utility-pm-critic
关于
This skill performs adversarial reviews on product management artifacts, returning prioritized findings (P0-P3) with concrete fixes. It works natively on Claude Code via a plugin and falls back to inline execution on other IDEs/CLIs. The output includes a layered status summary and a machine-readable YAML block.
快速安装
Claude Code
推荐npx skills add product-on-purpose/pm-skills -a claude-code/plugin add https://github.com/product-on-purpose/pm-skillsgit clone https://github.com/product-on-purpose/pm-skills.git ~/.claude/skills/utility-pm-critic在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
PM Critic (Dispatch Skill)
This skill is a cross-client dispatch wrapper for the pm-critic sub-agent. It exists so that users on non-Claude clients can run adversarial review with the same intent as Claude Code users, without depending on native plugin sub-agent infrastructure.
Per master plan D11 (amended) + D30, sub-agents are a Claude Code plugin feature. Non-Claude clients (Codex CLI, Cursor, Windsurf, Copilot, Gemini CLI) cannot natively load subagents/pm-critic.md. This skill bridges the gap.
When to Use
- You want adversarial review of a PM artifact (PRD, OKR set, persona, lean canvas, meeting recap, interview synthesis, problem statement, hypothesis, edge case catalog, retrospective, etc.)
- You are running on a non-Claude AI client and the
pm-criticsub-agent is not natively available - You are running on Claude Code and prefer skill-invocation semantics over sub-agent semantics (e.g., for consistency across a multi-step workflow that mixes skills and sub-agent intents)
When NOT to Use
- You want a structural lint / repo-level audit -> use
utility-pm-skill-auditor(audits skills + repo state) instead - You want to author an artifact (this skill only reviews) -> use the appropriate phase skill (deliver-prd, foundation-okr-writer, etc.)
- You want code review -> use a code-review-specific tool (this skill is for PM artifacts)
- You want to enforce style rules like em-dash sweep -> that is
pm-release-conductor's G0 gate, not this skill
Instructions
Runtime detection step. Determine which AI client is invoking this skill.
If you are running in Claude Code with the pm-skills plugin installed
Invoke @agent-pm-critic on the target artifact. Pass the artifact path as argument (or the most recent artifact in session context if no argument is provided). Return the sub-agent's findings to the user. No further action needed from this skill - the sub-agent handles the review natively in its own context window.
If you are running in any other AI client
Codex CLI, Cursor, Windsurf, Copilot, Gemini CLI, ChatGPT, or any other client without native pm-skills plugin sub-agent support:
- Read the canonical sub-agent definition at
subagents/pm-critic.md - Execute the system prompt body in that file as your operating instructions for this turn
- Read the target PM artifact specified by the user (path from
$ARGUMENTS, or most recently produced artifact in session) - Read the canonical standards docs referenced by the pm-critic system prompt for the artifact type (e.g.,
skills/foundation-okr-writer/SKILL.mdfor OKR sets,skills/deliver-prd/SKILL.mdfor PRDs) - Produce findings graded P0/P1/P2/P3 with concrete fix suggestions, formatted per the output structure documented in
docs/guides/adversarial-review.md - End the output with the layered structure per master plan D26:
- Section (1): full human-readable findings (the P0/P1/P2/P3 report)
- Section (2):
## Status Summaryin prose, summarizing what was found and what the user should do next - Section (3):
## StatusYAML block with machine-readable fields
Output Format
See references/TEMPLATE.md for the canonical output structure (with the layered Status envelope per D26). See references/EXAMPLE.md for a worked example showing a real cross-client dispatch run against a PRD.
Composition
- Skills: This dispatch skill composes with all PM-artifact-producing skills (deliver-prd, foundation-okr-writer, foundation-meeting-recap, foundation-persona, foundation-lean-canvas, discover-interview-synthesis, etc.). Run any of those, then run this skill on the produced artifact.
- Sub-agents: On Claude Code, this skill dispatches to
pm-criticsub-agent. On non-Claude, this skill IS the inline execution; no further dispatch. - Workflows: Once
pm-workflow-orchestrator(v2.17) ships, workflows can invoke this skill at quality-gate steps for cross-client compatibility.
Cross-Client Notes
Per master plan D30, dispatch skill availability in v2.16.0 is CONDITIONAL on Phase 2 GATE B spike outcomes. If the dispatch mechanism is reliable on Codex CLI + Cursor + Windsurf + Copilot + Gemini CLI, this skill ships. If unreliable on any specific client, that client falls back to either codex-rescue (Claude Code + Codex CLI users) or manual reading of subagents/pm-critic.md.
The "read and execute inline" pattern depends on the AI being able to:
- Read a file path provided as a reference (most AI clients support this)
- Treat that file's content as operating instructions for the current turn (most AI clients support this for SKILL.md-style instructions)
- Read additional referenced standards docs at invocation time (all major AI clients support this)
If any of these are unreliable on a given client, that client cannot use this dispatch skill effectively.
Reference Files
- Canonical sub-agent definition:
subagents/pm-critic.md - Behavioral spec:
docs/internal/release-plans/v2.16.0/spec_pm-critic.md - User-facing guide:
docs/guides/adversarial-review.md - Runtime components catalog:
docs/reference/runtime-components.md - Output template:
references/TEMPLATE.md - Worked example:
references/EXAMPLE.md
GitHub 仓库
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