research.md
MCP server that enforces evidence-graded, phase-gated, peer-reviewed research workflows for AI agents to conduct rigorous decision-making.
README
research.md
The decision forge. An MCP server that enforces evidence-graded, phase-gated, peer-reviewed research workflows so AI agents cannot skip rigor under time pressure.
What it enforces
Evidence gates (upstream)
| Gate | Trigger |
|---|---|
| 2+ sources for CONFIRMED evidence | finding_create / finding_update fail if upgrading to CONFIRMED with < 2 sources |
| Disconfirmation search required | finding_create / finding_update fail if upgrading to CONFIRMED without documenting what you searched to disprove the claim |
| Content hash for REASONED+ | Source must include content_hash: proving the agent fetched and read the material |
| Web research nudge | Tool returns advisory when findings have no sources |
| Vendor-only warning | Advisory when all sources are VENDOR tier |
| Landscape scan advisory | Nudge on first candidate to document the full option landscape |
Process gates (downstream)
| Gate | Trigger |
|---|---|
| Criteria locked before scoring | candidate_score fails if decision-criteria.md not locked |
| No TBD on scored candidates | candidate_score fails if candidate has _TBD_ claims |
| Peer review before scoring | candidate_score fails if no evaluations/peer-review.md |
Install
pip install research-md
Or install from source:
pip install -e ".[dev]"
MCP configuration
Add to your Claude Code config:
claude mcp add research-md --scope user -- research-md
Or add to .mcp.json:
{
"mcpServers": {
"research-md": {
"command": "research-md"
}
}
}
Agent workflow
A typical research session follows this path:
project_set Register project, get research_id
|
finding_create Record claims with evidence grades (UNVERIFIED -> LOW -> REASONED -> CONFIRMED)
| Tool nudges: "Use WebSearch to find sources"
finding_update Add sources, disconfirmation search, upgrade evidence grade
| Gate: CONFIRMED requires 2+ sources + disconfirmation
candidate_create Define options to evaluate
| Advisory: "Document the full landscape before narrowing"
criteria_lock Freeze decision criteria weights
|
peer_review_log Log reviewer assessment
|
candidate_score Score candidates (gated on criteria + peer review + no TBD)
|
project_decide Record the decision with rationale
Evidence grade ladder
| Grade | Meaning | Requirements |
|---|---|---|
UNVERIFIED |
Claim recorded, not yet investigated | None -- tool nudges toward web research |
LOW |
Single source or anecdotal | At least a coherent argument |
REASONED |
Credible source, verified consultation | 1+ source with content_hash: proof |
CONFIRMED |
Confirmed -- validated by evidence | 2+ independent sources + disconfirmation search |
Source quality tiers
Each source is tagged with a tier for awareness (no hard gate):
| Tier | Examples |
|---|---|
PRIMARY |
Census data, RFC specs, user study results |
EXPERT |
PMC papers, RAND reports, Thoughtworks Radar |
SECONDARY |
Blog roundups, tutorials, comparison guides |
VENDOR |
Company blog comparing itself to competitors |
Trilogy conventions
research.md follows shared conventions with ike.md and visionlog. See CONVENTIONS.md for the full standard.
- research.md -- decide with evidence (this tool)
- visionlog -- record the decision as a contract
- ike.md -- execute tasks within those contracts
Config lives at .research/research.json (committed to git).
Targeting pattern: project_set + research_id
Every tool call requires a research_id -- the GUID from .research/research.json. This is an in-memory mapping that does not persist across MCP server restarts.
- Call
project_setwith the project's absolute path - It returns the project's
research_id(a UUID) - Pass that
research_idon every subsequent tool call
If you call a tool without a valid research_id, the server tells you exactly how to fix it.
Project structure
Single project
my-research/
.research/
research.json <- config with project GUID (commit this)
findings/ <- NNNN-slug.md
candidates/ <- slug.md
evaluations/
decision-criteria.md <- criteria table (lock before scoring)
peer-review.md <- reviewer log (required before scoring)
scoring-matrix.md <- generated from locked criteria + candidates
Multi-project root
research-root/
.research/
research.json <- root config (lists subprojects)
vendor-selection/
.research/
research.json <- subproject GUID
findings/
candidates/
evaluations/
Initialize: project_init { path, root: true } then project_init { path, subproject: "name" }.
When you project_set a root, all subprojects are registered automatically.
Tools (20)
Session
| Tool | Description |
|---|---|
project_set |
Register a project path, returns its GUID. Also registers subprojects if root. |
project_get |
List all registered projects and their GUIDs for this session. |
Project
| Tool | Description |
|---|---|
project_init |
Initialize project structure (single, root, or subproject). |
status |
Project health: evidence gate status, criteria locked, peer review, TBD count, finding/candidate totals. |
Findings
| Tool | Description |
|---|---|
finding_create |
Create finding with evidence grade, sources array, and disconfirmation. Nudges toward web research. |
finding_list |
List all findings with status and evidence grade. |
finding_update |
Update status, evidence grade, sources, disconfirmation, or claim. Gates CONFIRMED evidence. |
Candidates
| Tool | Description |
|---|---|
candidate_create |
Create candidate for evaluation. Landscape advisory on first candidate. |
candidate_list |
List all candidates with verdict status. |
candidate_update |
Update verdict (provisional/recommended/eliminated) or description. |
candidate_add_claim |
Add binary testable claim to validation checklist. |
candidate_resolve_claim |
Mark a claim Y or N (clears _TBD_). |
Scoring
| Tool | Description |
|---|---|
criteria_lock |
Lock decision criteria weights. Required before scoring. |
candidate_score |
Score a candidate against locked criteria. Gated on criteria lock + peer review + no TBD. |
scoring_matrix_generate |
Generate comparison table from locked criteria + scored candidates. |
Peer Review
| Tool | Description |
|---|---|
peer_review_log |
Log reviewer name and findings. Required before scoring. |
Decision
| Tool | Description |
|---|---|
project_decide |
Record the final decision with rationale. |
project_supersede |
Mark a decided project as superseded by new research. |
research_brief |
Generate a layered research brief from a completed project. |
research_report |
Generate a full untruncated research report. |
Development
pip install -e ".[dev]"
pytest
ruff check .
License
MIT -- see LICENSE.
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