Launching Yapz.app AI agent on Product Hunt Case Studies
Traditional polling solutions like Typeform have dominated for years, but they force users into predefined answer categories, restricting the depth of potential feedback. Yapz.app’s goal was to solve this limitation by providing:
We aimed to release a working prototype of Yapz.app within weeks. By integrating Supabase and Vercel for backend and hosting, we kept our infrastructure lean. Vapi handled voice communication with minimal fuss, and Langsmith allowed us to monitor and debug AI calls, ensuring prompt accuracy early on. This streamlined setup enabled us to validate our core concept within the first month.
While core development proceeded, we focused on refining AI prompts in parallel. Debugging each prompt required running full conversation sequences across different surveys. To manage this complexity, we built a specialized internal tool to test and iterate on summary prompts. We conducted manual checks to confirm results, ensuring we captured genuinely useful insights.
The final hurdle was creating summaries that update in real time for over 200 conversations, each running 7–10 minutes. We wanted precise results aligned with creator inquiries yet flexible enough to capture organic insights. After exploring multiple methods, we settled on a refinement strategy, striking the right balance between detailed accuracy and broad, evolving insights.
Yapz has officially launched in January 2025, quickly attracting thousands of users who have already created hundreds of their own projects. Currently free to use, Yapz is in an exciting phase of exploration—our team is actively evaluating potential pivots and the next steps for this innovative AI-driven feedback platform.
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