t change any decision. This project gives agents a stricter workflow so their output actually helps someone decide, hedge, or act.

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