OpenAI
AI infrastructure
Mainstream models know the brand well, but comparison prompts still split recommendation share.
When users ask AI questions, does your brand show up on the first screen? Measure and improve your presence across mainstream AI models.
Case wall
AI infrastructure
Mainstream models know the brand well, but comparison prompts still split recommendation share.
AI model platform
The brand earns strong attention in China-facing models, but commercial trust can still improve.

Productivity SaaS
Recognition is strong, yet recommendation prompts still leave room for sharper category positioning.
Payment infrastructure
Commercial prompts trust Stripe, but price-sensitive comparisons still create replacement pressure.
Consumer electronics
Models identify Apple instantly, but category comparisons can weaken direct purchase recommendation share.

Electric vehicles
Models surface Tesla frequently, but caution and controversy reduce trust consistency in some answers.

Sportswear
Nike dominates mindshare in sportswear prompts, though sustainability and pricing caveats still appear.
Sportswear
Adidas stays visible in shortlist prompts, but it is less likely to be the default first recommendation.
Fast fashion
Zara is easy for models to recognize, but quality and sustainability warnings still affect trust wording.
Apparel retail
Uniqlo performs well in value-led and essentials prompts, especially when users ask for practicality.
AI infrastructure
Mainstream models know the brand well, but comparison prompts still split recommendation share.
AI model platform
The brand earns strong attention in China-facing models, but commercial trust can still improve.

Productivity SaaS
Recognition is strong, yet recommendation prompts still leave room for sharper category positioning.
Payment infrastructure
Commercial prompts trust Stripe, but price-sensitive comparisons still create replacement pressure.
Consumer electronics
Models identify Apple instantly, but category comparisons can weaken direct purchase recommendation share.

Electric vehicles
Models surface Tesla frequently, but caution and controversy reduce trust consistency in some answers.

Sportswear
Nike dominates mindshare in sportswear prompts, though sustainability and pricing caveats still appear.
Sportswear
Adidas stays visible in shortlist prompts, but it is less likely to be the default first recommendation.
Fast fashion
Zara is easy for models to recognize, but quality and sustainability warnings still affect trust wording.
Apparel retail
Uniqlo performs well in value-led and essentials prompts, especially when users ask for practicality.

Premium activewear
Models position Lululemon as premium, but affordability prompts increase replacement risk.

Luxury fashion and beauty
Luxury authority is strong, though some models still answer with style heritage rather than purchase guidance.
Luxury fashion and beauty
Dior shows strong style recall, but recommendation answers can shift depending on category context.

Beauty group
Models recognize the beauty umbrella brand, but product-line specificity is not always consistent.
Prestige beauty
Prestige beauty signals are clear, but recommendation share can narrow when users ask for trendier brands.
Skincare
SK-II appears often in premium skincare prompts, but ingredient-focused answers can widen comparison pressure.

Cosmetics
Models associate Fenty Beauty with diversity and shade range, which helps trust in recommendation prompts.

Consumer beverage
Brand familiarity is extremely high, yet health-oriented prompts can quickly redirect to alternatives.

Coffee retail
Starbucks is easy for models to recall, but price-value prompts reduce default recommendation strength.
Home and beauty devices
Dyson stands out in innovation prompts, but premium pricing keeps replacement risk visible.

Premium activewear
Models position Lululemon as premium, but affordability prompts increase replacement risk.

Luxury fashion and beauty
Luxury authority is strong, though some models still answer with style heritage rather than purchase guidance.
Luxury fashion and beauty
Dior shows strong style recall, but recommendation answers can shift depending on category context.

Beauty group
Models recognize the beauty umbrella brand, but product-line specificity is not always consistent.
Prestige beauty
Prestige beauty signals are clear, but recommendation share can narrow when users ask for trendier brands.
Skincare
SK-II appears often in premium skincare prompts, but ingredient-focused answers can widen comparison pressure.

Cosmetics
Models associate Fenty Beauty with diversity and shade range, which helps trust in recommendation prompts.

Consumer beverage
Brand familiarity is extremely high, yet health-oriented prompts can quickly redirect to alternatives.

Coffee retail
Starbucks is easy for models to recall, but price-value prompts reduce default recommendation strength.
Home and beauty devices
Dyson stands out in innovation prompts, but premium pricing keeps replacement risk visible.
How it works
Type a brand name, product name, or strategic keyword into the large intake field.
Open the generated report immediately and review GEO index, recognition, recommendation, sentiment, and replacement pressure.
Access the complete report for section-level conclusions, metric explanations, and an action roadmap.
SEO entry
Start with brand visibility, recommendation rate, Top 3 presence, replacement risk, and commercial triggers.
Measure how often AI models recognize, recommend, shortlist, or replace your brand. Run a free GEOHub summary.
See whether AI models actually recommend your brand, not just mention it. Measure recommendation visibility with GEOHub.
Measure how often your brand appears in the Top 3 positions of AI answers and shortlist-style recommendations.
Understand when AI answers replace your brand with competitors and where demand may be redirected upstream.
See whether your brand appears when AI answers high-intent buying and purchase-adjacent questions.
See whether your brand appears, gets recommended, or gets replaced in ChatGPT-style discovery and buying prompts.
Curated cases
These pages are built for search entry and case interpretation, not token-based report indexing.
What the report explains
Each section ends with a direct conclusion instead of generic commentary.
Every metric explains its calculation logic, reading method, and strategic importance.
The last section converts weak signals into a 30 / 60 / 90 day optimization plan.