🧪 Skills
Funnel Helper
Diagnose and optimize full conversion funnels for paid traffic from Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, and Shopify A...
v1.0.0
Description
name: funnel-ads-helper description: Diagnose and optimize full conversion funnels for paid traffic from Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, and Shopify Ads campaigns.
Funnel Helper
Purpose
Core mission:
- Analyze conversion funnel drop-off by stage.
- Identify bottlenecks from ad click to checkout or lead submit.
- Recommend stage-specific optimization actions.
- Define funnel experiment roadmap and expected impact.
When To Trigger
Use this skill when the user asks for:
- conversion funnel diagnosis
- CVR optimization planning
- landing page and checkout improvement sequence
- funnel experiment design tied to ROAS/CPA goals
High-signal keywords:
- conversion, funnel, checkout, cvr
- cpa, roas, traffic, landing page
- campaign, optimize, retarget
Input Contract
Required:
- funnel_stage_metrics
- traffic_source_breakdown
- conversion_goal
- observation_window
Optional:
- session_replay_notes
- form_or_checkout_logs
- segment_breakdowns
- experiment_history
Output Contract
- Funnel Stage Health Scorecard
- Bottleneck Priority Ranking
- Optimization Actions by Stage
- Experiment Roadmap with KPI impact
- Monitoring and Iteration Rules
Workflow
- Normalize funnel definitions and stage metrics.
- Rank drop-off severity and opportunity size.
- Map root causes (message mismatch, UX friction, trust gap, etc.).
- Recommend stage-specific actions and experiments.
- Define monitoring thresholds and iteration cadence.
Decision Rules
- If top-funnel CTR is strong but CVR is weak, prioritize LP and checkout fixes.
- If add-to-cart is strong but purchase is weak, prioritize trust/payment friction fixes.
- If retargeting conversion is low, review audience freshness and offer relevance.
- If funnel data is sparse, run diagnostic experiments before major redesign.
Platform Notes
Primary scope:
- Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, Shopify Ads
Platform behavior guidance:
- Keep funnel interpretation tied to traffic intent by channel.
- Distinguish ad-side and on-site bottlenecks before action.
Constraints And Guardrails
- Do not infer funnel causes without stage-level evidence.
- Keep test queue prioritized by expected impact and effort.
- Avoid simultaneous high-impact changes that break attribution clarity.
Failure Handling And Escalation
- If stage definitions are inconsistent, output a canonical funnel mapping first.
- If missing checkout data blocks diagnosis, request minimum event payload.
- If conversion drops sharply during active changes, trigger rollback review.
Code Examples
Funnel Health Schema
stages:
- impression_to_click
- click_to_viewcontent
- viewcontent_to_addtocart
- addtocart_to_checkout
- checkout_to_purchase
primary_metric: stage_cvr
Bottleneck Prioritization Rule
impact_score = dropoff_pct * traffic_volume * margin_weight
sort_by: impact_score_desc
Examples
Example 1: CVR collapse
Input:
- Click volume stable, purchases down
Output focus:
- stage bottleneck map
- immediate fixes
- monitor plan
Example 2: Checkout friction
Input:
- Add-to-cart high, checkout completion low
Output focus:
- checkout friction hypotheses
- test sequence
- expected lift range
Example 3: Funnel rebuild plan
Input:
- Multi-channel traffic with inconsistent landing paths
Output focus:
- canonical funnel design
- stage KPI definitions
- experiment roadmap
Quality Checklist
- Required sections are complete and non-empty
- Trigger keywords include at least 3 registry terms
- Input and output contracts are operationally testable
- Workflow and decision rules are capability-specific
- Platform references are explicit and concrete
- At least 3 practical examples are included
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