Prompt Simulation Logic
How GeoSnap simulates the behavior of a potential customer interacting with AI to make decisions.
The Principle of Simulation
GeoSnap doesn't just ask AI, "Do you know brand X?". It simulates the real behavior of a potential customer who uses AI to gather information, evaluate options, and make purchasing decisions.
This approach is crucial because the way a question is formulated deeply influences the AI's response. A direct query about the brand would produce an artificial result, not representative of the real user experience.
How Prompts Are Constructed
GeoSnap prompts are designed to replicate the conversational queries a real user would pose to an AI assistant. The construction process follows these phases:
Context Analysis: From the website and country, GeoSnap identifies the industry, offering, and market
Question Mapping: Variants of questions are generated for each level of intent
Natural Formulation: Every prompt is written in conversational language, as a user would pose it
Diversification: Questions are varied in formulation, specificity, and angle
Why We Don't Use Keyword-Based Queries
People don't speak with AIs like they would with Google. They don't type "best CRM SME price" but ask "What is the best CRM for a small business with a limited budget?". GeoSnap replicates this conversational behavior because it is what produces realistic responses.
Simulation Without Previous Context
Every GeoSnap inquiry is conducted without prior conversational context, simulating a user asking a question for the first time. This eliminates personalization bias and produces results that represent the average user experience.
Volume and Statistical Significance
AI responses are inherently variable: the same question asked twice can produce different answers. That's why GeoSnap generates hundreds of questions and analyzes the aggregated patterns. High volume ensures statistical significance and reduces noise, producing reliable and actionable metrics.
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