Synthetic users, like a stranger at a bar, can provide unfiltered, emotionally rich feedback during simulated interviews. This happens because there's no social barrier or fear of judgment, leading to the discovery of edge cases and deeper motivations that real users might not share with a human interviewer.
AI-driven synthetic user interviews can uncover deep emotional insights that real users might not share with a stranger. However, they fail to capture unique, real-life situational problems (e.g. a parent escaping a toddler), making a hybrid research approach essential for a complete picture.
When teams get bogged down in technical or financial challenges, they can lose sight of the customer. AI-powered personas offer an immediate way to "chat with the user," serving as a quick empathy check to re-ground the team in the original problem they are solving.
Contrary to expectations, job candidates found it easier to talk to an AI interviewer. The lower pressure of a non-human interaction allowed them to relax, be more open, and talk more freely about their experiences, leading to better outcomes.
Anthropic developed an AI tool that conducts automated, adaptive interviews to gather qualitative user feedback. This moves beyond analyzing chat logs to understanding user feelings and experiences, unlocking scalable, in-depth market research, customer success, and even HR applications that were previously impossible.
A UK startup has found that LLMs can generate accurate, simulated focus group discussions. By creating diverse digital personas, the AI reproduces the nuanced and often surprising feedback that typically requires expensive and slow in-person research, especially in politics.
A study with Colgate-Palmolive found that large language models can accurately mimic real consumer behavior and purchase intent. This validates the use of "synthetic consumers" for market research, enabling companies to replace costly, slow human surveys with scalable AI personas for faster, richer product feedback.
Expensive user research often sits unused in documents. By ingesting this static data, you can create interactive AI chatbot personas. This allows product and marketing teams to "talk to" their customers in real-time to test ad copy, features, and messaging, making research continuously actionable.
AI models personalize responses based on user history and profile data, including your employer. Asking an LLM what it thinks of your company will result in a biased answer. To get a true picture, marketers must query the AI using synthetic personas that represent their actual target customers.
To get truly honest feedback, Webflow's CPO programmed her AI chief of staff to be "mean." The AI delivers a "brutal truth" section, criticizing her for spending time on tasks below her role. This demonstrates how AI can serve as an unflinching accountability partner, providing feedback humans might hesitate to give.
The most reliable customer insights will soon come from interviewing AI models trained on vast customer datasets. This is because AI can synthesize collective knowledge, while individual customers are often poor at articulating their true needs or answering questions effectively.