Picture this: it is the last week of the month, your ad platforms are open in one tab, your CRM in another, invoices in a third. You know you should be tracking CAC, but instead you are copying costs into a spreadsheet at 11 p.m., hoping you didn’t miss a line item. A CAC calculator turns that chaos into a single source of truth. By pulling marketing, sales, and overhead costs together and dividing by new customers, you see instantly whether every new buyer is profitable or just expensive vanity. For founders, agencies, and performance marketers, CAC becomes the heartbeat of budget decisions, pricing, and which channels to scale or kill. Delegating the CAC calculator to an AI computer agent levels this up again. Instead of you chasing numbers, the agent logs into your ad dashboards, CRM, and billing tools, copies fresh data into Google Sheets or Excel, applies your formulas, and even snapshots trends. You keep the strategic control; the agent quietly handles the clicks, copy-paste, and sanity checks in the background.
You can calculate Customer Acquisition Cost with nothing more than a laptop and a spreadsheet. The question is: do you want to do it once, or do you want it to run every week without you touching a key?
Below are the top ways to build and then scale your CAC calculator, from totally manual to fully automated with an AI agent.
This is where most founders, marketers, and small agencies start.
Step-by-step:
CAC = (Total marketing costs + Total sales costs + Allocated overhead) / New customersPros:
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Excel shines when finance, RevOps, or growth teams want more control.
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Before agents, many teams connect Google Sheets or Excel directly to tools.
How it works:
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Now imagine the same CAC workflow, but instead of you doing the clicking, an AI agent behaves like a meticulous operations assistant.
An AI computer agent powered by Simular can:
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The most effective pattern for agencies and scaling teams is hybrid:
You keep the story and decisions; the agent owns the grunt work.
You are ready to hand CAC to an AI agent when:
If that sounds familiar, your next CAC improvement probably will not come from a clever new formula. It will come from no longer being the person who runs the calculator.
Start with one period, like last month. In Google Sheets or Excel, sum all sales and marketing costs tied to new customers: ad spend, sales salaries, tools, and agency fees. Then count how many new customers you acquired in that same period. Divide total costs by new customers to get CAC. Add a second column for the next month and repeat to track trends over time.
Create a table with each acquisition channel as a row: Paid Search, Paid Social, Email, Partnerships, etc. For each, sum its marketing and sales costs and the number of new customers it drove. Use one column for total cost, one for new customers, and a CAC column with cost divided by customers. Add another column for revenue per customer so you can compare CAC to LTV and see which channels truly pay off.
For fast-moving startups and agencies, monthly is the minimum; weekly is ideal for paid-heavy acquisition. At a set cadence, refresh your spreadsheet with the latest ad spend, sales costs, and new customer counts. Review overall CAC, then drill into CAC by channel and campaign. Look for trends rather than single datapoints, and decide which tactics to scale, pause, or rework based on those shifts.
Use your CAC calculator as a lab. Filter by channel to find outliers with high CAC and low retention. Trim spend there and reinvest into channels with better CAC-to-LTV ratios. Improve funnel conversion by tightening ad targeting, refining offers, and fixing leaky steps (like slow follow-up). Recalculate CAC after each change so you see how actions affect cost per new customer in real time.
First, design a clean CAC template in Google Sheets or Excel. Then configure your AI agent with step-by-step instructions: log in to ad platforms and CRM, filter by date range, export or copy metrics, and paste them into the correct ranges. Have it run a test month and compare its output to your manual results. Once aligned, schedule it to update CAC regularly and send you a summary, while you keep final review control.