Conversion Monster
A pre-traffic landing page audit: send a URL — I check the offer, trust, CTA, visual hierarchy, mobile first screen, and friction points, and return 3 priority fixes within 24 hours. Manual review, not auto-scoring. Free check → full audit → landing rescue.
Table of Contents
A productized service, not «design for the sake of looks»: I check conversion mechanics, not taste — why a landing page leaks money before paid traffic even hits it.
Context
The most expensive mistake is pouring ads onto a landing page that isn't ready. Traffic comes, clicks don't, the budget burns. Conversion Monster catches this before launch: send a URL and within 24 hours I return 3 priority fixes that are blocking purchases right now.
What I check
Seven elements where offers most often leak money:
- Offer — is the value clear in 5 seconds.
- First screen — focus, action, a reason to stay.
- Trust — signals of professionalism vs «made on a knee».
- CTA — button visibility and alignment with the promise.
- Visual hierarchy — what's noisy and drowns the main message.
- Mobile — how all of it looks on a phone.
- Friction points — where the visitor hesitates and loses the thread.
What makes it different
- Not auto-scoring. A hands-on review — I look at conversion mechanics, not a robot's «design» score against a checklist.
- Priority, not a dump. Not «50 notes» but the 3 fixes that move the number first.
- Before the ads. The goal isn't «pretty», it's «ready for traffic».
Plans
- Monster Check (0 ₽): 3 priority fixes, 24 hours.
- Conversion Audit (from 7,000 ₽): full review, 10–20 prioritized recommendations.
- Landing Rescue (from 30,000 ₽): bringing the page to traffic-ready state.
Who it's for
SaaS, online-course creators, and agencies about to switch on paid traffic who'd rather not burn the budget on a page that doesn't sell.
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