skills/executive-mentor/skills/challenge/SKILL.md
/em -challenge — Pre-Mortem Plan Analysis
npx skillsauth add leoyeai/openclaw-master-skills challengeInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Command: /em:challenge <plan>
Systematically finds weaknesses in any plan before reality does. Not to kill the plan — to make it survive contact with reality.
Most plans fail for predictable reasons. Not bad luck — bad assumptions. Overestimated demand. Underestimated complexity. Dependencies nobody questioned. Timing that made sense in a spreadsheet but not in the real world.
The pre-mortem technique: imagine it's 12 months from now and this plan failed spectacularly. Now work backwards. Why?
That's not pessimism. It's how you build something that doesn't collapse.
Before you can test a plan, you need to surface everything it assumes to be true.
For each section of the plan, ask:
Common assumption categories:
For every assumption extracted, rate it on two dimensions:
Confidence level (how sure are you this is true):
Impact if wrong (what happens if this assumption fails):
The matrix of Low/Unknown confidence × Critical/High impact = your highest-risk assumptions.
Vulnerability = Low confidence + High impact
These are not problems to ignore. They're the bets you're making. The question is: are you making them consciously?
Many plans fail not because any single assumption is wrong, but because multiple assumptions have to be right simultaneously.
Map the chain:
For each critical vulnerability: if this assumption turns out to be wrong at month 3, what do you do?
The less reversible, the more rigorously you need to validate before committing.
Challenge Report: [Plan Name]
CORE ASSUMPTIONS (extracted)
1. [Assumption] — Confidence: [H/M/L/?] — Impact if wrong: [Critical/High/Medium/Low]
2. ...
VULNERABILITY MAP
Critical risks (act before proceeding):
• [#N] [Assumption] — WHY it might be wrong — WHAT breaks if it is
High risks (validate before scaling):
• ...
DEPENDENCY CHAIN
[Assumption A] → depends on → [Assumption B] → which enables → [Assumption C]
Weakest link: [X] — if this breaks, [Y] and [Z] also fail
REVERSIBILITY ASSESSMENT
• Reversible bets: [list]
• Irreversible commitments: [list — treat with extreme care]
KILL SWITCHES
What would have to be true at [30/60/90 days] to continue vs. kill/pivot?
• Continue if: ...
• Kill/pivot if: ...
HARDENING ACTIONS
1. [Specific validation to do before proceeding]
2. [Alternative approach to consider]
3. [Contingency to build into the plan]
These are the ones people skip:
The output of /em:challenge is not permission to stop. It's a vulnerability map. Now you can make conscious decisions: validate the risky assumptions, hedge the critical ones, or accept the bets you're making knowingly.
Unknown risks are dangerous. Known risks are manageable.
testing
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Browser automation CLI for AI agents. Use when the user needs to interact with websites, including navigating pages, filling forms, clicking buttons, taking screenshots, extracting data, testing web apps, or automating any browser task. Triggers include requests to "open a website", "fill out a form", "click a button", "take a screenshot", "scrape data from a page", "test this web app", "login to a site", "automate browser actions", or any task requiring programmatic web interaction.
tools
Browser automation CLI for AI agents. Use when the user needs to interact with websites, including navigating pages, filling forms, clicking buttons, taking screenshots, extracting data, testing web apps, or automating any browser task. Triggers include requests to "open a website", "fill out a form", "click a button", "take a screenshot", "scrape data from a page", "test this web app", "login to a site", "automate browser actions", or any task requiring programmatic web interaction.