From meta-skills
Reviews affiliate campaign results, diagnoses root causes with offer-market fit and funnel analysis, and generates prioritized improvement plans.
npx claudepluginhub affitor/affiliate-skills --plugin meta-skillsThis skill uses the workspace's default tool permissions.
Review affiliate campaign results, diagnose what worked and what didn't, and generate a prioritized improvement plan. Uses affiliate-specific diagnostic frameworks (offer-market fit, traffic-content match, funnel leak analysis) to identify root causes and actionable fixes.
Generates Markdown affiliate performance reports with KPIs, program rankings, trends, and recommendations from clicks, conversions, revenue data across programs.
Audits marketing performance for ads (Meta, TikTok, Google) and organic channels, diagnoses root causes with decision trees, generates 48h action plan and weekly checklist.
Generates marketing performance reports with executive summaries, key metrics tables, trend analysis, wins/misses, and prioritized optimizations for campaigns or channels.
Share bugs, ideas, or general feedback.
Review affiliate campaign results, diagnose what worked and what didn't, and generate a prioritized improvement plan. Uses affiliate-specific diagnostic frameworks (offer-market fit, traffic-content match, funnel leak analysis) to identify root causes and actionable fixes.
S8: Meta — Most affiliates repeat the same mistakes because they never do structured retrospectives. Self-Improver closes the feedback loop: it takes your results, compares them to expectations, diagnoses gaps using affiliate-specific frameworks, and produces concrete actions that feed back into S1-S7 for the next iteration.
campaign:
description: string # REQUIRED — what was done (e.g., "Published 3 blog reviews
# of AI video tools, shared on LinkedIn and Reddit")
duration: string # OPTIONAL — how long (e.g., "2 weeks", "1 month")
skills_used: string[] # OPTIONAL — which Affitor skills were used
channels: string[] # OPTIONAL — where content was distributed
results:
clicks: number # OPTIONAL — total clicks on affiliate links
conversions: number # OPTIONAL — total signups/purchases
revenue: number # OPTIONAL — total commission earned
traffic: number # OPTIONAL — total page views / impressions
feedback: string # OPTIONAL — qualitative feedback received
expectations:
expected_clicks: number # OPTIONAL — what was expected
expected_conversions: number # OPTIONAL
expected_revenue: number # OPTIONAL
benchmark: string # OPTIONAL — "industry average" or specific number
context:
niche: string # OPTIONAL — product category
experience: string # OPTIONAL — "first campaign" | "experienced"
budget: string # OPTIONAL — money spent (if any)
Chaining context: If S6.3 (performance-report) was run in the same conversation, pull KPIs directly. If S1-S5 outputs exist in context, reference them for gap analysis.
Collect campaign description and results. If numbers are missing, work with whatever is available. State assumptions clearly: "You didn't share click data, so I'll focus on qualitative analysis."
Calculate gaps:
Use industry benchmarks if user doesn't have expectations:
Apply affiliate-specific diagnostic frameworks:
Offer-Market Fit: Is the product right for the audience?
Traffic-Content Match: Is the traffic source aligned with the content?
Funnel Leaks: Where do people drop off?
Rank each improvement by:
For each top improvement, specify:
Before presenting output, verify:
If any check fails, fix the output before delivering. Do not flag the checklist to the user — just ensure the output passes.
output_schema_version: "1.0.0" # Semver — bump major on breaking changes
retrospective:
campaign: string
period: string
overall_assessment: string # "strong" | "average" | "needs_work" | "failing"
gaps:
- metric: string # e.g., "conversion_rate"
expected: string
actual: string
gap: string # e.g., "-2.5%"
diagnosis:
root_causes:
- cause: string # e.g., "Traffic-content mismatch"
evidence: string # what indicates this
severity: string # "high" | "medium" | "low"
improvements:
- action: string # what to do
skill: string # which Affitor skill to use
prompt: string # exact prompt for the skill
impact: number # 1-5
effort: number # 1-5
priority: number # impact / effort
iteration_plan:
next_steps: string[] # ordered list of actions
timeline: string # e.g., "1 week"
success_metric: string # how to measure improvement
User: "I wrote 3 blog reviews of AI tools last month. Got 2,000 visitors but only 2 conversions ($14 total). What went wrong?" Action: Conversion rate 0.1% vs benchmark 1-3%. Diagnose: possible funnel leak (weak CTAs? disclosure too prominent? wrong products for audience?). Check traffic sources (SEO cold traffic needs more warming). Recommend: S6 (ab-test-generator) on CTAs, S6 (seo-audit) on content quality, S4 (landing-page-creator) as intermediate step.
User: "Posted 10 LinkedIn posts about Semrush. Lots of likes but nobody clicked my link." Action: Traffic-content mismatch. LinkedIn engagement ≠ clicks. Diagnose: link placement (probably in comments where nobody looks), content may be too educational without clear CTA, audience may not be in buying mode on LinkedIn. Recommend: S2 (viral-post-writer) with CTA-focused brief, S3 (affiliate-blog-builder) to create destination content, S7 (content-repurposer) to adapt for click-friendly platforms.
Context: S6.3 performance-report shows EPC of $0.02 across 5 programs, with one program at $0.15 EPC. User: "How do I improve these numbers?" Action: One program is 7x more profitable. Diagnose: concentrate effort on the winner. For the four underperformers, check offer-market fit (are these the wrong products?). Recommend: S7 (multi-program-manager) to restructure portfolio, S7 (content-repurposer) to create more content for the winning program, S6 (ab-test-generator) to optimize existing content.
shared/references/ftc-compliance.md — Referenced when reviewing content quality. Read in Step 3.docs/affiliate-funnel-overview.md — Funnel stage definitions for gap analysis. Read in Step 3.shared/references/flywheel-connections.md — master flywheel connection mapimprovement_suggestions drive quality upgrades across the systemperformance-report (S6) — performance data revealing what needs improvementconversion-tracker (S6) — conversion trends for diagnosiscompliance-checker (S8) — compliance issues to addresschain_metadata:
skill_slug: "self-improver"
stage: "meta"
timestamp: string
suggested_next:
- "funnel-planner"
- "performance-report"
- "skill-finder"