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How credits in ALLMO work

Visibility credits, Page Index credits, and Warm-up credits explained.

Written by Niclas Aunin
Updated today

Power your AI visibility with three credit types

ALLMO runs on a simple credit system that gives you maximum flexibility and full control over what you track, optimize, and monitor. Every account has three separate credit balances. Each tied to a specific job inside the platform:

  • Visibility credits: for tracking your brand's presence in AI search answers

  • Page Index credits: for monitoring whether AI engines have indexed your URLs

  • Warm-up credits: for actively pushing your URLs into AI model awareness

Because each credit type powers a different feature, you'll always know exactly where your budget is going. No surprise deductions, no shared pool draining unexpectedly.

Check your balance anytime

Open Settings β†’ Billing & Usage to see all three balances at a glance. Each card shows your current balance and warns you when you're running low (under 5 credits) or out.

Credits are shared across your team

Credits live at the organization level, not per user. That means everyone on your team draws from the same pool. Perfect for collaboration without juggling individual budgets.

When credits expire

Credits from your monthly subscription reset each billing cycle. Top-up credits (one-time purchases) expire by the end of your next billing period. So you have up to two months to use them. Expiry dates are shown directly on each balance card.

Running low?

You have two options:

  1. Upgrade your plan in Settings β†’ Subscription for a higher monthly allocation

  2. Buy a top-up in Settings β†’ Buy Credits for an instant boost


How credit spending works in detail

Here is a detailed overview of the credit types, and how they are consumed when using ALLMO.

πŸ” Visibility credits

Visibility credits power your prompt tracking. Every time ALLMO runs one of your prompts against an AI model (ChatGPT, Perplexity, Gemini, Claude, etc.), it costs 1 Visibility credit per model.

Example 1: If a prompt runs across 4 models, that's 4 Visibility credits per execution.

  • A daily prompt across 4 models = ~120 credits/month.

Example 2: If you run 60 prompts across 3 models, on a weekly schedule. You'll get:

  • 60 prompts * 3 models * 4 weeks = 720 visibility credits / month

The prompt builder shows your projected cost upfront based on:

  • Number of selected AI models

  • Tracking interval (Daily, Weekly, Monthly, or One-off)

If your balance is too low when a prompt is scheduled to run, ALLMO will skip it, so that you can never go into negative area.

πŸ“„ Page Index credits

Page Index credits check whether your URLs have been indexed by AI search engines.

Cost is simple: 1 credit per URL per model you choose to monitor for one month.

Example: Monitoring 50 URLs across both ChatGPT and Perplexity costs 100 Page Index credits per check cycle.

You'll see the exact cost before confirming, and the action is blocked if you don't have enough credits. No accidental overspend.

πŸ’‘Tip: If you have a website with many subpages, consider either
a) buying top-up credits for one comprehensive audit at when you start using ALLMO, or
b) checking only a few subpages with a similar structure (e.g., not all /blog pages or all /feature pagesβ€”just 5 from each). If there are fundamental technical issues, that should be enough to detect them.

πŸ”₯ Warm-up credits

Warm-up actively pushes a URL into the awareness of a specific AI processor (e.g., Perplexity or ChatGPT) over a 5-day cycle.

  • Cost: 1 Warm-up credit per cycle, per processor

  • The first run triggers immediately when you start a cycle

  • Cycles run from the URL table, with one click per processor

Example: Warming up the same URL on both Perplexity and ChatGPT = 2 Warm-up credits.

Quick reference

Credit Type

What it powers

Cost

Visibility

Prompt runs across AI models

1 per model per run

Page Index

URL indexing checks

1 per URL and model

Warm-up

5-day push cycle per model

1 per cycle and model

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