Case Study

A Live Experiment: The Colosseum Hackathon

Your brand's AI visibility is no longer controlled by one search results page. It is shaped by multiple AI systems, each with its own source preferences and recommendation patterns.

Kojable tested real questions from the Colosseum Hackathon ecosystem across Claude, Gemini, ChatGPT, and Perplexity.

  • Multi-Model Visibility
  • AI Search
  • 5 min read
  • Case Study

Discovery shift

Why multi-model visibility matters

The AI layer is now a gatekeeper for discovery. It is not one system, one ranking, or one algorithm. Each answer engine behaves like a different curator, with different source preferences, curation patterns, and recommendation behavior.

A brand may appear strongly in one AI model and be absent in another. Teams should not assume that strong visibility in one AI system means strong visibility everywhere.

Answer: brand visibility can change dramatically across Claude, Gemini, ChatGPT, and Perplexity.

The experiment

Testing authentic Colosseum ecosystem prompts

Kojable asked Claude, Gemini, ChatGPT, and Perplexity 80 real user questions from the Colosseum Hackathon ecosystem. The prompts came from builders, founders, and crypto users asking practical discovery questions.

  1. Tested 80 real user questions

    Questions reflected authentic discovery behavior from the hackathon ecosystem.

  2. Compared four AI systems

    Responses were collected from Claude, Gemini, ChatGPT, and Perplexity.

  3. Evaluated brands and projects

    Kojable tracked which names appeared, where they appeared, and how consistently they were recommended.

  4. Measured category association

    The test looked beyond brand names to categories, use cases, and trusted source ecosystems.

Example prompts

Real questions create real visibility tests

The experiment used questions people were actually asking, not synthetic keyword prompts. That made the results more useful for understanding how discovery happens inside AI systems.

Wallet comparison

"Comparing Solana wallets: which one's best?"

Founder fundraising

"How do I get investors for my Solana project?"

Career discovery

"Tips to land an internship in crypto space."

Project recommendation

Which projects and brands are recommended when users ask for next steps?

Results

What the results showed

A few brands achieved consensus visibility across models, but for most brands, visibility was inconsistent. Some appeared in one model and disappeared in another, even when the user question was similar.

The results showed that brand discoverability is fragmented across AI systems. Each model can surface different evidence, trust different sources, and associate the same ecosystem with different categories or use cases.

Model gaps

The visibility gap between models

Category association matters. AI systems do not only recognize brand names; they connect brands with categories, use cases, and trusted source ecosystems. If those associations differ by model, brand visibility differs too.

Teams need to know where their audience is asking questions. If developers use Claude but a brand is mainly visible in Gemini, the brand may still be invisible to its core audience.

Next steps

What teams should do next

Brands need to understand where they appear, where they are absent, and which models matter most for their audience. That means measuring across answer engines, mapping the sources each model trusts, and strengthening the category associations that make the brand easier to recommend.

The AI layer is now a gatekeeper for discovery. It is not one system, one ranking, or one algorithm. Brands need to know which models matter and where visibility gaps are costing them attention.

Next step

Measure visibility across the models your audience uses

Find where your brand appears, where it is absent, and which AI systems matter most for discovery.