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Ads ROAS Forecast

Build ROAS forecasting and attribution-model assumptions for Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, Shopify Ads, and DSP...
为Meta、Google、TikTok、YouTube、亚马逊、Shopify及DSP平台构建ROAS预测和归因模型假设
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开发者工具 clawhub v1.0.0 1 版本 99815.2 Key: 无需
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概述

Ads ROAS Forecast

Purpose

Core mission:

  • forecast scenario modeling, attribution sensitivity, budget recommendation

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, DSP/programmatic
  • this specific capability: forecast scenario modeling, attribution sensitivity, budget recommendation

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:

  • forecast_target: roas, cpa, or revenue
  • planning_horizon
  • base_assumptions

Optional:

  • attribution_window_options
  • budget_scenarios
  • seasonality_factors
  • risk_tolerance

Output Contract

  1. Model Inputs
  2. Scenario Outputs
  3. Sensitivity Analysis
  4. Attribution Impact Notes
  5. Budget Recommendation

Workflow

  1. Normalize baseline metrics and assumptions.
  2. Build base, upside, and downside scenarios.
  3. Run sensitivity on conversion rate and CPC assumptions.
  4. Compare attribution windows and expected deltas.
  5. Recommend budget path with confidence bounds.

Decision Rules

  • If assumptions are uncertain, widen forecast intervals and reduce aggressiveness.
  • If scenario spread is large, recommend phased budget release.
  • If attribution window drives major variance, present dual-plan decisions.

Platform Notes

Primary scope:

  • Meta (Facebook/Instagram), Google Ads, TikTok Ads, YouTube Ads, Amazon Ads, Shopify Ads, DSP/programmatic

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

Forecast Input

spend: 50000

cpc: 1.2

cvr: 0.035

aov: 68

Scenario Output

base_roas: 2.6

upside_roas: 3.1

downside_roas: 2.1

Examples

Example 1: Budget planning with uncertainty

Input:

  • Next month spend doubled
  • Baseline CVR unstable

Output focus:

  • base/upside/downside scenarios
  • sensitivity drivers
  • safe budget release plan

Example 2: Attribution sensitivity

Input:

  • 1d and 7d attribution produce different ROAS
  • Need allocation decision

Output focus:

  • attribution delta model
  • decision thresholds
  • channel-level impact

Example 3: Seasonal forecast

Input:

  • Holiday promotion planned
  • Historical CPC volatility high

Output focus:

  • seasonality adjustment assumptions
  • risk-adjusted forecast range
  • final recommendation

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

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-03-30 12:59 安全 安全

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