技能详情(站内镜像,无评论)
作者:danyangliu @danyangliu-sandwichlab
许可证:MIT-0
MIT-0 ·免费使用、修改和重新分发。无需归因。
版本:v1.0.0
统计:⭐ 2 · 275 · 1 current installs · 1 all-time installs
⭐ 2
安装量(当前) 1
🛡 VirusTotal :良性 · OpenClaw :良性
Package:danyangliu-sandwichlab/landing-page-optimizer
安全扫描(ClawHub)
- VirusTotal :良性
- OpenClaw :良性
OpenClaw 评估
This is an instruction-only skill that outlines how to produce landing-page optimization plans for ad channels and does not request credentials, install software, or contain code — its declared purpose matches its instructions.
目的
The name/description (ads landing page optimization across Meta/Google/TikTok/YouTube/Amazon/Shopify) aligns with the SKILL.md content: inputs, outputs, workflows, decision rules, and channel-specific notes are all relevant to conversion uplift and testing.
说明范围
The runtime instructions are limited to producing strategy artifacts (strategy snapshot, test matrices, budgets, stop-loss rules) and asking for missing inputs when necessary. They do not instruct the agent to read local files, access environment variables, network endpoints, or exfiltrate data.
安装机制
No install spec or code files are present (instruction-only). Nothing will be written to disk or downloaded by the skill itself, minimizing install-time risk.
证书
The skill declares no required environment variables, credentials, or config paths. The guidance it gives does not imply needing additional secrets or cloud access.
持久
Flags show default behavior (not always: true). The skill does not request permanent presence or system-wide config changes; autonomous invocation is platform-default but not used here to perform privileged actions.
综合结论
This skill appears low-risk: it is instruction-only, contains no code, and asks for no credentials or installs. Before using, be mindful not to paste sensitive credentials or PII into prompts (the skill will ask for business metrics like ROAS/CPA), verify any platform-specific policy recommendations with official platform docs, and monitor agent outputs for unexpected requests (e.g., asking for access tokens or files). If you want absolute ass…
安装(复制给龙虾 AI)
将下方整段复制到龙虾中文库对话中,由龙虾按 SKILL.md 完成安装。
请把本段交给龙虾中文库(龙虾 AI)执行:为本机安装 OpenClaw 技能「Ads Landing Page Optimizer」。简介:Optimize conversion pages for paid traffic from Meta (Facebook/Instagram), Goog…。
请 fetch 以下地址读取 SKILL.md 并按文档完成安装:https://raw.githubusercontent.com/openclaw/skills/refs/heads/main/skills/danyangliu-sandwichlab/landing-page-optimizer/SKILL.md
(来源:yingzhi8.cn 技能库)
SKILL.md
---
name: landing-page-optimizer
description: Optimize conversion pages for paid traffic from Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, and Shopify Ads journeys.
---
# Ads Landing Page Optimizer
## Purpose
Core mission:
- conversion uplift design, CTA testing, page iteration plan
This skill is specialized for advertising workflows and should output actionable plans rather than generic advice.
## When To Trigger
Use this skill when the user asks for:
- ad execution guidance tied to business outcomes
- growth decisions involving revenue, roas, cpa, or budget efficiency
- platform-level actions for: Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, Shopify Ads
- this specific capability: conversion uplift design, CTA testing, page iteration plan
High-signal keywords:
- ads, advertising, campaign, growth, revenue, profit
- roas, cpa, roi, budget, bidding, traffic, conversion, funnel
- meta, googleads, tiktokads, youtubeads, amazonads, shopifyads, dsp
## Input Contract
Required:
- objective: growth target and KPI priority
- budget_frame: test budget and scale budget
- channel_scope: channels to include
Optional:
- audience_segments
- creative_inventory
- seasonality_window
- policy_constraints
## Output Contract
1. Strategy Snapshot
2. Channel Role Definition
3. Budget and Bidding Plan
4. Test Matrix
5. Scale and Kill Rules
## Workflow
1. Define objective hierarchy (primary and secondary KPI).
2. Assign channel roles by funnel stage.
3. Allocate budget by expected signal and risk.
4. Design test cells and learning windows.
5. Set scale, hold, and stop rules.
## Decision Rules
- If KPI conflict exists, prioritize revenue efficiency over volume.
- If channel evidence is weak, allocate minimum test budget first.
- If audience is broad, start with modular creatives and layered targeting.
## Platform Notes
Primary scope:
- Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, Shopify Ads
Platform behavior guidance:
- Keep recommendations channel-aware; do not collapse all channels into one generic plan.
- For Meta and TikTok Ads, prioritize creative testing cadence.
- For Google Ads and Amazon Ads, prioritize demand-capture and query/listing intent.
- For DSP/programmatic, prioritize audience control and frequency governance.
## Constraints And Guardrails
- Never fabricate metrics or policy outcomes.
- Separate observed facts from assumptions.
- Use measurable language for each proposed action.
- Include at least one rollback or stop-loss condition when spend risk exists.
## Failure Handling And Escalation
- If critical inputs are missing, ask for only the minimum required fields.
- If platform constraints conflict, show trade-offs and a safe default.
- If confidence is low, mark it explicitly and provide a validation checklist.
- If high-risk issues appear (policy, billing, tracking breakage), escalate with a structured handoff payload.
## Code Examples
### Strategy Matrix (YAML)
objective: improve_roas
channels:
- name: Meta
role: demand_creation
- name: Google Ads
role: demand_capture
budget_split:
Meta: 0.55
Google Ads: 0.45
### Test Cell Example
cell_id: T1
variable: audience_segment
success_metric: cpa
## Examples
### Example 1: Channel mix reset
Input:
- Budget fixed at 50k
- ROAS dropped for two weeks
Output focus:
- reallocation plan
- test matrix
- stop-loss conditions
### Example 2: Creator-led expansion strategy
Input:
- Goal: scale traffic without ROAS collapse
- Channels: TikTok Ads + YouTube Ads
Output focus:
- funnel role split
- budget pacing logic
- creative cadence
### Example 3: Retargeting-heavy recovery
Input:
- Prospecting unstable
- Strong existing customer base
Output focus:
- retargeting architecture
- audience exclusion design
- two-phase launch plan
## 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