How to read and act on your RankSignal scan report

Brand monitoring6 steps20 minutes

Understand every section of your RankSignal report and know exactly which actions to take based on your scores.

Tools needed
  1. 1

    Understand your Signal Score

    Your Signal Score (0-100) is a weighted average of five rank signals. Scores above 70 indicate strong AI visibility. Between 40-70 means room for improvement. Below 40 signals urgent attention needed.

  2. 2

    Review each rank signal

    Visibility measures how often AI models mention your brand. Sentiment tracks positive versus negative tone. Consistency checks if models agree on facts. Authority reflects the strength of your sources. Risk flags potential reputation issues.

  3. 3

    Check per-model breakdowns

    Each AI model may tell a different story about your brand. Expand the per-model view to see what ChatGPT, Claude, Gemini, Perplexity, and Grok each say. Focus on models where your score is lowest.

  4. 4

    Read the AI-generated summaries

    Each model provides a raw text response about your brand. Read these carefully to catch specific inaccuracies, outdated information, or missing details that the scores alone might not reveal.

  5. 5

    Prioritise your actions

    Start with Risk and Consistency issues - these indicate factual errors that need immediate correction. Then address Visibility and Authority through content and backlink improvements. Sentiment improvements usually follow naturally.

  6. 6

    Set a re-scan schedule

    Scan weekly during active improvement periods. Move to monthly once your scores stabilise above your target. Pro accounts get automatic weekly scans with email alerts for significant changes.

See what AI says about your brand

RankSignal.ai scans ChatGPT, Claude, Gemini, Perplexity, and Grok to show how AI models perceive your brand. Try a free scan.

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