Compares 2-4 marketing budget scenarios side-by-side with projected outcomes. Uses brand historical data and industry benchmarks for rapid decision-making.
How this skill is triggered — by the user, by Claude, or both
Slash command
/digital-marketing-pro:what-ifThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Quick scenario comparison tool. Test 2-4 marketing scenarios against each other — different budget allocations, channel mixes, or strategic approaches — and see projected outcomes side-by-side. This is the lighter, faster alternative to full Monte Carlo simulation (`/digital-marketing-pro:simulate`). Where simulate runs thousands of iterations with full probability distributions, what-if uses p...
Quick scenario comparison tool. Test 2-4 marketing scenarios against each other — different budget allocations, channel mixes, or strategic approaches — and see projected outcomes side-by-side. This is the lighter, faster alternative to full Monte Carlo simulation (/digital-marketing-pro:simulate). Where simulate runs thousands of iterations with full probability distributions, what-if uses point estimates with simple variance bands to give directional answers in minutes. Use it for rapid decision-making when you need a quick read on "should we do A or B?" without the statistical depth of a full simulation — team meetings, Slack discussions, quick planning calls, or narrowing down options before running a deeper analysis.
The user must provide (or will be prompted for):
~/.claude-marketing/brands/_active-brand.json for the active slug, then load ~/.claude-marketing/brands/{slug}/profile.json. Pull historical channel performance, recent ROI data, and known benchmarks to calibrate scenario projections. Also check for guidelines at ~/.claude-marketing/brands/{slug}/guidelines/_manifest.json. Check for agency SOPs at ~/.claude-marketing/sops/. If no brand exists, ask: "Set up a brand first (/digital-marketing-pro:brand-setup)?" — or proceed with industry defaults.revenue-simulator.py in what-if mode — a simplified projection that calculates expected revenue per scenario using point estimates with variance bands (not full Monte Carlo), applies basic diminishing returns for channels near saturation, and accounts for channel ramp time (SEO and content take months to deliver, paid is immediate). Faster execution, directional accuracy.A concise scenario comparison containing:
npx claudepluginhub indranilbanerjee/digital-marketing-proSimulates marketing revenue outcomes via Monte Carlo. Use for channel mix tests, budget shifts, or new channel launches to see probability distributions and downside risk.
Calculates marketing budget via reverse KPI method (revenue → spend or spend → revenue) with region-specific benchmarks and 3-scenario sensitivity analysis.
Optimizes advertising budgets across platforms and campaigns based on ROAS/CPA. Recommends reallocations for media planning, funnel-stage budgeting, and spend distribution.