| name | pm-skills |
| description | Use when coordinating project-delivery work across the 8 project-management sub-skills — sprint/velocity analytics, portfolio health, Jira/JQL, Confluence, Atlassian admin, templates, meeting analysis, team comms. Triggers on 'our sprints feel off', 'project health report', 'audit our Jira permissions', 'when will it be done', 'run the delivery loop'. Forks context to route to one sub-skill via a deterministic signal router and returns a digest; can also drive a full goal→plan→execute→verify→close delivery loop through the repo-wide agent-harness with Jira MCP data bridged into the domain's analytics tools. Distinct from product-team (what to build vs how to deliver it), business-operations (internal ops), and engineering/agent-harness (the generic loop engine this orchestrator plugs into). |
| context | fork |
| version | 2.11.1 |
| author | Alireza Rezvani |
| license | MIT |
| tags | ["project-management","orchestrator","jira","confluence","atlassian","scrum","agile","flow-metrics","agent-harness"] |
| compatible_tools | ["claude-code","codex-cli","cursor","antigravity","opencode","gemini-cli"] |
Project Management — Domain Orchestrator & Delivery Loop
This orchestrator does two jobs. Routing: fork context, classify a PM inquiry with
scripts/pm_goal_router.py, run exactly one of the 8 sub-skills, return a digest.
Looping: turn a delivery goal into a bounded agentic loop — pull live Jira data via the
bundled Atlassian MCP, bridge it into the domain's deterministic analytics tools, verify
every step with machine-run gates, and refuse to close until everything is verified or a
human waives it. The bundled .mcp.json wires the Atlassian Remote MCP
(https://mcp.atlassian.com/v1/sse, OAuth handled by Claude Code).
When to invoke
| Symptom | Sub-skill |
|---|
| "Project/portfolio health, risk EMV, capacity" | senior-pm |
| "Sprint velocity, retro follow-through, ceremony health, when-will-it-be-done" | scrum-master |
| "JQL, Jira workflows, boards, automation" | jira-expert |
| "Confluence spaces, page trees, content audits" | confluence-expert |
| "Users, groups, permissions, SSO" | atlassian-admin |
| "Reusable Jira/Confluence templates" | atlassian-templates |
| "Meeting transcripts, talk time, action items" | meeting-analyzer |
| "Status updates, 3P updates, stakeholder comms" | team-communications |
Routing logic (deterministic)
Run the router — do not eyeball the table when a script can decide:
python3 scripts/pm_goal_router.py --text "<the goal>" --output json
Exit 0 → route_to names the sub-skill: load its SKILL.md and follow its workflow.
Exit 2 → ask ONE clarifying question naming the listed candidates, with a recommended
answer. Exit 3 → no signal: ask the user to restate the goal with the deliverable named.
Never guess silently; never silently chain a second sub-skill — digest first, confirm, then
chain.
The delivery loop (agentic)
For goals (not questions) — "get sprint 14 to a verified close", "produce a portfolio
health report from live Jira", "make our flow metrics visible weekly" — run the
loop-library contract (Observe → Choose → Act → Verify → Record → Repeat-or-stop):
- Observe — pull fresh state:
mcp__atlassian__searchJiraIssuesUsingJql (get
cloudId via getAccessibleAtlassianResources first), save the result JSON, then
bridge it:
python3 scripts/jira_snapshot_bridge.py --input snapshot.json --to flow
python3 scripts/jira_snapshot_bridge.py --input snapshot.json --to sprint > s.json
python3 ../scrum-master/scripts/velocity_analyzer.py s.json
Add --forecast N for a seeded Monte Carlo "when will N items be done" answer
(refuses on < 10 completed items — thin history forecasts are lies).
- Choose — route the next task with
pm_goal_router.py; one task at a time.
- Act — execute with the routed sub-skill's own tools per its SKILL.md.
- Verify — gate the plan and every close with:
python3 scripts/delivery_loop_gate.py --plan plan.json --mode plan
python3 scripts/delivery_loop_gate.py --plan plan.json --mode close
Plus each sub-skill's own gates (scrum-master's ≥ 3-sprints rule, atlassian-admin's
VERIFY steps). Never adjudicate your own verification.
- Record / Repeat-or-stop — for multi-task goals, run the state through the repo-wide
harness (it enforces attempt caps, iteration budgets, and evidence logging):
python3 engineering/agent-harness/skills/agent-harness/scripts/goal_compiler.py \
--goal "<goal>" --manifest engineering/agent-harness/skills/agent-harness/assets/harnesses/project-management.json \
--out .agent-harness/plan.json
python3 engineering/agent-harness/skills/agent-harness/scripts/loop_controller.py init|next|record|verify|close ...
Terminal states: success, clean no-op, blocked, approval-required, exhausted,
stagnated. An exhausted budget is an escalation — never a success report.
Hard rules (agentic delegation governance)
- Agents are contributors, never owners (Linear model): every loop task carries a
named human owner; agent-executed tasks also carry a named human reviewer.
delivery_loop_gate.py enforces this (G1/G2).
- Acceptance must be machine-checkable — a command, or a criterion with a threshold.
"Looks good" is not a gate (G3).
- Every Jira/Confluence write is auditable and reversible-first (Rovo discipline):
never
transitionJiraIssue to Done without verify evidence; destructive/irreversible
actions (deletes, permission changes, org-wide admin) are approval-required terminal
states, not loop steps.
- Never modify a gate you are judged by — same locked-evaluator invariant as
autoresearch-agent.
- Forecasts are ranges with confidence, never dates — Monte Carlo percentiles
(p50/p70/p85/p95), per Vacanti. Single-date promises are the anti-pattern.
- Max 3 attempts per task, 12 loop iterations per goal — then escalate to the named
human with the evidence log.
Forcing-question library (grill-with-docs pattern)
One per turn, recommended answer, canon citation. Never run a sub-skill or start a loop
until the lane-defining decision is locked:
- SPRINT lane: "Do you want to measure flow (cycle time, WIP, throughput, age) or
forecast delivery? Recommended: measure first — a forecast off unmeasured flow is
noise. Canon: Kanban Guide (May 2025) four mandatory flow measures; Vacanti,
Actionable Agile Metrics."
- HEALTH lane: "Is your project status self-reported RAG or derived from signals?
Recommended: derive it (schedule variance, aging WIP, scope churn) and diff against the
self-report — that diff finds watermelon projects. Canon: Kanban Guide 2025;
DORA 2025 (AI amplifies, doesn't fix, weak signals)."
- JIRA lane: "Is this configuration change deployable to a test project first?
Recommended: always stage in a test project; jira-expert's workflow validator must exit
0 before production. Canon: jira-expert validation workflow."
- ADMIN lane: "Is this action reversible, and who approves it? Recommended: name the
approver before touching permissions — admin actions are approval-required terminal
states in any loop. Canon: atlassian-admin VERIFY discipline; loop-library stop states."
- LOOP intake: "What single observable outcome means DONE, and which command proves
it? Recommended: a named artifact + a command that exits 0 against it. Canon:
agent-harness verifier's law; Anthropic, Building Effective Agents (evaluator needs
clear criteria)."
- MEETINGS/COMMS lanes: "Could this meeting be an async written update? Recommended:
status-broadcast meetings convert to async 3P updates; decision meetings keep sync.
Canon: GitLab async-first handbook."
Assumptions
- The user has (or is preparing analysis for someone with) delivery authority.
- Jira/Confluence access goes through the bundled MCP; capabilities NOT in
project-management/references/atlassian-mcp-tools.md (project/sprint/board/space
creation, admin config) are done in the web UI — never invent tool names.
- Inputs may be partial — every tool ships
--sample so the shape is visible first.
Non-goals
- Not a replacement for the sub-skills — the orchestrator routes and loops; the
sub-skills do the work.
- Not the generic loop engine — that is
engineering/agent-harness; this orchestrator is
the PM-domain adapter (data bridge + governance gate + lane router).
- Does not decide what to build — that's
product-team.
Output artifacts
| Mode | Artifact |
|---|
| Route | Sub-skill's own artifact + ≤ 200-word digest with one canon-cited challenge |
| Flow report | flow_metrics.json (bridge output) with SLE conformance + aging alerts |
| Delivery loop | .agent-harness/plan.json + state.json + gate verdicts + close handoff |
Anti-patterns (do not)
- ❌ Run all 8 sub-skills "to be thorough" — route to one, digest, chain on confirmation
- ❌ Report sprint health or forecasts from hand-typed numbers when a Jira snapshot is one
MCP call away — bridge real data
- ❌ Close a loop with unverified tasks, or report an exhausted budget as success
- ❌ Let an agent be the assignee of record — humans own, agents contribute
- ❌ Auto-transition Jira issues or touch permissions inside a loop without the named
approver
References
- references/flow_forecasting_canon.md — Kanban
Guide 2025, Vacanti Monte Carlo, DORA 2025, EBM, SPACE
- references/agentic_delivery_governance.md —
Linear/Rovo delegation models, Anthropic agent patterns, audit discipline
- references/pm_loop_playbook.md — the five reusable PM
loops (sprint, health, retro-action, RAID-hygiene, comms) mapped to the loop contract
- Canonical MCP tool list:
project-management/references/atlassian-mcp-tools.md
- Loop engine:
engineering/agent-harness · Loop vocabulary: loop-library