Content Win Loss Reviewer
/install content-win-loss-reviewer
Content Win Loss Reviewer
Review a piece of ecommerce or creator content after it runs and explain why it likely won or lost, using evidence, simple scoring, and actionable lessons for the next iteration.
Use this skill when a user wants a postmortem on a script, ad, creator video, landing asset, or social post. It is useful for separating surface-level reactions from operational lessons about hook, proof, offer, fit, execution, and distribution context.
Solves
Teams often say content “worked” or “flopped” without learning much:
- they over-credit views while ignoring commercial outcome;
- they blame the creator when the offer was weak;
- they blame the hook when retention was fine but CTA failed;
- they copy winners without understanding what really drove the result.
Goal: Turn a content result into a simple win/loss diagnosis with evidence, confidence level, and next-step recommendations.
Use when
- Reviewing a published creator post, ad, script, or content experiment
- Running postmortems after a launch, campaign, or test batch
- Comparing why one piece outperformed another
- Distilling lessons from wins without blindly copying them
- Distilling lessons from losses without vague blame
Do not use when
- There is no performance signal, observation, or content context to review
- The user needs statistical attribution modeling or media mix analysis
- The task is purely to rewrite copy without analysis
Inputs
- Content asset, transcript, script, or summary
- Observed outcome metrics or directional results
- Goal / KPI used to judge success
- Audience and channel context
- Product and offer details
- Distribution conditions (timing, spend, creator, traffic source)
- Comparison asset if available
- Known anomalies or confounders
Workflow
- Define the success standard for this content.
- Summarize the observed result and relevant context.
- Break the outcome into likely drivers and likely blockers.
- Score confidence for each explanation based on evidence quality.
- Extract repeatable lessons and caution flags.
- Recommend what to keep, change, retest, or stop.
Review dimensions
Use simple labels such as strong / mixed / weak or 1-5 scoring across:
- Hook / stopping power
- Message clarity
- Product relevance
- Proof / trust
- Offer strength
- CTA / next-step clarity
- Audience-content fit
- Distribution fit
- Learning confidence
Output
Return:
- Outcome summary
- Win/loss verdict
- Likely drivers
- Likely blockers
- Confidence notes
- Next-test recommendations
- Reusable lessons
Quality bar
- Separate outcome facts from interpretation
- Distinguish creative problems from offer, audience, or distribution problems
- Avoid false certainty when evidence is thin
- Focus on lessons that change the next decision
- Keep the review operator-useful, not abstract
Resource
See references/output-template.md.
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install content-win-loss-reviewer - After installation, invoke the skill by name or use
/content-win-loss-reviewer - Provide required inputs per the skill's parameter spec and get structured output
What is Content Win Loss Reviewer?
Analyze ecommerce or creator content post-launch to diagnose why it won or lost using evidence, scoring, and actionable lessons for improvement. It is an AI Agent Skill for Claude Code / OpenClaw, with 155 downloads so far.
How do I install Content Win Loss Reviewer?
Run "/install content-win-loss-reviewer" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Content Win Loss Reviewer free?
Yes, Content Win Loss Reviewer is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Content Win Loss Reviewer support?
Content Win Loss Reviewer is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Content Win Loss Reviewer?
It is built and maintained by LeroyCreates (@leooooooow); the current version is v1.0.0.