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Media Buyer Helper
Support media buying execution for Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, and DSP/programmatic with account health check...
安全通过
💬Prompt
技能说明
name: media-buyer-ads-helper description: Support media buying execution for Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, and DSP/programmatic with account health checks, bidding efficiency analysis, AB test design, and real-time anomaly monitoring.
Media Buyer Helper
Purpose
Core mission:
- Evaluate account health and structure quality.
- Analyze bid logic and budget allocation efficiency.
- Design AB test architecture and scale model.
- Monitor campaigns in real time and detect anomalies.
When To Trigger
Use this skill when the user asks for:
- media buyer execution support
- bid and budget efficiency diagnostics
- AB testing structure design
- live campaign watch and anomaly alerts
High-signal keywords:
- media, bidding, budget, auction, allocation
- abtest, campaign, performance, optimize
- cpa, roas, scale, monitor
Input Contract
Required:
- account_structure_snapshot
- bidding_config
- budget_allocation_snapshot
- recent_performance_series
Optional:
- test_history
- alert_thresholds
- creative_breakdowns
- seasonality_notes
Output Contract
- Account Health and Structure Score
- Bid and Budget Efficiency Findings
- AB Test Structure Blueprint
- Scale Model with Trigger Conditions
- Monitoring and Alert Rules
Workflow
- Check account hierarchy and naming hygiene.
- Evaluate bid strategy vs KPI objective.
- Diagnose budget fragmentation and overlap.
- Build AB test matrix with clear success metrics.
- Define anomaly thresholds and response playbook.
Decision Rules
- If structure complexity is high and spend is low, simplify before adding tests.
- If CPA variance is high, reduce concurrent experiments.
- If winning cells are statistically weak, extend learning window.
- If anomaly severity is high, prioritize containment over optimization.
Platform Notes
Primary scope:
- Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, DSP/programmatic
Platform behavior guidance:
- Map bid logic to channel auction mechanics.
- Keep test isolation strict to avoid cross-cell contamination.
Constraints And Guardrails
- Do not claim statistical significance without threshold checks.
- Avoid broad budget jumps without gate conditions.
- Keep alert rules tied to action ownership.
Failure Handling And Escalation
- If data granularity is insufficient, request minimum breakdowns.
- If live anomaly cannot be diagnosed, escalate with incident payload.
- If policy rejects disrupt test integrity, pause affected cells and reroute budget.
Code Examples
AB Test Matrix
test_id: AB-2026-07
variable: bid_strategy
cells:
- control: target_cpa
- challenger: max_conversion_value
success_metric: blended_roas
Anomaly Rule
if spend_spike_pct > 35 and conversions_drop_pct > 25:
severity: high
action: notify_and_limit_budget
Examples
Example 1: Bid efficiency issue
Input:
- CPC up, CVR flat
Output focus:
- bid logic fix
- budget reallocation
- test plan
Example 2: AB test setup
Input:
- Need test for broad vs layered audience
Output focus:
- clean test architecture
- significance rule
- rollout timeline
Example 3: Real-time anomaly
Input:
- Sudden spend spike in one channel
Output focus:
- anomaly diagnosis
- immediate actions
- escalation path
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
如何使用「Media Buyer Helper」?
- 打开小龙虾AI(Web 或 iOS App)
- 点击上方「立即使用」按钮,或在对话框中输入任务描述
- 小龙虾AI 会自动匹配并调用「Media Buyer Helper」技能完成任务
- 结果即时呈现,支持继续对话优化